Description:
Key Responsibilities:
- Data & ML Engineering Leadership
- Build and scale ML engineering and data engineering functions.
- Establish MLOps frameworks for standardized, production-grade model development and monitoring.
- Ensure smooth model transition from data science experimentation to live deployment.
Enterprise Decisioning Platform:
- Design and operationalize a centralized decisioning platform that integrates low-code model development, AutoML, rule engines, and workflow automation.
- Enable DS & Risk teams to build, test, and deploy models with minimal engineering bottlenecks.
- Expand decisioning systems across functional podscredit, pricing, collections, fraud, cross-sell, customer managementto drive consistent, explainable, and auditable decision-making.
- Ensure the platform is scalable, modular, and compliant with RBI regulations.
Core Platform & Lifecycle Management:
- Build modern, scalable data platforms (real-time ingestion, lakehouse, event-driven systems).
- Ensure full lifecycle governance of data from sourcing to archival.
- Partner with governance teams to enable lineage, auditability, and regulatory compliance.
Operational Excellence:
- Lead DataOps, L1/L2 support, and SRE teams to maintain >99.5% platform uptime.
- Implement automated testing, proactive monitoring, and self-healing systems.
- Optimize infra utilization and cloud cost efficiency.
Business Delivery & Stakeholder Engagement:
- Act as execution partner to the Head of Product & Strategy and functional leaders.
- Deliver platform capabilities and decisioning products aligned to business KPIs (loan volume growth, risk reduction, ticket size expansion, collections efficiency).
- Manage technology partnerships and vendor ecosystems (e.g., Databricks, automation tools).
Required Skills & Qualifications:
- 15 ~ 20 years of experience in data engineering, ML engineering, or platform leadership, with at least 8 ~10 years in senior management roles.
- Proven success in building and scaling large-scale data/ML platforms in fast-paced environments (fintech preferred).
- Strong academic foundation with Bachelors/Masters/PhD in Computer Science, Engineering, or quantitative fields from top-tier Indian institutions (IIT/IISc/BITS/NIT).
- Deep expertise in data platform design (streaming, lakehouse, event-driven, real-time ingestion).
- Hands-on knowledge of MLOps frameworks (MLflow, Kubeflow, Airflow, SageMaker, Vertex AI).
- Strong background in model lifecycle management deployment, monitoring, retraining, and governance.
- Experience operationalizing decisioning platforms combining rules, ML, AutoML, and workflow automation.
- Expertise in distributed computing and big data frameworks (Spark, Hadoop, Kafka, Flink).
- Proficiency in cloud platforms (AWS, GCP, Azure) and container orchestration (Kubernetes, Docker).
- Strong understanding of data governance, lineage, and compliance frameworks in regulated industries (RBI, GDPR).
- Solid programming and scripting experience (Python, SQL, Scala/Java) with knowledge of ML/DL libraries (TensorFlow, PyTorch, Scikit-learn).
- Track record of driving platform reliability, resilience, and performance through DataOps and SRE practices.
- Ability to manage and optimize infra utilization and cloud costs at scale.
- Excellent leadership skills with experience managing 15+ member teams across engineering and platform functions.
- Strong communication, stakeholder management, and vendor negotiation skills to bridge business and technology.
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