We are seeking a Staff MLE to work onsite in Boston minimum 3 days a week, per company requirement. Please apply if you are a local candidate.
Centum Search is representing a Series A fintech startup building products that help businesses and consumers make smarter financial decisions. Our platform leverages data and machine learning to improve how financial systems detect risk, personalize experiences, and automate decision-making.
We are a small, fast-moving team focused on building high-quality products and scalable systems. As we continue to grow, we are investing in machine learning capabilities that will power core features across our platform.
We are looking for a Machine Learning Engineering Lead to build and scale our machine learning capabilities. This person will be responsible for designing, developing, and deploying machine learning systems that directly impact core product functionality.
As one of the early ML leaders at the company, you will work closely with engineering, product, and data teams to define the roadmap for machine learning and establish best practices for model development and deployment.
This role is hands-on, with the opportunity to shape the long-term ML architecture and help build the team over time.
Collaborate with product and engineering teams to integrate machine learning into customer-facing features
Establish best practices for experimentation, model monitoring, and model lifecycle management
Design the architecture for ML infrastructure and data pipelines as the company scales
Mentor engineers and contribute to the growth of the ML function
Stay current with advancements in applied machine learning and fintech data applications
6–10+ years of experience in machine learning engineering, applied ML, or related fields
Strong programming experience in Python
Experience with ML frameworks such as PyTorch, TensorFlow, or Scikit-learn
Experience deploying machine learning models into production environments
Strong experience working with large datasets and building data pipelines
Ability to operate in a fast-paced startup environment with high ownership
Experience in fintech, payments, lending, or financial risk modeling
Experience building models for fraud detection, credit risk, or transaction monitoring
Experience with cloud platforms such as AWS, GCP, or Azure
Familiarity with real-time data systems and event-driven architectures
Experience helping build or scale ML teams