Select Page



Zach Anderson
Oct 22, 2024 16:57

Explore how agentic AI is transforming industries by autonomously solving complex, multi-step problems using sophisticated reasoning and iterative planning.





Agentic AI represents a significant leap forward in artificial intelligence, utilizing sophisticated reasoning and iterative planning to autonomously solve complex, multi-step problems. According to the NVIDIA Blog, agentic AI connects to enterprise data, enhancing productivity and operations across various industries.

Understanding Agentic AI

The emergence of agentic AI marks a new chapter in AI, moving beyond the capabilities of traditional AI chatbots that rely on generative AI for single interaction responses. By ingesting vast amounts of data from multiple sources, agentic AI systems independently analyze challenges, develop strategies, and execute tasks such as supply chain optimization and cybersecurity vulnerability analysis.

How Agentic AI Works

Agentic AI operates through a four-step process:

  1. Perceive: AI agents gather and process data from various sources, extracting meaningful features and identifying relevant entities.
  2. Reason: A large language model acts as the orchestrator, generating solutions and coordinating specialized models for specific functions.
  3. Act: By integrating with external tools via APIs, agentic AI executes tasks based on formulated plans, with built-in guardrails for accuracy.
  4. Learn: Through a feedback loop or “data flywheel,” agentic AI continuously improves by feeding interaction data back into the system.

Fueling Agentic AI with Enterprise Data

Generative AI transforms organizations by converting vast data into actionable knowledge. Agentic AI builds on this by accessing diverse data through accelerated AI query engines. Techniques like retrieval-augmented generation (RAG) enable AI to tap into broader data sources, creating a data flywheel that refines models and enhances effectiveness.

Applications of Agentic AI

Agentic AI’s applications are vast, from simple tasks like content creation to complex orchestrations in enterprise software. In customer service, AI agents enhance self-service capabilities, reducing response times and boosting satisfaction. In content creation, they save marketers time by automating personalized marketing content generation.

In healthcare, AI agents assist doctors by distilling critical information from vast data, automating administrative tasks, and providing 24/7 support to patients. In software engineering, AI agents automate repetitive coding tasks, potentially freeing up to 30% of work hours by 2030.

Getting Started with Agentic AI

Agentic AI offers the potential to enhance productivity and revolutionize organizational operations. NVIDIA provides tools like NIM Agent Blueprints to accelerate the adoption of generative AI-powered applications. These resources include sample applications, reference code, and comprehensive documentation to guide enterprises in building their own AI agents.

Image source: Shutterstock


Share it on social networks