SME - Computer Scientist / Data Scientist
Bengaluru, Karnataka, India · Full Time
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- Experience
- Any
- Salary
- —
- Openings
- 1
- Posted
- 4 days ago
Where you'll work
Job description
About the Role
Success Booster is a global engineering research and development services company that connects engineering and digital technologies. We offer design, development, and testing services to enterprises worldwide.
Responsibilities
- Develop physics-based, mathematical, and statistical models to represent real-world systems and processes.
- Apply first-principles modeling, differential equations, probabilistic models, and stochastic processes.
- Build predictive and descriptive models using statistical inference and machine learning techniques.
- Perform uncertainty quantification, sensitivity analysis, and error propagation.
- Analyze large, complex datasets to extract patterns, trends, and insights.
- Apply regression, classification, time-series analysis, Bayesian methods, and optimization.
- Integrate physics-informed or constraint-based approaches with ML models, such as Physics-Informed ML.
- Validate models using rigorous statistical testing and cross-validation.
- Design and run numerical simulations and Monte Carlo experiments.
- Implement model solvers and optimization routines in Python or similar languages.
- Work with numerical methods for ODEs, PDEs, and optimization problems.
- Improve the computational efficiency, stability, and scalability of models.
- Translate complex business or scientific problems into mathematical formulations.
- Conduct exploratory analysis and hypothesis-driven investigations.
- Review academic and industry research to apply relevant methodologies.
- Document assumptions, methodologies, and results clearly and transparently.
- Collaborate closely with domain experts, engineers, and product teams.
- Communicate technical findings to non-technical stakeholders clearly.
- Support decision-making through model-driven insights and scenario analysis.
- Contribute to best practices, documentation, and knowledge sharing.
Preferred Candidate Profile
- Strong foundation in Physics, Applied Mathematics, or Engineering principles.
- Expertise in statistical modeling and inference.
- Experience with numerical methods, optimization, and simulations.
- Solid understanding of probability theory and linear algebra.
- Experience with time-series analysis, stochastic modeling, or Bayesian methods.
- Knowledge of model validation, uncertainty analysis, and robustness testing.
- Exposure to physics-informed modeling or hybrid (physics + ML + Deep Learning) approaches.
- Ability to work with noisy, incomplete, or real-world data.