Última atualização: 29 de Setembro de 2025

Machine Learning Engineer

🌍 100% Remoto✈️ Vaga internacional💬 Inglês

Via Ashbyhq

Remuneração

$330,000.00 a $440,000.00

BRL / Anual

Sobre

About The Role

As a Machine Learning Engineer, you’ll do more than build models - you’ll design the systems that make fraud detection possible. You’ll work across modeling, data pipelines, and backend systems (Go) to ensure ML models run reliably, efficiently, and at scale.

This is a chance to combine applied ML with large-scale systems engineering, owning end-to-end solutions that tackle high-stakes, ever-evolving challenges.

What You’ll Do

  • Build and optimize data pipelines and backend services to process device and behavioral data in real time.
  • Develop and deploy ML models for fraud detection, ensuring they run reliably and efficiently in production.
  • Turn raw data into production-ready features that feed our fraud detection systems.
  • Collaborate with platform and backend engineers to integrate models seamlessly.
  • Maintain high standards of security, privacy, and compliance.
  • Champion best practices in testing, documentation, and observability.

What You Bring

  • 5+ years in software engineering, with strong backend experience (Go or Python).
  • Hands-on experience with applied ML using large datasets (PyTorch, Scikit-learn, etc.).
  • Strong SQL skills and familiarity with relational and non-relational databases.
  • Experience with end-to-end ML systems: feature pipelines, model deployment, monitoring, and iteration.
  • Excellent communication skills in English, both written and verbal.

Bonus Points

  • Domain knowledge in fraud, risk, or cybersecurity.
  • Familiarity with CI/CD, Docker, Kubernetes and the modern devops framework.
  • Understanding of modern browser APIs and high-entropy data collection techniques.
  • Familiarity with leveraging frontier LLMs for automation.

Outras Informações

Selecionamos as principais informações da posição. Para conferir o descritivo completo, clique em "acessar" 


Hey!

Cadastre-se na Remotar para ter acesso a todos os recursos da plataforma, inclusive inscrever-se em vagas exclusivas e selecionadas!