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Harsh Nilesh
Pathak
Senior Machine Learning Scientist
GoDaddy
Harsh is a Senior Machine Learning Scientist at GoDaddy, leading many Generative AI, LLMs, and recommendation efforts. He specializes in collaborating cross-functionally with the product team, data science team, and sales to research AI use cases and integrate advanced solutions into business strategies. His proficiency lies in optimizing large-scale models and architectures, achieving a fine balance between precision and efficiency. Simultaneously, as a 4th-year Ph.D. Candidate in Data Science at Worcester Polytechnic Institute, he is delving deep into Deep Learning Optimization and Fine-tuning LLMs. His work bridges cutting-edge research with practical applications, ensuring scalable and economically viable solutions. Outside his professional realm, Harsh is an active contributor to AI development on GitHub and is committed to continuous learning and innovation in the field.
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15 April 2026 13:30 - 13:50
Defining control boundaries in autonomous systems
Once AI systems are allowed to take actions, the hardest problem isn’t deciding what they can do - it’s deciding how to stop them when things go wrong. Engineering teams quickly encounter failure modes that weren’t visible in development: cascading actions across tools, unclear ownership when decisions have real-world impact, and human-in-the-loop mechanisms that either slow systems to a crawl or fail to prevent incidents. Without explicit control boundaries, autonomy turns into operational risk. This session focuses on how teams design control into action-capable AI systems from the start. Key takeaways: → How teams define and enforce decision authority, including where autonomy ends and human intervention begins. → Practical patterns for runtime control, including action gating, escalation paths, and state isolation. → Strategies for containing failures and rolling back agent behavior before issues cascade system-wide.