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import json
from collections import defaultdict
from collections.abc import Mapping, Sequence
from dataclasses import asdict
from datetime import UTC, datetime
from pathlib import Path
from typing import Any
from slop_farmer.config import PrSearchRefreshOptions
from slop_farmer.data.parquet_io import read_json, read_parquet_rows
from slop_farmer.data.snapshot_source import resolve_snapshot_source_dir
from slop_farmer.reports.pr_heuristics import (
compile_cluster_suppression_rules,
suppressed_pull_request_reasons,
)
from slop_farmer.reports.pr_scope import (
PrScopeCluster,
PrScopeClusterOptions,
_build_scope_profile,
_feature_idf,
_include_pull_request,
_normalize_vector,
_pairwise_comparisons,
build_pr_scope_clusters,
)
FEATURE_VERSION = "pr_scope_v1"
CANDIDATE_FORMULA_VERSION = "scope_cluster_candidate_v1"
DEFAULT_CANDIDATE_LIMIT = 5
def resolve_pr_search_snapshot_dir(options: PrSearchRefreshOptions) -> Path:
return resolve_snapshot_source_dir(
snapshot_dir=options.snapshot_dir,
local_snapshots_root=options.output_dir.resolve() / "snapshots",
hf_repo_id=options.hf_repo_id,
hf_revision=options.hf_revision,
hf_materialize_dir=options.hf_materialize_dir,
hf_output_dir=options.output_dir,
)
def load_pr_search_snapshot(snapshot_dir: Path) -> dict[str, Any]:
manifest_path = snapshot_dir / "manifest.json"
manifest = read_json(manifest_path) if manifest_path.exists() else {}
pull_requests = read_parquet_rows(snapshot_dir / "pull_requests.parquet")
pr_files = read_parquet_rows(snapshot_dir / "pr_files.parquet")
contributors = read_parquet_rows(snapshot_dir / "new_contributors.parquet")
repo = manifest.get("repo") or (pull_requests[0].get("repo") if pull_requests else None) or ""
snapshot_id = manifest.get("snapshot_id") or snapshot_dir.name
return {
"repo": repo,
"snapshot_id": snapshot_id,
"manifest": manifest,
"pull_requests": pull_requests,
"pr_files": pr_files,
"contributors": contributors,
}
def build_pr_scope_search_artifacts(
pull_requests: Sequence[Mapping[str, Any]],
pr_files: Sequence[Mapping[str, Any]],
*,
options: PrScopeClusterOptions | None = None,
suppression_rules: Sequence[Mapping[str, Any]] = (),
limit_prs: int | None = None,
) -> dict[str, Any]:
settings = options or PrScopeClusterOptions()
suppressed_prs = suppressed_pull_request_reasons(
pull_requests,
pr_files,
compile_cluster_suppression_rules(suppression_rules),
)
active_prs = [
row
for row in pull_requests
if _include_pull_request(row, settings) and int(row["number"]) not in suppressed_prs
]
active_prs.sort(key=lambda row: int(row["number"]))
if limit_prs is not None:
if limit_prs < 1:
raise ValueError("--limit-prs must be at least 1")
active_prs = active_prs[:limit_prs]
active_numbers = {int(row["number"]) for row in active_prs if row.get("number") is not None}
filtered_pr_files = [
row
for row in pr_files
if row.get("pull_request_number") is not None
and int(row["pull_request_number"]) in active_numbers
]
files_by_pr: defaultdict[int, list[Mapping[str, Any]]] = defaultdict(list)
for row in filtered_pr_files:
files_by_pr[int(row["pull_request_number"])].append(row)
profiles = [
_build_scope_profile(row, files_by_pr.get(int(row["number"]), []), settings)
for row in active_prs
]
feature_idf = _feature_idf(profiles, settings) if profiles else {}
for profile in profiles:
profile.vector = _normalize_vector(
{
feature: weight * feature_idf[feature]
for feature, weight in profile.raw_vector.items()
if feature in feature_idf
}
)
comparisons = _pairwise_comparisons(profiles, settings) if len(profiles) > 1 else []
comparison_rows = {_pair_key(entry.left, entry.right): entry for entry in comparisons}
neighbor_rankings = _neighbor_rankings(comparisons, settings)
clusters = build_pr_scope_clusters(
active_prs,
filtered_pr_files,
options=settings,
suppression_rules=suppression_rules,
)
documents = [_document_row(row) for row in active_prs]
features = [_feature_row(profile) for profile in profiles]
neighbors = _neighbor_rows(neighbor_rankings)
cluster_rows = [_cluster_row(cluster) for cluster in clusters]
cluster_members = _cluster_member_rows(clusters)
cluster_candidates = _cluster_candidate_rows(
profiles=profiles,
comparison_rows=comparison_rows,
clusters=clusters,
)
settings_json = {
**asdict(settings),
"feature_version": FEATURE_VERSION,
"candidate_formula_version": CANDIDATE_FORMULA_VERSION,
}
return {
"documents": documents,
"features": features,
"run_artifact": {
"feature_version": FEATURE_VERSION,
"idf_json": feature_idf,
},
"neighbors": neighbors,
"clusters": cluster_rows,
"cluster_members": cluster_members,
"cluster_candidates": cluster_candidates,
"settings_json": settings_json,
}
def build_scope_feature_idf_for_indexed_documents(
indexed_documents: Sequence[Mapping[str, Any]],
pr_files: Sequence[Mapping[str, Any]],
*,
options: PrScopeClusterOptions | None = None,
) -> dict[str, float]:
settings = options or PrScopeClusterOptions()
indexed_numbers = {
int(row["pr_number"]) for row in indexed_documents if row.get("pr_number") is not None
}
files_by_pr: defaultdict[int, list[Mapping[str, Any]]] = defaultdict(list)
for row in pr_files:
pr_number = row.get("pull_request_number")
if pr_number is None:
continue
number = int(pr_number)
if number in indexed_numbers:
files_by_pr[number].append(row)
profiles = [
_build_scope_profile(
_document_to_profile_row(row),
files_by_pr.get(int(row["pr_number"]), []),
settings,
)
for row in indexed_documents
if row.get("pr_number") is not None
]
return _feature_idf(profiles, settings)
def build_scope_feature_for_pull_request(
pr_row: Mapping[str, Any],
pr_files: Sequence[Mapping[str, Any]],
*,
feature_idf: Mapping[str, float],
options: PrScopeClusterOptions | None = None,
) -> dict[str, Any]:
settings = options or PrScopeClusterOptions()
profile = _build_scope_profile(pr_row, pr_files, settings)
profile.vector = _normalize_vector(
{
feature: weight * feature_idf[feature]
for feature, weight in profile.raw_vector.items()
if feature in feature_idf
}
)
return _feature_row(profile)
def rank_scope_feature_matches(
query_feature: Mapping[str, Any],
indexed_features: Sequence[Mapping[str, Any]],
*,
options: PrScopeClusterOptions | None = None,
limit: int = 10,
) -> list[dict[str, Any]]:
settings = options or PrScopeClusterOptions()
rows: list[dict[str, Any]] = []
query_pr_number = int(query_feature["pr_number"])
for feature in indexed_features:
if int(feature["pr_number"]) == query_pr_number:
continue
pair = scope_feature_pair_explanation(query_feature, feature, options=settings)
if pair["similarity"] < settings.min_similarity:
continue
rows.append(pair)
rows.sort(
key=lambda row: (
-float(row["similarity"]),
-float(row["content_similarity"]),
int(row["right_pr_number"]),
)
)
return rows[:limit]
def rank_scope_cluster_candidates(
*,
similarity_rows: Sequence[Mapping[str, Any]],
clusters: Sequence[Mapping[str, Any]],
cluster_members: Mapping[str, Sequence[int]],
assigned_cluster_ids: set[str] | None = None,
limit: int = DEFAULT_CANDIDATE_LIMIT,
) -> list[dict[str, Any]]:
similarities_by_pr = {
int(row["right_pr_number"]): row
for row in similarity_rows
if row.get("right_pr_number") is not None
}
candidate_rows: list[dict[str, Any]] = []
assigned = assigned_cluster_ids or set()
for cluster in clusters:
cluster_id = str(cluster["cluster_id"])
member_rows = [
(member_pr_number, similarities_by_pr.get(member_pr_number))
for member_pr_number in cluster_members.get(cluster_id, ())
]
member_similarities = [
(member_pr_number, similarity_row)
for member_pr_number, similarity_row in member_rows
if similarity_row is not None and float(similarity_row["similarity"]) > 0.0
]
if not member_similarities and cluster_id not in assigned:
continue
member_similarities.sort(key=lambda item: (-float(item[1]["similarity"]), item[0]))
top_similarities = [float(entry["similarity"]) for _, entry in member_similarities[:3]]
max_member_similarity = top_similarities[0] if top_similarities else 0.0
avg_top_member_similarity = (
sum(top_similarities) / len(top_similarities) if top_similarities else 0.0
)
matched_member_count = len(member_similarities)
best_member_pr_number = member_similarities[0][0] if member_similarities else None
best_match = member_similarities[0][1] if member_similarities else None
candidate_score = (
max_member_similarity * 0.60
+ avg_top_member_similarity * 0.30
+ min(matched_member_count, 3) / 3.0 * 0.10
)
evidence = {
"matched_member_pr_numbers": [member for member, _ in member_similarities[:5]],
"best_member_pr_number": best_member_pr_number,
"best_shared_filenames": (
list(best_match["shared_filenames"][:5]) if best_match is not None else []
),
"best_shared_directories": (
list(best_match["shared_directories"][:5]) if best_match is not None else []
),
"reason": _candidate_reason(
matched_member_count=matched_member_count,
best_comparison=best_match,
),
}
candidate_rows.append(
{
"cluster_id": cluster_id,
"candidate_score": candidate_score,
"matched_member_count": matched_member_count,
"best_member_pr_number": best_member_pr_number,
"max_member_similarity": max_member_similarity,
"avg_top_member_similarity": avg_top_member_similarity,
"evidence": evidence,
"assigned": cluster_id in assigned,
}
)
candidate_rows.sort(
key=lambda row: (
-float(row["candidate_score"]),
-int(row["matched_member_count"]),
str(row["cluster_id"]),
)
)
for rank, row in enumerate(candidate_rows[:limit], start=1):
row["candidate_rank"] = rank
return candidate_rows[:limit]
def scope_feature_pair_explanation(
left_feature: Mapping[str, Any],
right_feature: Mapping[str, Any],
*,
options: PrScopeClusterOptions | None = None,
) -> dict[str, Any]:
settings = options or PrScopeClusterOptions()
weight_total = (
settings.content_weight
+ settings.size_weight
+ settings.breadth_weight
+ settings.concentration_weight
)
if weight_total <= 0.0:
raise ValueError("PR scope similarity weights must sum to a positive value.")
left_vector = _json_dict(left_feature.get("vector_json"))
right_vector = _json_dict(right_feature.get("vector_json"))
left_filenames = set(_json_list(left_feature.get("filenames_json")))
right_filenames = set(_json_list(right_feature.get("filenames_json")))
left_directories = set(_json_list(left_feature.get("directories_json")))
right_directories = set(_json_list(right_feature.get("directories_json")))
content_similarity = _cosine_similarity(left_vector, right_vector)
if (
content_similarity <= 0.0
and not left_filenames.intersection(right_filenames)
and not left_directories.intersection(right_directories)
):
similarity = 0.0
else:
size_similarity = _ratio_similarity(
int(left_feature.get("total_changed_lines") or 0),
int(right_feature.get("total_changed_lines") or 0),
)
breadth_similarity = (
_ratio_similarity(
int(left_feature.get("file_count") or 0),
int(right_feature.get("file_count") or 0),
)
+ _ratio_similarity(
int(left_feature.get("directory_count") or 0),
int(right_feature.get("directory_count") or 0),
)
) / 2.0
concentration_similarity = max(
0.0,
1.0
- abs(
float(left_feature.get("dominant_dir_share") or 0.0)
- float(right_feature.get("dominant_dir_share") or 0.0)
),
)
similarity = (
content_similarity * settings.content_weight
+ size_similarity * settings.size_weight
+ breadth_similarity * settings.breadth_weight
+ concentration_similarity * settings.concentration_weight
) / weight_total
return {
"left_pr_number": int(left_feature["pr_number"]),
"right_pr_number": int(right_feature["pr_number"]),
"similarity": similarity,
"content_similarity": content_similarity,
"size_similarity": size_similarity,
"breadth_similarity": breadth_similarity,
"concentration_similarity": concentration_similarity,
"shared_filenames": sorted(left_filenames & right_filenames)[:10],
"shared_directories": sorted(
left_directories & right_directories,
key=lambda value: (-value.count("/"), value),
)[:10],
}
return {
"left_pr_number": int(left_feature["pr_number"]),
"right_pr_number": int(right_feature["pr_number"]),
"similarity": similarity,
"content_similarity": content_similarity,
"size_similarity": 0.0,
"breadth_similarity": 0.0,
"concentration_similarity": 0.0,
"shared_filenames": [],
"shared_directories": [],
}
def scope_options_from_settings(settings_json: Mapping[str, Any] | None) -> PrScopeClusterOptions:
if not settings_json:
return PrScopeClusterOptions()
defaults = asdict(PrScopeClusterOptions())
values = {key: settings_json[key] for key in defaults if key in settings_json}
return PrScopeClusterOptions(**values)
def iso_timestamp() -> str:
return datetime.now(tz=UTC).replace(microsecond=0).isoformat().replace("+00:00", "Z")
def _document_row(row: Mapping[str, Any]) -> dict[str, Any]:
return {
"pr_number": int(row["number"]),
"github_id": row.get("github_id"),
"author_login": row.get("author_login"),
"state": row.get("state"),
"draft": bool(row.get("draft")),
"merged": bool(row.get("merged")),
"title": row.get("title") or "",
"base_ref": row.get("base_ref"),
"created_at": row.get("created_at"),
"updated_at": row.get("updated_at"),
"merged_at": row.get("merged_at"),
"additions": int(row.get("additions") or 0),
"deletions": int(row.get("deletions") or 0),
"changed_files": int(row.get("changed_files") or 0),
"comments_count": int(row.get("comments_count") or 0),
"review_comments_count": int(row.get("review_comments_count") or 0),
"html_url": row.get("html_url"),
}
def _document_to_profile_row(row: Mapping[str, Any]) -> dict[str, Any]:
return {
"number": int(row["pr_number"]),
"additions": int(row.get("additions") or 0),
"deletions": int(row.get("deletions") or 0),
"changed_files": int(row.get("changed_files") or 0),
}
def _feature_row(profile: Any) -> dict[str, Any]:
return {
"pr_number": profile.number,
"feature_version": FEATURE_VERSION,
"total_changed_lines": profile.total_changed_lines,
"file_count": profile.file_count,
"directory_count": profile.directory_count,
"dominant_dir_share": profile.dominant_dir_share,
"filenames_json": sorted(profile.filenames),
"directories_json": sorted(profile.directories),
"vector_json": profile.vector,
}
def _neighbor_rankings(
comparisons: Sequence[Any], options: PrScopeClusterOptions
) -> dict[int, list[dict[str, Any]]]:
ranked: defaultdict[int, list[tuple[float, int, Any]]] = defaultdict(list)
for entry in comparisons:
if entry.similarity < options.min_similarity:
continue
ranked[entry.left].append((entry.similarity, entry.right, entry))
ranked[entry.right].append((entry.similarity, entry.left, entry))
results: dict[int, list[dict[str, Any]]] = {}
for pr_number, items in ranked.items():
ordered = sorted(items, key=lambda item: (-item[0], item[1]))[: options.max_neighbors]
results[pr_number] = [
{
"other_pr_number": other_pr_number,
"rank": rank,
"comparison": comparison,
}
for rank, (_, other_pr_number, comparison) in enumerate(ordered, start=1)
]
return results
def _neighbor_rows(
neighbor_rankings: Mapping[int, Sequence[Mapping[str, Any]]],
) -> list[dict[str, Any]]:
rows: dict[tuple[int, int], dict[str, Any]] = {}
for pr_number, ranked_neighbors in neighbor_rankings.items():
for ranked_neighbor in ranked_neighbors:
comparison = ranked_neighbor["comparison"]
left_pr = min(pr_number, int(ranked_neighbor["other_pr_number"]))
right_pr = max(pr_number, int(ranked_neighbor["other_pr_number"]))
pair_key = (left_pr, right_pr)
row = rows.get(pair_key)
if row is None:
row = {
"left_pr_number": left_pr,
"right_pr_number": right_pr,
"rank_from_left": None,
"rank_from_right": None,
"similarity": comparison.similarity,
"content_similarity": comparison.content_similarity,
"size_similarity": comparison.size_similarity,
"breadth_similarity": comparison.breadth_similarity,
"concentration_similarity": comparison.concentration_similarity,
"shared_filenames_json": comparison.shared_filenames,
"shared_directories_json": comparison.shared_directories,
}
rows[pair_key] = row
if pr_number == left_pr:
row["rank_from_left"] = int(ranked_neighbor["rank"])
else:
row["rank_from_right"] = int(ranked_neighbor["rank"])
return [rows[key] for key in sorted(rows)]
def _cluster_row(cluster: PrScopeCluster) -> dict[str, Any]:
return {
"cluster_id": cluster.cluster_id,
"representative_pr_number": cluster.representative_pr_number,
"cluster_size": len(cluster.pr_numbers),
"average_similarity": cluster.average_similarity,
"summary": cluster.summary,
"shared_filenames_json": cluster.shared_filenames,
"shared_directories_json": cluster.shared_directories,
}
def _cluster_member_rows(clusters: Sequence[PrScopeCluster]) -> list[dict[str, Any]]:
rows: list[dict[str, Any]] = []
for cluster in clusters:
for pr_number in cluster.pr_numbers:
rows.append(
{
"cluster_id": cluster.cluster_id,
"pr_number": pr_number,
"member_role": (
"representative"
if pr_number == cluster.representative_pr_number
else "member"
),
}
)
rows.sort(
key=lambda row: (
row["cluster_id"],
row["member_role"] != "representative",
row["pr_number"],
)
)
return rows
def _cluster_candidate_rows(
*,
profiles: Sequence[Any],
comparison_rows: Mapping[tuple[int, int], Any],
clusters: Sequence[PrScopeCluster],
) -> list[dict[str, Any]]:
cluster_ids_by_pr: defaultdict[int, set[str]] = defaultdict(set)
cluster_members: dict[str, list[int]] = {}
for cluster in clusters:
cluster_members[cluster.cluster_id] = list(cluster.pr_numbers)
for pr_number in cluster.pr_numbers:
cluster_ids_by_pr[pr_number].add(cluster.cluster_id)
rows: list[dict[str, Any]] = []
for profile in sorted(profiles, key=lambda item: item.number):
candidates = _cluster_candidates_for_pr(
pr_number=profile.number,
comparison_rows=comparison_rows,
clusters=clusters,
assigned_cluster_ids=cluster_ids_by_pr.get(profile.number, set()),
cluster_members=cluster_members,
)
rows.extend(candidates)
return rows
def _cluster_candidates_for_pr(
*,
pr_number: int,
comparison_rows: Mapping[tuple[int, int], Any],
clusters: Sequence[PrScopeCluster],
assigned_cluster_ids: set[str],
cluster_members: Mapping[str, Sequence[int]],
) -> list[dict[str, Any]]:
candidate_rows: list[dict[str, Any]] = []
for cluster in clusters:
member_similarities: list[tuple[int, Any]] = []
for member_pr_number in cluster_members[cluster.cluster_id]:
if member_pr_number == pr_number:
continue
comparison = comparison_rows.get(_pair_key(pr_number, member_pr_number))
if comparison is None or comparison.similarity <= 0.0:
continue
member_similarities.append((member_pr_number, comparison))
if not member_similarities and cluster.cluster_id not in assigned_cluster_ids:
continue
member_similarities.sort(key=lambda item: (-item[1].similarity, item[0]))
top_similarities = [entry.similarity for _, entry in member_similarities[:3]]
max_member_similarity = top_similarities[0] if top_similarities else 0.0
avg_top_member_similarity = (
sum(top_similarities) / len(top_similarities) if top_similarities else 0.0
)
matched_member_count = len(member_similarities)
candidate_score = (
max_member_similarity * 0.60
+ avg_top_member_similarity * 0.30
+ min(matched_member_count, 3) / 3.0 * 0.10
)
best_member_pr_number = member_similarities[0][0] if member_similarities else None
best_comparison = member_similarities[0][1] if member_similarities else None
evidence = {
"matched_member_pr_numbers": [member for member, _ in member_similarities[:5]],
"best_member_pr_number": best_member_pr_number,
"best_shared_filenames": (
list(best_comparison.shared_filenames[:5]) if best_comparison is not None else []
),
"best_shared_directories": (
list(best_comparison.shared_directories[:5]) if best_comparison is not None else []
),
"reason": _candidate_reason(
matched_member_count=matched_member_count,
best_comparison=best_comparison,
),
}
candidate_rows.append(
{
"pr_number": pr_number,
"cluster_id": cluster.cluster_id,
"candidate_score": candidate_score,
"matched_member_count": matched_member_count,
"best_member_pr_number": best_member_pr_number,
"max_member_similarity": max_member_similarity,
"avg_top_member_similarity": avg_top_member_similarity,
"evidence_json": evidence,
"assigned": cluster.cluster_id in assigned_cluster_ids,
}
)
candidate_rows.sort(
key=lambda row: (
-row["candidate_score"],
-row["matched_member_count"],
row["cluster_id"],
)
)
for rank, row in enumerate(candidate_rows[:DEFAULT_CANDIDATE_LIMIT], start=1):
row["candidate_rank"] = rank
return candidate_rows[:DEFAULT_CANDIDATE_LIMIT]
def _candidate_reason(*, matched_member_count: int, best_comparison: Any | None) -> str:
if best_comparison is None:
return "cluster membership matches existing scope assignment"
shared_filenames = (
list(best_comparison.shared_filenames)
if hasattr(best_comparison, "shared_filenames")
else list(best_comparison.get("shared_filenames") or [])
)
shared_directories = (
list(best_comparison.shared_directories)
if hasattr(best_comparison, "shared_directories")
else list(best_comparison.get("shared_directories") or [])
)
if matched_member_count >= 2:
return "overlapping files and directories with multiple cluster members"
if shared_filenames:
return "overlapping changed files with a cluster member"
if shared_directories:
return "overlapping directories with a cluster member"
return "similar change shape to a cluster member"
def _pair_key(left: int, right: int) -> tuple[int, int]:
return (left, right) if left <= right else (right, left)
def _json_dict(raw: Any) -> dict[str, float]:
if isinstance(raw, dict):
return {str(key): float(value) for key, value in raw.items()}
if isinstance(raw, str) and raw:
payload = json.loads(raw)
if isinstance(payload, dict):
return {str(key): float(value) for key, value in payload.items()}
return {}
def _json_list(raw: Any) -> list[str]:
if isinstance(raw, list):
return [str(item) for item in raw]
if isinstance(raw, str) and raw:
payload = json.loads(raw)
if isinstance(payload, list):
return [str(item) for item in payload]
return []
def _cosine_similarity(left: Mapping[str, float], right: Mapping[str, float]) -> float:
if not left or not right:
return 0.0
if len(left) > len(right):
left, right = right, left
return sum(weight * right.get(feature, 0.0) for feature, weight in left.items())
def _ratio_similarity(left: int, right: int) -> float:
largest = max(left, right)
if largest <= 0:
return 1.0
return min(left, right) / largest
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