benchmark_machete.py 21.3 KB
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# SPDX-License-Identifier: Apache-2.0

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import argparse
import copy
import itertools
import math
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import os
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import pickle as pkl
import time
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from collections.abc import Iterable
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from dataclasses import dataclass
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from itertools import product
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from typing import Callable, Optional
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import pandas as pd
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import torch
import torch.utils.benchmark as TBenchmark
from torch.utils.benchmark import Measurement as TMeasurement
from weight_shapes import WEIGHT_SHAPES

from vllm import _custom_ops as ops
from vllm.model_executor.layers.quantization.utils.marlin_utils import (
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    GPTQ_MARLIN_MAX_PARALLEL,
    GPTQ_MARLIN_MIN_THREAD_N,
    marlin_permute_scales,
    marlin_zero_points,
)
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from vllm.model_executor.layers.quantization.utils.marlin_utils_test import (
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    MarlinWorkspace,
)
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from vllm.model_executor.layers.quantization.utils.quant_utils import (
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    pack_rows,
    quantize_weights,
)
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from vllm.scalar_type import ScalarType, scalar_types
from vllm.utils import FlexibleArgumentParser

DEFAULT_MODELS = ["meta-llama/Llama-3-8b", "meta-llama/Llama-2-70b-hf"]
DEFAULT_BATCH_SIZES = [1, 16, 32, 64, 128, 256, 512, 1024]
DEFAULT_TP_SIZES = [1]

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NVTX_PROFILE = os.environ.get("NVTX_PROFILE", False)

if NVTX_PROFILE:
    import nvtx


def terse_type_name(dt):
    return {
        torch.bfloat16: "bf16",
        torch.float16: "fp16",
        torch.int8: "int8",
        torch.float8_e4m3fn: "fp8",
        torch.float: "float",
        torch.int: "int",
    }[dt]


@dataclass
class BenchmarkTensors:
    w_ref: torch.Tensor
    a: torch.Tensor

    w_q: torch.Tensor
    group_size: Optional[int]
    wtype: ScalarType
    w_g_s: torch.Tensor
    w_g_zp: Optional[torch.Tensor]
    w_ch_s: Optional[torch.Tensor]
    w_tok_s: Optional[torch.Tensor]


@dataclass
class TypeConfig:
    act_type: torch.dtype
    weight_type: ScalarType
    output_type: Optional[torch.dtype]
    group_scale_type: Optional[torch.dtype]
    group_zero_type: Optional[torch.dtype]
    channel_scale_type: Optional[torch.dtype]
    token_scale_type: Optional[torch.dtype]


def rand_data(shape, dtype=torch.float16, scale=1):
    if dtype.is_floating_point:
        return (scale * torch.rand(shape, device="cuda") - 0.3).to(dtype)
    else:
        return torch.randint(-15, 15, shape, dtype=dtype, device="cuda")


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def quantize_and_pack(
    atype: torch.dtype,
    w: torch.Tensor,
    wtype: ScalarType,
    stype: Optional[torch.dtype],
    group_size: Optional[int],
    zero_points: bool = False,
):
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    assert wtype.is_integer(), "TODO: support floating point weights"

    w_ref, w_q, w_s, w_zp = quantize_weights(
        w,
        wtype,
        group_size=group_size,
        zero_points=zero_points,
        # to match how the kernel applies zps
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        ref_zero_points_after_scales=True,
    )
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    w_q = pack_rows(w_q, wtype.size_bits, *w_q.shape)
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    return w_ref, w_q, w_s, w_zp
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def create_bench_tensors(
    shape: tuple[int, int, int], types: TypeConfig, group_size: Optional[int]
) -> list[BenchmarkTensors]:
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    m, n, k = shape
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    # we want to make sure that weights don't fit into L2 cache between runs so
    #  we construct enough weights to exceed L2 cache, which is 50mb on a H100
    #  so we target total weight size > 2*50mb
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    num_weights = math.ceil(
        2 * 50 * 1024**2 * 8 / (k * n * types.weight_type.size_bits)
    )
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    a = rand_data((m, k), types.act_type, scale=5)

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    benchmark_tensors: list[BenchmarkTensors] = []
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    for _ in range(num_weights):
        w = rand_data((k, n), types.act_type, scale=5)

        if types.group_scale_type is not None:
            w = w.to(types.group_scale_type)
        if w.dtype.itemsize == 1:
            w = w.to(torch.float16)

        w_ref, w_q_packed, w_s, w_zp = quantize_and_pack(
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            a.dtype,
            w,
            types.weight_type,
            types.group_scale_type,
            group_size,
            types.group_zero_type is not None,
        )
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        if not a.dtype.is_floating_point:
            aiinfo = torch.iinfo(a.dtype)
            w_ref = w_ref.round().clamp(aiinfo.min, aiinfo.max)

        w_ref = w_ref.to(torch.float32)

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        w_ch_s = (
            None
            if types.channel_scale_type is None
            else rand_data((n,), types.channel_scale_type)
        )
        w_tok_s = (
            None
            if types.token_scale_type is None
            else rand_data((m,), types.token_scale_type)
        )
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        benchmark_tensors.append(
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            BenchmarkTensors(
                w_ref=w_ref,
                a=a,
                w_q=w_q_packed,
                wtype=types.weight_type,
                w_g_s=w_s,
                w_g_zp=w_zp,
                group_size=group_size,
                w_ch_s=w_ch_s,
                w_tok_s=w_tok_s,
            )
        )
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    return benchmark_tensors


def torch_matmul_f16_create_bench_fn(bt: BenchmarkTensors) -> Callable:
    a = bt.a
    w = bt.w_ref.to(bt.a.dtype)  # use float reference tensor
    if a.dtype not in [torch.float16, torch.bfloat16]:
        a = a.to(torch.float16)
        w = w.to(torch.float16)
    return lambda: torch.matmul(a, w)


def cutlass_scaled_mm_create_bench_fn(bt: BenchmarkTensors) -> Callable:
    if bt.w_ch_s is not None and bt.w_tok_s is not None:
        scale_a = bt.w_tok_s.to(torch.float32)
        scale_b = bt.w_ch_s.to(torch.float32)
    else:
        scale_a = torch.tensor(1.0, dtype=torch.float32, device=bt.a.device)
        scale_b = torch.tensor(1.0, dtype=torch.float32, device=bt.a.device)
    w_col_major = bt.w_ref.to(bt.a.dtype).t().contiguous().t()
    return lambda: ops.cutlass_scaled_mm(
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        bt.a, w_col_major, scale_a, scale_b, out_dtype=torch.float16
    )
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def marlin_create_bench_fn(bt: BenchmarkTensors) -> Callable:
    device = bt.a.device

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    workspace = MarlinWorkspace(
        bt.w_ref.shape[1], GPTQ_MARLIN_MIN_THREAD_N, GPTQ_MARLIN_MAX_PARALLEL
    )
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    if bt.w_g_zp is None:
        w_zp = torch.empty(0, dtype=torch.int, device=device)
    else:
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        w_zp = marlin_zero_points(
            bt.w_g_zp, bt.w_ref.shape[0], bt.w_ref.shape[1], bt.wtype.size_bits
        )
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    if bt.group_size is None:
        w_s = torch.tensor([], device="cuda", dtype=torch.half)
    else:
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        w_s = marlin_permute_scales(
            bt.w_g_s, bt.w_ref.shape[0], bt.w_ref.shape[1], bt.group_size
        )
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    sort_indices = torch.empty(0, dtype=torch.int, device=device)
    g_idx = torch.empty(0, dtype=torch.int, device=device)
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    w_q = ops.gptq_marlin_repack(
        bt.w_q, sort_indices, bt.w_ref.shape[0], bt.w_ref.shape[1], bt.wtype.size_bits
    )
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    if bt.a.dtype.is_floating_point:
        assert bt.w_ch_s is None
        assert bt.w_tok_s is None
        assert bt.group_size is not None

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        fn = lambda: ops.gptq_marlin_gemm(
            a=bt.a,
            b_q_weight=w_q,
            b_scales=w_s,
            b_zeros=w_zp,
            g_idx=g_idx,
            perm=sort_indices,
            workspace=workspace.scratch,
            b_q_type=bt.wtype,
            size_m=bt.a.shape[0],
            size_n=bt.w_ref.shape[1],
            size_k=bt.w_ref.shape[0],
            is_k_full=True,
            is_zp_float=False,
        )
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    else:
        assert bt.a.dtype == torch.int8
        assert bt.wtype == scalar_types.uint4b8

        if bt.w_ch_s is not None:
            s_ch = bt.w_ch_s.to(torch.float32)
        else:
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            s_ch = torch.ones(bt.w_ref.shape[1], dtype=torch.float32, device=device)
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        if bt.w_tok_s is not None:
            s_tok = bt.w_tok_s.to(torch.float32)
        else:
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            s_tok = torch.ones(bt.a.shape[0], dtype=torch.float32, device=device)

        fn = lambda: ops.marlin_qqq_gemm(
            a=bt.a,
            b_q_weight=w_q,
            s_group=w_s,
            s_tok=s_tok,
            s_ch=s_ch,
            workspace=workspace.scratch,
            size_m=bt.a.shape[0],
            size_n=bt.w_ref.shape[1],
            size_k=bt.w_ref.shape[0],
        )
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    return fn


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def machete_create_bench_fn(
    bt: BenchmarkTensors, out_type=torch.dtype, schedule=None
) -> Callable:
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    w_q = bt.w_q.t().contiguous().t()  # make col major
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    w_q = ops.machete_prepack_B(
        w_q, bt.a.dtype, bt.wtype, None if bt.w_g_s is None else bt.w_g_s.dtype
    )
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    w_g_zp = bt.w_g_zp
    if w_g_zp is not None:
        w_g_zp = -1 * bt.w_g_s * (w_g_zp.to(bt.w_g_s.dtype))

    return lambda: ops.machete_mm(
        a=bt.a,
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        b_q=w_q,
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        b_type=bt.wtype,
        b_group_scales=bt.w_g_s,
        b_group_zeros=w_g_zp,
        b_group_size=bt.group_size,
        b_channel_scales=bt.w_ch_s,
        a_token_scales=bt.w_tok_s,
        out_type=out_type,
        schedule=schedule,
    )
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# impl

# bench

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def bench_fns(label: str, sub_label: str, description: str, fns: list[Callable]):
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    min_run_time = 1 if not NVTX_PROFILE else 0.1
    res = TBenchmark.Timer(
        stmt="""
        for fn in fns:
            fn()
        """,
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        globals={"fns": fns},
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        label=label,
        sub_label=sub_label,
        description=description,
    ).blocked_autorange(min_run_time=min_run_time)

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    if NVTX_PROFILE:
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        with (
            nvtx.annotate("mm-bench"),
            nvtx.annotate(f"{label}|{sub_label}|{description}"),
        ):
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            fns[0]()
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    return res
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_SWEEP_SCHEDULES_RESULTS: Optional[pd.DataFrame] = None
_SWEEP_SCHEDULES_RESULTS_CSV: Optional[str] = None


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def bench(
    types: TypeConfig,
    group_size: int,
    m: int,
    k: int,
    n: int,
    label: str,
    sub_label: str,
    sweep_schedules: bool = True,
) -> list[TMeasurement]:
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    benchmark_tensors = create_bench_tensors((m, n, k), types, group_size)
    sub_label += f", L={len(benchmark_tensors)}"

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    name_type_string = f"W{types.weight_type}" + f"-A{terse_type_name(types.act_type)}"
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    if types.group_scale_type is not None:
        name_type_string += f"-GS{terse_type_name(types.group_scale_type)}"
    if types.group_zero_type is not None:
        name_type_string += f"-GZ{terse_type_name(types.group_zero_type)}"
    if group_size is not None:
        name_type_string += f"-G{group_size}"
    if types.channel_scale_type is not None:
        name_type_string += f"-CS{terse_type_name(types.channel_scale_type)}"
    if types.token_scale_type is not None:
        name_type_string += f"-TS{terse_type_name(types.token_scale_type)}"
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    timers = []
    # pytorch impl
    timers.append(
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        bench_fns(
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            label,
            sub_label,
            "torch.matmul (fp16)",
            [torch_matmul_f16_create_bench_fn(bt) for bt in benchmark_tensors],
        )
    )
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    if types.act_type == torch.int8 or types.act_type == torch.float8_e4m3fn:
        timers.append(
            bench_fns(
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                label,
                sub_label,
                f"cutlass_scaled_mm ({terse_type_name(types.act_type)})",
                [cutlass_scaled_mm_create_bench_fn(bt) for bt in benchmark_tensors],
            )
        )
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    if types.act_type != torch.float8_e4m3fn:
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        timers.append(
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            bench_fns(
                label,
                sub_label,
                f"marlin ({name_type_string})",
                [marlin_create_bench_fn(bt) for bt in benchmark_tensors],
            )
        )
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    # machete
    timers.append(
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        bench_fns(
            label,
            sub_label,
            f"machete ({name_type_string})",
            [
                machete_create_bench_fn(bt, out_type=types.output_type)
                for bt in benchmark_tensors
            ],
        )
    )
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    if sweep_schedules:
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        global _SWEEP_SCHEDULES_RESULTS

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        print("Finding best schedule for machete")
        best = None
        best_schedule = None
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        schedules = ops.machete_supported_schedules(
            a_type=types.act_type,
            b_type=types.weight_type,
            group_scales_type=types.group_scale_type,
            group_zeros_type=types.group_zero_type,
            token_scales_type=types.token_scale_type,
            channel_scales_type=types.channel_scale_type,
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            out_type=types.output_type,
        )
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        if schedules is None or len(schedules) == 0:
            raise ValueError("No schedules found to sweep")

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        for schedule in reversed(schedules):
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            schedule_M = int(schedule.split("_")[0].split("x")[1])

            # Prune known bad schedules
            if schedule_M >= 2 * max(m, 16) or schedule_M < m // 4:
                continue
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            res = bench_fns(
                label,
                sub_label,
                "machete_best",
                [
                    machete_create_bench_fn(
                        bt, out_type=types.output_type, schedule=schedule
                    )
                    for bt in benchmark_tensors
                ],
            )
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            results_row = {
                "M": m,
                "K": k,
                "N": n,
                "group_size": group_size,
                "schedule": schedule,
                "median": res.median,
            }
            if _SWEEP_SCHEDULES_RESULTS is None:
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                _SWEEP_SCHEDULES_RESULTS = pd.DataFrame(columns=results_row.keys())
            _SWEEP_SCHEDULES_RESULTS.loc[len(_SWEEP_SCHEDULES_RESULTS)] = results_row
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            print(f"  {res.median:5.5} ", schedule)
            if not best or res.median < best.median:
                best = res
                best_schedule = schedule
        print("Best schedule:", best_schedule)
        timers.append(best)

    return timers


# runner
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def print_timers(timers: list[TMeasurement]):
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    compare = TBenchmark.Compare(timers)
    compare.print()


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def run(args, MKNs: Iterable[tuple[int, int, int]]) -> Iterable[TMeasurement]:
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    types = TypeConfig(
        act_type=args.act_type,
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        weight_type=scalar_types.uint4b8
        if args.group_zero_type is None
        else scalar_types.uint4,
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        output_type=args.out_type,
        group_scale_type=args.group_scale_type,
        group_zero_type=args.group_zero_type,
        channel_scale_type=args.channel_scale_type,
        token_scale_type=args.token_scale_type,
    )
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    results: list[TMeasurement] = []
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    for m, k, n in MKNs:
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        timers = bench(
            types,
            args.group_size,
            m,
            k,
            n,
            f"{args.act_type}-gemm",
            f"MKN=({m}x{k}x{n})",
            sweep_schedules=args.sweep_schedules,
        )
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        print_timers(timers)
        results.extend(timers)

    return results


# output makers
def make_output(
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    data: list[TMeasurement],
    MKNs: Iterable[tuple[int, int, int]],
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    base_description: str,
    timestamp=None,
):
    print(f"== All Results {base_description} ====")
    print_timers(data)

    # pickle all the results
    timestamp = int(time.time()) if timestamp is None else timestamp
    with open(f"{base_description}-{timestamp}.pkl", "wb") as f:
        pkl.dump(data, f)


# argparse runners


def run_square_bench(args):
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    dim_sizes = list(range(args.dim_start, args.dim_end + 1, args.dim_increment))
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    MKNs = list(zip(dim_sizes, dim_sizes, dim_sizes))
    data = run(args.dtype, args.sweep_schedules, MKNs)

    make_output(data, MKNs, f"square_bench-{args.dtype}")


def run_range_bench(args):
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    m_start, k_start, n_start = (int(x) for x in args.dim_start.split(","))
    m_end, k_end, n_end = (int(x) for x in args.dim_end.split(","))
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    m_increment, k_increment, n_increment = (
        int(x) for x in args.dim_increment.split(",")
    )
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    Ms = list(range(m_start, m_end + 1, m_increment))
    Ks = list(range(k_start, k_end + 1, k_increment))
    Ns = list(range(n_start, n_end + 1, n_increment))
    MKNs = list(product(Ms, Ks, Ns))

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    data = run(args.dtype, args.sweep_schedules, MKNs)

    make_output(data, MKNs, f"range_bench-{args.dtype}")


def run_model_bench(args):
    print("Benchmarking models:")
    for i, model in enumerate(args.models):
        print(f"[{i}]  {model}")

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    def model_shapes(model_name: str, tp_size: int) -> list[tuple[int, int]]:
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        KNs = []
        for KN, tp_split_dim in copy.deepcopy(WEIGHT_SHAPES[model_name]):
            KN[tp_split_dim] = KN[tp_split_dim] // tp_size
            KNs.append(KN)
        return KNs

    model_bench_data = []
    models_tps = list(itertools.product(args.models, args.tp_sizes))
    for model, tp_size in models_tps:
        Ms = args.batch_sizes
        KNs = model_shapes(model, tp_size)
        MKNs = []
        for m in Ms:
            for k, n in KNs:
                MKNs.append((m, k, n))

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        data = run(args, MKNs)
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        model_bench_data.append(data)

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    type_string = f"{args.act_type}"

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    # Print all results
    for data, model_tp in zip(model_bench_data, models_tps):
        model, tp_size = model_tp
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        print(f"== Results {type_string} {model}-TP{tp_size} ====")
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        print_timers(data)

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    timestr = time.strftime("%Y%m%d-%H%M%S")
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    all_results = []
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    for d in model_bench_data:
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        all_results.extend(d)

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    # pickle all data
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    with open(f"model_bench-{type_string}-{timestr}.pkl", "wb") as f:
        args_dict = vars(args)
        args_dict.pop("func")
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        pkl.dump(
            {
                "args": args_dict,
                "results": all_results,
            },
            f,
        )
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if __name__ == "__main__":

    def to_torch_dtype(dt):
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        return {
            "bfloat16": torch.bfloat16,
            "float16": torch.float16,
            "int8": torch.int8,
            "float8_e4m3fn": torch.float8_e4m3fn,
            "int": torch.int,
            "float": torch.float,
        }[dt]

    class ToTorchDtype(argparse.Action):
        def __call__(self, parser, namespace, values, option_string=None):
            setattr(namespace, self.dest, to_torch_dtype(values))
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    parser = FlexibleArgumentParser(
        description="""
Benchmark Machete GEMM.

    To run square GEMMs:
        python3 ./benchmarks/kernels/benchmark_machete.py --dtype float16 square_bench --dim-start 128 --dim-end 512 --dim-increment 64
    
    To run constant N and K and sweep M:
        python3 ./benchmarks/kernels/benchmark_machete.py --dtype float16 range_bench --dim-start 128 --dim-end 512 --dim-increment 64 --n-constant 16384 --k-constant 16384
    
    To run dimensions from a model:
        python3 ./benchmarks/kernels/benchmark_machete.py --dtype float16 model_bench --models meta-llama/Llama-2-7b-hf --batch-sizes 16 --tp-sizes 1
    
    Output:
        - a .pkl file, that is a list of raw torch.benchmark.utils.Measurements for the pytorch and cutlass implementations for the various GEMMs.
            """,  # noqa: E501
        formatter_class=argparse.RawTextHelpFormatter,
    )
    parser.add_argument(
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        "--act-type",
        action=ToTorchDtype,
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        required=True,
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        choices=["bfloat16", "float16", "int8", "float8_e4m3fn"],
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    )
    parser.add_argument(
        "--group-scale-type",
        action=ToTorchDtype,
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        choices=["bfloat16", "float16"],
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    )
    parser.add_argument(
        "--group-zero-type",
        type=to_torch_dtype,
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        choices=["bfloat16", "float16"],
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    )
    parser.add_argument(
        "--channel-scale-type",
        action=ToTorchDtype,
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        choices=["float"],
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    )
    parser.add_argument(
        "--token-scale-type",
        action=ToTorchDtype,
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        choices=["float"],
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    )
    parser.add_argument(
        "--out-type",
        action=ToTorchDtype,
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        choices=["bfloat16", "float16"],
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    )
    parser.add_argument(
        "--group-size",
        type=int,
        help="Available options are ['None', '-1', '128'], default=128",
        default=128,
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    )
    parser.add_argument(
        "--sweep-schedules",
        action="store_true",
        help="Run a sweep over all supported schedules",
    )
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    parser.add_argument(
        "--sweep-csv-out",
        help="CSV to store sweep results",
        default="sch_sweep_results.csv",
    )
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    subparsers = parser.add_subparsers(dest="cmd", required=True)

    square_parser = subparsers.add_parser("square_bench")
    square_parser.add_argument("--dim-start", type=int, required=True)
    square_parser.add_argument("--dim-end", type=int, required=True)
    square_parser.add_argument("--dim-increment", type=int, required=True)
    square_parser.set_defaults(func=run_square_bench)

    range_parser = subparsers.add_parser("range_bench")
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    range_parser.add_argument(
        "--dim-start",
        type=str,
        required=True,
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        help="Start value for M,K,N as common separated list",
    )
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    range_parser.add_argument(
        "--dim-end",
        type=str,
        required=True,
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        help="End value (inclusive) for M,K,N as common separated list",
    )
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    range_parser.add_argument(
        "--dim-increment",
        type=str,
        required=True,
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        help="Increment value for M,K,N as common separated list",
    )
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    range_parser.set_defaults(func=run_range_bench)

    model_parser = subparsers.add_parser("model_bench")
    model_parser.add_argument(
        "--models",
        nargs="+",
        type=str,
        default=DEFAULT_MODELS,
        choices=WEIGHT_SHAPES.keys(),
    )
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    model_parser.add_argument(
        "--tp-sizes", nargs="+", type=int, default=DEFAULT_TP_SIZES
    )
    model_parser.add_argument(
        "--batch-sizes", nargs="+", type=int, default=DEFAULT_BATCH_SIZES
    )
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    model_parser.set_defaults(func=run_model_bench)

    args = parser.parse_args()
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    _SWEEP_SCHEDULES_RESULTS_CSV = args.sweep_csv_out
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    args.func(args)
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    if _SWEEP_SCHEDULES_RESULTS is not None:
        _SWEEP_SCHEDULES_RESULTS.to_csv(_SWEEP_SCHEDULES_RESULTS_CSV)