TV-Show-recommender/README.md
2024-10-26 20:24:35 +02:00

63 lines
1.4 KiB
Markdown

<<<<<<< HEAD
# Python_AI_Projekt
Projekt för Pythonkurs (AI)
Autoencoders
Scikit-learn: - K-nearest neighbors
=======
# Supervised Learning - Movie/TV-Show recommender
## Specification
Movie/TV-Show recommender
This program will recommend you what movie or th-show to view based on what Movie/TV-Show you like.
### Data Source:
I will use 4 datasets from kaggle, 3 datasets from streaming-sites Netflix, Amazon Prime and Disney Plus, also 1 from a IMDB dataset.
### Model:
I will use k-Nearest Neighbors (k-NN) alhorithm that can help me find other titles based on features like Title, Release year, Description, Cast, Director and genres.
### Features:
1. Load data and preprocessing before creating new dataset csv file.
2. Model training with k-NN algorithm.
3.
### Requirements:
1. Title data:
* Title
* Genres
* Release year
* Cast
* Director
* Description
2. User data:
* What Movie / TV-Show
* What genre
* Director
### Libraries
* pandas: Data manipulation and analysis
* scikit-learn: machine learning algorithms and preprocessing
* numpy: numerical operations
* beatifulsoup4: web scraping
### Classes
1. LoadData
* Loading, cleaning and saving alla data to csv
* check_data
* clean_text
* clean_data
* load_dataset
* create_data
* save_data
* load_data
2. UserData
* input
3. Recommendations
* get_recommendations
>>>>>>> b992895c329b4c147193b68b17c8181bb17fb220