Skip to content
@datallmhub

datallmhub

DataLLMHub

Building practical tools for real-world LLM systems.


What we build

We focus on the core challenges of production LLM systems:

  • Reliability — detecting weak reasoning and hallucinations
  • Orchestration — managing multi-step agent workflows
  • RAG tooling — building and testing retrieval pipelines
  • Cost & control — managing usage, access, and security

Projects

spring-agent-flow

Stateful multi-agent runtime for Spring AI.
Run long-lived workflows with retries, recovery, and graph execution.

https://github.com/datallmhub/spring-agent-flow


ragctl

CLI tool to manage and optimize RAG pipelines.
Test, debug, and iterate on retrieval workflows directly from the terminal.

https://github.com/datallmhub/ragctl


TensorWall

Control layer for LLM systems.
Manage cost, access, and security for production AI usage.

https://github.com/datallmhub/TensorWall


Focus

  • AI reliability
  • Agent systems
  • Retrieval-Augmented Generation (RAG)
  • Production-grade LLM tooling

Philosophy

Simple tools, clear responsibilities, production-first design.


Status

Early stage — feedback and contributions welcome.

Popular repositories Loading

  1. ragctl ragctl Public

    A powerful CLI tool to manage, test, and optimize RAG pipelines. Streamline your Retrieval-Augmented Generation workflows from terminal.

    Python 20 6

  2. spring-agent-flow spring-agent-flow Public

    Multi-agent orchestration framework on top of Spring AI

    Java 20 6

  3. TensorWall TensorWall Public

    Simplify LLM integration. Control cost, access and security.

    Python 6 1

  4. multi-agent-customer-ops multi-agent-customer-ops Public

    Agentic Customer Support Orchestrator

    HTML 1

  5. .github .github Public

Repositories

Showing 5 of 5 repositories

People

This organization has no public members. You must be a member to see who’s a part of this organization.

Top languages

Loading…

Most used topics

Loading…