日立能源是全球技术领导者,致力于构建清洁能源系统,共享低碳美好未来。我们服务于电力、工业、交通、数据中心和基础设施领域的客户,并携手客户与合作伙伴,通过数字化加速能源转型进程,助力实现碳中和的未来。
我们在全球90个国家拥有超过45,000名员工,他们每天都充满目标感地工作,并且利用各自的不同背景打破墨守陈规。我们诚邀你加入我们的全球团队,共同坚守这一简单而深刻的理念:多元化+协作=创新的关键。
The opportunity:
As an Engineering Data Scientist, you will be part of Indian Operation Center, India (INOPC-PG), aiming to develop a global value chain, where key business activities, resources, and expertise are shared across geographic boundaries to optimize value for Hitachi Energy customers across markets. As part of Transformers BU, we provide high-quality engineering and Technology to Hitachi Energy world. This is an important step from Hitachi Energy's Global Footprint strategy.
How you’ll make an impact:
Drive technical excellence in Data Science by spearheading high-impact ML initiatives within a cross-functional team of engineers and analysts.
Design and deploy advanced machine learning models and predictive frameworks, moving beyond descriptive reporting to provide foresight into business trends.
Analyze high-dimensional datasets to extract latent patterns and deliver prescriptive recommendations that drive strategic business optimization.
Partner with Data Engineers to architect robust pipelines and feature stores, ensuring high-quality data ingestion for model training and inference.
Ensuring model transparency, performance stability, and adherence to ethical AI governance and best practices.
Leverage tools like Power BI and Python to visualize complex model outputs, making machine learning results interpretable for executive decision-making.
Collaborate with business units to identify challenges solvable through AI, proposing end-to-end Data Science solutions that deliver measurable ROI.
Proactively troubleshoot and refine ML models, addressing data drift and performance degradation to maintain long-term accuracy and scalability.
Responsible to ensure compliance with applicable external and internal regulations, procedures, and guidelines.
Living Hitachi Energy’s core values safety and integrity, which means taking responsibility for your own actions while caring for your colleagues and the business.
Your background:
Bachelor’s degree in computer science / data science, or quantitative discipline. 4–8 years of progressive experience in Data Science and Advanced Analytics.
Extensive experience in Statistical Modeling and Machine Learning, including deep understanding of supervised/unsupervised learning, feature engineering, and model validation.
Expert-level proficiency in Complex SQL and architecting scalable ETL/ELT pipelines to handle high-volume, unstructured, and structured datasets.
Hands-on experience with Databricks (PySpark/Spark SQL) for large-scale data processing and Microsoft Power BI for delivering executive-level prescriptive insights. Should have Strong Domain Knowledge across the Data Science
Experience in Azure Databricks, Synapse, ADF, Azure ML Studio. Proficient in Python (Scikit-Learn, Pandas, NumPy) and seasoned in MLOps principles (model versioning, deployment, and monitoring) within an Agile framework. Ability to independently manage end-to-end BI projects.
Strong analytical and problem-solving skills with a focus on data accuracy and performance optimization. Ability to collaborate effectively across engineering and business teams from different cultural and geographical backgrounds.
Strong analytical skills, experience in data analysis and management. Ability to work independently and as part of a team.
Detail-oriented with the ability to manage multiple tasks simultaneously. Ability to manage multiple priorities and meet deadlines. Tasks and time self-management.
Proficiency in both spoken & written English language is required.
| 地点 | Chennai, Tamil Nadu, India |
| 工作类型 | Full time |
| 经验 | Experienced |
| 工作职能 | Data Analytics | Warehousing & Business Intelligence |
| 合同 | Regular |
| 发布日期 | 2026-04-16 |
| 参考编号 | R0121735 |
日立能源是全球技术领导者,致力于构建清洁能源系统,共享低碳美好未来。我们服务于电力、工业、交通、数据中心和基础设施领域的客户,并携手客户与合作伙伴,通过数字化加速能源转型进程,助力实现碳中和的未来。
我们在全球90个国家拥有超过45,000名员工,他们每天都充满目标感地工作,并且利用各自的不同背景打破墨守陈规。我们诚邀你加入我们的全球团队,共同坚守这一简单而深刻的理念:多元化+协作=创新的关键。