Junior Data Engineer
Hilo By Aktiia
Neuchâtel, Switzerland
yesterday
Role details
Contract type
Permanent contract Employment type
Full-time (> 32 hours) Working hours
Regular working hours Languages
English, French Experience level
Junior Compensation
CHF 208KJob location
Neuchâtel, Switzerland
Tech stack
Algorithm Design
Amazon Web Services (AWS)
Data analysis
Clinical Data Repository
Code Review
Databases
Continuous Integration
Information Engineering
Data Infrastructure
Data Integration
ETL
Data Transformation
EHealth
Python
Machine Learning
Software Engineering
SQL Databases
Parquet
Data Logging
Cloud Platform System
Data Ingestion
Spark
GIT
Data Lake
Information Technology
Data Management
Meditech
Data Pipelines
Databricks
Job description
- Data Ingestion & Lakehouse Development: Design, build, and maintain data ingestion and processing pipelines within Aktiia's Databricks-hosted medallion Lakehouse, working under senior guidance while gradually taking on more ownership.
- Clinical & Legacy Data Integration: Take an active role in ingesting, centralizing, and documenting clinical data currently spread across EDC platforms such as Castor and RedCap, databases, standalone archives, and other historically grown sources.
- Data Exploration & Practical Data Archaeology: Work hands-on with unfamiliar and sometimes messy datasets, identify structures and inconsistencies, and turn unstructured situations into reliable, usable data assets.
- Pipeline Development & Preprocessing: Build preprocessing and ETL/ELT pipelines that provide clean, structured, and model-ready datasets for Algorithm Development, Core Tech, Machine Learning, and Data Science teams.
- Data Quality, Validation & Documentation: Define and apply practical standards for data quality, validation, traceability, and documentation - especially for sensitive and clinically relevant datasets.
- Observability & Engineering Practices: Implement logging, validation checks, alerting, and basic observability for new pipelines, while contributing to shared codebase practices such as Git, code reviews, CI/CD, and testing.
- Platform Scaling & Collaboration: Support the evolution of the lakehouse from selected technical use cases toward a company-wide data infrastructure, working closely with the Senior Data Engineer, ML Engineers, Data Scientists, and cross-functional stakeholders.
Requirements
- Academic Background: Bachelor's degree or higher in Computer Science, Data Engineering, Data Science, Software Engineering, or a related technical field.
- Professional Expertise: At least 1+ year of practical post-study experience in data engineering, data infrastructure, data ingestion, or a similar hands-on technical role. You may still be early in your career, but you have already worked with real data pipelines, production-oriented data workflows, or collaborative data platforms.
- Technical Experience: You have solid hands-on experience with Python and SQL and bring practical experience with Databricks. You are familiar with cloud environments - ideally AWS. You understand the basics of ETL/ELT pipeline design, data ingestion patterns, and data modelling, and you have worked with shared codebases using Git, code reviews, CI/CD, or testing practices. Experience with Spark, Delta Lake, or Parquet is a strong plus.
- Industry Fit: Ideally, you have gained experience in a start-up, scale-up, or technically demanding environment where you worked hands-on across the data pipeline. Exposure to regulated or data-sensitive industries such as MedTech, Pharma, FinTech, or healthcare is a plus, especially when it comes to data quality, validation, and documentation.
- Language Skills: English at a highly proficient level is a must. French is advantageous.
- Personality: A curious, pragmatic, and hands-on problem-solver, you enjoy bringing structure into complex data environments. You work independently, ask the right questions, stay well organized, and collaborate openly with Data Engineering, Data Science, ML, Algorithm, Core Tech, and Product stakeholders. You are based in Switzerland and are comfortable working in a hybrid setup with one day per week regular presence in Neuchâtel.
We're looking for a pragmatic, hands-on data builder who enjoys working with real-world clinical and company data - someone who is excited to bring structure into scattered datasets, build reliable pipelines, and help create a modern data foundation for advanced ML and digital health applications.
Benefits & conditions
Why Join Us?
- Hilo by Aktiia is becoming one of the most important med-tech companies, and you can be part of this exciting story.
- Work on a mission that matters: transforming cardiovascular health at global scale.
- Be part of a high-impact, fast-growing, and venture-backed scale-up company.
- Collaborate with a diverse, passionate, and talented team.
- Competitive compensation and other benefits (depending on location).
About the company
High blood pressure is the world's most common disease, causing 18 million deaths each year. At Hilo by Aktiia, our vision is a world where no lives are lost or damaged from the effects of high blood pressure, and our mission is to build the technology that helps people control it.
We are a venture-backed scale-up that has raised over $96M. Our technology, rooted in 18 years of research at the Swiss Center for Electronics and Microtechnology (CSEM), is the world's only medically accurate, cuffless, continuous blood pressure monitor for daily life. It is CE Marked as a Class IIa medical device and was FDA-cleared in 2026 as the first cuffless OTC blood pressure monitor in the United States. We are remote-first, headquartered in Neuchâtel, Switzerland.
Role Overview
Imagine using your data engineering skills to improve the way cardiovascular health is monitored and managed. Hilo by Aktiia is redefining blood pressure monitoring through AI-driven optical technology built on more than 20 years of research at the Swiss Center for Electronics and Microtechnology (CSEM). Their solution combines a wearable device (Hilo), a mobile app, and a cloud-based platform for healthcare professionals - empowering users and physicians with continuous, actionable insights into blood-pressure patterns. With more than 200,000 users, over $120M in funding, and a CE-certified medical device already available across several markets, Aktiia is continuing to scale its technology, product ecosystem, and international presence.
As Aktiia expands its data capabilities, we're looking for a Junior Data Engineer who will help scale a Databricks-based medallion Lakehouse from a primarily R&D/Core Tech setup into a broader company-wide data platform. Working closely with and learning directly from an experienced Senior Data Engineer, you will support the ingestion, centralization, documentation, and validation of clinical, legacy, and operational data. Your work will help transform complex and sometimes messy data sources into clean, reliable, and model-ready pipelines used by Data Science, ML, Algorithm, and Core Tech teams.