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4 到 6 年
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15 年以上
國立成功大學
Avatar of Yiru Chen.
Avatar of Yiru Chen.
資料工程師 @鴻海(富士康)
2021 ~ 现在
資料工程師/網路爬蟲、後端工程師、軟體工程師、網管
一個月內
處理、原始資料解析、視覺化呈現分析結果、系統模組開發。後期後轉調資料工程單位,除接手維護原舊有系統ETL模組,也加入資料平台的 API 及開發與測試。 專長:資料科學、統計模型、機器學習、Python/R、Impala、Kudu 、 PostgreSQL、Git、RESTful API 、 Docker、Nifi。 Kaohsiung City, Taiwan 工作經歷 資料工程師 • 鴻
Python
SQL
Git
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
國立成功大學
統計研究所
Avatar of 王廷軒.
Avatar of 王廷軒.
曾任
副研究員 @財團法人台灣綜合研究院研究四所
2021 ~ 2021
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
1.中長程校務發展計畫 2.高等教育深耕計畫 3.獎勵私立大學校院校務發展計畫 數據研究類: 1.大專校院校務資料庫 2.高教跨域整合資料庫 2.高教跨域整合資料庫 坡地洪旱組 - 專案助理研究員 • 國家災害防救科技中心 七月十
數據分析與視覺化
系統設計
資料庫程式設計
待业中
全职 / 对远端工作有兴趣
4 到 6 年
國立成功大學
資源工程學系
Avatar of the user.
Avatar of the user.
軟體研發工程師 @英威康科技股份有限公司
2017 ~ 现在
前端工程師、後端工程師、全端工程師
一個月內
Golang
JavaScript
C Sharp
就职中
目前没有兴趣寻找新的机会
全职 / 对远端工作有兴趣
4 到 6 年
國立成功大學
交通管理科學系研究所

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职场能力评价定义

专业技能
该领域中具备哪些专业能力(例如熟悉 SEO 操作,且会使用相关工具)。
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一個月內
Software Engineer
Synpulse
2022 ~ 现在
台灣台中市
专业背景
目前状态
就职中
求职阶段
目前会考虑了解新的机会
专业
数据科学家, 软体工程师
产业
人工智能 / 机器学习
工作年资
2 到 4 年
管理经历
技能
python
SQL
Machine Learning
Bash
postgres
Docker
PL\SQL
Oracle Database
语言能力
English
进阶
求职偏好
希望获得的职位
Data Engineer/Data Analyst/Data Scientist
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全职
期望的工作地点
台灣台中市
远端工作意愿
对远端工作有兴趣
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学历
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國立成功大學
主修科系
工程科學
列印
Zxcfjm0pllq5klucgpcd

Laurence Lin

Enthusiastic data scientist, willing to bring up AI solutions that would solve human life problems. Highly cooperative teamwork and curious about data insight information. Familiar with Python and SQL language, experienced of image processing and time series forecasting. Understand basic web development and RESTful API with Flask or FastAPI framework.


Taichung city,Taiwan

Email: [email protected]

Cell Phone: 0916-067399

Github: https://github.com/laurence-lin

LinkedIn:https://www.linkedin.com/in/laurence-lin-836412133/

Medium: https://lawrence123.medium.com/

Working Experience


Machine learning engineer (2020/09/01 ~ current) 

Hamastar Technology Corporation

Build data science application platform for data science developers and end users 

Develop data science solutions for web layout defect detection, save 70% of time for developers to examine the product


Skills


Programming: Python, R, SQL 
Machine Learning: Regression, Classification, Time Series Forecasting 
Framework: Scikit-learn, Keras, PyTorch 
Web Development: html, css, RESTful API 
Web Scraping: Selenium 
Data Visualization: Tableau


Projects


Retail Store Location Selection by Popularity Ranking: Collect geographic features from Foursquare API and Google Place API, use EDA for data analysis and preprocessing, build predictive model to rank the store popularity, and found the main characteristics that effects most of the retail store's popularity. Achieve 0.83 in NDCG@k metric comparable with previous research.

Methods: EDA, Google Place API, Foursquare API, SVR, Linear Regression, Neural Network

link: https://github.com/laurence-lin/Retail-Store-Location-Ranking


Credit Card Fraud Detection:  Predict the probability for credit card data fraud, apply feature engineering for data cleaning and transformation, use cross validation and ROC_AUC as evaluation for model performance.

Methods: EDA, LightGBM, Cross Validation, Logistic Regression

link: https://github.com/laurence-lin/Kaggle_competition/blob/master/FraudDetect/FraudDetection.ipynb

Projects


Retail Store Location Selection by Popularity Ranking: Collect geographic features from Foursquare API and Google Place API, use EDA for data analysis and preprocessing, build predictive model to rank the store popularity, and found the main characteristics that effects most of the retail store's popularity. Achieve 0.83 in NDCG@k metric comparable with previous research.

Methods: EDA, Google Place API, Foursquare API, SVR, Linear Regression, Neural Network

link: https://github.com/laurence-lin/Retail-Store-Location-Ranking


Credit Card Fraud Detection:  Predict the probability for credit card data fraud, apply feature engineering for data cleaning and transformation, use cross validation and ROC_AUC as evaluation for model performance.

Methods: EDA, LightGBM, Cross Validation, Logistic Regression

link: https://github.com/laurence-lin/Kaggle_competition/blob/master/FraudDetect/FraudDetection.ipynb

Education


IBM Data Science Professional(Certified) 

Coursera, June 2020 ~ August 2020

Google Data Analytics(Certified)

Coursera, April 2021 ~ June 2021

National Cheng Kung University / Engineering Science / Bachelor's degree

國立成功大學工程科學系

National Cheng Kung University / Engineering Science / Master degree

國立成功大學工程科學所

Master thesis: PM 2.5 forecasting using LSTM model


简历
个人档案
Zxcfjm0pllq5klucgpcd

Laurence Lin

Enthusiastic data scientist, willing to bring up AI solutions that would solve human life problems. Highly cooperative teamwork and curious about data insight information. Familiar with Python and SQL language, experienced of image processing and time series forecasting. Understand basic web development and RESTful API with Flask or FastAPI framework.


Taichung city,Taiwan

Email: [email protected]

Cell Phone: 0916-067399

Github: https://github.com/laurence-lin

LinkedIn:https://www.linkedin.com/in/laurence-lin-836412133/

Medium: https://lawrence123.medium.com/

Working Experience


Machine learning engineer (2020/09/01 ~ current) 

Hamastar Technology Corporation

Build data science application platform for data science developers and end users 

Develop data science solutions for web layout defect detection, save 70% of time for developers to examine the product


Skills


Programming: Python, R, SQL 
Machine Learning: Regression, Classification, Time Series Forecasting 
Framework: Scikit-learn, Keras, PyTorch 
Web Development: html, css, RESTful API 
Web Scraping: Selenium 
Data Visualization: Tableau


Projects


Retail Store Location Selection by Popularity Ranking: Collect geographic features from Foursquare API and Google Place API, use EDA for data analysis and preprocessing, build predictive model to rank the store popularity, and found the main characteristics that effects most of the retail store's popularity. Achieve 0.83 in NDCG@k metric comparable with previous research.

Methods: EDA, Google Place API, Foursquare API, SVR, Linear Regression, Neural Network

link: https://github.com/laurence-lin/Retail-Store-Location-Ranking


Credit Card Fraud Detection:  Predict the probability for credit card data fraud, apply feature engineering for data cleaning and transformation, use cross validation and ROC_AUC as evaluation for model performance.

Methods: EDA, LightGBM, Cross Validation, Logistic Regression

link: https://github.com/laurence-lin/Kaggle_competition/blob/master/FraudDetect/FraudDetection.ipynb

Projects


Retail Store Location Selection by Popularity Ranking: Collect geographic features from Foursquare API and Google Place API, use EDA for data analysis and preprocessing, build predictive model to rank the store popularity, and found the main characteristics that effects most of the retail store's popularity. Achieve 0.83 in NDCG@k metric comparable with previous research.

Methods: EDA, Google Place API, Foursquare API, SVR, Linear Regression, Neural Network

link: https://github.com/laurence-lin/Retail-Store-Location-Ranking


Credit Card Fraud Detection:  Predict the probability for credit card data fraud, apply feature engineering for data cleaning and transformation, use cross validation and ROC_AUC as evaluation for model performance.

Methods: EDA, LightGBM, Cross Validation, Logistic Regression

link: https://github.com/laurence-lin/Kaggle_competition/blob/master/FraudDetect/FraudDetection.ipynb

Education


IBM Data Science Professional(Certified) 

Coursera, June 2020 ~ August 2020

Google Data Analytics(Certified)

Coursera, April 2021 ~ June 2021

National Cheng Kung University / Engineering Science / Bachelor's degree

國立成功大學工程科學系

National Cheng Kung University / Engineering Science / Master degree

國立成功大學工程科學所

Master thesis: PM 2.5 forecasting using LSTM model