Work Location: Fully Remote
Employment Type: Contract
Bill Rate: $55
We are seeking an experienced Machine Learning Engineer to design, build, deploy, and maintain scalable machine learning solutions. This role focuses on applying ML, AI, statistics, and advanced data analysis to internal operational datasets to solve complex, real-world business problems across multiple teams. The ideal candidate has strong end-to-end ML ownership, robust data engineering skills, and the ability to operate in a production-grade environment.
Design, develop, deploy, and maintain end-to-end machine learning pipelines and systems
Apply machine learning, AI, and statistical techniques to solve real-world business problems
Build scalable data pipelines to support model training, validation, and production inference
Perform data exploration, feature engineering, model selection, training, and evaluation
Ensure model performance, reliability, scalability, and maintainability in production
Collaborate with cross-functional teams to understand requirements and translate them into ML solutions
Monitor deployed models and pipelines; implement retraining, optimization, and lifecycle management
Contribute to system architecture, best practices, and technical documentation
5+ years of experience as a Machine Learning Engineer
Proven experience designing, deploying, and maintaining machine learning pipelines and systems
Demonstrated ability to build machine learning models end-to-end, from data ingestion to production
5+ years of experience with large-scale data pipelines
Strong Machine Learning and AI domain expertise
Full-stack engineering experience
Proficiency in:
Python
SQL
PHP
Strong background in statistics, data analysis, and applied ML algorithms
Experience working at large technology organizations (e.g., Big Tech environments such as Meta, Google, Microsoft, or similar)
Exposure to enterprise-scale or highly distributed ML systems
Bachelor’s or Master’s degree in:
Computer Science
Mathematics
Physics
Engineering
Statistics
Or a related quantitative field