TixelJobs
L
Legendcareersvia Greenhouse

Lead Data Engineer

Bridgewater, New Jersey, United StatesPosted 1w ago
Data EngineerLeadFull-time

Not sure if you're a good fit?

Upload your resume and TixelJobs AI will compare it against Lead Data Engineer at Legendcareers. Get a match score, missing keywords, and improvement tips before you apply.

Free preview · Your resume stays private

About the Role

Legend Biotech is a global biotechnology company dedicated to treating, and one day curing, life-threatening diseases. Headquartered in Somerset, New Jersey, we are developing advanced cell therapies across a diverse array of technology platforms, including autologous and allogenic chimeric antigen receptor T-cell, T-cell receptor (TCR-T), and natural killer (NK) cell-based immunotherapy. From our three R&D sites around the world, we apply these innovative technologies to pursue the discovery of safe, efficacious and cutting-edge therapeutics for patients worldwide.

 

Legend Biotech entered into a global collaboration agreement with Janssen, one of the pharmaceutical companies of Johnson & Johnson, to jointly develop and commercialize ciltacabtagene autolecuel (cilta-cel). Our strategic partnership is designed to combine the strengths and expertise of both companies to advance the promise of an immunotherapy in the treatment of multiple myeloma.

 

Legend Biotech is seeking a Lead Data Engineer as part of the Information Technology team based in Bridgewater, NJ.

 

Role Overview

We are seeking a Lead Data Engineer to build and operate enterprise-grade data pipelines using Microsoft Azure as the orchestration layer and Snowflake as the enterprise data lake/warehouse. This role focuses on reliable ETL/ELT, push/pull data integration patterns, and scalable platform engineering in a GxP / validated environment.

 

Key Responsibilities

  • The Lead Data Engineer will be responsible for developing and maintaining ETL/ELT pipelines for ingesting data from various sources into our data warehouse.
  • Design and build batch and incremental data pipelines using Azure-native orchestration services to move data into and out of Snowflake.
  • Support push and pull architectures across files, APIs, enterprise applications, and external partners.
  • Develop curated, consumption-ready datasets in Snowflake using standardized, reusable patterns.
  • Implement data quality, and reconciliation controls within pipelines.
  • Follow CI/CD and controlled deployment practices across Dev / QA / Prod environments.
  • Ensure solutions meet GxP expectations for data integrity, traceability, auditability, and change control.
  • Partner with Quality, Validation, and platform teams to support compliance and audit readiness.
  • Data Catalog, Metadata & Governance Enablement:
    • Publish and maintain data assets, schemas, and lineage in the enterprise data catalog.
    • Partner with Data Governance and Business teams to support certified datasets, ownership, and usage transparency.
  • Work with an end-to-end ownership mindset, innovate and drive initiatives through completion.
  • Optimize data storage and retrieval to ensure efficient performance and scalability.
  • Collaborate with data architects, data analysts and data scientists to understand their data needs and ensure that the data infrastructure supports their requirements.
  • Ensure data quality and integrity through data validation and testing.
  • Implement and maintain security protocols to protect sensitive data.
  • Stay up-to-date with emerging trends and technologies in data engineering and analytic.
  • Community lead to enable adoption of data and technology strategy.
  • Knowledgeable in evolving trends in Data platforms and Product based implementation.
  • Comfortable working in a fast-paced environment with minimal oversight.
  • Prior experience working in an Agile/Product based environment.
  • Data engineering, pipelines, AI/ML development, requirements gathering with Business Partners.
  • Technical delivery execution (build, test, deploy).
  • Technical estimates and feasibility.
  • Resource planning within Data & AI team.
  • Share