بنقرة واحدة
example-quality-assess
GRADE quality assessment adapted for individual training examples
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
GRADE quality assessment adapted for individual training examples
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Generate Datasheet, Model Card, and Data Statement from a dataset manifest
Deterministically rebuild a dataset from its manifest and verify fixity equivalence
Create a versioned training dataset with manifest, fixity, provenance, and archive snapshot
End-to-end training dataset pipeline — acquire sources through publication
Detect training-eval overlap against benchmark sets before dataset publication
Generate SFT training examples from raw sources using Self-Instruct / Evol-Instruct / SQuAD / STaR patterns
| name | example-quality-assess |
| description | GRADE quality assessment adapted for individual training examples |
| namespace | training-complete |
| category | quality |
| platforms | ["claude","copilot","cursor","factory","windsurf","warp","codex","opencode","openclaw","hermes"] |
| commandHint | {"argumentHint":"<example-id | batch-glob> [--min-grade <HIGH|MODERATE|LOW>] [--report <path>]"} |
Apply the GRADE framework (REF-060) to rate individual training examples — not just their sources. Writes quality_grade into each example's metadata and emits an aggregate quality report per dataset version.
<example-id | batch-glob> (required)Either a single example ID or a glob matching multiple examples (e.g., examples/raw/*).
--min-grade <HIGH|MODERATE|LOW> (optional)Only pass examples rated at or above this grade. Default: no filter.
--report <path> (optional)Write aggregate quality report to this path. Default: .aiwg/training/reports/quality-<timestamp>.md.
--non-interactive (optional)Skip interactive mode (useful for batch).
memory-ingest consumer interface.acquire-training-source output (already stored in metadata.source_refs lineage).| Factor | Criterion |
|---|---|
| Clear reasoning trace | output.reasoning_trace is present and steps are coherent |
| Diverse task type for domain | This example's task type is under-represented in its domain |
| Cross-source corroboration | source_refs has 2+ independent sources supporting the same claim |
| Verifiable output | Output can be validated (e.g., code compiles, math correct, citation resolves) |
| Human-written | synthetic: false and synthetic_depth: 0 |
| Factor | Criterion | Penalty |
|---|---|---|
| Hallucinated citation | output cites a source that doesn't resolve | −3 |
| Out-of-distribution | Example topic diverges from declared domain | −2 |
| Ambiguous prompt | input.user can be interpreted multiple ways | −1 |
| Truncated output | output.assistant ends mid-sentence | −1 |
| Unsafe content | Flagged by Llama Guard (REF-443) or similar | −2 |
| Synthetic depth > 1 | Recursion beyond first generation (ADR-022 D10) | −2 |
Source-level GRADE sets the baseline:
Apply upgrade / downgrade factors (each adjusts by one tier). Cap at HIGH; floor at VERY LOW.
metadata.quality_grade on the example record.--min-grade filter — if set, flag examples below threshold for removal or review (does NOT auto-delete per human-authorization rule).reports/quality-<timestamp>.md with:
memory-log-append with op lint including findings distribution.# Assess all raw examples with a MODERATE minimum
example-quality-assess "examples/raw/*" --min-grade MODERATE
# Assess a single example
example-quality-assess ex-550e8400
# Generate report to custom path
example-quality-assess "examples/synthesized/*" --report reports/synth-quality-v1.md
@agentic/code/frameworks/sdlc-complete/schemas/research/quality-assessment.yaml — GRADE schema (reused)@agentic/code/frameworks/training-complete/schemas/example-record.yaml — target record format (sets metadata.quality_grade)@agentic/code/frameworks/research-complete/skills/research-quality/SKILL.md@agentic/code/addons/semantic-memory/skills/memory-lint/SKILL.md@agentic/code/addons/aiwg-utils/rules/human-authorization.md