Senior Machine Learning Engineer

PartnerOne • Poland
Remote
Apply
AI Summary

PartnerOne is seeking a Senior Machine Learning Engineer to build and run large-scale data, machine learning, and agentic systems. The ideal candidate will have strong experience with distributed data processing, machine learning systems, and cloud services. They will work closely with product and customer teams to drive revenue and implement robust models.

Key Highlights
Build and run large-scale data, machine learning, and agentic systems
Implement and integrate large-scale, agent-based systems
Establish observability for pipelines, models, and agents
Key Responsibilities
Take ownership of the end-to-end AI/ML lifecycle
Implement and integrate large-scale, agent-based systems
Establish observability for pipelines, models, and agents
Technical Skills Required
Scala Python Spark AWS Sagemaker / Bedrock Kubernetes
Benefits & Perks
Fully remote
Strong communication abilities
Experience with cloud services across data, compute, and ML
Nice to Have
Startup experience or growing projects from 0 to production in a larger org
Experience with large geospatial datasets, formats, and indexing strategies
Experience building operational AI agents that work at scale

Job Description


About SafeGraph

SafeGraph is a Data as a Service (DaaS) company with one focus: curating the most accurate, precise, and fresh points of interest (POI) database on the planet. We provide product builders, data scientists, and analytics teams with the location data they need to power site selection, transaction enrichment, advertising audiences, competitive intelligence, and more.

Our customers include companies like Plaid, Mapbox, Clear Channel — spanning fintech, retail, real estate, adtech, logistics, and government. We're fully remote, lean by design, and serious about data quality.

The Role

You'll be a generalist responsible for building and running large-scale data, machine learning, and agentic systems. The focus is operational ML/AI, including agentic systems and geospatial data pipelines. You should be comfortable owning the full lifecycle: from data ingestion and distributed processing to model development, deployment, and monitoring. This role requires the ability to iterate quickly from initial concept to a robust, production-ready solution.

Key Responsibilities

  • Take ownership of the end-to-end AI/ML lifecycle, with a strong focus on dealing with complex and messy data, thorough evaluation of different approaches, and successfully deploying robust models, and handling cost vs performance tradeoffs
  • Implement and integrate large-scale, agent-based systems with access to external systems, building these solutions from the ground up and integrating them with our existing infrastructure
  • Establish observability for pipelines, models, and agents (metrics, tracing, alerting)
  • Collaborate with product and customer teams to drive revenue

Requirements

  • Strong experience with distributed data processing, particularly Spark and SQL
  • Proven expertise in building production machine learning systems, including working with large, wide datasets, effective training, deployment, and monitoring
  • Experience designing and deploying task-oriented AI agents and working with coding agents
  • Experience working with cloud services across data, compute, and ML
  • Strong communication abilities, including code architecture and documentation, at a level where any technical team member can troubleshoot and contribute easily

Languages: Scala, Python

Tools / Frameworks: Spark, AWS Sagemaker / Bedrock, Kubernetes

Nice to Haves

  • Startup experience or growing projects from 0 to production in a larger org
  • Experience with large geospatial datasets, formats, and indexing strategies
  • Experience building operational AI agents that work at scale (millions of separate, complex tasks including web research)
  • Experience with fine-tuning, distilling, and self-hosting LLM models
  • Experience in traditional ML, with a focus on working with messy data and robust evaluation of model approaches
  • Proficiency with CI/CD, infrastructure as code, and containerization

What Success Looks Like

  • ML/AI models deployed with robust monitoring and significant customer impact
  • Agentic workflows improving internal/external operations
  • Infrastructure that is stable, observable, and automated
  • Successful iteration and delivery of new ML/AI products from concept to production
  • Ability to contribute to existing geospatial pipelines directly or through the use of AI

Similar Jobs

Explore other opportunities that match your interests

Artificial Intelligence Engineer

Machine Learning
•
7h ago
Visa Sponsorship Relocation Remote
Job Type Full-time
Experience Level Mid-Senior level

house of creators

Germany

Senior Google Cloud AI/ML Expert

Machine Learning
•
1d ago
Visa Sponsorship Relocation Remote
Job Type Contract
Experience Level Mid-Senior level

planbnext

India

Senior Machine Learning Engineer

Machine Learning
•
1d ago
Visa Sponsorship Relocation Remote
Job Type Full-time
Experience Level Mid-Senior level

coody

Sweden

Subscribe our newsletter

New Things Will Always Update Regularly