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This project demonstrates a complete pipeline for weather prediction using a Fully Connected Neural Network (FCNN). The project is implemented in Python using Jupyter Notebook, and it covers data loading, preprocessing, model training, and performance evaluation.

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Ahmad-Ali-Rafique/Weather-Prediction-FCNN

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Weather Prediction using Fully Connected Neural Networks (FCNN)

Overview

This project demonstrates a complete pipeline for weather prediction using a Fully Connected Neural Network (FCNN). The project is implemented in Python using Jupyter Notebook, and it covers data loading, preprocessing, model training, and performance evaluation.

Project Description

The project uses a weather dataset that includes various meteorological features such as temperature, humidity, wind speed, and precipitation. The pipeline includes:

  1. Data Loading: Loading the weather dataset from a public source.
  2. Data Preprocessing: Normalizing and preparing the data to be suitable for the FCNN model.
  3. Model Training: Building and training a Fully Connected Neural Network using TensorFlow/Keras.
  4. Performance Evaluation: Evaluating the model's accuracy and other metrics on the test set, and visualizing the results.

Key Features

  • Data Preprocessing: Techniques such as normalization and feature engineering for optimal model performance.
  • Model Architecture: Details of the FCNN layers, activation functions, and optimization techniques.
  • Evaluation Metrics: Accuracy, loss, RMSE, and visualizations to assess the model's performance.

About Me

Hi, I'm Ahmad Ali, a passionate data scientist and machine learning enthusiast with a knack for solving complex problems using data-driven approaches. I have a strong background in [your field of study or work], and I enjoy working on projects that involve deep learning, computer vision, and natural language processing.

Get in Touch

Feel free to explore the repository, raise issues, or contribute to the project. Let's connect and collaborate on exciting projects!

About

This project demonstrates a complete pipeline for weather prediction using a Fully Connected Neural Network (FCNN). The project is implemented in Python using Jupyter Notebook, and it covers data loading, preprocessing, model training, and performance evaluation.

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