What are the responsibilities and job description for the Machine Learning Operations-Engineer II position at GM Financial?
Job Description
Why GMF Technology?
Innovation isn’t just a talking point at GM Financial, it’s how we operate. From generative AI and cloud-native technologies to peer-led learning and hackathons, our tech teams are building real solutions that make a difference. We’re committed to AI-powered transformation, using advanced machine learning and automation to help us reimagine customer interactions and modernize operations, positioning GM Financial as a leader in digital innovation within a dynamic industry.
Join us and discover a workplace where your ideas matter, your development is prioritized, and you can truly make a global impact.
About This Role
You will design, build, and operate cloud-based MLOps capabilities that support the full lifecycle of analytical and generative AI models. This role blends machine learning engineering, data engineering, and software engineering, with a strong focus on automation, scalability, governance, and production readiness. You’ll work with technologies such as MLflow, Databricks, Azure Machine Learning, CI/CD pipelines, containerization, and event-driven architectures, partnering closely with data science, IT, and business teams to deliver secure, compliant, and high-impact AI solutions.
Responsibilities
What makes you an ideal candidate:
Experience & Education
Our Culture: Our team members define and shape our culture — an environment that welcomes innovative ideas, fosters integrity, and creates a sense of community and belonging. Here we do more than work — we thrive.
Compensation: Competitive pay and bonus eligibility.
Work Life Balance: Flexible hybrid work environment, 2-days a week in Irving, TX office.
This position is not open to agency submissions.
We are unable to provide visa sponsorship either now or in the future for this position.
#GMFJobs
Why GMF Technology?
Innovation isn’t just a talking point at GM Financial, it’s how we operate. From generative AI and cloud-native technologies to peer-led learning and hackathons, our tech teams are building real solutions that make a difference. We’re committed to AI-powered transformation, using advanced machine learning and automation to help us reimagine customer interactions and modernize operations, positioning GM Financial as a leader in digital innovation within a dynamic industry.
Join us and discover a workplace where your ideas matter, your development is prioritized, and you can truly make a global impact.
About This Role
You will design, build, and operate cloud-based MLOps capabilities that support the full lifecycle of analytical and generative AI models. This role blends machine learning engineering, data engineering, and software engineering, with a strong focus on automation, scalability, governance, and production readiness. You’ll work with technologies such as MLflow, Databricks, Azure Machine Learning, CI/CD pipelines, containerization, and event-driven architectures, partnering closely with data science, IT, and business teams to deliver secure, compliant, and high-impact AI solutions.
Responsibilities
What makes you an ideal candidate:
- Build and maintain scalable, cloud-based MLOps platforms supporting analytical and GenAI models end to end
- Develop production-ready ML pipelines for training, deployment, monitoring, governance, and lifecycle automation
- Improve speed, quality, and reliability of model development, experimentation, and operations
- Partner with model governance, security, and compliance teams to define and enforce MLOps standards
- Collaborate with data science, engineering, and business stakeholders to deliver solutions aligned to business needs
- Research, prototype, and evolve MLOps capabilities to drive innovation and measurable business value
Experience & Education
- 2-4 years as Data Scientist or machine learning engineer or similar quantitative field required
- High School Diploma or equivalent required
- Master’s Degree in the field of Computer Science/Engineering, Analytics, Mathematics, or related discipline preferred,
- Proven hands-on experience across the full ML/MLOps lifecycle, including MLflow and platforms such as Databricks, Azure ML, or SageMaker
- Experience operationalizing GenAI solutions, including LLM patterns (e.g., RAG), prompt/version management, evaluation, safety, and monitoring
- Strong software and cloud engineering fundamentals, including CI/CD, containerization (Docker), and Kubernetes (AKS)
- Experience with event-driven and streaming architectures and modern cloud-native design patterns
- Advanced skills with Python, SQL, and large-scale data platforms (e.g., Spark, Delta, lakehouse architectures)
- Ability to clearly communicate technical trade-offs and connect AI delivery to business and financial outcomes
Our Culture: Our team members define and shape our culture — an environment that welcomes innovative ideas, fosters integrity, and creates a sense of community and belonging. Here we do more than work — we thrive.
Compensation: Competitive pay and bonus eligibility.
Work Life Balance: Flexible hybrid work environment, 2-days a week in Irving, TX office.
This position is not open to agency submissions.
We are unable to provide visa sponsorship either now or in the future for this position.
#GMFJobs