Staff Data Engineer - Emerald

H1

H1

Software Engineering, Data Science

New York, NY, USA

USD 170k-190k / year + Equity

Posted on Jun 4, 2026
At H1, we believe access to the best healthcare information is a basic human right. Our mission is to provide a platform that can optimally inform every doctor interaction globally. This promotes health equity and builds needed trust in healthcare systems. To accomplish this our teams harness the power of data and AI-technology to unlock groundbreaking medical insights and convert those insights into action that result in optimal patient outcomes and accelerates an equitable and inclusive drug development lifecycle. Visit h1.co to learn more about us.

Data Engineering is responsible for the development and delivery of our most important asset - our data. Looking across thousands of data sources from across the globe, the data engineering team is responsible for making sense out of that data to create the world's most extensive and comprehensive knowledge base of healthcare stakeholders and the ecosystem they influence. It is our job to ensure that only accurate, normalized data flows through to our customers, and at a velocity that keeps up with the changes in the real world. As we rapidly expand the markets we serve and the breadth and depth of data we want to collect for our customers, the team must grow and scale to meet that demand.
WHAT YOU'LL DO AT H1
As a Staff Data Engineer on the Emerald team, you will play a critical role in shaping the architecture, scalability, and technical direction of H1’s healthcare entity resolution platform. EMERALD is responsible for linking large-scale external healthcare datasets, including PubMed, clinical trials, conferences, ct.gov, and web-collected data to H1’s canonical physician and organization profiles.

This role sits at the intersection of distributed data engineering, entity matching, identity resolution, and large-scale healthcare data processing. You will lead a small team of engineers while remaining deeply hands-on technically, owning the systems and pipelines powering automatching, grouping logic, identity mapping, deduplication, and enrichment workflows processing tens of millions of records.

You will partner closely with Product, AI/ML, Analytics, and Engineering teams to improve platform accuracy, scalability, reliability, and operational efficiency across one of H1’s most critical data platforms.

You will:
- Lead the design, optimization, and scalability of distributed Spark/PySpark pipelines powering entity resolution and large-scale healthcare data processing.
- Own systems supporting automatching, identity mapping, grouping logic, deduplication, enrichment, and auto-approval workflows across healthcare provider and organization datasets.
- Build and maintain scalable processing frameworks for PubMed, clinical trial, ct.gov, conference, and other healthcare data sources.
- Drive infrastructure optimization initiatives focused on improving throughput, runtime, observability, and cloud compute cost efficiency.
- Partner closely with AI/ML teams to integrate matching and resolution models into EMERALD and improve matching precision and recall.
- Lead complex technical initiatives from architecture and design through deployment, monitoring, and long-term production support.
- Serve as a technical leader and mentor across the team through code reviews, technical guidance, and engineering best practices.
- Collaborate directly with Product and business stakeholders to align technical solutions with operational and customer needs.
- Support production operations, incident response, troubleshooting, and ongoing platform reliability.

ABOUT YOU
You are an experienced data engineer with deep expertise building and optimizing distributed data systems in cloud-native environments. You thrive solving complex scalability and performance challenges across high-volume data processing systems and enjoy operating in highly technical, fast-paced engineering environments.

You bring strong hands-on engineering expertise across distributed computing, large-scale data processing, and infrastructure optimization while also helping guide technical direction and mentor engineers across the organization.

- Deep expertise with distributed data processing frameworks such as Apache Spark and Hadoop, particularly within AWS environments.
- Strong proficiency in Python (PySpark), Scala, Java, or other modern programming languages used for large-scale distributed processing.
- Experience building scalable ETL/ELT frameworks across both batch and streaming architectures.
- Experience with entity resolution, identity mapping, automatching, deduplication, or large-scale matching systems is strongly preferred.
- Strong understanding of distributed file formats including Apache Parquet and Apache AVRO.
- Experience with streaming technologies such as Kafka, Spark Streaming, or KSQL.
- Strong grasp of software engineering fundamentals including distributed systems, data structures, concurrency, and system design.
- Experience performing root cause analysis across large-scale distributed systems and complex data pipelines.
- Ability to write clean, maintainable, modular, and production-grade code.
- Experience improving performance, scalability, observability, and infrastructure efficiency within distributed systems.
- Strong communication and collaboration skills across both technical and non-technical stakeholders.
- Familiarity with modern development and infrastructure tooling including Git, CI/CD pipelines, Docker, Kubernetes, Terraform, Argo, Hudi, and JIRA.

REQUIREMENTS
- 8+ years of experience building and maintaining large-scale distributed data systems and pipelines.
- Demonstrated technical leadership experience mentoring engineers and driving complex technical initiatives.
- Extensive experience with Apache Spark and AWS-based big data technologies including EMR, S3, and distributed compute environments.
- Strong coding experience in Python (PySpark), Scala, Java, or equivalent languages used for distributed processing systems.
- Experience optimizing large-scale Spark workloads for performance, scalability, and infrastructure cost efficiency.
- Experience with streaming and event-driven architectures using technologies such as Kafka or Spark Streaming.
- Experience with orchestration and lakehouse technologies such as Argo and Hudi or comparable platforms.
- Experience with containerization and infrastructure technologies such as Docker, Kubernetes, and Terraform.
- Experience working with relational or distributed databases such as PostgreSQL or Redshift.
- Proven ability to operate effectively within highly scalable, production-grade distributed systems.
- Experience working with healthcare, life sciences, Real World Evidence (RWE), or large-scale healthcare datasets is strongly preferred.
COMPENSATION
This role pays $170,000 to $190,000 per year, based on experience, in addition to stock options.

Anticipated role close date: 8/1/2026

H1 OFFERS
- Full suite of health insurance options, in addition to generous paid time off
- Pre-planned company-wide wellness holidays
- Retirement options
- Health & charitable donation stipends
- Impactful Business Resource Groups
- Flexible work hours & the opportunity to work from anywhere
- The opportunity to work with leading biotech and life sciences companies in an innovative industry with a mission to improve healthcare around the globe
H1 is proud to be an equal opportunity employer that celebrates diversity and is committed to creating an inclusive workplace with equal opportunity for all applicants and teammates. Our goal is to recruit the most talented people from a diverse candidate pool regardless of race, color, ancestry, national origin, religion, disability, sex (including pregnancy), age, gender, gender identity, sexual orientation, marital status, veteran status, or any other characteristic protected by law.
H1 is committed to working with and providing access and reasonable accommodation to applicants with mental and/or physical disabilities. If you require an accommodation, please reach out to your recruiter once you've begun the interview process. All requests for accommodations are treated discreetly and confidentially, as practical and permitted by law.