CakeResume 找人才

進階搜尋
On
4 到 6 年
6 到 10 年
10 到 15 年
15 年以上
Taipei City, Taiwan
Avatar of 張瑞育.
Avatar of 張瑞育.
曾任
資深工程師 @17Life_康太數位整合股份有限公司
2020 ~ 2024
後端工程師、程式設計師、系統分析師
一個月內
與一些雲端服務課程,讓自己可以更好的協助團隊與專案。 希望有這個機會可以面試,謝謝。 技能 User Experience ASP.Net MVC Entity Framework LINQ Vue MS SQL Sql Server Reporting Service TFS Git AWS 工程師經驗 C# 後端工程師: 4年經驗 WEB工程師: 1年2個月經驗 工作經歷 資深後端工程師 (系統分析
Excel
.NET
TSQL
待業中
正在積極求職中
全職 / 對遠端工作有興趣
4 到 6 年
台北大學
統計學系
Avatar of the user.
Avatar of the user.
曾任
Senior QA engineer @DeepHow
2023 ~ 現在
QA automation engineer / Software development engineer in test
一個月內
Python
Appium
SQL
待業中
正在積極求職中
全職 / 對遠端工作有興趣
6 到 10 年
國立中山大學 National Sun Yat-Sen University
應用數學系 統計組
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)
就職中
正在積極求職中
全職 / 對遠端工作有興趣
4 到 6 年
國立政治大學(National Chengchi University)
資訊科學系
Avatar of 劉岳宬.
Avatar of 劉岳宬.
主任工程師 @創奕能源科技股份有限公司
2023 ~ 現在
軟體工程師
一個月內
度管理 外勤: 材料準備、機台安裝、管路配置、電源配置 太陽能案場現勘: 案場效率檢測與效益分析 學歷大華科技大學 電子工程系 技能 Javascript(ES6) Node.js React.js MERN Stack Full-Stack Web Development TypeScript.ts html + css + javascript Github GitLab-CI/CD LabVIEW Python AWS SQL MQTT 語言 Japanese — 專業 Chinese — 母語或雙語 English — 中階
Javascript(ES6)
Node.js
React.js
就職中
正在積極求職中
全職 / 對遠端工作有興趣
10 到 15 年
大華科技大學
電子工程系
Avatar of the user.
Avatar of the user.
Research And Development Engineer @Nityo Infotech
2022 ~ 現在
前端/後端/軟體/全端工程師
一個月內
Java EE
JavaScript
JQuery AJAX
就職中
正在積極求職中
全職 / 對遠端工作有興趣
4 到 6 年
Asia University (TW)
媒體、傳播、新聞相關學科
Avatar of Chia-Wei Yen.
Avatar of Chia-Wei Yen.
Technology Consultant @台灣易思資訊科技股份有限公司
2019 ~ 2024
程式設計師
一個月內
Chia-Wei Yen New Taipei City, Taiwan || [email protected] A dedicated and results-oriented professional with over 10 years of comprehensive experience in database management, analytics, and software development. Proficient in SQL with specialized expertise in ETL processes, data warehousing, and business intelligence solutions. Skilled in leveraging IBM Cognos Planning Analytics (TM1) and Oracle Hyperion Essbase for advanced financial planning and analysis. Possesses strong analytical acumen complemented by proficiency in Python scripting. Demonstrates adaptability by effectively navigating UNIX environments, including AIX and Linux. Currently expanding proficiency by learning JavaScript and C+
Microsoft Office
SQL
Linux
就職中
正在積極求職中
全職 / 對遠端工作有興趣
10 到 15 年
National United University
Information Manager
Avatar of 陳奕妤.
Avatar of 陳奕妤.
曾任
Senior Data Analyst @趨勢科技
2022 ~ 現在
Data Scientist, Data Analyst, Machine Learning Engineer
一個月內
and 6% conversion rate, find out the important features to help business stakeholders give the proper campaign to different customers. Integrate user's transaction data, online behavior data, interest tags to auto labeling MMA customers by using statistical methods and machine learning methods. Developing automation regular reports, maintaining SQL store procedures, Tableau dashboards and Power BI dashboards. Cooperated with cross-functional team (Product, Marketing, Platform, PM, IT, Sales) to provide timely and accuracy business insight analysis. Developing automated web crawler on MMA website to collect ETF, fund, bond information. Skill : Microsoft SQL Server · Microsoft Power
python
R
SQL
待業中
正在積極求職中
全職 / 對遠端工作有興趣
4 到 6 年
輔仁大學 Fu Jen Catholic University
統計資訊學系
Avatar of 葉家登.
Avatar of 葉家登.
曾任
高級工程師二 @奇偶科技股份有限公司
2016 ~ 2024
軟體工程師
一個月內
系統(VMS) 為核心,研發與維護相關功能。 根據公司之軟硬體產品需求或案場業務需求開發功能。 使用技能: C/C++, MFC, GDI, STL, SQL, Socket Programming, Multithread Programming, Makefile, Windows, Linux 具體成就: 影像合併輸出功能:重構舊版程式,改善執行效能與改版UI視覺效果,多路影像輸出影片檔所
C++
Golang
Python
待業中
正在積極求職中
全職 / 對遠端工作有興趣
6 到 10 年
逢甲大學 Feng Chia University
資訊工程學系研究所
Avatar of the user.
Avatar of the user.
產品專案經理/全端工程師 @FITI Foxsemicon (Foxconn Technology Group)
2018 ~ 現在
Maker
一個月內
Python
C#
JavaScript
就職中
正在積極求職中
全職 / 對遠端工作有興趣
10 到 15 年
國立台灣海洋大學 (NTOU)
系統工程暨造船學系
Avatar of 楊承運.
Avatar of 楊承運.
曾任
營運品策略部 - 管理師 @晶焱科技股份有限公司
2020 ~ 2023
策略/產業/經營資深分析師;專案經理
一個月內
班及旅客資料,申請飛航獎勵金 協助 IPO 作業,提交歷年營運分析報告及財務預測 專業 & 技能 專業| 經營與 策略分析 透過 Excel、Access、SQL 等統計工具,量化分析數據並製作適當報表 搭配 Tableau、draw. io 等工具,繪製視覺化圖表 透過數據及跨部門訪談,質化分析營
策略經營分析
專案管理
內部稽核 (ISO27001)
待業中
正在積極求職中
全職 / 對遠端工作有興趣
4 到 6 年
東吳大學 Soochow University
財務工程與精算數學系

最輕量、快速的招募方案,數百家企業的選擇

搜尋履歷,主動聯繫求職者,提升招募效率。

  • 瀏覽所有搜尋結果
  • 每日可無限次數開啟陌生對話
  • 搜尋僅開放付費企業檢視的履歷
  • 檢視使用者信箱 & 電話
搜尋技巧
1
嘗試搜尋最精準的關鍵字組合
資深 後端 php laravel
如果結果不夠多,再逐一刪除較不重要的關鍵字
2
將須完全符合的字詞放在雙引號中
"社群行銷"
3
在不想搜尋到的字詞前面加上減號,如果想濾掉中文字,需搭配雙引號使用 (-"人資")
UI designer -UX
免費方案僅能搜尋公開履歷。
升級至進階方案,即可瀏覽所有搜尋結果(包含數萬筆覽僅在 CakeResume 平台上公開的履歷)。

職場能力評價定義

專業技能
該領域中具備哪些專業能力(例如熟悉 SEO 操作,且會使用相關工具)。
問題解決能力
能洞察、分析問題,並擬定方案有效解決問題。
變通能力
遇到突發事件能冷靜應對,並隨時調整專案、客戶、技術的相對優先序。
溝通能力
有效傳達個人想法,且願意傾聽他人意見並給予反饋。
時間管理能力
了解工作項目的優先順序,有效運用時間,準時完成工作內容。
團隊合作能力
具有向心力與團隊責任感,願意傾聽他人意見並主動溝通協調。
領導力
專注於團隊發展,有效引領團隊採取行動,達成共同目標。
一年內
Logo of TSMC.
TSMC
2021 ~ 2022
專業背景
目前狀態
待業中
求職階段
專業
軟體工程師, 機器學習工程師
產業
人工智慧 / 機器學習, 軟體, 區塊鏈
工作年資
小於 1 年
管理經歷
無管理經驗
技能
Python
C++
JAVA
OOP Programming
meta-heuristic algorithm
Azure DevOps
Deep Learning
tensorflow
SQL
語言能力
Chinese
母語或雙語
English
中階
求職偏好
希望獲得的職位
Software Engineer / Backend Engineer / DevOps Engineer
預期工作模式
全職
期望的工作地點
Taipei, 台灣, Hsinchu, 新竹市台灣
遠端工作意願
對遠端工作有興趣
接案服務
學歷
學校
國立中山大學 National Sun Yat-Sen University
主修科系
資訊工程所
列印

Zhe-Wei Xiao

  

[email protected]

+886917730565

Profile

I am Justin, who graduated from the department of Computer Science Engineering at National Sun Yat-sen University. I am friendly, optimistic, and willing to learn new knowledge. 

As a software engineer, I am proficient in using Python, C/C++, and Java, and have an understanding of Git, which I have utilized for collaborative development projects with team members. Additionally, I have experience with Azure CI/CD, Docker, and Kubernetes (K8s), which has allowed me to proficiently manage and deploy applications to the cloud. These technologies has enabled me to streamline the software development process and enhance the overall quality of the projects.

I have served as the co-PI of a project under the Ministry of Science and Technology, honing my skills in coordination and teamwork. During my university studies, I also acted as a teaching assistant for courses in Artificial Intelligence, Algorithms, and Individual Study, helping instructors address students' inquiries.

My research focus is on neural network training algorithms to enhance the accuracy of deep learning models. I have proposed a novel optimization algorithm in my thesis that combines meta-heuristic algorithms and gradient-based optimization techniques, effectively improving the accuracy of deep learning models. The effectiveness of the proposed algorithm is demonstrated through experiments on various types of datasets and neural network models.

Work Experience

Engineer of MTIT, TSMC September 2021 - April 2022

#VB #ASP.NET #SQL #Azure

  • Develop and operate the full automation systems running in 200mm FABs.

  • Engage with FAB users to develop high value requirements and solutions to conquer the challenges about manufacturing.

  • Transform repeatable tasks into automation tools (CI/CD)

Skills

  • Software Engineer

    • S.O.L.I.D
    • Design Pattern
    • MVC
  • Programming Language

    • Python
    • C/C++
    • Java

              

  • Deep Learning

    • Neural Network Optimization Algorithm
    • Hyper-Parameter Tuning Algorithm
  • Optimization Algorithm

    • Meta-heuristic Algorithm
    • Gradient-based Algorithm

Publications

Thesis

An Effective Optimizer based on Global and Local Searched Experiences for Neural Network Training.

This thesis proposes a novel hybrid optimizer, GLAdam, which combines the benefits of meta-heuristic and gradient-based methods. GLAdam calculates the update direction by incorporating both global and local searched experiences, leading to an improved optimization process. The performance of GLAdam was evaluated through time series numerical forecasting and image classification experiments, demonstrating its effectiveness in training machine learning models.

Conference paper

ACM ICEA, “An Effective Optimizer based on Global and Local Searched Experiences for Short-term Electricity Consumption Forecasting”, Korea, 2020

This study presents a novel optimization algorithm, GLAdam, aimed at addressing the limitations of conventional gradient-based optimization methods. GLAdam incorporates a heuristic mechanism that leverages past search experiences, resulting in a more efficient exploration-exploitation trade-off during the optimization process. The results of experiments on time series numerical forecasting and image classification datasets show that GLAdam outperforms popular optimization algorithms such as Adagrad, RMSprop, and Adam, with an improvement in accuracy of 5.37% compared to the best performing algorithm.

ACM ICEA, “An Effective Multi-Swarm Algorithm for Optimizing Hyperparameters of DNN”, Korea, 2020

This study proposes an improved Multi-Swarm Particle Swarm Optimization (MSPSO) algorithm for optimizing hyperparameters of Deep Neural Networks (DNNs). The proposed algorithm outperforms traditional methods and was evaluated on Taipei passenger data, demonstrating improved accuracy in predicting the number of passengers for Taipei metro stations compared to other machine learning algorithms, DNN, and PSO with DNN.

Ministry of Science and Technology Program

A High-Efficiency Smart Grid Management System Combining Deep learning and Meta-heuristic Algorithms — 2020

    • Using particle swarm optimization algorithm and search economic algorithm to improve the optimizer in deep learning to provide an accurate electric load forecasting model
    • Using genetic algorithms to adaptively adjust the convolutional neural network structure and feature extraction of abnormal power consumption in smart grids

Towards Deep Learning for Next-Generation Automation: A Case Study of Intelligent Traffic Control Systems — 2021

    • Using AutoML to predict traffic flow on plane roads and predict people flow in mass transit systems
    • Using federated learning to control traffic lights at multiple intersections
    • Road Travel Recommendation Using Reinforcement Learning
履歷
個人檔案

Zhe-Wei Xiao

  

[email protected]

+886917730565

Profile

I am Justin, who graduated from the department of Computer Science Engineering at National Sun Yat-sen University. I am friendly, optimistic, and willing to learn new knowledge. 

As a software engineer, I am proficient in using Python, C/C++, and Java, and have an understanding of Git, which I have utilized for collaborative development projects with team members. Additionally, I have experience with Azure CI/CD, Docker, and Kubernetes (K8s), which has allowed me to proficiently manage and deploy applications to the cloud. These technologies has enabled me to streamline the software development process and enhance the overall quality of the projects.

I have served as the co-PI of a project under the Ministry of Science and Technology, honing my skills in coordination and teamwork. During my university studies, I also acted as a teaching assistant for courses in Artificial Intelligence, Algorithms, and Individual Study, helping instructors address students' inquiries.

My research focus is on neural network training algorithms to enhance the accuracy of deep learning models. I have proposed a novel optimization algorithm in my thesis that combines meta-heuristic algorithms and gradient-based optimization techniques, effectively improving the accuracy of deep learning models. The effectiveness of the proposed algorithm is demonstrated through experiments on various types of datasets and neural network models.

Work Experience

Engineer of MTIT, TSMC September 2021 - April 2022

#VB #ASP.NET #SQL #Azure

  • Develop and operate the full automation systems running in 200mm FABs.

  • Engage with FAB users to develop high value requirements and solutions to conquer the challenges about manufacturing.

  • Transform repeatable tasks into automation tools (CI/CD)

Skills

  • Software Engineer

    • S.O.L.I.D
    • Design Pattern
    • MVC
  • Programming Language

    • Python
    • C/C++
    • Java

              

  • Deep Learning

    • Neural Network Optimization Algorithm
    • Hyper-Parameter Tuning Algorithm
  • Optimization Algorithm

    • Meta-heuristic Algorithm
    • Gradient-based Algorithm

Publications

Thesis

An Effective Optimizer based on Global and Local Searched Experiences for Neural Network Training.

This thesis proposes a novel hybrid optimizer, GLAdam, which combines the benefits of meta-heuristic and gradient-based methods. GLAdam calculates the update direction by incorporating both global and local searched experiences, leading to an improved optimization process. The performance of GLAdam was evaluated through time series numerical forecasting and image classification experiments, demonstrating its effectiveness in training machine learning models.

Conference paper

ACM ICEA, “An Effective Optimizer based on Global and Local Searched Experiences for Short-term Electricity Consumption Forecasting”, Korea, 2020

This study presents a novel optimization algorithm, GLAdam, aimed at addressing the limitations of conventional gradient-based optimization methods. GLAdam incorporates a heuristic mechanism that leverages past search experiences, resulting in a more efficient exploration-exploitation trade-off during the optimization process. The results of experiments on time series numerical forecasting and image classification datasets show that GLAdam outperforms popular optimization algorithms such as Adagrad, RMSprop, and Adam, with an improvement in accuracy of 5.37% compared to the best performing algorithm.

ACM ICEA, “An Effective Multi-Swarm Algorithm for Optimizing Hyperparameters of DNN”, Korea, 2020

This study proposes an improved Multi-Swarm Particle Swarm Optimization (MSPSO) algorithm for optimizing hyperparameters of Deep Neural Networks (DNNs). The proposed algorithm outperforms traditional methods and was evaluated on Taipei passenger data, demonstrating improved accuracy in predicting the number of passengers for Taipei metro stations compared to other machine learning algorithms, DNN, and PSO with DNN.

Ministry of Science and Technology Program

A High-Efficiency Smart Grid Management System Combining Deep learning and Meta-heuristic Algorithms — 2020

    • Using particle swarm optimization algorithm and search economic algorithm to improve the optimizer in deep learning to provide an accurate electric load forecasting model
    • Using genetic algorithms to adaptively adjust the convolutional neural network structure and feature extraction of abnormal power consumption in smart grids

Towards Deep Learning for Next-Generation Automation: A Case Study of Intelligent Traffic Control Systems — 2021

    • Using AutoML to predict traffic flow on plane roads and predict people flow in mass transit systems
    • Using federated learning to control traffic lights at multiple intersections
    • Road Travel Recommendation Using Reinforcement Learning