Principal Data Scientist

Honeywell Honeywell · Industrial · Bengaluru, Karnataka, India

The Principal Data Scientist will lead Data Science for Asset Reliability and Cognition portfolio to innovate and mature prognosis models for industrial equipment’s, models to optimize maintenance strategies, and reduce operational risk. This role requires a blend of machine learning expertise, reliability engineering knowledge, and oil & gas domain experience to drive measurable impact across critical assets. The role involves designing and deploying ML models for predictive maintenance, building hybrid AI + physics-based models for digital twins, implementing advanced anomaly detection, and applying probabilistic modeling for reliability analytics. The role also includes cross-functional leadership, mentoring, and staying abreast of industry trends.

What you'd actually do

  1. Design and deploy ML models to forecast equipment failures and optimize maintenance schedules.
  2. Build hybrid AI + physics-based models to simulate asset health and performance.
  3. Implement deep learning and unsupervised methods for early detection of vibration, corrosion, and fouling.
  4. Apply Bayesian networks, causal inference, and probabilistic modeling to identify root causes of failures.
  5. Mentor data science teams, collaborate with engineers, and influence executive stakeholders.

Skills

Required

  • time-series forecasting
  • reinforcement learning
  • graph neural networks
  • Python
  • R
  • Scala
  • Spark
  • Hadoop
  • Azure ML
  • AWS SageMaker
  • GCP Vertex AI
  • asset reliability standards
  • risk-based inspection (RBI)
  • HAZOP analytics
  • probabilistic reliability modeling

Nice to have

  • oil & gas domain experience
  • customer-oriented focus

What the JD emphasized

  • 12+ years of industrial analytics experience
  • at least 5 years in oil & gas reliability
  • PhD or Master’s in Data Science, Reliability Engineering, Chemical/Mechanical Engineering, or Applied Mathematics

Other signals

  • predictive maintenance
  • digital twin
  • advanced anomaly detection
  • reliability analytics
  • cross-functional leadership
  • research and thought leadership