feat(skill): gsc_signal_delta helper + tests + code notes

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2026-06-26 10:21:36 +09:00
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#!/usr/bin/env python3
"""Day-normalized GSC query delta + mover ranking for signal validation.
Reads two GSC query exports (recent, prior) — JSON list or TSV with a header row
containing query / clicks / impressions / position — and reports day-normalized
site totals, top gainers/decliners, and whether a claimed term is a real mover.
This is the deterministic L1/L4 core of the 35-seo-signal-validation skill.
"""
from __future__ import annotations
import argparse
import json
import sys
from pathlib import Path
def _norm_row(r: dict) -> dict:
def num(*keys, default=0.0):
for k in keys:
if k in r and r[k] not in (None, ""):
try:
return float(str(r[k]).replace(",", ""))
except ValueError:
pass
return default
query = (r.get("query") or r.get("term") or "")
if isinstance(r.get("keys"), list) and r["keys"]:
query = str(r["keys"][0])
return {
"query": str(query).strip(),
"clicks": num("clicks"),
"impressions": num("impressions", "impr"),
"position": num("position", "pos", default=0.0),
}
def load_gsc(path: str) -> list[dict]:
"""Parse a GSC export (JSON list/{rows:[...]} or TSV-with-header)."""
text = Path(path).read_text(encoding="utf-8").strip()
if not text:
return []
if text[0] in "[{":
data = json.loads(text)
if isinstance(data, dict):
data = data.get("rows", [])
return [_norm_row(r) for r in data]
lines = text.splitlines()
header = [h.strip().lower() for h in lines[0].split("\t")]
rows = []
for line in lines[1:]:
if line.strip():
rows.append(_norm_row(dict(zip(header, line.split("\t")))))
return rows
def _by_query(rows: list[dict]) -> dict:
return {r["query"]: r for r in rows if r["query"]}
def compute_delta(recent, prior, recent_days, prior_days,
claim_term=None, top_n=10) -> dict:
if recent_days <= 0 or prior_days <= 0:
raise ValueError("recent_days and prior_days must be positive")
r_by, p_by = _by_query(recent), _by_query(prior)
def totals(rows):
return {"clicks": sum(r["clicks"] for r in rows),
"impressions": sum(r["impressions"] for r in rows)}
rt, pt = totals(recent), totals(prior)
def per_day(total, days):
return round(total / days, 2)
def pct(new, old):
return round((new - old) / old * 100, 1) if old else None
r_cpd, p_cpd = per_day(rt["clicks"], recent_days), per_day(pt["clicks"], prior_days)
r_ipd, p_ipd = per_day(rt["impressions"], recent_days), per_day(pt["impressions"], prior_days)
deltas = []
for q in set(r_by) | set(p_by):
rc = r_by.get(q, {}).get("clicks", 0.0)
pc = p_by.get(q, {}).get("clicks", 0.0)
deltas.append({"query": q, "delta_clicks": rc - pc,
"recent_clicks": rc, "prior_clicks": pc})
deltas.sort(key=lambda d: d["delta_clicks"], reverse=True)
gainers = [d for d in deltas if d["delta_clicks"] > 0][:top_n]
decliners = sorted([d for d in deltas if d["delta_clicks"] < 0],
key=lambda d: d["delta_clicks"])[:top_n]
out = {
"site_totals": {
"recent": {**rt, "clicks_per_day": r_cpd,
"impressions_per_day": r_ipd, "days": recent_days},
"prior": {**pt, "clicks_per_day": p_cpd,
"impressions_per_day": p_ipd, "days": prior_days},
"clicks_per_day_pct": pct(r_cpd, p_cpd),
"impressions_per_day_pct": pct(r_ipd, p_ipd),
},
"top_gainers": gainers,
"top_decliners": decliners,
"claim_term": None,
"verdict_hint": None,
}
if claim_term:
gainer_terms = {g["query"] for g in gainers}
rc, pc = r_by.get(claim_term, {}), p_by.get(claim_term, {})
in_movers = claim_term in gainer_terms
share = (rc.get("clicks", 0.0) / rt["clicks"] * 100) if rt["clicks"] else 0.0
out["claim_term"] = {
"term": claim_term, "found": bool(rc or pc),
"recent": {"clicks": rc.get("clicks", 0.0),
"impressions": rc.get("impressions", 0.0),
"position": rc.get("position")},
"prior": {"clicks": pc.get("clicks", 0.0),
"impressions": pc.get("impressions", 0.0),
"position": pc.get("position")},
"in_top_movers": in_movers,
"click_share_pct": round(share, 2),
}
if not in_movers and share < 1.0:
out["verdict_hint"] = (
f"'{claim_term}' contributes {share:.2f}% of recent clicks and is "
f"absent from top movers -> claimed impact likely ARTIFACT; real "
f"movement is elsewhere (see top_gainers).")
elif in_movers:
out["verdict_hint"] = (
f"'{claim_term}' is among top movers -> claim plausibly CONFIRMED/"
f"PARTIAL; corroborate with live SERP + entity layer.")
else:
out["verdict_hint"] = (
f"'{claim_term}' has non-trivial share ({share:.2f}%) but is not a "
f"top mover -> PARTIAL; inspect attribution.")
return out
def main(argv=None):
ap = argparse.ArgumentParser(description="GSC signal delta for signal validation")
ap.add_argument("--recent", required=True)
ap.add_argument("--prior", required=True)
ap.add_argument("--recent-days", type=int, required=True)
ap.add_argument("--prior-days", type=int, required=True)
ap.add_argument("--claim-term", default=None)
ap.add_argument("--top-n", type=int, default=10)
a = ap.parse_args(argv)
out = compute_delta(load_gsc(a.recent), load_gsc(a.prior),
a.recent_days, a.prior_days, a.claim_term, a.top_n)
json.dump(out, sys.stdout, ensure_ascii=False, indent=2)
sys.stdout.write("\n")
return 0
if __name__ == "__main__":
raise SystemExit(main())

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# gsc_signal_delta.py uses the Python 3 standard library only — no deps.

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#!/usr/bin/env python3
"""Tests for gsc_signal_delta. Run: `python3 test_gsc_signal_delta.py`
(also pytest-compatible). Stdlib only."""
import sys
from pathlib import Path
sys.path.insert(0, str(Path(__file__).parent))
from gsc_signal_delta import compute_delta # noqa: E402
# Genesis fixture: JHR "호텔" — flat head term, growth all brand (2026-06 case).
RECENT = [
{"query": "호텔", "clicks": 5, "impressions": 572, "position": 11.6},
{"query": "grand josun busan", "clicks": 250, "impressions": 4000, "position": 1.2},
{"query": "조선호텔", "clicks": 300, "impressions": 6000, "position": 1.1},
]
PRIOR = [
{"query": "호텔", "clicks": 9, "impressions": 371, "position": 18.1},
{"query": "grand josun busan", "clicks": 49, "impressions": 1500, "position": 3.4},
{"query": "조선호텔", "clicks": 150, "impressions": 5000, "position": 1.3},
]
def test_claim_term_flagged_artifact():
out = compute_delta(RECENT, PRIOR, 28, 30, claim_term="호텔")
ct = out["claim_term"]
assert ct["found"] is True
assert ct["in_top_movers"] is False
assert ct["click_share_pct"] < 1.0
assert "ARTIFACT" in out["verdict_hint"]
def test_top_gainer_is_brand_term():
out = compute_delta(RECENT, PRIOR, 28, 30, claim_term="호텔")
assert out["top_gainers"][0]["query"] == "grand josun busan"
assert out["top_gainers"][0]["delta_clicks"] == 201
def test_day_normalization():
out = compute_delta(RECENT, PRIOR, 28, 30)
assert out["site_totals"]["recent"]["clicks_per_day"] == 19.82 # 555/28
assert out["site_totals"]["prior"]["clicks_per_day"] == 6.93 # 208/30
def test_positive_days_required():
try:
compute_delta(RECENT, PRIOR, 0, 30)
except ValueError:
return
raise AssertionError("expected ValueError for non-positive days")
def _run():
fns = [v for k, v in sorted(globals().items()) if k.startswith("test_")]
for fn in fns:
fn(); print(f"PASS {fn.__name__}")
print(f"\n{len(fns)} passed")
if __name__ == "__main__":
_run()