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Senior MLOps Engineer
role at
Clariti .
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Join our mission to provide governments with exceptional experiences so they can do the same for their communities!
What do we do?
We empower governments to deliver exceptional citizen experiences.
Check out our
'About Us'
page for a deep dive into our product and what makes us exceptional.
How will you help us make an impact?
The
Senior MLOps Engineer
will design, build, and scale the systems that power CivCheck and Clariti's AI capabilities. As the first MLOps Engineer, you will lead the development of robust ML infrastructure, ensuring that models move efficiently from research to production with reliability, observability, and performance at scale. This role is ideal for someone who thrives at the intersection of machine learning, software engineering, and cloud infrastructure, and who's motivated to enable teams to deliver high-impact ML systems efficiently and safely.
Design and maintain end-to-end ML pipelines for training, evaluation, and deployment of models and agentic AI workflows
Build and optimize infrastructure for distributed training and model serving across GPU and cloud environments.
Develop tools for data creation, model versioning, experiment & performance tracking, and automated retraining.
Collaborate with AI researchers and ML engineers to productionize POCs and ensure model reproducibility and scalability.
Implement CI / CD best practices for ML systems, including continuous integration, automated testing, and deployment workflows.
Monitor and manage model health, performance, drift, and data quality in production.
Partner with Engineering teams to streamline infrastructure provisioning and data access.
Drive cost optimization and performance tuning for large-scale model training.
Contribute to internal documentation and best practices.
What do you bring to the team?
6–10+ years of experience in software or ML engineering, with at least 3+ in MLOps or ML infrastructure.
Solid experience working with Python, C, C++, Bash, etc.
Proven experience deploying and managing ML models in production.
Proficiency with Docker, and Kubernetes for scalable ML system design.
Experience with cloud platforms (AWS, GCP, or Azure) and GPU orchestration.
Hands-on knowledge of CI / CD pipelines (GitHub Actions, Jenkins, or similar). Familiarity with MLflow, Weights & Biases, Kubeflow, and other similar tools for experiment tracking and pipeline automation.
Solid understanding of data versioning, model reproducibility, and monitoring strategies.
Excellent problem-solving skills and a collaborative, team-oriented mindset.
Bonus Points
Experience training models from scratch, including defining architectures, curating & cleaning datasets, tuning training parameters, and bringing models from research to monitored production.
Exposure to model optimization techniques (quantization, distillation, TensorRT, ONNX).
Familiarity with infrastructure-as-code tools (Terraform, CloudFormation).
Background in distributed systems or high-performance computing.
Contributions to open-source projects.
What's in it for you?
We invest in and empower our team members with competitive compensation packages, well-deserved time off, and benefits to keep you and your family healthy.
The base salary range for this role is expected to be between
$190,000-230,000
based on the candidate's skills, experience, and qualifications while considering internal pay equity and our broader pay philosophy.
If you have questions about compensation as we move through the process, we're happy to discuss further.
Benefits depend on employment type (full-time, part-time, contract, etc).
Things to Note
Background checks
Travel
We're committed to building an inclusive culture where our team members
take ownership
over projects, tasks, and outcomes; bring a
growth mindset
to drive continuous learning and self-development; have the ability to
communicate courageously
in a direct but respectful way; and are
customer-focused
by keeping the customer at the heart of decision-making. It's the diversity of our team that helps us make better decisions, by leveraging the diversity in thought & experience across to create impactful solutions as we explore new paths & challenges as we grow. We're working to create a workplace and team that is as diverse as the communities we serve.
We welcome and encourage candidates of all backgrounds to apply.
Questions? We are here to help
If you require accommodations in completing an application, interviewing, completing any pre-employment testing, or otherwise participating in our hiring process for any reason, please direct your questions to
hr@claritisoftware.com
and we'll be happy to support you.
Seniority level
Mid-Senior level
Employment type
Full-time
Job function
Engineering and Information Technology
Industries
Software Development
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Senior Mlops Engineer • San Francisco, CA, US