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Dong W Kelvinson

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import argparse
import torch
import torch.nn as nn
from torch.autograd import Variable
from torch.utils.data import DataLoader
import torchvision
import torchvision.transforms as T
from torchvision.datasets import ImageFolder
@Tushar-N
Tushar-N / pad_packed_demo.py
Last active December 27, 2022 06:35
How to use pad_packed_sequence in pytorch<1.1.0
import torch
import torch.nn as nn
from torch.nn.utils.rnn import pack_padded_sequence, pad_packed_sequence
seqs = ['gigantic_string','tiny_str','medium_str']
# make <pad> idx 0
vocab = ['<pad>'] + sorted(set(''.join(seqs)))
# make model
@kevinzakka
kevinzakka / data_loader.py
Last active April 19, 2024 23:42
Train, Validation and Test Split for torchvision Datasets
"""
Create train, valid, test iterators for CIFAR-10 [1].
Easily extended to MNIST, CIFAR-100 and Imagenet.
[1]: https://discuss.pytorch.org/t/feedback-on-pytorch-for-kaggle-competitions/2252/4
"""
import torch
import numpy as np
@Kelvinson
Kelvinson / Install NVIDIA Driver and CUDA.md
Created April 17, 2018 22:25 — forked from wangruohui/Install NVIDIA Driver and CUDA.md
Install NVIDIA Driver and CUDA on Ubuntu / CentOS / Fedora Linux OS
@UsmanMaqbool
UsmanMaqbool / robotics.md
Created June 19, 2018 14:12
Robotics Installation

Installation Guide

OPENCV

OpenCV 2.4.13

To install

cd ~
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@AustinRochford
AustinRochford / hmc-oss-pymc3-odsc-west-2018.ipynb
Last active October 16, 2019 08:40
The HMC Revolution is Open Source - Probabilistic Programming with PyMC3
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@radekosmulski
radekosmulski / train_on_CIFAR10.py
Created June 20, 2019 19:29
training on CIFAR10 using fastai from the command line
import fire
import fastai
from fastai.vision import *
from torch import nn
from fastai.metrics import top_k_accuracy
path = untar_data(URLs.CIFAR)
data = ImageDataBunch.from_folder(path, valid='test')
class block(nn.Module):
set nocompatible " be iMproved, required
filetype off " required
" set the runtime path to include Vundle and initialize
set rtp+=~/.vim/bundle/Vundle.vim
call vundle#begin()
" alternatively, pass a path where Vundle should install plugins
"call vundle#begin('~/some/path/here')
" let Vundle manage Vundle, required