Dive into Deep Learning (Study Group): Introduction to Deep Learning | Session 1
Dive into Deep Learning (Study Group): Introduction to Deep Learning | Session 1
Entire playlist: https://www.youtube.com/playlist?list=PLGSHbNsNO4ViFXawDmx-kEz7zGziOpNSb
Find out more information about this study group here: https://github.com/dair-ai/d2l-study-group/
Видео Dive into Deep Learning (Study Group): Introduction to Deep Learning | Session 1 канала Elvis Saravia
Entire playlist: https://www.youtube.com/playlist?list=PLGSHbNsNO4ViFXawDmx-kEz7zGziOpNSb
Find out more information about this study group here: https://github.com/dair-ai/d2l-study-group/
Видео Dive into Deep Learning (Study Group): Introduction to Deep Learning | Session 1 канала Elvis Saravia
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Prompt Engineering OverviewHow to save the world and forward your career in 5 easy steps | Women in NLP Talks(Hopefully-Reusable) Life Lessons for PhD Students in NLP101 ways to solve neural search with JinaDive into Deep Learning (Study Group): Modern CNNs | Session 7Dive into Deep Learning (Study Group): Convolutional Neural Networks | Session 6Dive into Deep Learning (Study Group): Deep Learning Computation with PyTorch | Session 5Keep Learning ML #3 | Contrastively Trained Structured World ModelsDive into Deep Learning (Study Group): Multilayer Perceptrons | Session 4Dive into Deep Learning (Study Group): Linear Neural Networks | Session 3Keep Learning ML #2 | Language-conditioned policy learning, Effective ML Testing, EagerPyDive into Deep Learning (Study Group): Preliminaries | Session 2Keep Learning ML (Session 1) | DSV, CompLex, Modern tools for emotionsHow I read and annotate ML papersTextAttack: A Framework for Data Augmentation and Adversarial Training in NLPBuilding tools and frameworks for large-scale social media mining (by Dr. Juan M. Banda)Getting Started with NLPQuestion Understanding: COVID-Q: 1,600+ Questions about COVID-19Discriminative Adversarial Search for Abstractive Summarization (by Thomas Scialom)Sentiment Analysis: Key Milestones, Challenges and New Directions