opengreenhousefincapital
Software Engineer, Machine Learning Platform
Chime
LocationSan Francisco, CA, USA, San Francisco Office
Last observed2026-07-02 08:33:14.970636
Job idfincapital-chime:greenhouse:8505460002
About the role Chime’s Machine Learning Platform (MLP) team builds and operates the infrastructure, tooling, and developer experience that powers machine learning across the company. We enable data scientists and ML engineers to develop, train, deploy, and monitor models reliably and efficiently. As a Machine Learning Platform Engineer, you will design and build scalable systems that support model training, feature computation, real-time inference, and experimentation. You’ll work at the intersection of distributed systems, cloud infrastructure, and applied machine learning. This role focuses on building robust foundations that allow ML teams to move quickly while maintaining reliability, governance, and cost efficiency. The base salary offered for this role and level of experience will begin at $187,000.00 and goes up to $259,000.00. Full-time employees are also eligible for a bonus, competitive equity package, and benefits. The actual base salary offered may be higher, depending on your location, skills, qualifications, and experience. In this role, you can expect to Design, build, and operate scalable ML infrastructure on AWS Develop distributed training and batch processing systems using Ray Build and maintain infrastructure-as-code using Terraform Support and evolve the feature store and feature pipelines Develop data ingestion and streaming systems (e.g., Kinesis, Kafka, Flink, Spark, or similar technologies) Improve CI/CD workflows for ML models and platform components Enhance observability, reliability, and cost visibility across ML workloads Partner closely with Data Science and ML Engineering teams to improve developer experience Contribute to platform architecture decisions and technical roadmaps Participate in on-call rotations to support production systems To thrive in this role, you have 5+ years of experience in ML infrastructure, platform engineering, or production ML systems Knowledge of the machine learning model development lifecycle, including data preprocessing, model training, evaluation, and deployment Experience with distributed systems, cloud computing, or large-scale data processing Strong foundation in computer science and software engineering principles Deeply interested in the impact and evolution of advanced AI technologies Hands-on experience with CI/CD pipelines, DevOps practices, and infrastructure as code Experience with containerization technologies such as Docker and Kubernetes, and orchestration systems Knowledge of cloud platforms such as AWS and distributed computing frameworks such as Spark and Ray Experience with GPU programming(CUDA) and GPU costs/optimization Strong programming skills in Python, Go, Scala, Java or similar languages Familiarity with infrastructure-as-code (e.g., Terraform, CloudFormation) Solid understanding of software engineering fundamentals (testing, version control, code review, observability) Nice-to-have Experience with distributed compute frameworks such as Ray Experience building or operating a feature store Experience with real-time ML systems or model serving Familiarity with streaming technologies (Kafka, Kinesis, Flink, Spark Streaming, etc.) Experience supporting ML lifecycle workflows (training, evaluation, deployment, monitoring) Knowledge of ML experimentation platforms and model governance practices #LI-GC1 #LI-SF A little about us At Chime, we believe that everyone can achieve financial progress. We created Chime—a financial technology company, not a bank*—on the premise that core banking services should be helpful, easy, and free. Through our user-friendly tools and intuitive platforms, we empower our members to take control of their finances and work towards their goals. Whether it's starting a savings account, purchasing a first car or home, launching a business, or pursuing higher education, we're proud to have helped millions unlock their financial potential. We're a team of problem solvers, dreamers, and builders with one shared obsession: our
This page is generated from the committed OpenOpps static snapshot. Use the source posting or apply link for the employer's current canonical posting state.