Real-Time Open Source Health Dashboard for Dependencies
C7/10April 20, 2026
WhatA dependency intelligence platform that scores library health based on issue response times, contributor diversity, commit cadence, and maintainer engagement rather than vanity metrics like stars.
SignalDevelopers consistently described how they actually evaluate projects — looking at issue activity, maintainer responsiveness, contributor lists, and real usage signals — yet no tool automates this workflow into a single reliable score.
Why NowSoftware supply chain attacks and abandonware incidents have made dependency health a board-level concern, and new regulations like the EU Cyber Resilience Act are forcing companies to formally assess their open source supply chain.
MarketEnterprise software teams managing hundreds of dependencies ($20B+ software composition analysis market), competing with Snyk/Socket/Sonatype who focus on CVEs but largely ignore maintainer health and project vitality.
MoatContinuous monitoring data — building historical baselines of maintainer behavior and project health trajectories creates a dataset that improves predictions over time and cannot be quickly replicated.
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