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Although agents is the buzzword of 2025, its important to understand what an AI agent is and where deploying an agentic system could yield benefits. Agentic design An AI agent is an autonomous, intelligent system that uses largelanguagemodels (LLMs) and other AI capabilities to perform complex tasks with minimal human oversight.
This move places Anthropic in the crosshairs of Fortune 500 companies looking for advanced AI capabilities with robust security and privacy features. In this evolving market, companies now have more options than ever for integrating largelanguagemodels into their infrastructure.
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The Rise of Deepfakes and AutomatedPromptEngineering: Navigating the Future of AI In this podcast recap with Dr. Julie Wall of the University of West London, we discuss two big topics in generative AI: deepfakes and automatedpromptedengineering. Register by Friday for 50% off!
Applied Generative AI for Digital Transformation by MIT PROFESSIONAL EDUCATION Applied Generative AI for Digital Transformation is for professionals with backgrounds, especially senior leaders, technology leaders, senior managers, mid-career executives, etc. Generative AI with LLMs course by AWS AND DEEPLEARNING.AI
From October 29th to 31st, we’ve curated a schedule packed with over 150 hands-on workshops and expert-led talks designed to help you sharpen your skills and elevate your role as a data scientist or AI professional. Here’s a guide on how to use three popular ones: Llama, Mistral AI, and Claude.
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Existing systems like LangChain and AutoGen are specifically for developers with programming experience, which complicates the design or tailoring of AI agents for non-technical individuals. Although the tools have made AIautomation better, they remain inaccessible in most cases to non-coding users.
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