Senior Machine Learning Engineer
Posted 98ds ago
Employment Information
Report this job
Job expired or something wrong with this job?
Job Description
Senior Machine Learning Engineer developing machine learning models for Greenhouse's products. Collaborating with cross-functional teams to enhance AI capabilities and improve hiring processes.
Responsibilities:
- Develop software applications with a strong focus on machine learning
- Train deep learning models using PyTorch and Transformers and experiment with (new) techniques to reduce their memory footprint, speed them up, or increase their accuracy
- Deploy software applications, including deep learning models, in production, using AWS and Greenhouse’s internal tools
- Partner with other members of the R&D team to uplevel their comfort and familiarity with shipping Machine Learning features
- Help set vision and strategy for AI within our product suite
- Develop applications that are compliant with our AI policies that prioritize privacy, security, ethical concerns, and best practices while handling data
- Contribute to and build all phases of the AI system lifecycle from ideation, model development, testing, evaluation, improvements and monitoring
Requirements:
- Degree or recent experience relating to Machine Learning
- Experience with NLP and large language models
- Experience implementing safe, ethical, and compliant ML systems (familiarity with ISO 42001/NIST AI RMF and the associated common controls)
- Experience deploying, monitoring, and improving ML models at a technology company
- Strong Python experience
- Experience training and experimenting with deep learning models as well as serving them in production
- Experience with transformers and other HuggingFace libraries
- Experience designing and consuming APIs
- An ability to build consensus while creating space for others
- Excellent prioritization and time management skills
- Experience with machine learning models which are not deep learning (e.g. decision trees), a plus
- Experience using Docker and AWS (SageMaker endpoints, SageMaker notebooks, S3, IAM, …), a plus
- Your own unique talents!
Benefits:
- medical, dental, and vision insurance
- basic life insurance
- mental health resources
- financial wellness benefits
- fully paid parental leave program
- short-term and long-term disability coverage
- 401(k) plan and company match
- up to 14 scheduled paid holidays per calendar year
- up to 80 hours of paid sick leave
- paid vacation time annually
- flexible paid time off (PTO)

















