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import sqlite3
import uuid
from human_eval.config import (
STATUS_ASSIGNED, STATUS_COMPLETED, STATUS_PARTIAL, STATUS_SKIPPED,
COMPARISON_MODELS, MODELS_PER_GROUP, extract_model,
)
from human_eval.db import pending_assignment_sql
def _delete_assignments_with_annotations(
conn: sqlite3.Connection,
where_sql: str,
params: tuple,
) -> list[int]:
"""Delete assignments plus any saved draft rows that reference them.
Also cleans up comparison_groups left with no remaining assignments.
"""
rows = conn.execute(
f"SELECT id, group_id FROM assignments WHERE {where_sql}",
params,
).fetchall()
assignment_ids = [row["id"] for row in rows]
if not assignment_ids:
return []
affected_group_ids = list({
row["group_id"] for row in rows if row["group_id"] is not None
})
placeholders = ",".join("?" * len(assignment_ids))
conn.execute(
f"""
DELETE FROM annotation_items
WHERE annotation_id IN (
SELECT id FROM annotations WHERE assignment_id IN ({placeholders})
)
""",
assignment_ids,
)
conn.execute(
f"DELETE FROM annotations WHERE assignment_id IN ({placeholders})",
assignment_ids,
)
conn.execute(
f"DELETE FROM assignments WHERE id IN ({placeholders})",
assignment_ids,
)
# Clean up comparison_groups that lost all their assignments
if affected_group_ids:
gph = ",".join("?" * len(affected_group_ids))
conn.execute(
f"""
DELETE FROM comparison_groups
WHERE id IN ({gph})
AND NOT EXISTS (
SELECT 1 FROM assignments WHERE group_id = comparison_groups.id
)
""",
affected_group_ids,
)
return assignment_ids
def _select_group_videos(
model_videos: dict[str, dict],
models: list[str],
video_coverage: dict[int, int],
k: int,
n_annotators: int,
) -> tuple[list[dict], tuple[int, ...]] | None:
"""Pick the least-covered videos for a prompt, randomizing only on ties."""
ranked = []
for model in models:
row = model_videos.get(model)
if row is None:
continue
ranked.append((video_coverage.get(row["id"], 0), row))
if len(ranked) < 2:
return None
if all(coverage >= n_annotators for coverage, _ in ranked):
return None
random.shuffle(ranked)
ranked.sort(key=lambda item: item[0])
picked = ranked[: min(k, len(ranked))]
return [row for _, row in picked], tuple(coverage for coverage, _ in picked)
def _build_prompt_video_map(conn, models: list[str]) -> dict:
"""Build {prompt_text: {model: video_row}} mapping for comparison models.
Only includes prompts that have at least 2 models available.
"""
rows = conn.execute(
"SELECT id, filename, dataset, prompt, physical_laws FROM videos"
).fetchall()
model_set = set(models)
# prompt → {model → video_row}
prompt_map: dict[str, dict[str, dict]] = {}
for r in rows:
model = extract_model(r["dataset"])
if model not in model_set:
continue
prompt = r["prompt"]
if prompt not in prompt_map:
prompt_map[prompt] = {}
existing = prompt_map[prompt].get(model)
if existing is None:
prompt_map[prompt][model] = dict(r)
elif "perspective-center" in r["filename"]:
prompt_map[prompt][model] = dict(r)
# Filter: keep only prompts with >= 2 models
return {p: m for p, m in prompt_map.items() if len(m) >= 2}
def assign_comparison_batch(
conn: sqlite3.Connection,
annotator_id: int,
n_annotators: int,
batch_size: int,
ttl_hours: int,
models: list[str] | None = None,
models_per_group: int | None = None,
) -> list[str]:
"""Assign comparison groups to an annotator.
Each group = 1 prompt × K randomly-sampled models.
Returns list of new group_ids.
"""
models = models or COMPARISON_MODELS
k = models_per_group or MODELS_PER_GROUP
prompt_map = _build_prompt_video_map(conn, models)
if not prompt_map:
return []
# Find prompts with active (completed/skipped or pending) groups for this user
pending_sql = pending_assignment_sql("a")
active_groups = conn.execute(
f"""
SELECT DISTINCT cg.prompt
FROM comparison_groups cg
JOIN assignments a ON a.group_id = cg.id
WHERE a.annotator_id = ?
AND (a.status IN ('{STATUS_COMPLETED}', '{STATUS_PARTIAL}', '{STATUS_SKIPPED}')
OR {pending_sql})
""",
(annotator_id,),
).fetchall()
active_prompts = {r["prompt"] for r in active_groups}
# Count how many non-excluded annotators have completed each video.
# excluded_annotators is populated by filter_db.py; if the table is
# empty or missing, all annotators count (original behavior).
has_exclusion_table = conn.execute(
"SELECT 1 FROM sqlite_master WHERE type='table' AND name='excluded_annotators'"
).fetchone() is not None
if has_exclusion_table:
coverage = conn.execute(
f"""
SELECT a.video_id, COUNT(DISTINCT a.annotator_id) AS cnt
FROM assignments a
WHERE a.status IN ('{STATUS_COMPLETED}', '{STATUS_PARTIAL}')
AND a.annotator_id NOT IN (SELECT annotator_id FROM excluded_annotators)
GROUP BY a.video_id
""",
).fetchall()
else:
coverage = conn.execute(
f"""
SELECT a.video_id, COUNT(DISTINCT a.annotator_id) AS cnt
FROM assignments a
WHERE a.status IN ('{STATUS_COMPLETED}', '{STATUS_PARTIAL}')
GROUP BY a.video_id
""",
).fetchall()
video_coverage = {r["video_id"]: r["cnt"] for r in coverage}
# Filter to assignable prompts: not already active for this user and still
# containing at least one under-covered video.
candidates = []
for prompt, model_videos in prompt_map.items():
if prompt in active_prompts:
continue
selected = _select_group_videos(
model_videos,
models,
video_coverage,
k,
n_annotators,
)
if selected is None:
continue
video_rows, coverage_signature = selected
candidates.append((coverage_signature, random.random(), prompt, video_rows))
# Sort: prompts with the lowest-covered selected videos first.
candidates.sort(key=lambda x: (x[0], x[1]))
conn.execute("BEGIN IMMEDIATE")
try:
# Clean up non-completed, non-skipped group assignments (expired/abandoned)
# and their orphaned comparison_groups
deleted_ids = _delete_assignments_with_annotations(
conn,
(
"annotator_id = ? AND group_id IS NOT NULL "
"AND status NOT IN (?, ?, ?) "
"AND expires_at <= datetime('now')"
),
(annotator_id, STATUS_COMPLETED, STATUS_PARTIAL, STATUS_SKIPPED),
)
new_group_ids = []
for _, _, prompt, video_rows in candidates[:batch_size]:
# Get physical_laws from the first video (same prompt = same laws)
physical_laws = video_rows[0]["physical_laws"]
# Create comparison group
group_id = str(uuid.uuid4())
conn.execute(
"INSERT INTO comparison_groups (id, prompt, physical_laws) VALUES (?, ?, ?)",
(group_id, prompt, physical_laws),
)
# Create assignments for each video in the group
for vr in video_rows:
conn.execute(
"INSERT OR IGNORE INTO assignments (video_id, annotator_id, status, expires_at, group_id) "
f"VALUES (?, ?, '{STATUS_ASSIGNED}', datetime('now', '+' || ? || ' hours'), ?)",
(vr["id"], annotator_id, ttl_hours, group_id),
)
new_group_ids.append(group_id)
conn.commit()
return new_group_ids
except Exception:
conn.rollback()
raise
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