Medeloop
Medeloop25d ago

Senior AI Data Engineer– Agentic Healthcare Platform

United StatesSan Franciscosenior
Data ScienceOtherData EngineeringData EngineerAi Data EngineerHealthcareData & AI
0 views0 saves0 applied

Quick Summary

Key Responsibilities

curating, extending, and evolving it through new concepts, derived variables,

Technical Tools
Data ScienceOtherData EngineeringData EngineerAi Data EngineerHealthcareData & AI

This is a full-ownership data engineering role at the center of Medeloop's AI platform. You won't be maintaining pipelines someone else built,  you'll be architecting the data backbone that powers AI agents doing real operations at scale. You'll work directly with data scientists, AI engineers, and product teams to turn raw, complex healthcare data into the clean, structured, semantically-rich foundation our AI scientists depend on. Your work shows up in customer products and research outcomes, not internal dashboards that no one reads.Candidates who currently perform these tasks exclusively through manual processes are unlikely to be suitable for this role. We require an individual who has already adopted and integrated AI techniques to enhance operational velocity, rather than one who is contemplating future experimentation.If you want to build something that genuinely changes how medical research gets done, this is the role.

  • The healthcare data lake: curating, extending, and evolving it through new concepts, derived variables, and data models that directly inform our AI engines and customer products
  • AI-native data workflows: designing and operating AI-powered pipelines (using tools like Claude Code and agent frameworks) to automate harmonization, cleaning, quality checks, and summarization at scale
  • NLP and semantic infrastructure: building pipelines for entity extraction, concept normalization, embedding-based retrieval, and semantic search that power the AI Scientist platform
  • Novel data extraction approaches: experimenting with and building new methodologies for working with unstructured clinical data, not just applying existing playbooks
  • Research-grade data products: delivering analytical samples, cohorts, and final datasets that withstand scientific scrutiny and are actively used by researchers and customers
  • Data governance and observability protocols: including access controls, PHI/PII handling, data classification, compliance, monitoring, alerting, data freshness, and comprehensive documentation to enable self-service capabilities.
  • 3+ years of relevant data engineering or data management within an analytics-driven organization, with end-to-end ownership from raw ingestion to final data product
  • Deep hands-on experience with healthcare CDMs (OMOP, FHIR, PCORnet) — designing or extending them, not just querying
  • Knowledge of medical ontologies: UMLS, SNOMED CT, RxNorm
  • Experience with big data, data pipelines and tooling that support retrieval-augmented generation (RAG), vector integrations, embedding workflows, and other AI/ML workloads. Experience in big data tooling such as Spark, Iceberg, EMR
  • Fluent in Python and SQL; comfortable across structured and unstructured data
  • Proven NLP experience: semantic search, entity recognition, concept normalization, embedding pipelines
  • Strong grasp of inferential statistics and cohort methodology to be a real partner to data scientists and customers (as part of onboarding)
  • Experience contributing to an AI/ML product, especially in automated research or scientific discovery
  • Experience mentoring other engineers and providing technical leadership

Nice to Have

~1 min read
  • Multi-cloud experience (AWS, Azure, GCP)
  • Authorship or contribution to peer-reviewed publications or technical reports
  • Ownership from day one: small team, high-trust, no layers between your work and its impact
  • Technically ambitious: you'll build AI-powered workflows, not just support them
  • Real-world stakes: your work accelerates drug development, addresses health equity, and improves clinical research for institutions that matter
  • Strong foundation: Series A, top-tier investors, and a data asset (200M+ patient records) that most companies spend years trying to build

Listing Details

Posted
March 30, 2026
First seen
March 30, 2026
Last seen
April 25, 2026

Posting Health

Days active
25
Repost count
0
Trust Level
23%
Scored at
April 25, 2026

Signal breakdown

freshnesssource trustcontent trustemployer trust
Medeloop
Medeloop
greenhouse
Employees
30
Founded
2021
View company profile

1 other job at Medeloop

View all →

Explore open roles at Medeloop.

Newsletter

Stay ahead of the market

Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.

A
B
C
D
Join 12,000+ marketers

No spam. Unsubscribe at any time.

MedeloopSenior AI Data Engineer– Agentic Healthcare Platform