

YO HR Consultancy
Machine Learning Engineer
โญ - Featured Role | Apply direct with Data Freelance Hub
This role is a part-time Machine Learning Engineer position, remote and asynchronous, lasting through December 22nd with potential extension into 2026. Pay ranges from $80-$120/hr. Requires 0-2 years of experience or a PhD in Computer Science, proficiency in Python and ML libraries.
๐ - Country
United States
๐ฑ - Currency
$ USD
-
๐ฐ - Day rate
960
-
๐๏ธ - Date
November 23, 2025
๐ - Duration
More than 6 months
-
๐๏ธ - Location
Remote
-
๐ - Contract
1099 Contractor
-
๐ - Security
Unknown
-
๐ - Location detailed
United States
-
๐ง - Skills detailed
#Reinforcement Learning #ML (Machine Learning) #TensorFlow #AI (Artificial Intelligence) #Python #Libraries #Computer Science
Role description
weโre building the talent engine that helps leading labs and research orgs move AI forward. Our latest initiative focuses on benchmarking and improving model performance and training speed across real ML workloads. If youโre an early-career Machine Learning Engineer or an ML PhD who cares about innovation and impact, weโd love to meet you.
What to Expect
As a Machine Learning Engineer, youโll tackle diverse problems that explore ML from unconventional angles. This is a remote, asynchronous, part-time role designed for people who thrive on clear structure and measurable outcomes.
โข Schedule: Remote and asynchronousโset your own hours
โข Commitment: ~30 hours/week
โข Duration: Through December 22nd, with potential extension into 2026
What Youโll Do
โข Draft detailed natural-language plans and code implementations for machine learning tasks
โข Convert novel machine learning problems into agent-executable tasks for reinforcement learning environments
โข Identify failure modes and apply golden patches to LLM-generated trajectories for machine learning tasks
What Youโll Bring
โข Experience: 0โ2 years as a Machine Learning Engineer or a PhD in Computer Science (Machine Learning coursework required)
โข Required Skills: Python, ML libraries (XGBoost, Tensorflow, scikit-learn, etc.), data prep, model training, etc.
โข Bonus: Contributor to ML benchmarks
Compensation & Terms
โข Rate: $80-$120/hr, depending on region and experience
โข Payments: Weekly via Stripe Connect
โข Engagement: Independent contractor
How to Apply
1. Submit your resume
1. Complete the System Design Session (< 30 minutes)
1. Fill out the Machine Learning Engineer Screen (<5 minutes)
weโre building the talent engine that helps leading labs and research orgs move AI forward. Our latest initiative focuses on benchmarking and improving model performance and training speed across real ML workloads. If youโre an early-career Machine Learning Engineer or an ML PhD who cares about innovation and impact, weโd love to meet you.
What to Expect
As a Machine Learning Engineer, youโll tackle diverse problems that explore ML from unconventional angles. This is a remote, asynchronous, part-time role designed for people who thrive on clear structure and measurable outcomes.
โข Schedule: Remote and asynchronousโset your own hours
โข Commitment: ~30 hours/week
โข Duration: Through December 22nd, with potential extension into 2026
What Youโll Do
โข Draft detailed natural-language plans and code implementations for machine learning tasks
โข Convert novel machine learning problems into agent-executable tasks for reinforcement learning environments
โข Identify failure modes and apply golden patches to LLM-generated trajectories for machine learning tasks
What Youโll Bring
โข Experience: 0โ2 years as a Machine Learning Engineer or a PhD in Computer Science (Machine Learning coursework required)
โข Required Skills: Python, ML libraries (XGBoost, Tensorflow, scikit-learn, etc.), data prep, model training, etc.
โข Bonus: Contributor to ML benchmarks
Compensation & Terms
โข Rate: $80-$120/hr, depending on region and experience
โข Payments: Weekly via Stripe Connect
โข Engagement: Independent contractor
How to Apply
1. Submit your resume
1. Complete the System Design Session (< 30 minutes)
1. Fill out the Machine Learning Engineer Screen (<5 minutes)






