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Join Ocrolus as a Staff Machine Learning Engineer, where you will take on high-impact responsibilities in shaping our machine learning infrastructure. Drive innovation in ML technology for fintech applications and contribute to a mission that enhances lending processes. Collaborate across teams, mentor engineers, and foster a culture of excellence and curiosity while achieving measurable impacts on real-world applications.
Come build at the intersection of AI and fintech. At Ocrolus, we’re on a mission to help lenders automate workflows with confidence—streamlining how financial institutions evaluate borrowers and enabling faster, more accurate lending decisions.
Our AI-powered data and analytics platform is trusted at scale, processing nearly one million credit applications every month across small business, mortgage, and consumer lending. By integrating state-of-the-art open- and closed-source AI models with our human-in-the-loop verification engine, Ocrolus captures data from financial documents with over 99% accuracy. Thanks to our advanced fraud detection and comprehensive cash flow and income analytics, our customers achieve greater efficiency in risk management, and provide expanded access to credit—ultimately creating a more inclusive financial system.
Trusted by more than 400 customers—including industry leaders like Better Mortgage, Brex, Enova, Nova Credit, PayPal, Plaid, SoFi, and Square—Ocrolus stands at the forefront of AI innovation in fintech. Join us, and help redefine how the world’s most innovative lenders do business.
Summary
As a Staff Machine Learning Engineer at Ocrolus, you’ll be a hands-on technical leader who helps shape the future of our machine learning systems. This is a high-impact role, entailing strategic responsibility in determining the company's Machine Learning infrastructure, system architecture, and deployment protocols. You will collaborate across teams to design, scale, and refine models that power core features — from document understanding and OCR to complex NLP and decision intelligence. This role involves the design of scalable Machine Learning solutions, mentorship of engineering personnel, and contribution to the technical and organizational advancement of the AI stack. The ideal candidate will excel in addressing complex challenges, providing guidance to others, and spearheading innovation on a large scale.
What you'll do:
Who we're looking for: (Skill Sets and Qualifications)
Preferred Attributes:
Life at Ocrolus
We’re a team of builders, thinkers, and problem solvers who care deeply about our mission — and each other. As a fast-growing, remote-first company, we offer an environment where you can grow your skills, take ownership of your work, and make a meaningful impact.
Our culture is grounded in four core values:Empathy – Understand and serve with compassion
Curiosity – Explore new ideas and question the status quoHumility – Listen, be grounded, and remain open-minded
Ownership – Love what you do, work hard, and deliver excellence
We believe diverse perspectives drive better outcomes. That’s why we’re committed to fostering an inclusive workplace where everyone has a seat at the table, regardless of race, gender, gender identity, age, disability, national origin, or any other protected characteristic.
We look forward to building the future of lending together.
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LinkedIn Profile *
This role is based in the US(remote).Would you require visa sponsorship? Please explain employment status. *
Please share your compensation expectation. *
Please mention your earliest availability to join us if shortlisted *
How many years of professional experience do you have deploying machine learning models into production? * Select...
Which of the following frameworks have you used extensively in production ML systems? (Select all that apply) *
PyTorch
TensorFlow
Scikit-learn
XGBoost
None of the above
Which cloud or infrastructure tools have you used for ML model deployment or orchestration? (Select all that apply) *
Docker
AWS (e.g., S3, SageMaker, Lambda)
None
How would you describe your experience with model evaluation and continuous training in production environments? *
I’ve only evaluated models offline or in academic settings
I’ve built and maintained model evaluation pipelines in production
I’ve designed systems for A/B testing, real-time monitoring, and retraining
I haven’t been involved in this directly
Which of the following MLOps tools or practices have you worked with? (Select all that apply) *