← ClaudeAtlas

benchmark-optimization-looplisted

Use when the user asks to make something faster, try many variants, run recursive optimization, benchmark latency/throughput/cost, or choose the best implementation by repeated measured tests.
23ag1/completely · ★ 3 · AI & Automation · score 79
Install: claude install-skill 23ag1/completely
# Benchmark Optimization Loop Use this skill to convert "make it 20x faster" or "try 50 recursive optimizations" into a bounded measured loop that can actually improve a system. ## Required Baseline Do not optimize until these exist: - the operation being optimized; - the correctness gate that must stay green; - the metric: wall time, p95 latency, rows/sec, cost/run, memory, error rate; - the current baseline; - the search budget: max variants, max time, max spend, max data impact. If the user asks for an unrealistic target, keep the ambition but make the loop bounded and measurable. ## Loop 1. Measure the baseline. 2. Identify bottlenecks from evidence. 3. Generate variants that test one hypothesis each. 4. Run variants with the same input shape. 5. Reject variants that fail correctness, safety, or reproducibility. 6. Promote the fastest safe variant. 7. Codify the winning path in a script, command, test, config, or doc. 8. Rerun the baseline and winner to confirm the delta. ## Variant Table Track variants like this: ```text Variant | Hypothesis | Command | Time | Correct? | Notes baseline | current path | npm run job | 120s | yes | stable batch-500 | fewer round trips | npm run job -- --batch 500 | 42s | yes | winner parallel-8 | more workers | npm run job -- --workers 8 | 31s | no | rate limited ``` ## Recursive Search For recursive or hyperparameter work: - persist every run to a ledger; - compare against the prior accepted winner, not only the previous run;