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@hiepph
hiepph / gen.py
Created May 31, 2017 15:38
pytorch-CycleGAN-and-pix2pix single image prediction
# https://github.com/junyanz/pytorch-CycleGAN-and-pix2pix
from torch.autograd import Variable
from torchvision import transforms
from PIL import Image
from options.test_options import TestOptions
from models.models import create_model
import util.util as util
@Neo23x0
Neo23x0 / wannacry-vaccine.reg
Last active March 15, 2021 19:49
WannaCrypt Ransomware Immunisation
Windows Registry Editor Version 5.00
[HKEY_LOCAL_MACHINE\SOFTWARE\Microsoft\Windows NT\CurrentVersion\Image File Execution Options\taskdl.exe]
"Debugger"="taskkill /F /IM "
[HKEY_LOCAL_MACHINE\SOFTWARE\Microsoft\Windows NT\CurrentVersion\Image File Execution Options\taskse.exe]
"Debugger"="taskkill /F /IM "
[HKEY_LOCAL_MACHINE\SOFTWARE\Microsoft\Windows NT\CurrentVersion\Image File Execution Options\wannacry.exe]
"Debugger"="taskkill /F /IM "
@dchest
dchest / sivlike.md
Last active July 27, 2017 13:14
SIV-like deterministic nonce-misuse resistant authenticated encryption construction with BLAKE2s and ChaCha20

SIV-like deterministic nonce-misuse resistant authenticated encryption construction with BLAKE2s and ChaCha20

Variant 1 (without associated data)

Seal (encryption and authentication)

  • key - 32-byte secret key
  • nonce - 8-byte nonce (all-zero by default)
  • plaintext - data to encrypt and authenticate
@max-mapper
max-mapper / bibtex.png
Last active March 10, 2024 21:53
How to make a scientific looking PDF from markdown (with bibliography)
bibtex.png
@urigoren
urigoren / LSTM_Binary.py
Last active June 22, 2023 19:37
LSTM Binary classification with Keras
from keras.layers import Dense, Dropout, LSTM, Embedding
from keras.preprocessing.sequence import pad_sequences
from keras.models import Sequential
import pandas as pd
import numpy as np
input_file = 'input.csv'
def load_data(test_split = 0.2):
print ('Loading data...')
@cbaziotis
cbaziotis / AttentionWithContext.py
Last active April 25, 2022 14:37
Keras Layer that implements an Attention mechanism, with a context/query vector, for temporal data. Supports Masking. Follows the work of Yang et al. [https://www.cs.cmu.edu/~diyiy/docs/naacl16.pdf] "Hierarchical Attention Networks for Document Classification"
def dot_product(x, kernel):
"""
Wrapper for dot product operation, in order to be compatible with both
Theano and Tensorflow
Args:
x (): input
kernel (): weights
Returns:
"""
if K.backend() == 'tensorflow':
@justjanne
justjanne / Price Breakdown.md
Last active April 11, 2024 22:21 — forked from kylemanna/price.txt
Server Price Breakdown: DigitalOcean, Amazon AWS LightSail, Vultr, Linode, OVH, Hetzner, Scaleway/Online.net:

Server Price Breakdown: DigitalOcean, Amazon AWS LightSail, Vultr, Linode, OVH, Hetzner, Scaleway/Online.net:

Permalink: git.io/vps

$5/mo

Provider Type RAM Cores Storage Transfer Network Price
@brannondorsey
brannondorsey / pix2pix_paper_notes.md
Last active January 3, 2022 09:57
Notes on the Pix2Pix (pixel-level image-to-image translation) Arxiv paper

Image-to-Image Translation with Conditional Adversarial Networks

Notes from arXiv:1611.07004v1 [cs.CV] 21 Nov 2016

  • Euclidean distance between predicted and ground truth pixels is not a good method of judging similarity because it yields blurry images.
  • GANs learn a loss function rather than using an existing one.
  • GANs learn a loss that tries to classify if the output image is real or fake, while simultaneously training a generative model to minimize this loss.
  • Conditional GANs (cGANs) learn a mapping from observed image x and random noise vector z to y: y = f(x, z)
  • The generator G is trained to produce outputs that cannot be distinguished from "real" images by an adversarially trained discrimintor, D which is trained to do as well as possible at detecting the generator's "fakes".
  • The discriminator D, learns to classify between real and synthesized pairs. The generator learns to fool the discriminator.
  • Unlike an unconditional GAN, both th
@summerwind
summerwind / xdp_load_balancer.c
Last active January 30, 2023 15:04
XDP based load balancer with L3DSR support
#define KBUILD_MODNAME "load_balancer"
#include <uapi/linux/bpf.h>
#include <linux/in.h>
#include <linux/if_ether.h>
#include <linux/if_packet.h>
#include <linux/if_vlan.h>
#include <linux/ip.h>
#include <linux/ipv6.h>
BPF_HASH(counter, uint32_t, long);