quant-recipe-search
Use when the user asks to find, search for, or optimize the best quantization recipe for a model, including direct requests like "find the best quantization…
npx skills add https://github.com/nvidia/model-optimizer --skill quant-recipe-searchQuant Recipe Search
Use this skill when quantization is an iterative recipe search, not a one-off PTQ run. The skill owns strategy: define success, choose the search space, sequence candidates, and decide the next iteration. It delegates checkpoint generation, serving, evaluation, monitoring, and metric comparison to the existing execution skills.
Treat a direct request such as "find the best quantization recipe and generate a PTQ checkpoint for this model" as enough to start. Recover local state first, then ask only for missing decisions that change the search.
Skill Boundaries
- Use
ptqto produce and validate checkpoints. - Use
deploymentto serve checkpoints and debug serving-specific flags. - Use
evaluationto create NEL configs and submit evals. - Use
launching-evalsto run, resume, debug, and analyze NEL runs. - Use
monitorfor active job tracking. - Use
accessing-mlflowfor MLflow artifact lookup. - Use
compare-resultsfor validated baseline-vs-candidate deltas and score-field comparability.
Do not duplicate those workflows here. This skill should leave the user with a clear recipe portfolio, success metric, experiment sequence, and next decision.
Problem
The task is to find the best recipe for a user-defined target, not merely to produce a quantized checkpoint. A generated PTQ checkpoint is only a candidate. It becomes a recommended recipe only after evaluation and comparison against the matching baseline.
Required inputs before planning candidates:
- Optimization goal: compute/throughput, memory/latency, or a custom metric.
- Primary quantization family: for example NVFP4, W4A16 NVFP4, FP8/W8A8, INT4/AWQ, or a custom mixed set.
- Benchmark set or baseline results: the user-defined acceptance surface.
If any of these are missing, ask for them. Do not silently default to FP8/W8A8 or call a checkpoint "best" before evaluation.
Default success rule: maximize the chosen performance objective while keeping each benchmark within 1 percentage point of the matching BF16/FP16 baseline. Near-threshold or noisy regressions require reruns before making a decision.
Search Space
Keep the search space explicit. A candidate recipe is a tuple across these axes:
- Numeric format: FP8/W8A8, NVFP4/W4A4, W4A16 NVFP4, INT4/AWQ, or mixed formats such as NVFP4+FP8.
- Calibration/search algorithm: max calibration, MSE calibration, GPTQ, AWQ, AutoQuant scoring, and calibration dataset or sample-count variants.
- Selection method: manual/heuristic rules, sensitivity-guided manual recipes, AutoQuant selection, or a hybrid of AutoQuant plus manual overrides.
- Module family: attention, MLP, MoE experts, routers/gates, embeddings,
lm_head, adapters, vision encoders, and model-specific modules. - Layer position: first/last transformer-layer counts or explicit ordinal ranges to keep in BF16. First 3-4 and last 1-2 layers are common starting candidate ranges, not defaults.
- Runtime fusion constraints: modules fused by the inference library must
use compatible quantization. Examples: vLLM Qwen
linear_attn.in_proj_qkvzand fused MoE expert projections such as gate/up (w1/w3). - Calibration budget: dataset mix, sample count, sequence length, and batch settings.
Do not collapse the search to one dimension such as numeric format only. Read
references/recipe_iteration.md when choosing concrete axes or candidates.
Design Workflow
-
Recover state
- Read result tables, recipe logs, AutoQuant states, sensitivity reports, and experiment notes before proposing new work.
- Ask
monitor,launching-evals, orcompare-resultsto recover active job state and completed metrics when needed.
-
Define the target
- Confirm the optimization goal, primary quantization family, benchmark set, accuracy-loss threshold, calibration budget, and cost metric.
- Include quantization metadata such as scale storage in active-cost or size estimates.
-
Pick baselines and first candidates
- Always include BF16/FP16 and a near-lossless FP8/W8A8 baseline unless FP8 itself is the target.
- For ModelOpt work, start from
modelopt_recipes: model-specific recipes first, then general PTQ presets or recipe fragments. - Add an AutoQuant candidate in the requested primary family when AutoQuant is available. Expect AutoQuant to find a better trade-off than a first manual recipe, but validate that assumption with the same evals.
- Add at least one manual or sensitivity-guided candidate so AutoQuant can be compared against controlled ablations and there is a fallback if AutoQuant misses the best frontier or hits runtime constraints.
- When sensitivity or model behavior implicates boundary layers, add a controlled first-layer, last-layer, or combined BF16 exclusion candidate. Do not preserve boundary layers without testing the trade-off.
-
Generate candidates
- Delegate checkpoint generation and PTQ validation to
ptq. - Change one major axis at a time: format, calibration algorithm, module family, layer position, granularity, or calibration data.
- Use AutoQuant for broad candidate generation and sensitivity reports; use manual recipes for controlled module-family ablations and overrides.
- Resolve positional ordinals against the model's transformer block sequence. For manual recipes, add those blocks to the recipe exclusions. For AutoQuant or hybrid candidates, pass positional exclusions into the selected implementation when supported; otherwise apply a manual override to its result and record the limitation.
- Delegate checkpoint generation and PTQ validation to
-
Gate before scaling
- Validate checkpoint coverage and metadata.
- Reject or rewrite recipes that mix quantization algorithms inside a fused runtime group.
- Ensure positional exclusions preserve complete fused runtime groups, then evaluate the candidate against the same BF16 baseline and acceptance criteria as every other recipe.
- If the checkpoint is valid but serving fails due to runtime support, do not
reject the recipe immediately. Delegate to
deployment/debugfor small patches or flags, then rerun a pipe-clean check.
Iteration Loop
- Run cheap screen evals for every candidate that passes the gates.
- Compare accuracy, verbosity/token usage, and active cost against baselines.
- Rerun noisy or near-threshold results before labeling a regression.
- Decide the next candidate:
- Accuracy drop: protect or ablate sensitive module families, try MSE/GPTQ, use AutoQuant sensitivity to choose overrides, or test first/last-layer BF16 exclusions when evidence points to boundary sensitivity.
- Poor performance/cost: quantize the next high-cost active family, adjust active-cost objective, or try a more aggressive format.
- AutoQuant underperforms manual recipes: inspect sensitivity reports, achieved bits, excluded modules, and runtime-fusion constraints; keep the manual recipe in the portfolio instead of forcing the AutoQuant result.
- Runtime incompatibility: rewrite around fused groups or isolate deployment support from checkpoint quality.
- Repeated AutoQuant recipes: inspect achieved bits and recipe hashes, then adjust constraints before launching a larger sweep.
- Promote only when
compare-resultsshows no failed external sanity check, the candidate is comparable to the validated measured baseline, and the user-defined goal is met. An externally unverified baseline is non-blocking.
Maintain a recipe portfolio table with recipe name, objective, active-cost estimate, calibration notes, checkpoint path, eval/log references, accuracy, verbosity, positional exclusions, and decision.
References
- For recipe design, search-space details, sensitivity, and active-cost
accounting, read
references/recipe_iteration.md. - For a concrete prior case study, read
references/qwen36_case_study.mdonly when Qwen3.5/Qwen3.6 details are relevant.