Job Description
Job Title:  Lead Data Engineer
Posting Start Date:  04/05/2026
Job Description: 

Job Description

We are a technology-led healthcare solutions provider. We are driven by our purpose to enable healthcare organizations to be future-ready. We offer accelerated, global growth opportunities for talent that’s bold, industrious, and nimble. With Indegene, you gain a unique career experience that celebrates entrepreneurship and is guided by passion, innovation, collaboration, and empathy. To explore exciting opportunities at the convergence of healthcare and technology, check out www.careers.indegene.com Looking to jump-start your career? We understand how important the first few years of your career are, which create the foundation of your entire professional journey. At Indegene, we promise you a differentiated career experience. You will not only work at the exciting intersection of healthcare and technology but also will be mentored by some of the most brilliant minds in the industry. We are offering a global fast-track career where you can grow along with Indegene’s high-speed growth. We are purpose-driven.  We enable healthcare organizations to be future ready and our customer obsession is our driving force. We ensure that our customers achieve what they truly want. We are bold in our actions, nimble in our decision-making, and industrious in the way we work.

 

Role: Lead Data Engineer 

 

Job Description: 


You will be responsible for: 

Design, develop, and maintain scalable data pipelines and enterprise data platforms 
Lead architecture and implementation of modern data engineering solutions across cloud ecosystems 
Build and optimize batch and real-time data ingestion frameworks 
Design data models supporting analytics, reporting, and advanced analytics use cases 
Drive data integration across multiple enterprise systems including healthcare and commercial data sources 
Ensure data quality, governance, security, and compliance standards are implemented 
Collaborate with Data Scientists, Analysts, Product Owners, and Business stakeholders to translate business requirements into scalable data solutions 
Lead migration and modernization initiatives from legacy data platforms to cloud-based architectures 
Optimize data processing performance and cost efficiency 
Implement CI/CD practices and DataOps frameworks for data engineering workflows 
Mentor and guide junior data engineers and establish engineering best practices 
Support enterprise analytics, AI/ML, and reporting initiatives 
Work within Agile delivery models and contribute to sprint planning and technical roadmap discussions 

Must Have

Management Skills 

Strong leadership and team mentoring capabilities 
Excellent written and verbal communication skills 
Ability to work with cross-functional global teams 
Strong stakeholder management and solutioning mindset 
Ability to drive technical decisions and architectural governance 
Staying abreast of emerging technologies in cloud data engineering and analytics platforms 

 

Your Impact 

Enable scalable and future-ready enterprise data platforms 
Improve data accessibility and reliability for analytics and business decision-making 
Accelerate digital transformation initiatives across healthcare and life sciences clients 
Establish engineering standards and best practices across data teams 

 

About You: (Desired Profile) 

Strong experience designing enterprise-scale data architectures 
Experience working in cloud-native data ecosystems 
Proven experience leading data engineering teams or large-scale implementations 
Strong analytical and problem-solving mindset 
Experience working in Agile environments 
Understanding of healthcare or life sciences data ecosystem is a plus 

 

Must Have: (Requirements) 

8–12+ years of experience in Data Engineering 
Strong expertise in Python / SQL / Spark 
Hands-on experience with Cloud Platforms (AWS / Azure / GCP) 
Experience with Data Warehousing solutions (Snowflake, BigQuery, Redshift, Synapse) 
Experience building ETL / ELT pipelines 
Distributed data processing frameworks (Apache Spark, Databricks) 
Data orchestration tools (Airflow, ADF, or similar) 
Strong understanding of data modeling concepts 
Experience with large-scale structured and unstructured datasets 
Version control and CI/CD practices 

Good to have

Experience with Databricks Lakehouse architecture 
Streaming technologies (Kafka, Kinesis, Pub/Sub) 
Exposure to Healthcare / Life Sciences data domains 
Experience supporting AI/ML pipelines 
Containerization (Docker, Kubernetes) 

 

Perks 

Global exposure and career growth opportunities 
Learning & development programs 
Leadership mentoring initiatives 
Flexible and collaborative work environment 

EQUAL OPPORTUNITY

Indegene is proud to be an Equal Employment Employer and is committed to the culture of Inclusion and Diversity. We do not discriminate on the basis of race, religion, sex, colour, age, national origin, pregnancy, sexual orientation, physical ability, or any other characteristics. All employment decisions, from hiring to separation, will be based on business requirements, the candidate’s merit and qualification. We are an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, colour, religion, sex, national origin, gender identity, sexual orientation, disability status, protected veteran status, or any other characteristics.