‹ Back

Senior Software Engineer - Data Engineering

JOB SUMMARY

IndiaPosted on 3/4/2026
Apply
Sponsored
SwiftPrep Logo

SwiftPrep

Ace your interview at Axelerant

Get a tailored interview study plan, cheat-sheet, and find contacts for referrals.

Real interview questions and answers from Glassdoor, Reddit, Blind
Role-specific prep plan and cheatsheet tailored to Axelerant
Find insiders for referrals
Get Your Prep Plan
Optimize your resume with Teal - AI-powered resume builder and job tracking tools

Job details

At Axelerant, as a Senior Data Engineer, you will work on meaningful data challenges using modern tools and platforms.

You’ll help architect and build data ingestion, processing, and analytical pipelines that support large-scale digital experiences for global clients.

In this senior role, you will guide a small team of data engineers (2-3 developers), lead technical discussions, and work closely with customers to understand their

requirements

, needs, and platform concerns.

This position gives you the opportunity to deepen your skills across cloud data engineering, collaborate with cross-functional teams and client stakeholders, and contribute to building reliable and scalable data systems that drive business insights.

Your Job ResponsibilitiesDesign, build, and maintain scalable and reliable data pipelines (ETL/ELT processes) for structured and unstructured data, ensuring data accuracy, performance, and availability. Lead and mentor a small team of data engineers, providing technical guidance, conducting code reviews, and ensuring high-quality deliverables. Contribute to designing and optimizing data architectures, storage layers, and transformation workflows for optimal performance and scalability. Work closely with customers and other stakeholders to understand their data

requirements

, needs, and platform concerns, translating these insights into solutions that support their analytics and reporting objectives. Lead technical discussions, architecture reviews, and design sessions to ensure alignment on data engineering best practices and solution approaches. Monitor, troubleshoot, and optimize data workflows and pipelines to ensure reliability, efficiency, and timely data availability. Apply and enforce best practices for coding, testing, documentation, and version control in all data engineering projects. Collaborate with data scientists, analysts, backend engineers, and product teams to enable analytics and machine learning workflows. Support and implement data governance, data quality, and security guidelines throughout the data pipeline and storage solutions. Stay informed about emerging data engineering tools and technologies, and propose improvements or innovative solutions when relevant to enhance performance or reliability. Skills, Knowledge Expertise5+ years of experience in data engineering or a related backend engineering role, with a proven track record of delivering data solutions. Proven ability to lead technical projects or small teams, mentor junior engineers, and guide projects to successful completion. Strong programming skills in Python, Java, or Scala for building data workflows and pipelines. Solid understanding of data modeling, database design, and query optimization for both relational and NoSQL systems. Extensive experience with cloud platforms such as AWS, Azure, or Google Cloud, including their managed data services. Experience with data warehousing technologies (e. g. , Redshift, Snowflake, Databricks) and understanding of lakehouse architectures. Hands-on experience with distributed processing and streaming tools such as Apache Spark, Apache Kafka, or Apache Flink. Exposure to data visualization or analytics tools (e. g. , Apache Superset, Tableau) and understanding of how data is consumed for insights. Experience with workflow orchestration platforms like Apache Airflow or Prefect for scheduling and managing data pipelines. Knowledge of containerization tools such as Docker and a basic understanding of Kubernetes for deploying data services. Strong understanding of data governance, data quality principles, and security best practices in data engineering. Excellent communication and collaboration skills for working with both technical and non-technical teams, including direct engagement with customer stakeholders to translate

requirements

into technical solutions. Good To HaveExperience with real-time streaming systems and event-driven architectures. Familiarity with CI/CD pipelines and DevOps concepts as they relate to data engineering projects. Understanding of machine learning model deployment and operational workflows (MLOps). Exposure to multi-cloud or hybrid cloud environments. Certifications on relevant platforms (AWS, Azure, GCP, Snowflake, etc. ) that demonstrate your expertiseWhy Work At Axelerant. Be part of an AI-first, remote-first digital agency that’s shaping the future of customer experiences. Collaborate with global teams and leading platform partners to solve meaningful challenges. Enjoy a culture that supports autonomy, continuous learning, and work-life harmony.