Avatar of 謝睿滄.
謝睿滄
Software Engineer
個人檔案
職場能力評價0

貼文
10個聯絡人
列印
Avatar of the user.

謝睿滄

Software Engineer
Backend Engineer with expertise in Deep Learning and a working knowledge of DevOps practices.
Logo of the organization.
Wistron
Logo of the organization.
National Taiwan University of Science and Technology
台灣桃園市

職場能力評價

專業背景

  • 目前狀態
    就職中
  • 專業
    後端開發人員
    Python 開發人員
    軟體工程師
  • 產業
    軟體
    人工智慧 / 機器學習
  • 工作年資
    2 到 4 年 (2 到 4 年相關工作經驗)
  • 管理經歷
  • 技能
    Python
    Flask(Python)
    Django(Python)
    CI/CD
    PostgreSQL
    MongoDB
    TensorFlow/Keras/Pytorch
    Kubernetes/Docker
    Prometheus + Grafana + Altermanager
    Loki
  • 語言能力
    English
    中階
    Chinese
    母語或雙語
  • 最高學歷
    碩士

求職偏好

  • 預期工作模式
    全職
    對遠端工作有興趣
  • 希望獲得的職位
    後端工程師
  • 期望的工作地點
    台灣台北
  • 接案服務
    不提供接案服務

工作經驗

Logo of the organization.

Software Engineer

2021年1月 - 現在
台灣新北市
1. Developed, optimized, and maintained an AI inference service - Improved the inference throughput by up to 50%. - Refactored and optimized the AI inference service code using object-oriented programming and design patterns, successfully reducing the codebase from over 4,000 lines to approximately 2,000 lines. - Developed comprehensive unit tests, achieving an impressive test coverage rate of 93%. These tests played a pivotal role in greatly improving the stability of the code. 2. Developed a monitoring system using Prometheus and Loki to track system resource utilization and AI inference metrics on production servers. 3. Developed an AI model deployment flow using GitLab CI/CD to start inference services on different stage environment servers using Kubernetes. 4. Developed a Kubernetes-in-Kubernetes environment on a development server to simulate the production environment across various factory servers. 5. Optimized, and maintained the Auto-Scheduler API for a web training platform. 6. Developed, optimized, and maintained a defect detection model - Capacitor component defect detection model with 0% leakage and overkill less than 1%. - Developed an inference model and implemented the corresponding code for detecting defects in IC components.
Logo of the organization.

Artificial Intelligence Engineer

2020年9月 - 2020年12月
4 個月
244台灣新北市林口區
1. Build deep learning training APIs Developed and integrated deep learning training APIs, enabling the implementation of diverse algorithms, such as object detection, object segmentation, classification, anomaly detection, and OCR. These APIs were instrumental in constructing a user-friendly, no-code deep learning training platform on a website. 2. Build C++ deep learning inference APIs Developed C++ deep learning inference APIs to convert PyTorch models trained on our platform into C++-compatible models (torchlib). This facilitated the deployment of models on edge computing servers, enabling real-time defect prediction on production lines. 3. Developed and optimized algorithms for defect detection

學歷

Logo of the organization.
Master’s Degree
Mechanical Engineering
2018 - 2020