As AI continuously learns, models can lose important context over time. This leads to inconsistent outputs or difficulty reasoning across complex or connected information. Even the most advanced models are prone to misinterpretation or missing key details.
That’s why context engineering is emerging as a critical discipline to shape how AI perceives, recalls, reasons, and explains information. In this webinar, we’ll explain why context provides a vital foundation for trustworthy, accurate, and explainable AI results, and how to build an effective context pipeline. We’ll cover techniques like connected memory, contextual retrieval, and graph-based knowledge representation that enable LLMs to establish reliable connections between information and draw logical conclusions.
You’ll learn:
Nyah Macklin is a seasoned researcher and speaker on topics around AI, ML, Ethics, Governance, and Responsibility. Nyah serves as a Senior Developer Advocate for Artificial Intelligence at Neo4j, specializing in GraphRAG, knowledge graphs, and AI-driven developer tooling where Nyah has built high-impact technical communities and led initiatives that advance a critical understanding of AI and its use cases. They are also the Founder & CTO of Afros in AI, a technical community dedicated to showcasing the multifaceted nature of artificial intelligence. Beyond Nyah’s technical expertise, Nyah has a background in government leadership and technology policy, having served as Chief of Staff in the U.S. state government, where they helped shape tech-driven legislative initiatives and equity-driven legislation. When not immersed in their work, Nyah cares about empowering, teaching, and tutoring engineers, live-streaming technical deep dives, and building open-source tools that make software more accessible, explainable, and community-driven.