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A portrait photo of Wang Yuqi FIG. 001 PORTRAIT

王钰淇

大四本科在读。目前的研究方向为世界模型空间推理“AI究竟需要怎样的中间表示,才能真正理解物理世界?” ——科研的日常免不了枯燥,但每当想到这个问题我便感到兴奋。PhD的几年里,我打算跟它较劲到底。
学历 港理工 计算机 本科 27级 · 发表 ICML26 共一 · 专业课GPA 3.94 · 邮箱 tony-yuqi.wang@connect.polyu.hk
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个人简介

"I care about representations that generalize and projects worth polishing."

I'm a final-year undergraduate at The Hong Kong Polytechnic University, supervised by Prof. Bing Wang. I am interested in what representations AI need to understand and reason about the physical world. To date, I have explored this question through spatial reasoning via explicit scene graphs, and world models where latent structure naturally emerges. I hope to develop models that support 3D perception, prediction, and reasoning.

When it comes to projects, I treat each and every of them as a work of art, a few of which I am proud of; a full list can be found in my github repo. Outside of university, I enjoy filming and video production. I once grew a channel past 100K subscribers. I have also independently produced a documentary and an AI short film, with the latter winning an award at the 15th Beijing International Film Festival (BJIFF).

I'm applying to PhD programs starting Fall 2027. I look forward to exploring questions surrounding spatial understanding in greater depth.

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时间线

2026
一篇论文被 ICML 2026 接收
已刊出 P-2026-05
2024
本科生科研创新计划 (URIS),由 王冰教授指导。
香港理工大学 URIS Program
2023
入读香港理工大学本科
香港理工大学
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精选研究

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精选项目

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Diagram of Double Ratchet algorithm used in Veracity Messenger. §3.04
2026 共同主导
系统 完成
Veracity: End-to-end Encrypted Messaging with Forward Secrecy and Post-Compromise Security
Yuqi Wang*, Xikun Yang*, Jinkun Yang , ...

Desktop E2EE messenger implementing full Signal cryptographic stack (e.g., X3DH and Double Ratchet) totalling ~20,000 lines of code. Security properties are formally verified using TLA+ and Alloy, with in-transit ciphertext validated against the NIST 800-22 statistical test suite. This as a course project that far exceeded baseline requirements.

Accuracy-latency scatter plot for AIoT dispatcher evaluation §3.05
2026 独立
系统 完成
Towards Optimal Dispatch in AIoT Inference
Yuqi Wang

Explores the accuracy-latency Pareto frontier in AIoT systems. Existing dispatchers sacrifice one for the other. I implement Lyapunov drift-plus-penalty with auto-tuned V and a time-quantized dynamic programming planner that jointly optimize over the decision space. The DP planner pushes the Pareto frontier furthest, achieving near full-model accuracy with under 1% deadline misses across all tested arrival patterns.

Feature engineering and foundation model stacking evaluation chart §3.07
2025 主导
机器学习 完成
Feature Engineering and Foundation Model Stacking
Yuqi Wang, Haoqian Du, Haoyang Du

Empirically investigated whether pretrained foundation models obsolete both classical methods and manual feature engineering on tabular data. Through comprehensive ablations, our findings: they do, and the best preprocessing is none at all. We also managed achieved Top-10 result on Kaggle's House Price Prediction challenge.

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更新 2026·05·01 · v1.0