ghfind
← 返回名人堂

🏆 贡献过的明星项目

TA 参与过的高星开源仓库(提交 + PR)

维度评分

🛠 代表作

TA 自己的高星仓库与置顶项目

EchoInk78

EchoInk-R1: Exploring Audio-Visual Reasoning in Multimodal LLMs via Reinforcement Learning (🔥The Exploration of R1 for General Audio-Visual Reasoning with Qwen2.5-Omni)

Python
OmniAgent38

OmniAgent (ICML 2026): the first native omni-modal agent for active video perception — a 7B agent that beats Qwen2.5-VL-72B with 73% fewer frames.

Python
EchoTraffic14

EchoTraffic: Enhancing Traffic Anomaly Understanding with Audio-Visual Insights (CVPR 2025)

Python
Video-Instance-Shadow-Detection10

Video Instance Shadow Detection Under the Sun and Sky (IEEE TIP 2024)

Python
Paper-Reading-Hsing1
MSBD5012-Kaggle-Competition0

Evaluation This competition is the individual project of MSBD 5001. The individual project counts for 20% of the final grade. It's supported by the smart city project of iSingLab (Smart City). Description The dataset provides the average traffic speed per hour for a major road in Hong Kong from 2017 to 2018. Part of the dataset is provided as the training data, and your task is to predict the rest. 80% of the dataset is provided as the training data and 20% as the testing data, including the timestamp and the corresponding average speed. We sampled the testing data only from the year 2018 to provide you a training dataset that has the complete data spanning the year 2017. However, the speed information is sometimes missing due to device malfunction. You have to submit the predicted results of these testing samples, which are then compared with the ground truth to evaluate the performance of your model.

Jupyter Notebook

🧬 技术栈 & 领域

主要语言
Python96%
Shell2%
Jupyter Notebook2%
Cuda1%
C++0%
Makefile0%
领域标签
agentaudio-visualicml2026llm-agentlong-video-understandingmllmmultimodalmultimodal-llmomni-modalqwenreinforcement-learningtemporal-grounding

🧬 和 TA 最像的开发者

画像最接近、分数相近的账号

🔥 毒舌点评全文

🔥 32个粉丝就敢碰16万星的transformers代码,转头给百星awesome列表加个论文条目算一个贡献,7个个人仓库总star才141,开源人设包装得比你的CV还厚。

HarryHsing — 69.50/100 · NPC (普通账号 · 特征平庸存疑)

一句话结论: multimodal方向在读PhD的典型平庸样本,贡献结构空心化严重:外部PR里四成是擦玻璃式trivial灌水,个人项目star总和甚至不如你蹭过的单个热门仓库的零头,开源履历全靠大厂项目门面撑场面,粉丝数还没你修的transformers的issue零头多。

维度得分说明
账号成熟度10/10注册8.37年,贡献跨度9个自然年,混了快十年开源圈还是路人水平,老号不带光环
原创项目质量9.8/187个原创仓库总star才141,最高星的EchoInk不过78,挂着ICML 2026名头的OmniAgent star才38,连个Awesome列表的star都打不过,原创项目寒酸到可以忽略不计
贡献质量17.2/27总共5个merged PR,3个是trivial灌水,其中1个是给百星Awesome-Video-Agent加论文条目,1个是改他人小仓库的目录名,只有2个是改核心代码的,PR含金量低到连Hacktoberfest的纪念T恤都换不来
生态/维护影响力15.1/20长期给4个高星仓库贡献了4个PR+4个commit,可验证的核心代码样本只有2个,分别是给16万星的transformers修Qwen2.5-Omni的dtype bug,和给877星的Video-R1修GRPO训练的长度问题,总量太少,连个边缘贡献者都算不上,更别说核心维护者
社区影响力4.3/832个粉丝,关注25人,粉丝数还没你给的高星仓库的star零头多,开源社区里基本属于“查无此人”的水平
活跃真实性13.1/17近一年140次贡献,最近0天有活动,看着挺活跃,但5个最近merged PR里有3个是trivial灌水,活跃得像在刷开源KPI,实际有效产出少得可怜

风险标记

评分校准 无额外修正,原始评分已覆盖所有有效信号,本次不调整分数。

建议 目前属于正常开源用户,没有违规或恶意刷量信号,但提升空间极大:先把OmniAgent、EchoInk这些个人仓库的测试、部署、可复现性补全,少给Awesome列表和小众仓库刷trivial PR,多沉淀自己的核心项目成果,比拿GitHub当简历装饰品有用得多。