Remove 2017 Remove Artificial Intelligence Remove Big Data Remove Data Analytics
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Is Big Data the Saviour of the Aging Telecommunications Industry?

Smart Data Collective

The telecommunications industry could benefit from big data more than almost any other business. However, it has been slow to invest in machine learning and other big data tools, until recently. A 2017 analysis by MapR showed that telecommunications industries can benefit from big data more than almost any other company.

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5 Benefits of Training Data-Driven Teams in Microsoft Office 365

Smart Data Collective

Big data has led to countless changes in organizations all over the world. A growing number of organizations are using new software applications that involve sophisticated data analytics features. They have benefited immensely from big data. Big data has been incredibly vital in these changes.

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Transforming Credit and Collection with Predictive Analytics

BizAcuity

is delinquent as of June 30th, 2017. Today, it’s no secret that most forward-thinking businesses are keenly following the latest developments on big data, artificial intelligence, machine learning, and predictive analytics. One such technology is Artificial Intelligence.

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Top 10 Analytics And Business Intelligence Trends For 2020

Data Pine

Companies are no longer wondering if data visualizations improve analyses but what is the best way to tell each data-story. 2020 will be the year of data quality management and data discovery: clean and secure data combined with a simple and powerful presentation. 3) Artificial Intelligence.

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AI in Analytics: The NLQ Use Case

Sisense

Once both issues are addressed, the user can ask “how many customers are responsible for 80% of my Q1 2018 income compared to 2017?” and the system will know to look after ‘ clients ’ and aggregate the ‘ revenue ’ (the actual variable names in the system) to compare between Q1 2018 and Q1 2017. Machine Intent vs. User Intent.