Senior Data Engineer

Inpart
Sheffield
1 week ago
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Inpart is the industry-leading provider of partnering technology solutions tailored to the biopharma realm. Serving most of the globe's top-tier pharmaceutical enterprises and emerging biotechs, our platform champions streamlined partnerships. Our unique strength is found in our diverse and international team, with over 35 nations represented. We are united by our core values: care, diversity, and excellence.

Overview

We are looking for a Senior Data Engineer to join the team that owns our core data product, the platforms and infrastructure that support it, and the data services consumed by our customers.

You will work closely with other engineers, product stakeholders, and customers to design, build, and operate production-grade data systems, focusing on reliable ingestion, transformation, and exposure of data through APIs and product integrations.

As a senior member of the team, you will be expected to help set technical standards, improve data quality and operational reliability, and contribute to shared ownership of systems from design through to reliable operation in production environments.

What you’ll do
  • Design, build, and maintain data ingestion pipelines
  • Develop and operate CDC and event-driven data pipelines where appropriate
  • Own and evolve our Snowflake medallion architecture (Bronze / Silver / Gold)
  • Build and maintain dbt models, including macros and incremental transformations
  • Create, manage, and optimise Airflow DAGs using AWS Managed Airflow (MWAA)
  • Implement data quality checks, validation, and alerting
  • Ensure pipelines are resilient, observable, and recover cleanly from failure
  • Contribute to Terraform-managed AWS infrastructure
What we’re looking for
  • Proven experience designing, building, and operating production-grade data pipelines
  • Hands-on experience with Snowflake, dbt, and Airflow
  • A demonstrable understanding of data quality, observability, and operational reliability
  • A collaborative mindset with a strong sense of ownership and accountability for systems used by customers
Qualifications
  • Significant experience working as a Data Engineer in a production environment
  • Experience owning data systems used directly by customer-facing products
  • Experience working in an AWS-based data platform
  • Experience contributing to infrastructure-as-code


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