TinyFish Logo

TinyFish

MLOps Engineer

Posted 6 Hours Ago
Remote or Hybrid
Hiring Remotely in United States
Senior level
Remote or Hybrid
Hiring Remotely in United States
Senior level
Build and maintain reproducible data pipelines, experiment orchestration, CI/CD for models, Terraform-based ML infrastructure, observability, security controls, and automation to deploy and operate ML systems in production.
The summary above was generated by AI
Position Overview

As the first dedicated ML Ops Engineer, you’ll own the tooling and infrastructure that make our ml engineers wildly productive and ensure we are able to efficiently iterate on ML models, prompts, and datasets and deploy our AI systems into a predictable production environment. You’ll bridge the gap between research and DevOps—designing reproducible dataset pipelines, automated experiment workflows, and Terraform-based cloud deployments that scale.

Key Responsibilities

Dataset Management

• Design version-controlled data pipelines (feature stores, data registries) using tools such as Delta Lake, Apache Iceberg
• Implement systems for data validation, lineage tracking, and automated quality checks (e.g., Great Expectations).

Experiment Execution & Tracking

• Build and maintain experiment orchestration with platforms like MLflow, torchx, and Apache Airflow.
• Provide templated systems and tools to ML Engineers that easily launch training/evaluation data processing systems
• Automate hyper-parameter sweeps and A/B tests, exposing clear dashboards for results.

CI/CD

Models/Agents

• workflows that package, test, and promote models and agents through staging to production.
• Implement canary deployments and rollbacks for models/agents services

Terraform Infrastructure-as-Code

• Author and maintain Terraform modules for all ML infra—networking, GPU/TPU clusters, object storage, secrets, monitoring.
• Enforce best practices for state management, workspaces, and automated plan/apply stages via CI.

Observability & Reliability

• Integrate logging, tracing, and metric collection (Prometheus, Grafana, Datadog) across data pipelines and model endpoints.
• Set SLIs/SLOs for data freshness and model latency; implement alerts and runbooks.

Security & Compliance• Work with Security to implement IAM least-privilege, key rotation, and data-encryption policies.
• Support audit requirements (SOC 2, GDPR, HIPAA where applicable).

Minimum Qualifications
  • 5+ years combined experience in DevOps, Data Engineering, or ML Ops roles.

  • Strong Terraform skills; ability to craft reusable modules and navigate complex state.

  • Production experience with at least one cloud provider (AWS, GCP, or Azure).

  • Proficiency in Python and containerization (Docker); familiarity with Kubernetes or serverless batch systems.

  • Hands-on knowledge of ML experiment platforms (MLflow, Kubeflow, Weights & Biases, or similar).

  • Experience with workflow execution frameworks (Kubeflow, Apache Airflow)

  • Understanding of modern data-versioning/feature-store concepts and tools.

  • Solid grasp of CI/CD principles, Git workflows, and infrastructure testing.

  • Excellent communication skills—capable of partnering with Data Scientists, Software Engineers, and Security teams.

Preferred (Nice-to-Have)
  • Experience with GPU orchestration (NVIDIA DGX, Karpenter, or Ray).

  • Familiarity with IaC security scanning (Checkov, tfsec).

  • Exposure to policy-as-code (OPA/Gatekeeper).

  • Prior work in real-time streaming (Kafka, Flink) and online feature serving.

  • Contributions to open-source ML Ops projects.

Reporting Structure

Reports to: Director of Infra

Similar Jobs

6 Hours Ago
Remote or Hybrid
United States
Senior level
Senior level
Information Technology • Database • Consulting
Design, build, and operate end-to-end ML pipelines including data ingestion, feature engineering, training, deployment, and monitoring. Deploy and scale models on AWS or GCP, implement CI/CD, containerization, orchestration, model lifecycle management, observability, and mentor junior engineers to productionize personalization, recommendation, and NLP solutions.
Top Skills: Apache AirflowAws EksAws LambdaAws SagemakerAws Step FunctionsCloudFormationDockerFeastGcp Cloud FunctionsGcp Vertex AiGithub ActionsGkeGrafanaJenkinsKfservingKubernetesMlflowPrometheusPythonPyTorchRay ServeScikit-LearnSeldonSparkSQLTensorFlowTerraform
Yesterday
In-Office or Remote
Senior level
Senior level
Software
Own and build the shared AI/ML platform: audit and evolve training and serving pipelines, implement training infrastructure on Databricks, enable experiment tracking and model registry, provide low-latency serving and batch scoring, build ML observability (drift, accuracy, business metrics) with Grafana/Prometheus, optimize cost/performance, mentor engineers, and drive AI-native tooling adoption.
Top Skills: AWSAws EksClaude CodeDatabricksFeature StoreGrafanaJavaKubernetesMl ObservabilityModel RegistryPrometheusPythonScalaSparkSpringTerraformUnity Catalog
Yesterday
In-Office or Remote
Senior level
Senior level
Software
Own and evolve Cint's shared AI/ML platform: audit existing pipelines, build training infrastructure (Databricks/Unity Catalog), experiment tracking, model registry, serving, monitoring, cost controls, and mentor engineers to enable rapid, reproducible ML lifecycle and production-grade model operations.
Top Skills: SparkAws EksClaude CodeDatabricksFeature StoreGrafanaJavaJava SpringKubernetesModel RegistryPrometheusPythonScalaTerraformUnity Catalog

What you need to know about the NYC Tech Scene

As the undisputed financial capital of the world, New York City is an epicenter of startup funding activity. The city has a thriving fintech scene and is a major player in verticals ranging from AI to biotech, cybersecurity and digital media. It also has universities like NYU, Columbia and Cornell Tech attracting students and researchers from across the globe, providing the ecosystem with a constant influx of world-class talent. And its East Coast location and three international airports make it a perfect spot for European companies establishing a foothold in the United States.

Key Facts About NYC Tech

  • Number of Tech Workers: 549,200; 6% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: Capgemini, Bloomberg, IBM, Spotify
  • Key Industries: Artificial intelligence, Fintech
  • Funding Landscape: $25.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Greycroft, Thrive Capital, Union Square Ventures, FirstMark Capital, Tiger Global Management, Tribeca Venture Partners, Insight Partners, Two Sigma Ventures
  • Research Centers and Universities: Columbia University, New York University, Fordham University, CUNY, AI Now Institute, Flatiron Institute, C.N. Yang Institute for Theoretical Physics, NASA Space Radiation Laboratory

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account