Radix/zml/ops.zig

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const std = @import("std");
const stdx = @import("stdx");
const buffer = @import("buffer.zig");
const helpers = @import("helpers.zig");
const meta = @import("meta.zig");
const mlir = @import("mlir.zig");
const module = @import("module.zig");
const Buffer = buffer.Buffer;
const CompilationContext = module.CompilationContext;
const Context = @import("context.zig").Context;
const Data = @import("dtype.zig").Data;
const DataType = @import("dtype.zig").DataType;
const EnumLiteral = @TypeOf(.enum_literal);
const HostBuffer = @import("hostbuffer.zig").HostBuffer;
const Shape = @import("shape.zig").Shape;
const Tensor = @import("tensor.zig").Tensor;
const dialect = struct {
const stablehlo = @import("mlir/dialects").stablehlo;
};
const assert = std.debug.assert;
const log = std.log.scoped(.@"zml/tensor");
test {
std.testing.refAllDecls(@This());
}
/// Generate an MLIR call to the given member function with the given tensors.
pub fn call(self: anytype, comptime func: stdx.meta.DeclEnum(@TypeOf(self)), args: anytype) @TypeOf(@call(.auto, @field(stdx.meta.UnwrapPtr(@TypeOf(self)), @tagName(func)), .{self} ++ args)) {
// TODO: this should use `self.getContext().callFunc(self, args)`
return @call(.auto, @field(@TypeOf(self), @tagName(func)), .{self} ++ args);
}
pub fn while_(
comptime cond_fn: anytype,
comptime body_fn: anytype,
blkctx: BlockSign(body_fn).BlkCtx,
inputs: BlockSign(body_fn).Args,
) BlockSign(body_fn).Return {
const CondS = comptime BlockSign(cond_fn);
const BodyS = comptime BlockSign(body_fn);
if (CondS.Args != BodyS.Args) {
@compileError("cond_fn and body_fn signatures don't match ! " ++ @typeName(@TypeOf(cond_fn)) ++ " and " ++ @typeName(@TypeOf(body_fn)));
}
const ctx = CompilationContext.current();
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const cond_block = ctx.makeBlock(CondS, &cond_fn, blkctx, inputs);
const body_block = ctx.makeBlock(BodyS, &body_fn, blkctx, inputs);
var input_values: [BodyS.nIn]mlir.Value = undefined;
ctx.extractValues(&inputs, &input_values);
const loc = ctx.mlirCtx().location(@src());
const op = mlir.Operation.make(ctx.mlirCtx(), "stablehlo.while", .{
.variadic_operands = &.{&input_values},
.result_type_inference = true,
.blocks = &.{ cond_block, body_block },
// We can't verify right away, cause the weights captured by the while haven't been added yet.
.verify = false,
.location = loc,
});
var res: BodyS.Args = inputs;
module.assignResults(&res, null, op);
return res;
}
test "simple while" {
const CountInts = struct {
step: Tensor,
end: Tensor,
const CountInts = @This();
pub fn hasNext(self: CountInts, i: Tensor, sum: Tensor) Tensor {
_ = sum;
return i.cmp(.LT, self.end);
}
pub fn next(self: CountInts, i: Tensor, sum: Tensor) [2]Tensor {
const r1 = i.add(self.step);
const r2 = sum.add(i);
return .{ r1, r2 };
}
pub fn forward(self: CountInts, init_i: Tensor, init_sum: Tensor) [2]Tensor {
const x = init_i.scale(2);
return while_(CountInts.hasNext, CountInts.next, self, .{ x, init_sum });
}
pub fn zigForward(step: i64, end: i64, init_i: i64, init_sum: i64) [2]i64 {
const x = init_i * 2;
var i = x;
var sum = init_sum;
while (i < end) {
const r1 = i + step;
const r2 = sum + i;
i, sum = .{ r1, r2 };
}
return .{ i, sum };
}
};
const zml = @import("zml.zig");
const platform = zml.testing.env();
const init_i = try zml.Buffer.fromSlice(platform, .{}, &[_]i64{0});
const init_sum = try zml.Buffer.fromSlice(platform, .{}, &[_]i64{0});
const counter = .{
.step = try zml.Buffer.fromSlice(platform, .{}, &[_]i64{1}),
.end = try zml.Buffer.fromSlice(platform, .{}, &[_]i64{10}),
};
const res0, const res1 = try zml.testing.compileAndCall(platform, CountInts.forward, .{ counter, init_i, init_sum });
const last_i = try res0.getValue(i64);
const sum = try res1.getValue(i64);
try std.testing.expectEqual(10, last_i);
try std.testing.expectEqual(45, sum);
try std.testing.expectEqual(.{ 10, 45 }, CountInts.zigForward(1, 10, 0, 0));
}
pub fn reduce(
comptime body_fn: anytype,
inputs: stdx.meta.FnParam(body_fn, 0),
inits: stdx.meta.FnParam(body_fn, 0),
axes: []const i64,
) BlockSignNoCtx(body_fn).Return {
// TODO: actualAxes
const BodyS = comptime BlockSignNoCtx(body_fn);
comptime {
if (BodyS.Return != @TypeOf(inputs)) @compileError("reduce body function need to have the following signature `fn (left: T, right: T) T`, got: " ++ @typeName(body_fn));
}
const ctx = CompilationContext.current();
const N = comptime @divExact(BodyS.nIn, 2);
var input_values: [N]mlir.Value = undefined;
ctx.extractValues(&inputs, &input_values);
var init_values: [N]mlir.Value = undefined;
ctx.extractValues(&inits, &init_values);
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const body_block = ctx.makeBlock(BodyS, &body_fn, {}, .{ inits, inits });
const loc = ctx.mlirCtx().location(@src());
const op = mlir.Operation.make(ctx.mlirCtx(), "stablehlo.reduce", .{
.variadic_operands = &.{ &input_values, &init_values },
.result_type_inference = true,
.blocks = &.{body_block},
.attributes = &.{
.{ "dimensions", mlir.DenseArrayAttribute(.i64).init(ctx.mlirCtx(), axes).as(mlir.Attribute).? },
},
// We can't verify right away, cause the weights captured by the reduce haven't been added yet.
.verify = false,
.location = loc,
});
// `stablehlo.reduce` drops axes. We want to avoid that to propagate tags.
// So we need to broadcast the output of `stablehlo.reduce` to the input shapes.
// To that order, we initialize `result` to `inputs`, then we use stdx.meta.visit,
// to find the correct mlir.Value, but we first broadcast before creating the final
// Tensor struct.
var broadcasting_axes: std.BoundedArray(i64, Tensor.MAX_RANK) = .{};
for (0..Tensor.MAX_RANK) |i| {
if (std.mem.indexOfScalar(i64, axes, @intCast(i)) == null) {
broadcasting_axes.append(@intCast(i)) catch unreachable;
}
}
var res: BodyS.Return = inputs;
const LocalContext = struct {
axes: []const i64,
broadcasting_axes: []const i64,
n_reduced: u8,
op: mlir.Operation,
loc: mlir.Location,
index: usize = 0,
};
var local_context = LocalContext{
.axes = axes,
.broadcasting_axes = broadcasting_axes.constSlice(),
.n_reduced = @intCast(axes.len),
.op = op,
.loc = loc,
};
meta.visit((struct {
fn cb(inner_ctx: *LocalContext, tensor: *Tensor) void {
const val = inner_ctx.op.result(inner_ctx.index);
// compute the target reduced shape
var reduced_shape = tensor.shape();
for (inner_ctx.axes) |a| {
reduced_shape = reduced_shape.setDim(a, 1);
}
const mlir_ctx = CompilationContext.current().mlirCtx();
const broad_val = dialect.stablehlo.broadcast_in_dim(
mlir_ctx,
val,
inner_ctx.broadcasting_axes[0 .. tensor.rank() - inner_ctx.n_reduced],
mlir.ext.RankedTensorType.fromShape(mlir_ctx, reduced_shape).as(mlir.Type).?,
inner_ctx.loc,
);
tensor.* = Tensor._result(reduced_shape, broad_val.result(0));
inner_ctx.index += 1;
}
}).cb, &local_context, &res);
assert(local_context.index == op.numResults());
return res;
}
pub const ReduceWindowOpts = struct {
// TODO replace with Shape
window_dimensions: []const i64,
window_strides: []const i64,
base_dilations: []const i64,
window_dilations: []const i64,
padding: []const [2]i64,
};
pub fn reduceWindow(
comptime body_fn: anytype,
inputs: stdx.meta.FnParam(body_fn, 0),
inits: stdx.meta.FnParam(body_fn, 0),
opts: ReduceWindowOpts,
) stdx.meta.FnResult(body_fn) {
const BodyS = comptime BlockSignNoCtx(body_fn);
comptime {
if (BodyS.Return != @TypeOf(inputs)) @compileError("reduce body function need to have the following signature `fn (left: T, right: T) T`, got: " ++ @typeName(body_fn));
}
const ctx = CompilationContext.current();
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const body_block = ctx.makeBlock(BodyS, &body_fn, {}, .{ inits, inits });
const N = comptime @divExact(BodyS.nIn, 2);
var input_values: [N]mlir.Value = undefined;
ctx.extractValues(&inputs, &input_values);
var init_values: [N]mlir.Value = undefined;
ctx.extractValues(&inits, &init_values);
const loc = ctx.mlirCtx().location(@src());
const pad_shape = mlir.RankedTensorType.init(
&.{ @intCast(opts.padding.len), 2 },
mlir.ext.Type.fromDType(ctx.mlirCtx(), .i64),
).as(mlir.Type).?;
const op = mlir.Operation.make(ctx.mlirCtx(), "stablehlo.reduce_window", .{
.variadic_operands = &.{ input_values[0..], init_values[0..] },
.result_type_inference = true,
.blocks = &.{body_block},
.attributes = &.{
.{ "window_dimensions", mlir.DenseArrayAttribute(.i64).init(ctx.mlirCtx(), opts.window_dimensions).as(mlir.Attribute).? },
.{ "window_strides", mlir.DenseArrayAttribute(.i64).init(ctx.mlirCtx(), opts.window_strides).as(mlir.Attribute).? },
.{ "base_dilations", mlir.DenseArrayAttribute(.i64).init(ctx.mlirCtx(), opts.base_dilations).as(mlir.Attribute).? },
.{ "window_dilations", mlir.DenseArrayAttribute(.i64).init(ctx.mlirCtx(), opts.window_dilations).as(mlir.Attribute).? },
.{ "padding", mlir.DenseIntOrFPElementsAttribute(.i64).init(pad_shape, std.mem.sliceAsBytes(opts.padding)).as(mlir.Attribute).? },
},
.location = loc,
});
var res: BodyS.Return = inputs;
module.assignResults(&res, null, op);
return res;
}
/// Runs a given function for several steps, and returns a stack of each step output.
/// The step outputs will be stacked along the first axis.
pub fn for_(comptime func: anytype, blk_ctx: BlockSign(func).BlkCtx, num_steps_: anytype) BlockSign(func).Return {
const num_steps: u32, const step_tag = blk: {
const dims, const tags = Shape.parseDimensions(num_steps_);
stdx.debug.assert(dims.len == 1, "zml.for_ only supports one num_step, Received: {any}", .{num_steps_});
break :blk .{ @intCast(dims.get(0)), tags.get(0) };
};
const S = comptime BlockSign(func);
const ForBlk = struct {
blk_ctx: S.BlkCtx,
step_tag: @TypeOf(step_tag), // This is a Shape.Tag, but we rather keep it private
num_steps: u32,
const Self = @This();
fn next(self: Self, res: S.Return, idx: Tensor) struct { S.Return, Tensor } {
const step_res = @call(.auto, func, .{ self.blk_ctx, idx });
var buf: [@sizeOf(S.Return) * 2]u8 = undefined;
var fba = std.heap.FixedBufferAllocator.init(&buf);
return .{
meta.zip(updateResBuffer, fba.allocator(), &[_]S.Return{ res, step_res }, .{idx}) catch unreachable,
idx.addConstant(1),
};
}
fn done(self: Self, res: S.Return, idx: Tensor) Tensor {
_ = res;
return idx.cmp(.LT, Tensor.scalar(self.num_steps, idx.dtype()));
}
fn updateResBuffer(inputs: []const Tensor, idx: Tensor) Tensor {
stdx.debug.internalAssert(inputs.len == 2, "too many tensors", .{});
const res, const step_res = inputs[0..2].*;
return res.dynamicUpdateSlice1d(step_res.insertAxes(0, .{._}), 0, idx);
}
/// Prepare buffer to store all results steps.
fn prep(self: Self, x: Tensor) Tensor {
var shape = x.shape();
shape._dims.insert(0, self.num_steps) catch unreachable;
shape._tags.insert(0, self.step_tag) catch unreachable;
return Tensor.constant(shape, x.dtype().zero());
}
fn wrapFirstStep(tag_: @TypeOf(step_tag), x: Tensor) Tensor {
var shape = x.shape();
shape._dims.insert(0, 1) catch unreachable;
shape._tags.insert(0, tag_) catch unreachable;
return x.reshape(shape);
}
};
// This first step won't appear in the generated MLIR,
// it's only used to infer the output shapes.
const first_step = @call(.auto, func, .{ blk_ctx, Tensor.scalar(0, .i32) });
log.debug("for_ first_step: {}", .{first_step});
const allocator = CompilationContext.current()._allocator;
// Optimize for small num reps
if (num_steps == 1) {
var res = first_step;
meta.mapAlloc(ForBlk.wrapFirstStep, allocator, step_tag, first_step, &res) catch unreachable;
return res;
}
if (num_steps <= 4) {
var steps: [4]S.Return = undefined;
steps[0] = first_step;
for (1..num_steps) |i| {
steps[i] = @call(.auto, func, .{ blk_ctx, Tensor.scalar(i, .i32) });
}
const res = meta.zip(Tensor.stack, allocator, steps[0..num_steps], .{ 0, step_tag }) catch unreachable;
return res;
}
const for_blk: ForBlk = .{ .blk_ctx = blk_ctx, .step_tag = step_tag, .num_steps = num_steps };
var result_buffers: @TypeOf(first_step) = undefined;
try meta.mapAlloc(ForBlk.prep, allocator, for_blk, first_step, &result_buffers);
return while_(
ForBlk.done,
ForBlk.next,
for_blk,
.{
result_buffers,
Tensor.scalar(0, .i32),
},
)[0];
}
test for_ {
const Squares = struct {
const Squares = @This();
pub fn sq(self: Squares, i: Tensor) Tensor {
_ = self;
const f = i.convert(.f32);
return f.mul(f);
}
pub fn forward(num_steps: u63) Tensor {
return for_(Squares.sq, .{}, .{num_steps});
}
};
const zml = @import("zml.zig");
const platform = zml.testing.env();
// Just one baby step
{
const squares = try zml.testing.compileAndCall(platform, Squares.forward, .{1});
try zml.testing.expectEqualShapes(Shape.init(.{1}, .f32), squares.shape());
try std.testing.expectEqual(0, squares.getValue(f32));
}
// Wow 4 in rows !
{
const squares = try zml.testing.compileAndCall(platform, Squares.forward, .{4});
try zml.testing.expectEqualShapes(Shape.init(.{4}, .f32), squares.shape());
try std.testing.expectEqual([_]f32{ 0, 1, 4, 9 }, try squares.getValue([4]f32));
}
// AGI is coming, computing 10 squares as it's nothing.
{
const squares = try zml.testing.compileAndCall(platform, Squares.forward, .{10});
try zml.testing.expectEqualShapes(Shape.init(.{10}, .f32), squares.shape());
try std.testing.expectEqual(
[_]f32{ 0, 1, 4, 9, 16, 25, 36, 49, 64, 81 },
try squares.getValue([10]f32),
);
}
}
pub fn if_2(pred: Tensor, comptime Closure: type, blkctx: BlockSignNoArgs(@field(Closure, "then")).BlkCtx) BlockSignNoArgs(@field(Closure, "then")).Return {
return if_(pred, @field(Closure, "then"), @field(Closure, "else_"), blkctx);
}
pub fn if_(
pred: Tensor,
comptime true_branch_fn: anytype,
comptime false_branch_fn: anytype,
blkctx: BlockSignNoArgs(true_branch_fn).BlkCtx,
) BlockSignNoArgs(true_branch_fn).Return {
const TrueBlockSignature = comptime BlockSignNoArgs(true_branch_fn);
const FalseBlockSignature = comptime BlockSignNoArgs(false_branch_fn);
if (TrueBlockSignature.Return != FalseBlockSignature.Return) {
@compileError("true_branch_fn and false_branch_fn return types don't match ! " ++ @typeName(TrueBlockSignature.Return) ++ " and " ++ @typeName(FalseBlockSignature.Return));
}
const ctx = CompilationContext.current();
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const true_branch_block = ctx.makeBlock(TrueBlockSignature, &true_branch_fn, blkctx, {});
const false_branch_block = ctx.makeBlock(TrueBlockSignature, &false_branch_fn, blkctx, {});
const loc = ctx.mlirCtx().location(@src());
const op = mlir.Operation.make(ctx.mlirCtx(), "stablehlo.if", .{
.operands = &.{pred.value()},
.result_type_inference = true,
.blocks = &.{ true_branch_block, false_branch_block },
// We can't verify right away, cause the weights captured by the if haven't been added yet.
.verify = false,
.location = loc,
});
var res: TrueBlockSignature.Return = undefined;
module.assignResults(&res, null, op);
return res;
}
test "if" {
const zml = @import("zml.zig");
const platform = zml.testing.env();
const allocator = std.testing.allocator;
const IfMod = struct {
pub fn forward(pred: Tensor, a: Tensor, b: Tensor) Tensor {
const result = if_(pred.convert(.bool), condTrue, condFalse, .{ a, b });
return result;
}
pub fn condTrue(a: Tensor, b: Tensor) Tensor {
return a.matmul(b);
}
pub fn condFalse(a: Tensor, b: Tensor) Tensor {
return b.matmul(a);
}
};
{
const pred = Shape.init(.{}, .i32);
const a = Shape.init(.{ 4, 4 }, .f32);
const b = Shape.init(.{ 4, 4 }, .f32);
const mod = try zml.compileFn(allocator, IfMod.forward, .{ pred, a, b }, platform);
defer mod.deinit();
}
}
pub fn sort(
comptime comp_fn: anytype,
blkctx: BlockSign(comp_fn).BlkCtx,
inputs: [@divExact(BlockSign(comp_fn).nIn, 2)]Tensor,
dimension: i64,
is_stable: bool,
) [@divExact(BlockSign(comp_fn).nIn, 2)]Tensor {
const BodyS = comptime BlockSign(comp_fn);
var inits: BlockSign(comp_fn).Args = undefined;
inline for (0..@divExact(BlockSign(comp_fn).nIn, 2)) |i| {
const arg_shape = Shape.init(.{}, inputs[i].dtype());
// Note: the id doesn't matter cause makeBlock will correctly fill it.
inits[i * 2] = Tensor{ ._shape = arg_shape, ._id = undefined, ._donation = .no_buffer };
inits[i * 2 + 1] = Tensor{ ._shape = arg_shape, ._id = undefined, ._donation = .no_buffer };
}
const ctx = CompilationContext.current();
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const block = ctx.makeBlock(BodyS, &comp_fn, blkctx, inits);
var input_values: [@divExact(BodyS.nIn, 2)]mlir.Value = undefined;
ctx.extractValues(&inputs, &input_values);
const loc = ctx.mlirCtx().location(@src()).namedFmt(ctx.mlirCtx(), "sort(dimension={d}, is_stable={})", .{ dimension, is_stable });
const op = mlir.Operation.make(ctx.mlirCtx(), "stablehlo.sort", .{
.variadic_operands = &.{&input_values},
.result_type_inference = true,
.blocks = &.{block},
.attributes = &.{
.{ "dimension", mlir.IntegerAttribute(.i64).init(ctx.mlirCtx(), dimension).as(mlir.Attribute).? },
.{ "is_stable", mlir.BoolAttribute.init(ctx.mlirCtx(), is_stable).as(mlir.Attribute).? },
},
.location = loc,
});
var res: [@divExact(BlockSign(comp_fn).nIn, 2)]Tensor = undefined;
inline for (0..@divExact(BlockSign(comp_fn).nIn, 2)) |i| {
res[i] = Tensor._result(inputs[i].shape(), op.result(i));
}
return res;
}
pub const BlockSignature = struct {
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Fn: type,
BlkCtx: type,
Args: type,
FullArgs: type,
Return: type,
nIn: usize,
nOut: usize,
pub inline fn blkArgs(self: BlockSignature, blk_ctx: self.BlkCtx, args: self.Args) self.FullArgs {
if (self.BlkCtx == void) return args;
if (self.Args == void) return blk_ctx;
return .{blk_ctx} ++ args;
}
};
const BlockType = enum { default, no_ctx, no_args };
pub inline fn BlockSign(comptime func: anytype) BlockSignature {
return _BlockSign(func, .default);
}
pub inline fn BlockSignNoCtx(comptime func: anytype) BlockSignature {
return _BlockSign(func, .no_ctx);
}
pub inline fn BlockSignNoArgs(comptime func: anytype) BlockSignature {
return _BlockSign(func, .no_args);
}
pub fn fnInfo(comptime func: anytype) std.builtin.Type.Fn {
if (@TypeOf(func) == type) {
if (@typeInfo(func) == .Struct and @hasDecl(func, "forward")) {
return fnInfo(func.forward);
}
@compileError("Given type doesn't have a forward function: " ++ @typeName(func));
}
const type_info = @typeInfo(@TypeOf(func));
const err_msg = "`func` must be a function and return one or more `Tensor`. Got: ";
if (type_info != .Fn or type_info.Fn.return_type == null) {
@compileError(err_msg ++ @typeName(@TypeOf(func)));
}
return type_info.Fn;
}
fn _BlockSign(comptime func: anytype, blk_type: BlockType) BlockSignature {
const fn_info = fnInfo(func);
const err_msg = "`func` must be a function and return one or more `Tensor`. Got: ";
var full_args: [fn_info.params.len]type = undefined;
const arg_start = switch (blk_type) {
.default => 1,
.no_ctx => 0,
.no_args => fn_info.params.len,
};
var n_tensors: usize = 0;
// var n_inner_tensors: usize = 0;
inline for (fn_info.params, 0..) |arg, i| {
const ArgType = if (arg.type) |T| T else @compileError(err_msg ++ @typeName(@TypeOf(func)));
full_args[i] = ArgType;
if (i >= arg_start) {
n_tensors += staticCountTensors(ArgType) orelse @compileError("Can't use " ++ @typeName(ArgType) ++ " in an MLIR function, because it has a variable number of tensors");
}
}
const FullArgs = std.meta.Tuple(&full_args);
const BlkCtx = switch (blk_type) {
.default => full_args[0],
.no_ctx => void,
.no_args => FullArgs,
};
const Args = switch (blk_type) {
.default => std.meta.Tuple(full_args[1..]),
.no_ctx => FullArgs,
.no_args => void,
};
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return .{
.Fn = @TypeOf(func),
.BlkCtx = BlkCtx,
.Args = Args,
.FullArgs = FullArgs,
.Return = fn_info.return_type.?,
.nIn = n_tensors,
.nOut = staticCountTensors(fn_info.return_type.?) orelse @compileError("Can't use " ++ @typeName(fn_info.return_type.?) ++ " in an MLIR function, because it has a variable number of tensors"),
};
}
pub fn staticIsOnlyTensors(comptime T: type) bool {
if (T == Tensor) return true;
return switch (@typeInfo(T)) {
.Array => |array_info| staticIsOnlyTensors(array_info.child),
.Pointer => |ptr_info| ptr_info.size == .One and staticIsOnlyTensors(ptr_info.child),
.Struct => |struct_info| {
inline for (struct_info.fields) |field| {
if (!staticIsOnlyTensors(field.type)) return false;
}
return true;
},
else => false,
};
}
pub fn staticCountTensors(comptime T: type) ?usize {
if (T == Tensor) return 1;
return switch (@typeInfo(T)) {
.Array => |array_info| array_info.len * (staticCountTensors(array_info.child) orelse return null),
.Pointer => |ptr_info| {
const n = staticCountTensors(ptr_info.child) orelse return null;
if (ptr_info.size != .One and n > 0) return null;
return n;
},
.Struct => |struct_info| {
var count: usize = 0;
inline for (struct_info.fields) |field| {
count += staticCountTensors(field.type) orelse return null;
}
return count;
},
else => 0,
};
}
/// Produces a custom call to `name` that takes a tensor and returns it.
///
/// For example, this can be used to extract tokens quickly if they run on a loop on the
/// GPU.
pub fn identityCustomCall(name: [:0]const u8, input: Tensor, context: *anyopaque) Tensor {
const address: [8]u8 = @bitCast(@intFromPtr(context));
var backend_config: [8:0]u8 = undefined;
@memcpy(backend_config[0..8], address[0..8]);
const ctx = CompilationContext.current();
const loc = ctx.mlirCtx().location(@src()).namedFmt(ctx.mlirCtx(), "custom_call({s})", .{name});
const op = dialect.stablehlo.custom_call(
ctx.mlirCtx(),
&.{input.value()},
.{
.api_version = 1,
.has_side_effect = false,
.call_target_name = name,
.backend_config = backend_config[0..],
.output_operand_aliases = &.{0},
},
&.{input.value().getType()},
loc,
);
return Tensor._result(input.shape(), op.result(0));
}
/// At runtime the given tensor will be materialized and copied to host,
/// and the callback will be called on it.
pub fn addHostCallback(
callback: *const fn (HostBuffer) void,
input: Tensor,
) Tensor {
// TODO: implement addCallback that exposes a pjrt.Buffer, so that the user can decide if they need to copy.
if (input.getContext().target() != .cuda) return input;
const len = input.byteSize();
// Reserve memory to be able to log the runtime Buffer later during the computation.
// This memory is leaked, we currently have no way to tie this lifetime to the lifetime of the module being compiled.
const HostCallbackCtx = Context.HostCallbackCtx;
const full_data = std.heap.page_allocator.alignedAlloc(u8, 32, len + 2 * @sizeOf(HostCallbackCtx)) catch {
log.err("Failed to pre-allocate buffer to print {}.", .{input});
return input;
};
// Save the HostBuffer inside the same memory slice, so that it's still present at runtime.
// Use an fba to have the stable buffer at an aligned offset.
var fba = std.heap.FixedBufferAllocator.init(full_data[len..]);
const stable_ctx_ptr = fba.allocator().create(HostCallbackCtx) catch unreachable;
stable_ctx_ptr.* = .{
.host = HostBuffer.fromBytes(input.shape(), full_data[0..len]),
};
const backend_config: [2:null]?*const anyopaque = .{ callback, stable_ctx_ptr };
const ctx = CompilationContext.current();
const loc = ctx.mlirCtx().location(@src());
const op = dialect.stablehlo.custom_call(
ctx.mlirCtx(),
&.{input.value()},
.{
.api_version = 1,
.has_side_effect = false,
.call_target_name = "zmlHostBufferCallback",
.backend_config = @ptrCast(std.mem.sliceAsBytes(&backend_config)),
.output_operand_aliases = &.{0},
},
&.{input.value().getType()},
loc,
);
return Tensor._result(input.shape(), op.result(0));
}