Commercial Senior Data Engineer

Functional area:  Information Technology
Location:  India
City:  Pune
Company name:  Edwards India Private Ltd
Date of posting:  May 28, 2026

Your future job

Your role

The Engineer develops technology capabilities and services that Product teams use to build customer-facing solutions, expediting the delivery of technology-enabled value to the Business. They develop and/or configure technologies to meet technical requirements and architecture, whilst ensuring the services they build are robust, maintainable, reusable, and highly scalable. Engineer has ownership of end-to-end data pipelines (semantic layer -> bespoke layer), do architectural decision within Azure Data Platform, owns non-functional requirements such as performance improvement, cost reduction and security standards, providing long-term technical direction for data engineering within Product Team. 

 

Main Responsibilities:

  • Designs, configures, develops, builds, tests, and releases end‑to‑end Azure‑based data solutions and services that meet functional and non‑functional requirements, contributing to the delivery of high‑value, scalable Product increments.
  • Leads the design and implementation of data engineering solutions and architectural components across the Azure Data Platform (e.g., Azure Data Factory, Databricks, Snowflake, SAP BW, MuleSoft, Apigee), ensuring alignment with enterprise architecture standards and best practices.
  • Acts as a technical authority for data engineering, collaborating closely with Product Owners, Platform Owners, Platform Architects, and stakeholders to translate business requirements into robust, maintainable, and cost‑efficient data solutions.
  • Owns complex incidents, defects, and escalations, identifying root causes and driving sustainable fixes across data pipelines, platforms, and integrations.
  • Delivers secure, high‑quality, production‑grade code, ensuring compliance with security, data governance, and engineering standards, and proactively addressing performance, reliability, and scalability concerns.
  • Proactively identifies and drives resolution of technical debt, makes independent technical decisions, clearly communicates trade‑offs (e.g. cost, performance, complexity), and serves as the primary point of contact for data engineering topics within the Product or Platform area.
  • Defines and enforces data engineering standards and best practices, including data modelling approaches, coding standards, CI/CD patterns, monitoring, and documentation to support long‑term platform sustainability.
  • Mentors and supports other engineers, providing technical guidance, design and code reviews, and knowledge sharing to raise overall data engineering maturity within the team.
  • Documents architectures, solutions, and operational procedures to ensure maintainability, supportability, and effective handover across teams.
  • Applies Agile principles and ways of working to efficiently design, deliver, and continuously improve data solutions (e.g., Kanban), while influencing ways of working through experience and continuous improvement initiatives.
  • Drives a culture of continuous improvement, actively contributing to enhancements in data platform stability, performance, observability, and cost optimisation.
  • Supports and fulfils advanced Product and Platform service requests, such as access strategy, solution insights, data quality investigations, and platform optimisation activities.

 

To succeed, you will need:

  • Proven track record of independently delivering and owning high‑quality, secure, and scalable technology solutions that meet complex functional and non‑functional requirements within modern Azure‑based data architectures.
  • Advanced experience with end‑to‑end solution quality assurance, including data validation, automated testing strategies, performance testing, and production readiness to ensure long‑term scalability, reliability, and maintainability.
  • Deep, hands‑on expertise in the Azure Data Platform, including design, development, and operation of data pipelines and platforms using technologies such as Azure Data Factory, Databricks, Delta Lake, Snowflake, and related Azure services.
  • Strong experience designing and applying DevOps and DataOps practices for data platforms, including CI/CD pipelines, infrastructure‑as‑code, automated testing, deployment, monitoring, and release management (e.g., Azure DevOps, Jenkins, Git‑based workflows).
  • Strong understanding of software engineering principles, cloud architecture, information risk, data security, and governance, with the ability to apply these principles pragmatically in complex, enterprise‑scale environments.
  • Extensive hands‑on experience in modern programming and scripting languages commonly used in data engineering (e.g., Python, SQL, PySpark; additional languages such as Java or .NET beneficial), with a strong focus on readable, maintainable, and performant code.
  • Recognised senior‑level engineering expertise in data engineering and cloud platforms, demonstrated through successful ownership of production systems, architectural decision‑making, mentoring of other engineers, and, where applicable, relevant professional certifications (e.g., Azure Data Engineer, Cloud Solution Architect).
  • Experience working effectively across Agile and hybrid delivery models, including Agile (e.g., Kanban / Scrum) and Waterfall environments, with the ability to influence engineering practices and continuously improve ways of working.
  • Strong analytical and problem‑solving skills, with the ability to assess trade‑offs (cost, performance, complexity, risk), make sound technical decisions, and clearly communicate reasoning to both technical and non‑technical stakeholders.
  • AI‑aware data engineering mindset, with practical understanding of how Azure data platforms enable machine learning and generative AI workloads (e.g. data preparation for ML, feature engineering, model serving integration, and consumption of AI outputs within data solutions).
  • Experience or working knowledge of Azure AI‑related services (e.g. Azure Machine Learning, Azure OpenAI, Cognitive Services) and how they integrate with Azure Data Platform components, without being responsible for data science or model development.

 

In return, we offer you: 

  • Plenty of opportunities to grow and develop.
  • A culture known for respectful interaction, ethical behaviour and integrity.
  • Potential to see your ideas realized and to make an impact.
  • New challenges and new things to learn every day.
  • Access to global job opportunities, as part of the Atlas Copco Group.
  • An excellent remuneration package
  • Support for maintaining a healthy work-life balance, including vacation, personal, and sick time.

 

Uniting curious minds
Behind every innovative solution, there are people working together to transform the future. With careers sparked by initiative and lifelong learning, we unite curious minds, and you could be one of them.