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GE Vernova
GE Vernova

Energy technology company

Data Scientist

职能数据科学
级别中级
地点Bengaluru, India
方式现场办公
类型全职
发布2个月前
立即申请

必备技能

Python

SQL

Pandas

NumPy

scikit-learn

Feature Engineering

Model Selection

Cross-validation

Job Description Summary
Verantwortlich für das Programmieren einer Komponente, einer Funktion und/oder eines Funktions-Sets. Arbeitet unabhängig und leistet Beiträge im unmittelbaren Team und in anderen Teams in allen Geschäftsbereichen. Sie werden auch zu Designdiskussionen beitragen.

Job Description:

Roles and Responsibilities:

  • Execute DS/ML tasks across the model lifecycle: data acquisition, quality assessment/cleansing, feature engineering, and exploratory data analysis on industrial datasets (sensor/telemetry, logs, emissions, maintenance) with reproducible workflows.
  • Train, tune, and validate models (regression, classification, and time-series methods such as ARIMA/Prophet; anomaly detection; ensembles). Document experiments and results clearly.
  • Collaborate with data/platform engineering to contribute to data pipelines and model serving; support deployment activities and basic monitoring/drift checks under supervision.
  • Produce clean, well-structured Python/SQL code; follow coding standards, version control, and experiment tracking practices.
  • Create visual analyses and concise summaries to communicate findings and recommendations to teammates and stakeholders; incorporate feedback to iterate.
  • Assist in measuring outcomes against success metrics (e.g., reliability, availability, efficiency, emissions, cost) and maintain project artifacts (reports, annotated code).
  • Learn industrial context, data sources, and domain constraints; proactively identify data quality issues and propose fixes within established procedures.
  • Participate in POCs/pilots, including GenAI/LLM-assisted analytics workflows (analytics automation, documentation) as an added advantage.

Education Qualification For roles outside USA: Bachelor's Degree in Computer Science or "STEM" Majors (Science, Technology, Engineering and Math) with minimum 3 years of experience in Data Science/Machine Learning or closely related roles.

For roles in USA: Bachelor's Degree in Computer Science or "STEM" Majors (Science, Technology, Engineering and Math) with minimum 3 years of experience.

Desired Characteristics

Technical Expertise:

  • Proficient in Python and SQL; hands-on with Pandas, Num Py, scikit-learn; basic exposure to Tensor Flow/Py Torch is a plus.
  • Applied experience with feature engineering, model selection, cross-validation, and performance measurement for time-series and classification/regression problems.
  • Solid foundations in data management: ETL basics, data quality checks/cleansing, and working with large datasets.
  • Familiarity with cloud ML platforms (e.g., AWS Sage Maker, Azure ML, GCP Vertex AI) and MLOps concepts (experiment tracking, model registry, monitoring) is a plus.
  • Competent in visual analytics for EDA and communicating insights; experience with dashboards or notebooks preferred.
  • Familiarity with big data/streaming technologies (e.g., Spark, Kafka) and real-time analytics considerations is a plus.

Domain Knowledge:

  • Exposure to industrial operations (Oil & Gas, Fossil Power, Renewable Power) is a plus; ability to learn failure modes, maintenance strategies, and process constraints and translate them into features and validation criteria.
  • Basic understanding of business drivers and operational KPIs (availability, MTBF/MTTR, throughput, energy yield, emissions, cost) with the ability to connect analytical results to business value.

Leadership:

  • Operates within established procedures with some autonomy; collaborates effectively with direct colleagues and seeks guidance for issues outside defined parameters.
  • Applies structured problem solving and analytical thinking; proposes improvements within set practices.
  • Builds strong working relationships; may guide interns or junior teammates on routine tasks.

Personal Attributes:

  • Curiosity and continuous learning mindset; connects ideas and incorporates feedback quickly.
  • Comfort in ambiguity at project/task level; states assumptions clearly and adapts based on new information.
  • Clear communicator; explains technical information to teammates and stakeholders and asks clarifying questions to ensure shared understanding.

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

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关于GE Vernova

GE Vernova

GE Vernova, Inc. is an energy equipment manufacturing and services company headquartered in Cambridge, Massachusetts.

10,001+

员工数

Boston

总部位置

$16B

企业估值

评价

10条评价

3.8

10条评价

工作生活平衡

3.2

薪酬

3.8

企业文化

3.9

职业发展

3.4

管理层

3.7

65%

推荐率

优点

Supportive and approachable management

Excellent benefits and retirement plans

Professional development opportunities

缺点

Heavy workload and frequent overtime

High expectations and stress

Limited growth opportunities

薪资范围

118个数据点

Junior/L3

Staff/L6

L3

Junior/L3 · Data Scientist

0份报告

$30,681

年薪总额

基本工资

-

股票

-

奖金

-

$26,079

$35,284

面试评价

4条评价

难度

3.3

/ 5

时长

14-28周

体验

正面 0%

中性 75%

负面 25%

面试流程

1

Application Review

2

HR Screen

3

Technical Phone Screen

4

Hiring Manager Interview

5

Final Technical Round

6

Offer

常见问题

Technical Knowledge

Behavioral/STAR

Past Experience

Coding/Algorithm