Pinned Repositories
adarshsankarrs.github.io
AI-Chess-Game
To simulate a chess game that advances by determining the optimal move each and every time, the Monte Carlo Tree Search (MCTS) algorithm was employed. The model has the ability to function as a framework for determining the optimal moves in various chess scenarios. Streamlit is used in the deployment of the chess webapp.
EazyPredictAI
Experimentation using a bunch of algorithms of ML algorithms on a preprocessed dataset
FiniteStateAutomata-NLP
Investigated the use of finite automata to generate algorithms for typical NLP and genomics tasks such as tokenization, stop word removal, and pattern searching. We have also spoken about each algorithm's efficiency through a variety of test situations.
PhotoshopApp
A Python and OpenCV module-built Photoshop web application with multiple filters and image processing features that is operational in bright light.
Pixelate
A programme that allows you to play around with different blurs and filters to create various pixelation effects. Streamlit and OpenCV are integrated into Python.
Prediction-using-Neural-Networks
Fruit Prediction using Pretrained CNN Model
Spotify-Data-Analysis---RF-vs-MLP-Study
The project involves using machine learning techniques, like RandomForestClassifier and MLP, to predict whether a song will be popular or not based on its acoustic features. The input consists of various acoustic and metadata features, while the output is a binary classification.
SudokuSolver
Using OpenCV and Deep Learning to solve sudoku puzzles from photos.
Traffic-Classification-OvS
A system that can employ machine learning methods involving logistic regression, K-Means clustering, KNN, SVC, Gaussian NB, and Random Forest Classifier to categorize DNS, Telnet, Ping, Voice, Game, and Video traffic flows based on packet and byte information.
adarshsankarrs's Repositories
adarshsankarrs/Traffic-Classification-OvS
A system that can employ machine learning methods involving logistic regression, K-Means clustering, KNN, SVC, Gaussian NB, and Random Forest Classifier to categorize DNS, Telnet, Ping, Voice, Game, and Video traffic flows based on packet and byte information.
adarshsankarrs/PhotoshopApp
A Python and OpenCV module-built Photoshop web application with multiple filters and image processing features that is operational in bright light.
adarshsankarrs/AI-Chess-Game
To simulate a chess game that advances by determining the optimal move each and every time, the Monte Carlo Tree Search (MCTS) algorithm was employed. The model has the ability to function as a framework for determining the optimal moves in various chess scenarios. Streamlit is used in the deployment of the chess webapp.
adarshsankarrs/EazyPredictAI
Experimentation using a bunch of algorithms of ML algorithms on a preprocessed dataset
adarshsankarrs/FiniteStateAutomata-NLP
Investigated the use of finite automata to generate algorithms for typical NLP and genomics tasks such as tokenization, stop word removal, and pattern searching. We have also spoken about each algorithm's efficiency through a variety of test situations.
adarshsankarrs/SudokuSolver
Using OpenCV and Deep Learning to solve sudoku puzzles from photos.
adarshsankarrs/Prediction-using-Neural-Networks
Fruit Prediction using Pretrained CNN Model
adarshsankarrs/Spotify-Data-Analysis---RF-vs-MLP-Study
The project involves using machine learning techniques, like RandomForestClassifier and MLP, to predict whether a song will be popular or not based on its acoustic features. The input consists of various acoustic and metadata features, while the output is a binary classification.
adarshsankarrs/adarshsankarrs.github.io
adarshsankarrs/FSD-CampusManage
adarshsankarrs/Pixelate
A programme that allows you to play around with different blurs and filters to create various pixelation effects. Streamlit and OpenCV are integrated into Python.
adarshsankarrs/Classifier-Model
Range of outcomes using Decision Tree Classifier
adarshsankarrs/Data-Analysis
Twitter and Uber Data Analysis
adarshsankarrs/FSD-PROJECT
adarshsankarrs/MLSA-Task
adarshsankarrs/MLSA-Task2
adarshsankarrs/Uber-Data-Analysis
Uber predicts trip categories ('Low,' 'Medium,' 'High') based on distances. Features include start point, destination, and purpose. Categorical variables are adapted. A tuned Random Forest Classifier forecasts trip types, providing insights into travel patterns.