CakeResume Talent Search

上級
On
4〜6年
6〜10年
10〜15年
15年以上
United States
Avatar of the user.
Avatar of the user.
智慧製造全端開發工程師 @聯華電子股份有限公司
2022 ~ 現在
AI工程師、機器學習工程師、深度學習工程師、影像演算法工程師、資料科學家、Ai Application Engineer,Machine Learning Engineer,Deep Learning Engineer,Data Scientist
1ヶ月以内
Python
Qt
Git
就職中
面接の用意ができています
フルタイム / リモートワークに興味あり
4〜6年
元智大學 Yuan Ze University
工業工程與管理學系所
Avatar of YVictor.
Avatar of YVictor.
工程師 @永豐金證券
2018 ~ 現在
Python Developer, Rust Developer, BigData Engineer
1ヶ月以内
Education 國立東華大學 藝術創意產業學系Skills Python Numpy / Pandas / Polars Celery FastAPI Visualization Rust Tauri Tokio Tonic Polars CICD Docker Docker-compose K8S Gitlab CI Github Action Deep Learning CNN / RNN / GNN Reinforcement Learning Tensorflow Pytorch Keras Other Language Rust javascript Swift C / C++ Dart Design Photoshop illustrator After Effects Cinema 4D 3D Modeling / Rendering Generative Design Side Project TradingGym more 這個專案啟發於openai的gym,gym是一個環境可以快速的
Python
pytorch
CINEMA 4D
就職中
フルタイム / リモートワークに興味あり
4〜6年
國立東華大學 | National Dong Hwa University
Arts and Creative Industries
Avatar of Gavin Jang.
Avatar of Gavin Jang.
AI Engineer @Revlis Biotech Co. Ltd., Yunlin County, Taiwan
2022 ~ 現在
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
2ヶ月以内
. Coordinated with Environment and Construction Authority to proceed monitoring projects. EducationMaster of Science National Sun Yat-Sen University Biological Oceanography, Multivariate Analysis, Time Series AnalysisBachelor of Science National Sun Yat-Sen University Oceanography Skills Certificate Deep Learning Machine Learning Statistics Multivariant Analysis Python SPSS SAS PyTorch Tensorflow/Keras Scikit-Learn Matplotlib Seaborn 1. Python from the Beginning / Udemy 2. Python A-Z / Udemy 3. Machine Learning A-Z / Udemy 4. Deep Learning A-Z / Udemy 5. TensorFlow 2.0 using Keras API / Udemy 6. AI
Deep Learning
Machine Learning
Statistics
就職中
フルタイム / リモートワークに興味あり
10〜15年
National Sun Yat-sen University
Biological Oceanography, Multivariate Analysis, Time Series Analysis
Avatar of Hao-Chun (Chad) Yang.
Avatar of Hao-Chun (Chad) Yang.
Senior Machine Learning Engineer @C-Media Electronics
2020 ~ 2021
Machine Learning Scientist, Data Scientist
1ヶ月以内
Hao-Chun (Chad) Yang Ph.D Ph.D Graduate @NTHU (EE) | Seeking AI/ML R&D Position | Speech, IOT, Health Informatics, Computational Neuroscience | pytorch, tensorflow Room 315, General Building III, No. 101, Section 2, Kuang-Fu Road,Hsinchu City, Taiwan Skills Programming Programming: Python, Matlab DevOps: AWS, GCP, Git, Docker Deep Learning: Pytorch, Tensorflow, Keras ML& Data Science: Sklearn, Numpy, Pandas, Matplotlib MLOps: MLflow, W&B Special HonorsBest Challenge Poster - Physionet/CINC ChallengeTravel Grants - IEEE SPS SocietyPresident Scholarship - NTHU Education National Tsing Hua University Ph.D. in Electrical Engineering (SepPresent) National Tsing
Python
pytorch
tensorflow
兵役中
フルタイム / リモートワークに興味あり
4〜6年
清華大學
電機工程
Avatar of PRASTOWO.
Avatar of PRASTOWO.
General Administrasi & Opearsional @PT. PANCAR NI'MAH
2001 ~ 現在
Data Entry or Customer Services
3ヶ月以内
PRASTOWO General [email protected] Cipinang Pulo RT.011 RW.014, Cipinang Besar Utara, Jatinegara, Jakarta Timur, Indonesia Saya mempunyai pengalaman Pekerjaan 14 tahun dibidang Administrasi Umum dan GA, 5 tahun dalam layanan pelanggan Saya mampu mengoperasikan Microsoft Office ( Word, Excel, Power Point, Publisher ) Serta biasa dalam pengentrian data ke database perusahaaan. sehingga perusahaan dapat lebih untung 40%, saya merupakan orang yang pekerja keras, mampu bekerja dalam tim, mampu bekerja dibawah tekanan, mampu bekerja sama dengan baik, dan mempunyai motivasi yang tinggi dalam bekerja. Pendidikan STIMIK KUWERA Computer Science/Information Technology •AMIK Bina
Word
Excel
PowerPoint
就職中
パートタイム / リモートワークのみ
10〜15年
STIMIK KUWERA
Computer Science/Information Technology
Avatar of Abo Lei.
Avatar of Abo Lei.
Sr. Machine Learning Engineer @Micron Technology 台灣美光
2022 ~ 現在
Data Scientist
1年以上
Learning. Good at self-learning, Desire to recognize the real world through Data. Data Scientist Taichung,TW Birth :Email : [email protected] 技能 Skills Programming C# Socket WInForm Thread I/O WinAPI Visual Studio IDE Visual Studio Visual Studio Code AI Python Tensorflow Keras NumPy Pandas Matplotlib Azure DevOps Machine Learning Service Storage Explorer Batch service Data Factory Tools Jupyter Notebok PyCharm Visual Studio code Version control Git SVN Azure DevOps Repo 知識 Knowledge Languages Chinese - Mandarin Native language Chinese - Taiwanese Native language English Medium TOEIC 670 Architecture Design robust, maintainability, readable
Word
PowerPoint
Excel
フルタイム / リモートワークに興味あり
4〜6年
Southern Taiwan University of Science and Technology
Computer Science and Information Technology
Avatar of the user.
Avatar of the user.
Senior Software engineer @Cisco Systems
2022 ~ 現在
DeepLearning Engineer
1ヶ月以内
Python
C
Web Development
就職中
フルタイム / リモートワークに興味あり
4〜6年
R.O.C. Naval Academy
Electrical Engineering
Avatar of the user.
Avatar of the user.
Project Manager - PMO @EY India
2019 ~ 現在
Business Development, Product Manager, Project Management, Business Operations, Process Design
1年以内
Project Management
scrum master
Product Management
就職中
フルタイム / リモートワークに興味あり
10〜15年
Siena College of Proffessional Studies
Bachelor of Business Administration BBA Business Administration and Management

最も簡単で効果的な採用プラン

80万枚以上の履歴書を検索して、率先して求人応募者と連絡をとって採用効率を高めましょう。何百もの企業に選ばれています。

  • 検索結果をすべて閲覧
  • 新しい会話を無制限に始められます
  • 有料企業にのみ履歴書を公開
  • ユーザーのメールアドレスと電話番号を確認
検索のコツ
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
無料プランでは公開済みの履歴書のみ利用できます。
上級プランにアップグレードして、CakeResume限定の何百万の履歴書など、すべての検索結果を閲覧しましょう。

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.
1年以内
機器學習工程師
Logo of Asus 華碩電腦股份有限公司.
Asus 華碩電腦股份有限公司
2022 ~ 現在
台灣
Professional Background
現在の状況
就職中
求人検索の進捗
就職を希望していません
Professions
Machine Learning Engineer
Fields of Employment
人工知能/機械学習
職務経験
2〜4年
Management
なし
スキル
Python
Linux
Docker
NumPy
pytorch
Scikit-Learn
git
Deep Learning
Pandas
Linux Shell
Bash scripting
Bash shell
Object Detection
Computer Vision
Machine Learning
言語
English
中級者
Chinese
ネイティブまたはバイリンガル
Job search preferences
希望のポジション
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
求人タイプ
フルタイム
希望の勤務地
Taiwan, 台灣, USA, UK, Canada, Norway
リモートワーク
リモートワークに興味あり
Freelance
はい、私はアマチュアのフリーランスです。
学歴
学校
國立雲林科技大學 National Yunlin University of Science and Technology
専攻
資訊工程
印刷
Fveiwui5q05vysxmbtsf

Austin Yang

Hello, I am Ming-Hao, Yang.

I graduated from National Yunlin University of Science and Technology with M.S. in Computer Science and Information Engineering.

My research interests are in deep learning, speech synthesis, speech recognition, anomalous sound detection.

I am familiar with Linux, audio and computer vision, deep learning framework PyTorch, Keras, Tensorflow.

Machine Learning Engineer

[email protected]

Work Experience

National Yunlin University of Science and Technology, Machine  Engineer, Feb 2020 ~ Present

I am responsible for solving industry issues, such as anomaly detection, object detection, object classification, and anomalous sound detection.

At the same time, I serve as the instructor of the Ministry of Education's online pre-employment training course to train AI-related talents.

This course teaches college students of AI-related technology across the country to introduce AI into enterprises and also sets up AI workshops to teach enterprises how to use AI to recognize environmental sounds.


Projects

  1. Respiration sound recognition
  2. Infant sound recognition
  3. Anomaly image recognition
  4. Anomalous sound detection

National Yunlin University of Science and Technology, Artificial Intelligence Engineer, Aug 2019 ~ Oct 2019

This project aims to use students' online learning behaviors to predict whether students will pass the course at the end of the semester and use the AI model to give appropriate learning suggestions.

In the project, I am responsible for the establishment of the entire project such as behavioral feature analysis, AI model establishment, and hyperparameter tuning and prediction.

Education

National Yunlin University of Science and Technology, Master’s Degree, Computer Science and Information Engineering, 2017 ~ 2019

National Yunlin University of Science and Technology, Bachelor’s Degree, Computer Science and Information Engineering, 2012 ~ 2017

Skills


Programming language

  • Python
  • Ruby
  • C++


Machine learning

  • SVM
  • KNN
  • PCA
  • Random forest
  • Decision tree


Deep learning

  • Generative Adversarial Network
  • Autoencoder
  • Convolutional neural network
  • Fully connected neural network


Speech

  • Speech synthesis
  • Speaker recognition
  • Sound event classification


Computer vision

  • Object detection
  • Object classification
  • Image classification


Tools

  • git
  • GitLab
  • Docker
  • Shell script

Portfolio

ImageClassification https://github.com/fastyangmh/ImageClassification

This repository is an image classification based on deep learning.

It contains various state-of-art models like ResNet, MobileNet, EfficientNet and the user can use a self-defined model.

This repository has a hyperparameter tuning and a k-fold cross validation feature.

You can easily use this repository to complete tasks of image classification. What you need is to prepare data and input instructions according to the document, and then you can automatically start training the AI model, and finally, get the best AI model.

SoundClassification https://github.com/fastyangmh/SoundClassification

This repository is an sound classification based on deep learning.

It contains various state-of-art models like ResNet, MobileNet, EfficientNet and the user can use a self-defined model, also contains any audio transform based on SoX.

This repository has a hyperparameter tuning and a k-fold cross validation feature.

You can easily use this repository to complete tasks of sound classification. What you need is to prepare data and input instructions according to the document, and then you can automatically start training the AI model, and finally, get the best AI model.

AudioGANomaly https://github.com/fastyangmh/AudioGANomaly

AudioGANomaly is based on an anomaly detection paper named, "GANomaly: Semi-Supervised Anomaly Detection via Adversarial Train", this architecture uses Encoder-Decoder-Encoder to learn the distribution of normal data in high dimensional space and combine with a classifier based on Encoder by adversarial learning.

AudioDenoiser https://github.com/fastyangmh/AudioDenoiser

AudioDenoiser is based on an anomaly detection paper named, "Real Time Speech Enhancement in the Waveform Domain", this architecture is similar to Autoencoder and U-Net and adds LSTM in the middle layer to improve denoising performance.

Master's Thesis

Speech Synthesis based on Generative Adversarial Network

In recent years, based on mature hardware technology and big data, the Deep Neural Network(DNN) has made breakthroughs, and many successful cases can be seen in various fields. One of the most groundbreaking deep network architectures is the generative adversarial network, which provides an innovative way to train the generative model, and more specifically, it designs the model into two sub-models: generator and discriminator. The generator is used to generate samples, and the discriminator attempts to classify the samples as real or fake. This thesis, which is different from traditional speech synthesis technology, explores the speech synthesis technology based on a generative adversarial network. The generative adversarial network can learn the feature distribution from the training data, thereby generating more natural speech.

This thesis includes the Chinese and English speech synthesis. For the English model, which corpus CSTR VCTK corpus to train three different speaker models of men and women. As for the Chinese corpus, which uses the COSPRO & Toolkit, and also trains three different speakers models of men and women. From the results, it can be found that the English language average score of men and women Mean Opinion Score(MOS) reached 3.18 points (3.52 points for men and 2.83 points for women) out of 5 points, and the average score of men and women in Chinese language MOS reached 1.91 points (2.21 points for men, 1.6 points for women). In addition, in the speaker identification experiment, we found that the average pass rate of the text-related synthesized speech in Chinese and English is as follows: DNN average pass rate reaches 80.5% (72% for Chinese, 89% for English). The Support Vector Machine (SVM) has an average pass rate of 86% (100% in Chinese, 72% in English). The average pass rate of text-independent synthesized speech has different pass rates according to the length of speech: the average pass rate of DNN is 36% (44% in Chinese, 28% in English) in 0.5 seconds, and 44.5% in SVM. The average pass rate of DNN in 3 seconds is 75% (78% in Chinese, 72% in English), SVM is 80.5% (72% in Chinese, 89% in English), DNN average in 5 seconds, the pass rate was 89% (78% in Chinese, 100% in English), and the SVM is 97% (94% in Chinese, 100% in English).

In the average opinion score, since English has a more complete front-end language rule to produce complete text features, so that the model can generate more natural speech. Therefore, English synthesized speech is better than Chinese. In the speaker identification experiment, the English pass rate is worse than that of Chinese in this case because the English speech time is much shorter than Chinese speech. As far as this article is unrelated, it can be found that the longer the speech time is, the higher the pass rate is. Therefore, improving the security of the speaker recognition system can reduce the phrase time or improve the model. Since the discriminator of the system is used to identify the authenticity of the speech during the training process, we can combine the discriminator in the system into the speaker recognition system to effectively block the synthetic speech attack. 
Resume
プロフィール
Fveiwui5q05vysxmbtsf

Austin Yang

Hello, I am Ming-Hao, Yang.

I graduated from National Yunlin University of Science and Technology with M.S. in Computer Science and Information Engineering.

My research interests are in deep learning, speech synthesis, speech recognition, anomalous sound detection.

I am familiar with Linux, audio and computer vision, deep learning framework PyTorch, Keras, Tensorflow.

Machine Learning Engineer

[email protected]

Work Experience

National Yunlin University of Science and Technology, Machine  Engineer, Feb 2020 ~ Present

I am responsible for solving industry issues, such as anomaly detection, object detection, object classification, and anomalous sound detection.

At the same time, I serve as the instructor of the Ministry of Education's online pre-employment training course to train AI-related talents.

This course teaches college students of AI-related technology across the country to introduce AI into enterprises and also sets up AI workshops to teach enterprises how to use AI to recognize environmental sounds.


Projects

  1. Respiration sound recognition
  2. Infant sound recognition
  3. Anomaly image recognition
  4. Anomalous sound detection

National Yunlin University of Science and Technology, Artificial Intelligence Engineer, Aug 2019 ~ Oct 2019

This project aims to use students' online learning behaviors to predict whether students will pass the course at the end of the semester and use the AI model to give appropriate learning suggestions.

In the project, I am responsible for the establishment of the entire project such as behavioral feature analysis, AI model establishment, and hyperparameter tuning and prediction.

Education

National Yunlin University of Science and Technology, Master’s Degree, Computer Science and Information Engineering, 2017 ~ 2019

National Yunlin University of Science and Technology, Bachelor’s Degree, Computer Science and Information Engineering, 2012 ~ 2017

Skills


Programming language

  • Python
  • Ruby
  • C++


Machine learning

  • SVM
  • KNN
  • PCA
  • Random forest
  • Decision tree


Deep learning

  • Generative Adversarial Network
  • Autoencoder
  • Convolutional neural network
  • Fully connected neural network


Speech

  • Speech synthesis
  • Speaker recognition
  • Sound event classification


Computer vision

  • Object detection
  • Object classification
  • Image classification


Tools

  • git
  • GitLab
  • Docker
  • Shell script

Portfolio

ImageClassification https://github.com/fastyangmh/ImageClassification

This repository is an image classification based on deep learning.

It contains various state-of-art models like ResNet, MobileNet, EfficientNet and the user can use a self-defined model.

This repository has a hyperparameter tuning and a k-fold cross validation feature.

You can easily use this repository to complete tasks of image classification. What you need is to prepare data and input instructions according to the document, and then you can automatically start training the AI model, and finally, get the best AI model.

SoundClassification https://github.com/fastyangmh/SoundClassification

This repository is an sound classification based on deep learning.

It contains various state-of-art models like ResNet, MobileNet, EfficientNet and the user can use a self-defined model, also contains any audio transform based on SoX.

This repository has a hyperparameter tuning and a k-fold cross validation feature.

You can easily use this repository to complete tasks of sound classification. What you need is to prepare data and input instructions according to the document, and then you can automatically start training the AI model, and finally, get the best AI model.

AudioGANomaly https://github.com/fastyangmh/AudioGANomaly

AudioGANomaly is based on an anomaly detection paper named, "GANomaly: Semi-Supervised Anomaly Detection via Adversarial Train", this architecture uses Encoder-Decoder-Encoder to learn the distribution of normal data in high dimensional space and combine with a classifier based on Encoder by adversarial learning.

AudioDenoiser https://github.com/fastyangmh/AudioDenoiser

AudioDenoiser is based on an anomaly detection paper named, "Real Time Speech Enhancement in the Waveform Domain", this architecture is similar to Autoencoder and U-Net and adds LSTM in the middle layer to improve denoising performance.

Master's Thesis

Speech Synthesis based on Generative Adversarial Network

In recent years, based on mature hardware technology and big data, the Deep Neural Network(DNN) has made breakthroughs, and many successful cases can be seen in various fields. One of the most groundbreaking deep network architectures is the generative adversarial network, which provides an innovative way to train the generative model, and more specifically, it designs the model into two sub-models: generator and discriminator. The generator is used to generate samples, and the discriminator attempts to classify the samples as real or fake. This thesis, which is different from traditional speech synthesis technology, explores the speech synthesis technology based on a generative adversarial network. The generative adversarial network can learn the feature distribution from the training data, thereby generating more natural speech.

This thesis includes the Chinese and English speech synthesis. For the English model, which corpus CSTR VCTK corpus to train three different speaker models of men and women. As for the Chinese corpus, which uses the COSPRO & Toolkit, and also trains three different speakers models of men and women. From the results, it can be found that the English language average score of men and women Mean Opinion Score(MOS) reached 3.18 points (3.52 points for men and 2.83 points for women) out of 5 points, and the average score of men and women in Chinese language MOS reached 1.91 points (2.21 points for men, 1.6 points for women). In addition, in the speaker identification experiment, we found that the average pass rate of the text-related synthesized speech in Chinese and English is as follows: DNN average pass rate reaches 80.5% (72% for Chinese, 89% for English). The Support Vector Machine (SVM) has an average pass rate of 86% (100% in Chinese, 72% in English). The average pass rate of text-independent synthesized speech has different pass rates according to the length of speech: the average pass rate of DNN is 36% (44% in Chinese, 28% in English) in 0.5 seconds, and 44.5% in SVM. The average pass rate of DNN in 3 seconds is 75% (78% in Chinese, 72% in English), SVM is 80.5% (72% in Chinese, 89% in English), DNN average in 5 seconds, the pass rate was 89% (78% in Chinese, 100% in English), and the SVM is 97% (94% in Chinese, 100% in English).

In the average opinion score, since English has a more complete front-end language rule to produce complete text features, so that the model can generate more natural speech. Therefore, English synthesized speech is better than Chinese. In the speaker identification experiment, the English pass rate is worse than that of Chinese in this case because the English speech time is much shorter than Chinese speech. As far as this article is unrelated, it can be found that the longer the speech time is, the higher the pass rate is. Therefore, improving the security of the speaker recognition system can reduce the phrase time or improve the model. Since the discriminator of the system is used to identify the authenticity of the speech during the training process, we can combine the discriminator in the system into the speaker recognition system to effectively block the synthetic speech attack.