Bootcamp online analista de dados disponibilizado pelo IGTI – Instituto de Gestão e Tecnologia da Informação
-
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.
Learn machine learning with Python through data exploration, visualization, and key libraries such as NumPy, Pandas, Matplotlib, and Scikit-learn.
Quantifying spike trains using 3 types of rate codes and also Coefficient of variance of Interspike Intervals
In this repository i am gonna walk you through evolution of face recognition algorithms using deep learning approach.
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.
My blog where I talk about Machine learning extensively. Build with fastpages
Top Machine Learning Projects | Best Machine Learning Projects With Source Code
Using PySpark, I performed the ETL process on a large dataset (170,000 rows) of Video Games. Next, I created an AWS relational database instance & transformed the data to be loaded into PostgreSQL. Once in PgAdmin, exported the Video Game Review Table as a CSV file. Afterward, I loaded the data into Python to create Dataframes using Pandas. Then…
Converts Garmin GPX files to TXT/CSV.
The Food-Facility-Compliance-Engine leverages advanced ETL and BI technologies to process and visualize inspection data from Sonoma County's official government database, boosting compliance and safety in local food facilities.
Jupyter with GPU acceleration for Windows 10/11
Here, you will find the explanation of Data Structures and Algorithms for Machine Learning Models using Python.
Determine key metrics about home sales data using SparkSQL and then use Spark to create temporary views, partition the data, cache and uncache a temporary table, and verify that the table has been uncached.
Predict house prices using XGBoost regression. This project preprocesses data, trains the model, and evaluates predictions to forecast house prices based on various features.
ℹ️ Classification of issues from GitHub repositories
Add a description, image, and links to the jupternotebook topic page so that developers can more easily learn about it.
To associate your repository with the jupternotebook topic, visit your repo's landing page and select "manage topics."