ML DevOps Engineer
Perpay - Career's Page - philadelphia, PA
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About Us: We believe everyone deserves a chance to improve their financial future. We're dedicated to building simple and inclusive financial products that help our members create healthy habits and achieve economic stability. Some things we're excited about: $500 million in spending power used by our members Increasing members' credit by 36 points (on average) within the first 3 months Backed by First Round Capital and JP Morgan Products we've built to make an impact: Perpay Marketplace: Combines interest-free payments and modern e-commerce to reduce cost of ownership and promote healthy repayment behavior. Perpay+: Leverages Marketplace repayment history to help members monitor and build credit with all 3 credit bureaus. Perpay Credit Card: Expands access to the flexibility and benefits of a World Mastercard by removing common barriers like high security deposits and low approval odds. The Perpay team is a motivated group of creative problem solvers who love getting things done and making an impact. Located in Center City, Philadelphia, our one-of-a-kind space promotes a collaborative work environment, unites our team, and feels like a home away from home. About the Role: As an ML DevOps Engineer at Perpay, you will play a critical role in refining and managing our real-time machine learning model deployments. You'll be working closely with both the Data Science and Data Engineering teams to enhance model reliability, scalability, and integration with the Perpay app, collaborating with the Software Engineering team to ensure seamless deployment in production environments. The primary focus of the role is to optimize and automate the deployment pipeline for real-time machine learning models, ensuring stability, scalability, and integration with our systems. In addition to your work on model deployments, you will also enhance the data infrastructure, leveraging your DevOps expertise to improve the efficiency and quality of data operations. Why You'll Love It Here: Impactful Work: Your contributions will directly affect the lives of our customers by creating data-driven solutions that support financial inclusivity Cutting-Edge Technology: Work with the latest tools and technologies in data Career Growth: Opportunities for professional development and advancement within a rapidly growing company Collaborative Culture: Join a supportive team that values diverse perspectives and innovative ideas Our greatest strength is our people and we'd love for you to be one of them! Responsibilities: Collaborate with the Data Science and Software Engineering teams to design, implement, and maintain real-time machine learning model deployments Build and manage CI/CD pipelines using tools like Travis, Docker, and Terraform for automated testing, deployment, and monitoring of ML models Automate the creation of Docker images for training pipelines, deployable APIs, and batch prediction models Optimize and enhance the data infrastructure in collaboration with the Data Engineering team, focusing on scalability, performance, and security Develop monitoring solutions for model performance and data pipelines, ensuring high availability and fault tolerance Collaborate with the Software Engineering team to deploy models integrated into the Perpay app and ensure they meet production-level SLAs Implement best practices for model versioning, retraining workflows, and deployment governance Drive the adoption of cloud-native solutions on AWS (EC2, ECS, ECR, Redshift) to improve the efficiency of model deployment and data operations Ensure seamless integration of data science models with the broader data ecosystem at Perpay, including ETL workflows and batch processes Serve as the subject matter expert on machine learning infrastructure and operations, providing guidance to the Data Science and Data Engineering teams What You'll Bring: Bachelor's degree or higher in a quantitative/technical field (Computer Science, Engineering, Mathematics, Chemistry, or related field) 3+ years of experience working with machine learning infrastructure, model deployments, and cloud-based systems Strong experience with AWS services (EC2, ECR, ECS, Redshift) and containerization tools like Docker Experience building and managing CI/CD pipelines using tools like Travis or Jenkins Deep knowledge of DevOps best practices, infrastructure as code (Terraform), and cloud-native deployment Proficiency in Python and familiarity with standard ML frameworks (scikit-learn, PyTorch, TensorFlow, PyMC, etc.) Familiarity with data engineering principles, particularly around managing batch processing and ETL pipelines Strong communication skills to articulate complex technical concepts and collaborate with cross-functional teams Experience working in fast-paced environments and managing multiple projects Hey, we know not everybody checks all the boxes, so if you're interested, please apply because you could be just what we're looking for! What We'll Bring: Competitive salary + company equity 401k with company match Medical / Dental / Vision insurance Flexible Spending Account (FSA) Relocation assistance Pre-tax commuter benefit Student loan repayment match Gym subsidy with City Fitness Cell phone plan Paid parental leave Unlimited PTO Additional Perks: Opportunity to gain experience at one of the fastest-growing financial startups in the country Work on both e-commerce & fintech customer-facing products Collaborate cross-functionally with product, design, marketing, operations, data teams, and more This is not a remote opportunity; it is 100% onsite (#LI-Onsite) (#LI-TH1) (#LI-AK1) Perpay is proud to be an equal opportunity employer. We value diversity in all its forms and are committed to creating an inclusive environment. We do not discriminate on the basis of race, religion, color, national origin, gender identity, sexual orientation, sex (including pregnancy), marital status, political affiliation, age, veteran status, disability status or other non-merit factor. Please contact us at to request accommodation.
Created: 2024-11-05