Bootcamp online analista de dados disponibilizado pelo IGTI – Instituto de Gestão e Tecnologia da Informação
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Updated
Mar 16, 2023 - Jupyter Notebook
Bootcamp online analista de dados disponibilizado pelo IGTI – Instituto de Gestão e Tecnologia da Informação
Aula de Inteligência Artificial - IFSP
University teaching files
DeepFake Detection Web-App[Mirage Breaker] 🖥 using Deep Learning(ResNext and LSTM), Flask and ReactJs where you can predict whether a video is FAKE Or REAL along with the confidence ratio.
VSCODE integration in jupyter-lab
Registro das atividades realizadas em aula.
Learn machine learning with Python through data exploration, visualization, and key libraries such as NumPy, Pandas, Matplotlib, and Scikit-learn.
Stroke Disease Prediction classifies a person with Stroke Disease and a healthy person based on the input dataset. This package can be imported into any application for adding security features. Input data is preprocessed and is given to over 7 models, where a maximum accuracy of 99.4% is achieved.
In this repository i am gonna walk you through evolution of face recognition algorithms using deep learning approach.
Top Machine Learning Projects | Best Machine Learning Projects With Source Code
My blog where I talk about Machine learning extensively. Build with fastpages
This repository contains a collection of Python programs which i am learning via Apna college youtube channel + Python libraries learned from different resources.
🔄 A practical guide to bridging SAS and Python using SASPy inside WSL on Ubuntu, integrated with SAS OnDemand for Academics. Includes step-by-step setup, Jupyter notebook usage, and Python script automation for SAS reporting.
Quantifying spike trains using 3 types of rate codes and also Coefficient of variance of Interspike Intervals
Multi-Class Image Classification Project to classify images into driving license, social security, and others category.
Este projeto automatiza o encaminhamento de mensagens no WhatsApp Web para uma lista de contatos ou grupos, utilizando Python e Selenium. As mensagens são encaminhadas em lotes de 5 destinatários por vez.
Datasets: Classificação (Aprendizado Supervisionado e não Supervisionado)
Here, you will find the explanation of Data Structures and Algorithms for Machine Learning Models using Python.
RAG 技术要点、本地实践(Ollama),支持 md 和 ipynb 两种文档格式。要点:通用的 索引、检索、生成,以及高级索引特性。高级特性包含:查询(重写、拆解、后退、HYDE)、索引(多特征索引、RAPTOR)、检索(ReRank)、生成(Self-RAG)、评估(RAGAS、deepeval、指标)
This repository showcases diverse machine learning projects, including: #Dimensional Reduction: Techniques for reducing feature space. #Ensembles: Methods like Gradient Boosting. #Supervised ML: Time series analysis and predictive modeling. #Unsupervised ML: Clustering and pattern discovery.
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