CakeResume Talent Search

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On
4〜6年
6〜10年
10〜15年
15年以上
National Taiwan University
Avatar of Ryan Chen.
Avatar of Ryan Chen.
Software Engineer @CakeResume
2022 ~ 現在
Software Engineer
1ヶ月以内
systems. Spearheaded the integration of Strapi (a content management system), enhancing the team's ability to quickly produce pages and distribute content . Pioneered the integration of LLM model API services. Research Assistant, Academia Sinica 11//2020 Conducted research in deep learning-based Natural Language Processing (NLP), exploring innovative approaches in machine learning. Experimented with various training methods and models, including multi-task learning and language models such as BERT. Authored a publication titled "Detecting Deceptive Language in Crime Interrogation". Investigated Memory Networks and applied them to develop an application for detecting deceptive
React
TypeScript
JavaScript
Reputation Credits1
就職中
就職を希望していません
フルタイム / リモートワークに興味あり
10〜15年
National Taiwan University
Computer Science and Information Engineering
Avatar of the user.
Avatar of the user.
Senior iOS Developer @LINE Taiwan Limited
2020 ~ 現在
App Team Lead, Senior iOS Developer
1年以上
iOS
Objective-C
JavaScript
就職中
フルタイム / リモートワークに興味あり
4〜6年
National Taiwan University
Computer Science
Avatar of the user.
Avatar of the user.
Software Engineer @TSMC 台積電
2022 ~ 現在
Data Scientist
1ヶ月以内
Python
SQL
Kubernetes
就職中
就職を希望していません
フルタイム / リモートワークに興味なし
4〜6年
National Taiwan University
Economics
Avatar of Harry (Po-Jui) Chen.
Avatar of Harry (Po-Jui) Chen.
CTO @KryptoGO Co., Ltd.
2021 ~ 現在
AI Software Engineer,Deep learning Engineer
1年以内
Harry (Po-Jui) Chen An Olympiad medalist having fast learning ability and great passion for solving complex problems and learning new things, with 4+ years of experience in a software start-up as full-stack engineer, data scientist and project manager.  Full-stack Engineer, Data Scientist, Project Manager Taipei, Taiwan [email protected] Education National Taiwan University, B.S., CSIE (Computer Science and Information Engineering), SepJun 2019 Doing research and industrial projects in Shou-de Lin 's MSLab for 2 years. Research area: Attention model in NLP & Few shot object detection in Computer
Algorithm
ASP.NET
Machine Learning
就職中
就職を希望していません
フルタイム / リモートワークに興味あり
6〜10年
National Taiwan University
Computer Science and Information Engineering

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UI designer -UX
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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.
3ヶ月以内
資料工程師 @ 華邦電子股份有限公司
Logo of 華邦電子股份有限公司.
華邦電子股份有限公司
2020 ~ 現在
Taipei City, Taiwan
Professional Background
現在の状況
就職中
求人検索の進捗
Professions
Data Engineer, Data Scientist, DevOps / System Admin
Fields of Employment
ビッグデータ, 人工知能/機械学習, 半導体
職務経験
2〜4年
Management
I've had experience in managing 1-5 people
スキル
Python
Docker
Tensorfolw
Recommender Systems
NLP
Spark
Airflow
AWS
DevOps / CI / CD
言語
Job search preferences
希望のポジション
RD
求人タイプ
フルタイム
希望の勤務地
リモートワーク
リモートワークに興味あり
Freelance
学歴
学校
National Taiwan University
専攻
Mechanical Engineering
印刷
User 6158 1471577752

Kao Chiang

NTU ME
#ML #NLP #Recommender

Skills


Software

> ML: Tensorflow, Keras, Xgboost,
          LightGBM, Pytorch
> NLP: Rasa, spaCy, Gensim, GluonNLP, GloVe

> Web: Flask, Django, Vue, SQL

> APP: Swift, Android Studio
> Others: Docker, docker-compose, Spark



Combination

There are lots of open source tools and platforms to help us to develop the project, but how to combine each tool or platform well (efficiency & security) is the point.
With some experience of organizing an whole project by myself, I am good at making good use of the newest technology to solve the problems.

Communication

Nowadays, it is quite easy to use many powerful tools, but mostly each of them are used in different platform or languange, and each of tools often include many knowledge which need to be considered various aspects. In some experience of system design, I

Projects


Chatbot

 An end-to-end chatbot platform which includes two part of main services. One is a friendly interface to edit corpus and dictionary for training machine-learning model; Another platform is a chatbot services include chat room for testing , logging for remarking incorrect response, and so on. Most of NLP models are applied in English or western language, but our clients are Chinese. So, I need to re-write many program flow to be suitable and well on Chinese .

Face Recognition

In a corporation with a security company, they want to include some AI in their security system in an exhibition. There are two main of conditions. One is to apply in department store to recognize and record the flow of people with gender and age instantly. The other one is an access control by recognize face of people.

To their demand, we make a device embedding two machine learning model to detect face and recognize age and gender.


Recommender System

It is lucky to participate the design of recommender system of a top e-commerce platform, and that is the first time I took "big data". Because of the amount of data, the data pipeline need to be very careful in the parallel computing. We use Apache Spark framework and Kubernetes to deploy our models. 

The recommender system is mainly combined by two models. One model is user-based model and the other is content-based model. We use fully-connected layer to combine.

Resume
プロフィール
User 6158 1471577752

Kao Chiang

NTU ME
#ML #NLP #Recommender

Skills


Software

> ML: Tensorflow, Keras, Xgboost,
          LightGBM, Pytorch
> NLP: Rasa, spaCy, Gensim, GluonNLP, GloVe

> Web: Flask, Django, Vue, SQL

> APP: Swift, Android Studio
> Others: Docker, docker-compose, Spark



Combination

There are lots of open source tools and platforms to help us to develop the project, but how to combine each tool or platform well (efficiency & security) is the point.
With some experience of organizing an whole project by myself, I am good at making good use of the newest technology to solve the problems.

Communication

Nowadays, it is quite easy to use many powerful tools, but mostly each of them are used in different platform or languange, and each of tools often include many knowledge which need to be considered various aspects. In some experience of system design, I

Projects


Chatbot

 An end-to-end chatbot platform which includes two part of main services. One is a friendly interface to edit corpus and dictionary for training machine-learning model; Another platform is a chatbot services include chat room for testing , logging for remarking incorrect response, and so on. Most of NLP models are applied in English or western language, but our clients are Chinese. So, I need to re-write many program flow to be suitable and well on Chinese .

Face Recognition

In a corporation with a security company, they want to include some AI in their security system in an exhibition. There are two main of conditions. One is to apply in department store to recognize and record the flow of people with gender and age instantly. The other one is an access control by recognize face of people.

To their demand, we make a device embedding two machine learning model to detect face and recognize age and gender.


Recommender System

It is lucky to participate the design of recommender system of a top e-commerce platform, and that is the first time I took "big data". Because of the amount of data, the data pipeline need to be very careful in the parallel computing. We use Apache Spark framework and Kubernetes to deploy our models. 

The recommender system is mainly combined by two models. One model is user-based model and the other is content-based model. We use fully-connected layer to combine.