你好,我是陳佑翔,資訊工程學系出身,熱衷於資料分析及嘗試新技術。碩士時期主要研究領域為深度學習、自然語言、推薦系統。並透過論文進一步探討基於附帶資訊的可解釋推薦系統 (e.g. 用戶評論、知識圖譜),除了提升預測效能也可提出推薦的依據。
目前待業中,希望能結合所學,從事資料科學家、機器學習工程師相關的工作。本身樂於結交新朋友,並參與過資訊相關競賽提升團隊合作經驗,於閒暇時喜歡看書、打球、健身。
MySQL (MariaDB, SQL Server)
Pandas
Numpy
PyTorch
Scikit-Learn
Gensim
Experience in machine learning development and optimization
SVM, Boosting, Regression model
CNN
Sequential model (e.g. RNN, LSTM, GRU)
Attention model
Transformers
BERT
Strong experience in modeling user-item interaction.
Research heavily in :
九月 2018 - 七月 2020
開發思考力遊戲 app,思考力平台是評量創造力的遊戲測驗,包含一筆劃遊戲、屬性聯想遊戲、簡圖聯想遊戲、圖繪展開遊戲等四項遊戲內容。用戶可在遊戲歷程的作答中,分析出精緻性創意或創新性思考力表現。
負責的工作內容為:
二月 2019 - 六月 2019
資料庫系統 (碩一)
2019年9月-2020年1月
資料結構 (碩二)
九月 2017 - 六月 2018
負責的工作內容為:
2018 - 2020
2014 - 2018
你好,我是陳佑翔,資訊工程學系出身,對新技術充滿好奇心,並樂於解決問題。
在我的大學生涯中,除了修課精進資訊工程的專業,也曾參與高速公路 ETC 創意競賽、華南 Fintech 金融科技創新競賽以提升自身的競爭能力。大學三年級時,師大心理與教育測驗研究發展中心擔任程式設計工程師,負責開發自動化資料爬取程式庫(DLL),並進行資料庫建設與管理。
碩士期間,我進入資料探勘實驗室,主要的研究領域是深度學習、自然語言、推薦系統,並深度探討協同過濾、矩陣分解、基於附帶資訊的可解釋推薦系統 (結合用戶評論、知識圖譜等資訊進行用戶表徵學習)。我的論文 - 提供具可解釋並改善評論缺漏問題之推薦系統,發表基於評論之階層式注意力神經網路模型 - HANN-Plus。HANN-Plus 透過學習用戶資料及評論文本的表徵,增進模型預測效能,不僅可為用戶進行商品推薦,也能對推薦結果生成文字解釋內容。
綜合以上學經歷,希望能結合所學,從事資料科學家、機器學習工程師相關的工作。感謝您撥空考慮這份履歷,希望能與您會面討論如何為貴公司做出貢獻,請隨時以電子郵件 [email protected] 與我聯繫。
陳 佑翔
Dear HR Recruiter,
My name is Sean, a master graduate from National Taiwan Normal University in July 2020 with Computer Science and Information Engineering. I am always a curious person who think independently and willingness to learn state-of-the-art techniques.
While exploring my passion for Computer Science during college, I participated ETC Freeway Travel Time Prediction Competition, Hua Nan Fintech Innovation Competition and won the best award. Besides, in the senior of university, I am also an intern of Research Center for Psychological and Educational Testing. My job is to crawl the book information from several libraries and manage the database using SQL Server.
During my master's degree, I have developed extensive knowledge and expertise in the field machine learning. Besides collecting and examining large datasets, I am fully skilled in creating and implementing professional data forecasting models.
For my master's thesis, I researched heavily in Deep Learning, Natural Language Processing, Recommendation System. Furthermore, I focus on the research in Collaborative Filtering, Matrix Factorization and representation learning in Explainable Recommendation System with diverse side information (e.g. review, knowledge graph).
My thesis "Explainable Recommendation System for Solving Review Loss", proposed a review-based framework named HANN-Plus, a hierarchical attention neural network, which can simultaneously predict precise ratings and generate textual explanation to simulate user experience for making user aware of why such products are recommended.
Thank you for your time and consideration. I am looking forward to meeting to you about the possibility of my joining and how can I contribute to your team. Please feel free to reach me via Email at [email protected] to arrange for an interview.
Sincerely,
Sean Chen