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dataset-curation

Prepare, format, and validate datasets for supervised fine-tuning and preference training. Use when converting raw data into training format, applying chat templates, configuring sequence packing, generating synthetic training data, or writing a dataset card before a run.

How do I install this agent skill?

npx skills add https://github.com/wshobson/agents --skill dataset-curation
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    The skill provides comprehensive guidance for preparing, formatting, and validating datasets for LLM fine-tuning. It outlines industry-standard practices for chat template application, sequence packing, and synthetic data generation without introducing any security vulnerabilities.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

What does this agent skill do?

Dataset Curation

This skill assumes finetuning-method-selection already routed here — the next step is preparing data, not choosing a method. What follows: format selection by target method, the template/packing mechanics behind the most common silent training failures, rules for mixing in synthetic data without collapse, and the dataset card that closes out Phase 2 before a run starts.

Input: raw examples (demonstrations, preference judgments, or task prompts) plus a routing decision from finetuning-method-selection. Output format: a formatted, packed, validated JSONL dataset plus a completed dataset card — the Phase 2 artifact /finetune checks before launching training.

Format Selection

MethodShapeRows
SFT, single-turnInstruct (instruction/response or prompt/completion)~1,000+ floor
SFT, multi-turnConversation / ChatML messages list~1,000+ floor
DPO / ORPOPreference pair (prompt, chosen, rejected)Method-dependent, see preference-optimization
KTOUnpaired (prompt, completion, label)Method-dependent, see preference-optimization
GRPO / RLVRPrompt-only (prompt + verifier metadata)Method-dependent, see grpo-rlvr-training
  • ~1,000+ rows is the recommended floor for SFT, not a target. Below it, a handful of low-quality or duplicate examples can dominate the gradient; above it, quality over quantity — a smaller verified, deduplicated set beats a larger noisy one.

  • The ChatML shape, for orientation; the other four formats plus a ShareGPT conversion note live in references/formats-and-templates.md:

    {"messages": [
      {"role": "user", "content": "..."},
      {"role": "assistant", "content": "..."}
    ]}
    

Chat Templates and Loss Masking

Apply the target model's chat template before any concatenation or packing, never after — packing raw text and templating the packed blob afterward corrupts turn boundaries, landing role markers in the wrong place relative to each example.

  • Train on assistant responses only. Mask the loss (-100 in the labels tensor) over system/user turns and the template's own role markers — only assistant-turn content tokens contribute to loss.

  • Template/tokenizer mismatches are a top silent failure mode. A model trained against one chat template but served or evaluated with a different one degrades without erroring. Verify the same template string used in training is applied at inference and eval time.

  • Keep the dataset in messages shape and let the trainer template and mask it (assistant_only_loss=True in current TRL) — pre-rendering to a flat text field destroys the turn boundaries masking needs. Full code sketch: references/formats-and-templates.md. Sanity-check before training — decode only unmasked positions; expect only assistant text:

    keep = batch["labels"][0] != -100
    print(tokenizer.decode(batch["input_ids"][0][keep]))
    

Packing

Without packing, 40–70% of compute is spent on padding — variable-length examples batched at a fixed sequence length waste the gap between each example's length and the batch's max. Packing concatenates multiple examples into one sequence up to the max length, cutting most of that waste.

  • Packing changes batch semantics. A packed sequence can contain several original examples, so "steps per epoch" and any LR schedule keyed to example count shift once packing is on — recompute schedule milestones against packed-sequence count.

  • MANDATORY: decode and manually inspect 5–10 packed sequences before scaling to a full run. Confirm example boundaries land where expected, template markers are intact per sub-example, and the loss mask is still assistant-only within each packed sequence. Not optional — packing bugs are silent (the loss curve looks normal) and only surface in eval quality, hours later:

    for seq in packed_dataset.select(range(10)):
        print(tokenizer.decode(seq["input_ids"]))
    

Synthetic Data Rules

  • Keep ≥25% real data as a collapse guard. Training on a growing share of model-generated data without a real-data floor drives measurable quality collapse over successive generations — 25% real is the minimum that holds the line. General-domain replay rows count toward this floor — "real" means "not generated for this task from this student," not "human-authored." An all-synthetic-by-construction dataset can meet the ≥25% floor through replay alone (see references/synthetic-data.md's Replay-Mix Construction recipe); state which rows count as "real" in the dataset card rather than leaving the floor structurally unmeetable.
  • Magpie and rejection sampling are the workhorses. Magpie extracts prompts from the model's own template prior; rejection sampling generates several candidates per prompt and keeps only the ones a filter passes. Both beat naive single-shot generation.
  • Targeted, student-aware generation beats static generation by 1.3–2x sample efficiency — aiming at the student's actual failure modes hits a quality bar with fewer filtered examples.
  • Typical accept rates after filtering run 10–30%. Plan volume accordingly — a 10,000-row target at 15% accept needs ~65,000+ raw generations.
  • Generation-method ranking, filter funnel, replay- mix construction, and distillation pattern: references/synthetic-data.md.

The Dataset Card

Every dataset that reaches training gets a card — the required Phase 2 artifact /finetune checks before launching. The card is not free-form documentation; it MUST carry these fields:

  • Provenance — where every row came from (real source(s), synthetic method(s), or both), traceable to trace-to-training-data output.
  • Counts — total rows, and rows per split (train/eval/held-out) if split.
  • Synthetic/real ratio — the measured ratio, checked against the ≥25% real floor above.
  • Dedup method — exact-match, semantic (embedding threshold), or both; see the filter funnel in references/synthetic-data.md.
  • Template used — the exact chat template string/identifier, kept consistent through inference and eval — this is what ties an eval-harness-first run back to the checkpoint.
  • Packing config — whether packing was used, max sequence length, and confirmation the 5–10-sequence manual inspection above was done.

A dataset missing any of these six fields isn't ready for /finetune — the card is a gate, not a summary written after the fact.

Phase 2 Exit Checklist

Before handing off to /finetune, confirm:

  1. Format matches the method (table above).
  2. Template applied before concatenation.
  3. Loss masked to assistant turns only.
  4. 5–10 packed sequences decoded and read.
  5. ≥25% real data in the final mix.
  6. Dataset card complete — all six fields.

References

  • references/formats-and-templates.md — JSONL examples per format, current-TRL masking code, and the ShareGPT conversion note.
  • references/synthetic-data.md — generation-method ranking, filter funnel, replay-mix construction, and teacher→student distillation pattern.

Related skills: finetuning-method-selection routes here; lora-qlora-recipes, vision-sft, and preference-optimization consume the datasets this skill produces; trace-to-training-data is the provenance source for graded-trajectory datasets; eval-harness-first grades the resulting checkpoint.

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

<a href="https://skillzs.dev/skills/wshobson/agents/dataset-curation">View dataset-curation on skillZs</a>