Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Learn how to enhance AI research capabilities through a 23-minute technical presentation that combines DSPy with Graph Optimization in PyG (PyTorch Geometric). Explore a practical Multi-Hop RAG implementation that demonstrates how to decompose complex queries into manageable components using graph theory insights. Discover techniques for optimizing question-answer pathways through graph structures, enabling sophisticated AI research without requiring extensive cloud computing resources. Master the process of breaking down intricate questions, such as environmental impact analyses, into smaller components while utilizing diverse retrieval methods for comprehensive answers. Gain valuable insights into an emerging methodology that opens new research opportunities in specialized knowledge domains, making it particularly suitable for academic projects and PhD research. Based on Stanford and UC Berkeley's DSPy framework, this presentation offers a novel approach to AI development that emphasizes efficiency and accessibility for researchers with limited computational infrastructure.