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Optimizing the best Ads using Reinforcement learning Algorithms such as Thompson Sampling and Upper Confidence Bound.

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Fraud-Detection-in-Online-Transactions

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Wine-Quality-Predictions

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Credit-Card-Fraud-Detection

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Evaluating a Car based on some popular attributes which could be beneficial in decision making while purchasing a Car, Who do not have enough knowledge about Cars.
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Titanic-Passenger-Survival-Prediction

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CareerCon-Robots-Need-Help

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Predicting-the-Trends-of-Qaulity-Oriented-Jobs

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Bitcoin-Price-Prediction

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Movie-Recommendation-System

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67

Black-Friday

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R
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68

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Predicting-Tariff-Rates

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Genetic-Algorithm-for-solving-an-Equation

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Analyzing-Crimes-in-Indian-States

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Anime-Recommendations

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3
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V2-Plant-Seedlings-Classification

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75

Web-Logging-Data

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76

Predicting-the-Likelihood-of-E-Signing-a-Loan-Based-on-Financial-History

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Python
3
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77

Udacity-Bike-Share-Data-Analysis

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Jupyter Notebook
3
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78

Europe-Political-Data-Analysis

This is Europe's Political data which consists of information about life expectancy, pollution, population, unemployment, work hours, weather, trust in police, trust in legal authorities, Income, GDP, leisure satisfaction, trust in politics, environment satisfaction, low savings and crime for all the countries in Europe. I am going to compare these political situations or sentiments of people living in different parts of Europe using Data Analytics and Data Visualization.
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3
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79

Immigrants-all-over-the-World

In this dataset, we will try to visualize different aspects of immigrants visiting to Canada and all over the world, I have tried to make most effective and ad-hoc visualizations to answer some of the intriguing questions. I have used Advanced Visualization Technques.
Jupyter Notebook
3
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80

Directing-Customers-through-App-Behaviour-Analysis

It is a Business Case Problem Used in Data Science Consulting and Engineering. Data Science always helps us to take important Business Decisions which leads to development of the Organization and also helps to avoid any Disaster by taking any gut-feeling decisions. Here In This Dataset I have Predicted the Behaviours of the Customers through their App Usage to Predict and Formulate different Policies and Rules for Different Set of Customers.
Python
3
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81

Board-Game-Review-Prediction

Reviews can make or break a product; as a result, many companies take drastic measures to ensure that their product receives good reviews. When it comes to board games, reviews and word-of-mouth are everything. In this project, we will be using a linear regression model to predict the average review a board game will receive based on characteristics such as minimum and maximum number of players, playing time, complexity, etc. Before we get started, we will need to clone a GitH
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82

Amazon-Fine-Food-Reviews

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83

C-Basic-Tutorials

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C++
2
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84

Feature-Matching-Using-SIFT-and-SURF

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85

Crops-and-Productions-Analysis

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Steel-Defect-Detection

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Tourist-Places-and-Visitors-Analysis

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Analyzing-the-Dimensions-of-Poverty

The Data set is picked from Kaggle which describes the Situation of the Multidimensional Measures around the globe. In this Analysis, I have tried to used Pandas, seaborn, and Ipywidgets for the End to End Analysis of the Subject.
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89

Data-Visualization-Coursera-Assignments

This is a Repository made for Coursera Assignments, and Tutorials which includes many interesting plots such as waffle charts, folium charts, chloropeth charts etc.
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90

Understanding-PCA

Principal Component Analysis is One of the Most Popular Dimensionality Reduction Algorithms used in Machine Learning Which comes under Unsupervised Way of Learning. It is also Used as a way of Feature Extraction where, More Information is Extracted from all the Existing Attributes, in just some 3-4 Attributes using the Concepts of Eigen Values and Eigen Vectors.
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91

Fashion-Class-Classification

Context Fashion-MNIST is a dataset of Zalando's article images—consisting of a training set of 60,000 examples and a test set of 10,000 examples. Each example is a 28x28 grayscale image, associated with a label from 10 classes. Zalando intends Fashion-MNIST to serve as a direct drop-in replacement for the original MNIST dataset for benchmarking machine learning algorithms. It shares the same image size and structure of training and testing splits.
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92

Object-Detection

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Data-Structure-Algorithms

It is Repository for Basic Data Structure Algorithms. Algorithms Such as Bubble sort, Merge Sort are covered.
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Digit-Recognition-

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Power-BI

I am making this Repository to post all my projects done using Power BI. Power BI is an analytical tool which helps to modify data and Visualiza data in an Interactive and Easy Way.
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96

Introduction-to-HighCharter-Visualizations

High Charter is a Premium package available for R programming Language Interface. It is a Expensive and Paid package and cannot be used for commercial and government use without payment. What makes it so special is the custom designing to the plots and endless options for different plots. There are more than 100 different types of plot available in High Charter. It basically supports Markdown.
1
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97

Employee-Attrition-Rate

This Data set consists of information about an employee, There are attributes such as education level, experience level, age, salary, gender, department, degree, ratings, work ethics, current company working experience, job level, job role, attrition rate, employee id, employee satisfaction etc to take some serious important decisions for the company regarding the company.
R
1
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98

FiveThirtyEight-Comics-Marvel-and-DC-

Comparison between Marvel and DC in terms of their Characters Popularity, their Gender, Hair Color, Eye Color, Character Alignment, Appearances, Launch day, names, etc. I have used Seaborn, matplotlib, networkx, and plotly to visualize Interactive plots
Jupyter Notebook
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99

Text-Classification

This is a Project Assignment where I have Learned to Classify the Different Texts Using Clustering Techniques. Natural Language Processing and Clustering both of these Concepts are Being Used. I have Used K-means Clustering Techniques to Implement the Problem.
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100

Image-Super-Resolution

Image Super Resolution is one of the most Intriguing and Interesting Projects in Deep Learning and It is done by an Architecture of Deep Learning called Super Resolution Convolutional Neural Networks or SRCNN. Using Image Super Resolution Technique we can convert the Low Resolution Images into High Resolution, Which can be really helpful for Domains where the Clarity and High Definitions are Highly Required.
HTML
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