Job Openings
Machine Learning Engineer (MLOps)
About the job Machine Learning Engineer (MLOps)
Job Role: Machine Learning Engineer (MLOps)
Location: Austin, Texas (Onsite)
Type: 1099 Contract | C2H
Job Description:
- Experienced Machine Learning Engineer with 8-10+ years of hands-on expertise deploying and scaling machine learning models in production environments.
- Skilled in operationalizing complex models and integrating them into enterprise systems with a focus on performance, scalability, and governance.
- Partner with data science and engineering teams to deliver, optimize, and maintain production-grade ML models and pipelines.
- Deploy and manage end-to-end machine learning workflows, from model development to operational monitoring.
- Proficient in core ML algorithms such as Regression, Classification, and Natural Language Processing (sentiment analysis, topic modeling, TF-IDF).
- Experienced with tools and frameworks including Scikit-learn, VADER Sentiment, Pandas, and PySpark.
- Design and maintain dynamic data pipelines tailored to specific use cases.
- Integrate machine learning solutions within business workflows, ensuring seamless coordination across upstream and downstream systems.
- Develop and automate reporting pipelines for model performance metrics to support Model Risk Oversight and governance reviews.
- Create and maintain runbooks for ongoing model support, versioning, and operational maintenance.