Makeesy AI
Welcome to my YouTube Channel and thanks for subscribing, If you haven't, Subscribe Now!
Using the channel, we'll try to understand the AI concepts with basic implementations. The Idea would be to explain a single topic in a simple and short video.
Makeesy AI, Let's Keep It Simple.
Created by Raj Nath Patel - https://patelrajnath.github.io/
I'm a Research Scientist and working mainly in NLP domain. I create these tutorials aiming to give Basic AI Tools to more-and-more people.
Feel free to contact me via Email/YouTube Comments/Facebook/LinkedIn/Twitter.
Disclaimer: Opinions expressed are solely my own and do not express the views or opinions of my employer.
Pytorch for Beginners #43 | Transformer Model: Implement EncoderDecoder
Pytorch for Beginners #42 | Transformer Model: Implement Decoder
Pytorch for Beginners #41 | Transformer Model: Implement Encoder
Pytorch for Beginners #40 | Transformer Model: Understanding LayerNorm with in-depth-details
Pytorch for Beginners #39 | Transformer Model: Understanding BatchNorm with in-depth-details
Pytorch for Beginners #38 | Transformer Model: Understanding Dropout with In-Depth-Details
Pytorch for Beginners #37 | Transformer Model: Masked SelfAttention - Implementation
Pytorch for Beginners #36 | Transformer Model: Decoder Attention Masking
Pytorch for Beginners #35 | Transformer Model: Encoder Attention Masking
Pytorch for Beginners #34 | Transformer Model: Understand Masking
Pytorch for Beginners #33 | Transformer Model: Position Embeddings- Validate Properties - Part 2
Pytorch for Beginners #32 | Transformer Model: Position Embeddings - Validate Properties
Pytorch for Beginners #31 | Transformer Model: Position Embeddings - Implement and Visualize
Pytorch for Beginners #30 | Transformer Model - Position Embeddings
Pytorch for Beginners #29 | Transformer Model: Multiheaded Attention - Scaled Dot-Product
Pytorch for Beginners #28 | Transformer Model: Multiheaded Attention - Optimize Basic Implementation
Pytorch for Beginners #27 | Transformer Model: Multiheaded Attn-Implementation with In-Depth-Details
Pytorch for Beginners #26 | Transformer Model: Self Attention - Optimize Basic Implementation
Pytorch for Beginners #25 | Transformer Model: Self Attention - Implementation with In-Depth Details
Pytorch for Beginners #24 | Transformer Model: Self Attention - Simplest Explanation
Pytorch for Beginners #23 | Recurrent Neural Networks: Understanding and Implementing GRU
Pytorch for Beginners #22 | Recurrent Neural Networks: Understanding and Implementing LSTM
Pytorch for Beginners #21 | Recurrent Neural Networks: Understanding and Implementing Vanilla RNN
Pytorch for Beginners #20 | Optimizers: SGD with Manual Gradient Computation
Pytorch for Beginners #19 | Optimizers: Stochastic Gradient Descent and Adaptive Moment Estimation
Pytorch for Beginners #18 | Loss Functions: Ranking Loss (Pair Ranking and Triplet Ranking Loss)
Pytorch for Beginners #17 | Loss Functions: Classification Loss (NLL and Cross-Entropy Loss)
Pytorch for Beginners: #16 | Loss Functions - Regression Loss (L1 and L2)
Pytorch for Beginners: #15 | Pytorch Containers - nn.ParameterDict
Pytorch for Beginners #14 | Pytorch Containers - nn.ParameterList