ibl.ai Agentic AI Blog

Insights on building and deploying agentic AI systems. Our blog covers AI agent architectures, LLM infrastructure, MCP servers, enterprise deployment strategies, and real-world implementation guides. Whether you are a developer building AI agents, a CTO evaluating agentic platforms, or a technical leader driving AI adoption, you will find practical guidance here.

Topics We Cover

Featured Research and Reports

We analyze key research from leading institutions and labs including Google DeepMind, Anthropic, OpenAI, Meta AI, McKinsey, and the World Economic Forum. Our content includes detailed analysis of reports on AI agents, foundation models, and enterprise AI strategy.

For Technical Leaders

CTOs, engineering leads, and AI architects turn to our blog for guidance on agent orchestration, model evaluation, infrastructure planning, and building production-ready AI systems. We provide frameworks for responsible AI deployment that balance capability with safety and reliability.

AI Agents

Building, deploying, and managing autonomous AI agents for workflow automation, customer support, internal operations, and more.

AI agents represent the next evolution in enterprise automation—intelligent systems that can reason, plan, and take action autonomously. Unlike simple chatbots, AI agents handle complex multi-step tasks across customer support, internal operations, data analysis, and specialized workflows. Discover how agentic AI is transforming how organizations operate.

464 articles in this category

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IBM: Enterprise AI Development – Obstacles and Opportunities

A survey of 1,063 US enterprise AI developers revealed significant skills gaps—especially in generative AI—and challenges from a lack of standardized processes and trusted, easy-to-integrate tools, with ongoing concerns about AI agents’ trustworthiness and compliance.

Jeremy WeaverJanuary 9, 2025
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O'Reilly: Technology Trends for 2025

The report analyzes O'Reilly's usage data to predict that in 2025, AI and its associated skills will drive major trends, with a shift in software development focus toward AI integration, increased attention to security, and new platform features like badging and a generative AI Q&A tool.

Jeremy WeaverJanuary 9, 2025
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University of Chicago: Agentic Systems – A Guide to Transforming Industries with Vertical AI Agents

The content explains agentic systems—industry-specific AI agents powered by large language models—that offer real-time adaptability, domain expertise, and complete workflow automation through components like memory, reasoning engines, and cognitive modules.

Jeremy WeaverJanuary 6, 2025
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Google: Agents – Architecture, Tools, and Applications

Generative AI agents extend language models by using external tools and orchestrated reasoning frameworks like ReAct and Chain-of-Thought, with practical implementations shown through examples such as LangChain and Vertex AI.

Jeremy WeaverJanuary 6, 2025
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World Economic Forum: Navigating the AI Frontier – A Primer on the Evolution and Impact of AI Agents

This white paper examines the evolution of AI agents—from simple rule-based systems to advanced models capable of complex decision-making—and discusses their benefits, risks, and the critical need for robust ethical and governance frameworks to manage their growing role in society.

Jeremy WeaverJanuary 3, 2025
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Capgemini: Harnessing the Value of Generative AI - 2nd Edition: Top Use Cases Across Sectors

Capgemini’s report examines the widespread adoption of generative AI across industries, highlighting increased investments, improved productivity, and enhanced customer satisfaction. It emphasizes the growing role of AI agents, the need for strong governance, and addresses ethical and environmental concerns based on insights from a global survey of 1,100 executives.

Jeremy WeaverDecember 27, 2024
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Google DeepMind: A New Golden Age of Discovery

AI is transforming scientific research by accelerating key areas like knowledge synthesis and experimental simulation, while also requiring careful strategies, investments, and policies to manage risks and ensure sustainable, equitable innovation.

Jeremy WeaverNovember 26, 2024
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Google DeepMind: New Golden Age of Discovery

AI is transforming scientific research by accelerating key areas like knowledge synthesis, data management, simulation, and complex modeling, while urging strategic investments and interdisciplinary collaboration to harness its benefits and address potential risks.

Jeremy WeaverNovember 26, 2024