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Datamata Data Tool Momentum Index
Cross-signal momentum for open source data tools: GitHub stars, forks and 4-week star growth, PyPI and npm downloads, and active job demand. One row per tool from the most recent weekly snapshot, with a 0-100 momentum score.
- Latest snapshot: 2026-07-12
- Tools in this release: 26
- Updated: weekly
- Licence: CC BY 4.0 — free to use and adapt, including commercially, with attribution.
- Source & methodology: https://www.datamatastudios.com/datasets/data-tool-momentum
Quickstart
import pandas as pd
# Stream straight from the Hub — no download step needed
df = pd.read_csv("hf://datasets/datamatastudios/data-tool-momentum/data-tool-momentum.csv")
# Tools with the most momentum right now
print(df.sort_values("momentum_score", ascending=False).head(10))
Or load it with the 🤗 datasets library:
from datasets import load_dataset
ds = load_dataset("datamatastudios/data-tool-momentum")
What you can answer with it
- Which open source data tools have the most momentum, blending GitHub, downloads and job demand.
- Which tools are gaining GitHub stars fastest over the trailing four weeks (
star_growth_4w_pct). - How ecosystem adoption (
pypi_downloads_month,npm_downloads_month) lines up with real hiring demand (job_listing_count). - How any signal moves over time, by appending each weekly snapshot.
Columns
| Column | Type | Description |
|---|---|---|
snapshot_date |
string | UTC date the latest snapshot was taken (YYYY-MM-DD). |
tool |
string | Tool name (e.g. dbt, Apache Airflow, DuckDB). |
slug |
string | Stable identifier used across Datamata surfaces. |
category |
string | Tooling category: transform, orchestrator, processing, streaming, ingestion, bi, ml, ai, mlops, warehouse or quality. |
stars |
number | GitHub stargazers on the snapshot date. |
forks |
number | GitHub forks on the snapshot date. |
open_issues |
number | Open GitHub issues on the snapshot date. |
pypi_downloads_month |
number | PyPI downloads in the trailing month. Blank for tools not on PyPI. |
npm_downloads_month |
number | npm downloads in the trailing month. Blank for tools not on npm. |
job_listing_count |
number | Active job listings mentioning the tool. Blank for tools not in the skill taxonomy. |
star_growth_4w_pct |
number | Change in GitHub stars over the trailing 4 weeks, as a percentage. Blank until 4 weeks of history exist. |
momentum_score |
number | 0-100 percentile composite of stars, job demand, downloads and 4-week star growth. |
github |
string | GitHub repository (owner/repo). Blank if not tracked on GitHub. |
website |
string | Project homepage. |
How it is built
Each week we snapshot every tool from the GitHub REST API (stars, forks, open issues), pypistats.org and the npm registry (trailing-month downloads) and our active job listings. The momentum score is a percentile composite: 35% job demand, 30% GitHub stars, 20% downloads and 15% four-week star growth. Full method and known limitations: https://www.datamatastudios.com/methodology.
Citation
Datamata Studios. "Datamata Data Tool Momentum Index." 2026-07-12. https://www.datamatastudios.com/datasets/data-tool-momentum. Licensed under CC BY 4.0.
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