Remote | Applied Machine Learning Evaluation Consultant — Up to $100/hour
Posted 2026-06-26
Remote, USA
Full-time
Immediate Start
We are sharing a specialised part-time consulting opportunity for experienced Machine Learning Engineers and Applied ML Researchers with expertise in end-to-end modeling, dataset analysis, feature engineering, validation strategy, model evaluation, reference solution development, and technical quality review.
- This role supports current and upcoming remote consulting opportunities focused on complex machine learning challenge design, applied modeling workflows, reference solution development, technical evaluation, reproducible documentation, and high-quality project execution. Selected professionals will design, solve, and review challenging machine learning tasks that reflect real-world ML development across multiple domains and data modalities.Key ResponsibilitiesProfessionals in this role may contribute to:End-to-End Machine Learning Solution Development
- Develop complete machine learning solutions for challenging prediction and modeling problems
- Analyze datasets and define appropriate modeling approaches, validation strategies, and evaluation metrics
- Perform exploratory data analysis, feature engineering, data preprocessing, model training, tuning, and evaluation
- Work across tabular, text, image, time-series, recommendation, ranking, or other applied ML problem types Reference Solutions & Technical Documentation
- Develop strong reference solutions using industry-standard machine learning techniques and best practices
- Document methodologies, assumptions, modeling choices, validation approaches, and evaluation results clearly
- Ensure solutions are accurate, reproducible, and technically well-structured
- Identify opportunities to improve model performance through systematic experimentation and iteration ML Project Review & Evaluation
- Review and validate the technical quality of machine learning projects and deliverables
- Evaluate modeling choices, data preparation decisions, performance metrics, and experimental design
- Identify weak assumptions, data leakage risks, flawed validation, underdeveloped features, or unsupported modeling conclusions
- Provide clear written technical feedback that improves correctness, rigor, and reproducibility Ideal ProfileStrong candidates may have:
- Master's degree, PhD, or equivalent advanced experience in Computer Science, Machine Learning, Statistics, Mathematics, Electrical Engineering, or a related field
- 2+ years of hands-on experience developing, training, evaluating, and optimizing machine learning models in a professional or research setting
- Strong proficiency in Python and modern machine learning frameworks such as scikit-learn, XGBoost, LightGBM, PyTorch, or TensorFlow
- Demonstrated experience building end-to-end machine learning solutions, including data preparation, model development, validation, and evaluation
- Strong understanding of model evaluation metrics, validation methodologies, and experimental design
- Ability to work independently on open-ended machine learning problems and deliver high-quality technical outputs Relevant Experience May Include:
- Tabular machine learning
- Natural language processing
- Computer vision
- Recommendation systems
- Ranking systems
- Time-series forecasting
- Applied modeling across structured or unstructured datasets Educational Background
- Master's degree, PhD, or equivalent advanced technical experience in machine learning, computer science, statistics, mathematics, electrical engineering, data science, or a related field is highly relevant
- Academic or research experience from a strong technical program may be especially valuable
- Professional machine learning experience, applied research experience, open-source contributions, or competitive ML work may also be relevant depending on project needs Nice to Have
- PhD from a leading research university
- Experience at leading technology companies, AI-focused teams, research institutions, or high-growth startups
- Participation in competitive machine learning or data science competitions
- Experience optimizing models against performance-based evaluation metrics
- Familiarity with advanced techniques such as ensembling, hyperparameter optimization, transfer learning, foundation model fine-tuning, or reinforcement learning
- Publications, patents, or significant open-source contributions in machine learning or AI
- Experience reviewing, mentoring, or evaluating the work of other machine learning practitioners Why This Opportunity
- Apply machine learning engineering and applied research expertise to structured remote consulting work
- Contribute to high-quality ML challenge design, reference solution development, and technical evaluation
- Work on flexible assignments aligned with your modeling, Python, experimentation, and ML framework experience
- Use your technical judgment to evaluate complex ML workflows and improve solution quality
- Remote structure with competitive hourly compensation Contract Details
- Independent contractor role
- Fully remote with flexible scheduling
- Eligible professionals may be based in approved project locations depending on project needs
- Project commitment may vary depending on availability and scope
- Competitive rates up to $100 per hour depending on expertise and project scope
- 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.