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Avatar of 潘揚燊.
Avatar of 潘揚燊.
智慧製造全端開發工程師 @聯華電子股份有限公司
2022 ~ 现在
AI工程師、機器學習工程師、深度學習工程師、影像演算法工程師、資料科學家、Ai Application Engineer,Machine Learning Engineer,Deep Learning Engineer,Data Scientist
一個月內
員正確使用機器及降低故障率。 生產設備數據分析,製程問題進行分析,檢視錯誤原因,如: 負擔過重、溫度過高等。 Skills Python Langchain Numpy OpenCV Tensorflow (tf.keras) Pytorch Scikit-learn C# EmguCV ASP.NET Windows Forms 程式設計開發、單元測試專案 Halcon 影像處理 影像定位 瑕疵判斷 物件量測 Skills Database MySQL Oracle ArangoDB LLM
Python
Qt
Git
就职中
正在积极求职中
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4 到 6 年
元智大學 Yuan Ze University
工業工程與管理學系所
Avatar of 宋浩茹 Ellie Sung.
AI工程師、機器學習工程師、深度學習工程師、資料科學家、Machine Learning Engineer、Deep Learning Engineer、Data Scientist
一個月內
宋浩茹 Hao-Ru Sung| [email protected] | LinkedIn | GitHub A s a Research Assistant at Academia Sinica , specializing in Generative AI research and application. With 3 + years of experience in NLP a nd Machine Learning , along with 4+ years in Backend Development . Proficient at translating complex theories into practical applications. Skills Languages: Python, R, SQL, MATLAB, C, C#, JavaScript, Node.js Software & Tools: PyTorch, PyTorch Lightning, Tensorflow, Scikit-Learn, NLTK , GCP, Linux, SQL / NoSQ , Pandas, Hugging Face, Gradio, LangChain, Tensorflow, Keras, FastAPI, OpenCV, Airflow
Python
R
Natural Language Processing (NLP)
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
國立政治大學(National Chengchi University)
資訊科學系
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Product Manager @東元電機股份有限公司 (TECO Electric & Machinery Co. Ltd.)
2023 ~ 2023
Data Scientist, Data Analyst, Machine Learning Engineer
一個月內
Python
Power BI
Data Analytics
就职中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
國立成功大學 National Cheng Kung University
Mechanical Engineering
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曾任
Senior Firmware Engineer @Artesyn Embedded Technologies
2019 ~ 2022
韌體工程師/軟體工程師/控制工程師/演算法工程師/
一個月內
C
Python
C/C++
待业中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
日本電氣通信大學 The University of Electro-Communications (UEC)
Robotics Engineering
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Avatar of the user.
Data Analyst & IoT Software Developer @FARAZ ERTEBAT
2021 ~ 现在
Computer Vision / Deep Learning
一個月內
C#
C/C++
MySQL
就职中
目前会考虑了解新的机会
全职 / 对远端工作有兴趣
4 到 6 年
University of Qom
Information Technology | Face Recognition
Avatar of Alex Yu.
Avatar of Alex Yu.
Product Manager @Linker Vision
2023 ~ 现在
PM/產品經理/專案管理
一個月內
detection, segmentation, and classification AI scenario. Good communication skills with doctors' demands and collaboration with colleagues. Patent Disclosure: Ultrasound detect and notify system. (serial number: I學歷 SepJun 2 National Taiwan University of Science and Technology Masters in Electrical Engineering Thesis "Online Data Stream Analytics for Dynamic Environments Using Self-Regularized Learning Framework", IEEE journal SepJun 2020 Yuan Ze University Bachelor in Electrical Engineering Skills Customer/VC negotiation and customer services DL/ML/AI algorithm, keen problem solving 3D modeling (Blender) Python, Matlab, Tensorflow, Keras Object detection, Classification, [email protected]
Business Development
Deep Learning
PYTHON
就职中
目前会考虑了解新的机会
全职 / 对远端工作有兴趣
4 到 6 年
國立台灣科技大學 National Taiwan University of Science and Technology
電機工程
Avatar of Kao Yu Chun.
Avatar of Kao Yu Chun.
曾任
Full Stack Developer @PD Case Informática Ltda
2022 ~ 现在
前端工程師 Front-End Developer
一個月內
高鈺鈞 我有超過5年軟體開發經驗的開發者,專注於前端開發。在我的職業生涯中,我有機會接觸到多種編程語言,如Java(包括Android開發),JavaScript,Kotlin,TypeScript和Python;同時也涉及到多種技術和框架,包括Angular,React,Redux,Spring Boot,TensorFlowKeras和OpenCV;還有Oracle,MySQL和ElasticSearch等資料庫技術。 我喜歡迎接
Java
Javascript
docker
职场能力评价3
待业中
目前会考虑了解新的机会
全职 / 对远端工作有兴趣
4 到 6 年
巴西聯邦大學
系統發展與分析
Avatar of 陳松頡/Center.
Avatar of 陳松頡/Center.
高級軟體工程師 @瀚宇彩晶股份有限公司
2022 ~ 现在
一個月內
接受 https://ieeexplore.ieee.org/abstract/document/技能 / Skills 前端與框架 Html (Vue) CSS ( Bootstrap ) JavaScript C# 後端與框架 NodeJS (Express) Python(FastAPI / Flask) PHP(Laravel) C++ AI 框架 Tensorflow Keras Pytorch Onnx TensorRT OpenVINO 其他 Halcon VIDI Google Cloud Plateform AWS Document360 瑕疵檢測 網路爬蟲 工作經驗 / Work Experience 高級軟體工程師 瀚宇彩晶股份有限公司 2022/08
Python
Vue.js
Node.js / Express.js
就职中
目前会考虑了解新的机会
全职 / 对远端工作有兴趣
6 到 10 年
國立臺中科技大學National Taichung University of Science and Technology.
資訊工程系-碩士
Avatar of 林昭源 (Leo Lin).
Avatar of 林昭源 (Leo Lin).
資深經理 @緯創資通
2021 ~ 现在
Technical Manager
半年內
林昭源 (Leo Lin) 1. Two years of management experience. 2. More than 10 years of computer vision and deep learning/software architecture development experience. 3. Programming experience using python. 4. Good paper reading ability and practical ability 5. Familiar with computer vision, deep learning (CNN, Resnet, densnet, GAN), object detection (Yolo series, RCNN series), segmentation models (UNet, DensUNet). 6. Experience in semi-supervised or unsupervised learning (pesudo labeling, Voxmorph model). 7. Experience with Docker, Git, Jenkins DevOps. Education: National Taiwan University of Science and
Research
Unsupervised Learning
Computer Science
就职中
全职 / 对远端工作有兴趣
10 到 15 年
National Taiwan University of Science and Technology
Master's degree Computer Science and Information Engineering
Avatar of 歐文.
Avatar of 歐文.
曾任
資深軟體工程師 [產品研發部] @龎帝數位資訊有限公司
2018 ~ 现在
Back-End, DevOps engineer
半年內
歐文 Lorem ipsum dolor sit amet, consectetuer adipiscing elit, sed diam nonummy nibh euismod tincidunt ut laoreet dolore magna aliquam erat volutpat. Ut wisi enim ad minim veniam, quis nostrud exerci tation ullamcorper suscipit lobortis nisl ut aliquip ex ea commodo consequat. 工作經歷 資深工程師 • 龎帝數位資訊有限公司 MayMar 2023 軟體工程師,負責 DevOps 和 ML & MLOps 相關工作。 [DevOps] * 維護及開發基於 Django 的後端程式,包括 RESTful API 產
python django
AWS
MySQL
待业中
全职 / 对远端工作有兴趣
15 年以上
淡江大學(Tamkang University)
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列印

游勤葑 Chin Feng Yu

Data Scientist 

  Taiwan

[email protected]

研究 Deep learning & Adversarial training & Active Learning
玉山人工智慧公開挑戰賽2019秋季賽第二名
多年資料處理以及機器學習與深度學習建模的經驗




學歷

2021 - 2022

國立政治大學

資訊科學所

2019 - 2021

國立彰化師範大學

資訊管理系

Top Conference Paper Publication

C. -F. Yu and H. -K. Pao, "Virtual Adversarial Active Learning," 2020 IEEE International Conference on Big Data (Big Data), Atlanta, GA, USA, 2020, pp. 5323-5331, doi: 10.1109/BigData50022.2020.9378021


Abstract—In traditional active learning, one of the most well-known strategies is to select the most uncertain data for annotation. By doing that, we acquire as most as we can obtain from the labeling oracle so that the training in the next run can be much more effective than the one from this run once the informative labeled data are added to the training. The strategy, however, may not be suitable when deep learning becomes one of the dominant modeling techniques. Deep learning is notorious for its failure to achieve a certain degree of effectiveness under the adversarial environment. Often we see the sparsity in deep learning training space which gives us a result with low confidence. Moreover, to have some adversarial inputs to fool the deep learners, we should have an active learning strategy that can deal with the aforementioned difficulties. We propose a novel Active Learning strategy based on Virtual Adversarial Training (VAT) and the computation of local distributional roughness (LDR). Instead of selecting the data that are closest to the decision boundaries, we select the data that is located in a place with rough enough surface if measured by the posterior probability. The proposed strategy called Virtual Adversarial Active Learning (VAAL) can help us to find the data with rough surface, reshape the model with smooth posterior distribution output thanks to the active learning framework. Moreover, we shall prefer the labeling data that own enough confidence once they are annotated from an oracle. In VAAL, we have the VAT that can not only be used as a regularization term but also helps us effectively and actively choose the valuable samples for active learning labeling. Experiment results show that the proposed VAAL strategy can guide the convolutional networks model converging efficiently on several well-known datasets. 
Keywords: Active Learning, Adversarial Examples, Virtual Adversarial Training, Adversarial Training


工作經歷

二月 2021 - 六月 2021

AI QA實習生

訊連科技股份有限公司

 The beta test for FaceMe® Security


產學專案

三月 2021 - 7月 2021

台大醫院神經科--Parkinson Disease Detection

三月 2021 - 7月 2021

KaiKuTeK 手勢辨識


技能

Web Design

HTML, CSS, Javascript, Django


Machine Learning

Tensorflow & Keras 

Semi-Supervised/ Supervised / Unsupervised Learning 

Anomaly Detection, Object Detection

Others

C++

Java

Python


比賽經驗


玉山人工智慧公開挑戰賽2019秋季賽 第二名


校園專案-外匯車銷售平台

利用 Python Django 打造外匯車銷售網頁

建置 ER model ,後台管理者Dashboard

網頁設計美化 




校園專案-人臉辨識門禁管理

 因應疫情打造一個以人臉辨識為基礎的門禁系統, 此門禁系統會連動學校的健康以及旅遊史資料庫, 經過門禁系統使自動調閱學生的旅遊史。

简历
个人档案

游勤葑 Chin Feng Yu

Data Scientist 

  Taiwan

[email protected]

研究 Deep learning & Adversarial training & Active Learning
玉山人工智慧公開挑戰賽2019秋季賽第二名
多年資料處理以及機器學習與深度學習建模的經驗




學歷

2021 - 2022

國立政治大學

資訊科學所

2019 - 2021

國立彰化師範大學

資訊管理系

Top Conference Paper Publication

C. -F. Yu and H. -K. Pao, "Virtual Adversarial Active Learning," 2020 IEEE International Conference on Big Data (Big Data), Atlanta, GA, USA, 2020, pp. 5323-5331, doi: 10.1109/BigData50022.2020.9378021


Abstract—In traditional active learning, one of the most well-known strategies is to select the most uncertain data for annotation. By doing that, we acquire as most as we can obtain from the labeling oracle so that the training in the next run can be much more effective than the one from this run once the informative labeled data are added to the training. The strategy, however, may not be suitable when deep learning becomes one of the dominant modeling techniques. Deep learning is notorious for its failure to achieve a certain degree of effectiveness under the adversarial environment. Often we see the sparsity in deep learning training space which gives us a result with low confidence. Moreover, to have some adversarial inputs to fool the deep learners, we should have an active learning strategy that can deal with the aforementioned difficulties. We propose a novel Active Learning strategy based on Virtual Adversarial Training (VAT) and the computation of local distributional roughness (LDR). Instead of selecting the data that are closest to the decision boundaries, we select the data that is located in a place with rough enough surface if measured by the posterior probability. The proposed strategy called Virtual Adversarial Active Learning (VAAL) can help us to find the data with rough surface, reshape the model with smooth posterior distribution output thanks to the active learning framework. Moreover, we shall prefer the labeling data that own enough confidence once they are annotated from an oracle. In VAAL, we have the VAT that can not only be used as a regularization term but also helps us effectively and actively choose the valuable samples for active learning labeling. Experiment results show that the proposed VAAL strategy can guide the convolutional networks model converging efficiently on several well-known datasets. 
Keywords: Active Learning, Adversarial Examples, Virtual Adversarial Training, Adversarial Training


工作經歷

二月 2021 - 六月 2021

AI QA實習生

訊連科技股份有限公司

 The beta test for FaceMe® Security


產學專案

三月 2021 - 7月 2021

台大醫院神經科--Parkinson Disease Detection

三月 2021 - 7月 2021

KaiKuTeK 手勢辨識


技能

Web Design

HTML, CSS, Javascript, Django


Machine Learning

Tensorflow & Keras 

Semi-Supervised/ Supervised / Unsupervised Learning 

Anomaly Detection, Object Detection

Others

C++

Java

Python


比賽經驗


玉山人工智慧公開挑戰賽2019秋季賽 第二名


校園專案-外匯車銷售平台

利用 Python Django 打造外匯車銷售網頁

建置 ER model ,後台管理者Dashboard

網頁設計美化 




校園專案-人臉辨識門禁管理

 因應疫情打造一個以人臉辨識為基礎的門禁系統, 此門禁系統會連動學校的健康以及旅遊史資料庫, 經過門禁系統使自動調閱學生的旅遊史。