About Me

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Hello! 好呀 ~ こんにちは!

Hello! I am a passionate data scientist and researcher with a strong interest in machine learning, data analysis, and artificial intelligence. I am currently pursuing my Master of Science in Data Science at University of California San Diego. I am also a visiting student at Stanford University, where I am fortunate to be advised by Prof. Yejin Choi and Prof. James Zou.

My research experienced image restoration, continual learning, out-of-distribution generalization, agentic LLMs. I enjoy solving complex problems and developing innovative solutions that leverage the power of data.

Right now I'm exploiring intellegent decision. I'm looking forward to communicating up-to-date new inspirations!

 Education

University of California San Diego

Master of Science in Data Science (Expected)

09/2025 - 06/2027

Shanghai University

Bachelor of Engineering in Data Science & Big Data Technology

09/2021 - 06/2025

Hong Kong University of Science and Technology

Summer Session - Data & Computer Science

08/2024

University of Pennsylvania, Wharton School

Wharton Innovation, Entrepreneurship and Leadership Program & The Global Leadership Program for Young Scholars.

07/2023 - 08/2023

 Publication

arXiv 2026
OpenResearcher Preview

OpenResearcher: A Fully Open Pipeline for Long-Horizon Deep Research Trajectory Synthesis

Zhuofeng Li*Equal contribution, Dongfu Jiang*Equal contribution, Haoxiang Zhang, and 7 more authors

GitHub ⭐
bioRxiv 2026
Eubiota Preview

Eubiota: Modular Agentic AI for Autonomous Discovery in the Gut Microbiome

Pan Lu*Equal contribution, Yifan Gao*Equal contribution, Haoxiang Zhang, and 12 more authors

GitHub ⭐
ICLR 2026 Oral & NIPS 2025 ER Workshop
AgentFlow Preview

In-the-Flow Agentic System Optimization for Effective Planning and Tool Use

Zhuofeng Li*Equal contribution, Haoxiang Zhang*Equal contribution, Pan LuCorresponding author, and 5 more authors

Hugging Face Daily Paper #2 GitHub ⭐
TMLR
PromptOOD Preview

Avoiding Structural Pitfalls: Self-Supervised Low-Rank Feature Tuning for Graph Test-Time Adaptation

Haoxiang Zhang, Zhuofeng Li, Shichao PeiCorresponding author, and 3 more authors

Dataset
AIME25 Preview

Sci-Bench-AIME25: A Multi-Modal Chain-of-Thought Dataset for Advanced Tool-Intergrated Mathematical Reasoning

Haoxiang ZhangCorresponding author, Siyuan WangCorresponding author, Xueji Fang, and 5 more authors

CIKM 2025
GReF Preview

GReF: A Unified Generative Framework for Efficient Reranking via Ordered Multi-token Prediction

Zhijie Lin*Equal contribution, Zhuofeng Li*Equal contribution, Haoxiang Zhang, and 4 more authors

CIKM 2024
CFKGC Preview

Learning from Novel Knowledge: Continual Few-shot Knowledge Graph Completion

Zhuofeng Li*Equal contribution, Haoxiang Zhang*Equal contribution, Shichao PeiCorresponding author, and 2 more authors

Mathematics
SGNet Preview

SGNet: Efficient Snow Removal Deep Network with a Global Windowing Transformer

Shan Lie, Haoxiang Zhang, Bodong ChengCorresponding author

Long-term Collaboration

Lambda, Inc.

Student credit grant, Lambda Platform GPU inference service, and agentic AI research.

Shanghai Tongliang Intelligent Technology Co., Ltd.

> Research Consultant (Permenant).

Focused on exploring Multi-Agent Adversarial (MAA) strategies for competitive and collaborative dynamics in quantitative trading algorithms. Solved challenges related to high instability of financial data and Out-of-Distribution issues in algorithms.

> Chief Scientist (04/2025 - 06/2025)

During this tenure, managed the team to innovate and validate in medium-frequency live trading various MAA-integrated algorithms across diverse asset classes, including but not limited to Chinese market futures and options, cryptocurrencies, and equity investments.

These algorithms included:

  • Adaptive VWAP multi-scale order splitting strategies.
  • Q-LEARNING Reinforcement Learning.
  • VIX based strategies.
  • Automated feature factor screening.
  • News information factor mining.

Collaborated with the team to achieve a positive corporate annual profit of 20% (annualized) with a maximum drawdown of 8%.

MAA-TSF Preview

MAA-TSF: Multi-Agent Adversarial Time Series Forecasting

Ye Qiao, Cheng Chen, Haoxiang ZhangCorresponding author, and 2 more authors

 Industrial Internship

Shanghai Artificial Intelligence Labotary

Multimodal Unified Auto-regressive Generation.

View Detail [Lumina-mGPT]

08/2024 - 02/2025

Bank of Communications, Shanghai Branch

Intern, Internet Finance Team & Data Application Team. Decentralized Finance.

07/2024

FASOTEC Co., Ltd.

Technical Assistant. Server Hardware & CATIA Software.

08/2023 - 10/2023

© 2024 Isaac_GHX

Data Scientist | Researcher | Engineer