gemm.py 18.2 KB
Newer Older
1
2
3
4
5
6
7
8
9
10
# Copyright (c) 2022-2025, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
#
# See LICENSE for license information.
"""JAX te modules"""

from typing import Tuple, Sequence, Union, Dict, List
from functools import partial, reduce
import operator
import jax
import jax.numpy as jnp
11
from transformer_engine_jax import get_device_compute_capability
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43

from .base import BasePrimitive, register_primitive

from ..quantize import (
    ScaledTensor,
    ScalingMode,
    Quantizer,
    QuantizeConfig,
    noop_quantizer_set,
)


__all__ = ["gemm", "grouped_gemm"]


num_cublas_streams = 4


def get_cublas_workspace_size_bytes() -> None:
    """Return 32 MiB if using hopper, 4 MiB for all other architectures."""
    if get_device_compute_capability(0) >= 90:
        return 33_554_432
    return 4_194_304


class GroupedGemmPrimitive(BasePrimitive):
    """
    Primitive for grouped GEMM
    """

    name = "te_grouped_gemm_ffi"
    multiple_results = True
44
    impl_static_args = ()
45
46
47
48
    inner_primitive = None
    outer_primitive = None

    @staticmethod
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
    def abstract(*args, num_gemms, scaling_mode, out_dtype, has_bias):
        """
        Args:
            *args: Size num_gemms * 4 or num_gemms * 5 depending on has_bias:
                args[  0         :   num_gemms] are the lhs tensors,
                args[  num_gemms : 2*num_gemms] are the rhs tensors,
                args[2*num_gemms : 3*num_gemms] are the lhs scale_inv tensors,
                args[3*num_gemms : 4*num_gemms] are the rhs scale_inv tensors,
                args[4*num_gemms : 5*num_gemms] are the bias tensors if has_bias is True.
            num_gemms: Number of GEMM operations to perform.
            scaling_mode: Scaling mode for the GEMM operations.
            out_dtype: Data type of the output tensors.
            has_bias: Boolean indicating if bias tensors are provided.

        Returns:
           A tuple of ShapedArray objects of size num_gemms+1:
               ret[0 : num_gemms]: GEMM output tensors,
               ret[num_gemms]:workspace tensor.
        """
        del scaling_mode
        expected_num_args = 5 * num_gemms if has_bias else 4 * num_gemms
        assert (
            len(args) == expected_num_args
        ), f"Expected {expected_num_args} input arguments, but got {len(args)}"
        A_list = args[0:num_gemms]
        B_list = args[num_gemms : 2 * num_gemms]
        # A and B have shapes [1, m, k] and [1, n, k]
        out_list_aval = tuple(
            jax.core.ShapedArray((A.shape[1], B.shape[1]), dtype=out_dtype)
            for A, B in zip(A_list, B_list)
        )
        workspace_size = get_cublas_workspace_size_bytes() * num_cublas_streams
        workspace_aval = jax.core.ShapedArray(shape=(workspace_size,), dtype=jnp.uint8)
        return (*out_list_aval, workspace_aval)
83
84
85
86
87
88
89

    @staticmethod
    def outer_abstract(*args, **kwargs):
        (out_aval, _) = GroupedGemmPrimitive.abstract(*args, **kwargs)
        return out_aval

    @staticmethod
90
91
    def lowering(ctx, *args, num_gemms, scaling_mode, out_dtype, has_bias):
        del out_dtype
92
93
        return jax.ffi.ffi_lowering(GroupedGemmPrimitive.name)(
            ctx,
94
            *args,
95
            num_gemms=num_gemms,
96
97
            scaling_mode=int(scaling_mode),
            has_bias=has_bias,
98
99
100
        )

    @staticmethod
101
    def impl(*args, num_gemms, scaling_mode, out_dtype, has_bias):
102
103
        assert GroupedGemmPrimitive.inner_primitive is not None
        out = GroupedGemmPrimitive.inner_primitive.bind(
104
            *args,
105
            num_gemms=num_gemms,
106
            scaling_mode=scaling_mode.value,
107
            out_dtype=out_dtype,
108
            has_bias=has_bias,
109
        )
110
        return out[:-1]  # out is [out_list, wkspace], only return out_list
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157


register_primitive(GroupedGemmPrimitive)


def _shape_normalization(x, dimension_numbers, already_transposed: bool = False):
    orig_order = list(range(x.ndim))
    contracting_dims, batch_dims = dimension_numbers
    contracting_order = [d for d in orig_order if d in contracting_dims]
    batch_order = [d for d in orig_order if d in batch_dims]
    non_contracting_order = [
        d for d in orig_order if d not in contracting_dims and d not in batch_dims
    ]
    batch_shape = [x.shape[d] for d in batch_order]
    rows_shape = [x.shape[d] for d in non_contracting_order]
    cols_shape = [x.shape[d] for d in contracting_order]
    new_order = batch_order + non_contracting_order + contracting_order
    rows, cols, batches = (
        reduce(operator.mul, rows_shape, 1),
        reduce(operator.mul, cols_shape, 1),
        reduce(operator.mul, batch_shape, 1),
    )
    # Remove this transpose when non-TN dot is supported
    if not already_transposed:
        t = jnp.transpose(x, new_order)
    else:
        t = x
    return jnp.reshape(t, (batches, rows, cols))


def _calculate_remaining_shape(shape, contracting_dims):
    return tuple(shape[dim] for dim in range(len(shape)) if dim not in contracting_dims)


def _dequantize(x, scale_inv, dq_dtype):
    return x.astype(dq_dtype) * scale_inv.astype(dq_dtype)


# Apply jit to guarantee correctness of FP8 GEMM.
@partial(
    jax.jit,
    static_argnums=(
        2,
        3,
        4,
    ),
)
158
def __jitted_jax_gemm_tensor_scaling_fp8(lhs, rhs, lhs_dn, rhs_dn, precision):
159
160
161
162
163
164
165
    # Need to hard-code the dequantize here instead of calling lhs.dequantize() for pattern matching
    lhs_dq = _dequantize(lhs.data, lhs.scale_inv, lhs.dq_dtype)
    rhs_dq = _dequantize(rhs.data, rhs.scale_inv, rhs.dq_dtype)

    # Reshape + Transpose
    # [..., M, K] -> [B, M, K]
    # [..., K, M] -> [B, M, K]
166
167
    lhs_3d = _shape_normalization(lhs_dq, lhs_dn, lhs.data_layout == "N")
    rhs_3d = _shape_normalization(rhs_dq, rhs_dn, rhs.data_layout == "T")
168
169
170
171
172
173
174
175

    dim_nums = (((2,), (2,)), ((0,), (0,)))
    out_3d = jax.lax.dot_general(
        lhs_3d, rhs_3d, dim_nums, precision=precision, preferred_element_type=lhs.dq_dtype
    )
    return out_3d


176
def _jax_gemm_tensor_scaling_fp8(
177
178
179
    lhs: ScaledTensor, rhs: ScaledTensor, dim_nums: Tuple[Tuple[Sequence[int], Sequence[int]]]
):
    """FP8 GEMM for XLA pattern match"""
180
181
182
    assert rhs.scaling_mode in (
        ScalingMode.DELAYED_TENSOR_SCALING,
        ScalingMode.CURRENT_TENSOR_SCALING,
183
184
185
    ), "rhs does not have delayed tensor scaling mode"

    (lhs_contract, rhs_contract), (lhs_batch, rhs_batch) = dim_nums
186
    if lhs.data_layout == "T":
187
        lhs_contract = tuple((lhs.data.ndim - 1 - i) % lhs.data.ndim for i in lhs_contract)
188
    if rhs.data_layout == "T":
189
190
191
192
193
194
195
196
197
198
199
        rhs_contract = tuple((rhs.data.ndim - 1 - i) % rhs.data.ndim for i in rhs_contract)

    lhs_dn = (lhs_contract, lhs_batch)
    rhs_dn = (rhs_contract, rhs_batch)

    lhs_remain_shape = _calculate_remaining_shape(lhs.data.shape, lhs_contract)
    rhs_remain_shape = _calculate_remaining_shape(rhs.data.shape, rhs_contract)

    precision = (
        jax.lax.Precision.HIGHEST if QuantizeConfig.FP8_2X_ACC_FPROP else jax.lax.Precision.DEFAULT
    )
200
    out_3d = __jitted_jax_gemm_tensor_scaling_fp8(lhs, rhs, lhs_dn, rhs_dn, precision)
201
202
203
204
205
206
207
208
209
210
211
212
213

    # Reshape [B, M, N] -> [..., M, N]
    out = out_3d.reshape(*lhs_remain_shape, *rhs_remain_shape)
    return out


def _jax_gemm_mxfp8_1d(
    lhs: ScaledTensor, rhs: ScaledTensor, dim_nums: Tuple[Tuple[Sequence[int], Sequence[int]]]
):
    """
    JAX GEMM for MXFP8 via scaled_matmul
    """
    assert (
214
        rhs.scaling_mode == ScalingMode.MXFP8_1D_SCALING
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
    ), "rhs does not have MXFP8 1D scaling mode"
    from jax._src.cudnn.scaled_matmul_stablehlo import scaled_matmul_wrapper

    (lhs_contract, rhs_contract), (lhs_batch, rhs_batch) = dim_nums

    expected_lhs_is_colwise = lhs_contract[-1] != lhs.data.ndim - 1
    expected_rhs_is_colwise = rhs_contract[-1] != rhs.data.ndim - 1
    assert lhs.is_colwise is expected_lhs_is_colwise, (
        f"LHS with unexpected quantize dimension.\nExpect is_colwise={expected_lhs_is_colwise}, got"
        f" {lhs.is_colwise}"
    )
    assert rhs.is_colwise is expected_rhs_is_colwise, (
        f"RHS with unexpected quantize dimension.\nExpect is_colwise={expected_rhs_is_colwise}, got"
        f" {rhs.is_colwise}"
    )

    # Reshape + Transpose (if needed)
    # [..., M, K] -> [1, reduce(..., M), K]
    # [..., K, M] -> [1, reduce(..., M), K]
    lhs_3d = _shape_normalization(lhs.data, (lhs_contract, lhs_batch))
    rhs_3d = _shape_normalization(rhs.data, (rhs_contract, rhs_batch))
    lhs_scale_3d = _shape_normalization(lhs.scale_inv, (lhs_contract, lhs_batch))
    rhs_scale_3d = _shape_normalization(rhs.scale_inv, (rhs_contract, rhs_batch))

    # Slice out the padding as scaled_matmul does not support padded scales yet
    lhs_scale_3d = jnp.asarray(lhs_scale_3d[:, : lhs_3d.shape[1], : int(lhs_3d.shape[2] / 32)])
    rhs_scale_3d = jnp.asarray(rhs_scale_3d[:, : rhs_3d.shape[1], : int(rhs_3d.shape[2] / 32)])

    # JAX scaled_matmul only supports NT now (TN-gemm)
    # * Expected shape:
    # * lhs_data  (B, M, K)           * rhs_data  (B, N, K)
    # * lhs_scale (B, M, K_block)     * rhs_scale (B, N, K_block)
    out_3d = scaled_matmul_wrapper(
        lhs_3d, rhs_3d, lhs_scale_3d, rhs_scale_3d, preferred_element_type=lhs.dq_dtype
    )
    # Reshape [1, reduce(..., M), N] -> [..., M, N]
    lhs_remain_shape = tuple(
        lhs.data.shape[dim] for dim in range(len(lhs.data.shape)) if dim not in lhs_contract
    )
    rhs_remain_shape = tuple(
        rhs.data.shape[dim] for dim in range(len(rhs.data.shape)) if dim not in rhs_contract
    )
    out = out_3d.reshape(*lhs_remain_shape, *rhs_remain_shape)
    return out


def _jax_gemm(
    lhs: Union[jnp.ndarray, ScaledTensor],
    rhs: Union[jnp.ndarray, ScaledTensor],
    contracting_dims: Tuple[Sequence[int], Sequence[int]] = ((1,), (0,)),
    quantizer_set: Dict["str", Quantizer] = noop_quantizer_set,
) -> jnp.ndarray:
    """
    FP8 GEMM via JAX
    """

    dim_nums = (contracting_dims, ((), ()))

    def _jax_gemm_fp8_impl(lhs, rhs):

275
276
277
278
279
        if lhs.scaling_mode in (
            ScalingMode.DELAYED_TENSOR_SCALING,
            ScalingMode.CURRENT_TENSOR_SCALING,
        ):
            return _jax_gemm_tensor_scaling_fp8(lhs, rhs, dim_nums)
280

281
        if lhs.scaling_mode == ScalingMode.MXFP8_1D_SCALING:
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
            return _jax_gemm_mxfp8_1d(lhs, rhs, dim_nums)

        raise NotImplementedError("Unsupported ScalingMode: {lhs.scaling_mode}")

    if isinstance(lhs, ScaledTensor) and isinstance(rhs, ScaledTensor):
        return _jax_gemm_fp8_impl(lhs, rhs)

    if not isinstance(lhs, ScaledTensor) and not isinstance(rhs, ScaledTensor):
        if quantizer_set != noop_quantizer_set:
            assert type(quantizer_set.x) is type(quantizer_set.kernel)
            (((lhs_contract_dim,), (rhs_contract_dim,)), _) = dim_nums
            lhs_is_rowwise = lhs_contract_dim == lhs.ndim - 1
            rhs_is_rowwise = rhs_contract_dim == rhs.ndim - 1
            # Call JAX quantization so that XLA can do pattern matching (QDQ --> FP8 gemm)
            lhs_q = quantizer_set.x.quantize(
                lhs,
                is_rowwise=lhs_is_rowwise,
                is_colwise=not lhs_is_rowwise,
            )
            rhs_q = quantizer_set.kernel.quantize(
                rhs,
                is_rowwise=rhs_is_rowwise,
                is_colwise=not rhs_is_rowwise,
            )
            return _jax_gemm_fp8_impl(lhs_q, rhs_q)

    if (
        isinstance(lhs, jnp.ndarray)
        and isinstance(rhs, jnp.ndarray)
        and quantizer_set == noop_quantizer_set
    ):
        return jax.lax.dot_general(lhs, rhs, dim_nums, preferred_element_type=lhs.dtype)

    raise NotImplementedError("Not supporting multiplication of ScaledTensor and jnp.array")


def gemm(
    lhs: Union[jnp.ndarray, ScaledTensor],
    rhs: Union[jnp.ndarray, ScaledTensor],
    contracting_dims: Tuple[Sequence[int], Sequence[int]] = ((1,), (0,)),
    quantizer_set: Dict["str", Quantizer] = noop_quantizer_set,
) -> jnp.ndarray:
    """General matrix multiplication with optional quantization.

    Args:
        lhs: First input matrix.
        rhs: Second input matrix.
        contracting_dims: Tuple of two sequences representing the contracting dimensions.
            The first sequence represents the contracting dimensions of the first matrix,
            and the second sequence represents the contracting dimensions of the second matrix.
        quantizer_set: Set of quantizers for FP8 quantization of the output.
            If None, no quantization is applied and the output has the same dtype as the inputs.

    Returns:
        If quantizer_set is None:
            The matrix multiplication result.
            Shape: (M, N)
            Dtype: Same as input dtype
          If quantizer_set is provided:
            A ScaledTensor containing the quantized matrix multiplication result.
    """

    return _jax_gemm(lhs, rhs, contracting_dims, quantizer_set)


def swizzled_scale(scales):
    """Swizzle the scale tensor for FP8 GEMM"""
    assert scales.ndim == 2
    rows, cols = scales.shape
    scales = scales.reshape(rows // 128, 4, 32, cols // 4, 4)
    scales = jnp.transpose(scales, (0, 3, 2, 1, 4))
353
    scales = scales.reshape(rows, cols)
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
    return scales


def grouped_gemm(
    lhs_list: List[Union[jnp.ndarray, ScaledTensor]],
    rhs_list: List[Union[jnp.ndarray, ScaledTensor]],
    contracting_dims_list: List[Tuple[Sequence[int], Sequence[int]]],
    bias_list: List[jnp.ndarray] = None,
) -> List[jnp.ndarray]:
    """Grouped GEMM for multiple pairs of tensors."""
    assert (
        len(lhs_list) == len(rhs_list) == len(contracting_dims_list)
    ), "lhs_list, rhs_list, contracting_dims_list must have the same length"

    num_gemms = len(lhs_list)
369
370
371
372
373
    lhs_list_ = []
    rhs_list_ = []
    lhs_sinv_list_ = []
    rhs_sinv_list_ = []
    bias_list_ = []
374
375
376
377
378
379
380
381
382
383
    for i in range(num_gemms):
        lhs = lhs_list[i]
        rhs = rhs_list[i]
        contracting_dims = contracting_dims_list[i]
        dim_nums = (contracting_dims, ((), ()))
        if isinstance(lhs, ScaledTensor) and isinstance(rhs, ScaledTensor):
            scaling_mode = lhs.scaling_mode
            lhs_shape = lhs.data.shape
            rhs_shape = rhs.data.shape
            out_dtype = lhs.dq_dtype
384
            # For ScaledTensors and DELAYED_TENSOR_SCALING, need to handle internal data_layout
385
            if lhs.scaling_mode.is_tensor_scaling():
386
387
388
389
                assert not (
                    lhs.data.dtype == jnp.float8_e5m2 and rhs.data.dtype == jnp.float8_e5m2
                ), "FP8 GEMM does not support E5M2 * E5M2"
                ((lhs_contract_dim,), (rhs_contract_dim,)) = contracting_dims
390
                if lhs.data_layout == "T":
391
                    lhs_contract_dim = (lhs_contract_dim - 1) % lhs.data.ndim
392
                if rhs.data_layout == "T":
393
394
395
                    rhs_contract_dim = (rhs_contract_dim - 1) % rhs.data.ndim
                dim_nums = ((lhs_contract_dim,), (rhs_contract_dim,)), ((), ())
        else:
396
            # For jnp.ndarray, only consider contracting_dims, data_layout is always NN
397
            scaling_mode = ScalingMode.NO_SCALING
398
399
400
401
402
403
404
405
406
407
408
            lhs_shape = lhs.shape
            rhs_shape = rhs.shape
            out_dtype = lhs.dtype

        (lhs_contract, rhs_contract), (lhs_batch, rhs_batch) = dim_nums
        lhs_dn = (lhs_contract, lhs_batch)
        rhs_dn = (rhs_contract, rhs_batch)

        lhs_remain_shape = _calculate_remaining_shape(lhs_shape, lhs_contract)
        rhs_remain_shape = _calculate_remaining_shape(rhs_shape, rhs_contract)

409
        # Note: do not squeeze() for {lhs, rhs}_3d, it will trigger a D2D memcpy
410
        if scaling_mode == ScalingMode.NO_SCALING:
411
412
            lhs_3d = _shape_normalization(lhs, lhs_dn)
            rhs_3d = _shape_normalization(rhs, rhs_dn)
413
        elif scaling_mode.is_tensor_scaling():
414
415
            lhs_3d = _shape_normalization(lhs.data, lhs_dn, lhs.data_layout == "N")
            rhs_3d = _shape_normalization(rhs.data, rhs_dn, rhs.data_layout == "T")
416
        elif scaling_mode == ScalingMode.MXFP8_1D_SCALING:
417
418
419
420
            lhs_3d = _shape_normalization(lhs.data, lhs_dn)
            rhs_3d = _shape_normalization(rhs.data, rhs_dn)
            lhs_scale_inv = _shape_normalization(lhs.scale_inv, lhs_dn)
            rhs_scale_inv = _shape_normalization(rhs.scale_inv, rhs_dn)
421
            # swizzled_scale requires a matrix
422
423
424
425
426
            lhs_scale_inv = swizzled_scale(lhs_scale_inv.squeeze())
            rhs_scale_inv = swizzled_scale(rhs_scale_inv.squeeze())
        else:
            raise NotImplementedError("Unsupported ScalingMode: {scaling_mode}")

427
        # Note: already_transposed doesn't matter for the output shape
428
429
430
431
432
433
434
435
436
437
        # x.shape = [B, D1, D2]
        # contracting_dims = (2, )    --> output.shape = [1, B * D1, D2]
        # contracting_dims = (0, 1, ) --> output.shape = [1, D2, B * D1]
        # x.shape = [D1, D2]
        # contracting_dims = (1, )    --> output.shape = [1, D1, D2]
        # contracting_dims = (0, )    --> output.shape = [1, D2, D1]
        bm = lhs_remain_shape[0]
        bn = rhs_remain_shape[0]
        kl = lhs_3d.shape[-1]
        kr = rhs_3d.shape[-1]
438
439
440
441
442
443
444
445
446
        assert kl == kr, f"After shape normalization, contracting dim size mismatch: {kl} != {kr}"
        if (bm % 16 != 0) or (bn % 16 != 0) or (kl % 16 != 0):
            print("grouped_gemm input pair {i} has invalid problem shape for lowering: ")
            print(f"m = {bm}, n = {bn}, k = {kl}; ")
            print("cuBLAS requires the problem shapes being multiples of 16")
            assert (bm % 16 == 0) and (bn % 16 == 0) and (kl % 16 == 0)

        lhs_list_.append(lhs_3d)
        rhs_list_.append(rhs_3d)
447
        if scaling_mode == ScalingMode.NO_SCALING:
448
449
            lhs_sinv_list_.append(jnp.ones(1, dtype=jnp.float32))
            rhs_sinv_list_.append(jnp.ones(1, dtype=jnp.float32))
450
        if scaling_mode.is_tensor_scaling():
451
452
            lhs_sinv_list_.append(lhs.scale_inv)
            rhs_sinv_list_.append(rhs.scale_inv)
453
        if scaling_mode == ScalingMode.MXFP8_1D_SCALING:
454
455
            lhs_sinv_list_.append(lhs_scale_inv)
            rhs_sinv_list_.append(rhs_scale_inv)
456
        if bias_list is not None:
457
458
459
460
461
462
463
464
            bias_list_.append(bias_list[i])

    out_list = GroupedGemmPrimitive.outer_primitive.bind(
        *lhs_list_,
        *rhs_list_,
        *lhs_sinv_list_,
        *rhs_sinv_list_,
        *bias_list_,
465
        num_gemms=num_gemms,
466
        scaling_mode=scaling_mode,
467
        out_dtype=out_dtype,
468
        has_bias=1 if bias_list is not None else 0,
469
470
    )

471
    return out_list