Senior Machine Learning Operations Engineer jobs in United States
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Built · 23 hours ago

Senior Machine Learning Operations Engineer

Built is an AI-powered platform transforming the way real estate is financed, developed, and managed. They are hiring a Senior ML Ops Engineer to build the infrastructure and lifecycle automation needed to deploy and scale machine learning systems reliably in production environments.

ConstructionLendingFinanceFinTechSaaSCommercial LendingFinancial Services
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H1B Sponsor Likelynote

Responsibilities

Architect and implement Built’s foundational ML Ops platform from scratch
Define and deploy reusable patterns for model training, deployment, monitoring, and retraining
Build CI/CD pipelines for ML lifecycle automation, including versioning and experimentation tracking
Stand up a feature store integrated with Snowflake and AWS to support structured and unstructured data
Implement model registry and governance standards to ensure reproducibility, auditability, and rollback capability
Integrate ML workloads into our event-driven architecture (Kafka, Kinesis)
Develop observability frameworks to monitor drift, performance, latency, and model quality in production
Automate ML infrastructure using Terraform and AWS-native tooling (SageMaker, Lambda, ECS, Batch, Step Functions)
Establish security and compliance standards across ML assets, including data lineage and access control
Mentor engineers on ML Ops patterns and deployment best practices

Qualification

ML systems architectureML lifecycle automationAWS (SageMaker preferred)Infrastructure-as-code (Terraform)Python proficiencySQL skillsIntegrating ML workloadsFeature stores implementationData orchestration toolsML observability toolingFinancial data environmentsOptimizing ML workloadsSnowpark exposure

Required

Experience architecting and deploying ML systems in production environments
Deep familiarity with ML lifecycle automation (training, CI/CD, deployment, monitoring)
Strong AWS experience, particularly within ML pipelines (SageMaker preferred)
Proven experience building infrastructure-as-code solutions (Terraform)
Experience productionizing ML workflows end-to-end, not just optimizing existing systems
Strong Python proficiency
Experience integrating ML workloads with data platforms and event-driven systems
Solid SQL skills and familiarity working with Snowflake

Preferred

Experience implementing feature stores or model registries
Familiarity with data orchestration tools (Airflow, Prefect, Dagster)
Experience with ML observability tooling (Datadog, Prometheus)
Experience in regulated or financial data environments
Experience optimizing ML workloads for cost and scale
Exposure to Snowpark, Bedrock, or LLM orchestration frameworks

Benefits

Uncapped vacation
Health, dental & vision insurance
401k with match and expedited vesting
Robust compensation package, including equity in the form of stock options
Flexible working hours
Paid family leave
ERGs & Mentorship opportunities
Learning grant program to support ongoing professional development

Company

Built

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Built is an AI-powered financial operations platform for the real estate and construction industries.

H1B Sponsorship

Built has a track record of offering H1B sponsorships. Please note that this does not guarantee sponsorship for this specific role. Below presents additional info for your reference. (Data Powered by US Department of Labor)
Distribution of Different Job Fields Receiving Sponsorship
Represents job field similar to this job
Trends of Total Sponsorships
2024 (2)
2023 (5)
2020 (1)

Funding

Current Stage
Late Stage
Total Funding
$312.69M
Key Investors
CitiTCVAddition
2023-04-13Series Unknown
2022-07-13Private Equity· $23.62M
2021-09-30Series D· $125M

Leadership Team

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Chase Gilbert
Chief Executive Officer
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Andrew Sohr
Co-Founder
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Company data provided by crunchbase