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Big Data in Cloud Computing Review and Opportunities- Tutors India

The rise of big data in daily life is on the rise in almost all domains and applications. Its combination with cloud computing is a major attraction in IT sector. While big data deals with large scale data, cloud computing deals with the infrastructure of the data storage. The concerns are simplified when they are used in combination, and are largely effective.<br>The paper explains in detail the various characteristics of Big Data by formulating the ten Vs. The ten characteristics mentioned are velocity, value, volume, variety, variability, validity, veracity, volatility, vulnerability, and visualization.<br>Type of Analysis<br>u2022tData Frequency<br>u2022tData Type<br>u2022tHardware<br>u2022tData Consumers<br>Cloud computing delivers a computing service like servers, storage, databases, networking, software, analytics and intelligence over the internet for faster innovation, flexible resources, heavy computation, parallel data processing and economies of scale.<br>Click the link to Read the Blog: https://bit.ly/2zkMClQ<br>Contact: <br>Website: www.tutorsindia.com<br>Email: info@tutorsindia.com<br>United Kingdom: 44-1143520021<br>India: 91-4448137070<br>Whatsapp Number: 91-8754446690<br>

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Big Data in Cloud Computing Review and Opportunities- Tutors India

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  1. BIG DATA IN CLOUD COMPUTING REVIEW AND OPPORTUNITIES An Academic presentation by Dr. Nancy Agens, Head, Technical Operations, Tutors India Group  www.tutorsindia.com Email: info@tutorsindia.com

  2. Today's Discussion OUTLINE Introduction Classification of Big Data Cloud Computing Relationship between the Cloud Computing and Big Data Case Studies Types of Databases Conclusion

  3. Introduction The rise of big datain daily life is on the rise in almost all domains and applications. Its combination with cloud computing is a major attraction in IT sector. The other advantage is that both these technologies are still in their evolutionary stage, where they are getting improved regularly. A suitable customer may start using Cloud Computing when in need of quick deployment and scaling of their applications. Big data cannot be considered as a replacement for relational database systems and big data solves specific problem statement related to larger data sets. Contd..

  4. Figure 1: Characteristics of Big Data

  5. Classification of Big Data TYPE OF ANALYSIS DATA FREQUENCY Contd..

  6. DATA TYPE HARDWARE Contd..

  7. DATA CONSUMERS

  8. Cloud Computing Cloud computing delivers computing services like servers, storage, databases, networking, software, analytics and intelligence over the internet for faster innovation, flexible resources, heavy computation, parallel data processing and economies of scale. The organizations are empowered in order to concentrate more on core business by completely abstracting computation, storage and network resources to workloads. Contd..

  9. Figure 2: Types of Cloud Computing Contd..

  10. Figure 3: Cloud Computing Services

  11. Relationship between the Cloud Computing and Big Data The relationship between big data and cloud computing follows input, processing and output models. The input is the big data obtained from various data sources such as cellular and other smart devices in either structured, unstructured or semi-structured format. This voluminous data is cleaned and then stored using Hadoop or other data stores. The stored data is in turn processed through cloud computing tools and techniques for providing services. Output represents the value obtained after data is being processed for analysis and visualization.

  12. Case Studies TWEET MINING IN CLOUD Cloud computing is used to gather and analyze tweets. Amazon cloud infrastructure was used to perform all the computations. Tweets were crawled and later page ranking algorithm was applied. Page Ranking is used by Google to define the importance of a web page. Twitter social graph to compute PageRank. Contd..

  13. REDBUS Redbus is an online travel agency for bus ticket booking in India. Redbus decided to use Google data infrastructure for data processing and analysis in order to improve customer sales and management of the ticket booking system. Google BigQuery enabled RedBus to process massive amounts of booking and inventory data within seconds. Applications that reside on multiple servers continuously streams customer searches, seat inventory and booking information to centralized data collection system.

  14. Types of Databases Modern databases need to handle large volume and different variety of data formats. Database architects have produced NoSQL and NewSQL as alternatives to relational database. NoSQL supports structured, semi-structured and unstructured data. NewSQL is a new approach to relational databases that combines ACID transactions of RDBMSs and horizontal scalability of NoSQL.

  15. Big Data Business Challenges UTILITIES: POWER CONSUMPTION PREDICTION Utility companies use smart meter to measure gas and electricity consumption. A big data infrastructure needs to monitor and analyse power generation and consumption using smart meters. SOCIAL NETWORK: SENTIMENT ANALYSIS Social networking companies such as Twitter needs to determine what users are saying and topic which are trending in order to perform sentiment analysis. Contd..

  16. TELECOMMUNICATION: PREDICTIVE ANALYTICS Telecommunication provides need to build churn models which depends on the customer profile data attributes. Predictive analytics can predict churn by analyzing the subscribers calling patterns. CUSTOMER SERVICE: CALL MONITOR Call center big data solutions use application logs to improve performance. The log files needs to be consolidated from different formats before they can be used for analysis. Contd..

  17. BANKING: FRAUD DETECTION Banking companies should be able to prevent fraud on a transaction or a user account. Big datasolutions should analyse transactions in real time and provide recommendations for immediate action and stop fraud. RETAILERS: PRODUCT RECOMMENDATION Retailers can monitor user browsing patterns and history of products purchased and provide a solution to recommend products based on it. Retailers need to make privacy disclosures to the users before implementing these applications.

  18. Conclusion In the big data era of innovation and competition driven by advancements in cloud computing has resulted in discovering hidden knowledge from the data. In this paper we have given an overview of big data applications in cloud computingand its challenges in storing, transformation, processing data and some good design principles which could lead to further research.

  19. CONTACT US UNITED KINGDOM +44-1143520021 INDIA +91-4448137070 EMAIL info@tutorsindia.com

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