Machine Learning Engineer

AI overview

Build and productionize machine learning models that optimize operations and drive impactful results in a collaborative, tech-driven environment focusing on financial crime prevention.

ComplyAdvantage Technology

At Comply, we are building cutting-edge solutions that help prevent money flowing to and from bad actors to create a safer world. Your work will allow our customers to find out who is associated with crimes, financial and political risks, what that association is, and when it occurred, and it will dynamically update their state as new information emerges across a huge range of sources.

What you will be doing

As a Machine Learning Engineer, you will 

  • Build/train and productionize machine learning models for your squad
  • Build capabilities to monitor model performance and feature drift
  • Where appropriate re-use public models and techniques such as prompt engineering and RAG to reduce time to value
  • Collaborate with other software engineers in a cross functional team to design and implement intelligent services
  • Design software with scale, transparency and ease of operation in mind, writing maintainable, performant and well-tested code in Python
  • Integrate ML models into new and existing data pipelines to drive positive impacts for CA’s customers, including feature engineering as well as building APIs and consuming and producing event streams as inputs and outputs of models

Our Tech Stack:

  • Our technology stack is designed to run on public cloud architectures, notably AWS and GCP
  • We use Python and Kotlin in the backend and TypeScript, ES6 and React in the frontend
  • We make substantial use of  modern database technologies (eg. Yugabyte) as well as Spark and cloud based object stores for big data processing
  • We also use an event-sourced model powered by Kafka for our communication bus and gRPC for our intra-service communication protocol
  • Our data and AI teams use a wide range of machine learning libraries, large scale hybrid columnar data stores such as Databricks, Spark for stream and big data processing in combination with Kafka, as well as some graph databases
  • We use modern observability solutions (Grafana) and deploy our code using ArgoCD

We have a strong emphasis on engineering excellence and strive to ship the best possible code and the best possible solutions to our customers.

About you:

  • Experience maintaining and scaling machine learning-powered applications in production environments.
  • Experience building scalable backend applications (preferably with Python).
  • A track record of working in multi-disciplinary teams alongside Data Scientists, ML Engineers, and Product Managers.
  • Hands-on experience with cloud platforms (AWS, Azure, or GCP) or with containerized infrastructure (e.g., Kubernetes, Docker, ArgoCD, Argo Workflows).
  • Strong communication skills and a collaborative mindset, with the ability to contribute to system design discussions and mentor more junior engineers.

Nice to have:

  • Experience working with PySpark or other distributed data processing frameworks.
  • Background in building data-intensive applications or distributed systems using map-reduce style architectures.
  • Familiarity with event-driven or microservice architectures.

What’s in it for you? 

  • Equity as we want you to have a part of what we are building 
  • Private medical insurance designed to keep you ensuring peace of mind while you excel in your career
  • Unlimited Time Off Policy- A work-life balance and focus on our well-being are critical to keeping us performing at our best 
  • We embrace a hybrid approach that requires employees to be in the office for two days a week. We strongly believe that this approach fosters collaboration and enables the building of meaningful relationships
  • You will also get a new starter budget to kit out your home office 
  • Opportunity to work on innovative projects with smart-minded people keen to share their knowledge and continuously improve 
  • Annual learning budget (prorated based on start date) to drive your performance and career development 

About us:

Our mission is to empower every business to eliminate financial crime. 

By harnessing AI, a unified platform, and an extensive partner ecosystem, we help customers turn compliance into a catalyst for growth, operational resilience, and enduring regulatory trust.

More than 3,000 enterprises across 75 countries rely on our end-to-end platform and the world’s most comprehensive financial crime risk intelligence. With full-stack agentic automation, we help organizations automate up to 95% of KYC, AML, and sanctions reviews, cut onboarding times by 50%, reduce false positives by 70%, and handle 7x more work with the same staff.

ComplyAdvantage is headquartered in London and has global hubs in New York, Lisbon, Singapore, and Cluj-Napoca. It is backed by Balderton Capital, Index Ventures, Ontario Teachers’ Pension Plan, Goldman Sachs, and Andreessen Horowitz. Learn more about compliance re-engineered for the age of AI at complyadvantage.com.

Perks & Benefits Extracted with AI

  • Flexible Work Hours: We embrace a hybrid approach that requires employees to be in the office for two days a week. We strongly believe that this approach fosters collaboration and enables the building of meaningful relationships
  • Health Insurance: Private medical insurance designed to keep you ensuring peace of mind while you excel in your career
  • Home Office Stipend: You will also get a new starter budget to kit out your home office
  • Learning Budget: Annual learning budget (prorated based on start date) to drive your performance and career development
  • Paid Time Off: Unlimited Time Off Policy- A work-life balance and focus on our well-being are critical to keeping us performing at our best
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