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xr843/fojin

Buddhist Digital Text Platform — 9,200+ texts, 500+ sources, 8 UI languages, AI Q&A (RAG), knowledge graph, full-text search

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What it does

FoJin is a comprehensive digital library that pulls together over 10,500 Buddhist texts from 503 separate databases worldwide — including sources in Pali, Sanskrit, Tibetan, and Classical Chinese — into a single searchable platform. It lets researchers and readers find, read, and compare texts side by side, ask questions to an AI tutor, explore how concepts and figures connect through a visual relationship map, and look up terms across 32 specialized dictionaries.

Why it matters

This project demonstrates the growing market for AI-powered vertical search platforms that aggregate fragmented, domain-specific knowledge — a model applicable far beyond religious studies to law, medicine, and academia. For founders, it's a blueprint for how to build a defensible, content-rich platform by unifying scattered data sources that no single institution could organize alone, then layering AI features on top to drive engagement.

32Active

On the radar — signal detected

Stars
317
Forks
57
Contributors
3
Language
Python

Score updated Apr 12, 2026

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