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Hiring new players using analytics

Analytics are now being deployed by sports clubs to buy new players. With the huge amount of data being generated, selling clubs are now looking for ways to increase the chance of their players being bought for more money and buying clubs are looking for ways to assess the potential of new players. Analytics comes into play here. Clubs are now using data to assess the potential of new players, with efforts being devoted to developing data programmes to accomplish this task. There are several companies who offer this kind of service, but a significant number of clubs have outdone, these companies with their hiring process by carrying out deeper analysis and using metrics. Read more at: https://channels.theinnovationenterprise.com/articles/data-in-player-transfers-in-the-premier-league

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Understanding big data using graphs

Big data can be best understood using graph theory. Several open-source graph databases have come up and are used by several organizations. These databases are becoming popular as graphs are the best way for storing and querying huge amount of data. Graphs are being used by several domains of the industry as it provides competitive advantage. Social media uses graphs to provide accurate and personal recommendations to users. It is being used by a major online shopping company to compute fast and provide localized door-to-door delivery of goods. Graph databases store data safely and make querying it fast and easy. According to Dr. Marsten, creating and analyzing graphs will lead us to answers. Read more at: https://channels.theinnovationenterprise.com/articles/7132-the-key-to-understanding-big-data-lies-with-the-graph

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The Importance Of Log Management In Big Data

Companies are mostly using Big Data solutions for log management. Sam Heywood (director of the Cloudera Security Centre of Excellence of Cloudera) said that "log data, intrusion alerts and other types of security-related information is a perfect fit for Big Data systems". Unlike the traditional approaches to collect the information, Big Data offers a platform which is scalable in order to collect the data and hence also cost-effective. It also provides the tools for long-term analysis which remains unaffected by the rules-based approaches. The necessary steps taken by the companies’ leads to an increase in security because they want to make sure that they are operating Big Data system in a safe and secure environment.

Read more at:http://www.cio.com/article/2935940/data-analytics/log-management-is-leading-use-case-for-big-data.html

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Big Data Analytics-A Different Approach

Big data and big data analytics has been a trend setter in recent years. Unlike the traditional cause-effect analysis, big data analytics generate predictions based on huge volumes of data, using statistical tools and advanced computing techniques. An interesting case study on the use of big-data analytics was the prediction of a flu pandemic in the United States by simply analyzing Google search data. The spread of the disease was detected before any medical organization or national agency, simply on the basis of people frequently searching Google for the symptoms and remedy of flu. Big data analytics enables us to generate reliable analyses, even in the absence of clear links or causes. To know more read:http://www.forbes.com/sites/huawei/2015/02/24/how-do-big-data-analytics-enhance-network-security/

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How to choose a right big data analytics tool for your organization

According to David Loshin (Knowledge Integrity Inc.)," big data and analytics is helping organizations to gather and analyze data in search of valuable business information and insights that can help them improve their products and services." Cost, Simplicity and Performance are the three factors helps to lower the barrier of entry for analytics and motivate organizations to adopt a big data analytics. The organizations which are planning to integrate analytics tools into their organizations need to have a data driven culture, recognize the potential of information. Key stakeholders are aware of the benefits of big data analytics and include agility in making decisions for adopting the technology. Types of big data to analyze:

• Transaction Data
• Human-generated Data
• Mobile Data
• Machine and Sensor Data.

Big data analytics tools help you in managing all these data with a reasonable investment. Helps you in analyzing these applications:
• Customer Analytics
• Sales and Marketing Analytics
• Social Media Analytics
• Cybersecurity
• Plant and facility management
• Pipeline Management
• Supply chain and channel analytics
• Prize optimization
• Fraud Detection

Read more at: http://searchbusinessanalytics.techtarget.com/feature/How-to-determine-if-big-data-analytics-tools-are-right-for-you

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Analytics In Talent Acquisition And Management

The emergence of analytics in business has also contributed extensively in the field of talent management. Talent analytics has become an important area in both consulting firms and corporations. Not only it helps in acquiring and attracting new talent but also helps in talent utilization and maximization of organizational performance. In earlier days talent management was done by managers who trust their “intuition” or “common sense”, which led to bias and wrong decisions. But thanks to the development of information technology and availability of expertise in the field of data analytics, talent management is following a scientific path and a better system of workforce management.To know more read:

http://www.forbes.com/sites/edwardlawler/2015/05/20/talent-analytics-old-wine-in-new-bottles/

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Social Network Analysis Identifies Cancer Biomarkers

Growing social networks have caused rapid development of tools for understanding the interactions between members of the network. The Department of Computer Engineering, at TOBB University, in Ankara, Turkey used Social Network Analysis (SNA) tools to identify the biomarkers present in patient genomic data. Genomic databases comprise of about 20000 genes. Such an approach dramatically decreased the features that need to be analyzed to find useful biomarkers. The team demonstrated their proof of principle with three types of cancer: lymphoma, colon cancer and leukemia. They combined clustering and classification to help in detecting the links between the various genes to validate the outcome. Now they shall extend it with a view to improve diagnostics and tailoring therapy for individual patients based on their personal Biological Network Analysis. Read more at: http://medicalxpress.com/news/2015-06-social-networking-analysis-cancer-biomarkers.html

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Analytics Making Way Into Political Ground

In 2012, analytics was applied in the presidential election of USA. They employed a strong analytics team who used a strong analytics database and prediction was predicted with R and SPSS. The presidential team made a mega file to find potential voters, get their attention, predict specific appeals to persuade people etc. Consumer Data determined people who funded for the campaign as fundraising was an important aspect of the victor. Read more about this article by Euan Hunter (Global Delegate Sales Executive) at:  https://channels.theinnovationenterprise.com/articles/taking-political-control-with-digital-analytics

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Know Your Employees Better And Reduce Risk By Predictive Modeling

When it comes to risk management, it is often observed that the companies either implement blanket management programs applying the same strategies to all employees, or use the "squeaky wheel approach" focusing primarily on at-risk employees. However, both the approaches result in inefficiency. Thus, a strategic employee-specific management program can be adopted to identify the at-risk employees. Such a program monitors the employees for subtle and almost undetectable changes that are indicative of risky behavior and this is where predictive analytics model is of immense help. Predictive modeling enables the manager to identify not only the high-risk employees, but also the cause behind a particular incident.  Predictive modeling is fast becoming an indispensable tool for mitigating risk, retaining top talent, and building long-lasting relationship with the employees. Read More:- http://www.natlawreview.com/article/mitigating-risk-predictive-modeling

 

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Planning mergers and acqusitions using analytics

Data analytics with its growing importance is now used to plan mergers and acquisitions which require a well thought game plan. Throughout the buying process, data analytics can be used to see how market will respond to a deal being made. While merging with another company, data gets doubled and so it is important for employees to analyze all sets of data thus allowing business users to make better decisions. All through the M&A process employees must be trained to possess analytical process, needed to survive in this data-driven economy. Organizations must be aware of how effective and intelligent data management and analytics can help drive Mergers and Acquisitions win. Thus Big Data can offer success to M&A. Read more at: https://channels.theinnovationenterprise.com/articles/7467-the-big-data-game-plan-in-mergers-and-acquisitions

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The art of making infographics

Data visualization or infographics allows us to see results in a simple manner without putting in much effort to analyze vast amount of data. The key to making visualization easy lies in making infographics that can easily convey complex data to a wide audience. People can easily relate to infographics as these graphics follow certain conventions. Deviating from these conventions can lead to confusion, making data visualization complex. Trying to fit too much information in a single infographic will make it complex to interpret. In such cases, only the important piece of information should be conveyed or maybe one can put together a series of visualization. Use of proper annotations, labelling the axes and using data wherever needed is crucial. In case of data comparisons, graphs can be made differentiable using contrasting colors. Arithmetic errors should be avoided else the infographic becomes next to useless. Read more at: https://channels.theinnovationenterprise.com/articles/5-common-mistakes-in-data-visualizations

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Real time data and real time responses: Helps you in managing customers

According to the H.O. Maycotte (Austin Tech), Success in real time means collecting, assessing and acting on real-time customer data.” Ability to collect data and respond towards that data separates successful brands from the crowd. Steps to make real-time data and real-time response part of your operations, especially in marketing and customer service:
• Collect and consider real-time customer data in context.
• Look for context beyond the customer.
• Give mobile and social the central roles they deserve.
• Act fast.
• Anticipate your customer’s next move.
Read more at: http://www.forbes.com/sites/homaycotte/2015/06/16/5-ways-improve-customer-service-with-real-time-data-and-real-time-responses/

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Steps to simplify analytics strategy

According to Narendra Mulani (senior managing director of Accenture Analytics), to survive in this competitive world organization need analytics to analyze opportunities and threats to their business. But now the question arises how to use analytics into their organization. Most of the organizations get stuck in applying analytics. So, the author discussed about the steps to simplify their analytics strategy and generate real outcomes. Some of them are:

• Accelerate the data.
• Delegate the work to your analytics technologies.
• Recognize that each path to data insight is unique.
Ways to delegate the work to your analytics technologies are: Next-Gen Business Intelligence (BI) and data visualization; data discovery; analytics applications; machine learning and cognitive computing. Read more at: https://hbr.org/2015/06/simplify-your-analytics-strategy

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Predictive Analytics In Marketing And Sales

With the help of predictive analytics, marketers can predict future sales. With this prediction information, companies can now decide on their campaigns. Analytics is mainly used for correlation and causation. A lot of vendors pay maximum attention towards correlation but causation underlying a pattern is important to predict a customer’s purchase behavior. Thus predictive analytics analyzes customer behavior and offers them promotions according to their behavior so as they intake those. Hence if used properly, it can be of great importance. Predictive analytics can help marketers across the entire customer lifecycle, said Fern Halper, director of TDWI Research for advanced analytics. Read more about this article by Katherine Noyes (IDG News Service) at:  http://www.computerworld.com/article/2934086/business-intelligence/marketers-are-betting-big-on-predictive-analytics.html 

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Utilizing predictive analytics to make business decisions

Predictive analytics make use of statistical or machine-learning techniques to analyze current and past facts to predict the future. Companies, by using predictive analytics, can make better and decisions at low-cost. Predictive analytics can help companies to get an idea of every possible event, thus allowing for risk management and calculating potential ROI. Using predictive analytics, companies can remove politics from the decision-making process. There is a growing awareness among companies about predictive analytics and companies that adopted this method have reported success and increased ROIs. Optimizing predictive analytics to produce better choices leads to decision modelling. Through decision modelling companies can gain insight into how predictive analytics can add value and how ROI can be measured. Read more at:https://channels.theinnovationenterprise.com/articles/making-faster-decisions-with-predictive-analytics  

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Social Media Analytics Predicting Box Office Hits

Movies are big businesses where a lot of money needs to be spent so that box office hits. Prediction of this hit is an impressive science. So studios nowadays depends on its blockbusters by making early prediction to carry their less profitable films. So, companies uses a number of different metrics to predict the sentiment towards a movie. Analytics has spread its arms from Hollywood towards the World’s Biggest Film Industry, Bollywood. Social Sentiment Index (SSI) reveals measures about successful films. It is argued that it might hamper creativity and risk-taking factor in the movie industry. Thus it might affect small films to even take a chance. Read more about this interesting article at: https://channels.theinnovationenterprise.com/articles/can-social-media-analytics-help-end-box-office-flops

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Even when Data Analytics fails, it succeeds

When it comes to Data Analytics, failure is a very important part of the innovation process. A part of the data scientist’s job is trial-and-error and assumptions to vet data for new insights. Pushing the analytical process to uncover new uses of data and new ways of applying analytics necessarily involves risk and failure. Leading websites embrace this by testing hundreds or thousands of both minor and large scale changes to their site daily. Nothing is rolled out broadly on a major website today unless it has gone through rigorous testing. An organization based on rapid experimentation, exploration of new ideas and educated in doing analytics right is one destined to succeed. Read more at: http://www.forbes.com/sites/teradata/2015/05/27/why-being-wrong-is-the-best-way-to-get-your-analytics-right/ 

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Analytics- The Tool Beyond Big Data

The evolution and advancement of modern technology has led to a remarkable development of how business is done. With this rapid progress, the complexities in terms of how these technologies are used, has increased largely. Often the names and terms are clubbed together, and it becomes difficult for non-technical business leaders to understand and identify the independent usage of these technologies. "Big data analytics", "marketing analytics", "social media analytics", "audio stream analytics", etc. are some of them. It seems that analytics are often clubbed with other words, many of which are associated with storage and inflow of large volumes of data. If the volume of the sample is adequate enough to give a statistically valid output, then analytics can be executed without resorting to big data .To know more read: http://www.mytechlogy.com/IT-blogs/7973/does-analytics-need-big-data/#.VXE5WM-qqko

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Data Analytics- The Future Of Business Development

In today`s world, data has become a comparative advantage and an integral part of product development. It is a vital component when it comes to enhancing business performance. The most crucial role played in this context is the role played by the data scientists. The data scientists are shaping and building the future of business through modern techniques for data analysis and forecasting. An important reason in such remarkable progression in this field of data analytics is due to the accessibility of the data. The rise of online community, e-commerce, mobile and overall digitization of the society has contributed enormously. According to industry experts, companies are realizing the potential benefits of data analytics and are using it as a powerful tool for business development. To know more read: http://thenextweb.com/dd/2014/11/23/data-scientists-changing-face-business-intelligence

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Making good use of customer data

With the rising importance of big data, organizations are now collecting and storing data, but many don't put it to good use. Retailers can leverage customer data to make personalized recommendations about offers and promotions thus providing a shopping experience customized to individuals. Analyzing customer data can help companies to identify customer preferences for products and the prices they are willing to pay. Customer data can be used to identify the most relevant users to ask for feedback, create new products or services and provide better customer services. By analyzing customer data, companies can identify patterns of behavior of customer data and thus formulate targeted marketing strategies, improve organizational effectiveness and reduce risk and fraud. Read more at: http://www.cio.in/feature/8-ways-to-make-the-most-out-of-your-customer-data

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