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Part Time Remote Machine Learning Jobs (NOW HIRING)

SDLC Engineer - AI Trainer

Oakland, CA ยท Remote

$40 - $75/hr

... full-stack, machine learning, and other engineers -- who are driving real-world impact in AI ... Benefits: * This is a full-time or part-time REMOTE position * You'll be able to choose which ...

Application Developer

Los Angeles, CA ยท Remote

$40 - $75/hr

... full-stack, machine learning, and other engineers -- who are driving real-world impact in AI ... Benefits: * This is a full-time or part-time REMOTE position * You'll be able to choose which ...

DevOps Engineer

Everett, WA ยท Remote

$40 - $75/hr

... full-stack, machine learning, and other engineers -- who are driving real-world impact in AI ... Benefits: * This is a full-time or part-time REMOTE position * You'll be able to choose which ...

Back End Developer

Irving, TX ยท Remote

$40 - $75/hr

... full-stack, machine learning, and other engineers -- who are driving real-world impact in AI ... Benefits: * This is a full-time or part-time REMOTE position * You'll be able to choose which ...

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Showing results 1-20

Part Time Remote Machine Learning information

See salary details

$25.5K

$42.6K

$88K

How much do part time remote machine learning jobs pay per year?

As of Jun 9, 2026, the average yearly pay for part time remote machine learning in the United States is $42,584.00, according to ZipRecruiter salary data. Most workers in this role earn between $32,500.00 and $46,000.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Part Time Remote Machine Learning professional, and why are they important?

To thrive as a Part Time Remote Machine Learning professional, you need a strong grasp of mathematics, statistics, programming (commonly Python), and a relevant educational background such as a degree in computer science or a related field. Familiarity with machine learning frameworks (e.g., TensorFlow, scikit-learn, PyTorch) and version control systems like Git is typically required. Excellent time management, self-motivation, and clear communication skills are crucial for navigating remote collaboration and project deadlines. These skills ensure that you can independently deliver high-quality ML solutions while effectively contributing to distributed teams.

What are part time remote machine learning jobs?

Part time remote machine learning jobs are positions where professionals work on machine learning projects or tasks for a limited number of hours per week, and do so from a location outside the traditional office environment, often from home. These roles typically involve developing, testing, or deploying machine learning models, analyzing data, and collaborating with teams online. They are ideal for people seeking flexibility, such as students, freelancers, or individuals balancing other commitments, while contributing to projects in fields like AI, data science, or analytics.

How do part-time remote machine learning roles typically structure collaboration and communication with the rest of the team?

Part-time remote machine learning professionals often collaborate with teams using digital tools such as Slack, Zoom, and project management platforms like Jira or Trello. Regular check-ins, virtual stand-ups, and shared documentation ensure alignment on project goals and timelines despite differing work hours. Clear communication and proactive updates are important, as team members may be dispersed across time zones and working non-overlapping schedules. Flexibility and self-motivation are key to staying connected and contributing effectively in this distributed work environment.

What is the difference between Part Time Remote Machine Learning vs Part Time Remote Data Scientist?

AspectPart Time Remote Machine LearningPart Time Remote Data Scientist
Required CredentialsDegree in Computer Science, Data Science, or related field; knowledge of ML frameworksDegree in Statistics, Data Science, or related; strong analytical skills
Work EnvironmentRemote, flexible hours, project-basedRemote, collaborative teams, project-focused
Industry UsageTech, finance, healthcare, e-commerceTech, finance, marketing, research
Common Search IntentPart Time Remote Machine Learning jobs, freelance ML rolesPart Time Remote Data Scientist jobs, freelance data roles

Part Time Remote Machine Learning roles focus on developing algorithms and models, often requiring programming and ML frameworks. Part Time Remote Data Scientist positions involve analyzing data, creating insights, and may include statistical analysis. Both roles are remote and flexible but differ in core responsibilities and skill sets.

More about Part Time Remote Machine Learning jobs
What cities are hiring for Part Time Remote Machine Learning jobs? Cities with the most Part Time Remote Machine Learning job openings:
What are the most commonly searched types of Remote Machine Learning jobs? The most popular types of Remote Machine Learning jobs are:
What states have the most Part Time Remote Machine Learning jobs? States with the most job openings for Part Time Remote Machine Learning jobs include:
What job categories do people searching Part Time Remote Machine Learning jobs look for? The top searched job categories for Part Time Remote Machine Learning jobs are:
Infographic showing various Part Time Remote Machine Learning job openings in the United States as of June 2026, with employment types broken down into 100% Part Time. Highlights an 100% Remote job distribution, with an average salary of $42,584 per year, or $20.5 per hour.

Remote | ML Model Development & MLOps Expert -- $95-$135/hour

24-MAG

New York, NY โ€ข Remote

$95 - $135/hr

Part-time, Contractor

Posted 12 days ago


Job description

We are sharing a specialised part-time consulting opportunity for professionals experienced in machine learning engineering, model development, Python, ML frameworks, model deployment, MLOps, and structured AI workflow review.

This role supports current and upcoming remote consulting opportunities focused on machine learning model evaluation, ML engineering workflow review, model deployment assessment, MLOps documentation, technical task development, and high-quality project execution. Selected professionals will apply their machine learning engineering expertise to review realistic ML scenarios, evaluate technical outputs, prepare structured written feedback, and support accurate, evidence-based AI engineering workflow tasks.

Key Responsibilities

Professionals in this role may contribute to:

Machine Learning Model Development Review

  • Review machine learning scenarios involving model development, training workflows, feature engineering, evaluation metrics, and model behavior
  • Evaluate ML outputs against source materials, technical requirements, model assumptions, and documented review criteria
  • Support structured review of model architectures, experiment notes, training pipelines, evaluation reports, and technical explanations
  • Identify missing assumptions, implementation gaps, metric issues, and expected ML review outcomes

Python, ML Frameworks & Technical Workflow Support

  • Review materials involving Python, PyTorch, TensorFlow, data preprocessing, model experimentation, inference workflows, and ML code-adjacent tasks
  • Evaluate technical recommendations for clarity, correctness, feasibility, reproducibility, and alignment with ML engineering standards
  • Support structured review of notebooks, model documentation, pipeline notes, experiment summaries, and implementation plans
  • Prepare clear written feedback based on source materials and verifiable technical criteria

Model Deployment, MLOps & Structured Feedback

  • Review scenarios involving model deployment, monitoring, versioning, CI/CD, data pipelines, production ML systems, and MLOps workflows
  • Provide structured feedback on technical accuracy, workflow realism, deployment readiness, and engineering reasoning
  • Support evaluation workflows involving AI-generated ML plans, debugging notes, model analysis, and production-readiness assessments
  • Maintain accuracy, consistency, and professional judgment across submitted work

Ideal Profile

Strong candidates may have:

  • Professional experience in machine learning engineering, applied ML, data science engineering, AI engineering, MLOps, model deployment, or related technical roles
  • Background in one or more areas such as model development, Python, PyTorch, TensorFlow, data pipelines, model evaluation, production ML, or ML infrastructure
  • Familiarity with workflows involving training, validation, experiment tracking, model serving, monitoring, deployment, and technical documentation
  • Comfort reading and preparing ML artifacts such as notebooks, model reports, experiment logs, pipeline documentation, deployment notes, and technical summaries
  • Strong written communication skills
  • Ability to work independently in a remote, project-based environment

Educational Background

  • A degree or professional background in computer science, machine learning, data science, statistics, mathematics, software engineering, computer engineering, or a related technical field is helpful
  • Graduate-level study, applied ML experience, research experience, or production engineering experience is highly relevant
  • Equivalent practical experience in ML engineering, AI systems, MLOps, model deployment, or technical review is also valuable

Nice to Have

  • Experience with PyTorch, TensorFlow, scikit-learn, Python, SQL, Docker, Kubernetes, cloud platforms, MLflow, Weights & Biases, Airflow, Spark, or similar tools
  • Familiarity with model deployment, inference optimization, monitoring, feature stores, data validation, experiment tracking, or production ML systems
  • Experience preparing or reviewing technical documentation, model cards, evaluation reports, deployment plans, pipeline notes, or ML system designs
  • Background in AI labs, applied ML teams, SaaS platforms, data infrastructure, research engineering, or high-scale production environments
  • Strong attention to detail in technical, data-heavy, and model-driven workflows

Why This Opportunity

  • Apply machine learning engineering expertise to structured remote project work
  • Contribute to high-quality ML evaluation, model workflow review, deployment assessment, and AI engineering task development
  • Work on flexible assignments aligned with your ML engineering background
  • Use your technical judgment in a focused, detail-oriented review environment
  • Remote structure with competitive hourly compensation

Contract Details

  • Independent contractor role
  • Fully remote with flexible scheduling
  • Part-time commitment depending on project availability
  • Competitive rates between $95โ€“$135 per hour depending on expertise
  • Weekly payments via Stripe or Wise
  • Projects may be extended, shortened, or adjusted depending on scope and performance
  • Work will not involve access to confidential or proprietary information from any employer, client, or institution

About the Platform

This opportunity is available through 24-MAG LLC. We connect experienced professionals with remote consulting opportunities across technical, evaluation, and project-based workstreams.

By submitting this application, you acknowledge that your information may be processed by 24-MAG LLC for recruitment and opportunity matching in accordance with our Privacy Policy: https://www.24-mag.com/privacy-policy.