Research Scientist - LLM Foundation Models
at Binance
Posted 6 hours ago
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- Compensation
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Binance is seeking a highly skilled Research Scientist/Engineer to advance the reasoning and planning capabilities of large foundation models. You will work across the development lifecycle, including data acquisition, supervised fine-tuning (SFT), reward modeling, and reinforcement learning, and synthesize large-scale datasets via rewriting, augmentation, and generation. You will apply System 2 thinking and advanced decoding strategies such as MCTS and A*, and design robust evaluation methodologies. You will enable models to interact with external tools, APIs, and code interpreters, and build agents and multi-agent systems to address sophisticated real-world problems.
Responsibilities
- Reasoning and planning for foundation models: Enhance reasoning and planning throughout the entire development process, including data acquisition, model evaluation, SFT, reward modeling, and reinforcement learning, to improve overall performance.
- Synthesize large-scale, high-quality data using methods such as rewriting, augmentation, and generation to improve the capabilities of foundation models in various stages (pretraining, SFT, RL).
- Solve complex tasks using system 2 thinking and leverage advanced decoding strategies such as MCTS, A*.
- Investigate and implement robust evaluation methodologies to assess model performance at various stages.
- Teach foundation models to use tools, interact with APIs, and code interpreters. Build agents and multi-agent systems to solve complex tasks.
Requirements
- Proficiency in research experience with RL, LLM, and familiarity with large-scale model training is preferred.
- Proficiency in data structures and fundamental algorithm skills, and fluency in Python or C++/Java.
- Experience with influential projects or papers in RL, NLP, or Deep Learning is preferred.
- Excellent problem analysis and problem-solving skills, capable of deeply addressing challenges in large-scale model training and application.
- Good communication and collaboration skills, with the ability to explore new technologies with the team and promote technological progress.

