Real-time engine state is NOT the routing lever. Across 6 policies × es0/es1, real state reshuffles 44-76% of decisions but never beats the champion (unified+A+B, p90 7.62s). The effect's SIGN is set by reactivity: one-shot placement (sticky) HELPS -26%; per-request affinity-dominated is a wash; per-request pure-load (lmetric +17%, load_only +27%) HURTS via herding (stale shadow was a dampener). Feed verified fresh (median 25ms, <=92ms during prefills). Prior shadow-state results stand. ES_ABLATION_RESULTS.md has the table + mechanism; run_full_ablation.sh / fresh_sampler.py / cmp_es.py are the harness. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
77 lines
3.1 KiB
Python
77 lines
3.1 KiB
Python
#!/usr/bin/env python3
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"""Compare an es0 (shadow) vs es1 (real-state) run: TTFT, decision split,
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routing flips, load distribution. Optional 3rd arg = es1 freshness jsonl."""
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import json, sys, statistics, os
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def load(d):
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ms = {}
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for l in open(os.path.join(d, "metrics.jsonl")):
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m = json.loads(l); ms[m["request_id"]] = m
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bd = {x["request_id"]: x for x in json.load(open(os.path.join(d, "breakdown.json")))}
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return ms, bd
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def pct(xs, q):
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xs = sorted(xs)
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return xs[min(len(xs) - 1, int(q * len(xs)))] if xs else 0
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def chosen(x):
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return x.get("routed_to", x.get("chosen_idx"))
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d0, d1 = sys.argv[1], sys.argv[2]
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m0, b0 = load(d0); m1, b1 = load(d1)
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def ttfts(ms):
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return [m["ttft_s"] for m in ms.values() if not m.get("error") and m.get("ttft_s") is not None]
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print("=== overall TTFT ===")
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for tag, ms in [("es0/shadow", m0), ("es1/real ", m1)]:
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t = ttfts(ms)
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print(f"{tag}: {len(t)}/{len(ms)} ok p50={pct(t,.5):.2f} p90={pct(t,.9):.2f} "
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f"p99={pct(t,.99):.2f} max={max(t):.2f} mean={statistics.mean(t):.2f}")
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def byclass(ms, bd):
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cls = {}
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for rid, m in ms.items():
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if m.get("error") or m.get("ttft_s") is None: continue
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dec = bd.get(rid, {}).get("decision", "?")
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cls.setdefault(dec, []).append(m["ttft_s"])
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return cls
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print("\n=== decision split (n / p90 / p99) ===")
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for tag, ms, bd in [("es0", m0, b0), ("es1", m1, b1)]:
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print(f" [{tag}]")
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for dec, ts in sorted(byclass(ms, bd).items()):
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print(f" {dec:18s} n={len(ts):4d} p90={pct(ts,.9):7.2f} p99={pct(ts,.99):7.2f}")
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common = set(b0) & set(b1)
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flips = [r for r in common if chosen(b0[r]) != chosen(b1[r])]
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decflip = [r for r in common if b0[r].get("decision") != b1[r].get("decision")]
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print(f"\n=== routing changes (common reqs={len(common)}) ===")
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print(f" instance flips : {len(flips)} ({100*len(flips)/max(1,len(common)):.1f}%)")
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print(f" decision-type flips: {len(decflip)} ({100*len(decflip)/max(1,len(common)):.1f}%)")
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# TTFT of flipped vs non-flipped (es1 side)
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fl_t = [m1[r]["ttft_s"] for r in flips if not m1[r].get("error") and m1[r].get("ttft_s") is not None]
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if fl_t:
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print(f" flipped reqs es1 TTFT: p50={pct(fl_t,.5):.2f} p90={pct(fl_t,.9):.2f} mean={statistics.mean(fl_t):.2f}")
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def dist(bd):
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d = {}
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for x in bd.values():
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d[chosen(x)] = d.get(chosen(x), 0) + 1
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return dict(sorted(d.items(), key=lambda kv: str(kv[0])))
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print("\n=== per-instance request count ===")
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print(" es0:", dist(b0))
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print(" es1:", dist(b1))
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if len(sys.argv) > 3 and os.path.exists(sys.argv[3]):
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rows = [json.loads(l) for l in open(sys.argv[3]) if l.strip()]
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ages = [r["age_s"] for r in rows]
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busy = [r["age_s"] for r in rows if (r.get("num_prefilling") or 0) > 0]
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print(f"\n=== es1 feed freshness (full run, n={len(ages)}) ===")
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if ages:
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print(f" age_s med={statistics.median(ages):.3f} p90={pct(ages,.9):.3f} max={max(ages):.3f} "
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f"stale>2s={sum(1 for a in ages if a>2)}")
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if busy:
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print(f" during-prefill n={len(busy)} med={statistics.median(busy):.3f} max={max(busy):.3f}")
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