Role: Technical Engagement Manager – AI/ML (HealthCare)
Exp: 8+ Yrs
Location: Pune(WFO)
Role Overview:
The Engagement Manager will lead a forward deployment engineering POD embedded within a medical device client environment. This role is both technical and commercial, operating at the intersection of video-based machine learning, data-driven use case discovery, and customer-facing program execution. The Engagement Manager will work directly with the client’s sales organization and their end customers, often on-premises, to identify, shape, and deliver high-impact video data monetization opportunities.
Key Responsibilities
• Act as the primary point of contact between the client’s sales channel, end customers, and the deployed engineering POD.
• Lead discovery sessions, on-site observations, and requirements gathering for video-based machine learning opportunities.
• Translate observed workflows and customer challenges into structured AI/ML use cases.
• Work with data scientists and ML engineers to scope model development, data preparation, and validation activities.
• Drive the full lifecycle of engagement execution—from opportunity identification through delivery and customer success.
• Ensure technical alignment, risk management, and timeline adherence across cross-functional teams.
• Shape and present commercial proposals, ROI analyses, solution roadmaps, and value narratives.
• Manage stakeholder communication, reporting, and executive updates.
• Ensure compliance with healthcare/medical device regulatory standards when working with sensitive video data.
• Promote a culture of experimentation, rapid iteration, and hypothesis-driven development within the POD.
Required Qualifications
• 8+ years of experience in customer-facing delivery, technical program management, or AI/ML engagement leadership.
• Strong understanding of machine learning concepts, especially video analytics, computer vision, and supervised learning workflows.
• Experience working in healthcare, medical devices, or regulated environments involving sensitive data.
• Ability to translate ambiguous customer needs into well-scoped technical requirements.
• Excellent communication, storytelling, and client management skills.
• Proven ability to work on-premises with customers, driving hands-on discovery and solution design.
• Strong commercial acumen with experience in pricing, proposal creation, and value-modeling.
• Ability to lead cross-functional engineering teams in a dynamic, field-deployed setting.
Preferred Qualifications
• Background in data science, computer vision, or ML engineering.
• Prior experience in forward deployment engineering, field engineering, or consulting.
• Knowledge of FDA/medical device regulatory frameworks.
• Familiarity with video annotation tools, model training pipelines, and edge-deployment workflows.
Success Indicators
• Consistent delivery of high-quality, high-impact AI/ML use cases.
• Strong relationships with client sales teams and end customers.
• Increased customer adoption, satisfaction, and revenue from video data solutions.
• Efficient coordination of the engineering POD with clear outcomes and minimal friction.