DiscoverThe BeatMaking Clinical AI Work: Nikhil Buduma on Workflow-Native Automation and the Future of Healthcare Efficiency
Making Clinical AI Work: Nikhil Buduma on Workflow-Native Automation and the Future of Healthcare Efficiency

Making Clinical AI Work: Nikhil Buduma on Workflow-Native Automation and the Future of Healthcare Efficiency

Update: 2025-11-20
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About Nikhil Buduma:

Nikhil Buduma is a San Francisco–based entrepreneur, scientist, and engineer working at the cutting edge of AI and healthcare. He is the co-founder and CEO of Ambience Healthcare, an AI platform built to supercharge every healthcare worker with intelligent automation. Under his leadership, Ambience has grown into one of the most well-funded AI healthcare startups in the world, raising over $343 million from top investors, including a16z, OpenAI, Kleiner Perkins, Oak HC/FT, Optum Ventures, and industry pioneers such as Jeff Dean and Pieter Abbeel. Before becoming CEO, Nikhil served as Ambience’s Chief Scientist, leading the development of its core AI systems that streamline documentation, coding, and clinical workflows for healthcare systems, including the Cleveland Clinic and St. Luke’s.

Prior to Ambience, Nikhil co-founded Remedy Health, where he applied machine learning to advance value-based care models, backed by Khosla Ventures and Greylock. He also co-founded Lean On Me, a nonprofit organization that supports mental health and wellness across U.S. college campuses through anonymous peer-to-peer text support networks at institutions such as MIT, Duke, and UC Berkeley.

A graduate and valedictorian of Bellarmine College Preparatory, Nikhil earned both his bachelor’s and master’s degrees in computer science and engineering from MIT. His career reflects a rare blend of technical mastery, compassion, and vision—using AI not to replace clinicians, but to restore the human joy in the practice of medicine.

Things You’ll Learn:

  • Health systems often see low real-world usage of ambient tools; when daily adoption crosses most clinicians and visits, the ROI conversation becomes meaningful. This requires solving fundamentals across specialties, not just shipping features.
  • If AI generates notes that don’t align with payer rules and codes, organizations incur rework and risk. Integrating HCC, ICD-10, and CPT selection, along with supporting language, at the point of care helps prevent denials.
  • Revenue integrity upside: Bringing CDI intelligence forward can reclaim large sums from work already done but not credited. This strengthens both financial sustainability and compliance posture.
  • Continuous third-party auditing and domain-specific modeling are essential because general reasoning models often struggle with the nuances of revenue cycles. Independent validation builds organizational trust.
  • Patient Summary anticipates questions and data needs before the visit, while Chart Chat answers complex, EHR-aware queries in seconds, helping to democratize top-tier standards of care in rural settings.

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Making Clinical AI Work: Nikhil Buduma on Workflow-Native Automation and the Future of Healthcare Efficiency

Making Clinical AI Work: Nikhil Buduma on Workflow-Native Automation and the Future of Healthcare Efficiency

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