Data Analyst Trainer (Remote)

DataAnnotation
Walsall
4 days ago
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We are looking for a data analyst to join our team to train AI models. You will measure the progress of these AI chatbots, evaluate their logic, and solve problems to improve the quality of each model. In this role you will need to hold an expert level of mathematical reasoning- a completed or in progress Masters/PhD is preferred but not required. Other related fields include, but are not limited to: Data Science, Applied Math and/or Computer Science. This is a full-time or part-time REMOTE position * You’ll be able to choose which projects you want to work on * Projects are paid hourly starting at $40+ USD per hour, with bonuses on high-quality and high-volume work Give AI chatbots diverse and complex mathematics problems and evaluate their outputs * Evaluate the quality produced by AI models for correctness and performance Fluency in English (native or bilingual level)* Proficient in data science, arithmetic, algebra, geometry, calculus, probability, statistics, and inductive/ deductive reasoning * A current, in progress, or completed Masters and/or PhD is preferred but not required Job Types: Full-time, Part-time 88 per hour Work Location: Remote

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