package nx
sectionYPositions = computeSectionYPositions($el), 10)"
x-init="setTimeout(() => sectionYPositions = computeSectionYPositions($el), 10)"
>
N-dimensional arrays for OCaml
Install
dune-project
Dependency
Authors
Maintainers
Sources
raven-1.0.0.alpha3.tbz
sha256=96d35ce03dfbebd2313657273e24c2e2d20f9e6c7825b8518b69bd1d6ed5870f
sha512=90c5053731d4108f37c19430e45456063e872b04b8a1bbad064c356e1b18e69222de8bfcf4ec14757e71f18164ec6e4630ba770dbcb1291665de5418827d1465
doc/src/nx.core/frontend.ml.html
Source file frontend.ml
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4422 4423 4424 4425 4426 4427 4428 4429 4430 4431 4432 4433 4434 4435 4436 4437 4438(*--------------------------------------------------------------------------- Copyright (c) 2026 The Raven authors. All rights reserved. SPDX-License-Identifier: ISC ---------------------------------------------------------------------------*) module Make (B : Backend_intf.S) = struct module B = B let err op fmt = Printf.ksprintf (fun msg -> invalid_arg (op ^ ": " ^ msg)) fmt (* ───── Core Types ───── *) type ('a, 'b) t = ('a, 'b) B.t type context = B.context type float16_elt = Nx_buffer.float16_elt type float32_elt = Nx_buffer.float32_elt type float64_elt = Nx_buffer.float64_elt type bfloat16_elt = Nx_buffer.bfloat16_elt type float8_e4m3_elt = Nx_buffer.float8_e4m3_elt type float8_e5m2_elt = Nx_buffer.float8_e5m2_elt type int4_elt = Nx_buffer.int4_signed_elt type uint4_elt = Nx_buffer.int4_unsigned_elt type int8_elt = Nx_buffer.int8_signed_elt type uint8_elt = Nx_buffer.int8_unsigned_elt type int16_elt = Nx_buffer.int16_signed_elt type uint16_elt = Nx_buffer.int16_unsigned_elt type int32_elt = Nx_buffer.int32_elt type uint32_elt = Nx_buffer.uint32_elt type int64_elt = Nx_buffer.int64_elt type uint64_elt = Nx_buffer.uint64_elt type complex32_elt = Nx_buffer.complex32_elt type complex64_elt = Nx_buffer.complex64_elt type bool_elt = Nx_buffer.bool_elt type ('a, 'b) dtype = ('a, 'b) Dtype.t = | Float16 : (float, float16_elt) dtype | Float32 : (float, float32_elt) dtype | Float64 : (float, float64_elt) dtype | BFloat16 : (float, bfloat16_elt) dtype | Float8_e4m3 : (float, float8_e4m3_elt) dtype | Float8_e5m2 : (float, float8_e5m2_elt) dtype | Int4 : (int, int4_elt) dtype | UInt4 : (int, uint4_elt) dtype | Int8 : (int, int8_elt) dtype | UInt8 : (int, uint8_elt) dtype | Int16 : (int, int16_elt) dtype | UInt16 : (int, uint16_elt) dtype | Int32 : (int32, int32_elt) dtype | UInt32 : (int32, uint32_elt) dtype | Int64 : (int64, int64_elt) dtype | UInt64 : (int64, uint64_elt) dtype | Complex64 : (Complex.t, complex32_elt) dtype | Complex128 : (Complex.t, complex64_elt) dtype | Bool : (bool, bool_elt) dtype type float16_t = (float, float16_elt) t type float32_t = (float, float32_elt) t type float64_t = (float, float64_elt) t type int8_t = (int, int8_elt) t type uint8_t = (int, uint8_elt) t type int16_t = (int, int16_elt) t type uint16_t = (int, uint16_elt) t type int32_t = (int32, int32_elt) t type int64_t = (int64, int64_elt) t type uint32_t = (int32, uint32_elt) t type uint64_t = (int64, uint64_elt) t type complex64_t = (Complex.t, complex32_elt) t type complex128_t = (Complex.t, complex64_elt) t type bool_t = (bool, bool_elt) t let float16 = Float16 let float32 = Float32 let float64 = Float64 let bfloat16 = BFloat16 let float8_e4m3 = Float8_e4m3 let float8_e5m2 = Float8_e5m2 let int4 = Int4 let uint4 = UInt4 let int8 = Int8 let uint8 = UInt8 let int16 = Int16 let uint16 = UInt16 let int32 = Int32 let uint32 = UInt32 let int64 = Int64 let uint64 = UInt64 let complex64 = Complex64 let complex128 = Complex128 let bool = Bool type index = | I of int | L of int list | R of int * int | Rs of int * int * int | A | M of (bool, bool_elt) t | N (* ───── Tensor Properties ───── *) let data x = B.to_host x let shape x = View.shape (B.view x) let dtype x = B.dtype x let itemsize x = Dtype.itemsize (B.dtype x) let strides x = let view = B.view x in let itemsize = itemsize x in match View.strides_opt view with | Some elem_strides -> Array.map (fun s -> s * itemsize) elem_strides | None -> err "strides" "view has non-materializable layout, call contiguous() to get a \ standard layout" let stride i x = let view = B.view x in let itemsize = itemsize x in match View.strides_opt view with | Some elem_strides -> let ndim = View.ndim view in let i = if i < 0 then i + ndim else i in if i < 0 || i >= ndim then err "stride" "axis %d out of bounds for %dD tensor" i ndim else elem_strides.(i) * itemsize | None -> err "stride" "stride for dimension %d, tensor does not have defined strides, call \ contiguous() first or check has_strides()" i let dims x = View.shape (B.view x) let dim i x = let shape = View.shape (B.view x) in let ndim = Array.length shape in let i = if i < 0 then i + ndim else i in if i < 0 || i >= ndim then err "dim" "axis %d out of bounds for %dD tensor" i ndim else shape.(i) let ndim x = View.ndim (B.view x) let size x = View.numel (B.view x) let numel x = size x let nbytes x = numel x * itemsize x let offset x = View.offset (B.view x) let is_c_contiguous x = View.is_c_contiguous (B.view x) (* ───── Internal Utilities ───── *) let array_prod arr = Array.fold_left ( * ) 1 arr module IntSet = Set.Make (Int) (* 2^shift_val for integer dtypes, used by lshift/rshift. *) let power_of_two : type a b. (a, b) Dtype.t -> int -> a = fun dtype shift_val -> if shift_val < 0 then err "power_of_two" "shift_val must be >= 0, got %d" shift_val; match dtype with | Int8 -> 1 lsl shift_val | UInt8 -> (1 lsl shift_val) land 0xFF | Int16 -> 1 lsl shift_val | UInt16 -> (1 lsl shift_val) land 0xFFFF | Int32 -> Int32.shift_left Int32.one shift_val | UInt32 -> Int32.shift_left Int32.one shift_val | Int64 -> Int64.shift_left Int64.one shift_val | UInt64 -> Int64.shift_left Int64.one shift_val | _ -> err "power_of_two" "dtype %s, not an integer type" (Dtype.to_string dtype) let ensure_float_dtype fname x = if not (Dtype.is_float (dtype x)) then err fname "dtype %s, expected float type (Float16, Float32, or Float64)" (Dtype.to_string (dtype x)) let ensure_int_dtype fname x = if not (Dtype.is_int (dtype x)) then invalid_arg (fname ^ ": dtype must be an integer type") let resolve_axis ?ndim_opt x (axis_opt : int option) = let ndim = match ndim_opt with Some n -> n | None -> ndim x in match axis_opt with | None -> Array.init ndim Fun.id | Some a -> let resolved_a = if a < 0 then a + ndim else a in [| resolved_a |] let resolve_single_axis ?ndim_opt x axis : int = let ndim = match ndim_opt with Some n -> n | None -> ndim x in if axis < 0 then axis + ndim else axis (* Normalize negative axes, validate bounds, sort, and deduplicate. *) let normalize_and_dedup_axes ~op ndim axes = let normalized = List.map (fun ax -> let axis = if ax < 0 then ndim + ax else ax in if axis < 0 || axis >= ndim then err op "axis %d out of bounds for %dD tensor" ax ndim; axis) axes in List.sort_uniq compare normalized (* Count elements across reduction axes. *) let reduction_element_count input_shape ?axes () = let rank = Array.length input_shape in let axes_arr = match axes with | None -> Array.init rank Fun.id | Some ax_list -> Array.of_list (List.map (fun ax -> if ax < 0 then ax + rank else ax) ax_list) in if Array.length axes_arr = 0 then 1 else array_prod (Array.map (fun ax -> input_shape.(ax)) axes_arr) (* Write [result] into [?out] if provided, otherwise return [result]. *) let copy_to_out ?out result = match out with | Some o -> B.assign o result; o | None -> result (* ───── Shape Manipulation Helpers ───── *) let reshape shape_spec x = let current_shape = shape x in (* Resolve -1 dimensions *) let infer_count = ref 0 in Array.iter (fun d -> if d = -1 then incr infer_count) shape_spec; if !infer_count > 1 then invalid_arg "reshape: shape specification, multiple -1 dimensions, can only \ specify one unknown dimension"; let target_shape = if !infer_count = 0 then shape_spec else let old_numel = array_prod current_shape in let known_numel = ref 1 in Array.iter (fun d -> if d <> -1 then known_numel := !known_numel * d) shape_spec; if !known_numel = 0 || old_numel mod !known_numel <> 0 then err "reshape" "cannot infer dimension: %d elements into shape %s" old_numel (Shape.to_string shape_spec); let inferred = old_numel / !known_numel in Array.map (fun d -> if d = -1 then inferred else d) shape_spec in Array.iter (fun d -> if d < 0 then err "reshape" "shape specification, dimension %d < -1" d) target_shape; if current_shape = target_shape then x else B.reshape x target_shape let broadcast_shapes shape_a shape_b = let rank_a = Array.length shape_a in let rank_b = Array.length shape_b in let rank_out = max rank_a rank_b in let result = Array.make rank_out 1 in for i = 0 to rank_out - 1 do let idx_a = rank_a - rank_out + i in let idx_b = rank_b - rank_out + i in let dim_a = if idx_a >= 0 then shape_a.(idx_a) else 1 in let dim_b = if idx_b >= 0 then shape_b.(idx_b) else 1 in result.(i) <- (if dim_a = dim_b then dim_a else if dim_a = 1 then dim_b else if dim_b = 1 then dim_a else err "broadcast" "cannot broadcast %s with %s (dim %d: %d\xe2\x89\xa0%d)" (Shape.to_string shape_a) (Shape.to_string shape_b) i dim_a dim_b) done; result let broadcast_to new_shape x = Array.iter (fun dim -> if dim < 0 then err "broadcast_to" "target shape, dimension %d < 0" dim) new_shape; let current_shape = shape x in if current_shape = new_shape then x else let rank_current = Array.length current_shape in let rank_target = Array.length new_shape in if rank_current > rank_target then err "broadcast_to" "rank mismatch: source rank %d exceeds target rank %d, target shape \ must have at least as many dimensions as source" rank_current rank_target else let pad_count = rank_target - rank_current in let padded_shape = if pad_count <= 0 then current_shape else let arr = Array.make rank_target 1 in Array.blit current_shape 0 arr pad_count rank_current; arr in for i = 0 to rank_target - 1 do let curr_dim = padded_shape.(i) in let target_dim = new_shape.(i) in if curr_dim <> target_dim && curr_dim <> 1 then err "broadcast_to" "cannot broadcast %s to %s (dim %d: %d\xe2\x89\xa0%d)" (Shape.to_string padded_shape) (Shape.to_string new_shape) i curr_dim target_dim done; let x_aligned = if pad_count <= 0 then x else B.reshape x padded_shape in if shape x_aligned = new_shape then x_aligned else B.expand x_aligned new_shape let broadcasted ?(reverse = false) x y = let a, b = if reverse then (y, x) else (x, y) in let broadcast_shape = broadcast_shapes (shape a) (shape b) in (broadcast_to broadcast_shape a, broadcast_to broadcast_shape b) (* Like [broadcast_to] but [-1] keeps the original dimension. *) let expand shape_spec x = let current_shape = shape x in let rank_current = Array.length current_shape in let rank_spec = Array.length shape_spec in let rank_new = max rank_current rank_spec in let current_aligned = if rank_current = rank_new then current_shape else let arr = Array.make rank_new 1 in Array.blit current_shape 0 arr (rank_new - rank_current) rank_current; arr in let target_shape = Array.init rank_new (fun i -> let spec_idx = i - (rank_new - rank_spec) in let spec_dim = if spec_idx < 0 then -1 else shape_spec.(spec_idx) in if spec_dim = -1 then current_aligned.(i) else if spec_dim < -1 then err "expand" "dimension %d, negative size %d" i spec_dim else spec_dim) in broadcast_to target_shape x (* ───── Type Conversion and Tensor Creation ───── *) let cast (type a b c d) (dt : (c, d) Dtype.t) (x : (a, b) t) : (c, d) t = match Dtype.equal_witness (dtype x) dt with | Some Equal -> B.copy x | None -> let out = B.buffer (B.context x) dt (shape x) in B.cast ~out x; out let astype dt x = cast dt x let contiguous x = B.contiguous x let copy x = B.copy x let blit src dst = let ss = shape src and ds = shape dst in if ss <> ds then err "blit" "shape mismatch %s vs %s, source and destination must have identical \ shapes" (Shape.to_string ss) (Shape.to_string ds); B.assign dst src let create ctx dtype shape arr = let n = Array.fold_left ( * ) 1 shape in if Array.length arr <> n then err "create" "array size, got %d elements, expected %d" (Array.length arr) n; let kind = Dtype.to_buffer_kind dtype in let bigarray = Nx_buffer.create kind n in for i = 0 to n - 1 do Nx_buffer.unsafe_set bigarray i arr.(i) done; let tensor_1d = B.from_host ctx bigarray in if Array.length shape = 1 && shape.(0) = n then tensor_1d else B.reshape tensor_1d shape let init ctx dtype shape f = let size = Array.fold_left ( * ) 1 shape in let arr = Array.init size (fun i -> f (Shape.unravel_index i shape)) in create ctx dtype shape arr let scalar ctx dt value = B.full ctx dt [||] value let scalar_like x_ref value = scalar (B.context x_ref) (B.dtype x_ref) value let fill value x = let copied = B.copy x in B.assign copied (broadcast_to (shape copied) (scalar_like copied value)); copied let empty ctx dtype shape_arr = B.buffer ctx dtype shape_arr let zeros ctx dtype shape_arr = B.full ctx dtype shape_arr (Dtype.zero dtype) let ones ctx dtype shape_arr = B.full ctx dtype shape_arr (Dtype.one dtype) let full ctx dt target_shape fill_value = B.full ctx dt target_shape fill_value let create_like x_ref fill_fn = fill_fn (B.context x_ref) (B.dtype x_ref) (shape x_ref) let empty_like x_ref = create_like x_ref empty let full_like x_ref fill_value = create_like x_ref (fun ctx dt sh -> full ctx dt sh fill_value) let zeros_like x = full_like x (Dtype.zero (B.dtype x)) let ones_like x = full_like x (Dtype.one (B.dtype x)) let to_buffer x = let t = let t = if is_c_contiguous x && offset x = 0 then x else contiguous x in let buffer = data t in if Nx_buffer.length buffer = numel t then t else copy t in data t let to_bigarray x = let buf = to_buffer x in let _ = Dtype.to_bigarray_kind (B.dtype x) in let ga = Nx_buffer.to_genarray buf (shape x) in (Obj.magic ga : ('a, 'b, Bigarray.c_layout) Bigarray.Genarray.t) let of_buffer ctx ~shape buf = reshape shape (B.from_host ctx buf) let of_bigarray ctx ba = let ga_ext : ('a, 'b, Bigarray.c_layout) Bigarray.Genarray.t = Obj.magic ba in of_buffer ctx ~shape:(Bigarray.Genarray.dims ga_ext) (Nx_buffer.of_genarray ga_ext) let to_array x = let ba = data (contiguous x) in let n = numel x in Array.init n (fun i -> Nx_buffer.get ba i) (* ───── Element-wise Binary Operations ───── *) let binop ?out op a b = let a', b' = broadcasted a b in let out = match out with | Some o -> o | None -> empty (B.context a') (B.dtype a') (shape a') in op ~out a' b'; out let cmpop ?out op a b = let a', b' = broadcasted a b in let out = match out with | Some o -> o | None -> empty (B.context a') Dtype.bool (shape a') in op ~out a' b'; out let add ?out a b = binop ?out B.add a b let add_s ?out t s = add ?out t (scalar_like t s) let radd_s ?out s t = add ?out (scalar_like t s) t let sub ?out a b = binop ?out B.sub a b let sub_s ?out t s = sub ?out t (scalar_like t s) let rsub_s ?out s t = sub ?out (scalar_like t s) t let mul ?out a b = binop ?out B.mul a b let mul_s ?out t s = mul ?out t (scalar_like t s) let rmul_s ?out s t = mul ?out (scalar_like t s) t let div ?out a b = binop ?out B.div a b let div_s ?out t s = div ?out t (scalar_like t s) let rdiv_s ?out s t = div ?out (scalar_like t s) t let pow ?out a b = binop ?out B.pow a b let pow_s ?out t s = pow ?out t (scalar_like t s) let rpow_s ?out s t = pow ?out (scalar_like t s) t let maximum ?out a b = binop ?out B.max a b let maximum_s ?out t s = maximum ?out t (scalar_like t s) let rmaximum_s ?out s t = maximum ?out (scalar_like t s) t let minimum ?out a b = binop ?out B.min a b let minimum_s ?out t s = minimum ?out t (scalar_like t s) let rminimum_s ?out s t = minimum ?out (scalar_like t s) t let mod_ ?out a b = binop ?out B.mod_ a b let mod_s ?out t s = mod_ ?out t (scalar_like t s) let rmod_s ?out s t = mod_ ?out (scalar_like t s) t let bitwise_xor ?out a b = binop ?out B.xor a b let bitwise_or ?out a b = binop ?out B.or_ a b let bitwise_and ?out a b = binop ?out B.and_ a b (* ───── Logical and Comparison Operations ───── *) let logical_and ?out a b = binop ?out B.and_ a b let logical_or ?out a b = binop ?out B.or_ a b let logical_xor ?out a b = binop ?out B.xor a b let logical_not (type a b) ?out (x : (a, b) t) : (a, b) t = let dt = dtype x in let one = full (B.context x) dt (shape x) (Dtype.one dt) in match dt with | Dtype.UInt8 | Dtype.Bool | Dtype.UInt4 -> binop ?out B.xor x one | _ -> sub ?out one x let cmpeq ?out a b = cmpop ?out B.cmpeq a b let cmpne ?out a b = cmpop ?out B.cmpne a b let cmplt ?out a b = cmpop ?out B.cmplt a b let cmple ?out a b = cmpop ?out B.cmple a b let cmpgt ?out a b = cmplt ?out b a let cmpge ?out a b = cmple ?out b a let less = cmplt let less_equal = cmple let greater = cmpgt let greater_equal = cmpge let equal = cmpeq let not_equal = cmpne let equal_s ?out a s = equal ?out a (scalar_like a s) let not_equal_s ?out a s = not_equal ?out a (scalar_like a s) let less_s ?out a s = less ?out a (scalar_like a s) let greater_s ?out a s = greater ?out a (scalar_like a s) let less_equal_s ?out a s = less_equal ?out a (scalar_like a s) let greater_equal_s ?out a s = greater_equal ?out a (scalar_like a s) (* ───── Element-wise Unary Operations ───── *) let unaryop ?out op x = let out = match out with | Some o -> o | None -> empty (B.context x) (B.dtype x) (shape x) in op ~out x; out let neg ?out x = unaryop ?out B.neg x let bitwise_not ?out x = let dt = dtype x in binop ?out B.xor x (broadcast_to (shape x) (B.full (B.context x) dt [||] (Dtype.minus_one dt))) let invert ?out x = bitwise_not ?out x let sin ?out x = unaryop ?out B.sin x let cos ?out x = unaryop ?out B.cos x let sqrt ?out x = unaryop ?out B.sqrt x let recip ?out x = unaryop ?out B.recip x let log ?out x = unaryop ?out B.log x let exp ?out x = unaryop ?out B.exp x let abs ?out x = unaryop ?out B.abs x let log2 ?out x = mul ?out (log x) (broadcast_to (shape x) (scalar (B.context x) (dtype x) (Dtype.of_float (dtype x) (1.0 /. Stdlib.log 2.0)))) let exp2 ?out x = exp ?out (mul x (broadcast_to (shape x) (scalar (B.context x) (dtype x) (Dtype.of_float (dtype x) (Stdlib.log 2.0))))) let tan ?out x = unaryop ?out B.tan x let square ?out x = mul ?out x x let sign ?out x = unaryop ?out B.sign x let relu ?out x = maximum ?out x (zeros_like x) let sigmoid ?out x = let dt = dtype x in let neg_one_over_log2 = B.full (B.context x) dt [||] (Dtype.of_float dt (-1.0 /. Stdlib.log 2.0)) in recip ?out (add (ones_like x) (exp2 (mul x neg_one_over_log2))) let rsqrt ?out x = recip ?out (sqrt x) let asin ?out x = unaryop ?out B.asin x let acos ?out x = unaryop ?out B.acos x let atan ?out x = unaryop ?out B.atan x let sinh ?out x = unaryop ?out B.sinh x let cosh ?out x = unaryop ?out B.cosh x let tanh ?out x = unaryop ?out B.tanh x let asinh ?out x = let dt = dtype x in let one_x = full (B.context x) dt (shape x) (Dtype.one dt) in log ?out (add x (sqrt (add (square x) one_x))) let acosh ?out x = let dt = dtype x in let one_x = full (B.context x) dt (shape x) (Dtype.one dt) in log ?out (add x (sqrt (sub (square x) one_x))) let atanh ?out x = let dt = dtype x in let one_x = full (B.context x) dt (shape x) (Dtype.one dt) in let two_x = full (B.context x) dt (shape x) (Dtype.two dt) in div ?out (log (div (add one_x x) (sub one_x x))) two_x let trunc ?out x = unaryop ?out B.trunc x let ceil ?out x = unaryop ?out B.ceil x let floor ?out x = unaryop ?out B.floor x let round ?out x = unaryop ?out B.round x let isinf ?out x = if not (Dtype.is_float (dtype x)) then copy_to_out ?out (zeros (B.context x) Dtype.bool (shape x)) else let dt = dtype x in let pos_inf = broadcast_to (shape x) (B.full (B.context x) dt [||] (Dtype.of_float dt Float.infinity)) in let neg_inf = broadcast_to (shape x) (B.full (B.context x) dt [||] (Dtype.of_float dt Float.neg_infinity)) in logical_or ?out (cmpeq x pos_inf) (cmpeq x neg_inf) let isnan ?out x = if not (Dtype.is_float (dtype x)) then copy_to_out ?out (zeros (B.context x) Dtype.bool (shape x)) else cmpne ?out x x let isfinite ?out x = if not (Dtype.is_float (dtype x)) then copy_to_out ?out (ones (B.context x) Dtype.bool (shape x)) else logical_not ?out (logical_or (isinf x) (isnan x)) let lerp ?out start_tensor end_tensor weight = add ?out start_tensor (mul (sub end_tensor start_tensor) weight) let lerp_scalar_weight ?out start_tensor end_tensor weight_val = lerp ?out start_tensor end_tensor (full (B.context start_tensor) (dtype start_tensor) (shape start_tensor) weight_val) let shift_op ~op ~apply ?out x shift_val = let dt = dtype x in if not (Dtype.is_int dt) then err op "dtype %s, expected integer type" (Dtype.to_string dt); if shift_val < 0 then err op "shift_val must be >= 0, got %d" shift_val; if shift_val = 0 then copy_to_out ?out x else apply ?out x (broadcast_to (shape x) (B.full (B.context x) dt [||] (power_of_two dt shift_val))) let lshift ?out x shift_val = shift_op ~op:"lshift" ~apply:mul ?out x shift_val let rshift ?out x shift_val = shift_op ~op:"rshift" ~apply:(fun ?out a b -> binop ?out B.div a b) ?out x shift_val let clamp ?out ?min ?max x = let x = match min with None -> x | Some min_v -> maximum x (full_like x min_v) in match max with | None -> copy_to_out ?out x | Some max_v -> minimum ?out x (full_like x max_v) let clip = clamp (* ───── Ternary Operations ───── *) let where ?out cond if_true if_false = let target = Shape.broadcast (shape if_true) (shape if_false) in let target = Shape.broadcast target (shape cond) in let cond_b = broadcast_to target cond in let if_true_b = broadcast_to target if_true in let if_false_b = broadcast_to target if_false in let out = match out with | Some o -> o | None -> empty (B.context if_true_b) (B.dtype if_true_b) target in B.where ~out cond_b if_true_b if_false_b; out (* ───── Binary Mathematical Functions ───── *) let atan2 ?out y x = binop ?out B.atan2 y x (* sqrt(x² + y²) with overflow protection via max * sqrt(1 + (min/max)²) *) let hypot ?out x y = let x', y' = broadcasted x y in let x_abs = abs x' in let y_abs = abs y' in let max_val = maximum x_abs y_abs in let min_val = minimum x_abs y_abs in let both_zero = logical_and (cmpeq x_abs (zeros_like x_abs)) (cmpeq y_abs (zeros_like y_abs)) in let ratio = where both_zero (zeros_like min_val) (div min_val max_val) in let result = mul max_val (sqrt (add (ones_like ratio) (square ratio))) in where ?out both_zero (zeros_like result) result (* ───── Reduction Operations ───── *) let reduce_output_shape input_shape axes_to_reduce keepdims = if keepdims then Array.mapi (fun i dim -> if Array.exists (( = ) i) axes_to_reduce then 1 else dim) input_shape else let filtered = ref [] in Array.iteri (fun i dim -> if not (Array.exists (( = ) i) axes_to_reduce) then filtered := dim :: !filtered) input_shape; Array.of_list (List.rev !filtered) let reduce_op ?out backend_op ?axes ?(keepdims = false) x = let input_shape = shape x in let rank = Array.length input_shape in let axes_to_reduce = match axes with | None -> Array.init rank Fun.id | Some ax_list -> Array.of_list (List.map (fun ax -> if ax < 0 then ax + rank else ax) ax_list) in Array.iter (fun ax -> if ax < 0 || ax >= rank then err "reduce" "axis %d out of bounds for %dD tensor" ax rank) axes_to_reduce; let out = match out with | Some o -> o | None -> empty (B.context x) (B.dtype x) (reduce_output_shape input_shape axes_to_reduce keepdims) in backend_op ~out ~axes:axes_to_reduce ~keepdims x; out let sum ?out ?axes ?(keepdims = false) x = reduce_op ?out B.reduce_sum ?axes ~keepdims x let max ?out ?axes ?(keepdims = false) x = reduce_op ?out B.reduce_max ?axes ~keepdims x let min ?out ?axes ?(keepdims = false) x = reduce_op ?out B.reduce_min ?axes ~keepdims x let prod ?out ?axes ?(keepdims = false) x = reduce_op ?out B.reduce_prod ?axes ~keepdims x let associative_scan ~axis op x = let x_shape = shape x in let rank = Array.length x_shape in if rank = 0 then let a = if axis < 0 then axis + 1 else axis in if a = 0 then x else err "associative_scan" "axis %d out of bounds for rank 0 tensor (only axis 0 valid)" axis else let a = if axis < 0 then axis + rank else axis in if a < 0 || a >= rank then err "associative_scan" "axis %d out of bounds for %dD tensor" axis rank else let out = empty (B.context x) (B.dtype x) x_shape in B.associative_scan ~out ~axis:a ~op x; out let cumulative_scan ?axis op x = let orig_shape = shape x in match axis with | Some axis -> associative_scan ~axis op x | None -> let flat = reshape [| array_prod orig_shape |] x in let scanned = associative_scan ~axis:0 op flat in if Array.length orig_shape = 0 then reshape [||] scanned else reshape orig_shape scanned let cumsum ?axis x = cumulative_scan ?axis `Sum x let cumprod ?axis x = cumulative_scan ?axis `Prod x let cummax ?axis x = cumulative_scan ?axis `Max x let cummin ?axis x = cumulative_scan ?axis `Min x let mean ?out ?axes ?(keepdims = false) x = let dt = B.dtype x in let s = sum ?axes ~keepdims x in let n = reduction_element_count (shape x) ?axes () in let divisor = broadcast_to (shape s) (scalar (B.context x) dt (Dtype.of_float dt (float_of_int (Stdlib.max 1 n)))) in div ?out s divisor let var ?out ?axes ?(keepdims = false) ?(ddof = 0) x = let dt = B.dtype x in let mean_x = mean ?axes ~keepdims:true x in let sum_sq = sum ?axes ~keepdims (square (sub x mean_x)) in let n = reduction_element_count (shape x) ?axes () in let n_corr = float_of_int (Stdlib.max 0 (n - ddof)) in let divisor = broadcast_to (shape sum_sq) (scalar (B.context x) dt (Dtype.of_float dt n_corr)) in div ?out sum_sq divisor let std ?out ?axes ?(keepdims = false) ?(ddof = 0) x = sqrt ?out (var ?axes ~keepdims ~ddof x) let all ?out ?axes ?(keepdims = false) x = let bool_t = cmpne x (full_like x (Dtype.zero (dtype x))) in prod ?out ?axes ~keepdims bool_t let any ?out ?axes ?(keepdims = false) x = let bool_t = cmpne x (full_like x (Dtype.zero (dtype x))) in max ?out ?axes ~keepdims bool_t let array_equal x y = let can_broadcast = try ignore (Shape.broadcast (shape x) (shape y)); true with _ -> false in if not can_broadcast then zeros (B.context x) Dtype.bool [||] else all (equal x y) (* ───── Shape Manipulation ───── *) let pad padding_config fill_value x = Array.iter (fun (before, after) -> if before < 0 || after < 0 then invalid_arg "pad: padding values, negative values not allowed, use shrink or \ slice to remove elements") padding_config; B.pad x padding_config fill_value let shrink shrink_args x = B.shrink x shrink_args let flatten ?(start_dim = 0) ?(end_dim = -1) x = let sh = shape x in let r = Array.length sh in let s = if start_dim < 0 then start_dim + r else start_dim in let e = if end_dim < 0 then end_dim + r else end_dim in if not ((s >= 0 && s < r && e >= 0 && e < r) || (r = 0 && (s = 0 || start_dim = 0) && (e = -1 || end_dim = -1))) then err "flatten" "start_dim %d or end_dim %d, out of bounds for rank %d" start_dim end_dim r; if s > e then invalid_arg "flatten: dimensions, start_dim must be <= end_dim"; if r = 0 then reshape [| 1 |] x else if s = 0 && e = r - 1 then reshape [| array_prod sh |] x else let pre = Array.to_list (Array.sub sh 0 s) in let mid = array_prod (Array.sub sh s (e - s + 1)) in let post = Array.to_list (Array.sub sh (e + 1) (r - (e + 1))) in reshape (Array.of_list (pre @ [ mid ] @ post)) x let unflatten dim sizes x = let dim = resolve_single_axis x dim in let current_shape = shape x in let dim_size = current_shape.(dim) in let sizes = Array.copy sizes in let neg_one_count = Array.fold_left (fun acc s -> if s = -1 then acc + 1 else acc) 0 sizes in if neg_one_count > 1 then invalid_arg "unflatten: sizes, can only specify one unknown dimension (using -1)"; if neg_one_count = 1 then begin let known_product = Array.fold_left (fun acc s -> if s = -1 then acc else acc * s) 1 sizes in if known_product = 0 || dim_size mod known_product <> 0 then err "unflatten" "cannot infer dimension from total size %d to known product %d, %d \ not divisible by %d, ensure total size is divisible by product of \ known dimensions" dim_size known_product dim_size known_product; let inferred = dim_size / known_product in Array.iteri (fun i s -> if s = -1 then sizes.(i) <- inferred) sizes end; let sizes_product = Array.fold_left ( * ) 1 sizes in if sizes_product <> dim_size then err "unflatten" "sizes, product %d does not match dimension size %d" sizes_product dim_size; reshape (Array.concat [ Array.sub current_shape 0 dim; sizes; Array.sub current_shape (dim + 1) (Array.length current_shape - dim - 1); ]) x let ravel x = flatten x let squeeze ?axes x = let sh = shape x in let r = Array.length sh in let reshape_or_id new_sh = if Array.length new_sh = 0 && r > 0 then reshape [||] x else if Array.length new_sh = 0 then x else reshape new_sh x in match axes with | None -> reshape_or_id (Array.of_list (List.filter (( <> ) 1) (Array.to_list sh))) | Some axes_list -> if r = 0 then x else let normalized = List.map (fun ax -> if ax < 0 then ax + r else ax) axes_list in let seen = Array.make r false in List.iter (fun ax -> if ax < 0 || ax >= r then err "squeeze" "axis %d out of bounds for %dD tensor" ax r; if seen.(ax) then err "squeeze" "axis %d, duplicate axis" ax; seen.(ax) <- true) normalized; List.iter (fun ax -> if sh.(ax) <> 1 then err "squeeze" "cannot remove dimension at axis %d (size %d), size %d≠1" ax sh.(ax) sh.(ax)) normalized; let axes_set = List.fold_left (fun s ax -> IntSet.add ax s) IntSet.empty normalized in reshape_or_id (Array.of_list (List.filteri (fun i _ -> not (IntSet.mem i axes_set)) (Array.to_list sh))) let unsqueeze ?axes x = let sh = shape x in let r = Array.length sh in let axes_list = match axes with | None -> invalid_arg "unsqueeze: axes must be specified" | Some lst -> lst in if List.length axes_list = 0 then x else let output_rank = r + List.length axes_list in let normalized = List.map (fun ax -> if ax < 0 then ax + output_rank else ax) axes_list in let seen = Array.make output_rank false in List.iter (fun ax -> if ax < 0 || ax >= output_rank then err "unsqueeze" "axis %d, out of bounds for output rank %d, valid range is [%d, \ %d)" ax output_rank (-output_rank) output_rank; if seen.(ax) then err "unsqueeze" "axis %d, duplicate axis" ax; seen.(ax) <- true) normalized; let axes_set = List.fold_left (fun s ax -> IntSet.add ax s) IntSet.empty normalized in let new_shape = ref [] in let input_idx = ref 0 in for output_idx = 0 to output_rank - 1 do if IntSet.mem output_idx axes_set then new_shape := 1 :: !new_shape else if !input_idx < r then begin new_shape := sh.(!input_idx) :: !new_shape; incr input_idx end done; reshape (Array.of_list (List.rev !new_shape)) x let squeeze_axis axis x = squeeze ~axes:[ axis ] x let unsqueeze_axis axis x = unsqueeze ~axes:[ axis ] x let expand_dims axes x = unsqueeze ~axes x let transpose ?axes x = let r = ndim x in let resolved = match axes with | None -> Array.init r (fun i -> r - 1 - i) | Some ax_list -> if List.length ax_list <> r then err "transpose" "axes (length %d), expected rank %d, got %d, provide exactly one \ axis per dimension" (List.length ax_list) r (List.length ax_list); let seen = Array.make r false in List.iter (fun ax_val -> let ax = if ax_val < 0 then ax_val + r else ax_val in if ax < 0 || ax >= r then err "transpose" "axis %d out of bounds for %dD tensor" ax_val r; if seen.(ax) then err "transpose" "axis %d, repeated" ax_val; seen.(ax) <- true) ax_list; if not (Array.for_all Fun.id seen) then invalid_arg "transpose: axes do not form a permutation"; Array.of_list (List.map (fun v -> if v < 0 then v + r else v) ax_list) in B.permute x resolved let flip ?axes x = let r = ndim x in let flip_bools = Array.make r false in (match axes with | None -> Array.fill flip_bools 0 r true | Some ax_list -> List.iter (fun ax_val -> let ax = if ax_val < 0 then ax_val + r else ax_val in if ax < 0 || ax >= r then err "flip" "axis %d out of bounds for %dD tensor" ax_val r; flip_bools.(ax) <- true) ax_list); B.flip x flip_bools let moveaxis src dst x = let r = ndim x in let s = if src < 0 then src + r else src in let d = if dst < 0 then dst + r else dst in if s < 0 || s >= r || d < 0 || d >= r then err "moveaxis" "source %d or destination %d, out of bounds for shape %s" src dst (Shape.to_string (shape x)); if s = d then x else let axes = Array.to_list (Array.init r Fun.id) in let without = List.filter (( <> ) s) axes in let rec insert_at idx item = function | [] -> [ item ] | hd :: tl -> if idx = 0 then item :: hd :: tl else hd :: insert_at (idx - 1) item tl in B.permute x (Array.of_list (insert_at d s without)) let swapaxes axis1 axis2 x = let r = ndim x in let a1 = if axis1 < 0 then axis1 + r else axis1 in let a2 = if axis2 < 0 then axis2 + r else axis2 in if a1 < 0 || a1 >= r || a2 < 0 || a2 >= r then err "swapaxes" "axes (%d, %d), out of bounds for shape %s" axis1 axis2 (Shape.to_string (shape x)); if a1 = a2 then x else let axes = Array.init r Fun.id in axes.(a1) <- a2; axes.(a2) <- a1; B.permute x axes let cat_tensors ~axis tensors = match tensors with | [] -> invalid_arg "concatenate: tensor list cannot be empty, provide at least one \ tensor" | first :: _ -> let first_shape = shape first in let ndim = Array.length first_shape in let axis = if axis < 0 then axis + ndim else axis in let out_shape = Array.copy first_shape in out_shape.(axis) <- List.fold_left (fun acc t -> acc + (shape t).(axis)) 0 tensors; let out = empty (B.context first) (B.dtype first) out_shape in B.cat ~out tensors ~axis; out let roll ?axis shift x = let original_shape = shape x in let x, ax_idx = match axis with | None -> (flatten x, 0) | Some a -> let r = ndim x in let norm = if a < 0 then a + r else a in if norm < 0 || norm >= r then err "roll" "axis %d out of bounds for %dD tensor" a r; (x, norm) in let sh = shape x in let r = ndim x in if r = 0 then x else let dim_size = sh.(ax_idx) in if dim_size = 0 then x else let s = shift mod dim_size in let actual = if s < 0 then s + dim_size else s in if actual = 0 then if axis = None then reshape (shape x) x else x else let ranges_p1 = Array.mapi (fun i d -> if i = ax_idx then (dim_size - actual, d) else (0, d)) sh in let ranges_p2 = Array.mapi (fun i d -> if i = ax_idx then (0, dim_size - actual) else (0, d)) sh in let rolled = cat_tensors ~axis:ax_idx [ shrink ranges_p1 x; shrink ranges_p2 x ] in if axis = None then reshape original_shape rolled else rolled let tile reps x = let t_shape = shape x in let t_ndim = ndim x in let reps_len = Array.length reps in if reps_len < t_ndim then invalid_arg "tile: reps length must be >= tensor rank"; let x_promoted, promoted_shape = if reps_len > t_ndim then ( let new_shape = Array.make reps_len 1 in Array.blit t_shape 0 new_shape (reps_len - t_ndim) t_ndim; (reshape new_shape x, new_shape)) else (x, t_shape) in Array.iteri (fun i r -> if r < 0 then err "tile" "reps[%d], negative (%d<0), use positive integers (or 0 for empty \ result)" i r) reps; if Array.for_all (( = ) 1) reps then B.copy x_promoted else if Array.exists (( = ) 0) reps || Array.exists (( = ) 0) promoted_shape then empty (B.context x) (dtype x) (Array.mapi (fun i s -> s * reps.(i)) promoted_shape) else let rec tile_axis curr axis = if axis >= reps_len then curr else if reps.(axis) = 1 then tile_axis curr (axis + 1) else tile_axis (cat_tensors ~axis (List.init reps.(axis) (fun _ -> curr))) (axis + 1) in tile_axis x_promoted 0 let repeat ?axis count x = if count < 0 then err "repeat" "count must be >= 0, got %d" count; let x, ax_idx = match axis with | None -> (flatten x, 0) | Some a -> let r = ndim x in let norm = if a < 0 then a + r else a in if norm < 0 || norm >= r then err "repeat" "axis %d out of bounds for %dD tensor" a r; (x, norm) in let t_shape = shape x in let t_ndim = ndim x in if count = 0 then begin let s = Array.copy t_shape in if t_ndim > 0 then s.(ax_idx) <- 0; empty (B.context x) (dtype x) (if axis = None then [| 0 |] else s) end else if count = 1 then B.copy x else if t_ndim = 0 then let repeated = expand [| count |] (reshape [| 1 |] x) in if axis = None then repeated else reshape (shape x) repeated else let axis_size = t_shape.(ax_idx) in let slices = ref [] in for i = axis_size - 1 downto 0 do let slice = Array.init t_ndim (fun dim -> if dim = ax_idx then (i, i + 1) else (0, t_shape.(dim))) in let sv = B.shrink x slice in for _ = 1 to count do slices := sv :: !slices done done; cat_tensors ~axis:ax_idx !slices (* ───── Concatenation and Stacking ───── *) let check_dtypes_match ~op ts = let first_dtype = dtype (List.hd ts) in List.iter (fun x -> let d = dtype x in if not (Dtype.equal first_dtype d) then err op "expected dtype %s, got %s" (Dtype.to_string first_dtype) (Dtype.to_string d)) (List.tl ts) let concatenate ?axis ts = match ts with | [] -> invalid_arg "concatenate: tensor list cannot be empty, provide at least one \ tensor" | [ x ] -> copy x | _ -> ( check_dtypes_match ~op:"concatenate" ts; match axis with | None -> cat_tensors ~axis:0 (List.map flatten ts) | Some a -> let first = List.hd ts in let first_ndim = ndim first in let axis = resolve_single_axis ~ndim_opt:first_ndim first a in if not (List.for_all (fun x -> ndim x = first_ndim) ts) then invalid_arg "concatenate: arrays must have same number of dimensions"; let first_shape = shape first in List.iter (fun x -> let s = shape x in Array.iteri (fun i d -> if i <> axis && d <> first_shape.(i) then err "concatenate" "dimension %d, size %d≠%d" i d first_shape.(i)) s) (List.tl ts); cat_tensors ~axis ts) let stack ?axis ts = match ts with | [] -> invalid_arg "stack: tensor list cannot be empty" | _ -> let first_ndim = Array.length (shape (List.hd ts)) in let axis = match axis with | None -> 0 | Some a -> let a = if a < 0 then a + first_ndim + 1 else a in if a < 0 || a > first_ndim then err "stack" "axis %d out of bounds for %dD tensor" a first_ndim; a in concatenate ~axis (List.map (fun x -> unsqueeze ~axes:[ axis ] x) ts) let ensure_ndim n x = let s = shape x in let nd = Array.length s in if nd >= n then x else let new_shape = Array.make n 1 in Array.blit s 0 new_shape 0 nd; reshape new_shape x let vstack ts = match ts with | [] -> invalid_arg "vstack: tensor list cannot be empty" | _ -> concatenate ~axis:0 (List.map (fun x -> if ndim x = 0 then reshape [| 1; 1 |] x else if ndim x = 1 then reshape [| 1; numel x |] x else x) ts) let hstack ts = match ts with | [] -> invalid_arg "hstack: tensor list cannot be empty" | _ -> if List.for_all (fun x -> ndim x <= 1) ts then concatenate ~axis:0 (List.map (fun x -> if ndim x = 0 then reshape [| 1 |] x else x) ts) else concatenate ~axis:1 (List.map (fun x -> if ndim x = 0 then reshape [| 1; 1 |] x else if ndim x = 1 then reshape [| numel x; 1 |] x else x) ts) let dstack ts = match ts with | [] -> invalid_arg "dstack: tensor list cannot be empty" | _ -> concatenate ~axis:2 (List.map (fun x -> let s = shape x in let nd = Array.length s in if nd = 0 then reshape [| 1; 1; 1 |] x else if nd = 1 then reshape [| 1; s.(0); 1 |] x else if nd = 2 then reshape [| s.(0); s.(1); 1 |] x else x) ts) let broadcast_arrays ts = match ts with | [] -> [] | [ x ] -> [ x ] | _ -> let target = List.fold_left (fun acc x -> Shape.broadcast acc (shape x)) (shape (List.hd ts)) (List.tl ts) in List.map (fun x -> broadcast_to target x) ts (* ───── Array Creation ───── *) let eye ctx ?m ?k dtype n = let rows = match m with Some v -> v | None -> n in let cols = n in let k_val = match k with Some v -> v | None -> 0 in if rows <= 0 || cols <= 0 || k_val >= cols || k_val <= -rows then zeros ctx dtype [| rows; cols |] else let arr = Array.make (rows * cols) (Dtype.zero dtype) in let one = Dtype.one dtype in for i = 0 to Stdlib.min rows cols - 1 do let col = i + k_val in if col >= 0 && col < cols then arr.((i * cols) + col) <- one done; create ctx dtype [| rows; cols |] arr let identity ctx dtype n = eye ctx ~m:n ~k:0 dtype n let diag ?(k = 0) v = let v_shape = shape v in let v_ndim = Array.length v_shape in if v_ndim = 1 then let n = v_shape.(0) in let size = n + Int.abs k in let v_arr = to_array v in init (B.context v) (dtype v) [| size; size |] (fun indices -> let row = indices.(0) in let col = indices.(1) in let diag_idx = if k >= 0 then if col = row + k && row >= 0 && row < n then row else -1 else if row = col - k && col >= 0 && col < n then col else -1 in if diag_idx >= 0 && diag_idx < n then v_arr.(diag_idx) else Dtype.zero (dtype v)) else if v_ndim >= 2 then let rows = v_shape.(0) in let cols = v_shape.(1) in let diag_len = Stdlib.max 0 (if k >= 0 then Int.min rows (cols - k) else Int.min (rows + k) cols) in if diag_len = 0 then empty (B.context v) (dtype v) [| 0 |] else let v_arr = to_array v in init (B.context v) (dtype v) [| diag_len |] (fun indices -> let i = indices.(0) in let row = if k >= 0 then i else i - k in let col = if k >= 0 then i + k else i in v_arr.((row * cols) + col)) else err "diag" "input, expected 1D or 2D array, got %dD" v_ndim let arange (type a b) ctx (dtype : (a, b) Dtype.t) start stop step = if start >= stop && step > 0 then err "arange" "range [%d, %d), empty with step=%d, ensure start < stop for positive \ step, or start > stop for negative step" start stop step; if step = 0 then invalid_arg "arange: step cannot be zero"; let num_elements = if step > 0 then if start >= stop then 0 else (stop - start + step - 1) / step else if start <= stop then 0 else (start - stop + -step - 1) / -step in if num_elements <= 0 then empty ctx dtype [| 0 |] else let float_at i = float_of_int start +. (float_of_int i *. float_of_int step) in let int_at i = start + (i * step) in let f_init idx_arr : a = let i = idx_arr.(0) in match dtype with | Dtype.Float16 -> float_at i | Dtype.Float32 -> float_at i | Dtype.Float64 -> float_at i | Dtype.BFloat16 -> float_at i | Dtype.Float8_e4m3 -> float_at i | Dtype.Float8_e5m2 -> float_at i | Dtype.Int8 -> int_at i | Dtype.UInt8 -> int_at i | Dtype.Int16 -> int_at i | Dtype.UInt16 -> int_at i | Dtype.Int4 -> int_at i | Dtype.UInt4 -> int_at i | Dtype.Bool -> i <> 0 | Dtype.Int32 -> Int32.(add (of_int start) (mul (of_int i) (of_int step))) | Dtype.UInt32 -> Int32.(add (of_int start) (mul (of_int i) (of_int step))) | Dtype.Int64 -> Int64.(add (of_int start) (mul (of_int i) (of_int step))) | Dtype.UInt64 -> Int64.(add (of_int start) (mul (of_int i) (of_int step))) | Dtype.Complex64 -> { Complex.re = float_at i; im = 0. } | Dtype.Complex128 -> { Complex.re = float_at i; im = 0. } in init ctx dtype [| num_elements |] f_init let arange_f ctx dtype start_f stop_f step_f = if step_f = 0. then invalid_arg "arange_f: step cannot be zero"; let num_exact_steps = (stop_f -. start_f) /. step_f in let eps = 1e-9 in let num_elements = if (step_f > 0. && stop_f <= start_f +. (eps *. Float.abs step_f)) || (step_f < 0. && stop_f >= start_f +. (eps *. Float.abs step_f)) || (Float.abs num_exact_steps < eps && num_exact_steps <= 0.) then 0 else let corrected = num_exact_steps -. Float.copy_sign eps num_exact_steps in int_of_float (Float.floor corrected +. 1.) in let n = Stdlib.max 0 num_elements in if n <= 0 then empty ctx dtype [| 0 |] else init ctx dtype [| n |] (fun idx -> start_f +. (float_of_int idx.(0) *. step_f)) let linspace ctx dtype ?(endpoint = true) start_f stop_f count = if count < 0 then err "linspace" "count %d, negative count, use count >= 0" count; if count = 0 then empty ctx dtype [| 0 |] else if count = 1 then full ctx dtype [| 1 |] (Dtype.of_float dtype start_f) else let div_factor = float_of_int (if endpoint then count - 1 else count) in let step = (stop_f -. start_f) /. div_factor in init ctx dtype [| count |] (fun idx -> Dtype.of_float dtype (start_f +. (float_of_int idx.(0) *. step))) let logspace ctx dtype ?(endpoint = true) ?(base = 10.0) start_exp stop_exp count = if count < 0 then err "logspace" "count must be >= 0, got %d" count; if count = 0 then empty ctx dtype [| 0 |] else let exponents = linspace ctx dtype ~endpoint start_exp stop_exp count in if base = Float.exp 1.0 then exp exponents else if base = 2.0 then exp2 exponents else let log2_base = Stdlib.log base /. Stdlib.log 2.0 in let log2_base_t = broadcast_to (shape exponents) (scalar ctx dtype log2_base) in exp2 (mul exponents log2_base_t) let geomspace ctx dtype ?(endpoint = true) start_f stop_f count = if start_f <= 0. || stop_f <= 0. then err "geomspace" "%s, must be positive (>0), geomspace requires positive values for \ logarithmic spacing" (if start_f <= 0. then Printf.sprintf "start %g" start_f else Printf.sprintf "stop %g" stop_f); if count < 0 then err "geomspace" "count must be >= 0, got %d" count; if count = 0 then empty ctx dtype [| 0 |] else if count = 1 then full ctx dtype [| 1 |] start_f else exp (linspace ctx dtype ~endpoint (Stdlib.log start_f) (Stdlib.log stop_f) count) let meshgrid ?(indexing = `xy) x y = let x_shape = shape x in let y_shape = shape y in if Array.length x_shape <> 1 then invalid_arg "meshgrid: x must be 1D"; if Array.length y_shape <> 1 then invalid_arg "meshgrid: y must be 1D"; let nx = x_shape.(0) in let ny = y_shape.(0) in match indexing with | `xy -> ( broadcast_to [| ny; nx |] (reshape [| 1; nx |] x), broadcast_to [| ny; nx |] (reshape [| ny; 1 |] y) ) | `ij -> ( broadcast_to [| nx; ny |] (reshape [| nx; 1 |] x), broadcast_to [| nx; ny |] (reshape [| 1; ny |] y) ) (* Triangular mask: tril uses (>=), triu uses (<=) *) let triangular_mask ~op ~cmp ?k x = let k_val = match k with Some v -> v | None -> 0 in let sh = shape x in let nd = Array.length sh in if nd < 2 then err op "input requires at least 2D tensor"; let rows = sh.(nd - 2) in let cols = sh.(nd - 1) in let row_idx = reshape [| rows; 1 |] (arange (B.context x) int32 0 rows 1) in let col_idx = reshape [| 1; cols |] (arange (B.context x) int32 0 cols 1) in let k_offset = sub col_idx (scalar (B.context x) int32 (Int32.of_int k_val)) in let mask = cmp row_idx k_offset in let mask = if nd > 2 then broadcast_to (Array.concat [ Array.sub sh 0 (nd - 2); [| rows; cols |] ]) mask else mask in where mask x (zeros_like x) let tril ?k x = triangular_mask ~op:"tril" ~cmp:greater_equal ?k x let triu ?k x = triangular_mask ~op:"triu" ~cmp:less_equal ?k x (* ───── Take Operations ───── *) let apply_index_mode ~mode ~n ctx indices = match mode with | `raise -> indices | `wrap -> mod_ indices (scalar (B.context indices) Int32 (Int32.of_int n)) | `clip -> let s = shape indices in minimum (maximum indices (zeros ctx Int32 s)) (full ctx Int32 s (Int32.of_int (n - 1))) let take ?axis ?(mode = `raise) indices t = let ctx = B.context t in match axis with | None -> let t_flat = reshape [| numel t |] t in let idx = apply_index_mode ~mode ~n:(numel t) ctx indices in let out = empty ctx (dtype t_flat) (shape idx) in B.gather ~out t_flat idx ~axis:0; out | Some axis -> let t_shape = shape t in let axis = resolve_single_axis t axis in let idx = apply_index_mode ~mode ~n:t_shape.(axis) ctx indices in let n_idx = numel idx in (* Reshape indices for broadcasting: [1,...,1,n_idx,1,...,1] *) let expanded_shape = Array.init (Array.length t_shape) (fun i -> if i = axis then n_idx else 1) in let broadcast_shape = Array.copy t_shape in broadcast_shape.(axis) <- n_idx; let idx_broadcast = broadcast_to broadcast_shape (reshape expanded_shape idx) in let out = empty ctx (dtype t) (shape idx_broadcast) in B.gather ~out t idx_broadcast ~axis; let out_shape = Array.copy t_shape in out_shape.(axis) <- n_idx; reshape out_shape out let take_along_axis ~axis indices t = let axis = resolve_single_axis t axis in let t_shape = shape t in let idx_shape = shape indices in if Array.length t_shape <> Array.length idx_shape then err "take_along_axis" "cannot reshape %s to %s" (Shape.to_string idx_shape) (Shape.to_string t_shape); Array.iteri (fun i dim -> if i <> axis && dim <> idx_shape.(i) then err "take_along_axis" "shape, dimension %d: indices has %d but tensor has %d" i idx_shape.(i) dim) t_shape; let out = empty (B.context t) (dtype t) idx_shape in B.gather ~out t indices ~axis; out (* ───── Indexing and Slicing ───── *) let normalize_index dim_size idx = if idx < 0 then dim_size + idx else idx let normalize_and_check_index ~op dim_size idx = let idx' = if idx < 0 then dim_size + idx else idx in if idx' < 0 || idx' >= dim_size then err op "index %d out of bounds [0, %d)" idx dim_size; idx' type dim_op = | View of { start : int; stop : int; step : int; dim_len : int } | Squeeze of { idx : int } | Gather of int array | New_axis let normalize_slice_spec dim_size = function | I idx -> Squeeze { idx = normalize_and_check_index ~op:"slice" dim_size idx } | A -> View { start = 0; stop = dim_size; step = 1; dim_len = dim_size } | R (start, stop) -> let s = Int.max 0 (Int.min (normalize_index dim_size start) dim_size) in let e = Int.max 0 (Int.min (normalize_index dim_size stop) dim_size) in View { start = s; stop = e; step = 1; dim_len = Int.max 0 (e - s) } | Rs (start, stop, step) -> if step = 0 then invalid_arg "slice: step cannot be zero, use positive step for forward slicing \ or negative for reverse"; let s = normalize_index dim_size start in let e = normalize_index dim_size stop in let len, actual_stop = if step > 0 then let s = Int.max 0 (Int.min s dim_size) in let e = Int.max 0 (Int.min e dim_size) in ((if s >= e then 0 else ((e - 1 - s) / step) + 1), e) else let s = Int.min (dim_size - 1) (Int.max (-1) s) in let e = Int.min (dim_size - 1) (Int.max (-1) e) in ((if s <= e then 0 else ((s - e - 1) / -step) + 1), e) in View { start = s; stop = actual_stop; step; dim_len = len } | L indices -> Gather (Array.map (normalize_and_check_index ~op:"slice" dim_size) (Array.of_list indices)) | N -> New_axis | M _ -> invalid_arg "slice: mask slicing not supported" let slice_internal specs x = let input_shape = shape x in let ndim_in = Array.length input_shape in (* Parse specs, then pad with A for unspecified trailing dimensions *) let ops, consumed = List.fold_left (fun (acc, dim) spec -> match spec with | N -> (New_axis :: acc, dim) | _ -> if dim >= ndim_in then invalid_arg "slice: too many indices"; (normalize_slice_spec input_shape.(dim) spec :: acc, dim + 1)) ([], 0) specs in let rec pad_trailing acc dim = if dim >= ndim_in then List.rev acc else pad_trailing (normalize_slice_spec input_shape.(dim) A :: acc) (dim + 1) in let ops = pad_trailing ops consumed in let gather_axis axis indices t = let idx_t = init (B.context t) Dtype.int32 [| Array.length indices |] (fun i -> Int32.of_int indices.(i.(0))) in take ~axis idx_t t in let shrink_axis axis start stop t = if start < stop then B.shrink t (Array.mapi (fun i dim -> if i = axis then (start, stop) else (0, dim)) (shape t)) else take ~axis (empty (B.context t) Dtype.int32 [| 0 |]) t in let rec apply current axis sq_axes = function | [] -> (current, sq_axes) | New_axis :: rest -> apply (unsqueeze ~axes:[ axis ] current) (axis + 1) sq_axes rest | Squeeze { idx } :: rest -> apply (shrink_axis axis idx (idx + 1) current) (axis + 1) (axis :: sq_axes) rest | Gather indices :: rest -> apply (gather_axis axis indices current) (axis + 1) sq_axes rest | View { start; step; dim_len; _ } :: rest -> let current' = if step = 1 then shrink_axis axis start (start + dim_len) current else if step = -1 then ( if dim_len = 0 then shrink_axis axis 0 0 current else let sliced = shrink_axis axis (start - dim_len + 1) (start + 1) current in let fb = Array.make (ndim sliced) false in fb.(axis) <- true; B.flip sliced fb) else gather_axis axis (Array.init dim_len (fun i -> start + (i * step))) current in apply current' (axis + 1) sq_axes rest in let result, sq_axes = apply x 0 [] ops in match List.sort_uniq compare sq_axes with | [] -> result | axes -> squeeze ~axes result let set_slice_internal specs x y = let x_shape = shape x in let nd = Array.length x_shape in let full_specs = if List.length specs < nd then specs @ List.init (nd - List.length specs) (fun _ -> A) else specs in (* Fast path: contiguous view — just assign *) let is_view_compatible = List.for_all (function | L _ | M _ -> false | Rs (_, _, s) -> Int.abs s = 1 | _ -> true) full_specs in if is_view_compatible then let target = slice_internal full_specs x in B.assign target (broadcast_to (shape target) y) else begin (* Slow path: scatter for fancy indexing *) let strides = Array.make nd 1 in for i = nd - 2 downto 0 do strides.(i) <- strides.(i + 1) * x_shape.(i + 1) done; let ctx = B.context x in let dims_info = List.mapi (fun i spec -> match normalize_slice_spec x_shape.(i) spec with | Squeeze { idx } -> (true, scalar ctx Dtype.int32 (Int32.of_int idx)) | View { start; stop; step; _ } -> (false, arange ctx Dtype.int32 start stop step) | Gather indices -> ( false, init ctx Dtype.int32 [| Array.length indices |] (fun k -> Int32.of_int indices.(k.(0))) ) | New_axis -> invalid_arg "set_slice: New_axis not supported") full_specs in let target_shape = Array.of_list (List.filter_map (fun (sq, t) -> if sq then None else Some (numel t)) dims_info) in let target_rank = Array.length target_shape in let flat_idx = ref (scalar ctx Dtype.int32 0l) in let tdim = ref 0 in List.iteri (fun i (squeezed, idx_t) -> let stride = Int32.of_int strides.(i) in let weighted = if stride = 1l then idx_t else mul idx_t (scalar ctx Dtype.int32 stride) in if squeezed then flat_idx := add !flat_idx weighted else begin let rs = Array.make target_rank 1 in rs.(!tdim) <- numel idx_t; flat_idx := add !flat_idx (reshape rs weighted); incr tdim end) dims_info; let x_flat = reshape [| numel x |] x in let y_flat = reshape [| numel (broadcast_to target_shape y) |] (broadcast_to target_shape y) in let result = B.scatter ~mode:`Set ~unique_indices:false x_flat ~indices:(reshape [| numel !flat_idx |] !flat_idx) ~updates:y_flat ~axis:0 in B.assign x (reshape x_shape result) end let get indices x = let x_shape = shape x in let checked = List.mapi (fun dim idx -> if dim >= Array.length x_shape then err "get" "indices, too many for shape %s" (Shape.to_string x_shape); let idx' = normalize_index x_shape.(dim) idx in if idx' < 0 || idx' >= x_shape.(dim) then err "get" "index [%s] out of bounds for shape %s, index %d at dim %d: %d \ not in [0, %d)" (String.concat "," (List.map string_of_int indices)) (Shape.to_string x_shape) dim dim idx' x_shape.(dim); idx') indices in slice_internal (List.map (fun i -> I i) checked) x let set indices x value = let x_shape = shape x in let checked = List.mapi (fun dim idx -> if dim >= Array.length x_shape then err "set" "indices, too many for shape %s" (Shape.to_string x_shape); let idx' = normalize_index x_shape.(dim) idx in if idx' < 0 || idx' >= x_shape.(dim) then err "set" "index %d at dimension %d, out of bounds for shape %s, index %d \ at dim %d: %d not in [0, %d)" idx dim (Shape.to_string x_shape) dim dim idx' x_shape.(dim); idx') indices in set_slice_internal (List.map (fun i -> I i) checked) x value let unsafe_get indices x = let t = get indices x in let ba = data t in if numel t <> 1 then err "unsafe_get" "expected scalar result, got %d elements" (numel t); match View.strides_opt (B.view t) with | Some _ -> Nx_buffer.get ba (offset t) | None -> if Nx_buffer.length ba = 1 then Nx_buffer.get ba 0 else invalid_arg "unsafe_get: cannot read from non-composable scalar view" let unsafe_set indices value x = set indices x (scalar (B.context x) (dtype x) value) let slice specs t = slice_internal specs t let set_slice specs t value = set_slice_internal specs t value let item indices t = let s = shape t in if List.length indices <> Array.length s then invalid_arg (Printf.sprintf "item: need %d indices for %d-d tensor, got %d" (Array.length s) (Array.length s) (List.length indices)); unsafe_get [] (get indices t) let set_item indices value t = let s = shape t in if List.length indices <> Array.length s then invalid_arg (Printf.sprintf "set_item: need %d indices for %dD tensor, got %d" (Array.length s) (Array.length s) (List.length indices)); unsafe_set indices value t let put ?axis ~indices ~values ?(mode = `raise) t = let indices = if dtype indices = Int32 then indices else astype Int32 indices in let ctx = B.context t in match axis with | None -> let orig_shape = shape t in let t_flat = reshape [| numel t |] t in let idx = apply_index_mode ~mode ~n:(numel t) ctx indices in let result = B.scatter ~mode:`Set ~unique_indices:false t_flat ~indices:(reshape [| numel indices |] idx) ~updates:(reshape [| numel values |] values) ~axis:0 in blit (reshape orig_shape result) t | Some axis -> let axis = resolve_single_axis t axis in let idx = apply_index_mode ~mode ~n:(dim axis t) ctx indices in let result = B.scatter ~mode:`Set ~unique_indices:false t ~indices:idx ~updates:values ~axis in blit result t let index_put ~indices ~values ?(mode = `raise) t = let ctx = B.context t in let t_shape = shape t in let nd = Array.length t_shape in if nd = 0 then invalid_arg "index_put: tensor rank, cannot index into scalar tensor"; if Array.length indices <> nd then err "index_put" "indices, expected %d index tensors, got %d" nd (Array.length indices); let indices_bc = Array.map (fun idx -> if dtype idx = Int32 then idx else astype Int32 idx) indices |> Array.to_list |> broadcast_arrays |> Array.of_list in let indices_processed = Array.mapi (fun axis idx -> let n = t_shape.(axis) in if n = 0 && numel idx <> 0 then err "index_put" "axis %d, cannot index into zero-sized dimension" axis; if numel idx = 0 then idx else match mode with | `raise -> idx | `wrap -> let m = broadcast_to (shape idx) (scalar ctx Int32 (Int32.of_int n)) in let wrapped = mod_ idx m in let z = zeros ctx Int32 (shape idx) in where (cmplt wrapped z) (add wrapped m) wrapped | `clip -> minimum (maximum idx (zeros ctx Int32 (shape idx))) (full ctx Int32 (shape idx) (Int32.of_int (n - 1)))) indices_bc in let target_shape = shape indices_processed.(0) in if array_prod target_shape = 0 then () else let values = if shape values = target_shape then values else broadcast_to target_shape values in let strides = Shape.c_contiguous_strides t_shape in let flat_indices = let acc = ref (zeros ctx Int32 target_shape) in for axis = 0 to nd - 1 do let idx = indices_processed.(axis) in let s = strides.(axis) in let contribution = if s = 0 || s = 1 then idx else mul idx (full ctx Int32 target_shape (Int32.of_int s)) in acc := add !acc contribution done; !acc in put ~indices:flat_indices ~values ~mode:`raise t let put_along_axis ~axis ~indices ~values t = let axis = resolve_single_axis t axis in let t_shape = shape t in let idx_shape = shape indices in if Array.length t_shape <> Array.length idx_shape then err "put_along_axis" "cannot reshape %s to %s" (Shape.to_string idx_shape) (Shape.to_string t_shape); let values = if shape values = idx_shape then values else broadcast_to idx_shape values in blit (B.scatter ~mode:`Set ~unique_indices:false t ~indices ~updates:values ~axis) t (* Data-dependent output shapes — not differentiable *) let nonzero_indices_only (condition : (bool, bool_elt) t) = let total = numel condition in let cond_flat = reshape [| total |] condition in let n = sum (astype Int32 cond_flat) |> squeeze |> unsafe_get [] |> Int32.to_int in if n = 0 then [| empty (B.context condition) Int32 [| 0 |] |] else let result = create (B.context condition) Int32 [| n |] (Array.make n 0l) in let idx = ref 0 in for i = 0 to total - 1 do if unsafe_get [ i ] cond_flat then begin set_item [ !idx ] (Int32.of_int i) result; incr idx end done; [| result |] let compress ?axis ~(condition : (bool, bool_elt) t) t = match axis with | None -> let t_flat = flatten t in let cond_flat = flatten condition in let n = sum ~axes:[ 0 ] (astype Int32 cond_flat) |> squeeze |> unsafe_get [] |> Int32.to_int in if n = 0 then empty (B.context t) (dtype t) [| 0 |] else take (nonzero_indices_only cond_flat).(0) t_flat | Some axis -> let axis = resolve_single_axis t axis in let axis_size = dim axis t in if numel condition <> axis_size then invalid_arg (Printf.sprintf "compress: length %d doesn't match axis %d size %d" (numel condition) axis axis_size); let cond_1d = reshape [| axis_size |] condition in let true_idx = nonzero_indices_only cond_1d in if numel true_idx.(0) = 0 then begin let s = Array.copy (shape t) in s.(axis) <- 0; empty (B.context t) (dtype t) s end else take ~axis true_idx.(0) t let extract ~condition t = if shape condition <> shape t then invalid_arg "extract: shape mismatch"; compress ~condition (flatten t) let nonzero (type a b) (t : (a, b) t) = let t_shape = shape t in let nd = Array.length t_shape in let mask = not_equal t (broadcast_to t_shape (zeros (B.context t) (dtype t) [| 1 |])) in let mask_flat = reshape [| numel mask |] mask in let n = sum (astype Int32 mask_flat) |> squeeze |> unsafe_get [] |> Int32.to_int in if n = 0 then Array.init nd (fun _ -> empty (B.context t) Int32 [| 0 |]) else let coords = Array.init nd (fun _ -> create (B.context t) Int32 [| n |] (Array.make n 0l)) in let idx = ref 0 in let pos = Array.make nd 0 in let rec walk dim = if dim = nd then begin let elem = get (Array.to_list pos) t in let z = zeros (B.context t) (dtype t) (shape elem) in if unsafe_get [] (not_equal elem z) <> false then begin for d = 0 to nd - 1 do set_item [ !idx ] (Int32.of_int pos.(d)) coords.(d) done; incr idx end end else for i = 0 to t_shape.(dim) - 1 do pos.(dim) <- i; walk (dim + 1) done in walk 0; Array.map (fun c -> slice [ Rs (0, !idx, 1) ] c) coords let argwhere t = let coords = nonzero t in if Array.length coords = 0 then empty (B.context t) Int32 [| 0; 0 |] else let n = dim 0 coords.(0) in let nd = Array.length coords in if n = 0 then empty (B.context t) Int32 [| 0; nd |] else let result = zeros (B.context t) Int32 [| n; nd |] in for i = 0 to nd - 1 do blit (flatten coords.(i)) (slice_internal [ A; I i ] result) done; result (* ───── Splitting ───── *) let array_split ~axis sections x = let nd = ndim x in let axis = resolve_single_axis x axis in let axis_size = dim axis x in let make_slice start stop = if start < stop then slice_internal (List.init nd (fun j -> if j = axis then R (start, stop) else A)) x else let s = Array.copy (shape x) in s.(axis) <- 0; empty (B.context x) (dtype x) s in match sections with | `Indices indices -> let idx = Array.of_list indices in let n = Array.length idx + 1 in let bounds = Array.make (n + 1) 0 in Array.iteri (fun i v -> bounds.(i + 1) <- v) idx; bounds.(n) <- axis_size; Array.to_list (Array.init n (fun i -> make_slice bounds.(i) bounds.(i + 1))) | `Count n -> if n <= 0 then err "array_split" "sections must be >= 1, got %d" n; let base = axis_size / n in let rem = axis_size mod n in let splits = Array.make n x in let start = ref 0 in for i = 0 to n - 1 do let sz = base + if i < rem then 1 else 0 in splits.(i) <- make_slice !start (!start + sz); start := !start + sz done; Array.to_list splits let split ~axis sections x = let axis = resolve_single_axis x axis in let axis_size = dim axis x in if axis_size mod sections <> 0 then err "split" "cannot divide evenly axis %d (size %d) to %d sections, %d %% %d = %d, \ use array_split for uneven division" axis axis_size sections axis_size sections (axis_size mod sections); array_split ~axis (`Count sections) x (* ───── Sorting and Searching ───── *) let sort (type a b) ?(descending = false) ?(axis = -1) (x : (a, b) t) = if ndim x = 0 then (x, scalar (B.context x) Dtype.int32 0l) else let r = ndim x in let axis = if axis < 0 then axis + r else axis in if axis < 0 || axis >= r then err "sort" "axis %d out of bounds for %dD tensor" axis r; let out_sorted = empty (B.context x) (dtype x) (shape x) in let out_indices = empty (B.context x) Dtype.int32 (shape x) in B.sort ~out:out_sorted ~axis ~descending x; B.argsort ~out:out_indices ~axis ~descending x; (out_sorted, out_indices) let argsort ?(descending = false) ?(axis = -1) x = snd (sort ~descending ~axis x) let argmax ?axis ?(keepdims = false) x = let x', axis = match axis with | None -> (flatten x, 0) | Some a -> let r = ndim x in let a = resolve_single_axis ~ndim_opt:r x a in if a < 0 || a >= r then err "argmax" "axis %d out of bounds for %dD tensor" a r; (x, a) in let out = empty (B.context x) Dtype.int32 (reduce_output_shape (shape x') [| axis |] keepdims) in B.argmax ~out ~axis ~keepdims x'; out let argmin (type a b) ?axis ?(keepdims = false) (x : (a, b) t) : (int32, Dtype.int32_elt) t = let x', axis = match axis with | None -> (flatten x, 0) | Some a -> let r = ndim x in let a = resolve_single_axis ~ndim_opt:r x a in if a < 0 || a >= r then err "argmin" "axis %d out of bounds for %dD tensor" a r; (x, a) in let out = empty (B.context x) Dtype.int32 (reduce_output_shape (shape x') [| axis |] keepdims) in B.argmin ~out ~axis ~keepdims x'; out (* ───── Random Number Generation ───── *) let validate_random_float_params op dtype shape = if not (Dtype.is_float dtype) then err op "dtype %s, not a float type, rand/randn only support Float16, Float32, \ Float64" (Dtype.to_string dtype); if Array.exists (fun x -> x < 0) shape then err op "invalid shape %s, dimensions must be non-negative" (Shape.to_string shape) let rand ctx dtype shape = validate_random_float_params "rand" dtype shape; let key = Rng.next_key () in let n = array_prod shape in if n = 0 then zeros ctx dtype shape else (* Threefry: each value needs 2 int32s for key and counter *) let key_t = create ctx Dtype.int32 [| n; 2 |] (Array.init (n * 2) (fun i -> Int32.of_int (Rng.fold_in key i))) in let counter = create ctx Dtype.int32 [| n; 2 |] (Array.init (n * 2) (fun i -> Int32.of_int i)) in let bits = empty ctx Dtype.int32 [| n; 2 |] in B.threefry ~out:bits key_t counter; let bits_flat = flatten bits in let bits_needed = if n < size bits_flat then shrink [| (0, n) |] bits_flat else bits_flat in (* Signed int32 → [0, 1): add 2^31 then divide by 2^32 *) let f32 = cast Dtype.float32 bits_needed in let normalized = div (add f32 (scalar ctx Dtype.float32 2147483648.0)) (scalar ctx Dtype.float32 4294967296.0) in reshape shape (cast dtype normalized) let randn ctx dtype shape = validate_random_float_params "randn" dtype shape; if array_prod shape = 0 then zeros ctx dtype shape else (* Box-Muller: z = cos(2π u1) · sqrt(-2 ln(u2)) *) let u1 = rand ctx Dtype.float32 shape in let u2 = rand ctx Dtype.float32 shape in let angle = mul u1 (scalar ctx Dtype.float32 (2.0 *. Float.pi)) in let u2_safe = maximum (sub (ones_like u2) u2) (scalar ctx Dtype.float32 1e-7) in let result = mul (cos angle) (sqrt (mul (scalar ctx Dtype.float32 (-2.0)) (log u2_safe))) in cast dtype result let randint ctx dtype ?(high = 10) shape low = if low >= high then err "randint" "range, low=%d >= high=%d" low high; if not (Dtype.is_int dtype) then invalid_arg "randint: dtype, only integer dtypes supported"; let u = rand ctx Dtype.float32 shape in astype dtype (add (mul u (scalar ctx Dtype.float32 (float_of_int (high - low)))) (scalar ctx Dtype.float32 (float_of_int low))) let bernoulli ctx ~p shape = if p < 0.0 || p > 1.0 then invalid_arg "bernoulli: p must be in [0, 1]"; if Array.exists (fun x -> x < 0) shape then err "bernoulli" "invalid shape %s, dimensions must be non-negative" (Shape.to_string shape); cmplt (rand ctx Dtype.float32 shape) (scalar ctx Dtype.float32 p) let permutation ctx n = if n <= 0 then invalid_arg "permutation: n must be positive"; argsort (rand ctx Dtype.float32 [| n |]) ~axis:0 ~descending:false let shuffle ctx x = let s = shape x in if Array.length s = 0 then x else take ~axis:0 (permutation ctx s.(0)) x let categorical (type a b) ctx ?(axis = -1) ?shape:(batch_shape = [||]) (logits : (a, b) t) = let logits_dtype = dtype logits in let logits_shape = shape logits in if not (Dtype.is_float logits_dtype) then invalid_arg "categorical: logits requires floating point dtype"; let nd = Array.length logits_shape in let axis = if axis < 0 then nd + axis else axis in if axis < 0 || axis >= nd then err "categorical" "axis %d out of bounds for %dD tensor" axis nd; let full_shape = Array.append batch_shape logits_shape in (* Gumbel-max trick: argmax(logits + Gumbel noise) *) let run_float float_dtype eps = let u = clip (rand ctx float_dtype full_shape) ~min:eps ~max:(1. -. eps) in let neg_one = scalar ctx float_dtype (-1.0) in let gumbel = mul (log (mul (log u) neg_one)) neg_one |> astype logits_dtype in astype Dtype.int32 (argmax (add logits gumbel) ~axis:(axis + Array.length batch_shape) ~keepdims:false) in match logits_dtype with | Float64 -> run_float Dtype.float64 1e-12 | Float32 -> run_float Dtype.float32 1e-6 | Float16 -> run_float Dtype.float32 1e-3 | BFloat16 -> run_float Dtype.float32 1e-2 | Float8_e4m3 | Float8_e5m2 -> invalid_arg "categorical: logits, float8 logits not supported" | _ -> invalid_arg "categorical: logits requires floating point dtype" let truncated_normal (type a b) ctx (dtype : (a, b) Dtype.t) ~lower ~upper shape = if lower >= upper then invalid_arg "truncated_normal: bounds, lower must be less than upper"; (match dtype with | Float16 | Float32 | Float64 | BFloat16 -> () | _ -> invalid_arg "truncated_normal: dtype must be floating point"); let lo = scalar ctx Dtype.float64 lower |> astype dtype in let hi = scalar ctx Dtype.float64 upper |> astype dtype in let has_remaining mask = match to_array (any mask) with [| v |] -> v | _ -> false in let initial = randn ctx dtype shape in let accepted = logical_and (greater_equal initial lo) (less_equal initial hi) in let remaining = logical_not accepted in let rec fill acc remaining attempt = if not (has_remaining remaining) then acc else if attempt > 1000 then invalid_arg "truncated_normal: generation, failed to find samples within bounds \ after 1000 tries" else let c = randn ctx dtype shape in let within = logical_and (greater_equal c lo) (less_equal c hi) in let take_new = logical_and remaining within in fill (where take_new c acc) (logical_and remaining (logical_not within)) (attempt + 1) in fill initial remaining 1 (* ───── Linear Algebra ───── *) let matmul_output_shape a b = let sa = shape a in let sb = shape b in let ra = Array.length sa in let rb = Array.length sb in let batch_out = broadcast_shapes (Array.sub sa 0 (ra - 2)) (Array.sub sb 0 (rb - 2)) in Array.concat [ batch_out; [| sa.(ra - 2); sb.(rb - 1) |] ] let matmul_with_alloc ?out a b = let out = match out with | Some o -> o | None -> if ndim a = 2 && ndim b = 2 then empty (B.context a) (B.dtype a) [| dim 0 a; dim 1 b |] else let s = matmul_output_shape a b in empty (B.context a) (B.dtype a) s in B.matmul ~out a b; out let dot ?out x w = if not (ndim x > 0 && ndim w > 0) then invalid_arg "dot: tensors, both must be at least 1D"; match (ndim x, ndim w) with | 1, 1 -> sum ?out (mul x w) | 1, _ -> let r = matmul_with_alloc (unsqueeze ~axes:[ 0 ] x) w in copy_to_out ?out (squeeze ~axes:[ ndim r - 2 ] r) | _, 1 -> let r = matmul_with_alloc x (unsqueeze ~axes:[ 1 ] w) in copy_to_out ?out (squeeze ~axes:[ ndim r - 1 ] r) | _ -> matmul_with_alloc ?out x w let matmul ?out a_orig b_orig = if ndim a_orig = 0 || ndim b_orig = 0 then invalid_arg "matmul: inputs cannot be 0-D (scalars)"; if ndim a_orig >= 2 && ndim b_orig >= 2 then matmul_with_alloc ?out a_orig b_orig else let a, b = match (ndim a_orig, ndim b_orig) with | 1, 1 -> (unsqueeze ~axes:[ 0 ] a_orig, unsqueeze ~axes:[ 1 ] b_orig) | 1, _ -> (unsqueeze ~axes:[ 0 ] a_orig, b_orig) | _ -> (a_orig, unsqueeze ~axes:[ 1 ] b_orig) in let r = matmul_with_alloc a b in if ndim a_orig = 1 && ndim b_orig = 1 then squeeze r else if ndim a_orig = 1 then squeeze ~axes:[ ndim r - 2 ] r else squeeze ~axes:[ ndim r - 1 ] r let diagonal ?(offset = 0) ?axis1 ?axis2 x = let nd = ndim x in let ax1 = let a = Option.value axis1 ~default:(nd - 2) in if a < 0 then nd + a else a in let ax2 = let a = Option.value axis2 ~default:(nd - 1) in if a < 0 then nd + a else a in if ax1 = ax2 then invalid_arg "diagonal: axes must be different"; let perm = let others = List.filter (fun a -> a <> ax1 && a <> ax2) (List.init nd Fun.id) in others @ [ ax1; ax2 ] in let x_trans = transpose ~axes:perm x in let d1 = dim (nd - 2) x_trans in let d2 = dim (nd - 1) x_trans in let diag_len = if offset >= 0 then Stdlib.max 0 (Stdlib.min d1 (d2 - offset)) else Stdlib.max 0 (Stdlib.min (d1 + offset) d2) in if diag_len = 0 then empty (B.context x) (dtype x) (Array.append (Array.sub (shape x_trans) 0 (nd - 2)) [| 0 |]) else let prefix = Array.sub (shape x_trans) 0 (nd - 2) in let x_flat = reshape (Array.append prefix [| d1 * d2 |]) (contiguous x_trans) in (* Diagonal indices: start + i*(d2+1) for i in 0..diag_len-1 *) let start = if offset >= 0 then offset else -offset * d2 in let step = d2 + 1 in let ctx = B.context x in let idx = add (mul (arange ctx Dtype.int32 0 diag_len 1) (scalar ctx Dtype.int32 (Int32.of_int step))) (scalar ctx Dtype.int32 (Int32.of_int start)) in take ~axis:(nd - 2) idx x_flat let matrix_transpose x = let nd = ndim x in if nd < 2 then x else swapaxes (nd - 2) (nd - 1) x (* ───── Complex ───── *) let extract_complex_part (type a b) ~op ~field (x : (a, b) t) = let extract (type c d e f) (x : (Complex.t, c) t) (out_dt : (d, e) Dtype.t) (get : Complex.t -> d) : (f, _) t = let s = shape x in let size = array_prod s in let data = Array.init size (fun i -> let idx = Shape.unravel_index i s |> Array.to_list in get (unsafe_get idx x)) in Obj.magic (create (B.context x) out_dt s data) in match dtype x with | Complex64 -> extract (x : (Complex.t, complex32_elt) t) Dtype.float32 (fun c -> field c) | Complex128 -> extract (x : (Complex.t, complex64_elt) t) Dtype.float64 (fun c -> field c) | _ -> err op "dtype, input must be complex64 or complex128" let complex (type a b) ~(real : (a, b) t) ~(imag : (a, b) t) = let s = shape real in if s <> shape imag then err "complex" "cannot reshape %s to %s" (Shape.to_string (shape imag)) (Shape.to_string s); let size = array_prod s in match dtype real with | Float32 -> let real = (real : (float, float32_elt) t) in let imag = (imag : (float, float32_elt) t) in let data = Array.init size (fun i -> let idx = Shape.unravel_index i s |> Array.to_list in Complex.{ re = unsafe_get idx real; im = unsafe_get idx imag }) in Obj.magic (create (B.context real) Dtype.complex64 s data) | Float64 -> let real = (real : (float, float64_elt) t) in let imag = (imag : (float, float64_elt) t) in let data = Array.init size (fun i -> let idx = Shape.unravel_index i s |> Array.to_list in Complex.{ re = unsafe_get idx real; im = unsafe_get idx imag }) in Obj.magic (create (B.context real) Dtype.complex128 s data) | _ -> invalid_arg "complex: dtype, real and imag must be float32 or float64" let real (type a b) (x : (a, b) t) = extract_complex_part ~op:"real" ~field:(fun c -> c.Complex.re) x let imag (type a b) (x : (a, b) t) = extract_complex_part ~op:"imag" ~field:(fun c -> c.Complex.im) x let conjugate (type a b) (x : (a, b) t) = match dtype x with | Complex64 | Complex128 -> complex ~real:(real x) ~imag:(neg (imag x)) | _ -> x (* ───── Dot Products and Tensor Contractions ───── *) let vdot (type a b) (a : (a, b) t) (b : (a, b) t) = let a', b' = try let bc = broadcast_arrays [ a; b ] in (contiguous (List.nth bc 0), contiguous (List.nth bc 1)) with _ -> (a, b) in let fa = flatten a' in let fb = flatten b' in if numel fa <> numel fb then invalid_arg "vdot: different number of elements"; match dtype a with | (Complex64 | Complex128) when dtype a = dtype b -> sum (mul (conjugate fa) fb) | _ -> sum (mul fa fb) let vecdot ?axis x1 x2 = let ax = match axis with | None -> ndim x1 - 1 | Some a -> if a < 0 then ndim x1 + a else a in sum ~axes:[ ax ] ~keepdims:false (mul x1 x2) let inner a b = if (shape a).(ndim a - 1) <> (shape b).(ndim b - 1) then invalid_arg "inner: last dimensions differ"; vecdot ~axis:(-1) a b let outer ?out a b = let fa = if ndim a = 0 then reshape [| 1 |] a else flatten a in let fb = if ndim b = 0 then reshape [| 1 |] b else flatten b in let r = matmul ?out (reshape [| numel fa; 1 |] fa) (reshape [| 1; numel fb |] fb) in let r = if ndim a = 0 then squeeze ~axes:[ 0 ] r else r in if ndim b = 0 then squeeze ~axes:[ (if ndim a = 0 then 0 else 1) ] r else r let tensordot ?axes a b = match axes with | None -> matmul a b | Some (axes_a, axes_b) -> let n_axes = List.length axes_a in if n_axes <> List.length axes_b then invalid_arg "tensordot: axes lists must have same length"; let ndim_a = ndim a in let ndim_b = ndim b in let axes_a = Array.of_list (List.map (fun ax -> if ax < 0 then ndim_a + ax else ax) axes_a) in let axes_b = Array.of_list (List.map (fun ax -> if ax < 0 then ndim_b + ax else ax) axes_b) in let sa = shape a in let sb = shape b in Array.iter2 (fun ax_a ax_b -> if sa.(ax_a) <> sb.(ax_b) then invalid_arg "tensordot: axes have different sizes") axes_a axes_b; let axes_a_set = Array.fold_left (fun s x -> IntSet.add x s) IntSet.empty axes_a in let axes_b_set = Array.fold_left (fun s x -> IntSet.add x s) IntSet.empty axes_b in let free_a = Array.of_list (List.filter (fun i -> not (IntSet.mem i axes_a_set)) (List.init ndim_a Fun.id)) in let free_b = Array.of_list (List.filter (fun i -> not (IntSet.mem i axes_b_set)) (List.init ndim_b Fun.id)) in let perm_a = Array.append free_a axes_a in let perm_b = Array.append axes_b free_b in let do_transpose perm t = if Array.length perm > 1 then contiguous (transpose ~axes:(Array.to_list perm) t) else t in let at = do_transpose perm_a a in let bt = do_transpose perm_b b in let sat = shape at in let sbt = shape bt in let nfa = Array.length free_a in let nfb = Array.length free_b in let prod arr = Array.fold_left ( * ) 1 arr in let free_size_a = if nfa = 0 then 1 else prod (Array.sub sat 0 nfa) in let free_size_b = if nfb = 0 then 1 else prod (Array.sub sbt n_axes (ndim_b - n_axes)) in let contract_size = prod (Array.sub sat nfa n_axes) in let r = matmul (reshape [| free_size_a; contract_size |] at) (reshape [| contract_size; free_size_b |] bt) in let result_shape = Array.append (if nfa = 0 then [||] else Array.sub sat 0 nfa) (if nfb = 0 then [||] else Array.sub sbt n_axes (ndim_b - n_axes)) in if Array.length result_shape = 0 then squeeze r else reshape result_shape r module Einsum = struct type token = Axis of char | Ellipsis let parse_operand str = let len = String.length str in if len = 0 then [] else let rec loop idx acc ell = if idx >= len then List.rev acc else match str.[idx] with | '.' -> if idx + 2 >= len || str.[idx + 1] <> '.' || str.[idx + 2] <> '.' then invalid_arg "einsum: ellipsis must be '...'"; if ell then invalid_arg "einsum: multiple ellipsis in operand"; loop (idx + 3) (Ellipsis :: acc) true | c when (c >= 'a' && c <= 'z') || (c >= 'A' && c <= 'Z') || (c >= '0' && c <= '9') || c = '_' -> loop (idx + 1) (Axis c :: acc) ell | c -> invalid_arg (Printf.sprintf "einsum: invalid character '%c'" c) in loop 0 [] false let parse_equation subscripts = let parts = String.split_on_char '-' subscripts in match parts with | [ lhs; rhs ] when String.length rhs > 0 && rhs.[0] = '>' -> let inputs = String.split_on_char ',' lhs |> List.map String.trim |> List.filter (( <> ) "") in let output = String.trim (String.sub rhs 1 (String.length rhs - 1)) in ( Array.of_list (List.map parse_operand inputs), Some (parse_operand output) ) | [ lhs ] -> let inputs = String.split_on_char ',' lhs |> List.map String.trim |> List.filter (( <> ) "") in (Array.of_list (List.map parse_operand inputs), None) | _ -> invalid_arg "einsum: invalid format, expected inputs->output" let handle_repeated_indices tensor tokens = let rec find_dups acc idx = function | [] -> None | Axis c :: rest -> ( match List.find_opt (fun (ch, _) -> ch = c) acc with | Some (_, prev) -> Some (prev, idx, c) | None -> find_dups ((c, idx) :: acc) (idx + 1) rest) | Ellipsis :: rest -> find_dups acc (idx + 1) rest in let rec process t toks = match find_dups [] 0 toks with | None -> (t, toks) | Some (ax1, ax2, c) -> let s = shape t in if s.(ax1) <> s.(ax2) then invalid_arg (Printf.sprintf "einsum: index var '%c' must have consistent dimensions (%d \ vs %d)" c s.(ax1) s.(ax2)); let t' = diagonal ~axis1:ax1 ~axis2:ax2 t in let rec remove_at i = function | [] -> [] | _ :: xs when i = 0 -> xs | x :: xs -> x :: remove_at (i - 1) xs in process t' (remove_at ax2 toks) in process tensor tokens type tensor_info = { id : int; shape : int array; axis_labels : char list } type contraction_path = | Leaf of int | Node of contraction_path * contraction_path * tensor_info let estimate_cost (t1 : tensor_info) (t2 : tensor_info) common_chars = let dim_map = Hashtbl.create 16 in List.iteri (fun i c -> Hashtbl.replace dim_map c t1.shape.(i)) t1.axis_labels; List.iteri (fun i c -> Hashtbl.replace dim_map c t2.shape.(i)) t2.axis_labels; let all = List.sort_uniq Char.compare (t1.axis_labels @ t2.axis_labels) in let output_size = List.fold_left (fun acc c -> if List.mem c common_chars then acc else acc * Hashtbl.find dim_map c) 1 all in let op_cost = List.fold_left (fun acc c -> acc * Hashtbl.find dim_map c) 1 all in (float_of_int op_cost, float_of_int output_size) let optimize_path inputs output_chars = let workset = ref (List.mapi (fun i t -> (Leaf i, t)) inputs) in let contract_info (p1, t1) (p2, t2) = let common = List.filter (fun c -> List.mem c t2.axis_labels) t1.axis_labels in let new_labels = let all = List.sort_uniq Char.compare (t1.axis_labels @ t2.axis_labels) in List.filter (fun c -> (not (List.mem c common)) || List.mem c output_chars) all in let find_index x lst = let rec aux i = function | [] -> raise Not_found | h :: _ when h = x -> i | _ :: t -> aux (i + 1) t in aux 0 lst in let get_dim c = if List.mem c t1.axis_labels then t1.shape.(find_index c t1.axis_labels) else t2.shape.(find_index c t2.axis_labels) in let new_shape = Array.of_list (List.map get_dim new_labels) in let info = { id = -1; shape = new_shape; axis_labels = new_labels } in let cost, size = estimate_cost t1 t2 (List.filter (fun c -> not (List.mem c new_labels)) common) in (cost, size, Node (p1, p2, info), info) in while List.length !workset > 1 do let items = !workset in let best = ref None in let min_cost = ref Float.infinity in let rec iter_pairs = function | [] -> () | x :: rest -> List.iter (fun y -> let cost, _, path, info = contract_info x y in if cost < !min_cost then ( min_cost := cost; best := Some (x, y, path, info))) rest; iter_pairs rest in iter_pairs items; match !best with | None -> failwith "einsum: could not find valid contraction" | Some (i1, i2, new_path, new_info) -> workset := (new_path, new_info) :: List.filter (fun x -> x != i1 && x != i2) items done; match !workset with | [ (p, _) ] -> p | _ -> failwith "einsum: optimization failed" let contract_pair op_a str_a op_b str_b result_str = let sa = shape op_a in let sb = shape op_b in let chars_a = String.to_seq str_a |> List.of_seq in let chars_b = String.to_seq str_b |> List.of_seq in let chars_out = String.to_seq result_str |> List.of_seq in let batch_chars = List.filter (fun c -> List.mem c chars_b && List.mem c chars_out) chars_a in let contract_chars = List.filter (fun c -> List.mem c chars_b && not (List.mem c chars_out)) chars_a in let a_free = List.filter (fun c -> not (List.mem c chars_b)) chars_a in let b_free = List.filter (fun c -> not (List.mem c chars_a)) chars_b in let get_axes source target = List.map (fun c -> let rec find i = function | [] -> failwith "char not found" | x :: _ when x = c -> i | _ :: xs -> find (i + 1) xs in find 0 source) target in let perm_a = get_axes chars_a (batch_chars @ a_free @ contract_chars) in let perm_b = get_axes chars_b (batch_chars @ contract_chars @ b_free) in let is_identity perm n = let rec check i = function | [] -> i = n | x :: xs -> x = i && check (i + 1) xs in check 0 perm in let at = if is_identity perm_a (String.length str_a) then op_a else contiguous (transpose ~axes:perm_a op_a) in let bt = if is_identity perm_b (String.length str_b) then op_b else contiguous (transpose ~axes:perm_b op_b) in let prod dims = Array.fold_left ( * ) 1 dims in let pa = Array.of_list perm_a in let pb = Array.of_list perm_b in let nb = List.length batch_chars in let naf = List.length a_free in let nc = List.length contract_chars in let nbf = List.length b_free in let batch_dims = Array.init nb (fun i -> let da = sa.(pa.(i)) in let db = sb.(pb.(i)) in if da = db then da else if da = 1 then db else if db = 1 then da else invalid_arg (Printf.sprintf "einsum: incompatible broadcast dimensions (%d vs %d)" da db)) in let a_free_dims = Array.init naf (fun i -> sa.(pa.(nb + i))) in let contract_dims = Array.init nc (fun i -> sa.(pa.(nb + naf + i))) in let b_free_dims = Array.init nbf (fun i -> sb.(pb.(nb + nc + i))) in let bs = prod batch_dims in let m = prod a_free_dims in let k = prod contract_dims in let n = prod b_free_dims in let broadcast_batch tensor parr src_shape = if nb = 0 then tensor else let needs = ref false in let target = Array.init (ndim tensor) (fun i -> if i < nb then ( let src = src_shape.(parr.(i)) in let tgt = batch_dims.(i) in if src <> tgt then needs := true; tgt) else src_shape.(parr.(i))) in if !needs then broadcast_to target tensor else tensor in let at = broadcast_batch at pa sa in let bt = broadcast_batch bt pb sb in let r = matmul (reshape [| bs; m; k |] at) (reshape [| bs; k; n |] bt) in let intermediate = reshape (Array.concat [ batch_dims; a_free_dims; b_free_dims ]) r in let inter_chars = batch_chars @ a_free @ b_free in if inter_chars = chars_out then intermediate else transpose ~axes:(get_axes inter_chars chars_out) intermediate let calculate subscripts operands = let n_ops = Array.length operands in if n_ops = 0 then invalid_arg "einsum: no input operands"; match (subscripts, n_ops) with | "i,i->", 2 -> sum (mul operands.(0) operands.(1)) | "ij,jk->ik", 2 -> matmul operands.(0) operands.(1) | "ij->ji", 1 -> transpose operands.(0) | _ -> let input_tokens, output_opt = parse_equation subscripts in if Array.length input_tokens <> n_ops then invalid_arg "einsum: number of inputs must equal number of operands"; let ell_rank = let max_rank = ref 0 in for i = 0 to n_ops - 1 do let n_named = List.length (List.filter (function Axis _ -> true | _ -> false) input_tokens.(i)) in let r = ndim operands.(i) - n_named in if r < 0 then invalid_arg "einsum: operand rank too small for subscripts"; if r > !max_rank then max_rank := r done; !max_rank in let get_ell_char i = char_of_int (200 + i) in let normalized_inputs = Array.mapi (fun i tokens -> let op = operands.(i) in let n_named = List.length (List.filter (function Axis _ -> true | _ -> false) tokens) in let ell_dim = ndim op - n_named in let expanded = List.concat_map (function | Axis c -> [ Axis c ] | Ellipsis -> List.init ell_dim (fun k -> Axis (get_ell_char (ell_rank - ell_dim + k)))) tokens in let op_diag, final = handle_repeated_indices op expanded in let chars = List.map (function Axis c -> c | _ -> assert false) final in ({ id = i; shape = shape op_diag; axis_labels = chars }, op_diag)) input_tokens in let ops_info = Array.map fst normalized_inputs in let ops_tensors = Array.map snd normalized_inputs in (* Validate dimension consistency *) let char_dims = Hashtbl.create 16 in Array.iter (fun info -> List.iteri (fun idx c -> let d = info.shape.(idx) in match Hashtbl.find_opt char_dims c with | None -> Hashtbl.add char_dims c d | Some prev -> if prev <> d && prev <> 1 && d <> 1 then invalid_arg (Printf.sprintf "einsum: index var '%c' must have consistent \ dimensions (%d vs %d)" c prev d) else if d > prev then Hashtbl.replace char_dims c d) info.axis_labels) ops_info; let inputs_have_ell = Array.exists (fun toks -> List.exists (( = ) Ellipsis) toks) input_tokens in let target_chars = match output_opt with | Some tokens -> if List.exists (( = ) Ellipsis) tokens && not inputs_have_ell then invalid_arg "einsum: output ellipsis requires ellipsis in inputs"; List.concat_map (function | Axis c -> [ c ] | Ellipsis -> List.init ell_rank (fun k -> get_ell_char k)) tokens | None -> let all_chars = List.concat (Array.to_list (Array.map (fun toks -> List.filter_map (function Axis c -> Some c | Ellipsis -> None) toks) input_tokens)) in let counts = Hashtbl.create 16 in List.iter (fun c -> Hashtbl.replace counts c (1 + (Hashtbl.find_opt counts c |> Option.value ~default:0))) all_chars; let ell_chars = List.init ell_rank (fun k -> get_ell_char k) in let named = List.filter (fun c -> int_of_char c < 200) all_chars |> List.sort_uniq Char.compare |> List.filter (fun c -> Hashtbl.find counts c = 1) in ell_chars @ named in let all_input_chars = Array.fold_left (fun acc info -> acc @ info.axis_labels) [] ops_info in List.iter (fun c -> if not (List.mem c all_input_chars) then invalid_arg (Printf.sprintf "einsum: output index '%c' not found in inputs" c)) target_chars; (* Pre-reduce single-operand axes absent from output *) Array.iteri (fun i info -> let reduce_axes = ref [] in let new_labels = ref [] in let char_count = Hashtbl.create 16 in Array.iter (fun inf -> List.iter (fun c -> Hashtbl.replace char_count c (1 + (Hashtbl.find_opt char_count c |> Option.value ~default:0))) inf.axis_labels) ops_info; List.iteri (fun axis_idx c -> if Hashtbl.find char_count c = 1 && not (List.mem c target_chars) then reduce_axes := axis_idx :: !reduce_axes else new_labels := c :: !new_labels) info.axis_labels; match !reduce_axes with | [] -> () | axes -> ops_tensors.(i) <- sum ~axes:(List.rev axes) ops_tensors.(i); ops_info.(i) <- { info with shape = shape ops_tensors.(i); axis_labels = List.rev !new_labels; }) ops_info; let finalize result current_chars = let reduce = List.filter_map (fun (i, c) -> if not (List.mem c target_chars) then Some i else None) (List.mapi (fun i c -> (i, c)) current_chars) in let result = if reduce = [] then result else sum ~axes:reduce result in let final = List.filter (fun c -> List.mem c target_chars) current_chars in if final = target_chars then result else let perm = List.map (fun c -> let rec find i = function | [] -> 0 | x :: xs -> if x = c then i else find (i + 1) xs in find 0 final) target_chars in transpose ~axes:perm result in if n_ops = 1 then finalize ops_tensors.(0) ops_info.(0).axis_labels else if n_ops = 2 then let ia = ops_info.(0) in let ib = ops_info.(1) in let stra = ia.axis_labels |> List.to_seq |> String.of_seq in let strb = ib.axis_labels |> List.to_seq |> String.of_seq in let common = List.filter (fun c -> List.mem c ib.axis_labels) ia.axis_labels in let result_labels = List.sort_uniq Char.compare (ia.axis_labels @ ib.axis_labels) |> List.filter (fun c -> (not (List.mem c common)) || List.mem c target_chars) in let str_out = result_labels |> List.to_seq |> String.of_seq in finalize (contract_pair ops_tensors.(0) stra ops_tensors.(1) strb str_out) result_labels else let plan = optimize_path (Array.to_list ops_info) target_chars in let rec execute = function | Leaf idx -> ( ops_tensors.(idx), ops_info.(idx).axis_labels |> List.to_seq |> String.of_seq ) | Node (left, right, info) -> let ra, sa = execute left in let rb, sb = execute right in let so = info.axis_labels |> List.to_seq |> String.of_seq in (contract_pair ra sa rb sb so, so) in let result, rstr = execute plan in finalize result (String.to_seq rstr |> List.of_seq) end let einsum subscripts operands = Einsum.calculate subscripts operands let kron a b = let sa = shape a in let sb = shape b in let a2 = if ndim a = 1 then reshape [| sa.(0); 1 |] a else a in let b2 = if ndim b = 1 then reshape [| sb.(0); 1 |] b else b in let sa2 = shape a2 in let sb2 = shape b2 in let r = mul (reshape [| sa2.(0); 1; sa2.(1); 1 |] a2) (reshape [| 1; sb2.(0); 1; sb2.(1) |] b2) in let flat = reshape [| sa2.(0) * sb2.(0); sa2.(1) * sb2.(1) |] r in if ndim a = 1 && ndim b = 1 then flatten flat else flat let multi_dot arrays = match arrays with | [||] -> invalid_arg "multi_dot: empty array" | [| arr |] -> arr | _ -> let n = Array.length arrays in let dims = Array.make (n + 1) 0 in let matrix_dims idx = let t = arrays.(idx) in match ndim t with | 1 -> let len = (shape t).(0) in if idx = 0 then (1, len) else if idx = n - 1 then (len, 1) else invalid_arg "multi_dot: only first and last arguments may be 1D vectors" | 2 -> let s = shape t in (s.(0), s.(1)) | _ -> invalid_arg (Printf.sprintf "multi_dot: argument %d must be 1D (endpoints) or 2D matrix" idx) in for i = 0 to n - 1 do let rows, cols = matrix_dims i in if i = 0 then dims.(0) <- rows else if dims.(i) <> rows then invalid_arg (Printf.sprintf "multi_dot: shapes not aligned between arguments %d and %d \ (%d <> %d)" (i - 1) i dims.(i) rows); dims.(i + 1) <- cols done; (* MCM dynamic programming *) let d64 = Array.map Int64.of_int dims in let cost = Array.make_matrix n n Int64.zero in let split = Array.make_matrix n n 0 in for len = 2 to n do for i = 0 to n - len do let j = i + len - 1 in let best_c = ref Int64.max_int in let best_s = ref i in for k = i to j - 1 do let c = Int64.( add cost.(i).(k) (add cost.(k + 1).(j) (mul d64.(i) (mul d64.(k + 1) d64.(j + 1))))) in if c < !best_c then ( best_c := c; best_s := k) done; cost.(i).(j) <- !best_c; split.(i).(j) <- !best_s done done; let memo = Array.init n (fun _ -> Array.make n None) in let rec compute i j = match memo.(i).(j) with | Some t -> t | None -> let r = if i = j then arrays.(i) else matmul (compute i split.(i).(j)) (compute (split.(i).(j) + 1) j) in memo.(i).(j) <- Some r; r in compute 0 (n - 1) let cross ?out ?axis a b = let axis = let ax = Option.value axis ~default:(-1) in if ax < 0 then ndim a + ax else ax in if axis >= ndim a then invalid_arg "cross: axis out of bounds"; if (shape a).(axis) <> 3 then invalid_arg "cross: axis dim not 3"; if (shape b).(axis) <> 3 then invalid_arg "cross: axis dim not 3"; let at i t = squeeze ~axes:[ axis ] (slice_internal (Array.to_list (Array.init (ndim t) (fun j -> if j = axis then R (i, i + 1) else A))) t) in let c1 = sub (mul (at 1 a) (at 2 b)) (mul (at 2 a) (at 1 b)) in let c2 = sub (mul (at 2 a) (at 0 b)) (mul (at 0 a) (at 2 b)) in let c3 = sub (mul (at 0 a) (at 1 b)) (mul (at 1 a) (at 0 b)) in match out with | Some r -> let write_at i v = set_slice_internal (Array.to_list (Array.init (ndim r) (fun j -> if j = axis then R (i, i + 1) else A))) r (expand_dims [ axis ] v) in write_at 0 c1; write_at 1 c2; write_at 2 c3; r | None -> stack ~axis [ c1; c2; c3 ] (* ───── Matrix Decompositions and Solving ───── *) let check_square ~op a = let sh = shape a in let n = Array.length sh in if n < 2 then err op "input requires at least 2D array"; if sh.(n - 1) <> sh.(n - 2) then invalid_arg (Printf.sprintf "%s: coefficient matrix must be square" op) let check_float_or_complex (type a b) ~op (a : (a, b) t) = match dtype a with | Float16 | Float32 | Float64 | Complex64 | Complex128 -> () | _ -> err op "dtype must be float or complex" let check_real (type a b) ~op (a : (a, b) t) = match dtype a with | Float16 | Float32 | Float64 -> () | _ -> err op "dtype must be real (float)" let cholesky ?upper a = check_square ~op:"cholesky" a; check_float_or_complex ~op:"cholesky" a; B.cholesky ~upper:(Option.value upper ~default:false) a let qr ?mode a = check_float_or_complex ~op:"qr" a; let reduced = match mode with Some `Reduced -> true | None | Some `Complete -> false in B.qr ~reduced a let svd ?full_matrices a = check_float_or_complex ~op:"svd" a; B.svd ~full_matrices:(Option.value full_matrices ~default:false) a let svdvals a = check_float_or_complex ~op:"svdvals" a; let _, s, _ = B.svd ~full_matrices:false a in s let eig a = check_square ~op:"eig" a; check_float_or_complex ~op:"eig" a; match B.eig ~vectors:true a with | vals, Some vecs -> (vals, vecs) | _ -> invalid_arg "eig: result, expected eigenvectors" let eigh ?uplo a = check_square ~op:"eigh" a; check_real ~op:"eigh" a; let _ = uplo in match B.eigh ~vectors:true a with | vals, Some vecs -> (vals, vecs) | _ -> invalid_arg "eigh: result, expected eigenvectors" let eigvals a = check_square ~op:"eigvals" a; check_float_or_complex ~op:"eigvals" a; fst (B.eig ~vectors:false a) let eigvalsh ?uplo a = check_square ~op:"eigvalsh" a; check_real ~op:"eigvalsh" a; let _ = uplo in fst (B.eigh ~vectors:false a) let norm (type a b) ?ord ?axes ?keepdims (x : (a, b) t) = let keepdims = Option.value keepdims ~default:false in match (ord, axes) with | None, None -> sqrt (sum (square (abs x)) ~keepdims) | None, Some _ | Some `Fro, _ -> sqrt (sum (square (abs x)) ?axes ~keepdims) | Some `One, None -> max (sum (abs x) ~axes:[ ndim x - 2 ] ~keepdims) ~keepdims | Some `NegOne, None -> if ndim x = 1 then min (abs x) ~keepdims else min (sum (abs x) ~axes:[ ndim x - 2 ]) ~keepdims | Some `Two, None -> max (svdvals x |> cast (dtype x)) ~keepdims | Some `NegTwo, None -> min (svdvals x |> cast (dtype x)) ~keepdims | Some `Inf, None -> if ndim x = 1 then max (abs x) ~keepdims else max (sum (abs x) ~axes:[ ndim x - 1 ] ~keepdims) ~keepdims | Some `NegInf, None -> if ndim x = 1 then min (abs x) ~keepdims else min (sum (abs x) ~axes:[ ndim x - 1 ]) ~keepdims | Some `Nuc, None -> if ndim x < 2 then invalid_arg "norm: input, nuclear norm defined for matrices"; sum (svdvals x |> cast (dtype x)) ~keepdims | Some `NegOne, _ | Some `NegTwo, _ | Some `NegInf, _ | Some `Nuc, _ -> invalid_arg "norm: this combination of ord and axis not implemented" | Some (`P p), _ -> if p = 1.0 && axes = None && ndim x = 2 then max (sum (abs x) ~axes:[ ndim x - 2 ] ~keepdims) ~keepdims else let p_t = full (B.context x) (dtype x) [||] (Dtype.of_float (dtype x) p) in let inv_p = div (full (B.context x) (dtype x) [||] (Dtype.one (dtype x))) p_t in pow (sum (pow (abs x) p_t) ?axes ~keepdims) inv_p | _ -> invalid_arg "norm: this combination of ord and axis not implemented" let rec slogdet a = check_square ~op:"slogdet" a; check_float_or_complex ~op:"slogdet" a; let dtype_a = dtype a in let is_complex = Dtype.equal dtype_a Dtype.complex64 || Dtype.equal dtype_a Dtype.complex128 in let sh = shape a in let rank = Array.length sh in if (not is_complex) && sh.(rank - 1) = 2 && sh.(rank - 2) = 2 then (* 2x2 fast path *) let prefix = List.init (Stdlib.max 0 (rank - 2)) (fun _ -> A) in let a11 = slice_internal (prefix @ [ I 0; I 0 ]) a in let a12 = slice_internal (prefix @ [ I 0; I 1 ]) a in let a21 = slice_internal (prefix @ [ I 1; I 0 ]) a in let a22 = slice_internal (prefix @ [ I 1; I 1 ]) a in let det64 = sub (mul a11 a22) (mul a12 a21) |> cast Dtype.float64 in let z = zeros (B.context det64) Dtype.float64 (shape det64) in let sign_float = sub (cast Dtype.float32 (cast Dtype.float64 (greater det64 z))) (cast Dtype.float32 (cast Dtype.float64 (less det64 z))) in let abs_det = abs det64 in let logdet = cast Dtype.float32 (where (cmpeq abs_det z) (full (B.context det64) Dtype.float64 (shape det64) Float.neg_infinity) (log abs_det)) in (sign_float, logdet) else let _q, r = B.qr ~reduced:false a in let r_diag = diagonal r in let sign_det = let signs = sign r_diag in if ndim signs > 1 then prod signs ~axes:[ -1 ] ~keepdims:false else prod signs in let sign_float = cast Dtype.float32 (cast Dtype.float64 sign_det) in let abs_f64 = cast Dtype.float64 (abs r_diag) in let z = zeros (B.context abs_f64) Dtype.float64 (shape abs_f64) in let log_abs = where (cmpeq abs_f64 z) (full (B.context abs_f64) Dtype.float64 (shape abs_f64) Float.neg_infinity) (log abs_f64) in let logdet64 = if ndim log_abs > 1 then sum log_abs ~axes:[ -1 ] ~keepdims:false else sum log_abs in (sign_float, cast Dtype.float32 logdet64) and det a = check_square ~op:"det" a; check_float_or_complex ~op:"det" a; let sign, logabs = slogdet a in mul (cast (dtype a) sign) (exp logabs |> cast (dtype a)) let matrix_rank ?tol ?rtol ?hermitian a = check_float_or_complex ~op:"matrix_rank" a; let s = match hermitian with | Some true -> abs (fst (B.eigh ~vectors:false a)) | _ -> svdvals a in let max_s = max s |> unsafe_get [] in let sh = shape a in let m = sh.(Array.length sh - 2) in let n = sh.(Array.length sh - 1) in let eps = let dt = dtype a in if Dtype.equal dt Dtype.float32 || Dtype.equal dt Dtype.complex64 then 1.2e-7 else if Dtype.equal dt Dtype.float64 || Dtype.equal dt Dtype.complex128 then 2.2e-16 else 1e-15 in let tol = match (tol, rtol) with | Some t, _ -> t | None, Some r -> r *. max_s | None, None -> float_of_int (Stdlib.max m n) *. eps *. max_s in let mask = greater s (scalar (B.context a) (dtype s) tol) in int_of_float (Float.round (sum (cast (dtype s) mask) |> unsafe_get [])) let trace ?out ?offset a = if ndim a < 2 then invalid_arg "trace: input requires at least 2D array"; sum ?out (diagonal ~offset:(Option.value offset ~default:0) a) ~axes:[ -1 ] ~keepdims:false let solve a b = check_square ~op:"solve" a; check_float_or_complex ~op:"solve" a; check_float_or_complex ~op:"solve" b; let b_expanded = if ndim a > 2 && ndim b = 2 then let sa = shape a in let sb = shape b in let batch = array_prod (Array.sub sa 0 (ndim a - 2)) in if sb.(0) = batch && sb.(1) = sa.(ndim a - 2) then expand_dims [ -1 ] b else b else b in let q, r = B.qr ~reduced:true a in let r_diag = diagonal r |> cast Dtype.float64 in let m = dim (-2) a in let eps = if Dtype.equal (dtype a) Dtype.float32 then 1e-6 else 1e-12 in let tol_t = full (B.context r_diag) Dtype.float64 (shape r_diag) (eps *. float_of_int m) in if sum (cast Dtype.float64 (less (abs r_diag) tol_t)) |> unsafe_get [] > 0. then invalid_arg "solve: matrix is singular"; let y = matmul (matrix_transpose q) b_expanded in let result = B.triangular_solve ~upper:true ~transpose:false ~unit_diag:false r y in if b_expanded != b then squeeze ~axes:[ ndim result - 1 ] result else result let pinv (type a b) ?rtol ?hermitian (a : (a, b) t) = check_float_or_complex ~op:"pinv" a; let sh = shape a in let m = sh.(Array.length sh - 2) in let n = sh.(Array.length sh - 1) in let dtype_a = dtype a in let eps = if Dtype.equal dtype_a Dtype.float32 || Dtype.equal dtype_a Dtype.complex64 then 1.2e-7 else if Dtype.equal dtype_a Dtype.float64 || Dtype.equal dtype_a Dtype.complex128 then 2.2e-16 else 1e-15 in let max_dim = float_of_int (Stdlib.max m n) in let cutoff ~max_s = match rtol with | Some r -> r *. max_s *. max_dim | None -> max_dim *. eps *. max_s in let pinv_from_factors u s vh = let max_s = max s |> unsafe_get [] in let cutoff = cutoff ~max_s in let ones_s = ones (B.context s) (dtype s) (shape s) in let threshold = scalar (B.context s) (dtype s) cutoff in let mask = greater s threshold in let s_inv = mul (div ones_s (where mask s ones_s)) (cast (dtype s) mask) |> cast dtype_a in let v = matrix_transpose vh in let vs = mul v (unsqueeze ~axes:[ 0 ] s_inv) in if Dtype.is_complex dtype_a then matmul vs (matrix_transpose (conjugate u)) else matmul vs (matrix_transpose u) in let pinv_via_svd () = let u, s, vh = B.svd ~full_matrices:false a in pinv_from_factors u s vh in match hermitian with | Some true -> ( match B.eigh ~vectors:true a with | vals, Some vecs -> let abs_vals = abs vals in let sign_vals = sign vals in let o = ones (B.context vals) (dtype vals) (shape vals) in let z = zeros (B.context vals) (dtype vals) (shape vals) in let sign_fixed = where (cmpeq sign_vals z) o sign_vals in let vh = mul (expand_dims [ -1 ] (cast dtype_a sign_fixed)) (matrix_transpose vecs) in pinv_from_factors vecs abs_vals vh | _ -> pinv_via_svd ()) | _ -> pinv_via_svd () let lstsq ?rcond a b = check_float_or_complex ~op:"lstsq" a; check_float_or_complex ~op:"lstsq" b; let sh = shape a in let m = sh.(Array.length sh - 2) in let n = sh.(Array.length sh - 1) in let rcond_value = match rcond with | Some v -> v | None -> let eps = if Dtype.equal (dtype a) Dtype.float32 then 1.2e-7 else if Dtype.equal (dtype a) Dtype.float64 then 2.2e-16 else 1e-15 in float_of_int (Stdlib.max m n) *. eps *. (max (svdvals a) |> unsafe_get []) in let x = if m >= n then let q, r = B.qr ~reduced:true a in let y = matmul (matrix_transpose q) b in let r_sq = if ndim r = 2 then slice_internal [ R (0, n); R (0, n) ] r else slice_internal [ A; R (0, n); R (0, n) ] r in let y_top = if ndim y = 2 then slice_internal [ R (0, n); A ] y else if ndim y = 1 then slice_internal [ R (0, n) ] y else slice_internal [ A; R (0, n); A ] y in B.triangular_solve ~upper:true ~transpose:false ~unit_diag:false r_sq y_top else matmul (pinv a ~rtol:rcond_value) b in let residuals = if m > n then let res = sub b (matmul a x) in sum (square res) ~axes:[ ndim res - 2 ] ~keepdims:false else zeros (B.context a) (dtype b) [||] in (x, residuals, matrix_rank a, svdvals a) let inv a = check_square ~op:"inv" a; check_float_or_complex ~op:"inv" a; let sh = shape a in let n = sh.(Array.length sh - 1) in let batch = Array.sub sh 0 (Array.length sh - 2) in let i = broadcast_to (Array.append batch [| n; n |]) (eye (B.context a) (dtype a) n) in try solve a i with Invalid_argument msg when String.sub msg 0 5 = "solve" -> invalid_arg ("inv" ^ String.sub msg 5 (String.length msg - 5)) let matrix_power a n = let sh = shape a in let rank = Array.length sh in if rank < 2 then invalid_arg "matrix_power: input requires at least 2D array"; if sh.(rank - 2) <> sh.(rank - 1) then err "matrix_power" "matrix must be square, got %dx%d" sh.(rank - 2) sh.(rank - 1); let rec power acc base exp = if exp = 0 then acc else if exp mod 2 = 0 then power acc (matmul base base) (exp / 2) else power (matmul acc base) (matmul base base) (exp / 2) in if n = 0 then eye (B.context a) (dtype a) sh.(rank - 1) else if n > 0 then power a a (n - 1) else try let ia = inv a in if -n = 1 then ia else power ia ia (-n - 1) with Invalid_argument _ -> invalid_arg "matrix_power: singular for negative exponent" let cond ?p x = check_square ~op:"cond" x; check_float_or_complex ~op:"cond" x; match p with | None | Some `Two -> let s = svdvals x in let ds = dtype s in let mx = max s in let max_v = mx |> unsafe_get [] in let eps = if Dtype.equal ds Dtype.float32 then 1.2e-7 else if Dtype.equal ds Dtype.float64 then 2.2e-16 else 1e-15 in let tol_t = scalar (B.context x) ds (eps *. max_v) in let safe_s = where (greater s tol_t) s tol_t in let mn = if ndim safe_s > 1 then min safe_s ~axes:[ -1 ] ~keepdims:false else min safe_s in cast (dtype x) (div mx mn) | Some `One -> mul (norm ~ord:`One x) (norm ~ord:`One (inv x)) | Some `Inf -> mul (norm ~ord:`Inf x) (norm ~ord:`Inf (inv x)) | _ -> invalid_arg "cond: unsupported norm" let tensorsolve ?axes a b = check_float_or_complex ~op:"tensorsolve" a; check_float_or_complex ~op:"tensorsolve" b; let sa = shape a in let sb = shape b in let ra = Array.length sa in let rb = Array.length sb in if rb = 0 then invalid_arg "tensorsolve: b must have at least one dimension"; if ra < rb then invalid_arg "tensorsolve: a, rank must be >= rank of b"; let axes_for_b = match axes with | None -> Array.init rb (fun i -> ra - rb + i) | Some axes -> if List.length axes <> rb then err "tensorsolve" "axes, expected %d entries, got %d" rb (List.length axes); let seen = Array.make ra false in Array.map (fun ax -> let axis = if ax < 0 then ax + ra else ax in if axis < 0 || axis >= ra then err "tensorsolve" "axis %d out of bounds for %dD tensor" ax ra; if seen.(axis) then err "tensorsolve" "axis %d, repeated" ax; seen.(axis) <- true; axis) (Array.of_list axes) in let selected = Array.make ra false in Array.iter (fun ax -> selected.(ax) <- true) axes_for_b; let free = Array.of_list (List.filter (fun ax -> not selected.(ax)) (List.init ra Fun.id)) in let perm = Array.append free axes_for_b in let a_perm = let rec is_id i = if i = ra then true else if perm.(i) <> i then false else is_id (i + 1) in if is_id 0 then a else transpose ~axes:(Array.to_list perm) a in let ps = shape a_perm in let nf = Array.length free in let free_shape = Array.sub ps 0 nf in let rhs_shape = Array.sub ps nf rb in if rhs_shape <> sb then err "tensorsolve" "cannot reshape %s to %s" (Shape.to_string rhs_shape) (Shape.to_string sb); let rows = array_prod free_shape in let cols = array_prod rhs_shape in if rows <> cols then invalid_arg "tensorsolve: a, leading dimensions must match trailing dimensions"; let a_mat = reshape [| rows; cols |] a_perm in let b_vec = reshape [| rows |] b in let solution = try solve a_mat b_vec with Invalid_argument _ -> let x_col = matmul (pinv a_mat) (reshape [| rows; 1 |] b_vec) in reshape [| cols |] x_col in reshape free_shape solution let tensorinv ?ind a = check_float_or_complex ~op:"tensorinv" a; let sh = shape a in let rank = Array.length sh in if rank = 0 then invalid_arg "tensorinv: input must have at least one dimension"; let ind = Option.value ind ~default:(rank / 2) in if ind <= 0 || ind >= rank then invalid_arg "tensorinv: ind must split dimensions into two non-empty groups"; let left = Array.sub sh 0 ind in let right = Array.sub sh ind (rank - ind) in let ls = array_prod left in let rs = array_prod right in if ls <> rs then invalid_arg "tensorinv: input, leading and trailing dimensions must have equal \ product"; let inv_mat = try inv (reshape [| ls; rs |] a) with Invalid_argument _ -> pinv (reshape [| ls; rs |] a) in reshape (Array.append right left) inv_mat (* ───── FFT ───── *) type fft_norm = [ `Backward | `Forward | `Ortho ] let pad_or_truncate_for_fft x axes s = match s with | None -> x | Some sizes -> let s_arr = Array.of_list sizes in let acc = ref x in List.iteri (fun i ax -> let ax = if ax < 0 then ndim !acc + ax else ax in let cur = dim ax !acc in let target = s_arr.(i) in if target > cur then ( let pad_config = Array.make (ndim !acc) (0, 0) in pad_config.(ax) <- (0, target - cur); acc := B.pad !acc pad_config (Dtype.zero (dtype !acc))) else if target < cur then acc := B.shrink !acc (Array.init (ndim !acc) (fun idx -> if idx = ax then (0, target) else (0, dim idx !acc)))) axes; !acc let fft_norm_scale norm axes_list x = match norm with | `Backward -> 1.0 | `Forward -> let n = List.fold_left (fun acc ax -> acc * dim ax x) 1 axes_list in 1.0 /. float_of_int n | `Ortho -> let n = List.fold_left (fun acc ax -> acc * dim ax x) 1 axes_list in 1.0 /. Stdlib.sqrt (float_of_int n) (* Inverse: Backward↔Forward swapped, Ortho unchanged *) let ifft_norm_scale norm axes_list x = match norm with | `Backward -> let n = List.fold_left (fun acc ax -> acc * dim ax x) 1 axes_list in 1.0 /. float_of_int n | `Forward -> 1.0 | `Ortho -> let n = List.fold_left (fun acc ax -> acc * dim ax x) 1 axes_list in 1.0 /. Stdlib.sqrt (float_of_int n) let apply_fft_scale (type a) ?out scale (result : (Complex.t, a) t) : (Complex.t, a) t = if scale <> 1.0 then let sv = match B.dtype result with | Complex64 | Complex128 -> Complex.{ re = scale; im = 0.0 } in mul ?out result (scalar (B.context result) (B.dtype result) sv) else copy_to_out ?out result let fftn (type a) ?out ?axes ?s ?(norm = `Backward) (x : (Complex.t, a) t) : (Complex.t, a) t = let nd = ndim x in let axes_list = match axes with | None -> List.init nd Fun.id | Some a -> List.map (fun ax -> if ax < 0 then nd + ax else ax) a in (match s with | Some sizes when List.length sizes <> List.length axes_list -> invalid_arg "fft: s parameter must have same length as axes" | _ -> ()); let xp = pad_or_truncate_for_fft x axes_list s in let scale = fft_norm_scale norm axes_list xp in let r = B.fft xp ~axes:(Array.of_list axes_list) in apply_fft_scale ?out scale r let ifftn (type a) ?out ?axes ?s ?(norm = `Backward) (x : (Complex.t, a) t) : (Complex.t, a) t = let nd = ndim x in let axes_list = match axes with | None -> List.init nd Fun.id | Some a -> List.map (fun ax -> if ax < 0 then nd + ax else ax) a in (match s with | Some sizes when List.length sizes <> List.length axes_list -> invalid_arg "ifft: s parameter must have same length as axes" | _ -> ()); let xp = pad_or_truncate_for_fft x axes_list s in let scale = ifft_norm_scale norm axes_list xp in let r = B.ifft xp ~axes:(Array.of_list axes_list) in apply_fft_scale ?out scale r let rfftn ?out ?axes ?s ?(norm = `Backward) x = let nd = ndim x in let axes_list = match axes with None -> [ nd - 1 ] | Some ax -> ax in let xp = pad_or_truncate_for_fft x axes_list s in let scale = fft_norm_scale norm axes_list xp in let r = B.rfft xp ~dtype:Dtype.Complex128 ~axes:(Array.of_list axes_list) in apply_fft_scale ?out scale r let irfftn ?out ?axes ?s ?(norm = `Backward) x = let nd = ndim x in let axes_list = match axes with None -> [ nd - 1 ] | Some ax -> ax in let input_shape = shape x in let output_sizes = match s with | Some sizes -> sizes | None -> List.mapi (fun i axis -> let axis = if axis < 0 then nd + axis else axis in if i = List.length axes_list - 1 then (input_shape.(axis) - 1) * 2 else input_shape.(axis)) axes_list in let norm_scale = let n = List.fold_left ( * ) 1 output_sizes in match norm with | `Backward -> 1.0 /. float_of_int n | `Forward -> 1.0 | `Ortho -> 1.0 /. Stdlib.sqrt (float_of_int n) in let s_param = match s with None -> None | Some _ -> Some (Array.of_list output_sizes) in let r = B.irfft ?s:s_param x ~dtype:Dtype.Float64 ~axes:(Array.of_list axes_list) in if norm_scale <> 1.0 then mul ?out r (scalar (B.context r) (B.dtype r) norm_scale) else copy_to_out ?out r (* 1D FFT convenience *) let fft ?out ?(axis = -1) ?n ?(norm = `Backward) x = let s = match n with None -> None | Some sz -> Some [ sz ] in fftn ?out x ~axes:[ axis ] ?s ~norm let ifft ?out ?(axis = -1) ?n ?(norm = `Backward) x = let s = match n with None -> None | Some sz -> Some [ sz ] in ifftn ?out x ~axes:[ axis ] ?s ~norm let rfft ?out ?(axis = -1) ?n ?(norm = `Backward) x = let s = match n with None -> None | Some sz -> Some [ sz ] in rfftn ?out x ~axes:[ axis ] ?s ~norm let irfft ?out ?(axis = -1) ?n ?(norm = `Backward) x = let s = match n with None -> None | Some sz -> Some [ sz ] in irfftn ?out x ~axes:[ axis ] ?s ~norm (* 2D FFT *) let check_fft2 ~op x axes = let n = ndim x in if n < 2 then err op "input requires at least 2D array, got %dD" n; let axes_list = match axes with None -> [ n - 2; n - 1 ] | Some ax -> ax in if List.length axes_list <> 2 then err op "axes must specify exactly 2 axes"; axes_list let fft2 ?out ?axes ?s ?(norm = `Backward) x = let axes_list = check_fft2 ~op:"fft2" x axes in fftn ?out x ~axes:axes_list ?s ~norm let ifft2 ?out ?axes ?s ?(norm = `Backward) x = let axes_list = check_fft2 ~op:"ifft2" x axes in ifftn ?out x ~axes:axes_list ?s ~norm (* N-dimensional FFT public wrappers *) let fftn ?out ?axes ?s ?(norm = `Backward) x = fftn ?out x ~axes: (match axes with None -> List.init (ndim x) Fun.id | Some ax -> ax) ?s ~norm let ifftn ?out ?axes ?s ?(norm = `Backward) x = ifftn ?out x ~axes: (match axes with None -> List.init (ndim x) Fun.id | Some ax -> ax) ?s ~norm let rfft2 ?out ?axes ?s ?(norm = `Backward) x = let axes_list = check_fft2 ~op:"rfft2" x axes in rfftn ?out x ~axes:axes_list ?s ~norm let irfft2 ?out ?axes ?s ?(norm = `Backward) x = let axes_list = check_fft2 ~op:"irfft2" x axes in irfftn ?out x ~axes:axes_list ?s ~norm let rfftn ?out ?axes ?s ?(norm = `Backward) x = rfftn ?out x ~axes: (match axes with None -> List.init (ndim x) Fun.id | Some ax -> ax) ?s ~norm let irfftn ?out ?axes ?s ?(norm = `Backward) x = irfftn ?out x ~axes: (match axes with None -> List.init (ndim x) Fun.id | Some ax -> ax) ?s ~norm (* Hermitian FFT *) let hfft ?(axis = -1) ?n ?norm x = let n = match n with None -> 2 * (dim axis x - 1) | Some n -> n in let axis = resolve_single_axis x axis in irfftn x ~axes:[ axis ] ~s:[ n ] ?norm let ihfft ?(axis = -1) ?n ?norm x = let n = match n with None -> dim axis x | Some n -> n in let axis = resolve_single_axis x axis in rfftn x ~axes:[ axis ] ~s:[ n ] ?norm (* FFT helpers *) let fftfreq ctx ?(d = 1.0) n = let dt = Dtype.float64 in let v = 1.0 /. (float_of_int n *. d) in let freqs = if n mod 2 = 0 then concatenate ~axis:0 [ cast dt (arange ctx Dtype.int32 0 (n / 2) 1); cast dt (arange ctx Dtype.int32 (-(n / 2)) 0 1); ] else concatenate ~axis:0 [ cast dt (arange ctx Dtype.int32 0 ((n + 1) / 2) 1); cast dt (arange ctx Dtype.int32 (-((n - 1) / 2)) 0 1); ] in mul_s freqs v let rfftfreq ctx ?(d = 1.0) n = let dt = Dtype.float64 in let v = 1.0 /. (float_of_int n *. d) in mul (cast dt (arange ctx Dtype.int32 0 ((n / 2) + 1) 1)) (scalar ctx dt v) let fftshift ?axes x = let sh = shape x in let axes_list = match axes with | None -> List.init (Array.length sh) Fun.id | Some ax -> ax in List.fold_left (fun acc axis -> let axis = resolve_single_axis acc axis in roll (sh.(axis) / 2) acc ~axis) x axes_list let ifftshift ?axes x = let sh = shape x in let axes_list = match axes with | None -> List.init (Array.length sh) Fun.id | Some ax -> ax in List.fold_left (fun acc axis -> let axis = resolve_single_axis acc axis in roll (-(sh.(axis) / 2)) acc ~axis) x axes_list (* ───── Neural Network Operations ───── *) let softmax ?out ?(axes = [ -1 ]) ?(scale = 1.0) x = let nd = Array.length (shape x) in let axes_norm = List.map (fun ax -> if ax < 0 then nd + ax else ax) axes in let max_x = max x ~axes:axes_norm ~keepdims:true in let dt = dtype x in let shifted = if scale = 1.0 then sub x max_x else mul (scalar_like x (Dtype.of_float dt scale)) (sub x max_x) in let e = exp shifted in div ?out e (sum e ~axes:axes_norm ~keepdims:true) let log_softmax ?out ?(axes = [ -1 ]) ?(scale = 1.0) x = let axes_norm = normalize_and_dedup_axes ~op:"log_softmax" (ndim x) axes in if axes_norm = [] then copy_to_out ?out (zeros_like x) else let max_x = max x ~axes:axes_norm ~keepdims:true in let shifted = sub x max_x in let dt = dtype x in let scaled = if scale = 1.0 then shifted else mul (scalar_like shifted (Dtype.of_float dt scale)) shifted in let log_den = log (sum (exp scaled) ~axes:axes_norm ~keepdims:true) in sub ?out scaled log_den let logsumexp ?out ?axes ?(keepdims = false) x = let axes_norm = match axes with | None -> List.init (ndim x) Fun.id | Some lst -> normalize_and_dedup_axes ~op:"logsumexp" (ndim x) lst in if axes_norm = [] then copy_to_out ?out x else let max_x = max x ~axes:axes_norm ~keepdims:true in let log_sum = add (log (sum (exp (sub x max_x)) ~axes:axes_norm ~keepdims:true)) max_x in if keepdims then copy_to_out ?out log_sum else copy_to_out ?out (squeeze ~axes:(List.rev axes_norm) log_sum) let logmeanexp ?out ?axes ?(keepdims = false) x = let axes_norm = match axes with | None -> List.init (ndim x) Fun.id | Some lst -> normalize_and_dedup_axes ~op:"logmeanexp" (ndim x) lst in if axes_norm = [] then copy_to_out ?out x else let log_sum = logsumexp ~axes:axes_norm ~keepdims:true x in let count = List.fold_left (fun acc ax -> acc * dim ax x) 1 axes_norm in let log_mean = sub log_sum (log (scalar_like log_sum (Dtype.of_float (dtype x) (float_of_int count)))) in if keepdims then copy_to_out ?out log_mean else copy_to_out ?out (squeeze ~axes:(List.rev axes_norm) log_mean) let standardize ?out ?axes ?mean:mean_param ?variance:variance_param ?(epsilon = 1e-5) x = let nd = ndim x in let axes_norm = match axes with | None -> List.init nd Fun.id | Some lst -> normalize_and_dedup_axes ~op:"standardize" nd lst in let x_shape = shape x in let keep_shape = Array.mapi (fun idx d -> if List.exists (( = ) idx) axes_norm then 1 else d) x_shape in let unaffected = List.filter (fun idx -> not (List.exists (( = ) idx) axes_norm)) (List.init nd Fun.id) in let core_shape = Array.of_list (List.map (fun idx -> x_shape.(idx)) unaffected) in let broadcast_param name param = let ps = shape param in if ps = x_shape || ps = keep_shape then param else if ps = core_shape then reshape keep_shape param else err "standardize" "%s, shape must match normalized axes" name in let mean_tensor = match mean_param with | Some m -> broadcast_param "mean" m | None -> if axes_norm = [] then x else mean x ~axes:axes_norm ~keepdims:true in let variance_tensor = match variance_param with | Some v -> broadcast_param "variance" v | None -> if axes_norm = [] then zeros_like x else var x ~axes:axes_norm ~keepdims:true in div ?out (sub x mean_tensor) (sqrt (add variance_tensor (scalar_like x (Dtype.of_float (dtype x) epsilon)))) let erf ?out x = unaryop ?out B.erf x let extract_patches ~kernel_size ~stride ~dilation ~padding x = B.unfold x ~kernel_size ~stride ~dilation ~padding let combine_patches ~output_size ~kernel_size ~stride ~dilation ~padding x = B.fold x ~output_size ~kernel_size ~stride ~dilation ~padding (* Correlation and convolution *) let correlate_padding ~mode input_spatial k_shape = let k = Array.length k_shape in match mode with | `Valid -> Array.make k (0, 0) | `Full -> Array.init k (fun i -> let p = k_shape.(i) - 1 in (p, p)) | `Same -> Array.init k (fun i -> let total = k_shape.(i) - 1 in (total / 2, total - (total / 2))) let correlate ?(padding = `Valid) x kernel = let kr = ndim kernel in let xr = ndim x in if xr < kr then err "correlate" "input rank %d < kernel rank %d" xr kr; let ks = shape kernel in let input_spatial = Array.sub (shape x) (xr - kr) kr in let pad_pairs = correlate_padding ~mode:padding input_spatial ks in let ones_arr = Array.make kr 1 in let x_unf = B.unfold x ~kernel_size:ks ~stride:ones_arr ~dilation:ones_arr ~padding:pad_pairs in let und = ndim x_unf in let kp = (shape x_unf).(und - 2) in let result = sum (mul x_unf (reshape [| kp; 1 |] kernel)) ~axes:[ und - 2 ] in let leading = Array.sub (shape x) 0 (xr - kr) in let out_spatial = Array.init kr (fun i -> input_spatial.(i) + fst pad_pairs.(i) + snd pad_pairs.(i) - ks.(i) + 1) in reshape (Array.concat [ leading; out_spatial ]) result let convolve ?(padding = `Valid) x kernel = correlate ~padding x (flip ~axes:(List.init (ndim kernel) Fun.id) kernel) (* Sliding window filters *) let sliding_filter ~reduce_fn ~kernel_size ?stride x = let kr = Array.length kernel_size in let stride = match stride with Some s -> s | None -> kernel_size in let ones_arr = Array.make kr 1 in let zeros_arr = Array.make kr (0, 0) in let x_unf = B.unfold x ~kernel_size ~stride ~dilation:ones_arr ~padding:zeros_arr in let und = ndim x_unf in let reduced = reduce_fn x_unf ~axes:[ und - 2 ] ~keepdims:false in let xr = ndim x in let leading = Array.sub (shape x) 0 (xr - kr) in let input_spatial = Array.sub (shape x) (xr - kr) kr in let out_spatial = Array.init kr (fun i -> ((input_spatial.(i) - kernel_size.(i)) / stride.(i)) + 1) in reshape (Array.concat [ leading; out_spatial ]) reduced let maximum_filter ~kernel_size ?stride x = sliding_filter ~reduce_fn:(fun x ~axes ~keepdims -> max x ~axes ~keepdims) ~kernel_size ?stride x let minimum_filter ~kernel_size ?stride x = sliding_filter ~reduce_fn:(fun x ~axes ~keepdims -> min x ~axes ~keepdims) ~kernel_size ?stride x let uniform_filter ~kernel_size ?stride x = sliding_filter ~reduce_fn:(fun x ~axes ~keepdims:_ -> mean x ~axes) ~kernel_size ?stride x let one_hot ~num_classes index_tensor = let dt = dtype index_tensor in if not (Dtype.is_int dt || Dtype.is_uint dt) then err "one_hot" "dtype %s, indices must be integer type" (Dtype.to_string dt); let idx_exp = unsqueeze index_tensor ~axes:[ ndim index_tensor ] in let nd_exp = ndim idx_exp in let s = Array.make nd_exp 1 in s.(nd_exp - 1) <- num_classes; let arange_b = reshape s (arange (B.context index_tensor) dt 0 num_classes 1) in cast Dtype.uint8 (cmpeq idx_exp arange_b) (* ───── Display and Formatting ───── *) let pp_data (type a b) fmt (x : (a, b) t) = let open Format in let view = B.view x in let buffer = B.to_host x in let dtype = dtype x in let shape = View.shape view in let ndim = Array.length shape in let sz = View.numel view in let pp_element fmt (elt : a) = match dtype with | Float16 -> fprintf fmt "%g" elt | Float32 -> fprintf fmt "%g" elt | Float64 -> fprintf fmt "%g" elt | BFloat16 -> fprintf fmt "%g" elt | Float8_e4m3 -> fprintf fmt "%g" elt | Float8_e5m2 -> fprintf fmt "%g" elt | Int8 -> fprintf fmt "%d" elt | Int16 -> fprintf fmt "%d" elt | Int32 -> fprintf fmt "%ld" elt | Int64 -> fprintf fmt "%Ld" elt | UInt8 -> fprintf fmt "%d" elt | UInt16 -> fprintf fmt "%d" elt | UInt32 -> fprintf fmt "%ld" elt | UInt64 -> fprintf fmt "%Ld" elt | Int4 -> fprintf fmt "%d" elt | UInt4 -> fprintf fmt "%d" elt | Bool -> fprintf fmt "%b" elt | Complex64 -> fprintf fmt "(%g+%gi)" elt.re elt.im | Complex128 -> fprintf fmt "(%g+%gi)" elt.re elt.im in let edge = 2 in if sz = 0 && ndim > 0 then fprintf fmt "[]" else if ndim = 0 then if sz > 0 then pp_element fmt (Nx_buffer.unsafe_get buffer (View.offset view)) else fprintf fmt "<empty scalar>" else let strides = match View.strides_opt view with | Some s -> s | None -> invalid_arg "pp_data: cannot print tensor with non-materializable view" in let base_offset = View.offset view in let sep fmt axis first = if not first then ( fprintf fmt ","; if axis = ndim - 1 then fprintf fmt " " else pp_print_cut fmt ()) in let rec pp_slice fmt indices = let depth = List.length indices in if depth = ndim then let md_index = Array.of_list indices in let offset = Shape.ravel_index md_index strides + base_offset in if offset < 0 || offset >= Nx_buffer.length buffer then fprintf fmt "<OOB:%d/%d>" offset (Nx_buffer.length buffer) else pp_element fmt (Nx_buffer.unsafe_get buffer offset) else let axis = depth in let dim_size = shape.(axis) in let truncate = dim_size > edge * 2 in fprintf fmt "["; if dim_size > 0 then ( if axis < ndim - 1 then pp_open_vbox fmt 0 else pp_open_hbox fmt (); if truncate then ( for i = 0 to edge - 1 do sep fmt axis (i = 0); pp_slice fmt (indices @ [ i ]) done; fprintf fmt ","; if axis = ndim - 1 then fprintf fmt " ..., " else ( pp_print_cut fmt (); fprintf fmt "..."; pp_print_cut fmt ()); for i = dim_size - edge to dim_size - 1 do sep fmt axis (i = dim_size - edge); pp_slice fmt (indices @ [ i ]) done) else for i = 0 to dim_size - 1 do sep fmt axis (i = 0); pp_slice fmt (indices @ [ i ]) done; pp_close_box fmt ()); fprintf fmt "]" in (* Print shape and dtype header for non-trivial tensors *) if ndim > 1 || sz > edge * 2 then ( fprintf fmt "%s [%s] " (Dtype.to_string dtype) (Array.to_list shape |> List.map string_of_int |> String.concat "; "); pp_print_cut fmt ()); if sz > 0 then pp_slice fmt [] else fprintf fmt "[]" let format_to_string pp x = let buf = Stdlib.Buffer.create 1024 in let fmt = Format.formatter_of_buffer buf in pp fmt x; Format.pp_print_flush fmt (); Stdlib.Buffer.contents buf let print_with_formatter pp x = pp Format.std_formatter x; Format.pp_print_newline Format.std_formatter (); Format.pp_print_flush Format.std_formatter () let data_to_string x = format_to_string pp_data x let print_data x = print_with_formatter pp_data x let pp_dtype fmt dtype = Format.fprintf fmt "%s" (Dtype.to_string dtype) let dtype_to_string dtype = Dtype.to_string dtype let shape_to_string shape = Printf.sprintf "[%s]" (Array.map string_of_int shape |> Array.to_list |> String.concat "x") let pp_shape fmt shape = Format.fprintf fmt "%s" (shape_to_string shape) let pp fmt x = let open Format in let view = B.view x in fprintf fmt "@[<v 0>"; fprintf fmt "Nx Info:@,"; fprintf fmt " Shape: %s@," (Shape.to_string (View.shape view)); fprintf fmt " Dtype: %a@," pp_dtype (dtype x); fprintf fmt " Strides: %s@," (match View.strides_opt view with | Some s -> "[" ^ String.concat "; " (Array.to_list (Array.map string_of_int s)) ^ "]" | None -> "<non-materializable>"); fprintf fmt " Offset: %d@," (View.offset view); fprintf fmt " Size: %d@," (View.numel view); fprintf fmt " Data: %a@," pp_data x let print x = print_with_formatter pp x let to_string x = format_to_string pp x (* ───── Higher-order Functions ───── *) let map_item f x = let dt = dtype x in let sh = shape x in let result = empty (B.context x) dt sh in let src = data (contiguous x) in let dst = data result in let sz = size x in for i = 0 to sz - 1 do Nx_buffer.unsafe_set dst i (f (Nx_buffer.unsafe_get src i)) done; result let iter_item f x = let src = data (contiguous x) in let sz = size x in for i = 0 to sz - 1 do f (Nx_buffer.unsafe_get src i) done let fold_item f init x = let src = data (contiguous x) in let sz = size x in let acc = ref init in for i = 0 to sz - 1 do acc := f !acc (Nx_buffer.unsafe_get src i) done; !acc let map f x = let dt = dtype x in let sh = shape x in let result = empty (B.context x) dt sh in let total = size x in for i = 0 to total - 1 do let idx = Shape.unravel_index i sh |> Array.to_list in set idx result (f (get idx x)) done; result let iter f x = let sh = shape x in let total = size x in for i = 0 to total - 1 do f (get (Shape.unravel_index i sh |> Array.to_list) x) done let fold f init x = let sh = shape x in let total = size x in let acc = ref init in for i = 0 to total - 1 do acc := f !acc (get (Shape.unravel_index i sh |> Array.to_list) x) done; !acc (* ───── Infix Operators ───── *) module Infix = struct let ( + ) a b = add a b let ( +$ ) a s = add_s a s let ( - ) a b = sub a b let ( -$ ) a s = sub_s a s let ( * ) a b = mul a b let ( *$ ) a s = mul_s a s let ( / ) a b = div a b let ( /$ ) a s = div_s a s let ( ** ) a b = pow a b let ( **$ ) a s = pow_s a s let ( % ) a b = mod_ a b let ( mod ) a b = mod_ a b let ( %$ ) a s = mod_s a s let ( lxor ) a b = bitwise_xor a b let ( lor ) a b = bitwise_or a b let ( land ) a b = bitwise_and a b let ( ^ ) a b = logical_xor a b let ( && ) a b = logical_and a b let ( || ) a b = logical_or a b let ( ~- ) x = logical_not x let ( < ) a b = less a b let ( <$ ) a b = less_s a b let ( <> ) a b = not_equal a b let ( <>$ ) a b = not_equal_s a b let ( = ) a b = equal a b let ( =$ ) a b = equal_s a b let ( > ) a b = greater a b let ( >$ ) a b = greater_s a b let ( <= ) a b = less_equal a b let ( <=$ ) a b = less_equal_s a b let ( >= ) a b = greater_equal a b let ( >=$ ) a b = greater_equal_s a b let ( @@ ) a b = matmul a b let ( /@ ) = solve let ( **@ ) = matrix_power let ( <.> ) a b = dot a b let ( @= ) a b = concatenate ~axis:0 [ a; b ] let ( @|| ) a b = concatenate ~axis:1 [ a; b ] let ( .%{} ) x indices = get indices x let ( .%{}<- ) x indices value = set indices x value let ( .${} ) x slice_def = slice slice_def x let ( .${}<- ) x slice_def value = set_slice slice_def x value end end
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