Jobs
Benefits & Perks
•Healthcare
•401(k)
•Parental Leave
•Learning Budget
•Mental Health
•Healthcare
•401k
•Parental Leave
•Learning
•Mental Health
Required Skills
Python
SQL
Pandas
NumPy
scikit-learn
Time-series forecasting
Anomaly detection
Predictive maintenance
AWS SageMaker
Azure ML
GCP Vertex AI
Job Description Summary
The Sr Staff Data Scientist is a senior technical leader who shapes and delivers high-impact Data Science and Machine Learning solutions for industrial operations across Oil & Gas, Fossil Power, and Renewable Power. You will lead small teams/programs, set best practices for the end-to-end ML lifecycle, and partner with business and engineering leaders to translate operational challenges into predictive and prescriptive solutions that drive measurable outcomes (reliability, availability, efficiency, emissions, cost). This role requires deep experience with time-series forecasting, anomaly detection, and predictive maintenance on large industrial datasets, with Generative AI as a value-adding plus. Candidates must bring a minimum of 8 years' experience in operations, maintenance or monitoring of at least one of the above industry domains.
Job Description:
Hybrid role: in office
- Roles and Responsibilities
- Collaborate with business/domain leaders to identify, prioritize, and scope high-value ML use cases (e.g., time-series forecasting, anomaly detection, predictive maintenance), define success metrics, and ensure measurable business impact.
- Lead and oversee the end-to-end DS/ML lifecycle: data acquisition, cleaning, feature engineering, and exploratory analysis for industrial datasets (sensor/telemetry, production logs, emissions, maintenance history).
- Develop, validate, and tune models across regression, classification, time-series (ARIMA/Prophet/LSTM/GRU/state-space), anomaly detection, and ensembles; apply deep learning when appropriate; ensure robust cross-validation and reproducibility.
- Deploy models to production on cloud platforms (AWS/Azure/GCP); guide choices for model serving, latency, throughput, and scalability; Own and influence the ML systems architecture, including model lifecycle management, feature pipelines, CI/CD for ML, observability, drift detection, and retraining strategies; partner with platform teams to define scalable and compliant ML-Ops patterns.
- Partner with data/platform engineering to operationalize pipelines and integrate models into business applications and workflows; ensure reliability, observability, and SLAs.
- Establish and champion standards, reusable assets, and best practices for data quality, governance, security-by-design, and validation across programs.
- Mentor and coach data scientists/analysts; perform code/model reviews; grow skills and foster a strong data science culture; lead small teams/projects with moderate risk and complexity.
- Translate model outcomes into clear, actionable insights for technical and non-technical stakeholders; communicate trade-offs, risks, and assumptions; quantify value realization.
- Collaborate with Reliability Engineering to apply reliability analytics (e.g., Weibull analysis, survival/hazard models, RGA/Crow-AMSAA), integrate CMMS/EAM/APM and historian/SCADA data, and inform maintenance and spares strategies where applicable.
- Stay current with advancing ML methods (especially industrial IoT analytics, streaming/real-time) and evaluate/pilot GenAI/LLM-assisted workflows (e.g., analytics automation, documentation, knowledge retrieval) as an added advantage.
- Contribute to functional data/analytics strategy and roadmaps; influence cross-functional ways of working; ensure alignment with GE Vernova standards and compliance requirements.
Education
- Bachelor's Degree in Computer Science or "STEM" Majors (Science, Technology, Engineering and Math) with minimum 10 years of experience.
- Master's/PhD preferred.
Desired Characteristics
Technical Expertise:
- Expert proficiency in Python and SQL; strong in libraries such as Pandas, Num Py, scikit-learn; experience with Tensor Flow/Py Torch where deep learning is applicable.
- Advanced time-series and anomaly detection for industrial data; predictive maintenance modeling and feature engineering for sensor/telemetry and maintenance data.
- Cloud ML platforms (e.g., AWS Sage Maker, Azure ML, GCP Vertex AI), CI/CD for ML, model registries, monitoring and drift detection; design for scalable, reliable serving.
- Data management practices at scale: data quality and cleansing strategies, governance and security controls, and fit-for-purpose data/feature architectures for ML.
- Real-time/streaming analytics and deployment considerations; integration into business applications and workflows.
Domain Knowledge:
- 15 Years of overall experience in Data Science and Analytics field with minimum 8 years' experience in operations within at least one of: Oil & Gas, Fossil Power, Renewable Power; ability to translate operational realities (failure modes, maintenance strategies, process constraints) into features, validation criteria, and deployment constraints.
- Strong business understanding: align analytical solutions to P&L priorities and operational KPIs (availability, MTBF/MTTR, throughput, energy yield, emissions, cost); articulate ROI and buy vs. build trade-offs; awareness of industry trends and regulatory context.
Leadership:
- Leads small teams/projects; attracts, mentors, and develops talent; establishes best practices and reusable patterns; builds trust and consensus across functions.
- Advanced problem solving: prioritizes, removes roadblocks, and aligns solutions to organizational objectives; introduces new perspectives to existing solutions.
- Consulting mindset: frames options and trade-offs, provides risk-assessed recommendations, and influences stakeholders to adopt data-driven decisions.
- Decision making & risk: makes informed decisions in ambiguous environments; balances performance, latency, and reliability trade-offs; promotes calculated risk-taking and learning.
- Change agent: plans and implements change programs, drives adoption of new methods and platforms, and partners with executives to realize value at scale.
Personal Attributes:
- Curiosity and creativity: connects ideas across domains; simplifies complex problems; champions progression from ideas to outcomes with speed.
- Comfort in ambiguity: delivers with incomplete information, states assumptions clearly, and course-corrects based on feedback; manages uncertainty for self and team.
- Strong written and verbal communication: crafts compelling narratives tailored to technical and non-technical audiences; coaches others on effective storytelling.
This role requires access to U.S. export-controlled information. If applicable, final offers will be contingent on ability to obtain authorization for access to U.S. export-controlled information from the U.S. Government.
Additional Information:
GE Vernova offers a great work environment, professional development, challenging careers, and competitive compensation. GE Vernova is an Equal Opportunity Employer. Employment decisions are made without regard to race, color, religion, national or ethnic origin, sex, sexual orientation, gender identity or expression, age, disability, protected veteran status or other characteristics protected by law.
GE Vernova will only employ those who are legally authorized to work in the United States for this opening. Any offer of employment is conditioned upon the successful completion of a drug screen (as applicable).
Relocation Assistance Provided: Yes
For candidates applying to a U.S. based position, the pay range for this position is between $144,800.00 and $217,200.00. The Company pays a geographic differential of 110%, 120% or 130% of salary in certain areas. The specific pay offered may be influenced by a variety of factors, including the candidate's experience, education, and skill set.
Bonus eligibility: discretionary annual bonus.
This posting is expected to remain open for at least seven days after it was posted on December 19, 2025.
Available benefits include medical, dental, vision, and prescription drug coverage; access to Health Coach from GE Vernova, a 24/7 nurse-based resource; and access to the Employee Assistance Program, providing 24/7 confidential assessment, counseling and referral services. Retirement benefits include the GE Vernova Retirement Savings Plan, a tax-advantaged 401(k) savings opportunity with company matching contributions and company retirement contributions, as well as access to Fidelity resources and financial planning consultants. Other benefits include tuition assistance, adoption assistance, paid parental leave, disability benefits, life insurance, 12 paid holidays, and permissive time off.
GE Vernova Inc. or its affiliates (collectively or individually, "GE Vernova") sponsor certain employee benefit plans or programs GE Vernova reserves the right to terminate, amend, suspend, replace, or modify its benefit plans and programs at any time and for any reason, in its sole discretion. No individual has a vested right to any benefit under a GE Vernova welfare benefit plan or program. This document does not create a contract of employment with any individual.
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About GE Vernova
Reviews
3.8
34 reviews
Work Life Balance
3.7
Compensation
3.7
Culture
3.8
Career
3.7
Management
3.6
77%
Recommend to a Friend
Pros
Good work-life balance and flexible environment
Opportunity for career growth
Competitive compensation and benefits
Cons
Room for improvement in processes
Internal communication could improve
Some organizational bureaucracy
Salary Ranges
309 data points
Junior/L3
L3
Junior/L3 · Data Scientist
0 reports
$30,681
total / year
Base
-
Stock
-
Bonus
-
$26,079
$35,284
Interview Experience
4 interviews
Difficulty
3.3
/ 5
Duration
14-28 weeks
Experience
Positive 0%
Neutral 50%
Negative 50%
Interview Process
1
HR Interview
2
Digital Interview
3
Technical Rounds
4
Hiring Manager Interview
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