Глубинное обучение (курс лекций)/2019

Материал из MachineLearning.

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This is introductory course on deep learning models and their application for solving different problems of image and text analysis.

Instructors: Dmitry Kropotov, Victor Kitov, Nadezhda Chirkova, Oleg Ivanov and Evgeny Nizhibitsky.

E-mail for questions: bayesml@gmail.com. Please include in subject the tag [CMC DL19].

The timetable in Spring 2019: Fridays, room 685, lectures begin at 14-35, seminars begin at 16-20.

Announcements

Rules and grades

We have 5 practical assignments during the course. For each assignment a student may get up to 5 points. A student is allowed to upload his fulfilled assignment during one week after deadline with grade reduction of 0.1 points per day.

The final grade for the course is calculated as follows: Round-up (0.3*<Exam_grade> + 0.7*<Semester_grade>). For the final grade 5 it is necessary to fulfill all practical assignments and get >= 4 exam grade. For the final grade 4 it necessary to fulfill at least 4 practical assignments and get >= 3 exam grade. For the final grade 3 it is necessary for fulfill at least 3 practial assignments and get >=3 exam grade.

Practical assignments

Practical assignments are provided on course page in anytask.org. Invite code: ????

Lectures

Date No. Topic Materials
15 Feb. 2019 1 Introduction. Automatic differentiation.
22 Feb. 2019 2 Optimization and regularization methods for neural networks
01 Mar. 2019 3 Convolutional neural networks for image classification problem
15 Mar. 2019 4 Convolutional neural networks for image segmentation problem
22 Mar. 2019 5 Object detection and localization on images
29 Mar. 2019 6 Image style transfer
05 Apr. 2019 7 Recurrent neural networks
12 Apr. 2019 8 Attention mechanism
19 Apr. 2019 9 Generative adversarial networks
26 Apr. 2019 10 Riemannian optimization
17 May 2019 11

Seminars

Date No. Topic Materials
15 Feb. 2019 1 Automatic differentiation.
22 Feb. 2019 2 Introduction to Azure and Pytorch
01 Mar. 2019 3 Convolutional neural networks for MNIST
15 Mar. 2019 4 Deep learning contests
22 Mar. 2019 5 Face recognition
29 Mar. 2019 6 Image style transfer
05 Apr. 2019 7 Recurrent neural networks
12 Apr. 2019 8 Attention mechanism
19 Apr. 2019 9 Generative adversarial networks
26 Apr. 2019 10 Riemannian optimization
17 May 2019 11

Arxiv

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