Rank #2325 · on radar since 2026-07-07
Large-Language-Model-Notebooks-Course
Practical course about Large Language Models.
Large-Language-Model-Notebooks-Course is a RAG & eval tool on the Cresting radar since 2026-07-07, currently ranked #2325 of 2379 tracked tools with a momentum score of 19.1. It has 1,814 GitHub stars. Momentum measures how fast a tool is rising, not how big it is; the score recomputes hourly from public signals.
Momentum
19.1
24h· new7d· new
Why it's ranked
Every score decomposes into published factors — the same math for every tool, paid or not. Read the methodology →
| Velocity (weighted, cohort-normalized) | 0.320 |
| Recency boost | 0.000 |
| Signal decay | 0.991 |
| Corroboration | 1.000 |
| Quality gate | 1.000 |
Raw signals (30 days)
github · forks+0 in window · 448 latest · 2 snapshots
github · stars+0 in window · 1,814 latest · 2 snapshots
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