Machine Learning Engineer | Contract role | Remote

Overview

Remote
On Site
Hybrid
BASED ON EXPERIENCE
Contract - W2
Contract - Independent
Contract - 5+ mo(s)

Skills

PASS
Training
Documentation
Command-line Interface
scikit-learn
PyTorch
XGBoost
Evaluation
SAFE
Workflow
Collaboration
Python
Continuous Integration
GitHub
Automated Testing
Orchestration
Docker
Kubernetes
Continuous Delivery
RESTful
Microservices
API
Machine Learning Operations (ML Ops)
Databricks
Cloud Computing
Microsoft Azure
Google Cloud
Google Cloud Platform
Machine Learning (ML)
Agile
Management
EXT

Job Details

My name is Mohammed Tousif, and I am a Recruiter with Russell Tobin. I came across your resume and was hoping to discuss your current employment situation in more detail. I have included a position below that you may be a great fit for.

If you are not looking for an immediate opportunity, I would still love to connect. Also, if you are not interested in the position, please feel free to pass this opportunity along to your friends and colleagues that may be interested.

Title: Machine Learning Engineer
Location: Remote
Pay range: $55 - $65 per hour

Key Responsibilities
- Design, build, and maintain end-to-end MLOps pipelines for data prep, training, validation, packaging, and deployment.
- Develop FastAPI microservices for model inference with clear API contracts, versioning, and documentation.
- Define and implement deployment strategies on AKS (blue/green, canary, shadow; champion/challenger) using GitOps with Argo CD.
- Architect and evolve a self-serve MLOps platform (standards, templates, CLI/scaffolds) enabling repeatable, secure model delivery.
- Operationalize scikit-learn and other frameworks (e.g., PyTorch, XGBoost) for low-latency, scalable serving.
- Implement CI/CD for ML (test, security scan, build, package, promote) using GitHub Enterprise and related tooling.
- Integrate telemetry and observability (logging, metrics, tracing) and establish SLOs for model services.
- Monitor model and data drift; automate retraining, evaluation, and safe rollout/rollback workflows.
- Collaborate with software engineers to integrate ML services into client applications and shared platforms.
- Champion best practices for code quality, reproducibility, and governance (model registry, artifacts, approvals).

Required Qualifications
- Strong Python engineering skills and production experience building services with FastAPI.
- Proven MLOps experience: packaging, serving, scaling, and maintaining models as APIs.
- Hands-on CI/CD for ML (GitHub Enterprise or similar), including automated testing and release pipelines.
- Containerization and orchestration expertise (Docker, Kubernetes) with production deployments on AKS.
- GitOps experience with Argo CD; practical knowledge of deployment strategies (blue/green, canary, rollback).
- Solid understanding of RESTful API design, microservices patterns, and API contract governance.
- Experience designing or contributing to an MLOps platform (standards, templates, tooling) for repeatable delivery.
- Ability to work cross-functionally with data scientists, software, and platform/SRE teams.

Preferred Qualifications
- Minimum 2+ years related experience
- Experience with ML lifecycle tools (MLflow or similar for tracking/registry) and feature stores.
- Exposure to Databricks and enterprise data/compute environments.
- Cloud experience on Azure (preferred), plus Google Cloud Platform familiarity and managed ML services.
- Familiarity with Agile practices; experience with Helm/Kustomize, secrets management, and security scanning.

Thanks!

Mohd Tousif

Senior Associate - COE


- Ext. 0268

420 Lexington Ave, 30th Fl.

New York, NY 10170

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