Himanshu Narang (himanshun3)

himanshun3

Geek Repo

Company:Cvent

Location:New Delhi, India

Home Page:himanshun3.github.io

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Himanshu Narang's repositories

Time-Series-Forecasting-Climate-Change

Using ARMA Model to Forecast temperature for the next 30 years.

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Deep-Learning-Model-Building-and-Optimization

Model Specification, Classification Model, Regression Model, Model Optimization, Stochastic Gradient Descent, Changing Optimizing Paramters i.e Learning Rate, Model Validation and Early Stopping.

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Movies-Recommender-System

Content based Recommender System

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Twitter-Sentiment-Analysis-and-Visualization

Twitter Sentiment Analysis and Visualization on Google Maps(Heat Maps).

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Convolutional-Neural-Network-Using-Keras

Convolutional Neural Network Using Keras. We will be using Fashion MNIST Dataset in this project. The Fashion-MNIST dataset is a dataset of Zalando's article images, with 28x28 grayscale images of 70,000 fashion products from 10 categories, and 7,000 images per category.

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Programming_Question

Programming Questions in C++

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A-Network-analysis-of-Game-of-Thrones

Jon Snow, Daenerys Targaryen, or Tyrion Lannister? Who is the most important character in Game of Thrones? Let's see what mathematics can tell us about this!

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Baseball-Analytics

Predicting MLB wins per season by modeling data to KMeans clustering model and linear regression models.

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Colorizing-Photos-using-Deep-Learning

Colorizing Photos using Deep Learning(Algorithmia Api)

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Exploring-the-Bitcoin-cryptocurrency-market

The cryptocurrency market is exceptionally volatile, and any money you put in might disappear into thin air. Never invest money you can't afford to lose.

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Google-Search-Image-Scrapper

Python code to scrap and download 100 images from Google Search.

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Identifying-New-Year-s-Resolutions-with-Google-Trends

Google Trends data of keywords such as 'diet' and 'gym' and see how they vary over time while learning about trends and seasonality in time series data.

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Mckinsey-Data-Science-Challenge

Mckinsey Data Science Challenge on Techgig

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Mobile-Games-A-B-Testing-With-Cookie-Cats

Cookie Cats is a hugely popular mobile puzzle game developed by Tactile Entertainment. It's a classic "connect three" style puzzle game where the player must connect tiles of the same color in order to clear the board and win the level. It also features singing cats.

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New-Year-Resolution

A major health care company has meticulously planned to open several new outlets in different parts of existing cities. It has invested a lot of time and energy to gather data from its existing stores on different parameters which could control the sales of the company. It has also experimented with different business models in its existing stores. The COO of a famous health care company wishes to achieve its sales targets which it sets at the beginning of the year for its new expansion plan. The COO has entrusted the task of predicting the sales of the new outlets planned to Techgig. The data dictionary gives the in-depth information on the parameters considered by the company for predicting sales. The data gathered from the existing outlets is in the train data set and the data for new outlets is in the test data set.

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Reddit-Sentiments-Analysis

Sentiments Analysis on Reddit latest and popular headlines using PRAW(Python Reddit API Wrapper) and TextBlob

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SMS-Spam-Classifier

SMS Spam Classifier Using Natural Language Processing

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Twitter-Sentiment-Analysis

Sentiment analysis in python by analyzing tweets about any topic happening in the world to see how positive or negative it's emotion is. We will use tweepy for fetching tweets and textblob for natural language processing (nlp)

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Video_Into_Frames

Python Code to convert video into Frames

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Wealth-Management-Platform

For HackData 2.0 - Loan prediction - Chatbot - Set goals and fund your plans

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What-s-that-Image-

Image Classification using Keras

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ZS-Data-Science-Challenge

ZS Data Science Challenge on HackerEarth

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