Mid Level Mlops Engineer Jobs
Mid level mlops engineer jobs go to practitioners ready to own pipelines end to end, make architecture decisions with limited oversight, and mentor junior teammates through production challenges. Roles run 33% remote or hybrid across Technology & Software, Fintech, and Electronics & Hardware, with employers like NVIDIA, JPMorganChase, and CDW hiring at this level now.
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dv01 is lifting the curtain on the largest financial market in the world: structured finance. The $16+ trillion market is the backbone of everyday activities that empower financial freedom, from consolidating credit card debt and refinancing student loans, to buying a home and starting a small business.
dv01's data analytics platform brings unparalleled transparency into investment performance and risk for lenders and Wall Street investors in structured products. As a data-first company, we wrangle critical loan data and build modern analytical tools that enable strategic decision-making for responsible lending. In a nutshell, we're helping prevent a repeat of the 2008 global financial crisis by offering the data and tools required to make smarter data-driven decisions resulting in a safer world for all of us.
More than 400 of the largest financial institutions use dv01 for our coverage of over 100 million loans spanning mortgages, personal loans, auto, buy-now-pay-later programs, small business, and student loans. dv01 continues to expand coverage of new markets, adding loans monthly, and developing new technologies for the structured products universe.
The Role
We're looking for an MLOps Engineer to build and operate the platform that gets our machine learning and AI work into production reliably. You'll own the lifecycle tooling and infrastructure that lets data science and engineering teams train, track, deploy, and monitor models without reinventing the wheel each time. This is a hands-on, senior-individual-contributor role: you'll set technical direction in your area and mentor less-experienced engineers, while spending most of your time building.
You Will
Build and operate the ML lifecycle platform. Own the tooling that makes model development reproducible and production-ready, with MLflow (or comparable systems) at the center: experiment tracking, model registry, artifact and metadata management, and versioned, repeatable training and inference pipelines.
Own CI/CD and deployment for ML workloads. Build automated pipelines that move models from notebook to production safely, including packaging, containerization, automated testing and validation, staged rollouts, and rollback.
Make models observable and reliable in production. Stand up monitoring for model and service health, including latency, drift, data-quality, and cost signals, with alerting and clear runbooks so issues surface and resolve quickly.
Build the cloud-native foundations. Contribute to and manage containerized workloads on Kubernetes and codify infrastructure with infrastructure-as-code tooling such as Terraform, keeping environments consistent, secure, and reproducible.
Establish sensible guardrails. Implement infrastructure-level governance for ML systems, including access controls, deployment policies, and auditability, partnering with security and compliance to align with our risk and regulatory requirements.
Enable and mentor the teams you support. Define repeatable patterns and shared services that reduce friction for data and application teams, provide technical guidance and mentorship to junior engineers, and contribute to the direction of dv01's MLOps practices.
You Have
4–7 years of relevant experience in platform engineering, DevOps, or MLOps, with solid experience operating systems in production.
Hands-on experience with ML lifecycle tooling. You've built or operated experiment tracking, model registry, and pipeline workflows using MLflow or similar platforms (e.g., Weights & Biases, Kubeflow, SageMaker, Vertex AI Pipelines). This is core to the role.
Strength in cloud-native infrastructure. You're comfortable with Kubernetes, containerized workloads, and infrastructure-as-code tools such as Terraform.
CI/CD fluency. You've designed and maintained automated build, test, and deployment pipelines, ideally for ML or data workloads.
Solid Python/Go skills and comfort supporting PyTorch-based production systems (deploying, serving, and operating them, not necessarily authoring the models).
An operations and security mindset. You understand infrastructure security, IAM, secrets management, and operational risk, and you build with secure, reliable defaults.
Clear communication and collaboration. You work well cross-functionally, can mentor and provide technical guidance, and are comfortable making pragmatic decisions in ambiguous problem spaces.
Nice to Have
- Experience with GCP
- Experience with Pulumi
- Experience with GitHub Actions (GHA)
- Experience with Go
- Experience supporting data engineering platforms, data warehousing, or ETL/ELT operations
- Exposure to LLM serving runtimes (e.g., vLLM, llama.cpp) or agentic systems and Model Context Protocol (MCP) servers
- Familiarity with ML compiler stacks (e.g., LLVM/MLIR)
- Experience designing benchmarking or evaluation frameworks for ML/AI systems
- Familiarity with Excel Pivot Tables
In good faith, our salary range for this role is $185,000–$200,000, but we are not tied to it. Final offer amount will be at the company's sole discretion and determined by multiple factors, including years and depth of experience, expertise, and other business considerations. Our community is fueled by diverse people who welcome differing points of view and the opportunity to learn from each other. Our team is passionate about building a product people love and a culture where everyone can innovate and thrive.
BENEFITS & PERKS:
- Unlimited PTO. Unplug and rejuvenate, however you want—whether that's vacationing on the beach or at home on a mental-health day.
- $1,000 Learning & Development Fund. No matter where you are in your career, always invest in your future. We encourage you to attend conferences, take classes, and lead workshops. We also host hackathons, brunch & learns, and other employee-led learning opportunities.
- Remote-First Environment. People thrive in a flexible and supportive environment that best invigorates them. You can work from your home, cafe, or hotel. You decide.
- Health Care and Financial Planning. We offer a comprehensive medical, dental, and vision insurance package for you and your family. We also offer a 401(k) for you to contribute.
- Stay active your way! Get $138/month to put toward your favorite gym or fitness membership — wherever you like to work out. Prefer to exercise at home? You can also use up to $1,650 per year through our Fitness Fund to purchase workout equipment, gear, or other wellness essentials.
- New Family Bonding. Primary caregivers can take 16 weeks off 100% paid leave, while secondary caregivers can take 4 weeks. Returning to work after bringing home a new child isn't easy, which is why we're flexible and empathetic to the needs of new parents.
dv01 is an equal opportunity employer and all qualified applicants and employees will receive consideration for employment opportunities without regard to race, color, religion, creed, sex, sexual orientation, gender identity or expression, age, national origin or ancestry, citizenship, veteran status, membership in the uniformed services, disability, genetic information or any other basis protected by applicable law.
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Who's Hiring
- NVIDIA3
- JPMorganChase2
- CDW1
- dv011
- Apple1
Top Industries Hiring
- Technology & Software7
- Fintech2
- Electronics & Hardware2
- Artificial Intelligence2
- Banking & Financial Services2
Mid Level Mlops Engineer Jobs: Frequently Asked Questions
How do I get a mid level mlops engineer job?
Position yourself around ownership, not just contribution. Highlight projects where you designed or maintained ML pipelines independently, made infrastructure decisions, and resolved production incidents without close supervision. Strong applications show familiarity with orchestration tools, CI/CD for models, and monitoring in real deployments. Tailor your resume to the specific stack each employer lists, and be ready to discuss tradeoffs you drove, not just tasks you completed.
Which companies hire mid level mlops engineers?
Companies hiring mid level mlops engineers right now include NVIDIA, JPMorganChase, and CDW, based on current listings on Migrate Mate as of June 2026. Hiring at this level comes from a broad mix of technology firms, financial services companies, healthcare organizations, and retail enterprises that are scaling their model deployment and monitoring capabilities.
Are there remote mid level mlops engineer jobs?
Yes, remote and hybrid options are widely available at this level. About 33% of mid level mlops engineer openings are remote or hybrid as of June 2026, reflecting how widely distributed MLOps tooling and cloud-native workflows have become. On-site roles still exist, typically at companies building tightly integrated data infrastructure or operating in regulated industries.
How do I move up to a mid level mlops engineer role?
The path from entry level to mid level centers on taking ownership rather than executing assigned tasks. Build depth in model lifecycle management, experiment tracking, and deployment automation. Seek out projects where you own outcomes, not just deliverables, and document the impact of your work with measurable results. Gaining experience with production-grade systems, cross-functional collaboration, and mentoring others signals readiness for mid level responsibilities.
Which industries hire the most mid level mlops engineers?
Mid Level mlops engineer roles concentrate in Technology & Software, Fintech, and Electronics & Hardware, based on current listings on Migrate Mate as of June 2026. These sectors drive hiring because they operate large-scale model pipelines that require dedicated engineers to manage reliability, retraining cycles, and infrastructure at a level that generalist data scientists alone cannot sustain.