Machine Learning Engineer
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Sign up to see compensation estimate### Who you are
- 6+ years of industry experience in ML Engineering in cloud-native environments
- In-depth knowledge of Python (required), Javascript/Typescript (nice to have), or other modern languages in the ML domain
- Strong experience with infrastructure and DevOps tools such as Kubernetes, Docker, and Ansible
- Strong knowledge of cloud computing platforms such as AWS (preferable), GCP, and Azure
- Experience architecting distributed systems, storage systems, and databases
- Experience working with machine learning frameworks such as PyTorch and LangGraph
- Experience with Airflow (preferable) or other orchestration tools
- Experience with infrastructure-as-code tools such as CDK, Terraform, Pulumi, Cloud Formation, etc
- Experience with monitoring, tracing, and logging tools such Cloudwatch, NewRelic, Grafana, etc
- Excellent communication skills, with a strong sense of ownership and a systematic approach to problem-solving
- Proven ability to manage and lead active incidents, address what caused them, and establish systems to avoid them in the future via blameless postmortems
- Experience working with productionizing or optimizing inference of LLMs or other NLP models
- Experience with the Ray ecosystem
- Experience with PostgreSQL
- Experience with data analytics tools like Hex, Amplitude, Retool, etc
- Experience working at a fast-growing startup
- Experience in a HIPAA-compliant environment
### What the job involves
- We’re looking for a Machine Learning Engineer to join our MLOps team to help build and maintain the infrastructure that supports our cutting-edge AI research and products
- In this role, you’ll develop tools and systems that accelerate language model R&D and serve those models to radiologists, ultimately improving clinical outcomes for patients
- You’ll play a key role in designing and implementing the infrastructure that connects our models to our customer-facing products
- This role is backend-focused and will primarily include development in Python
- This is a unique opportunity to work at the intersection of AI and healthcare, shaping the future of how radiologists care for patients
- Architect the infrastructure that supports our machine learning applications, services, and workflows
- Architect and maintain our ML platform that supports continuous integration, continuous delivery, and continuous training for our machine learning models
- Develop cloud-native services and serverless architectures to build scalable and resilient systems
- Partner with data scientists to design the data pipeline that enable various machine learning models in production
- Write code that meets our internal standards for security, style, maintainability, and best practices for a high-scale HIPAA web environment
- Design, deploy, and maintain the full ML platform stack including monitoring and observability, data analytics, backend integration with customer-facing products, and the full model R&D lifecycle
- Work with Product Management, Research, and Engineering to iterate on new features and address inefficiencies across our AI/ML infrastructure
### Benefits
- 100% health, dental, & vision
- Flexible PTO
- WFH stipend
- 401k plan
- Stock options
- Socials & off-sites
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