Analytics Stocks List
Symbol | Grade | Name | % Change | |
---|---|---|---|---|
DTEC | A | ALPS Disruptive Technologies ETF | 0.91 | |
VRSK | A | Verisk Analytics, Inc. | 1.10 | |
CTV | A | Innovid Corp. | 1.33 | |
XDAT | A | Franklin Exponential Data ETF | 0.89 |
Related Industries: Advertising Agencies Business Services Computer Systems Credit Services Data Storage Education & Training Services Health Information Services Information Technology Services Internet Content & Information Marketing Services Security & Protection Services Software - Application Software - Infrastructure Specialty Business Services
Symbol | Grade | Name | Weight | |
---|---|---|---|---|
KMID | B | Virtus KAR Mid-Cap ETF | 3.63 | |
DAT | A | ProShares Big Data Refiners ETF | 3.38 | |
LSAT | A | LeaderShares AlphaFactor Tactical Focused ETF | 3.19 | |
DFND | B | Realty Shares DIVCON Dividend Defender ETF | 2.44 | |
LEAD | B | Realty Shares DIVCON Leaders Dividend ETF | 2.3 |
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- Analytics
Analytics is the discovery, interpretation, and communication of meaningful patterns in data and applying those patterns towards effective decision making. In other words, analytics can be understood as the connective tissue between data and effective decision making, within an organization. Especially valuable in areas rich with recorded information, analytics relies on the simultaneous application of statistics, computer programming and operations research to quantify performance.
Organizations may apply analytics to business data to describe, predict, and improve business performance. Specifically, areas within analytics include predictive analytics, prescriptive analytics, enterprise decision management, descriptive analytics, cognitive analytics, Big Data Analytics, retail analytics, supply chain analytics, store assortment and stock-keeping unit optimization, marketing optimization and marketing mix modeling, web analytics, call analytics, speech analytics, sales force sizing and optimization, price and promotion modeling, predictive science, credit risk analysis, and fraud analytics. Since analytics can require extensive computation (see big data), the algorithms and software used for analytics harness the most current methods in computer science, statistics, and mathematics.
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