LLM Reasoning: Key Ideas and Limitations
Examine the pivotal role of reasoning in large language models (LLMs), highlighting key advancements, limitations, and practical implications for AI development.
Safe & Trustworthy AI Agents and Evidence-Based AI Policy
Explore the exponential growth of AI capabilities and their associated risks. Understand robust, fair, and privacy-conscious AI systems and evidence-based policy recommendations to ensure safe AI development.
Agentic AI Frameworks
Discover the transformative potential of Agentic AI frameworks, simplifying the development of autonomous systems. Learn about their applications, benefits, and challenges in the evolving AI landscape.
Enterprise Trends for Generative AI
Explore the latest enterprise trends in generative AI, focusing on advancements in machine learning, multimodal systems, and Gemini models. Understand strategies to address current limitations.
Compound AI Systems and DSPy
Examine the evolution of AI systems with Compound AI and DSPy. Learn how modular architectures enhance control, efficiency, and transparency, leveraging optimized programming techniques.
Agents for Software Development
Explore the transformative role of agents in software development, highlighting their impact on workflows, challenges, and the future of tech innovation.
Enterprise Workflow Agents
Examine the potential of LLM-powered agents in enterprise workflows, focusing on productivity, decision-making, and the challenges ahead.
Unifying Neural and Symbolic Decision Making
Explore the integration of neural and symbolic decision-making approaches, addressing key challenges with LLMs and proposing innovative solutions for reasoning and planning.
Open-Source Foundation Models
Analyze the critical role of open-source foundation models in driving innovation. Discover challenges posed by API-only models and opportunities for research and collaboration.
Measuring Agent Capabilities and Anthropic’s RSP
Learn about Anthropic's Responsible Scaling Policy (RSP), focusing on AI safety, capability measurement, and challenges in responsible development.
Safe & Trustworthy AI Agents
Dive into the risks of misuse and malfunction in AI systems, and explore strategies for ensuring robust, fair, and privacy-conscious AI development.