Exciting Updates from Informatica World: Paradigm Embraces the Future of Agentic AIHeading

The digital landscape is evolving rapidly, and staying ahead means embracing the latest innovations in data management and artificial intelligence. At this year’s Informatica World, Paradigm is thrilled to share the groundbreaking advancements unveiled by Informatica, centered around their latest agentic AI solutions on the Intelligent Data Management Cloud (IDMC) platform.

Introducing Next-Generation AI Agents

Informatica’s new suite of AI-powered agents, collectively known as CLAIRE Agents, is redefining how organizations approach data management and analytics. Here’s a closer look at these powerful tools:

  • Data Quality Agent: Elevates data integrity across systems, ensuring reliable analytics and insights.
  • Data Discovery Agent: Rapidly identifies relevant data assets, accelerating analytics projects.
  • Data Lineage Agent: Provides granular visibility into data flow, supporting transparency and compliance in diverse coding environments.
  • Data Ingestion Agent: Streamlines the creation and management of complex data pipelines.
  • ELT Agent: Automates and optimizes Extract, Load, and Transform (ELT) processes across multiple platforms.
  • Modernization Agent: Facilitates seamless automation of data engineering and integration workflows.
  • Product Experience Agent: Enriches product data with valuable attributes to enhance business outcomes.
  • Data Exploration Agent: Empowers users to pursue goal-driven data exploration with ease.

These agents are designed to help organizations effortlessly build, connect, and manage AI agent workflows, supporting scalability across leading cloud environments and integrating seamlessly with technology partners such as AWS, Azure, Databricks, Google Cloud, Salesforce, and Snowflake.

Transforming Banking and Financial Services

The impact of Informatica’s innovations is particularly significant for the banking and financial services sector. Here’s how these new capabilities are driving industry transformation:

  • Streamlined Data Governance & Compliance: Enhanced data quality and lineage tools help institutions meet stringent regulatory requirements with confidence.
  • Quick Automation: AI agents enable rapid automation of tasks like fraud detection and customer analysis, boosting agility.
  • Enhanced Operational Efficiency: Routine data management tasks are automated, freeing up resources and reducing operational costs.
  • Global Scalability: The platform supports the expanding data needs of organizations operating on a global scale.
  • Improved Customer Experience: Real-time, data-driven insights empower financial institutions to deliver personalized services and superior customer engagement.

Empowering Digital Innovation

Informatica’s latest AI capabilities empower organizations to automate complex data management processes, ensure robust compliance, and accelerate digital innovation. By leveraging AI, agentic AI, and GenAI, financial institutions and enterprises across industries can unlock new levels of efficiency and value.

Paradigm: Your Trusted Informatica Partner

As an Informatica Platinum Partner, Paradigm is dedicated to helping organizations realize the full potential of their Informatica investments. Our team delivers expert assessment, architecture, implementation, and adoption services tailored to diverse industry needs. Together, we’re enabling clients to harness the power of data and AI for sustainable business growth.


By Peter Ku – SVP, Global Head of Industries

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