課程簡介
- 反向傳播、模組化模型
- Logsum 模組
- RBF 網
- MAP/MLE 丟失
- 參數空間變換
- 卷積模組
- 基於梯度的學習
- 用於推理的能量
- 學習目標
- 主成分分析、NLL
- 潛在變數模型
- 概率 LVM
- 損失函數
- 手寫識別
最低要求
GoOD 基礎機器學習。Programming 任何語言的技能(最好是 Python/R)。
客戶評論 (7)
The structure from first principles, to case studies, to application.
Margaret Webb - Department of Jobs, Regions, and Precincts
Course - Introduction to Deep Learning
The deep knowledge of the trainer about the topic.
Sebastian Gorg
Course - Introduction to Deep Learning
I think that if training would be done in polish it would allow the trainer to share his knowledge more efficient.
Radek
Course - Introduction to Deep Learning
Exercises after each topic were really helpful, despite there were too complicated at the end. In general, the presented material was very interesting and involving! Exercises with image recognition were great.
Dolby Poland Sp. z o.o.
Course - Introduction to Deep Learning
Topic. Very interesting!.
Piotr
Course - Introduction to Deep Learning
Trainers theoretical knowledge and willingness to solve the problems with the participants after the training.
Grzegorz Mianowski
Course - Introduction to Deep Learning
The topic is very interesting.