Senior AI Data Engineer
Solifi
| Senior AI Data Engineer | ||
| VN782 | ||
| Senior AI Data Engineer | ||
| Bangalore | ||
| Solifi deliver a solid financial technology foundation for equipment, working capital, wholesale, and automotive finance firms. At Solifi, we believe that commerce is only as strong as the system it runs on. Our mission is to reshape finance technology by bringing together proven solutions into a singular powerful technology platform designed to help protect and scale financial organizations. We guard our customers by being precise and reliable, we guide their success by combining powerful technology with proven expertise, and we help them grow by unleashing their potential. | ||
| ||
| We’re looking for a Senior Data Engineer who can design, build, and maintain the data pipelines and infrastructure that power Solifi’s AI products. This is a builder role, not a maintenance one and you’ll architect data systems that enable rapid model experimentation, scalable inference, and reliable monitoring. You’ll work closely with the AI Product Lead, Data Scientist, and AI Engineer to ensure Solifi’s AI products are built on clean, timely, and compliant data. The ideal candidate combines deep technical data expertise with a product mindset, able to move fast, build for reuse, and enable intelligent systems end-to-end. | ||
| Data Architecture: Design and implement scalable data pipelines (batch + streaming) to ingest, transform, and serve data for AI use cases. Feature Engineering: Build and maintain reusable feature stores ensuring consistency between training and inference. Data Quality & Governance: Implement validation, lineage, and observability frameworks to ensure accuracy, reliability, and compliance. Collaboration: Work with Data Scientists to prepare model training data and with AI Engineers to deliver real-time data flows for inference. Infrastructure: Manage data storage, orchestration, and compute for ML pipelines (Spark, Airflow, etc). Performance & Cost Optimization: Continuously tune data workflows for efficiency and scalability on cloud infrastructure. Security & Compliance: Enforce privacy, encryption, access control, and retention policies for all AI data assets. Automation: Contribute to CI/CD for data pipelines and participate in shared MLOps activities (e.g., automated retraining triggers). Documentation: Maintain clear metadata, schema definitions, and data contracts to enable collaboration and traceability. | ||
| ||
| 5 years | ||
| Bachelor's Degree | ||
| Full Time | ||
| Group Medical Insurance, Group Personal Accident, Employee Anniversary gift, Loyalty Bonus, Employee Referral Bonus, Rewards and Recognition program, Wellness Allowance, Privilege Leave (PL): 15 days per year, Casual Leave (CL) 12 days per year, Maternity/paternity/Bereavement leave | ||
| 10 Mar 2026 |