Files
markitect-main/tests/unit/infospace/test_evaluate.py
tegwick 3461d2f354 feat(infospace): add per-entity evaluation pipeline and CLI command (S2.3)
Evaluation pipeline builds prompts from entity metadata, delegates
to BatchEvaluator, parses structured LLM responses into ScoreEntry
objects, and writes evaluation files. CLI: 'markitect infospace evaluate'
with --provider, --entity, --chapter filters.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-02-19 01:48:34 +01:00

225 lines
7.3 KiB
Python

"""Tests for markitect.infospace.evaluate."""
from datetime import datetime
from pathlib import Path
import pytest
from markitect.infospace.config import InfospaceConfig, TopicConfig
from markitect.infospace.evaluate import (
build_evaluation_prompt,
content_digest,
parse_evaluation_response,
run_entity_evaluation,
)
from markitect.infospace.evaluation import ScoreEntry
from markitect.infospace.models import EntityMeta
from markitect.prompts.execution.llm_adapter import MockLLMAdapter
from markitect.prompts.execution.models import RunConfig
# ── Helpers ──────────────────────────────────────────────────────────
def _entity(**overrides) -> EntityMeta:
defaults = dict(
slug="division-of-labour",
title="Division Of Labour",
h1_raw="Division Of Labour",
definition="Splitting work into specialised tasks.",
source_chapter="Book I Chapter 1",
context="Smith introduces the concept early.",
domain="Production",
source_path="entities/division-of-labour.md",
)
defaults.update(overrides)
return EntityMeta(**defaults)
def _config() -> InfospaceConfig:
return InfospaceConfig(topic=TopicConfig(name="The Wealth of Nations"))
_MOCK_RESPONSE = """\
DIMENSION: definition_precision
SCORE: 4.5
RATIONALE: Clear and specific definition of the concept.
DIMENSION: source_grounding
SCORE: 4.0
RATIONALE: Well grounded in Smith's text.
DIMENSION: domain_relevance
SCORE: 5.0
RATIONALE: Directly relevant to production economics.
"""
# ── build_evaluation_prompt ──────────────────────────────────────────
class TestBuildPrompt:
def test_contains_entity_fields(self):
entity = _entity()
prompt = build_evaluation_prompt(entity, "Test Topic")
assert "division-of-labour" in prompt
assert "Division Of Labour" in prompt
assert "Production" in prompt
assert "Splitting work" in prompt
def test_contains_topic(self):
prompt = build_evaluation_prompt(_entity(), "WoN")
assert "WoN" in prompt
def test_contains_dimensions(self):
prompt = build_evaluation_prompt(_entity(), "T")
assert "definition_precision" in prompt
assert "source_grounding" in prompt
def test_custom_dimensions(self):
prompt = build_evaluation_prompt(
_entity(), "T", dimensions=["novelty", "coherence"]
)
assert "novelty" in prompt
assert "coherence" in prompt
assert "definition_precision" not in prompt
def test_handles_missing_fields(self):
entity = _entity(definition="", context="", domain="")
prompt = build_evaluation_prompt(entity, "T")
assert "(no definition)" in prompt
assert "(no context)" in prompt
assert "(unspecified)" in prompt
# ── content_digest ───────────────────────────────────────────────────
class TestContentDigest:
def test_deterministic(self):
e = _entity()
assert content_digest(e) == content_digest(e)
def test_changes_with_content(self):
e1 = _entity(definition="A")
e2 = _entity(definition="B")
assert content_digest(e1) != content_digest(e2)
# ── parse_evaluation_response ────────────────────────────────────────
class TestParseResponse:
def test_parses_three_dimensions(self):
scores = parse_evaluation_response(_MOCK_RESPONSE)
assert len(scores) == 3
def test_correct_names(self):
scores = parse_evaluation_response(_MOCK_RESPONSE)
names = [s.name for s in scores]
assert "definition_precision" in names
assert "source_grounding" in names
assert "domain_relevance" in names
def test_correct_scores(self):
scores = parse_evaluation_response(_MOCK_RESPONSE)
by_name = {s.name: s for s in scores}
assert by_name["definition_precision"].value == 4.5
assert by_name["source_grounding"].value == 4.0
assert by_name["domain_relevance"].value == 5.0
def test_correct_rationales(self):
scores = parse_evaluation_response(_MOCK_RESPONSE)
by_name = {s.name: s for s in scores}
assert "Clear" in by_name["definition_precision"].rationale
def test_empty_response(self):
scores = parse_evaluation_response("")
assert scores == []
def test_malformed_score_skipped(self):
text = "DIMENSION: x\nSCORE: not-a-number\nRATIONALE: oops"
scores = parse_evaluation_response(text)
assert len(scores) == 0
# ── run_entity_evaluation ────────────────────────────────────────────
class TestRunEntityEvaluation:
def test_evaluates_entities(self, tmp_path):
adapter = MockLLMAdapter(_MOCK_RESPONSE)
cfg = _config()
entities = [_entity(), _entity(slug="pin-factory", title="Pin Factory")]
summary = run_entity_evaluation(
config=cfg,
entities=entities,
adapter=adapter,
output_dir=tmp_path / "evals",
)
assert summary.total == 2
assert summary.succeeded == 2
assert adapter.call_count == 2
def test_writes_evaluation_files(self, tmp_path):
adapter = MockLLMAdapter(_MOCK_RESPONSE)
cfg = _config()
entities = [_entity()]
run_entity_evaluation(
config=cfg,
entities=entities,
adapter=adapter,
output_dir=tmp_path / "evals",
)
eval_file = tmp_path / "evals" / "division-of-labour.md"
assert eval_file.exists()
text = eval_file.read_text()
assert "definition_precision" in text
def test_incremental_skip(self, tmp_path):
adapter = MockLLMAdapter(_MOCK_RESPONSE)
cfg = _config()
entity = _entity()
digest = content_digest(entity)
summary = run_entity_evaluation(
config=cfg,
entities=[entity],
adapter=adapter,
output_dir=tmp_path,
previous_digests={entity.slug: digest},
)
assert summary.skipped == 1
assert adapter.call_count == 0
def test_progress_callback_called(self, tmp_path):
adapter = MockLLMAdapter(_MOCK_RESPONSE)
cfg = _config()
calls = []
run_entity_evaluation(
config=cfg,
entities=[_entity()],
adapter=adapter,
output_dir=tmp_path,
progress_callback=lambda d, t, r: calls.append((d, t, r.key)),
)
assert len(calls) == 1
assert calls[0] == (1, 1, "division-of-labour")
def test_passes_run_config(self, tmp_path):
adapter = MockLLMAdapter(_MOCK_RESPONSE)
cfg = _config()
rc = RunConfig(temperature=0.1, max_tokens=500)
run_entity_evaluation(
config=cfg,
entities=[_entity()],
adapter=adapter,
run_config=rc,
output_dir=tmp_path,
)
assert adapter.last_config.temperature == 0.1