This project constitutes an implementation of a custom-design distributed computing environment. The implementation is based on a form of Nbody simulation, which ran successfully across 33 networked-hosts.
An implementation of a MUD using Java and SQL. It will be fully portable to any JVM, and store the whole MUD in a relational database. Allowing for load balancing and multi server environments and plugins.
distDES is a Java RMI-based application which manages load balancing on heterogeneous clusters. Development will extend the theoretical initial implementation to include clustered Rainbow Table generation and encryption algorithm collision detection.
Everything you need to build production-ready agents and models. Access 200+ Google and third-party AI models and tools.
Gemini Enterprise Agent Platform is Google Cloud's comprehensive platform for developers to build, scale, govern, and optimize agents and models. Choose from Google's most advanced models and third-party models like Anthropic's Claude Model Family.
NFC is a scalable, distributed chat server and client implemented in Java. Notable features include built in load balancing and HTTP-tunneling support. Using the load balancing, a distributed network of servers can be formed, similar to an IRC network.
SOAP Message Service Handler open platform built on top of Apache Axis. Provides hot service and interceptor deployment, load balancing, monitoring and payment services. Includes also a number of modules for WS-Security, WS-Routing, ebXML MS, CPP and CPA.
Generic clustering/load-balancing platform (over a LAN or internet) using java based P2P Aorta workers that execute java "tasklets". Various tasklets can be implemented to solve fractals, process images, render webpages, crack RSA "brute force".
The project is a fully functional Java based IP load balancer. It has a webbased admin UI to setup the configuration such as the number of real servers and their addressess, ping times to monitor the health of each of the real servers, the protocols supp
Maximize number of requests handled in a IT Data Center by minimizing the Power Consumption for IT Data Center and ensuring the Power Consumption of IT Data Center is within the predefined threshold Limits of both Server and IT Data Center.