Completed
- Tensor Aggregation
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Everything You Need to Know About Tensors in Deep Learning With PyTorch
Automatically move to the next video in the Classroom when playback concludes
- 1 - Workshop Introduction
- 2 - Tensor Introduction
- 3 - Building blocks of Deep Learning
- 4 - Input data as Tensor
- 5 - Tensors as higher degree matrix
- 6 - Declaration of Tensors in PyTorch
- 7 - Tensor Data Types
- 8 - Tensors as Python List and Pandas DF
- 9 - Tensors from NumPy ndarray
- 10 - torch.ones_like function
- 11 - torch.zeros_like function
- 12 - Tensor to NumPy ndarray conversion
- 13 - Tensors Operations
- 14 - Matrix multiplication on Tensors
- 15 - Transpose
- 16 - Element-wise Operations on Tensors
- 17 - Element-wise Multiplication
- 18 - torch.matmulT1, T2, out
- 19 - Element-wise Division
- 20 - Element-wise Addition
- 21 - Element-wise Subtraction
- 22 - Element-wise Square-root
- 23 - Tensor Aggregation
- 24 - Tensor In-place operation
- 25 - Tensor Logical Operation
- 26 - Bitwise or Shift Operations
- 27 - Indexing and Slicing in Tensor
- 28 - Reshaping Tensors
- 29 - Tensor Concatenation
- 30 - Tensor Devices CPU or GPU
- 31 - GPU in Google Colab
- 32 - Memory limitation with Tensors
- 33 - Tensor on GPU
- 34 - Tensor from CPU to GPU and vice-versa
- 35 - Tensor bridge with NumPy
- 36 - Recap