Rank #2133 · on radar since 2026-07-07
vespa
The AI search platform
vespa is a RAG & eval tool on the Cresting radar since 2026-07-07, currently ranked #2133 of 2371 tracked tools with a momentum score of 19.2. It has 6,996 GitHub stars. Momentum measures how fast a tool is rising, not how big it is; the score recomputes hourly from public signals.
Momentum
19.2
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) | 0.324 |
| Recency boost | 0.000 |
| Signal decay | 0.991 |
| Corroboration | 1.000 |
| Quality gate | 1.000 |
Raw signals (30 days)
github · forks+0 in window · 723 latest · 2 snapshots
github · stars+0 in window · 6,996 latest · 2 snapshots
Related rag & eval
- openscienceThe open-source AI workbench for scientific research#3 · 1,466★
- T3MP3STautonomous red teaming platform; multi-agent offensive-security meta-harness#5 · 3,426★
- TalosGPU worker client for the Talos network. Pairs with your Talos account, serves open-model inference jobs over a WebSocket, and reports uptime for payouts.#13 · 725★
- Cognitive-Core-SkillsA universal, industry-neutral taxonomy of cognitive core skills (perception, memory, reasoning, planning, action, verification, learning, governance) for LLMs, SLMs, AI agents, and world models — with schemas, 159 skill cards, benchmarks, and CI.#24 · 274★
- Deepseek-APIReverse engineered Deepseek chat into an OpenAI compatible API. Access V4 and R1 models through a simple REST interface without API keys or billing.#25 · 148★