Important
There is no immediate project for this role; however, if qualified, you will be among the first experts we reach out to when relevant opportunities arise. This will also provide you with access to future projects available through our expert network.
Key Responsibilities
- Develop AI Training Content: Create detailed prompts in various topics and responses to guide AI learning, ensuring the models reflect a comprehensive understanding of diverse subjects.
- Optimize AI Performance: Evaluate and rank AI responses to enhance the model's accuracy, fluency, and contextual relevance.
- Ensure Model Integrity: Test AI models for potential inaccuracies or biases, validating their reliability across use cases.
- 2+ years of hands-on experience using R for data analysis, statistics, or data science work.
- Strong proficiency in R programming, including data wrangling, functional programming patterns, and writing reusable functions or packages.
- Solid grounding in applied statistics, including regression, inference, and model validation, with practical experience implementing these methods in R.
- Experience building end-to-end analyses in R that include data cleaning, exploratory analysis, modeling, and visualization.
- Familiarity with common R ecosystems such as tidyverse, data.table, and ggplot2, and the ability to choose appropriate tools for a given task.
- Professional experience in a data-focused role such as data scientist, statistician, quantitative analyst, or similar.
- Minimum Bachelor’s degree in Statistics, Mathematics, Computer Science, or a closely related quantitative field.
- Significant experience using large language models (LLMs) to assist with coding, analysis design, and code review in R.
- Excellent English writing skills with the ability to document analyses and explain complex statistical ideas clearly to non-experts.
- Previous experience with AI data training or model evaluation is strongly preferred, and Minimum C1 English proficiency is required.