455 lines
14 KiB
Python
455 lines
14 KiB
Python
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from __future__ import annotations
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import csv
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import dataclasses
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import inspect
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import os
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import re
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from dataclasses import dataclass
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from functools import lru_cache
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from typing import Callable, cast, Optional, TYPE_CHECKING, Union
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from torch._inductor import config
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from torch._inductor.utils import get_benchmark_name
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from torch.utils._ordered_set import OrderedSet
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# Prevent circular import
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if TYPE_CHECKING:
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from torch._inductor.scheduler import BaseSchedulerNode
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# counter for tracking how many kernels have been generated
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generated_kernel_count = 0
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generated_cpp_vec_kernel_count = 0
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num_bytes_accessed = 0
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nodes_num_elem: list[
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tuple[
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BaseSchedulerNode,
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int,
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]
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] = []
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node_runtimes: list[tuple[BaseSchedulerNode, float]] = []
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# counters for tracking fusions
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ir_nodes_pre_fusion = 0
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# counters for tracking to_dtype inserted
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cpp_to_dtype_count = 0
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@dataclasses.dataclass
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class CppOuterLoopFusedCount:
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inner_kernel_number: int
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local_buffer_number: int = 0
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# The length counts the number of outer loop fusions.
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cpp_outer_loop_fused_inner_counts: list[CppOuterLoopFusedCount] = []
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num_comprehensive_padding = 0
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num_matches_for_scatter_upon_const_tensor = 0
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num_loop_reordering = 0
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# counter for parallel reduction.
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parallel_reduction_count = 0
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# reset all counters
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def reset() -> None:
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global generated_kernel_count
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global generated_cpp_vec_kernel_count
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global num_bytes_accessed, nodes_num_elem
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global ir_nodes_pre_fusion
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global cpp_to_dtype_count
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global cpp_outer_loop_fused_inner_counts
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global num_comprehensive_padding
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global num_matches_for_scatter_upon_const_tensor
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global num_loop_reordering
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global parallel_reduction_count
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generated_kernel_count = 0
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generated_cpp_vec_kernel_count = 0
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num_bytes_accessed = 0
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nodes_num_elem.clear()
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node_runtimes.clear()
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ir_nodes_pre_fusion = 0
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cpp_to_dtype_count = 0
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cpp_outer_loop_fused_inner_counts.clear()
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num_comprehensive_padding = 0
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num_matches_for_scatter_upon_const_tensor = 0
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num_loop_reordering = 0
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parallel_reduction_count = 0
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@dataclass
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class CachedMetricsDeltas:
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"""
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The subset of metrics we want update across cache hits, e.g., the
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FxGraphCache.
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"""
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generated_kernel_count: int
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generated_cpp_vec_kernel_count: int
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ir_nodes_pre_fusion: int
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cpp_to_dtype_count: int
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num_bytes_accessed: int
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num_matches_for_scatter_upon_const_tensor: int
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def get_metric_fields() -> list[str]:
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return [field.name for field in dataclasses.fields(CachedMetricsDeltas)]
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class CachedMetricsHelper:
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"""
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A helper class to help calculate and apply counter deltas for those
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metrics we want to save with cache entries (e.g., FxGraphCache) and
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apply on a cache hit.
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"""
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def __init__(self) -> None:
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self.cached_metrics = {}
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for metric in get_metric_fields():
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self.cached_metrics[metric] = globals()[metric]
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def get_deltas(self) -> CachedMetricsDeltas:
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delta_metrics = {}
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for metric in get_metric_fields():
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delta_metrics[metric] = globals()[metric] - self.cached_metrics[metric]
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return CachedMetricsDeltas(**delta_metrics)
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@staticmethod
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def apply_deltas(delta: CachedMetricsDeltas) -> None:
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for metric in get_metric_fields():
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globals()[metric] += getattr(delta, metric)
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REGISTERED_METRIC_TABLES: dict[str, MetricTable] = {}
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@dataclass
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class MetricTable:
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table_name: str
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column_names: list[str]
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num_rows_added: int = 0
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def add_row(
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self, row_fn: Callable[[], dict[str, Optional[Union[str, float]]]]
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) -> None:
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if self.table_name not in enabled_metric_tables():
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return
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row_dict = row_fn()
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assert len(self.column_names) == len(row_dict), (
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f"{len(self.column_names)} v.s. {len(row_dict)}"
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)
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assert OrderedSet(self.column_names) == OrderedSet(row_dict.keys()), (
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f"{OrderedSet(self.column_names)} v.s. {OrderedSet(row_dict.keys())}"
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)
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bn = get_benchmark_name()
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# assert bn is not None
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row = [bn] + [row_dict[column_name] for column_name in self.column_names]
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assert all(isinstance(i, str) for i in row)
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self._write_row(cast(list[str], row))
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def output_filename(self) -> str:
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return f"metric_table_{self.table_name}.csv"
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def write_header(self) -> None:
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filename = self.output_filename()
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with open(filename, "w") as fd:
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writer = csv.writer(fd, lineterminator="\n")
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writer.writerow(["model_name"] + self.column_names)
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def _write_row(self, row: list[str]) -> None:
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filename = self.output_filename()
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if self.num_rows_added == 0 and not os.path.exists(filename):
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self.write_header()
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self.num_rows_added += 1
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for idx, orig_val in enumerate(row):
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if isinstance(orig_val, float):
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new_val = f"{orig_val:.6f}"
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elif orig_val is None:
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new_val = ""
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else:
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new_val = orig_val
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row[idx] = new_val
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with open(filename, "a") as fd:
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writer = csv.writer(fd, lineterminator="\n")
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writer.writerow(row)
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@staticmethod
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def register_table(name: str, column_names: list[str]) -> None:
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table = MetricTable(name, column_names)
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REGISTERED_METRIC_TABLES[name] = table
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MetricTable.register_table(
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"slow_fusion",
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[
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"kernel1_path",
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"kernel1_latency",
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"kernel2_path",
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"kernel2_latency",
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"fused_kernel_path",
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"fused_kernel_latency",
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"slow_down_ratio",
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],
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)
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# track the fusion statistics for each graph
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MetricTable.register_table(
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"graph_stats",
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[
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"graph_id",
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"num_nodes_before_fusion",
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"num_nodes_after_fusion",
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],
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)
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# track the perf difference between persistent reduction and non-persistent
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# reductions
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MetricTable.register_table(
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"persistent_red_perf",
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[
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"kernel0_path",
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"kernel1_path",
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"kernel2_path",
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"kernel3_path",
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"kernel0_latency",
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"kernel1_latency",
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"kernel2_latency",
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"kernel3_latency",
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"size_hints",
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"reduction_hint",
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],
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)
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# Log the fusion failures due to indexing mismatch
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MetricTable.register_table(
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"fusion_failure_due_to_indexing_mismatch",
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[
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"pre_grad_graph_id",
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"post_grad_graph_id",
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"node1_name",
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"node2_name",
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"node1_debug_str",
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"node2_debug_str",
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"common_buffer_names",
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"failure_reason",
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],
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)
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# Log metadata for pointwise/reduction kernels. E.g., model name, kernel path, numel, rnumel, reduction hint
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MetricTable.register_table(
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"kernel_metadata",
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[
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"kernel_name",
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"kernel_path",
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"kernel_category", # pointwise/reduction/foreach etc.
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"size_hints",
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"reduction_hint",
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"line_of_code",
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"num_load",
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"num_store",
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"num_for_loop",
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"num_atomic_add",
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"num_args",
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# xyz numel can be different to size_hints since size_hints are rounded
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# up to the nearest power of 2.
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# Inductor kernel will burn in the xyz numel in kernel code for static
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# shape kernels.
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# Logging them will be helpful to find unaligned shape for reduction
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"xnumel",
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"ynumel",
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"rnumel",
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"kernel_args_num_gb",
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],
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)
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def _parse_kernel_fn_code(kernel_module_code: str) -> str:
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"""
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The kernel_module_code is the python module that contains kernel function code.
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kernel function is the proper triton kernel function annotated with
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@triton.jit
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"""
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from .codecache import PyCodeCache
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from .wrapper_benchmark import get_triton_kernel
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mod = PyCodeCache.load(kernel_module_code)
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kernel = get_triton_kernel(mod)
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# kernel is a CachingAutotune; kernel.fn is the JITFunction;
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# kernel.fn.fn is the function being decorate by triton.jit
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return inspect.getsource(kernel.fn.fn)
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def _parse_kernel_line_of_code(proper_kernel_fn_code: str) -> int:
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"""
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Return the line of code for the kernel excluding the decorators.
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"""
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return len(proper_kernel_fn_code.splitlines())
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def _parse_size_hints(kernel_module_code: str, kernel_category: str) -> Optional[str]:
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if kernel_category == "foreach":
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# foreach kernel does not have size_hints
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return None
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m = re.search(r"size_hints=(\[[0-9, ]*\]),", kernel_module_code)
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assert m, "size_hints missing!"
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return m.group(1)
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def _parse_reduction_hint(
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kernel_category: str, kernel_module_code: str
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) -> Optional[str]:
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if kernel_category not in ("reduction", "persistent_reduction"):
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return None
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m = re.search(r"reduction_hint=ReductionHint\.(\w*),", kernel_module_code)
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assert m, "reduction_hint not found in kernel source code!"
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return m.group(1)
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def _count_pattern(proper_kernel_fn_code: str, pattern: str) -> int:
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return proper_kernel_fn_code.count(pattern)
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def _count_args(proper_kernel_fn_code: str) -> int:
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def_line = proper_kernel_fn_code.splitlines()[0]
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assert def_line.startswith("def ")
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start_idx = def_line.index("(")
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end_idx = def_line.index("):")
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decl_csv = def_line[start_idx + 1 : end_idx]
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comps = decl_csv.split(",")
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return len(comps)
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def _parse_proper_kernel_fn_code(kernel_fn_code: str) -> str:
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"""
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Skip decorators.
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"""
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start_pos = kernel_fn_code.index("def ")
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return kernel_fn_code[start_pos:]
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def _parse_numel(proper_kernel_fn_code: str, numel_arg_name: str) -> Optional[int]:
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m = re.search(f"{numel_arg_name} = ([\\d]+)", proper_kernel_fn_code)
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if m:
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return int(m.group(1))
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else:
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return None
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def _parse_kernel_args_num_gb(
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kernel_fn_code: str, kernel_category: str
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) -> Optional[float]:
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"""
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inductor meta looks like:
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inductor_meta={... 'mutated_arg_names': [], 'no_x_dim': False, 'kernel_num_gb': 2.0},
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"""
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m = re.search(r".kernel_num_gb.:\s*([0-9.]+)", kernel_fn_code)
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if m:
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return float(m.group(1))
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else:
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"""
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There are a few cases that kernel_num_gdb field can be missing:
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1. the field will be missing if config.benchmark_kernel and
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config.profile_bandwidth are false
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2. even if config.benchmark_kernel or config.profile_bandwidth is true.
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foreach kernel does not have kernel_num_gb field in the metadata
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"""
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return None
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def log_kernel_metadata(
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kernel_name: str, kernel_path: str, kernel_module_code: str
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) -> None:
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"""
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An utility to log kernel metadata. We may parse metadata from kernel source code here.
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It's fine to parse the generated kernel code here since the logging is
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disabled by default. It would hurt compilation time.
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"""
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from .wrapper_benchmark import get_kernel_category_by_source_code
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kernel_category = get_kernel_category_by_source_code(kernel_module_code)
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reduction_hint = _parse_reduction_hint(kernel_category, kernel_module_code)
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size_hints = _parse_size_hints(kernel_module_code, kernel_category)
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kernel_fn_code = _parse_kernel_fn_code(kernel_module_code)
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proper_kernel_fn_code = _parse_proper_kernel_fn_code(kernel_fn_code)
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# the line of code excluding the decortors
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kernel_line_of_code = _parse_kernel_line_of_code(proper_kernel_fn_code)
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get_metric_table("kernel_metadata").add_row(
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lambda: {
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"kernel_name": kernel_name,
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"kernel_path": kernel_path,
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"kernel_category": kernel_category,
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"size_hints": size_hints,
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"reduction_hint": reduction_hint,
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"line_of_code": kernel_line_of_code,
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"num_load": _count_pattern(proper_kernel_fn_code, "tl.load"),
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"num_store": _count_pattern(proper_kernel_fn_code, "tl.store"),
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"num_for_loop": _count_pattern(proper_kernel_fn_code, "for "),
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"num_atomic_add": _count_pattern(proper_kernel_fn_code, "tl.atomic_add"),
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"num_args": _count_args(proper_kernel_fn_code),
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"xnumel": _parse_numel(proper_kernel_fn_code, "xnumel"),
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"ynumel": _parse_numel(proper_kernel_fn_code, "ynumel"),
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"rnumel": _parse_numel(proper_kernel_fn_code, "rnumel"),
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"kernel_args_num_gb": _parse_kernel_args_num_gb(
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kernel_fn_code, kernel_category
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),
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}
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)
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def purge_old_log_files() -> None:
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"""
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Purge the old log file at the beginning when the benchmark script runs.
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Should do it in the parent process rather than the child processes running
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each individual model.
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"""
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for name, table in REGISTERED_METRIC_TABLES.items():
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if name in enabled_metric_tables():
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filename = table.output_filename()
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if os.path.exists(filename):
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os.unlink(filename)
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table.write_header()
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def enabled_metric_tables() -> OrderedSet[str]:
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return enabled_metric_tables_impl(config.enabled_metric_tables)
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@lru_cache
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def enabled_metric_tables_impl(config_str: str) -> OrderedSet[str]:
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enabled = OrderedSet[str]()
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for name in config_str.split(","):
|
||
|
name = name.strip()
|
||
|
if not name:
|
||
|
continue
|
||
|
assert name in REGISTERED_METRIC_TABLES, (
|
||
|
f"Metric table name {name} is not registered"
|
||
|
)
|
||
|
enabled.add(name)
|
||
|
return enabled
|
||
|
|
||
|
|
||
|
def is_metric_table_enabled(name: str) -> bool:
|
||
|
return name in enabled_metric_tables()
|
||
|
|
||
|
|
||
|
def get_metric_table(name: str) -> MetricTable:
|
||
|
assert name in REGISTERED_METRIC_TABLES, f"Metric table {name} is not defined"
|
||
|
return REGISTERED_METRIC_TABLES[name]
|