Senior Data Engineer
Location
TechM Blr ITPL
Years of Experience
10 12 years
Job Summary
The Senior Data Engineer will design, develop, and optimize data solutions to support business processes and analytics within Investment Management. This role requires deep expertise in modern data engineering practices, cloud native development, and advanced data transformation techniques. The engineer will work extensively with SQL, DBT, Snowflake, Azure Data Factory (ADF), Python, and job scheduling tools, while leveraging Azure Function Apps and Gen AI tools such as Cortex AI and GitHub Copilot for automation and productivity.
Responsibilities
- Architect and implement scalable data pipelines and ETL workflows using ADF, DBT, and Python.
- Design and optimize data models for Snowflake and other cloud based data platforms.
- Develop and maintain complex data transformation logic using SQL, DBT, Python, Snowpark, and the Snowsight web interface.
- Integrate job schedulers with Azure Data Factory pipelines and Azure Function Apps for orchestration and automation.
- Apply Gen AI tools (GitHub Copilot Agent Skills, Snowflake Cortex AI) to accelerate development, improve code quality, and enhance productivity.
- Ensure robust data governance, security, and compliance across all solutions.
- Collaborate with cross functional teams to understand business requirements and translate them into technical solutions.
- Mentor junior engineers and provide technical leadership in data engineering best practices.
- Participate in Scrum ceremonies and contribute to continuous improvement initiatives through strong ownership and collaboration.
- 10 12 years of hands on experience in data engineering with strong coding skills.
- Proven expertise in DBT, Python, Azure Data Factory (ADF), SQL, Snowflake, and Azure Databricks.
- Expert in SQL and Python for developing and debugging scalable data pipelines.
- Experience with job schedulers and Azure Function Apps for automation.
- Strong use of infrastructure as code tools like Terraform to manage deployment pipelines.
- Design and optimize API integration in pipelines.
- Advanced understanding of dimensional modeling and data warehousing concepts.
- Strong understanding of Git version control, CI/CD pipelines, DevSecOps, and Agile methodologies.
- Excellent problem solving skills and ability to work in a fast paced environment.
- Strong communication and stakeholder management skills.
- Experience with various LLMs and Natural Language Processing (NLP).
- Experience with Azure Databricks and PySpark.
- Experience with data testing, observability, and data quality frameworks such as SODA, Great Expectations, DBT Tests.
- Bachelor of Engineering degree in Computer Science, Information Technology, or related field.
- Certifications in Azure Data Engineering, Snowflake are a plus.
- Exposure to Investment Management or Financial Services domain preferred.
Regular work hours: 11.00 AM to 8.00 PM IST, with flexibility in work hours. This position allows for Hybrid work which requires the individual to be in office 2 3 days a week. Individual must be available to work US Eastern Standard Time hours as business requires.
Skills Required
- 10-12 years of hands on experience in data engineering with strong coding skills
- Proven expertise in DBT, Python, Azure Data Factory (ADF), SQL, Snowflake, and Azure Databricks
- Expert in SQL and Python for developing and debugging scalable data pipelines
- Experience with job schedulers and Azure Function Apps for automation
- Experience using infrastructure as code tools like Terraform to manage deployment pipelines
- Design and optimize API integration in pipelines
- Advanced understanding of dimensional modeling and data warehousing concepts
- Strong understanding of Git version control, CI/CD pipelines, DevSecOps, and Agile methodologies
- Excellent problem solving skills and ability to work in a fast paced environment
- Strong communication and stakeholder management skills
- Bachelor of Engineering degree in Computer Science, Information Technology, or related field
- Certifications in Azure Data Engineering, Snowflake
- Experience with various LLMs and Natural Language Processing (NLP)
- Experience with PySpark
- Experience with data testing, observability, and data quality frameworks such as SODA, Great Expectations, DBT Tests
- Exposure to Investment Management or Financial Services domain
Navixus | Tech Mahindra Compensation & Benefits Highlights
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Healthcare Strength — Offerings include medical, dental, vision, mental‑health benefits, FSA, wellness programs, and pet insurance. Corporate materials also describe health and accident insurance and maternity/parental coverage for permanent employees, reinforcing comprehensive protection.
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Flexible Benefits — Work models include hybrid/remote options, flexible schedules, and a remote‑work program. A home‑office stipend and related setup support are listed for eligible roles.
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Leave & Time Off Breadth — Paid holidays, PTO/sick time, and floating holidays are explicitly included. Parental and family leave, bereavement, and volunteer time are also highlighted in public materials.
Navixus | Tech Mahindra Insights
What We Do
At Navixus, we’re reinventing the customer experience (CX). We help enterprise-level companies solve the most complex CX and contact center problems. We equip our Clients with the strategies, technologies, cross-platform analytics and out of the box, fresh ideas so they can provide their customers with world-class service experiences, and interact across multiple channels.
Why Work With Us
At Navixus you have an opportunity to positively impact the way our clients engage with their customers which in turn improves their customer experience and business outcomes. If you are looking to grow your career, learn more, develop new skills, and work in a highly collaborative environment then you’ve come to the right place.
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Navixus | Tech Mahindra Teams
Navixus | Tech Mahindra Offices
Hybrid Workspace
Employees engage in a combination of remote and on-site work.
Our hybrid model encompasses a team of remote employees who have access to the office in the Denver metro anytime they like.


