Sr Analytics Engineer
Data and Analytics_Digital Technology; LPB
- Type:
- Full Time
- Location(s):
- Bangalore VERNOVA (JFWTC) IN
- Date Posted:
- Salary:
- Job Posting Start Date:
- 2026-04-27
- Job Posting End Date:
- Job ID:
- R5038484
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Job Description Summary
As a Senior Analytics Engineer on the Fleet Services Analytics team within Gas Power Engineering, you will develop analytics solutions and dashboard applications that help engineering teams identify equipment anomalies, diagnose component issues, and improve the reliability and performance of combined cycle power plants.In this role, you will work with large-scale operational, sensor, and event data to build Python-based analytics workflows, apply statistical and machine learning techniques, and create intuitive dashboards that support engineering teams in their investigations, customer issue resolution and improving product design. You will collaborate closely with domain experts, engineers, and cross-functional teams to turn complex operational data into actionable insights and scalable solutions.
Job Description
Roles and Responsibilities
Partner with domain experts, engineering teams, and cross-functional stakeholders to identify high-impact analytics opportunities
Develop, test, and deploy Python-based analytics solutions using operational, sensor, and event data from power plant assets
Apply statistical methods, time-series analysis, machine learning techniques and AI to detect anomalies, identify failure patterns, and support diagnostics
Perform data wrangling, exploratory data analysis, feature engineering, and root cause analysis on complex industrial datasets
Design, build, and maintain scalable analytics pipelines for batch and near-real-time processing
Develop dashboards, visualizations, and interactive analytics tools that provide insights for engineers to investigate equipment behavior, analyze trends, and troubleshoot customer issues and improve product design.
Translate user needs into technical solutions and iterate based on stakeholder feedback to improve usability and business impact
Validate analytics performance, monitor deployed solutions, and continuously improve model accuracy, robustness, and interpretability
Follow software development best practices, including version control, testing, code review, and documentation
Document data sources, methodologies, assumptions, and solution design to support maintainability, reproducibility, and knowledge sharing
Stay current with advances in anomaly detection, time-series analytics, and applied machine learning and AI, and evaluate their practical use in industrial applications
Required Qualifications
Bachelor’s or Master’s degree in Engineering, Computer Science, Statistics, Mathematics, Data Science, or a related technical field
6-8 years of experience in analytics, data science, software development, or a related technical role.
Strong programming skills in Python, with hands-on experience using libraries such as Pandas, NumPy, SciPy, scikit-learn, Pytorch, Tensorflow and related tools.
Strong foundation in statistics, probability, data analysis, and time-series methods
Experience working with large, complex, and noisy real-world datasets
Experience developing production-quality analytics workflows, MLOps and CI-CD pipelines, dashboards or analytics applications
Strong problem-solving skills with the ability to translate engineering or business challenges into practical analytical solutions
Strong written and verbal communication skills, including the ability to explain technical concepts and analytical results to a range of stakeholders
Preferred Qualifications
Experience with anomaly detection, fault detection, diagnostics, predictive maintenance, or reliability analytics
Experience working with industrial, operational, IoT, or sensor data
Experience using AI tools like Github Copilot or Claude Code.
Experience developing dashboards or analytics applications using tools such as Plotly Dash, Streamlit, Tableau, or Power BI
Familiarity with cloud platforms, CI/CD pipelines, data engineering workflows, or MLOps practices
Familiarity with combined cycle power plants, rotating equipment, thermal systems, or related industrial domains
Experience supporting engineering, operations, or reliability teams with data-driven tools
Exposure to advanced time-series modelling or deep learning methods is a plus where relevant to practical use cases
What Will Make You Stand Out
Ability to solve ambiguous engineering problems and build practical solutions from first principles
Strong intuition for identifying meaningful patterns, anomalies, and failure signals in time-series data
Track record of delivering analytics that drive measurable operational, reliability, or performance improvements
Ability to develop solutions that are technically strong, interpretable, maintainable, and useful to end users
Strong collaboration skills and a customer-focused mindset when working with engineering stakeholders
Passion for learning and applying analytics to solve real-world industrial challenges
Note:
To comply with US immigration and other legal requirements, it is necessary to specify the minimum number of years' experience required for any role based within the USA. For roles outside of the USA, to ensure compliance with applicable legislation, the JDs should focus on the substantive level of experience required for the role and a minimum number of years should NOT be used.
This Job Description is intended to provide a high level guide to the role. However, it is not intended to amend or otherwise restrict/expand the duties required from each individual employee as set out in their respective employment contract and/or as otherwise agreed between an employee and their manager.
Additional Information
Relocation Assistance Provided: Yes