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TheGuarantors

Senior MLOps Engineer

Reposted Yesterday
Remote or Hybrid
Hiring Remotely in United States
200K-220K Annually
Senior level
Remote or Hybrid
Hiring Remotely in United States
200K-220K Annually
Senior level
The Senior MLOps Engineer will design and manage ML/AI pipelines, collaborate with data scientists, implement infrastructure, and ensure the reliable delivery of machine learning models across various business units.
The summary above was generated by AI

TheGuarantors is a cutting edge fintech company setting the standard in rent coverage with unrivaled insurance products. With a deep understanding of owner, operator, and renter needs, we believe renters deserve better access to the home of their dreams and operators deserve greater protection and growth opportunities. That’s why we’re leveraging our expertise in real estate and using AI-based technology to help operators qualify renters faster while mitigating the risk of rental income loss. With $5B+ in rent and deposits guaranteed, we work with 9 of the country’s top 10 operators and have been named one of Inc. 5000’s fastest-growing companies, one of Forbes’ Best Startup Employers, and one of Deloitte’s Technology Fast 500.


The Opportunity


We are building a next-generation AI/ML operating model at TheGuarantors—anchored by a centralized AI Platform & MLOps team and empowered domain-focused squads across Pricing, Risk, Claims, GTM, and Sales.

As a Senior MLOps Engineer, you will be a foundational member of the platform team, building scalable, governed infrastructure that accelerates the development and deployment of machine learning and operations research models. You’ll work closely with data scientists and engineers to ensure fast, safe, and reliable delivery of high-impact models—from pricing elasticity and dynamic underwriting to claims automation and lead scoring.


Location

Remote

 

What You’ll Do

  • Design and manage robust ML/AI pipelines to support scalable deployments across Pricing, Risk, Claims, GTM, and Sales
  • Collaborate with data scientists to operationalize supervised, unsupervised, and optimization models in real-world production systems
  • Implement reusable infrastructure such as centralized feature stores, model registries, and experiment tracking tools
  • Build intelligent exception handling frameworks for automated model recovery, schema drift detection, and fallbacks
  • Architect infrastructure that supports dynamic pricing engines, loss prediction models, claims triage algorithms, and real-time lead scoring
  • Support operations research use cases by integrating solvers and simulation frameworks into model pipelines
  • Monitor model health using live dashboards and alerts for data drift, bias, and latency across both batch and real-time scoring
  • Enable rapid experimentation through reproducible workflows and automated CI/CD tailored for ML
  • Embed governance practices such as audit logging, explainability tooling, and PII protection into the MLOps layer
  • Future-proof our AI/ML stack with modular, scalable, cloud-native components (e.g., Terraform, Kubernetes, SageMaker, MLflow)
  • Partner with domain squads to align AI deployments with KPIs such as conversion uplift, pricing precision, loss ratio, and claims turnaround
  • Contribute to the evolution of our AI Platform strategy and evaluate next-gen MLOps tools to improve developer velocity and system resilience
  • Act as a mentor and thought partner across engineering and data teams to uplift the organization's model delivery capabilities

 

What You Bring

  • 5+ years of experience in MLOps, ML Engineering, or DevOps, with a strong record of deploying machine learning models at scale
  • Ph.D. in Math, Engineering, Statistics, Economics preferred
  • Proficiency in Python and orchestration tools (Airflow, Prefect, Dagster), plus experience with model lifecycle tooling (MLflow, SageMaker, Vertex AI)
  • Hands-on experience with containerization (Docker), orchestration (Kubernetes/EKS), and infrastructure-as-code (Terraform, CloudFormation)
  • Deep understanding of the machine learning lifecycle, including feature engineering, testing, observability, and rollback strategies
  • Familiarity with exception handling patterns in production ML (e.g., fail-soft design, data quality validation, anomaly flagging)
  • Experience supporting or integrating optimization libraries, solvers, and simulation workflows for operations research
  • Knowledge of data privacy and compliance requirements for deploying models in regulated industries
  • Excellent communication skills and a collaborative mindset for working cross-functionally across technical and business teams
  • Bonus: Background in fintech, insurance, pricing analytics, or risk modeling

Benefits

  • Opportunities to make an impact within a fast growing company
  • Medical, dental, & vision insurance, beginning day one
  • Health savings account with employer contribution
  • Flexible spending accounts (healthcare, dependent care, commuter)
  • 401(k)
  • Generous PTO and paid holidays
  • Flexible working hours
  • Paid parental leave
  • Company sponsored short and long term disability

Base Salary

The base salary range is between $200,000 - $220,000 annually.

Base salary does not include other forms of compensation or benefits. Final offer amounts are determined by multiple factors, including prior experience, expertise, location and current market data and may vary from the range above.


Stay in Touch

Does this role not quite match your skills, but you’re still interested in what we're doing? Stay In Touch to be one of the first to hear about future opportunities!


TheGuarantors is an Equal Opportunity Employer. We celebrate diversity and are committed to an inclusive environment for all.

Top Skills

Airflow
CloudFormation
Dagster
Docker
Kubernetes
Mlflow
Prefect
Python
Sagemaker
Terraform
Vertex Ai

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