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On
4 到 6 年
6 到 10 年
10 到 15 年
15 年以上
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Data Engineer @TSMC 台積電
2022 ~ 现在
資料分析師、演算法工程師、軟體工程師、軟體專案管理
一個月內
Backend Development
NLP
Python
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
國立中央大學 National Central University
網路學習科技研究所
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Avatar of the user.
曾任
Career transition @Career Break
2024 ~ 2024
NLP Engineer / Data Scientist / Machine Learning Engineer
一個月內
Python
SQL
NLP
待业中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
National Chengchi University
資訊科學系
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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
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
Avatar of Patrick Hsu.
Avatar of Patrick Hsu.
Algorithm Research & Development @適着三維科技股份有限公司 TG3D Studio Inc.
2021 ~ 现在
Software Engineer
一個月內
Patrick Hsu AI Research & Development As a seasoned AI engineer with six years of experience, I specialize in computer vision, 3D body model reconstruction, generative AI, and possessing some knowledge in natural language processing (NLP). | New Taipei City, [email protected] Work Experience (6 years) Algorithm Research & Design• TG3D Studio MayPresent A skilled engineer specialized in computer vision and generative AI with experience in developing and training AI models for digital fashion applications. Body AI: Virtual Try On Integrated cutting-edge technologies such as Stable Diffusion, ControlNet, and Prompt Engineering to create a sophisticated system for
Python
AI & Machine Learning
Image Processing
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
國立台灣大學
生物產業機電工程所
Avatar of 藍元澔(Owen Lan).
Avatar of 藍元澔(Owen Lan).
Ap Microeconomics teacher @VIS@betterworld Lab Experimental High School
2021 ~ 现在
consultant
一個月內
店品牌的忠誠度分析 社會創新專案 看見別人的苦,對號入座,感同身受,出手去解決! 憂鬱症專案實作,希望以自然語言處理(NLP)的技術寫出費用極低的行動治療APP,幫助不願意治療也付不出昂貴治療費用的患者 行的安全-身障者專案實作,意圖改
R language
SPSS
Word
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
國立臺灣師範大學
全球策略與經營
Avatar of 李慕全(MuChuan Li).
Avatar of 李慕全(MuChuan Li).
曾任
Service Provider @Taron Solutions Limited
2023 ~ 2023
AI工程師、機器學習工程師、電腦視覺工程師、資料科學家、Machine Learning Engineer、Computer Vision Engineer、Data Scientist
一個月內
抓取金融新聞,將繁體文章標題與內文透過語言轉換工具(opencc)轉為簡體,最終使用情感分析工具(snownlp)進行股市漲跌分析。 技術:NLP、Beautifulsoup、 opencc 、 snownlp 、 Matplotlib 台灣景氣指標預測模型 side project 使用深度學習框架(Pytorch)自行搭建預測模型,以各式台灣景氣指標當作輸入,輸出未
Machine Learning
Computer Vision
Pytorch/Tensorflow
待业中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
國立臺北科技大學
資訊工程
Avatar of 謝明翰.
Avatar of 謝明翰.
曾任
後端工程師 @Canner (易開科技)
2023 ~ 2024
Senior Backend Engineer
一個月內
產品數據中台,專注於新功能開發、問題排查,並致力於優化團隊的開發流程。參與公司開源專案 accio 的 DSL parser 開發,負責開發 ChatGPT 自然語言獲取數據的 Plugin。 #Node.js #Typescript #Data Modeling #GraphQL 後端工程師 愛酷智能科技 AccuHit AI technology company 九月三月 2023 Taipei, Taiwan 主導團隊升級 PHP
Node.js / Express.js
Git-flow
Golang
待业中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
東海大學 Tunghai University
資訊工程
Avatar of 李昀庭.
Avatar of 李昀庭.
AI Engineer @Playsee
2022 ~ 现在
資料分析師、資料科學家、產品經理
一個月內
李昀庭 Data scientist Taiwan 技能 Machine learning and Engineering skills: Python, Big Query, Google Storage, Linux, Docker, GCP, AWS, Scikit-learn, Tensorflow, Pytorch, MLOps, FastAPI, Machine Learning, Deep Learning, Computer Vision, NLP Experimental design, Project management, Product design English - TOEIC 725 工作經歷 AI工程師 Playsee NovPresent Taipei, Taiwan 自動化標註推薦系統 設計並實踐架構取代25個標註者並及時標記和篩選視頻審核內容。 設計並優化影片
Python
Project Management
Strategic Thinking
就职中
正在积极求职中
全职 / 对远端工作有兴趣
4 到 6 年
National Cheng Kung University
心理所(認知科學所)
Avatar of 喬康豪.
Avatar of 喬康豪.
全端工程師 @中冠資訊股份有限公司
2021 ~ 现在
網站後端工程師
一個月內
換成文字 清華大學 National Tsing Hua University, 深度學習工程師 deep-learning-engineer, Oct 2017 ~ Sep 2018 實驗室要導入時間序列相關深度學習之先導研究,題目為自然語言處理,利用tensorflow搭建NLP語言模型 (1) 文本分類:利用RNN與CNN進行文本分類。 (2) Word to vector:文字向量轉化 (3) 文本摘要總結:利
Vue.js
Node.js / Express.js
k8s
就职中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
清華大學 National Tsing Hua University
核子工程 nuclear engineering
Avatar of Yves Hsu.
Avatar of Yves Hsu.
系統應用開發課 Senior Engineer @久元電子股份有限公司 Youngtek Electronics Co.
2019 ~ 现在
資深前端工程師
一個月內
. Developed a Chinese characters full-text search database with customized full-text search database and index creation based on the inverted index, resulting in higher efficiency of exact search of Chinese characters than the current database software (SQL Like). Implemented the search algorithm, indexing, and sorting functions using NLP techniques such as HMM, SVM, TF-IDF, and inverted index. Designed and implemented non-dictionary-based, word segmentation, word vector, and article categorization by SVM to improve the accuracy of search results. Optimized the search engine's performance, reducing the search time by 90% and improving the
Web Developer
SQL Server
Oracle Database
就职中
正在积极求职中
全职 / 对远端工作有兴趣
6 到 10 年
中原大學
資訊管理學系

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超過一年
Data Scientist & Machine learning Engineer
Freelance
2021 ~ 2021
Portugal
专业背景
目前状态
求职阶段
专业
机器学习工程师
产业
工作年资
2 到 4 年工作经验(1 到 2 年相关工作经验)
管理经历
技能
Tensorflow2.0
Keras
Python 3
Scikit-Learn
Pandas
NumPy
Jupyter Notebook
Google Colab
Heroku
Docker
streamlit
Django
Matplotlib
SQL
Time Series Forecasting
语言能力
Spanish
母语或双语
English
专业
求职偏好
希望获得的职位
Machine Learning Engineer
预期工作模式
全职
期望的工作地点
远端工作意愿
对远端工作有兴趣
接案服务
是,我利用业余时间接案
学历
学校
Zero To Mastery Academy
主修科系
Tensorflow developer
列印

Joel Calanche

Python developer & Machine Learning Engineer

  Portugal, Olhao

Phone: +351-924701160

email : [email protected]




SUMMARY


* 3 years of industry Experience with 2 years of Experience as a Data Scientist using ML Algorithms and Nature language Processing

* Working Experience & Extensive Knowledge in Python with libraries Such as Sklearn, TensorFlow, Numpy, Pandas, Matplotlib, Seaborn, spaCy, Nltk, OpenCv, Pyspark.

* Used Machine learning and Deep learning skills to successfully deliver a Customer segmentation Project.

* Worked on tools like - PyCharm, Visual studio, Jupyter Notebook, Sublime text. Google Colab Notebook

* Have Excellent communication and agile team work experience


  https://www.linkedin.com/in/joelcalanche96/

    https://github.com/Joelcalanche


Project Portfolio: http://joelcalanche96portafolio.pythonanywhere.com/portfolio/

Machine learning Skills


  • Tensorflow2.0 
  • Hyper-parameter tunning
  • Boto 3                                      
  • Keras
  • Python 3
  • Scikit-Learn
  • Pandas
  • NumPy
  • Jupyter Notebook
  • Flask
  • Selenium
  • Docker
  • streamlit
  • Django
  • Matplotlib
  • SQL
  • Time Series Forecasting

Data Engineer Skills


  • Kafka
  • Hadoop
  • Azure Data lake
  • Amazon S3
  • Spark
  • Flink
  • Spark Streaming
  • Kineses
  • Airflow
  • Dask
  • AWS "sage maker"
  • TFX
  • Mlops pipelines design


Languages


  • Spanish — Native
  • English — Profesional

DATABASES


  • SQL, PostgreSQL, MySQL, Big Query


    Cloud: AWS, GCP



I A Projects &  Applications


Data Scientist Model Builder at FULL VENUE
A company that performs customer segmentation, through artificial intelligence algorithms based on the previous behavior of customers, for the ecommerce,  ticketing, advertising and events industries to  analyze and optimize marketing campaigns.

Roles & Responsibilities:

* Actively Involved in daily standup calls task assigned.

* Merge data from multiple databases and sources using GOOGLE BIGQUERY, MYSQL, 

* Optimized & Pre-processed  raw  data.

* Feature building and data validation

* Exploratory data Analysis

* Performed Feature Selection on data using Python libraries like NumPy,Pandas,Seaborn.

* Performed Feature Engineering on data using Python libraries like NumPy,Pandas,Seaborn.

* Creating Clusters using K-Means, DBSCAN algotirithm.

* Built and Trained  supervised  Ml model like Random forest classifier and Dense Neural Network, using Scikit-learn

and Tensorflow libraries

* Analyzed Model Prediction, accuracy, using Classification Reports, Confusion Matrix, AUC Score

* Building machine learning pipelines using vertex ai from Google cloud platform

* Monitoring dashboard  using Google studio

April 2022- Present

Deep Learning   (POC)

NLP project: "NLP APP" for Deep Search Labs

Proof of concept for Deep Search Lab for the development of an application that allows the analysis of BBC news with NLP techniques, such as sentiment analysis, entities recognition, and content base recommendation system

Roles & Responsibilities:

* Analyze requirements

* Creation of ETL pipelines using Beautifullsoup , and pandas libraries 

*  Automation using Airflow and docker

* Text preprocessing, tokenization and lemmatization

* Model selection and construction using NLTK and Spacy libraries

* Creation of a web application using Streamlit for the visualization of tasks, deployment

* Unit Testing the data on custom data sets.

December  2021- January 2022

Deep Learning   

NLP project: "SKIMlLIT"  for Zero To Mastery Academy  (Project to obtain certificate)
Developer of a NLP model to classify abstract sentences into the role they play (e.g. objective, methods, results, etc) to enable researchers to skim through the literature (hence SkimLit ) and dive deeper when necessary. Feature engineering is used; hybrid models, different embedding forms(multi data models).  A f1 score of 0.79 was reached in test dataset.

  • In this project, the deep learning model behind the 2017 PubMed 200k RCT paper: A Dataset for Sequential Sentence Classification in Medical Abstracts has been replicated.
  • Using the so-called PubMed 200k RCT dataset consisting of ~200,000 abstracts of labeled randomized controlled trials (RCTs).
  • The goal of the dataset was to explore the ability of NLP models to classify sentences that appear in sequential order.
  • In other words, given the summary of an RCT, determine what role each sentence plays in the summary


september 2021 - october 2021

Deep Learning 

Computer vision project: "FOOD VISION" for Zero To Mastery Academy  (Project to obtain certificate)
Developer of a model based on convolutional neural networks with Tensorflow that allows identifying between 101 different classes of food dishes, using EffcientNet (transfer-learning) and new mixed precision features of tensorflow. 75,750 images (750 per class) were used for the training set and 25,250 (250 per class) images for the test set, an accuracy of 0.80 was reached  in test dataset .

The goal of beating DeepFood, a 2016 paper which used a Convolutional Neural Network trained for 2-3 days to achieve 77.4% top-1 accuracy.


  • image preprocessing and normalization is performed.
  • to start the selection of the model only 10% of the data have been used.
  • construction of different structures based on convolutional neural networks is carried out.
  • Feature extraction is performed.
  • Data augmentation is performed.

  • Transfer learning is used and then fine tuning is carried out.
  • and finally a Scaling up is done using 100% of the data,
  • different models are compared using Scikitlearn's classification report function.


may 2021 - august 2021

Machine Learning  

End-to-end-bulldozer-price-regression for Zero To Mastery Academy  (Project to obtain certificate)

Developer of a predictive random forest regression model with Scikit-learn and Python to estimate the cost of sales of heavy machinery(bulldozer), based on time series data. Exploratory data analysis ,data cleaning, feature engineering, model selection, evaluation metrics and feature importance. The data is from the Kaggle Bluebook for Bulldozers competition. A r square value of 0.87 was achieved  in test dataset .

march 2021 - april 2021

Machine Learning

 Heart disease detection (binary classification project)

Developer of a logistic regression model with Scikit-learn for binary classification of patients with heart diseases, based on previous medical récords(14 different medical features). EDA, model selection, feature importance, metrics evaluation: ROC curve and AUC score, confusion matrix, accuracy, recall and f1 with cross validation. the model achieved a value of f1 of 0.88  in test dataset .

january 2021 - febrary2021

Machine Learning/Electrical Engineer in CORPOELEC

 

Electrical engineer, worked for the state electric company, carried out static and dynamic studies, developing models to simulate fault conditions in elements of the electrical system such as power switches, overvoltage and stability studies were carried out, and models were also created "time series forecasting" to forecast the future demand for electrical energy in the system, using recurrent neural networks, LSTM.

Apr 2018 - Dec 2019

Education


Zero To Mastery Academy

Tensorflow developer

2021 - 2021

Zero To Mastery Academy

Machine Learning , Data Science

2021 - 2021

Universidad Nacional Experimental Politécnica

Bs in Electrical Engineering

2013 - 2019

简历
个人档案

Joel Calanche

Python developer & Machine Learning Engineer

  Portugal, Olhao

Phone: +351-924701160

email : [email protected]




SUMMARY


* 3 years of industry Experience with 2 years of Experience as a Data Scientist using ML Algorithms and Nature language Processing

* Working Experience & Extensive Knowledge in Python with libraries Such as Sklearn, TensorFlow, Numpy, Pandas, Matplotlib, Seaborn, spaCy, Nltk, OpenCv, Pyspark.

* Used Machine learning and Deep learning skills to successfully deliver a Customer segmentation Project.

* Worked on tools like - PyCharm, Visual studio, Jupyter Notebook, Sublime text. Google Colab Notebook

* Have Excellent communication and agile team work experience


  https://www.linkedin.com/in/joelcalanche96/

    https://github.com/Joelcalanche


Project Portfolio: http://joelcalanche96portafolio.pythonanywhere.com/portfolio/

Machine learning Skills


  • Tensorflow2.0 
  • Hyper-parameter tunning
  • Boto 3                                      
  • Keras
  • Python 3
  • Scikit-Learn
  • Pandas
  • NumPy
  • Jupyter Notebook
  • Flask
  • Selenium
  • Docker
  • streamlit
  • Django
  • Matplotlib
  • SQL
  • Time Series Forecasting

Data Engineer Skills


  • Kafka
  • Hadoop
  • Azure Data lake
  • Amazon S3
  • Spark
  • Flink
  • Spark Streaming
  • Kineses
  • Airflow
  • Dask
  • AWS "sage maker"
  • TFX
  • Mlops pipelines design


Languages


  • Spanish — Native
  • English — Profesional

DATABASES


  • SQL, PostgreSQL, MySQL, Big Query


    Cloud: AWS, GCP



I A Projects &  Applications


Data Scientist Model Builder at FULL VENUE
A company that performs customer segmentation, through artificial intelligence algorithms based on the previous behavior of customers, for the ecommerce,  ticketing, advertising and events industries to  analyze and optimize marketing campaigns.

Roles & Responsibilities:

* Actively Involved in daily standup calls task assigned.

* Merge data from multiple databases and sources using GOOGLE BIGQUERY, MYSQL, 

* Optimized & Pre-processed  raw  data.

* Feature building and data validation

* Exploratory data Analysis

* Performed Feature Selection on data using Python libraries like NumPy,Pandas,Seaborn.

* Performed Feature Engineering on data using Python libraries like NumPy,Pandas,Seaborn.

* Creating Clusters using K-Means, DBSCAN algotirithm.

* Built and Trained  supervised  Ml model like Random forest classifier and Dense Neural Network, using Scikit-learn

and Tensorflow libraries

* Analyzed Model Prediction, accuracy, using Classification Reports, Confusion Matrix, AUC Score

* Building machine learning pipelines using vertex ai from Google cloud platform

* Monitoring dashboard  using Google studio

April 2022- Present

Deep Learning   (POC)

NLP project: "NLP APP" for Deep Search Labs

Proof of concept for Deep Search Lab for the development of an application that allows the analysis of BBC news with NLP techniques, such as sentiment analysis, entities recognition, and content base recommendation system

Roles & Responsibilities:

* Analyze requirements

* Creation of ETL pipelines using Beautifullsoup , and pandas libraries 

*  Automation using Airflow and docker

* Text preprocessing, tokenization and lemmatization

* Model selection and construction using NLTK and Spacy libraries

* Creation of a web application using Streamlit for the visualization of tasks, deployment

* Unit Testing the data on custom data sets.

December  2021- January 2022

Deep Learning   

NLP project: "SKIMlLIT"  for Zero To Mastery Academy  (Project to obtain certificate)
Developer of a NLP model to classify abstract sentences into the role they play (e.g. objective, methods, results, etc) to enable researchers to skim through the literature (hence SkimLit ) and dive deeper when necessary. Feature engineering is used; hybrid models, different embedding forms(multi data models).  A f1 score of 0.79 was reached in test dataset.

  • In this project, the deep learning model behind the 2017 PubMed 200k RCT paper: A Dataset for Sequential Sentence Classification in Medical Abstracts has been replicated.
  • Using the so-called PubMed 200k RCT dataset consisting of ~200,000 abstracts of labeled randomized controlled trials (RCTs).
  • The goal of the dataset was to explore the ability of NLP models to classify sentences that appear in sequential order.
  • In other words, given the summary of an RCT, determine what role each sentence plays in the summary


september 2021 - october 2021

Deep Learning 

Computer vision project: "FOOD VISION" for Zero To Mastery Academy  (Project to obtain certificate)
Developer of a model based on convolutional neural networks with Tensorflow that allows identifying between 101 different classes of food dishes, using EffcientNet (transfer-learning) and new mixed precision features of tensorflow. 75,750 images (750 per class) were used for the training set and 25,250 (250 per class) images for the test set, an accuracy of 0.80 was reached  in test dataset .

The goal of beating DeepFood, a 2016 paper which used a Convolutional Neural Network trained for 2-3 days to achieve 77.4% top-1 accuracy.


  • image preprocessing and normalization is performed.
  • to start the selection of the model only 10% of the data have been used.
  • construction of different structures based on convolutional neural networks is carried out.
  • Feature extraction is performed.
  • Data augmentation is performed.

  • Transfer learning is used and then fine tuning is carried out.
  • and finally a Scaling up is done using 100% of the data,
  • different models are compared using Scikitlearn's classification report function.


may 2021 - august 2021

Machine Learning  

End-to-end-bulldozer-price-regression for Zero To Mastery Academy  (Project to obtain certificate)

Developer of a predictive random forest regression model with Scikit-learn and Python to estimate the cost of sales of heavy machinery(bulldozer), based on time series data. Exploratory data analysis ,data cleaning, feature engineering, model selection, evaluation metrics and feature importance. The data is from the Kaggle Bluebook for Bulldozers competition. A r square value of 0.87 was achieved  in test dataset .

march 2021 - april 2021

Machine Learning

 Heart disease detection (binary classification project)

Developer of a logistic regression model with Scikit-learn for binary classification of patients with heart diseases, based on previous medical récords(14 different medical features). EDA, model selection, feature importance, metrics evaluation: ROC curve and AUC score, confusion matrix, accuracy, recall and f1 with cross validation. the model achieved a value of f1 of 0.88  in test dataset .

january 2021 - febrary2021

Machine Learning/Electrical Engineer in CORPOELEC

 

Electrical engineer, worked for the state electric company, carried out static and dynamic studies, developing models to simulate fault conditions in elements of the electrical system such as power switches, overvoltage and stability studies were carried out, and models were also created "time series forecasting" to forecast the future demand for electrical energy in the system, using recurrent neural networks, LSTM.

Apr 2018 - Dec 2019

Education


Zero To Mastery Academy

Tensorflow developer

2021 - 2021

Zero To Mastery Academy

Machine Learning , Data Science

2021 - 2021

Universidad Nacional Experimental Politécnica

Bs in Electrical Engineering

2013 - 2019