Arti Singh (artisingh0913)

artisingh0913

Geek Repo

Company:University of Maryland Baltimore County

Location:DMV Area

Home Page:https://www.linkedin.com/in/artisingh0913

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Arti Singh's repositories

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311-Data-Analysis-of-Baltimore-City

Data Preprocessing and visualization. Establishing relationship among variable if any.

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artisingh0913.github.io

Web Dev workshop

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awesome-rl

Reinforcement learning resources curated

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CareerVillage-Recommender-System

Machine Learning Project - Implemented a machine learning recommender model, which maps a career question from some seeker to appropriate corps.

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datascience

Curated list of Python resources for data science.

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DC20069-UMD-Data-Challenge

Exploratory Data analysis over NYC Recycling data provided by Booz Allen Hamilton for the challenge and build a predictive model to target zone in need of attention to increase recycling diversion rate.

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emtutorial

Interactive tutorial on the Forward-Backward Expectation Maximization algorithm

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gym-minigrid

Minimalistic gridworld package for OpenAI Gym

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Predicting-Toxicity-over-Diverse-Online-Conversation

This project aims to implement a model to detect toxicity in an online conversation. The model solves some of the significant challenges related to the field. We implemented the model in three phases: preprocessing of data, creation of feature vectors like TFIDF, Word2Vec and Doc2Vec, algorithms and evaluation metrics. Further, we optimized our output by working and experimenting with various features and models like SVM, Logistic Regression, Naive Bayes and Neural Network . We created a baseline model using SVM for our binary classification task to use it as a standard to compare our future models implementation. By making a comparison over these predictive models for the macro-average precision, recall and F1 score, we achieved a higher F1 score for CNN model over bigram computation. Our word-level CNN model out-performed all the other models including the Logistic Regression using TFIDF, Gensim Doc2Vec and other Neural network models.

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rl-starter-files

RL starter files in order to immediatly train, visualize and evaluate an agent without writing any line of code

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