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G2i Inc.

G2i is a hiring platform run by engineers that match you with pre-vetted React and React Native engineers.

Machine Learning Evaluation Specialist - Remote

Machine Learning EngineerMachine Learning EngineerFull TimeRemoteMid LevelTeam 11-50H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

46 days ago

Salary

$200 - $400 / hour

Seniority

Mid Level

No structured requirement data.

Job Description

Machine Learning Evaluation Specialist - Remote

G2i Inc.

Machine Learning Evaluation Specialist (Remote) List of accepted countries and locations Important for US applicants: This is a 1099 independent contractor role and is not compatible with F-1 OPT, STEM OPT, or other visa statuses that require W-2 employment, guaranteed hours, or employer sponsorship. We are unable to provide offer letters or employment verification for this role. Help design the hardest ML problems state-of-the-art AI hasn't solved yet. We're hiring domain experts to build evaluation tasks that challenge the frontier of AI. This is not an ML engineering role — it's a research role. You'll use deep expertise in your field to create problems that general ML knowledge can't touch. What you'll do - Propose and frame original, research-grade ML problems rooted in your domain - Design evaluation tasks that require specialized knowledge well beyond standard pipelines - Assess AI-generated solutions for correctness, creativity, and methodological rigor — and explain exactly where and why they fall short - Document problem difficulty, required domain knowledge, and expected failure modes What you need - Graduate-level expertise (MS or PhD preferred) in a scientific or technical domain that intersects with ML - Strong working knowledge of ML methods — model selection, feature engineering, evaluation metrics - Deep familiarity with active research problems in your field — you know where general ML knowledge runs out - Excellent written communication — you can articulate complex problems clearly and precisely. This cannot be overstated. - Self-motivated and comfortable working independently on intellectually demanding tasks What you don't need - No prior AI training or RLHF experience required - No software engineering background needed — domain expertise and research instincts are what matter Domains we're especially looking for - Computational Biology / Bioinformatics - Genomics / Molecular Biology - Physics / Astrophysics / Signal Processing - Climate / Environmental Modeling - Healthcare / Medical Imaging - Neuroscience / Brain-Computer Interfaces - Materials Science / Chemistry - Finance / Quantitative Modeling - Robotics / Control Systems / Reinforcement Learning - Advanced NLP (specialized domains) - Mathematics / Statistics (applied) Logistics - Fully remote — work from anywhere - $200–$400/hr depending on domain and seniority - 10–40 hrs/week, hourly contract - Assessment required — paid if approved - Independent contractor (1099) — not compatible with F-1 OPT, STEM OPT, or visa statuses requiring W-2 employment or employer sponsorship ⚠️ This is a project-based, freelance opportunity with no guaranteed hours. We recommend keeping other work options open while waiting for project assignment.

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Spain