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TensorOps

MLOps Engineer

Posted 8 Days Ago
Be an Early Applicant
Remote
Hiring Remotely in USA
50K-65K
Mid level
Remote
Hiring Remotely in USA
50K-65K
Mid level
As an MLOps Engineer, you'll build and scale ML infrastructure across GCP and AWS, architecting pipelines, automating deployments, and ensuring reliability for diverse clients.
The summary above was generated by AI
Build Production ML Infrastructure with TensorOps

TensorOps is an applied machine learning studio helping organizations worldwide plan, design, train, and deploy production-grade ML systems. Our clients range from NASDAQ-listed enterprises to seed-stage startups. Projects span from small proofs-of-concept to multi-year strategic initiatives.

What We're Working On:
  • ML Infrastructure at Scale: Building and optimizing ML pipelines across cloud platforms
  • Generative AI Deployment: Production-ready chatbots, agents, and LLM applications
  • Traditional ML Systems: Time series forecasting, AdTech, computer vision in production
  • Platform Engineering: CI/CD for ML, model serving infrastructure, and observability systems
Core Stack:

As we work with many clients, our stack varies, but we often use:

Cloud Platforms (Primary Focus):

  • GCP: Vertex AI, Cloud Run, GKE, BigQuery, Cloud Storage, Cloud Build
  • AWS: SageMaker, Bedrock, EKS, S3, Lambda, Step Functions, ECR

Infrastructure & Orchestration:

  • IaC: Terraform, CloudFormation
  • Containers: Docker, Kubernetes (EKS, GKE)
  • Workflow Orchestration: Airflow, Kubeflow Pipelines, Vertex AI Pipelines, SageMaker Pipelines

ML Tools & Frameworks:

  • Model Training: PyTorch, HuggingFace, LightGBM, CatBoost
  • Model Serving: FastAPI, TorchServe, TensorFlow Serving
  • LLM Frameworks: LangChain, LangGraph

Observability & Monitoring:

  • MLFlow, Weights & Biases, Langfuse
  • Cloud-native monitoring (CloudWatch, Cloud Monitoring)
  • Prometheus, Grafana

Data Engineering:

  • Pandas, Polars, DuckDB
  • BigQuery, Redshift, Athena
The Role:

We're looking for an MLOps Engineer to help us build and scale ML infrastructure for our diverse client base. You'll report to and be mentored by a senior team member while working on cloud-native ML systems that serve real users. This is a hands-on role from day one, where you'll architect pipelines, automate deployments, and ensure reliability at scale.

Required Qualifications:
  • BSc in Computer Science, Software Engineering, or equivalent practical experience
  • Demonstrable experience with GCP and/or AWS in production environments
Required Skills:
  • Cloud Expertise: Strong working knowledge of GCP and AWS ML/AI services (Vertex AI, SageMaker, Bedrock, etc.)
  • DevOps Fundamentals: CI/CD pipelines, infrastructure-as-code (Terraform preferred), containerization
  • MLOps Practices: Experience designing and maintaining ML pipelines, model versioning, automated retraining
  • Python Proficiency: Strong Python skills with focus on production-ready code
  • System Design: Understanding of distributed systems, scalability patterns, and reliability engineering
  • Excellent English communication skills
Nice to Have:
  • Kubernetes expertise (EKS, GKE administration)
  • Experience with model monitoring and observability platforms
  • Knowledge of LLM deployment patterns (RAG systems, agent architectures)
  • Contributions to ML infrastructure tooling or open-source projects
  • Multi-cloud architecture experience
  • Certifications: GCP Professional ML Engineer, AWS Machine Learning Specialty, or CKA
Why TensorOps?
  • Fully remote (legal residence in Spain required)
  • Real-world infrastructure challenges with immediate impact
  • Work across cutting-edge cloud technologies and ML frameworks
  • Mentorship from engineers who have built ML platforms at scale
  • Competitive compensation with growth tied to ownership and performance rather than periodic reviews (which we still do)
Compensation & Perks:
  • Yearly salary: €50,000-65,000 (adjusted for MLOps focus)
  • Travel expenses allowance
  • Urban Sports Club membership
  • Professional development budget for certifications and training

Top Skills

Airflow
AWS
Bedrock
CloudFormation
Docker
Duckdb
Fastapi
GCP
Grafana
Huggingface
Kubeflow
Kubernetes
Lightgbm
Mlflow
Pandas
Prometheus
PyTorch
Sagemaker
Terraform
Vertex Ai

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