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build-enterprise-rag-and-agent-workflows-with-bisheng
Use Bisheng to assemble, evaluate, and publish enterprise RAG and agent workflows across internal data, models, and business users.
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Use Bisheng to assemble, evaluate, and publish enterprise RAG and agent workflows across internal data, models, and business users.
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| name | Build enterprise RAG and agent workflows with Bisheng |
| slug | build-enterprise-rag-and-agent-workflows-with-bisheng |
| description | Use Bisheng to assemble, evaluate, and publish enterprise RAG and agent workflows across internal data, models, and business users. |
| github_stars | 11440 |
| verification | security_reviewed |
| source | https://github.com/dataelement/bisheng |
| author | DataElement |
| publisher_type | open_source_project |
| category | Templates & Workflows |
| framework | Multi-Framework |
| tool_ecosystem | {"github_repo":"dataelement/bisheng","github_stars":11440} |
Use Bisheng to assemble, evaluate, and publish enterprise RAG and agent workflows across internal data, models, and business users.
Bisheng, LLM provider credentials, enterprise data sources
Use the upstream install or setup path that matches your environment:
Requirements and caveats from upstream:
Basic usage or getting-started notes:
Please ensure the following conditions are met before installing BISHENG:
CPU >= 4 Virtual Cores
RAM >= 16 GB
Extracted from upstream docs: https://raw.githubusercontent.com/dataelement/bisheng/HEAD/README.md