Architect and build scalable, production-grade ML systems from experimentation to deployment and lifecycle management
Design and implement end-to-end ML pipelines, including data ingestion, feature engineering, training, validation, and inference
Develop and maintain high-performance model serving systems using APIs (e.g., FastAPI) for real-time and batch inference
Lead the design and implementation of feature stores and reusable feature pipelines across teams
Build and optimize distributed data processing workflows using Spark, Databricks, or similar platforms
Implement and enforce MLOps best practices, including CI/CD pipelines, automated retraining, model versioning, and experiment tracking
Design and manage model monitoring and observability frameworks to track performance, drift, latency, and system health
Drive strategies for model retraining, drift detection, and continuous improvement
Collaborate closely with data engineers, platform teams, and product stakeholders to integrate ML solutions into production systems
Contribute to the adoption of modern AI capabilities, including LLMs, vector databases, retrieval-augmented generation (RAG), and agentic workflows
Ensure high standards of code quality, testing, documentation, and reproducibility
Bachelor’s or Master’s degree in Computer Science, Engineering, or a related field
10+ years of experience in machine learning, software engineering, or related roles, with significant experience in production ML systems
Strong programming expertise in Python and solid software engineering fundamentals (data structures, system design, APIs)
Extensive experience with ML frameworks such as scikit-learn, XGBoost, PyTorch, or TensorFlow
Proven experience designing and deploying scalable ML pipelines and services in production
Hands-on experience with model serving frameworks and API development (e.g., FastAPI, Flask)
Strong experience with containerization (Docker) and orchestration platforms such as Kubernetes
Experience working with cloud platforms (GCP, AWS, or Azure) and building cloud-native ML solutions
Deep understanding of ML lifecycle management, including training, evaluation, deployment, monitoring, and retraining
Experience implementing CI/CD pipelines for ML workflows and managing version control systems (Git)
Strong experience with SQL and distributed data processing frameworks (e.g., Spark, PySpark)
Excellent problem-solving skills and ability to design scalable, maintainable systems