Spearhead Chatbot

failed
Other
Unknown / Unknown · ?
0
Files
0
LOC
0
Frameworks
0
Languages

Pipeline State

failed
Run ID
#1619726
Phase
Progress
0%
Started
2026-04-17 06:45:52
Finished
2026-04-17 06:45:52
LLM tokens
0
Repo path does not exist: /home/sidra/community-data/rigpal2__spearhead-chatbot

Pipeline Metadata

Stage
Skipped
Decision
name_dup_failed
Novelty
Framework unique
Isolation
Last stage change
2026-04-17 23:09:34
Generated by Repobility's multi-pass static-analysis pipeline (https://repobility.com)

AI Prompt

Create a RAG-powered technical chatbot for Spearhead workstring connections. I need the frontend built using Next.js with Tailwind CSS, ensuring it supports SSE streaming and is mobile-first. The architecture should use a Next.js API Route that performs BM25 search against an in-memory corpus, and then passes the results to Claude Haiku for response generation. The chatbot must strictly ground its answers only in the provided corpus context, which includes specs, torque data, and competitor comparisons. Please include instructions for setting up the environment variable for the Anthropic API key.
next.js react chatbot rag llm claude tailwind search sse api
Generated by gemma4:latest

Catalog Information

Create a RAG-powered technical chatbot for Spearhead workstring connections. I need the frontend built using Next.js with Tailwind CSS, ensuring it supports SSE streaming and is mobile-first. The architecture should use a Next.js API Route that performs BM25 search against an in-memory corpus, and then passes the results to Claude Haiku for response generation. The chatbot must strictly ground its answers only in the provided corpus context, which includes specs, torque data, and competitor comp

Tags

next.js react chatbot rag llm claude tailwind search sse api

Languages

No data

Frameworks

None detected

Embed Badge

Add to your README:

![Quality](https://repos.aljefra.com/badge/1430768.svg)
Quality BadgeSecurity Badge
Export Quality CSVDownload SBOMExport Findings CSV