- Bay Area, California
- https://ashwinjay.github.io
- @ashwinjay
Block or Report
Block or report AshwinJay
Contact GitHub support about this user’s behavior. Learn more about reporting abuse.
Report abuseLanguage
Sort by: Recently starred
Starred repositories
Replicate and sync kafka topics between clusters in realtime. Supports topic re-mapping, healthchecks, and hot failovers for high availability.
A highly opinionated, distributed job-queue built specifically for queuing and executing heavy SQL read jobs asynchronously. Supports MySQL, Postgres, ClickHouse.
Fast HTTP package for Go. Tuned for high performance. Zero memory allocations in hot paths. Up to 10x faster than net/http
JSON document API for Apache Cassandra (formerly known as JSON API)
CrowdSec - the open-source and participative security solution offering crowdsourced protection against malicious IPs and access to the most advanced real-world CTI.
QDox - full extractor of Java class/interface/method definitions (including annotations, parameters, param names)
dnsjava - an implementation of the DNS protocol in Java
A Pythonic framework to simplify AI service building
HiveMQ CE is a Java-based open source MQTT broker that fully supports MQTT 3.x and MQTT 5. It is the foundation of the HiveMQ Enterprise Connectivity and Messaging Platform
Eclipse Mosquitto - An open source MQTT broker
JSON Meta Application Protocol Specification (JMAP)
🧙 Build, run, and manage data pipelines for integrating and transforming data.
NVIDIA Merlin is an open source library providing end-to-end GPU-accelerated recommender systems, from feature engineering and preprocessing to training deep learning models and running inference i…
Flexible workflow engine for execute multiple advanced AI paradigms
Experimentations with Tree of Thought approach using Java Langchain4J Library
🚀 LangGraph for Java. A library for building stateful, multi-actor applications with LLMs, built for work jointly with langchain4j
The RAG Genie, an LLM RAG prototype to test and evaluate your embeddings, chunk splitting strategies using Q&A and evaluations.
The easiest way to use Agentic RAG in any enterprise