feat: Added STAGE_CONFIGS registry (stages 2-5) with per-stage rubrics,…
- "backend/pipeline/quality/scorer.py" - "backend/pipeline/quality/variant_generator.py" GSD-Task: S04/T01
This commit is contained in:
parent
03373f263d
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2 changed files with 376 additions and 77 deletions
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@ -1,11 +1,7 @@
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"""Stage 5 quality scorer — LLM-as-judge evaluation across 5 dimensions.
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"""Multi-stage quality scorer — LLM-as-judge evaluation with per-stage rubrics.
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Evaluates a synthesized technique page against source moments on:
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1. Structural quality — section naming, count, paragraph depth
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2. Content specificity — concrete details vs vague generalities
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3. Voice preservation — direct quotes, attributed opinions, personality
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4. Readability / flow — synthesis quality, logical ordering, no redundancy
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5. Factual fidelity — no hallucinated specifics, grounded in source moments
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Supports stages 2-5, each with its own scoring dimensions, rubric, format
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markers, fixture key requirements, prompt file name, and output schema.
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Run via: python -m pipeline.quality score --file <path>
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"""
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@ -16,6 +12,7 @@ import logging
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import sys
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import time
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from dataclasses import dataclass, field
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from typing import Any
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import openai
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from pydantic import BaseModel
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@ -26,9 +23,177 @@ from pipeline.quality.voice_dial import VoiceDial
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logger = logging.getLogger(__name__)
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# ── Scoring rubric (hardcoded for iteration speed) ───────────────────────────
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# ── Per-stage configuration registry ─────────────────────────────────────────
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SCORING_RUBRIC = """\
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class StageConfig:
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"""Configuration for scoring a specific pipeline stage."""
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def __init__(
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self,
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stage: int,
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dimensions: list[str],
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rubric: str,
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format_markers: list[str],
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fixture_keys: list[str],
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prompt_file: str,
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schema_class: str,
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) -> None:
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self.stage = stage
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self.dimensions = dimensions
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self.rubric = rubric
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self.format_markers = format_markers
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self.fixture_keys = fixture_keys
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self.prompt_file = prompt_file
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self.schema_class = schema_class
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def get_schema(self) -> type[BaseModel]:
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"""Import and return the Pydantic schema class for this stage."""
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from pipeline import schemas
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return getattr(schemas, self.schema_class)
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# ── Stage rubrics ────────────────────────────────────────────────────────────
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_STAGE_2_RUBRIC = """\
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You are an expert evaluator of transcript segmentation quality for educational content.
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You will be given:
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1. A segmentation result (JSON with segments, each having start_index, end_index, topic_label, summary)
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2. The source transcript segments used as input
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Evaluate the segmentation across these 4 dimensions, scoring each 0.0 to 1.0:
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**coverage_completeness** — All transcript content accounted for
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- 0.9-1.0: Every transcript segment is covered by exactly one topic segment, no gaps or overlaps
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- 0.5-0.7: Minor gaps or overlaps, but most content is covered
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- 0.0-0.3: Large gaps — significant transcript segments are not assigned to any topic
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**topic_specificity** — Topic labels are descriptive and useful
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- 0.9-1.0: Labels are specific and descriptive (e.g., "Sidechain compression on kick-bass" not "Audio processing")
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- 0.5-0.7: Labels are somewhat specific but could be more descriptive
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- 0.0-0.3: Labels are generic or meaningless ("Topic 1", "Discussion", "Audio")
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**boundary_accuracy** — Segment boundaries align with actual topic transitions
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- 0.9-1.0: Boundaries fall at natural topic transitions, segments are coherent units
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- 0.5-0.7: Most boundaries are reasonable but some segments mix distinct topics
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- 0.0-0.3: Boundaries seem arbitrary, segments contain unrelated content
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**summary_quality** — Summaries accurately describe segment content
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- 0.9-1.0: Summaries capture the key points of each segment concisely and accurately
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- 0.5-0.7: Summaries are acceptable but miss some key points or are too vague
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- 0.0-0.3: Summaries are inaccurate, too generic, or missing
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Return ONLY a JSON object with this exact structure:
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{
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"coverage_completeness": <float 0.0-1.0>,
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"topic_specificity": <float 0.0-1.0>,
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"boundary_accuracy": <float 0.0-1.0>,
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"summary_quality": <float 0.0-1.0>,
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"justifications": {
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"coverage_completeness": "<1-2 sentence justification>",
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"topic_specificity": "<1-2 sentence justification>",
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"boundary_accuracy": "<1-2 sentence justification>",
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"summary_quality": "<1-2 sentence justification>"
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}
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}
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"""
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_STAGE_3_RUBRIC = """\
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You are an expert evaluator of key moment extraction quality for educational content.
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You will be given:
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1. An extraction result (JSON with moments, each having title, summary, start_time, end_time, content_type, plugins, raw_transcript)
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2. The source topic segments used as input
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Evaluate the extraction across these 5 dimensions, scoring each 0.0 to 1.0:
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**moment_richness** — Extracted moments capture substantial, distinct insights
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- 0.9-1.0: Each moment represents a meaningful, distinct technique or concept with detailed summary
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- 0.5-0.7: Moments are valid but some are thin or overlap significantly with others
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- 0.0-0.3: Moments are trivial, redundant, or miss the main techniques discussed
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**timestamp_accuracy** — Time ranges are plausible and well-bounded
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- 0.9-1.0: Start/end times form reasonable ranges, no zero-length or absurdly long spans
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- 0.5-0.7: Most timestamps are reasonable but some spans seem too wide or narrow
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- 0.0-0.3: Timestamps appear arbitrary or many are zero/identical
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**content_type_correctness** — Content types match the actual moment content
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- 0.9-1.0: Each moment's content_type (technique/settings/reasoning/workflow) accurately describes it
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- 0.5-0.7: Most are correct but 1-2 are miscategorized
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- 0.0-0.3: Content types seem randomly assigned or all the same
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**summary_actionability** — Summaries provide actionable, specific information
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- 0.9-1.0: Summaries contain concrete details (values, settings, steps) that a practitioner could follow
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- 0.5-0.7: Summaries describe the topic but lack specific actionable details
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- 0.0-0.3: Summaries are vague ("discusses compression") with no actionable information
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**plugin_normalization** — Plugin/tool names are correctly identified and normalized
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- 0.9-1.0: Plugin names match standard names, no duplicates, captures all mentioned tools
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- 0.5-0.7: Most plugins captured but some are misspelled, duplicated, or missed
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- 0.0-0.3: Plugin list is mostly empty, contains non-plugins, or has many errors
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Return ONLY a JSON object with this exact structure:
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{
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"moment_richness": <float 0.0-1.0>,
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"timestamp_accuracy": <float 0.0-1.0>,
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"content_type_correctness": <float 0.0-1.0>,
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"summary_actionability": <float 0.0-1.0>,
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"plugin_normalization": <float 0.0-1.0>,
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"justifications": {
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"moment_richness": "<1-2 sentence justification>",
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"timestamp_accuracy": "<1-2 sentence justification>",
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"content_type_correctness": "<1-2 sentence justification>",
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"summary_actionability": "<1-2 sentence justification>",
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"plugin_normalization": "<1-2 sentence justification>"
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}
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}
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"""
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_STAGE_4_RUBRIC = """\
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You are an expert evaluator of content classification quality for educational content.
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You will be given:
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1. A classification result (JSON with classifications, each having moment_index, topic_category, topic_tags)
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2. The source extracted moments used as input
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Evaluate the classification across these 4 dimensions, scoring each 0.0 to 1.0:
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**category_accuracy** — Topic categories are appropriate and meaningful
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- 0.9-1.0: Categories accurately reflect the primary topic of each moment, using domain-appropriate labels
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- 0.5-0.7: Most categories are reasonable but some are too broad or slightly off
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- 0.0-0.3: Categories are generic ("Music"), incorrect, or all the same
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**tag_completeness** — All relevant tags are captured
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- 0.9-1.0: Tags capture the key concepts, tools, and techniques in each moment comprehensively
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- 0.5-0.7: Main tags are present but secondary concepts or tools are missed
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- 0.0-0.3: Tags are sparse, missing major concepts mentioned in the moments
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**tag_specificity** — Tags are specific enough to be useful for search/filtering
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- 0.9-1.0: Tags are specific ("sidechain compression", "Pro-Q 3") not generic ("audio", "mixing")
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- 0.5-0.7: Mix of specific and generic tags
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- 0.0-0.3: Tags are too generic to meaningfully distinguish moments
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**coverage** — All moments are classified
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- 0.9-1.0: Every moment_index from the input has a corresponding classification entry
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- 0.5-0.7: Most moments classified but 1-2 are missing
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- 0.0-0.3: Many moments are not classified
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Return ONLY a JSON object with this exact structure:
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{
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"category_accuracy": <float 0.0-1.0>,
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"tag_completeness": <float 0.0-1.0>,
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"tag_specificity": <float 0.0-1.0>,
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"coverage": <float 0.0-1.0>,
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"justifications": {
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"category_accuracy": "<1-2 sentence justification>",
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"tag_completeness": "<1-2 sentence justification>",
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"tag_specificity": "<1-2 sentence justification>",
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"coverage": "<1-2 sentence justification>"
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}
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}
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"""
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_STAGE_5_RUBRIC = """\
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You are an expert evaluator of synthesized technique articles for music production education.
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You will be given:
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@ -79,73 +244,142 @@ Return ONLY a JSON object with this exact structure:
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}
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"""
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DIMENSIONS = [
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"structural",
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"content_specificity",
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"voice_preservation",
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"readability",
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"factual_fidelity",
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]
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# Backward-compat alias used by synthesize_and_score and external references
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SCORING_RUBRIC = _STAGE_5_RUBRIC
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# Build the stage configs registry
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STAGE_CONFIGS: dict[int, StageConfig] = {
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2: StageConfig(
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stage=2,
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dimensions=["coverage_completeness", "topic_specificity", "boundary_accuracy", "summary_quality"],
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rubric=_STAGE_2_RUBRIC,
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format_markers=["segments", "start_index", "end_index", "topic_label"],
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fixture_keys=["transcript_segments"],
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prompt_file="stage2_segmentation.txt",
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schema_class="SegmentationResult",
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),
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3: StageConfig(
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stage=3,
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dimensions=["moment_richness", "timestamp_accuracy", "content_type_correctness", "summary_actionability", "plugin_normalization"],
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rubric=_STAGE_3_RUBRIC,
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format_markers=["moments", "content_type", "raw_transcript", "plugins"],
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fixture_keys=["topic_segments"],
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prompt_file="stage3_extraction.txt",
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schema_class="ExtractionResult",
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),
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4: StageConfig(
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stage=4,
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dimensions=["category_accuracy", "tag_completeness", "tag_specificity", "coverage"],
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rubric=_STAGE_4_RUBRIC,
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format_markers=["classifications", "moment_index", "topic_category", "topic_tags"],
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fixture_keys=["extracted_moments"],
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prompt_file="stage4_classification.txt",
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schema_class="ClassificationResult",
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),
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5: StageConfig(
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stage=5,
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dimensions=["structural", "content_specificity", "voice_preservation", "readability", "factual_fidelity"],
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rubric=SCORING_RUBRIC,
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format_markers=["SynthesisResult", '"pages"', "body_sections", "title", "summary"],
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fixture_keys=["key_moments", "creator_name"],
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prompt_file="stage5_synthesis.txt",
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schema_class="SynthesisResult",
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),
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}
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# Backward-compatible alias: stage 5 dimensions list
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DIMENSIONS = STAGE_CONFIGS[5].dimensions
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# ── Result type ──────────────────────────────────────────────────────────────
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@dataclass
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class ScoreResult:
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"""Outcome of scoring a technique page across 5 quality dimensions."""
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"""Outcome of scoring a stage output across quality dimensions.
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structural: float = 0.0
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content_specificity: float = 0.0
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voice_preservation: float = 0.0
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readability: float = 0.0
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factual_fidelity: float = 0.0
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Uses a generic ``scores`` dict keyed by dimension name. Stage 5's
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original named fields (structural, content_specificity, …) are
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preserved as properties for backward compatibility.
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"""
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scores: dict[str, float] = field(default_factory=dict)
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composite: float = 0.0
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justifications: dict[str, str] = field(default_factory=dict)
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elapsed_seconds: float = 0.0
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error: str | None = None
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# ── Backward-compat properties for stage 5 named dimensions ──────
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@property
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def structural(self) -> float:
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return self.scores.get("structural", 0.0)
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@property
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def content_specificity(self) -> float:
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return self.scores.get("content_specificity", 0.0)
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@property
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def voice_preservation(self) -> float:
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return self.scores.get("voice_preservation", 0.0)
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@property
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def readability(self) -> float:
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return self.scores.get("readability", 0.0)
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@property
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def factual_fidelity(self) -> float:
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return self.scores.get("factual_fidelity", 0.0)
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# ── Runner ───────────────────────────────────────────────────────────────────
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class ScoreRunner:
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"""Scores a Stage 5 technique page using LLM-as-judge evaluation."""
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"""Scores pipeline stage outputs using LLM-as-judge evaluation."""
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def __init__(self, client: LLMClient) -> None:
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self.client = client
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def score_page(
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# ── Generic stage scorer ─────────────────────────────────────────────
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def score_stage_output(
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self,
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page_json: dict,
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moments: list[dict],
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stage: int,
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output_json: dict | list,
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input_json: dict | list,
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) -> ScoreResult:
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"""Evaluate a technique page against source moments.
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"""Score an arbitrary stage's output against its input.
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Parameters
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----------
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page_json:
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Synthesized page dict (title, summary, body_sections).
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moments:
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Source key moments with transcript_excerpt, summary, etc.
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stage:
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Pipeline stage number (2-5).
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output_json:
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The stage output to evaluate (parsed JSON).
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input_json:
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The stage input / source material.
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Returns
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-------
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ScoreResult with per-dimension scores and justifications.
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ScoreResult with per-dimension scores for the requested stage.
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"""
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# Build the user prompt with the page and source moments
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if stage not in STAGE_CONFIGS:
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return ScoreResult(error=f"No config for stage {stage}. Valid: {sorted(STAGE_CONFIGS)}")
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cfg = STAGE_CONFIGS[stage]
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user_prompt = (
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"## Synthesized Technique Page\n\n"
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f"```json\n{json.dumps(page_json, indent=2)}\n```\n\n"
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"## Source Key Moments\n\n"
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f"```json\n{json.dumps(moments, indent=2)}\n```\n\n"
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"Score this page across all 5 dimensions."
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"## Stage Output\n\n"
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f"```json\n{json.dumps(output_json, indent=2)}\n```\n\n"
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"## Stage Input\n\n"
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f"```json\n{json.dumps(input_json, indent=2)}\n```\n\n"
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f"Score this stage {stage} output across all {len(cfg.dimensions)} dimensions."
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)
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t0 = time.monotonic()
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try:
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resp = self.client.complete(
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system_prompt=SCORING_RUBRIC,
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system_prompt=cfg.rubric,
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user_prompt=user_prompt,
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response_model=BaseModel, # triggers JSON mode
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response_model=BaseModel,
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modality="chat",
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)
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elapsed = round(time.monotonic() - t0, 2)
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@ -155,13 +389,9 @@ class ScoreRunner:
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fallback = self.client.settings.llm_fallback_url
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return ScoreResult(
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elapsed_seconds=elapsed,
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error=(
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f"Cannot reach LLM endpoint at {url} (fallback {fallback}). "
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f"Error: {exc}"
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),
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error=f"Cannot reach LLM endpoint at {url} (fallback {fallback}). Error: {exc}",
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)
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# Parse the LLM judge response
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raw_text = str(resp).strip()
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try:
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parsed = json.loads(raw_text)
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@ -172,10 +402,27 @@ class ScoreRunner:
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error=f"Malformed judge response (not valid JSON). Raw excerpt: {raw_text[:200]}",
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)
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return self._parse_scores(parsed, elapsed, cfg.dimensions)
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# ── Stage 5 convenience (backward compat) ────────────────────────────
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def score_page(
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self,
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page_json: dict,
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moments: list[dict],
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) -> ScoreResult:
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"""Evaluate a stage 5 technique page against source moments."""
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return self.score_stage_output(
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stage=5,
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output_json=page_json,
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input_json=moments,
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)
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return self._parse_scores(parsed, elapsed)
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def _parse_scores(self, parsed: dict, elapsed: float) -> ScoreResult:
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def _parse_scores(self, parsed: dict, elapsed: float, dimensions: list[str] | None = None) -> ScoreResult:
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"""Extract and validate scores from parsed JSON response."""
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dims = dimensions or DIMENSIONS
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scores: dict[str, float] = {}
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justifications: dict[str, str] = {}
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@ -183,7 +430,7 @@ class ScoreRunner:
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if not isinstance(raw_justifications, dict):
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raw_justifications = {}
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for dim in DIMENSIONS:
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for dim in dims:
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raw = parsed.get(dim)
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if raw is None:
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logger.warning("Missing dimension '%s' in judge response", dim)
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@ -202,14 +449,10 @@ class ScoreRunner:
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justifications[dim] = str(raw_justifications.get(dim, ""))
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|
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composite = sum(scores.values()) / len(DIMENSIONS)
|
||||
composite = sum(scores.values()) / len(dims) if dims else 0.0
|
||||
|
||||
return ScoreResult(
|
||||
structural=scores["structural"],
|
||||
content_specificity=scores["content_specificity"],
|
||||
voice_preservation=scores["voice_preservation"],
|
||||
readability=scores["readability"],
|
||||
factual_fidelity=scores["factual_fidelity"],
|
||||
scores=scores,
|
||||
composite=round(composite, 3),
|
||||
justifications=justifications,
|
||||
elapsed_seconds=elapsed,
|
||||
|
|
@ -318,10 +561,13 @@ class ScoreRunner:
|
|||
result.elapsed_seconds = round(result.elapsed_seconds + elapsed_synth, 2)
|
||||
return result
|
||||
|
||||
def print_report(self, result: ScoreResult) -> None:
|
||||
def print_report(self, result: ScoreResult, stage: int = 5) -> None:
|
||||
"""Print a formatted scoring report to stdout."""
|
||||
dims = STAGE_CONFIGS[stage].dimensions if stage in STAGE_CONFIGS else list(result.scores.keys())
|
||||
stage_label = f"STAGE {stage}" if stage in STAGE_CONFIGS else "QUALITY"
|
||||
|
||||
print("\n" + "=" * 60)
|
||||
print(" STAGE 5 QUALITY SCORE REPORT")
|
||||
print(f" {stage_label} QUALITY SCORE REPORT")
|
||||
print("=" * 60)
|
||||
|
||||
if result.error:
|
||||
|
|
@ -329,8 +575,8 @@ class ScoreRunner:
|
|||
print("=" * 60 + "\n")
|
||||
return
|
||||
|
||||
for dim in DIMENSIONS:
|
||||
score = getattr(result, dim)
|
||||
for dim in dims:
|
||||
score = result.scores.get(dim, 0.0)
|
||||
bar = self._score_bar(score)
|
||||
justification = result.justifications.get(dim, "")
|
||||
print(f"\n {dim.replace('_', ' ').title()}")
|
||||
|
|
|
|||
|
|
@ -4,13 +4,17 @@ Uses a meta-prompt to instruct the LLM to act as a prompt engineer,
|
|||
analyzing per-dimension scores and producing targeted prompt mutations
|
||||
that improve the weakest scoring dimensions while preserving the JSON
|
||||
output format required by downstream parsing.
|
||||
|
||||
Supports any pipeline stage (2-5) — callers pass the stage's dimensions
|
||||
and format markers so the meta-prompt and validation adapt automatically.
|
||||
"""
|
||||
from __future__ import annotations
|
||||
|
||||
import logging
|
||||
from typing import Sequence
|
||||
|
||||
from pipeline.llm_client import LLMClient
|
||||
from pipeline.quality.scorer import DIMENSIONS, ScoreResult
|
||||
from pipeline.quality.scorer import DIMENSIONS, STAGE_CONFIGS, ScoreResult
|
||||
|
||||
logger = logging.getLogger(__name__)
|
||||
|
||||
|
|
@ -18,29 +22,24 @@ logger = logging.getLogger(__name__)
|
|||
# ── Meta-prompt for variant generation ────────────────────────────────────────
|
||||
|
||||
VARIANT_META_PROMPT = """\
|
||||
You are an expert prompt engineer specializing in LLM-powered content synthesis.
|
||||
You are an expert prompt engineer specializing in LLM-powered content processing pipelines.
|
||||
|
||||
Your task: given a synthesis prompt and its quality evaluation scores, produce an
|
||||
Your task: given a pipeline stage prompt and its quality evaluation scores, produce an
|
||||
improved variant of the prompt that targets the weakest-scoring dimensions while
|
||||
maintaining or improving the others.
|
||||
|
||||
## Scoring Dimensions (each 0.0–1.0)
|
||||
|
||||
- **structural** — Section naming, count (3-6), paragraph depth (2-5 per section)
|
||||
- **content_specificity** — Concrete details: frequencies, time values, ratios, plugin names, dB values
|
||||
- **voice_preservation** — Direct quotes preserved, opinions attributed to creator by name, personality retained
|
||||
- **readability** — Cohesive article flow, related info merged, no redundancy or contradiction
|
||||
- **factual_fidelity** — Every claim traceable to source material, no hallucinated specifics
|
||||
{dimension_descriptions}
|
||||
|
||||
## Rules
|
||||
|
||||
1. Focus your changes on the weakest 1-2 dimensions. Don't dilute the prompt by trying to fix everything.
|
||||
2. Add specific, actionable instructions — not vague encouragements.
|
||||
3. **CRITICAL: You MUST preserve the JSON output format section of the prompt EXACTLY as-is.**
|
||||
The prompt contains instructions about outputting a JSON object with a specific schema
|
||||
(SynthesisResult with "pages" containing title, summary, body_sections, etc.).
|
||||
The prompt contains instructions about outputting a JSON object with a specific schema.
|
||||
Do NOT modify, remove, or rephrase any part of the JSON format instructions.
|
||||
Your changes should target the prose synthesis guidelines only.
|
||||
Your changes should target the processing/analysis guidelines only.
|
||||
4. Keep the overall prompt length within 2x of the original. Don't bloat it.
|
||||
5. Make substantive changes — rewording a sentence or adding one adjective is not enough.
|
||||
|
||||
|
|
@ -50,9 +49,38 @@ Return ONLY the full modified prompt text. No explanation, no markdown fences, n
|
|||
Just the complete prompt that could be used directly as a system prompt.
|
||||
"""
|
||||
|
||||
# Dimension descriptions per stage, used to fill the meta-prompt template.
|
||||
_DIMENSION_DESCRIPTIONS: dict[int, str] = {
|
||||
2: (
|
||||
"- **coverage_completeness** — All transcript content accounted for, no gaps or overlaps\n"
|
||||
"- **topic_specificity** — Topic labels are descriptive and useful, not generic\n"
|
||||
"- **boundary_accuracy** — Segment boundaries align with actual topic transitions\n"
|
||||
"- **summary_quality** — Summaries accurately describe segment content"
|
||||
),
|
||||
3: (
|
||||
"- **moment_richness** — Extracted moments capture substantial, distinct insights\n"
|
||||
"- **timestamp_accuracy** — Time ranges are plausible and well-bounded\n"
|
||||
"- **content_type_correctness** — Content types match the actual moment content\n"
|
||||
"- **summary_actionability** — Summaries provide actionable, specific information\n"
|
||||
"- **plugin_normalization** — Plugin/tool names are correctly identified and normalized"
|
||||
),
|
||||
4: (
|
||||
"- **category_accuracy** — Topic categories are appropriate and meaningful\n"
|
||||
"- **tag_completeness** — All relevant tags are captured\n"
|
||||
"- **tag_specificity** — Tags are specific enough to be useful for search/filtering\n"
|
||||
"- **coverage** — All moments are classified"
|
||||
),
|
||||
5: (
|
||||
"- **structural** — Section naming, count (3-6), paragraph depth (2-5 per section)\n"
|
||||
"- **content_specificity** — Concrete details: frequencies, time values, ratios, plugin names, dB values\n"
|
||||
"- **voice_preservation** — Direct quotes preserved, opinions attributed to creator by name, personality retained\n"
|
||||
"- **readability** — Cohesive article flow, related info merged, no redundancy or contradiction\n"
|
||||
"- **factual_fidelity** — Every claim traceable to source material, no hallucinated specifics"
|
||||
),
|
||||
}
|
||||
|
||||
# Format markers that must survive variant generation — if any of these
|
||||
# are present in the base prompt, the variant must also contain them.
|
||||
|
||||
# Legacy default format markers for stage 5
|
||||
_FORMAT_MARKERS = ["SynthesisResult", '"pages"', "body_sections", "title", "summary"]
|
||||
|
||||
|
||||
|
|
@ -71,6 +99,9 @@ class PromptVariantGenerator:
|
|||
base_prompt: str,
|
||||
scores: ScoreResult,
|
||||
n: int = 2,
|
||||
*,
|
||||
format_markers: Sequence[str] | None = None,
|
||||
stage: int = 5,
|
||||
) -> list[str]:
|
||||
"""Generate up to *n* valid prompt variants.
|
||||
|
||||
|
|
@ -83,27 +114,48 @@ class PromptVariantGenerator:
|
|||
Parameters
|
||||
----------
|
||||
base_prompt:
|
||||
The current best synthesis prompt text.
|
||||
The current best prompt text for the target stage.
|
||||
scores:
|
||||
ScoreResult from the most recent evaluation of *base_prompt*.
|
||||
n:
|
||||
Number of variants to attempt generating.
|
||||
format_markers:
|
||||
Override format markers for validation. When *None*, uses the
|
||||
markers from ``STAGE_CONFIGS[stage]`` (falling back to stage 5
|
||||
defaults for backward compat).
|
||||
stage:
|
||||
Pipeline stage number (2-5), used to select dimension
|
||||
descriptions for the meta-prompt and default format markers.
|
||||
|
||||
Returns
|
||||
-------
|
||||
list[str]
|
||||
Valid variant prompt strings (may be fewer than *n*).
|
||||
"""
|
||||
user_prompt = self._build_user_prompt(base_prompt, scores)
|
||||
# Resolve format markers and dimensions for the target stage
|
||||
if format_markers is not None:
|
||||
markers = list(format_markers)
|
||||
elif stage in STAGE_CONFIGS:
|
||||
markers = STAGE_CONFIGS[stage].format_markers
|
||||
else:
|
||||
markers = _FORMAT_MARKERS
|
||||
|
||||
dimensions = STAGE_CONFIGS[stage].dimensions if stage in STAGE_CONFIGS else DIMENSIONS
|
||||
|
||||
# Build the system prompt with stage-appropriate dimension descriptions
|
||||
dim_desc = _DIMENSION_DESCRIPTIONS.get(stage, _DIMENSION_DESCRIPTIONS[5])
|
||||
system_prompt = VARIANT_META_PROMPT.format(dimension_descriptions=dim_desc)
|
||||
|
||||
user_prompt = self._build_user_prompt(base_prompt, scores, dimensions)
|
||||
# Identify which format markers are actually present in the base
|
||||
required_markers = [m for m in _FORMAT_MARKERS if m in base_prompt]
|
||||
required_markers = [m for m in markers if m in base_prompt]
|
||||
|
||||
variants: list[str] = []
|
||||
for i in range(n):
|
||||
logger.info("Generating variant %d/%d...", i + 1, n)
|
||||
logger.info("Generating variant %d/%d (stage %d)...", i + 1, n, stage)
|
||||
try:
|
||||
raw = self.client.complete(
|
||||
system_prompt=VARIANT_META_PROMPT,
|
||||
system_prompt=system_prompt,
|
||||
user_prompt=user_prompt,
|
||||
response_model=None, # free-form text, not JSON
|
||||
modality="chat",
|
||||
|
|
@ -127,11 +179,12 @@ class PromptVariantGenerator:
|
|||
|
||||
# ── Internal helpers ──────────────────────────────────────────────────
|
||||
|
||||
def _build_user_prompt(self, base_prompt: str, scores: ScoreResult) -> str:
|
||||
def _build_user_prompt(self, base_prompt: str, scores: ScoreResult, dimensions: list[str] | None = None) -> str:
|
||||
"""Build the user message describing the current prompt and its scores."""
|
||||
dims = dimensions or DIMENSIONS
|
||||
# Build per-dimension score lines, sorted worst-first
|
||||
dim_lines: list[str] = []
|
||||
dim_scores = [(d, getattr(scores, d, 0.0)) for d in DIMENSIONS]
|
||||
dim_scores = [(d, scores.scores.get(d, 0.0)) for d in dims]
|
||||
dim_scores.sort(key=lambda x: x[1])
|
||||
|
||||
for dim, val in dim_scores:
|
||||
|
|
|
|||
Loading…
Add table
Reference in a new issue