All Projects → khipu-ai → practicals-2019

khipu-ai / practicals-2019

Licence: Apache-2.0 license
Practical notebooks for Khipu 2019, held in Universidad de la República in Montevideo.

Projects that are alternatives of or similar to practicals-2019

QuantumSpeech-QCNN
IEEE ICASSP 21 - Quantum Convolution Neural Networks for Speech Processing and Automatic Speech Recognition
Stars: ✭ 71 (-70.54%)
Mutual labels:  colab-notebook
keras-buoy
Keras wrapper that autosaves what ModelCheckpoint cannot.
Stars: ✭ 22 (-90.87%)
Mutual labels:  colab-notebook
Android-Developer-Fundamentals-Version-2
Codelabs for Google's Android Developer Fundamentals Course (Version 2)
Stars: ✭ 38 (-84.23%)
Mutual labels:  practicals
Voice-Conversion
No description or website provided.
Stars: ✭ 30 (-87.55%)
Mutual labels:  colab-notebook
Deep-Learning-Experiments-implemented-using-Google-Colab
Colab Compatible FastAI notebooks for NLP and Computer Vision Datasets
Stars: ✭ 16 (-93.36%)
Mutual labels:  colab-notebook
flownet2-Colab
Google Colab notebook for running Nvidia flownet2-pytorch
Stars: ✭ 23 (-90.46%)
Mutual labels:  colab-notebook
googlecodelabs
TPU ile Yapay Sinir Ağlarınızı Çok Daha Hızlı Eğitin
Stars: ✭ 116 (-51.87%)
Mutual labels:  colab-notebook
Reinforcement-Learning-on-google-colab
Reinforcement Learning algorithm's using google-colab
Stars: ✭ 33 (-86.31%)
Mutual labels:  colab-notebook
GPim
Gaussian processes and Bayesian optimization for images and hyperspectral data
Stars: ✭ 29 (-87.97%)
Mutual labels:  colab-notebook
video coloriser
Pytorch Convolutional Neural Net and GAN based video coloriser that converts black and white video to colorised video.
Stars: ✭ 29 (-87.97%)
Mutual labels:  colab-notebook
Tensorflow2-ObjectDetectionAPI-Colab-Hands-On
Tensorflow2 Object Detection APIのハンズオン用資料です(Hands-on documentation for the Tensorflow2 Object Detection API)
Stars: ✭ 33 (-86.31%)
Mutual labels:  colab-notebook
clip playground
An ever-growing playground of notebooks showcasing CLIP's impressive zero-shot capabilities
Stars: ✭ 80 (-66.8%)
Mutual labels:  colab-notebook
course-deep-learning
Course Material for HSG 10,860,1.00 - Introduction to Applied Deep Learning with TensorFlow
Stars: ✭ 14 (-94.19%)
Mutual labels:  colab-notebook
colabs
This repository holds the Google Colabs for the EdX TinyML Specialization
Stars: ✭ 73 (-69.71%)
Mutual labels:  colab-notebook
Ml Videos
A collection of video resources for machine learning
Stars: ✭ 1,446 (+500%)
Mutual labels:  summer-schools
learningspoons
nlp lecture-notes and source code
Stars: ✭ 29 (-87.97%)
Mutual labels:  colab-notebook
simple diarizer
Simplified diarization pipeline using some pretrained models - audio file to diarized segments in a few lines of code
Stars: ✭ 26 (-89.21%)
Mutual labels:  colab-notebook
latent space adventures
Buckle up, adventure in the styleGAN2-ada-pytorch network latent space awaits
Stars: ✭ 59 (-75.52%)
Mutual labels:  colab-notebook
TFLite-ModelMaker-EfficientDet-Colab-Hands-On
TensorFlow Lite Model Makerで物体検出を行うハンズオン用資料です(Hands-on for object detection with TensorFlow Lite Model Maker)
Stars: ✭ 15 (-93.78%)
Mutual labels:  colab-notebook
steam-stylegan2
Train a StyleGAN2 model on Colaboratory to generate Steam banners.
Stars: ✭ 30 (-87.55%)
Mutual labels:  colab-notebook

Khipu Practicals 2019

This repository contains the practical notebooks for Khipu 2019, held in Universidad de la República in Montevideo.

See www.khipu.ai for more details.

How to use this repository.

The notebooks in the root directory are meant to be used for the practical sessions. There will be two sessions per day, and the days are enumerated in the notebook's name.

Additionally, the background directory has some notebooks that can be used by attendees to prepare for the meeting.

Each notebook can be opened in Google Colab through the button on the top of each file. They are all meant to be used with Colab's free resources.

For convenience, here is a list of all main notebooks linked directly to colab:

Credit

Khipu practicals are based on the practicals of the Deep Learning Indaba

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].