工程全职现场办公
Taipei, Taiwan

岗位摘要

该职位专注于将大型语言模型和强化学习应用于量化交易领域,负责构建AI代理以提升交易自动化和市场洞察。职责包括将研究原型转化为生产级系统,设计实验生成交易信号,优化模型性能与成本,并采用MLOps最佳实践。要求具备计算机科学或相关领域硕士学历,精通AI编码工具和LLM生态系统,有端到端模型训练经验,强调快速迭代和跨团队沟通能力。

技能要求:

LLM量化交易AI工程强化学习模型微调MLOpsPythonPyTorchTensorFlowAI代理提示工程金融科技自动化交易实验设计跨团队协作

公司简介

We are a top-tier company focused on cutting-edge technology and financial trading. Our hardware team is dedicated to developing ultra-low latency and high-performance digital design solutions, keeping pace with Wall Street’s best in FPGA design. Our strategies span stocks, futures, and derivatives, with a daily global trading volume reaching hundreds of millions of USD, underscoring our leadership and scale. - Engineering-driven trading: we turn research into quantifiable trading edge through robust data and systems engineering. - Global perspective with local agility: Taipei-based team operating across global markets with high-speed decisioning and strong compliance. - Leading infrastructure: proprietary low-latency trading stack, distributed data pipelines, and HPC/GPU/FPGA acceleration. - Culture & values: Ownership, performance obsession, transparent collaboration, fast iteration, and outcomes-first mindset. - Growth & resources: generous experiment budgets, top-tier cloud/compute, and support for academic and open-source engagement.

岗位职责

This role builds and strengthens our core capabilities in Large Language Model (LLM) Agents and Reinforcement Learning (RL) to directly power trading automation and deepen market insights. You will work closely with quants, data engineers, and software engineers to turn research prototypes into production-grade systems for live trading environments. Co-design experiments with quants to translate model outputs into tradable signals, with offline/online backtesting and A/B testing. Design and build AI agents (RAG, tool use, task planning) to boost strategy research and trading execution efficiency. Apply prompt engineering, MoE, LoRA, quantization, and distillation to improve the perf–cost curve and inference latency. Specialize fine-tuning and alignment (SFT/DPO) for financial text—disclosures, news, social, earnings—to improve event and sentiment inference. Adopt MLOps best practices (containerization, CI/CD, feature/model versioning) to increase velocity and compliance. Track frontier research and lead internal tech sharing to inform model selection and architecture evolution.

岗位要求

M.S. or above in CS/EE/Data Science preferred; equivalent practical achievements considered. Proficient with AI coding tools (Cursor, Claude Code); adept in spec engineering and test-driven development (TDD). Deliver rapid 0→1 with AI and drive 1→100 iterative improvement. 2+ years in LLM with PyTorch or TensorFlow; hands-on experience training and fine-tuning models end to end. Fluency in the LLM ecosystem (LangGraph, Ollama, OpenAI SDK) to rapidly prototype and ship services. Strong experiment design, problem decomposition, and cross-team communication with an emphasis on observability and operability. Effective communication in Mandarin and English; able to write technical docs and present externally.

福利待遇

Full package around NTD 3M, 13 month base, typically 18 months incl. bonus Negotiable sign-on bonus

联系方式:

@antony92920

关注 Telegram 频道

第一时间获取最新远程职位推送

分享职位