Jhon Harold Pineda Dorado's repositories

AudioGPT

AudioGPT: Understanding and Generating Speech, Music, Sound, and Talking Head

Language:PythonLicense:NOASSERTIONStargazers:0Issues:0Issues:0

Awesome-Deepfakes-Detection

A list of tools, papers and code related to Deepfake Detection.

License:MITStargazers:0Issues:0Issues:0

Awesome-Masked-Autoencoders

A collection of literature after or concurrent with Masked Autoencoder (MAE) (Kaiming He el al.).

License:MITStargazers:0Issues:0Issues:0

Awesome-Referring-Image-Segmentation

:books: A collection of papers about Referring Image Segmentation.

Stargazers:0Issues:0Issues:0

Awesome-Segmentation-With-Transformer

Transformer-Based Visual Segmentation: A Survey

Stargazers:0Issues:0Issues:0

Awesome-Temporal-Action-Detection-Temporal-Action-Proposal-Generation

Temporal Action Detection & Weakly Supervised Temporal Action Detection & Temporal Action Proposal Generation

Stargazers:0Issues:0Issues:0

awesome-vision-and-language

A curated list of awesome vision and language resources (still under construction... stay tuned!)

Stargazers:0Issues:0Issues:0

Awesome-Visual-Transformer

Collect some papers about transformer with vision. Awesome Transformer with Computer Vision (CV)

Stargazers:0Issues:0Issues:0

Complete-Machine-Learning-

This repository contains everything you need to become proficient in Machine Learning

License:MITStargazers:0Issues:0Issues:0

CVPR2023-Papers-with-Code

CVPR 2023 论文和开源项目合集

Stargazers:0Issues:0Issues:0
Stargazers:0Issues:0Issues:0

Deep-Reinforcement-Learning-Hands-On

Hands-on Deep Reinforcement Learning, published by Packt

Language:PythonLicense:MITStargazers:0Issues:0Issues:0

Diffusion-Models-Papers-Survey-Taxonomy

Diffusion model papers, survey, and taxonomy

Stargazers:0Issues:0Issues:0

Diplomado

Este es un repositorio creado para el diplomado en Inteligencia Artificial y Aprendizaje Profundo

Stargazers:0Issues:0Issues:0
Stargazers:0Issues:0Issues:0
Stargazers:0Issues:0Issues:0

From-0-to-Research-Scientist-resources-guide

Detailed and tailored guide for undergraduate students or anybody want to dig deep into the field of AI with solid foundation.

Stargazers:0Issues:0Issues:0

hands-on-rl

Free course that takes you from zero to Reinforcement Learning PRO 🦸🏻‍🦸🏽

License:MITStargazers:0Issues:0Issues:0

JARVIS

JARVIS, a system to connect LLMs with ML community. Paper: https://arxiv.org/pdf/2303.17580.pdf

License:MITStargazers:0Issues:0Issues:0
Stargazers:0Issues:0Issues:0

ML-Papers-Explained

Explanation to key concepts in ML

Stargazers:0Issues:0Issues:0

notebooks

Jupyter notebooks for the Natural Language Processing with Transformers book

License:Apache-2.0Stargazers:0Issues:0Issues:0

practical-nlp-code

Official Repository for Code associated with 'Practical Natural Language Processing' book by O'Reilly Media

License:MITStargazers:0Issues:0Issues:0

Prompt-Engineering-Guide

Guide and resources for prompt engineering

License:MITStargazers:0Issues:0Issues:0

reinforcement-learning

Implementation of Reinforcement Learning Algorithms. Python, OpenAI Gym, Tensorflow. Exercises and Solutions to accompany Sutton's Book and David Silver's course.

License:MITStargazers:0Issues:0Issues:0

The-Big-Book-of-Small-Python-Projects

This is my repo following the book "The Big Book of Small Python Projects: 81 Easy Practice Programs" by Al Sweigart

Stargazers:0Issues:0Issues:0

Transformer-in-Computer-Vision

A paper list of some recent Transformer-based CV works.

Stargazers:0Issues:0Issues:0

Transformers-for-NLP-2nd-Edition

Transformer models from BERT to GPT-4, environments from Hugging Face to OpenAI. Fine-tuning, training, and prompt engineering examples. A bonus section with ChatGPT, GPT-3.5-turbo, GPT-4, and DALL-E including jump starting GPT-4, speech-to-text, text-to-speech, text to image generation with DALL-E and more

License:MITStargazers:0Issues:0Issues:0

uao_YOLOv5_modulos_atencion

Proyecto final de la asignatura de Deep Learning Avanzado con el profesor Juan Carlos Perafan Villota. El proyecto consiste en la implementación de los módulos de atención "SE: Squeeze-and-Excitation Networks" y "CBAM: Convolutional Block Attention Module" y la explicabilidad de las inferencias con el método Grad-CAM

Language:PythonLicense:GPL-3.0Stargazers:0Issues:0Issues:0

yolov7-object-tracking

YOLOv7 Object Tracking Using PyTorch, OpenCV and Sort Tracking

License:GPL-3.0Stargazers:0Issues:0Issues:0