• 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

Mosaic Agent Bricks platform automates agent optimization and tuning without the need for labeled data

June 13, 2025 //  by Finnovate

Many enterprise AI agent development efforts  never make it to production and it’s not because the technology isn’t ready. The problem, according to Databricks, is that companies are still relying on manual evaluations with a process that’s slow, inconsistent and difficult to scale. Databricks launched Mosaic Agent Bricks as a solution to that challenge.  The Mosaic Agent Bricks platform automates agent optimization using a series of research-backed innovations. Among the key innovations is the integration of TAO (Test-time Adaptive Optimization), which provides a novel approach to AI tuning without the need for labeled data. Mosaic Agent Bricks also generates domain-specific synthetic data, creates task-aware benchmarks and optimizes quality-to-cost balance without manual intervention. Agent Bricks automates the entire optimization pipeline. The platform takes a high-level task description and enterprise data. It handles the rest automatically. The platform offers four agent configurations: Information Extraction; Knowledge Assistant; Custom LLM; Multi-Agent Supervisor. Databricks also announced the general availability of its Lakeflow data engineering platform. Lakeflow solves the data preparation challenge. It unifies three critical data engineering journeys that previously required separate tools. Ingestion handles getting both structured and unstructured data into Databricks. Transformation provides efficient data cleaning, reshaping and preparation.

Read Article

Category: AI & Machine Economy, Innovation Topics

Previous Post: « NIST-led team uses quantum mechanics to make a factory for random numbers; Bell test measures pairs of “entangled” photons whose properties are correlated
Next Post: Zencoder automates testing of agents- sees and interacts with applications as users do—clicking buttons, filling forms, navigating flows, and validating both UI state and backend responses »

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.