×
Cognizant’s new AI agents let you prototype without code
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Cognizant enhances Neuro AI platform with multi-agent functionality: Cognizant has upgraded its Neuro AI platform, introduced last year, to include multi-agent capabilities, allowing organizations to ideate, prototype, and test generative AI applications without coding.

Platform evolution and client-driven enhancements: The Neuro AI platform has transformed from a service operated by Cognizant experts to a tool that enterprises can use independently and host in-house.

  • Babak Hodjat, Cognizant’s CTO of AI, revealed that client demand drove the decision to make Neuro AI available for self-use by enterprises.
  • The platform’s ability to generate ideas for applying generative AI in businesses has made it particularly attractive to clients.

Multi-agent functionality as a key differentiator: Cognizant’s use of multiple agents in Neuro AI sets it apart from other AI application platforms, aligning with the growing trend of enterprise AI agents.

  • The platform utilizes four pre-configured agents: Opportunity Finder, Scoping Agent, Data Generator, and Model Orchestrator.
  • These agents guide users through the process of ideating and developing AI applications, essentially acting as a virtual Cognizant consultant.

The Neuro AI workflow: The platform employs a four-step process to help users develop AI applications tailored to their needs.

  • Users begin by describing the issues they want to solve.
  • The Opportunity Finder deploys agents to search for industry-specific use cases.
  • The Scoping Agent then evaluates the impact of potential use cases on specific categories and performance indicators.
  • The Data Generation agent creates synthetic data related to the use case for application testing.
  • Finally, the Model Orchestrator sets up the application.

Technical implementation and flexibility: Cognizant has designed Neuro AI to be versatile and adaptable to various client preferences.

  • The platform uses LangChain as a framework for multi-agent orchestration, allowing it to remain language model (LLM) agnostic.
  • This design choice enables Neuro AI to handle both open and closed models, catering to clients who prefer different AI models.

Cognizant’s broader AI initiatives: The enhancement of Neuro AI is part of Cognizant’s ongoing efforts to boost enterprise use of AI technology.

  • In March, Cognizant opened an AI lab in San Francisco to further support enterprise adoption of AI.
  • These initiatives position Cognizant as a key player in the growing field of AI application consulting and development.

Competitive landscape in AI application consulting: Cognizant’s move comes amidst increasing competition in the AI consulting and platform space.

  • Other consulting firms like Accenture and McKinsey are also developing AI-focused products and services.
  • Enterprise software providers such as Salesforce, SAP, and Oracle are offering platforms for easy creation of AI agents and applications.

Analyzing deeper: Cognizant’s strategic positioning: By enhancing Neuro AI with multi-agent functionality, Cognizant is carving out a niche in the AI platform market, potentially addressing a critical need for businesses still uncertain about how to fully leverage generative AI.

  • The platform’s user-friendly approach to AI application development could appeal to organizations that lack in-house AI expertise.
  • As the AI landscape continues to evolve rapidly, Cognizant’s strategy of combining consulting expertise with practical, self-service tools may prove to be a valuable differentiator in the competitive AI services market.
Cognizant adds multi-agent functionality to AI application platform

Recent News

Why enterprises are increasingly using small language models

The trend reflects a growing emphasis on cost-effectiveness and real-world performance in enterprise AI deployment.

Amazon gave AI features to its Fire HD 8 tablet — they still need work

Amazon's integration of AI features into its budget Fire HD 8 tablet faces performance challenges due to hardware limitations and software constraints.

How AI is democratizing the data science industry

AI tools are enabling non-technical employees to perform basic coding and data analysis tasks, potentially accelerating digital initiatives but raising new challenges in quality control and governance.