• Menu
  • Skip to right header navigation
  • Skip to main content
  • Skip to primary sidebar

DigiBanker

Bringing you cutting-edge new technologies and disruptive financial innovations.

  • Home
  • Pricing
  • Features
    • Overview Of Features
    • Search
    • Favorites
  • Share!
  • Log In
  • Home
  • Pricing
  • Features
    • Overview Of Features
    • Search
    • Favorites
  • Share!
  • Log In

UiPath’s agentic AI platform to utilize Redis semantic routing tech that would enable AI agents to leverage the best LLM or LLM provider depending on the context, intent, and use-case which the customer is trying to solve

April 28, 2025 //  by Finnovate

Data platform Redis and UiPath expanded their collaboration toward furthering agentic automation solutions for customers. By extending their partnership, Redis and UiPath will explore ways to leverage the Redis vector database, Semantic Caching, and Semantic Routing to support UiPath Agent Builder, a secure, simple way to build, test, and launch agents and the agentic automations they are executing. With Redis powering these solutions, UiPath agents will understand the meaning behind user queries, making data access faster and system responses smarter, which delivers greater speed and cost efficiency to enterprise developers looking to take advantage of automation. Additionally, via the utilization of semantic routing, UiPath agents will be able to leverage the best LLM or LLM provider depending on the context, intent, and use-case which the customer is trying to solve. UiPath Agent Builder builds on the RPA capabilities and orchestration of UiPath Automation Suite and Orchestrator to deliver unmatched agentic capabilities. Agent Builder will utilize a sophisticated memory architecture that enables agents to retrieve relevant information only from permissioned, governed knowledgebases and maintain context across planning and execution. This architecture will enable developers to create, customize, evaluate, and deploy specialized enterprise agents that can understand context, make decisions, and execute complex processes while maintaining enterprise-grade security and governance.

Read Article

Category: Members, AI & Machine Economy, Innovation Topics

Previous Post: « New algorithm reduces quantum data preparation time by 85% by using advanced graph analytics and clique partitioning to compress and organize massive datasets
Next Post: Research shows by June 2030, the leading AI data center may have 2 million AI chips, cost $200 billion, and require 9 GW of power — roughly the output of nine nuclear reactors »

Copyright © 2025 Finnovate Research · All Rights Reserved · Privacy Policy
Finnovate Research · Knyvett House · Watermans Business Park · The Causeway Staines · TW18 3BA · United Kingdom · About · Contact Us · Tel: +44-20-3070-0188

We use cookies to provide the best website experience for you. If you continue to use this site we will assume that you are happy with it.OkayPrivacy policy