platform string | data_type string | industry string | country string | metric_name string | metric_value int64 | period_days int64 | captured_on timestamp[s] | source string |
|---|---|---|---|---|---|---|---|---|
tiktok | hashtag_trend | _example | US | publish_cnt | 0 | 7 | 2026-06-01T00:00:00 | creative_center |
GrowthKit Trends
A community, opt-in, federated dataset of public, anonymized short-form short-form-video trend and benchmark observations, contributed by users of the open-source GrowthKit Claude Code skill. It improves GrowthKit's default benchmarks over time so every founder starts from better, source-tagged ranges instead of fabricated numbers.
Honesty first. GrowthKit never lets a model invent a market metric. Numbers come from deterministic scripts run on a founder's own real exports. This dataset holds ONLY public, anonymized, aggregated observations — never owned analytics, handles, or per-post/per-install data.
What is (and isn't) here
Here: public trending-hashtag/sound observations from TikTok Creative Center, and aggregated performance benchmarks (e.g., the median of a metric across a contributor's posts in a category).
Never here (blocked by assert_public_only before any upload): raw CSV
exports, account handles / names / usernames / profile URLs / emails, per-post
identifiers (video_id, post_id) or per-post metrics (views, likes,
comments, profile_visits), MMP/attribution exports, install-level rows,
install_id, device_id, IP addresses, user_id.
Row schema
Each row is one JSON object with exactly these fields:
{
"platform": "tiktok",
"data_type": "hashtag_trend | sound_trend | perf_benchmark",
"industry": "string",
"country": "string",
"metric_name": "string",
"metric_value": 0,
"period_days": 7,
"captured_on": "YYYY-MM-DD",
"source": "creative_center | aggregated_owned"
}
| Field | Meaning |
|---|---|
platform |
Always tiktok in v1. |
data_type |
hashtag_trend, sound_trend, or perf_benchmark. |
industry |
Coarse industry/vertical label (e.g., saas, fitness). |
country |
ISO-style country code (e.g., US, GB). |
metric_name |
e.g. publish_cnt, video_views, completion_rate_median. |
metric_value |
Numeric. For perf_benchmark this is aggregated (e.g., a median), never per-post. |
period_days |
Observation window (default 7). |
captured_on |
Date the observation was captured (YYYY-MM-DD). |
source |
creative_center (public trend fetch) or aggregated_owned (anonymized aggregate of a contributor's own data). |
How the data is stored — stack, don't rewrite
Each contribution is one new, content-addressed, append-only file at
contributions/<author>-<sha256(payload)[:10]>.json (a JSON array of rows).
Two contributors never collide on a path, resubmitting identical data is
idempotent (same hash → same filename), and merging one PR can never clobber
another. Because a Hugging Face repo is a git repo, every change is a commit with
a SHA and any merge is one corrective commit from being reverted — consumers
can also pin a known-good revision so a bad merge never reaches them.
Auto-merge (safe, unattended)
Clean PRs are merged by a bot (automerge.py,
run on a daily GitHub Actions cron). A PR merges only if it clears every layer
of the guard stack — additive-only (no removes/modifies; only new
contributions/*.json), size cap, per-row schema/PII/range/enum validation, a
corrupt-ratio gate (a single bad row holds the whole PR), and anti-abuse
heuristics (flooding, group-median outliers). Anything that fails is commented
and left open for a human, never silently dropped.
Honest boundary: these gates prove a row is well-formed, PII-free, in-range, non-duplicate, and statistically unremarkable. They do not prove the numbers are authentic — a patient adversary could submit plausible fake data. That residual risk is why versioning/revert matters: prevention narrows the blast radius; git versioning guarantees recovery.
License
CC-BY-4.0. You may share and adapt with attribution. (GrowthKit code is MIT; see the GitHub repo.)
How to contribute (via PR)
Contribution is off by default and runs locally with the GrowthKit skill:
# 1. Preview EXACTLY what would be shared — no upload happens:
python3 skills/growthkit/scripts/federation/contribute.py --rows rows.json --dry-run
# 2. To actually open a dataset PR, set a token and drop --dry-run:
export HF_TOKEN=hf_... # contributors only; never shipped
python3 skills/growthkit/scripts/federation/contribute.py --rows rows.json
The contributor's machine strips each row to the schema above, runs
assert_public_only (which aborts the entire contribution if any identifying
or owned field is present), dedups, and opens a pull request to this dataset.
Maintainers review PRs before merge. There is no background upload.
Pulling community data back into your local benchmarks:
python3 skills/growthkit/scripts/federation/refresh_dataset.py --dry-run
refresh_dataset.py validates every row (schema + range + banned-field check),
refuses corrupt-heavy files, no-ops below a minimum new-row threshold, and labels
community benchmarks with a coverage-aware confidence (LOW until a segment has
enough rows).
See DATA_POLICY.md
for the full policy.
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