Key Responsibilities :
aligned with business objectives, including LLM infrastructure, retrieval pipelines, and
generative workflows
ensuring robust model deployment and operational excellence
and business stakeholders to translate requirements into technical solutions
learning models, maintaining technical currency with 20-30% hands-on contribution
technical mentorship to ensure engineering excellence across the team
researchers while fostering a culture of innovation and continuous learnin
development, and best practices in ML engineering
Required Skills :
Programming Proficiency : Expert-level skills in Python, R, with deep knowledge of ML frameworks
(TensorFlow, PyTorch, Scikit-learn, Pandas, NumPy)
Machine Learning : Extensive experience with statistical modeling, deep learning, NLP, computer
vision, and generative AI technologies
Infrastructure & Deployment : Hands-on experience with cloud platforms (AWS, Azure, GCP),
containerization (Docker, Kubernetes), and ML pipeline orchestration
Data Engineering : Strong understanding of data architectures, feature engineering, and big data
technologies (Spark, Hadoop, Kafka)
Programming Proficiency : Expert-level skills in Python, R, with deep knowledge of ML frameworks
(TensorFlow, PyTorch, Scikit-learn, Pandas, NumPy)
Leadership Skills : Strong leadership abilities to guide technical teams and communicate effectively
with non-technical stakeholders.
Problem-Solving Abilities : Excellent analytical skills to address complex technical challenges and
devise innovative solutions.
Data Science Manager • Meerut, IN