Pooja Hiranandani (poojahira)

poojahira

Geek Repo

Company:Amazon

Location:Canada

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Pooja Hiranandani's repositories

image-captioning-bottom-up-top-down

PyTorch implementation of Image captioning with Bottom-up, Top-down Attention

gtsrb-pytorch

PyTorch implementation of Kaggle GTSRB challenge with 99.8% accuracy

spmv-cuda

Implementation and analysis of five different GPU based SPMV algorithms in CUDA

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literary-analysis

Literary Analysis of Short fiction

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renters-beware

A web application for renters in New York City to access relevant but hard-to-acquire information on the neighborhoods and buildings that they are interested in renting in.

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20-newsgroups

Experimentation with different word representations and classification methods using the 20 newsgroups dataset

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named-entity-recognition

Named entity recogniser created in Python using the Maximum Entropy Classifier in NLTK and trained on the CONLL 2003 dataset

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people-you-might-know

A program in Spark that implements a simple “People You Might Know” social network friendship recommendation algorithm

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a-PyTorch-Tutorial-to-Image-Captioning

Image Captioning with Attention

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effect-311-crime

An analysis of the effects of successfully resolved 311 calls for service related to neighborhood disorder on the incidence of crime at the street segment level in NYC, as an evaluation of the soundness of the broken windows theory.

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kmeans-article-clustering

This project aimed to cluster news articles using iterative, manually implemented Kmeans in PySpark

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nlu-winograd

Our research explores the degree to which neural network models trained on corpora relevant to natural language inference tasks can be used to address anaphora ambiguity resolution in the form exemplified by the Winograd Schema Challenge.

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traffic-sign-detection-homework

nyu-cv-fall-2017 assignment 3

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