Scope Management & Balancing Learning Goals When Building Agentic Systems

Published on ● Video Link: https://www.youtube.com/watch?v=KluVWLug3N0



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We explore the critical role of early user feedback, success definition, and scope management in building effective AI agent-based systems, particularly within healthcare. Reflecting on lessons from a previous bootcamp, the speaker emphasizes the importance of talking to real users early as possible. These conversations helped validate assumptions and shape the product direction in a way that was grounded in actual needs. This wasn’t just a “nice to have,” but a core input that directly influenced decision-making and problem definition.

#AIProductDevelopment #HealthTech #LLMAgents #AgenticSystems #ScopeManagement #UserFeedbackLoop #ClinicalAI #HealthcareInnovation #TechBootcamp #StartupLessons #AIWorkflow #AIinMedicine #AIProjectManagement #LangGraph #LangSmith




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