Guide harness runtime refinement after TP

This commit is contained in:
2026-05-06 02:46:07 +08:00
parent 50067c926d
commit 0622e23817
2 changed files with 205 additions and 9 deletions

View File

@@ -42,7 +42,12 @@ def build_harness_context(
"recent_trial_diagnostics": recent_diagnostics,
"convergence_guard": _convergence_guard(state, recent_diagnostics),
"harness_stop": _harness_stop_decision(study, state, recent_diagnostics),
"harness_proposal": _harness_proposal_decision(study, state, recent_diagnostics),
"harness_proposal": _harness_proposal_decision(
study,
window_summary,
state,
recent_diagnostics,
),
"knob_harnesses": _knob_harnesses(study, window_summary, recent_diagnostics),
"proposal_rules": _proposal_rules(),
}
@@ -547,6 +552,7 @@ def _harness_stop_decision(
def _harness_proposal_decision(
study: StudySpec,
window_summary: dict[str, Any],
state: StudyState,
recent_diagnostics: list[dict[str, Any]],
) -> dict[str, Any]:
@@ -557,9 +563,22 @@ def _harness_proposal_decision(
"config_patch": {"env_patch": {}, "flag_patch": {}},
"expected_effects": [],
}
tested_signatures = {
_config_signature(item.get("config_patch") if isinstance(item, dict) else None)
for item in recent_diagnostics
}
baseline = recent_diagnostics[0] if recent_diagnostics else {}
runtime_refinement = _runtime_refinement_proposal(
study,
window_summary,
state,
recent_diagnostics,
tested_signatures=tested_signatures,
)
if runtime_refinement["should_propose"]:
return runtime_refinement
if len(state.trials) != 1 or len(recent_diagnostics) != 1:
return default
baseline = recent_diagnostics[0]
if baseline.get("status") != "completed":
return default
if not isinstance(baseline.get("best_request_rate_per_gpu"), (int, float)):
@@ -576,11 +595,6 @@ def _harness_proposal_decision(
**default,
"reason": "tensor_parallel_size_not_tunable",
}
failed_signatures = {
_config_signature(item.get("config_patch") if isinstance(item, dict) else None)
for item in recent_diagnostics
if item.get("failure_stage") == "engine_launch"
}
base_flags = dict(study.engine.base_flags)
baseline_patch = baseline.get("config_patch")
if isinstance(baseline_patch, dict) and isinstance(baseline_patch.get("flag_patch"), dict):
@@ -595,10 +609,10 @@ def _harness_proposal_decision(
}
flag_patch: dict[str, Any] = {"tensor-parallel-size": next_tp}
signature = _config_signature({"env_patch": {}, "flag_patch": flag_patch})
if signature in failed_signatures:
if signature in tested_signatures:
return {
**default,
"reason": "adjacent_tensor_parallel_probe_previously_failed",
"reason": "adjacent_tensor_parallel_probe_already_tested",
}
return {
"should_propose": True,
@@ -618,6 +632,100 @@ def _harness_proposal_decision(
}
def _runtime_refinement_proposal(
study: StudySpec,
window_summary: dict[str, Any],
state: StudyState,
recent_diagnostics: list[dict[str, Any]],
*,
tested_signatures: set[str],
) -> dict[str, Any]:
default = {
"should_propose": False,
"reason": "runtime_refinement_not_applicable",
"diagnosis": "Runtime refinement does not apply yet.",
"config_patch": {"env_patch": {}, "flag_patch": {}},
"expected_effects": [],
}
if not state.best_trial_id or not recent_diagnostics:
return default
best = next(
(item for item in recent_diagnostics if item.get("trial_id") == state.best_trial_id),
None,
)
if not best or best.get("status") != "completed":
return default
if recent_diagnostics[-1].get("trial_id") != state.best_trial_id:
return default
best_patch = best.get("config_patch")
if not isinstance(best_patch, dict):
return default
best_flags = best_patch.get("flag_patch")
if not isinstance(best_flags, dict):
best_flags = {}
best_tp = _parse_int_like(best_flags.get("tensor-parallel-size"), default=1)
if best_tp <= 1:
return default
tunable = set(study.engine.tunable_flags)
flag_patch: dict[str, Any] = {"tensor-parallel-size": best_tp}
if "gpu-memory-utilization" in tunable:
flag_patch["gpu-memory-utilization"] = 0.95
if "enable-chunked-prefill" in tunable:
flag_patch["enable-chunked-prefill"] = True
if "max-num-batched-tokens" not in tunable:
return default
current_mbt = _parse_int_like(best_flags.get("max-num-batched-tokens"), default=0)
if current_mbt <= 0:
target_mbt = _initial_mbt_from_window(window_summary)
reason = "same_topology_runtime_seed_after_tp_incumbent"
else:
target_mbt = _next_mbt_step(current_mbt)
reason = "same_topology_mbt_growth_after_feasible_runtime_incumbent"
if target_mbt is None:
return {
**default,
"reason": "no_larger_mbt_step_available",
}
flag_patch["max-num-batched-tokens"] = target_mbt
signature = _config_signature({"env_patch": {}, "flag_patch": flag_patch})
if signature in tested_signatures:
return {
**default,
"reason": "same_topology_runtime_probe_already_tested",
}
return {
"should_propose": True,
"reason": reason,
"diagnosis": (
"A TP incumbent improved request_rate_per_gpu; refine batching on the "
"same topology before trying DP/EP or broad runtime changes."
),
"config_patch": {"env_patch": {}, "flag_patch": flag_patch},
"expected_effects": [
"preserve the incumbent topology",
"increase batching headroom while staying inside one runtime family",
],
"incumbent_trial_id": best.get("trial_id"),
}
def _initial_mbt_from_window(window_summary: dict[str, Any]) -> int:
prompt_p99 = _as_float(window_summary.get("prompt_tokens_p99"))
target = max(8192, int(prompt_p99 * 2.0))
return min(32768, _round_up_to_multiple(target, 1024))
def _next_mbt_step(current_mbt: int) -> int | None:
if current_mbt >= 32768:
return None
return min(32768, _round_up_to_multiple(int(current_mbt * 1.5), 1024))
def _round_up_to_multiple(value: int, multiple: int) -> int:
return ((max(value, 1) + multiple - 1) // multiple) * multiple
def _next_allowed_tp(study: StudySpec, *, current_tp: int, current_dp: int) -> int | None:
constraints = study.engine.topology_constraints
if constraints is not None and constraints.allowed_tensor_parallel_sizes:

View File

@@ -669,6 +669,94 @@ class CoreFlowTests(unittest.TestCase):
self.assertEqual(proposal.config_patch.flag_patch, {"tensor-parallel-size": 2})
self.assertFalse(proposal.should_stop)
def test_harness_guided_runtime_seed_preserves_tp_incumbent(self) -> None:
with tempfile.TemporaryDirectory() as tmp:
tmp_path = Path(tmp)
study_path = _write_study_assets(
tmp_path,
engine_overrides={
"tunable_flags": [
"tensor-parallel-size",
"gpu-memory-utilization",
"enable-chunked-prefill",
"max-num-batched-tokens",
],
"topology_constraints": {
"allowed_tensor_parallel_sizes": [1, 2, 4],
"allowed_tp_dp_products": [1, 2, 4],
},
},
)
study = load_study_spec(study_path)
result_path = tmp_path / "trial-0002.json"
result_path.write_text(
json.dumps(
{
"status": "completed",
"best_sampling_u": 0.75,
"best_request_rate": 6.0,
"best_pass_rate": 1.0,
"probes": [
{
"threshold": 0.75,
"feasible": True,
"payload": {
"request_count": 100,
"pass_rate": 1.0,
"request_rate": 6.0,
"early_stopped": False,
"early_stop_reason": "",
"latency_summary": {"failed_reason_counts": {}},
},
}
],
}
),
encoding="utf-8",
)
state = StudyState(
study_id=study.study_id,
best_trial_id="trial-0002",
best_request_rate=6.0,
best_request_rate_per_gpu=3.0,
trials=[
TrialSummary(
trial_id="trial-0001",
status="completed",
best_request_rate=2.0,
best_request_rate_per_gpu=2.0,
config_patch={"env_patch": {}, "flag_patch": {}},
),
TrialSummary(
trial_id="trial-0002",
status="completed",
best_request_rate=6.0,
best_request_rate_per_gpu=3.0,
result_path=str(result_path),
config_patch={
"env_patch": {},
"flag_patch": {"tensor-parallel-size": 2},
},
),
],
)
context = build_harness_context(
study=study,
window_summary={"prompt_tokens_p99": 8100},
state=state,
)
proposal = build_harness_guided_proposal(context)
self.assertIsNotNone(proposal)
self.assertEqual(
proposal.config_patch.flag_patch,
{
"tensor-parallel-size": 2,
"gpu-memory-utilization": 0.95,
"enable-chunked-prefill": True,
"max-num-batched-tokens": 16384,
},
)
def test_trace_input_length_filter_keeps_only_matching_rows(self) -> None:
with tempfile.TemporaryDirectory() as tmp:
tmp_path = Path(tmp)