CakeResume Talent Search

Advanced filters
On
4-6 years
6-10 years
10-15 years
More than 15 years
Avatar of 傅群.
Offline
Avatar of 傅群.
Offline
Data Science Competition Participant @Self-Employed
2020 ~ Present
資料科學家
Within one month
年約10,000+遊客), 視覺化呈現建築營運 學歷 National University of Singapore Department of building •專攻建築能源和營運的機器學習技術。研究全面涵蓋了應用ML/DL的預測、異常檢測、缺失數據填補和數據生成 - Technical team in Kaggle competition: <ASHRAE - Great Energy Predictor III>近20年最大的建築能源數據競賽, 數據集涵蓋
Microsoft Office
python
machine learning
Studying
Ready to interview
Full-time / Interested in working remotely
4-6 years
National University of Singapore
Department of building
Avatar of TsunglinChen.
Avatar of TsunglinChen.
工程師 @臻鼎科技集團-KX智能製造部
2022 ~ Present
Front-End / Back-End / Full Stack Web Developer
Within two months
陳琮霖 TsunglinChen [email protected] Kaohsiung City, Taiwan https://tsunglin.synology.me/me/me.php 持續深耕、勇於突破 ● 系統開發至今客戶端持續使用及擴充15年以上、億萬級別數據運作經驗。 ● 全程參與系統開發、拓展、維護、導入等15年以上經驗。 ● 多元建構整合平台可於多行
Flutter
PHP
Python
Employed
Full-time / Interested in working remotely
10-15 years
高苑科技大學
資訊管理
Avatar of the user.
Avatar of the user.
AI 研發主任(function leader) @緯創資通股份有限公司
2020 ~ Present
AI 演算法相關工作
Within two months
Python
AWS EC2
AWS SageMaker
Employed
Full-time / Not interested in working remotely
6-10 years
中原大學 Chung Yuan Christian University
化學工程/生醫材料工程
Avatar of the user.
Avatar of the user.
資深經理 @緯創資通
2021 ~ Present
Technical Manager
Within three months
Research
Unsupervised Learning
Computer Science
Employed
Full-time / Interested in working remotely
10-15 years
National Taiwan University of Science and Technology
Master's degree Computer Science and Information Engineering
Avatar of Shangyu Huang.
Avatar of Shangyu Huang.
Data Scientist @Vizuro
Manager
Within one month
Shang-Yu Scott Huang Dr. Huang has 14+ years performance improvement of quantum computation algorithms, 6+ years software development with 2+ years team management experiences. Based on knowledge in physics, he also engages in social platform, digital marketing, healthcare, education and fintech with ML/DL technologies. In order to integrate information from multiple domains, project portfolio management is also acquired. New Taipei City,TW [email protected] Communication Understanding customers requirements to design explainable AI experiments and to develop algorithm libraries delivered to developers to integrate with production platform Project
AI & Machine Learning
Airflow
AWS
Employed
Not open to opportunities
Full-time / Interested in working remotely
6-10 years
National Taiwan University
Quantum Computation and Information Science and Technology
Avatar of Jay Lin.
Avatar of Jay Lin.
Founder @MyDearTeacher
2014 ~ 2022
Data, backend or project management
Within six months
strategies and drove iterative product enhancements. -Collaborated effectively with web developers and designers to ensure seamless project execution and delivery. Education MayOct 2023 University of Colorado Boulder Master's degree, Data Science Grade: GPA 3.957/4.0 Core Courses: Data Mining, Database, Statistical Modeling, ML/DL, NLP MayDec 2021 Taiwan AI Academy Machine Learning Bootcamp Solid training in machine learning and deep learning. Presented a capstone project on text classification with extremely small and unbalanced dataset. Conducted a series of experiments using a variety of approaches, such as Easy Data Augmentation
Python
Machine Learning
Deep Learning
Employed
Full-time / Interested in working remotely
6-10 years
University of Colorado Boulder
Data Science
Avatar of 李岳峰.
Avatar of 李岳峰.
創辦人 @酷喬伊科技有限公司
2020 ~ Present
Python developer
Within one month
李岳峰 Yue Fong Li QChoice Tech, LTD. Founder Taipei City, Taiwan 我從大學三年級時開始接觸Python,原本就對金融有興趣的我開始研究如何用Python爬取台灣證交所的股市資料,也因此開啟了我對Python的興趣。 而後便開始用Python著手研究AI,原本與朋友打算一起開一間AI公司,針對影
PyTorch
Python
PostgreSQL
Employed
Not open to opportunities
Full-time / Interested in working remotely
4-6 years
Fu Jen Catholic University
Major, Optical Physics, Minor, Finance and international business
Avatar of 장윤식.
More than one year
kerastuner , modeling (batch normalization 적용) AI를 활용한 서비스 구현 능력 적지 않은 시간을 투자하여 데이터 처리와 코딩에 많은 노력을 기울였습니다. ML/DL에 대한 깊은 이해 스터디를 통해 model의 작동 원리, Advanced gradient descent algorithm이나 Overfitting을 피하기 위해서 적용 기법 학습. Education 서울과학기술
Artificial Intelligence
Machine Learning
Deep learning with TensorFlow
Intern / Interested in working remotely
More than 15 years
서울과학기술대학교
문예창작학과 전공, IT 융합 소프트웨어 전공
Avatar of Chih-Wei Chuang 莊智煒.
Avatar of Chih-Wei Chuang 莊智煒.
Technical Project Manager/技術專案管理 @CM Visual Technology Corporation/微采視像科技股份有限公司
2016 ~ Present
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
More than one year
with cross department. Tainan City, Taiwan Skill Experience 5yrs Product development and validation 3yrs FAE to client 3yrs Display development Optic Display optics and design Wide-view technology Polarizer and Thin film process Knowledge of Color theory, Optic, Crystal optic Data science Statistic Python, R, SQL DFSS Knowledge of ML/DL, Data modeling and visualization Personality Traits Motivated learner Accustomed to communicating Flexible and open-mind Language Chinese - Native English - Intermediate Work Experience Technical Project Manager CM Visual Technology Corporation •Present Responsible for: 1. New product development project, including customer VOC to CTQ, product design and verification
6 Sigma
光學系統架設
產品開發企劃
Employed
Full-time / Interested in working remotely
6-10 years
National Sun Yat-Sen University/國立中山大學
Optoelectronic Engineering/光電工程
Avatar of the user.
Avatar of the user.
BI specialist (Cognos, SPSS) @IBM
2009 ~ 2012
Data Architect
More than one year
Big Data
machine learning
Deep Learning
Full-time / Interested in working remotely
10-15 years
Polytech Marseille

The Most Lightweight and Effective Recruiting Plan

Search resumes and take the initiative to contact job applicants for higher recruiting efficiency. The Choice of Hundreds of Companies.

  • Browse all search results
  • Unlimited access to start new conversations
  • Resumes accessible for only paid companies
  • View users’ email address & phone numbers
Search Tips
1
Search a precise keyword combination
senior backend php
If the number of the search result is not enough, you can remove the less important keywords
2
Use quotes to search for an exact phrase
"business development"
3
Use the minus sign to eliminate results containing certain words
UI designer -UX
Only public resumes are available with the free plan.
Upgrade to an advanced plan to view all search results including tens of thousands of resumes exclusive on CakeResume.

Definition of Reputation Credits

Technical Skills
Specialized knowledge and expertise within the profession (e.g. familiar with SEO and use of related tools).
Problem-Solving
Ability to identify, analyze, and prepare solutions to problems.
Adaptability
Ability to navigate unexpected situations; and keep up with shifting priorities, projects, clients, and technology.
Communication
Ability to convey information effectively and is willing to give and receive feedback.
Time Management
Ability to prioritize tasks based on importance; and have them completed within the assigned timeline.
Teamwork
Ability to work cooperatively, communicate effectively, and anticipate each other's demands, resulting in coordinated collective action.
Leadership
Ability to coach, guide, and inspire a team to achieve a shared goal or outcome effectively.
Within one month
建築/能源/IoT 資料科學家
Self-Employed
2020 ~ Present
台灣台北市
Professional Background
Current status
Studying
Job Search Progress
Ready to interview
Professions
Big Data Engineer, Data Analyst, Data Scientist
Fields of Employment
Artificial Intelligence / Machine Learning, Internet of Things (IoT), Energy
Work experience
4-6 years
Management
I've had experience in managing 1-5 people
Skills
Microsoft Office
python
machine learning
AI
IoT
Data science
Languages
English
Professional
Chinese
Native or Bilingual
Job search preferences
Positions
資料科學家
Job types
Full-time
Locations
台灣台北
Remote
Interested in working remotely
Freelance
Yes, I freelance in my spare time
Educations
School
National University of Singapore
Major
Department of building
Print

傅群

0913889502 | [email protected]
https://www.linkedin.com/in/chun-fu/
https://www.kaggle.com/patrick0302

我是一名擁有豐富機器學習和數據分析經驗的專業人士,包含了學術界的博士學歷及豐富的業界經驗,尤其在能源和建築領域有著全面的專案經驗。以下是我職業生涯的亮點和重要成就:
- 在能源和建築領域有全面的機器學習專案經驗,包括預測、異常檢測、填補缺失數據和生成模型等方面
- 在建築和能源領域擁有超過三年的業界工作經驗,包括建築運營和節能策略,參與過數個建築大數據的專案
- 在數據競賽方面擁有豐富經驗,包括在Kaggle程式碼的Master級別,並在太陽能板生產、智慧農業數位分身和西門子永續黑客松等競賽中獲勝
- 多次應邀發表講座和演講,分享能源建模和數據分析方面的知識,包括在台灣電力公司、學術會議以及Python社群
- 在數據競賽、業界工作和學術研究的不同職位中,展示出強大的團隊合作和領導能力

工作經歷


Data Science Competition Expert

一月 2020 - Present  |  Taipei, Taiwan

- 2024 Kaggle獎金競賽:Enefit -預測prosumers能源行為, 銀牌, 71th/2731 on public leaderboard (團隊成員)
- 2023西門子永續技術黑客松:”Swarm Behaviour on the Grid”, 第一名 (團隊成員,獲得5,000歐元)
- 2022 台灣AIGO:透過身體組成與健身數據AI智能健身訓練課程推薦系統, 優勝隊伍 (團隊隊長, 獲得10,000美元)
- 2022年Kaggle社區競賽:大規模能源異常檢測, 第一名(獨立參賽)
- 2021智慧農業數位分身創新應用競賽,第三名 (團隊成員, 獲得1,500美元)
- 2020 Aidea:中科智慧製造-光電製程品質預測, 第一名 (獨立參賽, 獲得1,500美元)
- Kaggle平台的程式碼(notebooks)Master (180th/55809)

資料科學家  •  探識空間科技有限公司

八月 2016 - 一月 2020  |  Taipei, Taiwan

與台積電合作研發: 應用人工智慧於建築設備群的運轉異常偵測及診斷服務
- 實踐能夠大量導入和訓練的建模流程, 應用於超過千台設備、萬點以上的IoT點位
- 應用機器學習技術及早發覺異常徵兆, 提前告知維護人員設備異常及診斷預測
- 獲得內政部建研所2019年、第12屆巢向未來銀獎獎項(總排名第二名)

分析市政府的BA大數據, 並協助BIM-FM系統的建置
- 建置可視化的能源預測及最佳化服務(結合氣象預報)
- 從營運大數據中, 提出數種策略: 冰機預測性控制, 預冷策略, 負荷移轉
- 帶領工讀生完成1000+個空調設備的電子及系統化

建置智慧建築管理系統 (內政部建研所的Living 3.0智慧化展示空間)
- 整合500+的I/O點位, 包含既有系統及新增感測器 (BACnet/Modbus)
- 向參觀民眾展示智慧節能及最佳化控制 (每年約10,000+遊客), 視覺化呈現建築營運

學歷


National University of Singapore

Department of building  •  2020 - 2024

- 專攻建築能源和營運的機器學習技術。研究全面涵蓋了應用ML/DL的預測、異常檢測、缺失數據填補和數據生成
- Technical team in Kaggle competition: <ASHRAE - Great Energy Predictor III>近20年最大的建築能源數據競賽, 數據集涵蓋全球1500棟建築、收集期間長達三年, 協助分析比賽隊伍的機器學習模型及預測表現, 並比較不同的預測模型建構策略
- 博士論文<Automated Pipelines for Enhanced Energy Data Quality: Anomaly Detection, Data Imputation, and Generative Modeling>, 提出了一套結合異常偵測、缺失預測和數據條件生成的自動化流程, 規模化的將能源大數據進行清理和前處理。
- 2023台灣電力公司邀請演講: 數據與電業之旅系列講座 – 以數據探索能源與評估風險,
- 2022 PyCon APAC (python社群年會)公開演講: 從開放數據閱讀台灣能源 - 數據探索、模型預測和風險評估
- 2022 BuildSys2022 Workshop: "1st ACM BuildSys 2022 Tutorial on Electricity Demand Forecasting"

National Taiwan University

Sustainable Environment and Green Architecture  •  2013 - 2015

綠建築標章制度下之節能成效調查與驗證研究

-執行國內首次對EEWH綠建築標章實質效益的全面檢核, 欲了解國內的綠建築制度對於建築耗能是否有顯著的成效
-進行數棟具綠建築標章辦公大樓的EnergyPlus能源性能模擬

National Taiwan University

Bioenvironmental System Engineering  •  2009 - 2013

- NTU Presidential Award (2013)
- Class Representative

學術發表


- Fu, C., Quintana, M., Nagy, Z., & Miller, C. (2024). Filling time-series gaps using image techniques: Multidimensional context autoencoder approach for building energy data imputation. Applied Thermal Engineering, 236, 121545.

- Canaydin, A., Fu, C., Balint, A., Khalil, M., Miller, C., & Kazmi, H. (2024). Interpretable domain-informed and domain-agnostic features for supervised and unsupervised learning on building energy demand data. Applied Energy, 360, 122741.

- Fu, C., Kazmi, H., Quintana, M., & Miller, C. (2023, November). Enhancing Classification of Energy Meters with Limited Labels using a Semi-Supervised Generative Model. In Proceedings of the 10th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation (pp. 450-453).

- H. Kazmi, Fu, C., C. Miller, “Ten questions concerning data-driven modelling and forecasting of operational energy demand at building and urban scale,” Building and Environment, vol. 239, pp. 110407, 2023.

- Fu, C., Arjunan, P., & Miller, C. (2022, November). Trimming outliers using trees: winning solution of the large-scale energy anomaly detection (LEAD) competition. In Proceedings of the 9th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation (pp. 456-461).

- Miller, C., Picchetti, B., Fu, C., & Pantelic, J. (2022). Limitations of machine learning for building energy prediction: ASHRAE Great Energy Predictor III Kaggle competition error analysis. Science and Technology for the Built Environment, 1-18.

- Fu, C., & Miller, C. (2022). Using Google Trends as a proxy for occupant behavior to predict building energy consumption. Applied Energy, 310, 118343.

- Miller, C., Hao, L., Fu, C. (2022). Gradient boosting machines and careful pre-processing work best: ASHRAE Great Energy Predictor III lessons learned. arXiv preprint arXiv:2202.02898.

- Miller, C., Arjunan, P., Kathirgamanathan, A., Fu, C., Roth, J., Park, J. Y., ... & Haberl, J. (2020). The ASHRAE great energy predictor III competition: Overview and results. Science and Technology for the Built Environment, 26(10), 1427-1447.

語言


  • English — 專業
  • Chinese — 母語或雙語
Resume
Profile

傅群

0913889502 | [email protected]
https://www.linkedin.com/in/chun-fu/
https://www.kaggle.com/patrick0302

我是一名擁有豐富機器學習和數據分析經驗的專業人士,包含了學術界的博士學歷及豐富的業界經驗,尤其在能源和建築領域有著全面的專案經驗。以下是我職業生涯的亮點和重要成就:
- 在能源和建築領域有全面的機器學習專案經驗,包括預測、異常檢測、填補缺失數據和生成模型等方面
- 在建築和能源領域擁有超過三年的業界工作經驗,包括建築運營和節能策略,參與過數個建築大數據的專案
- 在數據競賽方面擁有豐富經驗,包括在Kaggle程式碼的Master級別,並在太陽能板生產、智慧農業數位分身和西門子永續黑客松等競賽中獲勝
- 多次應邀發表講座和演講,分享能源建模和數據分析方面的知識,包括在台灣電力公司、學術會議以及Python社群
- 在數據競賽、業界工作和學術研究的不同職位中,展示出強大的團隊合作和領導能力

工作經歷


Data Science Competition Expert

一月 2020 - Present  |  Taipei, Taiwan

- 2024 Kaggle獎金競賽:Enefit -預測prosumers能源行為, 銀牌, 71th/2731 on public leaderboard (團隊成員)
- 2023西門子永續技術黑客松:”Swarm Behaviour on the Grid”, 第一名 (團隊成員,獲得5,000歐元)
- 2022 台灣AIGO:透過身體組成與健身數據AI智能健身訓練課程推薦系統, 優勝隊伍 (團隊隊長, 獲得10,000美元)
- 2022年Kaggle社區競賽:大規模能源異常檢測, 第一名(獨立參賽)
- 2021智慧農業數位分身創新應用競賽,第三名 (團隊成員, 獲得1,500美元)
- 2020 Aidea:中科智慧製造-光電製程品質預測, 第一名 (獨立參賽, 獲得1,500美元)
- Kaggle平台的程式碼(notebooks)Master (180th/55809)

資料科學家  •  探識空間科技有限公司

八月 2016 - 一月 2020  |  Taipei, Taiwan

與台積電合作研發: 應用人工智慧於建築設備群的運轉異常偵測及診斷服務
- 實踐能夠大量導入和訓練的建模流程, 應用於超過千台設備、萬點以上的IoT點位
- 應用機器學習技術及早發覺異常徵兆, 提前告知維護人員設備異常及診斷預測
- 獲得內政部建研所2019年、第12屆巢向未來銀獎獎項(總排名第二名)

分析市政府的BA大數據, 並協助BIM-FM系統的建置
- 建置可視化的能源預測及最佳化服務(結合氣象預報)
- 從營運大數據中, 提出數種策略: 冰機預測性控制, 預冷策略, 負荷移轉
- 帶領工讀生完成1000+個空調設備的電子及系統化

建置智慧建築管理系統 (內政部建研所的Living 3.0智慧化展示空間)
- 整合500+的I/O點位, 包含既有系統及新增感測器 (BACnet/Modbus)
- 向參觀民眾展示智慧節能及最佳化控制 (每年約10,000+遊客), 視覺化呈現建築營運

學歷


National University of Singapore

Department of building  •  2020 - 2024

- 專攻建築能源和營運的機器學習技術。研究全面涵蓋了應用ML/DL的預測、異常檢測、缺失數據填補和數據生成
- Technical team in Kaggle competition: <ASHRAE - Great Energy Predictor III>近20年最大的建築能源數據競賽, 數據集涵蓋全球1500棟建築、收集期間長達三年, 協助分析比賽隊伍的機器學習模型及預測表現, 並比較不同的預測模型建構策略
- 博士論文<Automated Pipelines for Enhanced Energy Data Quality: Anomaly Detection, Data Imputation, and Generative Modeling>, 提出了一套結合異常偵測、缺失預測和數據條件生成的自動化流程, 規模化的將能源大數據進行清理和前處理。
- 2023台灣電力公司邀請演講: 數據與電業之旅系列講座 – 以數據探索能源與評估風險,
- 2022 PyCon APAC (python社群年會)公開演講: 從開放數據閱讀台灣能源 - 數據探索、模型預測和風險評估
- 2022 BuildSys2022 Workshop: "1st ACM BuildSys 2022 Tutorial on Electricity Demand Forecasting"

National Taiwan University

Sustainable Environment and Green Architecture  •  2013 - 2015

綠建築標章制度下之節能成效調查與驗證研究

-執行國內首次對EEWH綠建築標章實質效益的全面檢核, 欲了解國內的綠建築制度對於建築耗能是否有顯著的成效
-進行數棟具綠建築標章辦公大樓的EnergyPlus能源性能模擬

National Taiwan University

Bioenvironmental System Engineering  •  2009 - 2013

- NTU Presidential Award (2013)
- Class Representative

學術發表


- Fu, C., Quintana, M., Nagy, Z., & Miller, C. (2024). Filling time-series gaps using image techniques: Multidimensional context autoencoder approach for building energy data imputation. Applied Thermal Engineering, 236, 121545.

- Canaydin, A., Fu, C., Balint, A., Khalil, M., Miller, C., & Kazmi, H. (2024). Interpretable domain-informed and domain-agnostic features for supervised and unsupervised learning on building energy demand data. Applied Energy, 360, 122741.

- Fu, C., Kazmi, H., Quintana, M., & Miller, C. (2023, November). Enhancing Classification of Energy Meters with Limited Labels using a Semi-Supervised Generative Model. In Proceedings of the 10th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation (pp. 450-453).

- H. Kazmi, Fu, C., C. Miller, “Ten questions concerning data-driven modelling and forecasting of operational energy demand at building and urban scale,” Building and Environment, vol. 239, pp. 110407, 2023.

- Fu, C., Arjunan, P., & Miller, C. (2022, November). Trimming outliers using trees: winning solution of the large-scale energy anomaly detection (LEAD) competition. In Proceedings of the 9th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation (pp. 456-461).

- Miller, C., Picchetti, B., Fu, C., & Pantelic, J. (2022). Limitations of machine learning for building energy prediction: ASHRAE Great Energy Predictor III Kaggle competition error analysis. Science and Technology for the Built Environment, 1-18.

- Fu, C., & Miller, C. (2022). Using Google Trends as a proxy for occupant behavior to predict building energy consumption. Applied Energy, 310, 118343.

- Miller, C., Hao, L., Fu, C. (2022). Gradient boosting machines and careful pre-processing work best: ASHRAE Great Energy Predictor III lessons learned. arXiv preprint arXiv:2202.02898.

- Miller, C., Arjunan, P., Kathirgamanathan, A., Fu, C., Roth, J., Park, J. Y., ... & Haberl, J. (2020). The ASHRAE great energy predictor III competition: Overview and results. Science and Technology for the Built Environment, 26(10), 1427-1447.

語言


  • English — 專業
  • Chinese — 母語或雙語