Big Data Twitter Demo

  •        407

This demo analyzes tweets in real-time, even including a dashboard. The tweets are also archived in Azure DB/Blob and Hadoop where Excel can be used for BI!

http://twitterbigdata.codeplex.com/

Tags
Implementation
License
Platform

   




Related Projects

Customer-Churn-Demo-MRS-Spark-HDI - This demo demonstrates how to use Microsoft R Server, Azure HDInsight with R on Linux, Azure Machine Learning, Spark, Scala, and Hive to build an end-to-end, cloud solution for Retail Customer Churn


This demo demonstrates how to use Microsoft R Server, Azure HDInsight with R on Linux, Azure Machine Learning, Spark, Scala, Hive, etc. to build an end-to-end, cloud solution for Retail Customer Churn. The demo attempts to simulate the real-world use case of data placement/storage, feature engineering, model retraining, prediction, and visualization.An Azure subscription: Before you begin, you must have an Azure subscription that have access to Azure HDInsight, Azure Blob Storage, etc. See Get Azure free trial for more information.

blobxfer - Azure Storage transfer tool and data movement library


blobxfer is an advanced data movement tool and library for Azure Storage Blob and Files. With blobxfer you can copy your files into or out of Azure Storage with the CLI or integrate the blobxfer data movement library into your own Python scripts.Please refer to the installation guide for more information on how to install blobxfer.

PySpark-Predictive-Maintenance - Predictive Maintenance using Pyspark


Predictive maintenance is one of the most common machine learning use cases and with the latest advancements in information technology, the volume of stored data is growing faster in this domain than ever before which makes it necessary to leverage big data analytic capabilities to efficiently transform large amounts of data into business intelligence. Microsoft has published a series of learning materials including blogs, solution templates, modeling guides and sample tutorials in the domain of predictive maintenance. In this tutorial, we extended those materials by providing a detailed step-by-step process of using Spark Python API PySpark to demonstrate how to approach predictive maintenance for big data scenarios. The tutorial covers typical data science steps such as data ingestion, cleansing, feature engineering and model development.The input data is simulated to reflect features that are generic for most of the predictive maintenance scenarios. To enable the tutorial to be completed very quickly, the data was simulated to be around 1.3 GB but the same PySpark framework can be easily applied to a much larger data set. The data is hosted on a publicly accessible Azure Blob Storage container and can be downloaded from here. In this tutorial, we import the data directly from the blob storage.

Azure Blob Explorer


Windows Azure introduces three storage options, one of which is Blob Storage for storing unstructured data. The BlobExplorer gives an explorer like interface to working with Blob Storage both in the development storage and the cloud

blobporter - Highly concurrent data transfer tool for Azure Blob Storage.


BlobPorter is a data transfer tool for Azure Blob Storage that maximizes throughput through concurrent reads and writes that can scale up and down independently.Sources and targets are decoupled, this design enables the composition of various transfer scenarios.



azure-storage-net-data-movement - Azure Storage Data Movement Library for .Net


The Microsoft Azure Storage Data Movement Library designed for high-performance uploading, downloading and copying Azure Storage Blob and File. This library is based on the core data movement framework that powers AzCopy.For more information about the Azure Storage, please visit Microsoft Azure Storage Documentation.

Blobber


Blobber is a simple command line tool to exchange data with Windows Azure Storage. It built in C# .NET and has variety of uses. Usage Example: Upload - C:\Blobber -u test.txt Download - C:\Blobber -d D:\test.txt

CloudCopy Command Line Tool


Command line tool for uploading, downloading and copying files between local file system and blob storage accounts. Really helpful for scripting tasks that requires blob storage management. Aims to be a XCOPY with cloud support.

Blob Transfer Utility for Windows Azure Blob Storage


Blob Transfer Utility is a GUI tool to upload and download thousands of small/large files to/from Windows Azure Blob Storage.

Apache Hive - The Apache Hive (TM) data warehouse software facilitates querying and managing large d


The Apache Hive (TM) data warehouse software facilitates querying and managing large datasets residing in distributed storage.

Azure.Data.Wrappers - Azure Storage Simplified


This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.View the wiki to learn how to use this.

cortana-intelligence-personalized-offers - Generate real-time personalized offers on a retail website to engage more closely with customers


In today’s highly competitive and connected environment, modern businesses can no longer survive with generic, static online content. Furthermore, marketing strategies using traditional tools are often expensive, hard to implement, and do not produce the desired return on investment. These systems often fail to take full advantage of the data collected to create a more personalized experience for the user. Surfacing offers that are customized for the user has become essential to build customer loyalty and remain profitable. On a retail website, customers desire intelligent systems which provide offers and content based on their unique interests and preferences. Today’s digital marketing teams can build this intelligence using the data generated from all types of user interactions. By analyzing massive amounts of data, marketers have the unique opportunity to deliver highly relevant and personalized offers to each user. However, building a reliable and scalable big data infrastructure, and developing sophisticated machine learning models that personalize to each user is not trivial.Cortana Intelligence provides advanced analytics tools through Microsoft Azure — data ingestion, data storage, data processing and advanced analytics components — all of the essential elements for building an demand forecasting for energy solution. This solution combines several Azure services to provide powerful advantages. Event Hubs collects real-time consumption data. Stream Analytics aggregates the streaming data and updates the data used in making personalized offers to the customer. Azure DocumentDB stores the customer, product and offer information. Azure Storage is used to manage the queues that simulate user interaction. Azure Functions are used as a coordinator for the user simulation and as the central portion of the solution for generating personalized offers. Azure Machine Learning implements and executes the product recommendations and when no user history is available Azure Redis Cache is used to provide pre-computed product recommendations for the customer. PowerBI visualizes the activity of the system with the data from DocumentDB.

azurefs - Linux FUSE wrapper for Windows Azure Storage to use Azure Blob storage as a filesystem


Linux FUSE wrapper for Windows Azure Storage to use Azure Blob storage as a filesystem

Windows Azure Storage Plugin (Jenkins/Hudson)


A Hudson CI plugin for uploading build artifacts into the Windows Azure Blob storage. (Also works with Jenkins)

Azure Blob Studio 2011


A WPF client for managing files on your Windows Azure Blob Storage account available as a stand-alone application and as an extension for Visual Studio 2010. Of course, in Visual Basic 2010

Simple-Azure-File-2-Blob-Plugin - Synchronizes Azure files to Blob storage by using file monitoring


Synchronizes Azure files to Blob storage by using file monitoring

deco - Project Deco - Azure Storage Explorer for OS X, Windows, and Linux


If you're on Windows or Mac OS X, go and use our new major version - the Microsoft Azure Storage Explorer. It's the official successor to Project Deco and superior in many ways.Project Deco: A file explorer for your Azure Blob Storage accounts, enabling you to easily work with your assets and containers from Mac OS X, Windows, and Linux. Create and delete containers, upload, download, and delete whole folders and files, preview media assets - with the free Azure Storage Explorer, you're in full control of your assets. Check out storageexplorer.com for more infos and downloads.

AzureMock


A project to provide injectable in memory mocks of the Azure Table and Blob Storage services. Run tests without emulator overhead.

Cloud Sync Service


This Windows Service lets you sync your files across other machines by using Cloud File Storage as gateway. Amazon S3 and Windows Azure supported.