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Chevron

Senior Machine Learning Engineer

Bangalore, Karnataka, IndiaPosted Today
FULL_TIMEhybrid

Job Description

Total Number of Openings

1

The Chevron Engineering and Innovation Excellence Center (ENGINE) in Bengaluru India brings together the resources and expertise of the Chevron global network with talent in India to enhance agility and technological innovation to optimize solutions for the world’s current and future energy challenges.  As one of the leading energy providers worldwide, Chevron is involved in the production of crude oil and natural gas, manufacturing of transportation fuels, lubricants, petrochemicals, and additives, and the development of enabling technologies.

Chevron's vision is to be the global energy company most admired for its people, partnerships, and performance. With a clear purpose to develop affordable, reliable, ever-cleaner energy that enables human progress, we believe human ingenuity has the power to solve any challenge and overcome any obstacle. Meeting the world’s growing energy needs requires the pursuit of innovations and advancements that deliver a better future for all.

About the position:
We are actively searching for a talented and experienced Machine Learning (ML) Engineer to join our team. As a Machine Learning Engineer, you will play a crucial role in the development and implementation of cutting-edge artificial intelligence products. Your responsibilities will involve designing and constructing sophisticated machine learning models, as well as refining and updating existing systems. In order to thrive in this position, you must possess exceptional skills in statistics and programming, as well as a deep understanding of data science and software engineering principles. Your ultimate objective will be to create highly efficient self-learning applications that can adapt and evolve over time, pushing the boundaries of AI technology. Join us and be at the forefront of innovation in the field of machine learning.

Key Responsibilities

  • Model Deployment & Automation

    • Design and manage CI/CD pipelines for ML models using tools like MLflow, Kubeflow, or SageMaker.

    • Automate model training, validation, and deployment workflows.

  • Infrastructure & Scalability

    • Architect and maintain scalable ML infrastructure on cloud platforms (AWS, Azure, GCP).

    • Optimize resource usage and model performance in production environments.

    • Support distributed training and real-time inference systems.

  • Monitoring & Governance

    • Implement monitoring systems for model drift, performance, and data integrity.

    • Ensure compliance with data governance, privacy, and security standards.

    • Establish observability and reliability practices for ML systems (SLOs, alerting).

  • Collaboration & Leadership

    • Work closely with data scientists, software engineers, and DevOps teams to integrate ML solutions.

    • Mentor junior ML engineers and contribute to technical leadership across projects.

  • Tooling & Frameworks

    • Develop reusable components and libraries for ML Ops workflows.

    • Evaluate and integrate new tools and technologies to improve ML lifecycle management.

Required Qualifications

  • Bachelor’s or Master’s degree in Computer Science, Data Engineering, or related field.

  • 8-10 years of experience in software engineering, data science, or ML Ops.

  • Strong proficiency in Python, Docker, Kubernetes, and cloud-native ML tools.

  • Experience with ML lifecycle platforms (e.g., MLflow, TFX, Airflow).

  • Deep understanding of model versioning, reproducibility, and deployment strategies.

Preferred Skills

  • Specialized in computer vision or other domain-specific ML applications.

  • Proven experience in productionizing end-to-end ML workflows, including data ingestion, feature engineering, deployment, and monitoring.

  • Familiarity with model monitoring and observability tools (e.g., Roboflow, DataRobot, Evidently AI, Arize AI).

  • Expertise in feature stores (e.g., Feast, Tecton) and model registries.

  • Experience with distributed training frameworks (e.g., Horovod, Ray) and real-time inference systems.

  • Knowledge of experiment tracking tools (e.g., MLflow, Weights & Biases) and CI/CD best practices for ML.

  • Understanding of ML system reliability, cost optimization, and compliance standards.

Everything we do at Chevron is guided by our values and our commitment to The Chevron Way

Have the opportunity to take part in world-leading energy projects, advance your professional development and expand your career within an inclusive and collaborative workplace.

  • Join a workplace where innovation, collaboration and safety are at the core of how we work.

  • Work in thoughtfully designed environments that support focus, well-being, and innovation enhanced by digital tools that enable seamless collaboration.

  • Grow through structured learning, mentorship, and opportunities to contribute to impactful projects that align with Chevron’s values and business priorities.

  • Access comprehensive benefits that support your health, well-being, and work-life balance.

  • Engage with emerging technologies and digital solutions that are shaping the future of energy and enterprise.

how to apply

To be a part of our success, click APPLY to submit your application. Applications close at xx:xxpm AWST on Day Month Year.
 

Chevron regrets that it is unable to sponsor employment Visas or consider individuals on time-limited Visa status for this position. 

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Terms of Use

“ENGINE” refers to the Chevron Engineering and Innovation Excellence Center, which operates under Chevron Global Technology and Services Private Limited, an affiliate of Chevron Corporation. References to ENGINE in this document are for convenience only and do not denote a separate legal entity.

This job advertisement is intended to provide a general overview of the role and workplace environment. Role details and outcomes may vary based on business needs and individual performance.


Chevron ENGINE supports global operations, supporting business requirements across the world. Accordingly, the work hours for employees will be aligned to support business requirements. The standard work week will be Monday to Friday. Working hours are 8:00am to 5:00pm or 1.30pm to 10.30pm.

Chevron participates in E-Verify in certain locations as required by law.

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