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329 lines
12 KiB
Python
329 lines
12 KiB
Python
import math
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import pickle
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import random
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import uuid
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from argparse import Namespace
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from dataclasses import dataclass
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from datetime import datetime
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from pathlib import Path
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from typing import List, Optional
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import numpy as np
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from tqdm.asyncio import tqdm
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from transformers import PreTrainedTokenizerBase
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from sglang.benchmark.datasets.common import (
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BaseDataset,
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DatasetRow,
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compute_random_lens,
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gen_prompt,
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)
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def _zipf_group_probs(num_groups: int, alpha: float) -> np.ndarray:
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"""Rank-based Zipf probability vector with rank starting at 1.
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weight(rank) = 1 / rank ** alpha (rank in 1..num_groups)
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probability(rank) = weight(rank) / sum_over_all_ranks(weight)
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The returned array has length num_groups; element i corresponds to
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group index i (rank i + 1), so group 0 is the hottest.
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"""
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if num_groups <= 0:
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raise ValueError(f"num_groups must be > 0, got {num_groups}")
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ranks = np.arange(1, num_groups + 1, dtype=np.float64)
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weights = 1.0 / (ranks**alpha)
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return weights / weights.sum()
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@dataclass
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class GeneratedSharedPrefixDataset(BaseDataset):
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num_groups: int
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prompts_per_group: int
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system_prompt_len: int
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question_len: int
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output_len: int
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range_ratio: float
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seed: int
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fast_prepare: bool
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send_routing_key: bool
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num_turns: int
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ordered: bool
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group_distribution: str = "uniform"
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zipf_alpha: Optional[float] = None
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@classmethod
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def from_args(cls, args: Namespace) -> "GeneratedSharedPrefixDataset":
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assert not getattr(args, "tokenize_prompt", False)
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group_distribution = getattr(args, "gsp_group_distribution", "uniform")
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zipf_alpha = getattr(args, "gsp_zipf_alpha", None)
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# Defensive validation for in-process callers that construct a
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# Namespace by hand and bypass the argparse boundary in
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# serving.py. The CLI hook enforces the same rules first.
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if group_distribution not in ("uniform", "zipf"):
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raise ValueError(
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f"--gsp-group-distribution must be 'uniform' or 'zipf', "
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f"got {group_distribution!r}"
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)
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if group_distribution == "zipf":
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if zipf_alpha is None:
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raise ValueError(
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"--gsp-group-distribution=zipf requires --gsp-zipf-alpha "
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"(a finite float > 0)"
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)
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if not math.isfinite(zipf_alpha) or zipf_alpha <= 0:
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raise ValueError(
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f"--gsp-zipf-alpha must be a finite float > 0, got {zipf_alpha!r}"
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)
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elif zipf_alpha is not None:
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raise ValueError(
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"--gsp-zipf-alpha is only meaningful with "
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"--gsp-group-distribution=zipf; remove --gsp-zipf-alpha "
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"or set --gsp-group-distribution=zipf"
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)
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return cls(
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num_groups=args.gsp_num_groups,
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prompts_per_group=args.gsp_prompts_per_group,
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system_prompt_len=args.gsp_system_prompt_len,
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question_len=args.gsp_question_len,
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output_len=args.gsp_output_len,
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range_ratio=getattr(args, "gsp_range_ratio", 1.0),
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seed=args.seed,
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fast_prepare=getattr(args, "gsp_fast_prepare", False),
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send_routing_key=getattr(args, "gsp_send_routing_key", False),
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num_turns=getattr(args, "gsp_num_turns", 1),
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ordered=getattr(args, "gsp_ordered", False),
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group_distribution=group_distribution,
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zipf_alpha=zipf_alpha,
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)
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def load(
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self, tokenizer: PreTrainedTokenizerBase, model_id=None
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) -> List[DatasetRow]:
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return sample_generated_shared_prefix_requests(
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num_groups=self.num_groups,
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prompts_per_group=self.prompts_per_group,
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system_prompt_len=self.system_prompt_len,
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question_len=self.question_len,
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output_len=self.output_len,
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range_ratio=self.range_ratio,
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tokenizer=tokenizer,
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seed=self.seed,
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send_routing_key=self.send_routing_key,
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num_turns=self.num_turns,
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fast_prepare=self.fast_prepare,
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ordered=self.ordered,
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group_distribution=self.group_distribution,
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zipf_alpha=self.zipf_alpha,
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)
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def get_gen_prefix_cache_path(
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seed: int,
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num_groups: int,
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prompts_per_group: int,
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system_prompt_len: int,
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question_len: int,
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output_len: int,
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tokenizer,
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group_distribution: str = "uniform",
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zipf_alpha: Optional[float] = None,
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):
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"""Create cache directory under ~/.cache/sglang/benchmark.
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The uniform-mode filename is preserved exactly as before so existing
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on-disk caches remain valid. Non-default sampling modes get an extra
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suffix encoding the parameters that affect the cached payload.
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"""
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cache_dir = Path.home() / ".cache" / "sglang" / "benchmark"
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suffix = ""
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if group_distribution != "uniform":
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suffix = f"_{group_distribution}_{zipf_alpha}"
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cache_key = (
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f"gen_shared_prefix_{seed}_{num_groups}_{prompts_per_group}_"
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f"{system_prompt_len}_{question_len}_{output_len}{suffix}_"
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f"{tokenizer.__class__.__name__}.pkl"
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)
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return cache_dir / cache_key
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def sample_generated_shared_prefix_requests(
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num_groups: int,
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prompts_per_group: int,
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system_prompt_len: int,
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question_len: int,
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output_len: int,
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range_ratio: float,
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tokenizer: PreTrainedTokenizerBase,
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seed: int,
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send_routing_key: bool = False,
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num_turns: int = 1,
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fast_prepare: bool = False,
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ordered: bool = False,
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group_distribution: str = "uniform",
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zipf_alpha: Optional[float] = None,
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) -> List[DatasetRow]:
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"""Generate benchmark requests with shared system prompts using random tokens and caching.
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When group_distribution is "uniform" (default), each group receives exactly
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prompts_per_group requests; behavior matches the legacy generator.
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When group_distribution is "zipf", each request's group is sampled by rank
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with probability 1/rank**zipf_alpha / sum_k(1/k**zipf_alpha); rank starts at
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1 and group index 0 is the hottest. Sampling uses an isolated
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numpy.random.default_rng(seed) so the shared question/system-prompt pool
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stays byte-identical to uniform mode for the same seed and other args.
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Zipf mode is cached on disk under a distinct key per (group_distribution,
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zipf_alpha) value.
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"""
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cache_path = get_gen_prefix_cache_path(
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seed,
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num_groups,
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prompts_per_group,
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system_prompt_len,
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question_len,
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output_len,
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tokenizer,
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group_distribution=group_distribution,
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zipf_alpha=zipf_alpha,
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)
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# range_ratio != 1 / num_turns > 1 perturb the payload but are not in the
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# cache key; send_routing_key embeds a per-run uuid + timestamp that is
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# meaningless to cache. Bypass for these pre-existing reasons only.
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should_cache = range_ratio == 1 and not send_routing_key and num_turns == 1
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if should_cache and cache_path.exists():
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print(f"\nLoading cached generated input data from {cache_path}")
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with open(cache_path, "rb") as f:
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return pickle.load(f)
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if not should_cache:
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print(f"\nCache bypassed ({range_ratio=}, {send_routing_key=}, {num_turns=})")
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print(
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f"\nGenerating new input data... "
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f"({num_groups=}, {prompts_per_group}, {system_prompt_len=}, {question_len=}, {output_len=}, {range_ratio=}, {num_turns=}, {group_distribution=}, {zipf_alpha=})"
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)
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run_random_str = uuid.uuid4().hex[:8]
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run_start_timestamp = datetime.now().strftime("%Y%m%d%H%M%S")
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system_prompt_lens = compute_random_lens(
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full_len=system_prompt_len,
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range_ratio=range_ratio,
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num=num_groups,
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)
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question_lens = np.array(
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compute_random_lens(
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full_len=question_len,
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range_ratio=range_ratio,
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num=num_groups * prompts_per_group * num_turns,
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)
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).reshape(num_groups, prompts_per_group, num_turns)
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output_lens = np.array(
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compute_random_lens(
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full_len=output_len,
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range_ratio=range_ratio,
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num=num_groups * prompts_per_group,
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)
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).reshape(num_groups, prompts_per_group)
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del system_prompt_len, question_len, output_len
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system_prompts = [
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gen_prompt(tokenizer, system_prompt_lens[i]) for i in range(num_groups)
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]
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# shape: (num_groups, prompts_per_group, num_turns)
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questions = [
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[
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[
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gen_prompt(tokenizer, int(question_lens[g, p, t]))
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for t in range(num_turns)
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]
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for p in range(prompts_per_group)
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]
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for g in range(num_groups)
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]
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# Per-slot group assignment. Uniform mode is the identity assignment
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# [0,0,...,1,1,...,N-1,N-1]; zipf mode samples from the rank distribution
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# using an isolated RNG so the module-level random / numpy.random state
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# that compute_random_lens / gen_prompt rely on is never perturbed -- this
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# keeps the system-prompt and question pool byte-identical to uniform mode
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# for the same seed and other args.
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total_slots = num_groups * prompts_per_group
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if group_distribution == "uniform":
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assignment = np.repeat(np.arange(num_groups), prompts_per_group)
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else: # "zipf"
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rng = np.random.default_rng(seed)
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probs = _zipf_group_probs(num_groups, zipf_alpha)
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assignment = rng.choice(num_groups, size=total_slots, replace=True, p=probs)
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input_requests = []
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total_input_tokens = 0
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total_output_tokens = 0
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for slot_idx, sampled_g in enumerate(
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tqdm(assignment, desc="Generating shared-prefix prompts")
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):
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# src_(g,p) walks the question pool in uniform-enumeration order, so
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# per-slot question text is reproducibly identical across modes.
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src_g, src_p = divmod(slot_idx, prompts_per_group)
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sampled_g = int(sampled_g)
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system_prompt = system_prompts[sampled_g]
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routing_key = (
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f"{run_random_str}_{run_start_timestamp}_{sampled_g}"
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if send_routing_key
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else None
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)
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turn_questions = questions[src_g][src_p]
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turn_prompts = [f"{system_prompt}\n\n{turn_questions[0]}"] + turn_questions[1:]
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full_prompt = turn_prompts[0] if num_turns == 1 else turn_prompts
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prompt_len = 1 if fast_prepare else len(tokenizer.encode(turn_prompts[0]))
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output_len_val = int(output_lens[src_g, src_p])
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input_requests.append(
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DatasetRow(
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prompt=full_prompt,
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prompt_len=prompt_len,
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output_len=output_len_val,
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routing_key=routing_key,
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)
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)
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total_input_tokens += prompt_len
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total_output_tokens += output_len_val
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if not ordered:
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random.shuffle(input_requests)
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print(f"\nGenerated shared prefix dataset statistics:")
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print(f"Number of groups: {num_groups}")
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print(f"Prompts per group: {prompts_per_group}")
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print(f"Number of turns: {num_turns}")
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print(f"Group distribution: {group_distribution}")
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if group_distribution == "zipf":
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print(f"Zipf alpha: {zipf_alpha}")
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print(f"Total prompts: {len(input_requests)}")
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if not fast_prepare:
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print(f"Total input tokens: {total_input_tokens}")
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print(f"Total output tokens: {total_output_tokens}")
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print(
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f"Average system prompt length: {sum(len(tokenizer.encode(sp)) for sp in system_prompts) / len(system_prompts):.1f} tokens"
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)
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all_questions = [q for group in questions for conv in group for q in conv]
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print(
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f"Average question length: {sum(len(tokenizer.encode(q)) for q in all_questions) / len(all_questions):.1f} tokens\n"
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)
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if should_cache:
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cache_path.parent.mkdir(parents=True, exist_ok=True)
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print(f"Caching generated input data to {cache_path}")
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with open(cache_path, "wb") as f:
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pickle.dump(input_requests, f)
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return input_requests
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