Job Title: Data Engineer Experience: 9 Years Work Mode: Hybrid Location: Hyderabad
Role Summary The Data Engineer is responsible for designing building and operating high-quality scalable and reusable data services that support analytics AI and GenAI use cases across business domains. In this role you will design and work hands-on with data pipelines data models orchestration frameworks storage layers and observability tooling. You will collaborate closely with AI Engineers Data Scientists Product Owners and Platform teams to deliver reliable well-governed and self-service data products.
Key Responsibilities Data Platform & Services Engineering Build and maintain scalable data pipelines and ingestion frameworks for batch streaming and event-driven data. Develop and maintain modular data models and semantic layers optimized for analytics BI self-service and AI use cases. Implement and operate orchestration workflows (e.g. Databricks Workflows) and compute engines (Spark SQL Python). Work with storage technologies such as Delta Lake ADLS feature and vector stores. Data Quality Governance & Observability Implement data quality checks validations and monitoring to ensure reliability and trust in data products. Contribute to data lineage metadata management and documentation. Apply observability practices using tools such as Great Expectations or Monte Carlo. Ensure compliance with data governance standards and regulations (e.g. GDPR) in collaboration with data governance teams. Enablement for AI & Analytics Use Cases Deliver curated datasets and reusable data assets for analytics machine learning and GenAI applications. Build pipelines that process structured graph and unstructured data (e.g. text documents images).
Support AI Engineering teams with data preparation for embeddings vector stores and retrieval-augmented generation (RAG) pipelines. Tooling & Self-Service Contribute to data engineering tooling and frameworks that enable eSicient development and deployment of pipelines. Develop data pipelines using tools such as dbt and Databricks Lakeflow. Support reuse of data services through clear documentation data contracts templates and examples. Collaboration & Ways of Working Collaborate with Data Scientists AI Engineers Product Owners Business SMEs and Platform teams. Participate in technical design discussions code reviews and architecture forums. Follow engineering best practices for version control testing CI/CD and operational excellence.
Preferred Qualifications 5 years of experience in data engineering and building production-grade data pipelines. Strong hands-on experience with data platforms such as Databricks. Solid knowledge of data modeling SQL Spark and Python. Experience with orchestration frameworks data quality tooling and observability practices. Exposure to unstructured data processing and AI/GenAI data pipelines is a strong plus. Experience working in a global multi-team environment is beneficial.
Required Skills:
Data EngineeringData bricksSQLSparkPythonAIGEN AI
Job Title: Data EngineerExperience: 9 YearsWork Mode: HybridLocation: Hyderabad Role SummaryThe Data Engineer is responsible for designing building and operating high-qualityscalable and reusable data services that support analytics AI and GenAI use casesacross business domains.In this role you will...
Job Title: Data Engineer Experience: 9 Years Work Mode: Hybrid Location: Hyderabad
Role Summary The Data Engineer is responsible for designing building and operating high-quality scalable and reusable data services that support analytics AI and GenAI use cases across business domains. In this role you will design and work hands-on with data pipelines data models orchestration frameworks storage layers and observability tooling. You will collaborate closely with AI Engineers Data Scientists Product Owners and Platform teams to deliver reliable well-governed and self-service data products.
Key Responsibilities Data Platform & Services Engineering Build and maintain scalable data pipelines and ingestion frameworks for batch streaming and event-driven data. Develop and maintain modular data models and semantic layers optimized for analytics BI self-service and AI use cases. Implement and operate orchestration workflows (e.g. Databricks Workflows) and compute engines (Spark SQL Python). Work with storage technologies such as Delta Lake ADLS feature and vector stores. Data Quality Governance & Observability Implement data quality checks validations and monitoring to ensure reliability and trust in data products. Contribute to data lineage metadata management and documentation. Apply observability practices using tools such as Great Expectations or Monte Carlo. Ensure compliance with data governance standards and regulations (e.g. GDPR) in collaboration with data governance teams. Enablement for AI & Analytics Use Cases Deliver curated datasets and reusable data assets for analytics machine learning and GenAI applications. Build pipelines that process structured graph and unstructured data (e.g. text documents images).
Support AI Engineering teams with data preparation for embeddings vector stores and retrieval-augmented generation (RAG) pipelines. Tooling & Self-Service Contribute to data engineering tooling and frameworks that enable eSicient development and deployment of pipelines. Develop data pipelines using tools such as dbt and Databricks Lakeflow. Support reuse of data services through clear documentation data contracts templates and examples. Collaboration & Ways of Working Collaborate with Data Scientists AI Engineers Product Owners Business SMEs and Platform teams. Participate in technical design discussions code reviews and architecture forums. Follow engineering best practices for version control testing CI/CD and operational excellence.
Preferred Qualifications 5 years of experience in data engineering and building production-grade data pipelines. Strong hands-on experience with data platforms such as Databricks. Solid knowledge of data modeling SQL Spark and Python. Experience with orchestration frameworks data quality tooling and observability practices. Exposure to unstructured data processing and AI/GenAI data pipelines is a strong plus. Experience working in a global multi-team environment is beneficial.