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Date live:
Jun. 08, 2026
Business Area:
Customer Digital and Data
Area of Expertise:
Data & Analytics
Reference Code:
JR-0000085752
Contract:
Permanent
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Explore locationJoin Barclays as a Data Scientist -ML Ops, you will be responsible for designing, building, and operationalizing scalable machine learning solutions using robust MLO practices. The candidate will work across the end-to-end ML Ops lifecycle—covering deployment, monitoring, and continuous improvement—ensuring production-grade, governed, and efficient ML systems. This role plays a key part in enabling enterprise-scale AI/ML solutions aligned to Barclays’ cloud and Databricks-based ML Ops framework, ensuring consistency, auditability, and faster time-to-value for business use cases.
To be successful as a Data Scientist -ML Ops , you should have experience with:
Strong hands-on experience in ML Ops (model lifecycle management, CI/CD, deployment, monitoring).
Experience in building and operationalizing ML models across environments.
Understanding of full ML lifecycle including experimentation, training, validation, deployment, and monitoring.
Strong proficiency in Python and PySpark.
Experience with large-scale data processing and big data ecosystems.
Hands-on experience with AWS and/or Databricks platforms.
Experience with data pipelines, feature stores, and model registries.
Experience with tools such as:
MLflow (experiment tracking, registry)
Airflow / orchestration tools
Docker / containerization
Experience with AWS services -S3, IAM, CloudWatch, EMR/Glue, etc.
Understanding of scalable data platforms (data lakes, data warehouses).
Experience with model monitoring, drift detection, and performance tracking.
Understanding of data governance, model governance, and compliance requirements.
Some other highly valued skills include:
Experience with Databricks-native ML Ops capabilities (Unity Catalog, ML flow registry, asset bundles).
Exposure to real-time / batch inference pipelines.
Knowledge of feature store concepts and implementation.
Familiarity with API integration and model serving frameworks.
Understanding of DevOps / Infrastructure-as-Code (e.g., Terraform, CloudFormation).
You may be assessed on the key critical skills relevant for success in role, such as risk and controls, change and transformation, business acumen, strategic thinking and digital and technology, as well as job-specific technical skills.
The role is based out of Pune.
Purpose of the role
To use innovative data analytics and machine learning techniques to extract valuable insights from the bank's data reserves, leveraging these insights to inform strategic decision-making, improve operational efficiency, and drive innovation across the organisation.
Accountabilities
Analyst Expectations
All colleagues will be expected to demonstrate the Barclays Values of Respect, Integrity, Service, Excellence and Stewardship – our moral compass, helping us do what we believe is right. They will also be expected to demonstrate the Barclays Mindset – to Empower, Challenge and Drive – the operating manual for how we behave.