Software Engineer - ML Platform
TLDR
Contribute to the ML Platform team by developing observable systems and tools that enhance machine learning product efficiency and support data science teams.
The ML Platform team at Veriff builds the foundation for rapid, compliant, and reliable iteration on machine learning products. We provide the scalable, observable, and user-friendly systems required to manage data, train models, evaluate performance, and deploy models at scale.
Having already established our core platform capabilities, we are now entering a high-growth phase focused on systemic excellence: institutionalizing world-class observability, optimizing for cost-efficiency, and radicalizing our experimentation speed. Your role will help us bridge the gap between architectural vision and a seamless developer experience for our data science teams.
You’ll help us enable ML innovation by:
- Implementing Observability Frameworks: Building the tools and templates that provide visibility into model performance, data drift, and training statistics, ensuring our continuous retraining loops are robust.
- Engineering for Efficiency: Developing systems to track and optimize compute costs and training performance, allowing us to scale our ML efforts sustainably.
- Building Experimentation Tooling: Executing on the roadmap for internal tools that enable Data Scientists and ML Engineers to iterate and deploy experiments with minimal friction.
- Developing SaaS-grade ML Services: Writing high-quality, maintainable Python code to build and automate services that sit at the core of our ML lifecycle.
- Bridge-Building: Working alongside our Staff Engineer to implement architectural designs and collaborating with SRE/DevXP teams to ensure our solutions are production-ready and easily managed.
You are the right future Veriffian for the job if you have:
- 3+ years of experience in software or ML engineering, specifically building tools that support the ML lifecycle (MLOps).
- Strong Python skills with experience in building internal APIs or automation services.
- Hands-on experience with the open-source ML stack (e.g., MLflow, Kubeflow, Ray, or Prometheus/Grafana for ML monitoring).
- A "Product" mindset for internal tools: You care about the developer experience of the Data Scientists using your platform.
- Experience with SQL and Data Engineering (e.g., Snowflake, Spark, or dbt) to understand how data flows into our training pipelines.
- A skeptical, first-principles approach to engineering—you prefer understanding the "why" behind a system rather than just following a vendor's tutorial.
- Flexibility to work from home
- Stock options that ensure your share in our success
- Extra recharge days on top of your annual vacation
- Comprehensive relocation support to Estonia or Spain
- Extensive medical, dental, and vision insurance to ensure you’re feeling great physically and mentally
- Learning and Development & Health and Sports budget that you are free to tailor to your own needs
- Four weeks of fully paid sabbatical leave after reaching your 5th work anniversary
Benefits
Education Stipend
Learning and Development & Health and Sports budget that you are free to tailor to your own needs
Flexible Work Hours
Flexibility to work from home
Health Insurance
Extensive medical, dental, and vision insurance to ensure you’re feeling great physically and mentally
Relocation support
Comprehensive relocation support to Estonia or Spain
Paid Parental Leave
Four weeks of fully paid sabbatical leave after reaching your 5th work anniversary
Paid Time Off
Extra recharge days on top of your annual vacation
Veriff is an identity verification platform that empowers innovative organizations to connect with honest individuals by validating over 10,000 government-issued documents from more than 190 countries. With a diverse team and a focus on building trust online, we enable businesses to securely verify identities at scale, ensuring a safer digital environment.