Data Science & Engineering Lead in India at Jobgether
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Job Description
This position is listed on behalf of a partner company, who manages all applications and next steps. Our partner is looking for a Data Science & Engineering Lead based in India.
This role sits at the intersection of advanced data engineering and applied machine learning, driving end-to-end AI and data innovation across complex, large-scale systems. You will lead the design, development, and deployment of machine learning models and data platforms that generate actionable business insights and production-ready intelligence. The position combines hands-on technical execution with architectural ownership, spanning ML model development, data pipelines, and cloud-native infrastructure. You will work with modern AI frameworks, distributed systems, and big data technologies to build scalable, high-performance solutions. The role also involves mentoring engineers and shaping best practices across data science, MLOps, and data engineering functions. This is a high-impact leadership opportunity in a fast-evolving, innovation-driven environment focused on real-world AI applications.
- Lead the design and implementation of supervised and unsupervised machine learning models, including regression, classification, ensemble methods, and advanced neural network architectures.
- Drive development of deep learning systems such as CNNs, RNNs, GANs, Transformers, and other state-of-the-art AI models for real-world applications.
- Oversee NLP and computer vision initiatives using modern frameworks and libraries to solve complex data problems.
- Architect and maintain scalable data pipelines for batch and streaming data using ETL tools and orchestration frameworks.
- Design and optimize lakehouse and data warehouse architectures, including Delta/Iceberg and bronze-silver-gold data models.
- Lead development of robust ETL workflows using tools such as Airflow, DBT, and Airbyte.
- Build and optimize cloud-native data and AI infrastructure on AWS or Azure, including services for compute, storage, and streaming.
- Oversee MLOps pipelines to ensure scalable, reliable, and automated deployment of machine learning models.
- Develop and maintain OLTP and OLAP data models across relational and NoSQL databases.
- Guide data visualization and BI initiatives using tools such as Power BI, Tableau, or QuickSight.
- Mentor and support junior engineers, fostering best practices in AI, ML, and data engineering.
Requirements:
- Bachelor’s degree in Computer Science, Data Science, Engineering, or a related field; Master’s or PhD preferred.
- 7+ years of experience in data science, machine learning, or data engineering roles.
- Strong hands-on expertise in supervised and unsupervised learning, deep learning, and neural network architectures.
- Advanced proficiency in Python and ML frameworks such as TensorFlow, PyTorch, Scikit-learn, Pandas, and NumPy.
- Experience working with LLM tools and frameworks such as LangChain, Hugging Face, or OpenAI APIs.
- Strong background in big data processing using Spark and related distributed computing frameworks.
- Proven experience designing and deploying scalable data pipelines and ETL workflows.
- Deep understanding of cloud platforms (AWS or Azure), including services such as Lambda, Kinesis, Kafka, IAM, and networking.
- Hands-on experience with MLOps platforms such as SageMaker, Databricks, or Azure ML Studio.
- Strong knowledge of lakehouse architectures, data governance, and data quality frameworks.
- Experience with relational and NoSQL databases for both OLTP and OLAP systems.
- Strong leadership and mentoring abilities with excellent communication and cross-functional collaboration skills.
- Experience with Infrastructure as Code tools such as Terraform or CloudFormation is highly desirable.
Benefits:
- Opportunity to lead end-to-end AI and data initiatives in a high-growth, innovation-driven environment.
- Remote-friendly work model based in India.
- Exposure to cutting-edge machine learning, GenAI, and large-scale data engineering systems.
- Strong leadership responsibility with ownership of architecture and technical direction.
- Collaborative and engineering-focused culture emphasizing innovation and continuous learning.
- Access to modern cloud platforms and advanced AI/ML tooling ecosystems.
- Competitive compensation aligned with experience and leadership level.