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The HP-Autonomy lawsuit: Timeline of an M&A disaster

CIO Business Intelligence

The 2000s: Spending spree September 2003: Autonomy completes its purchase of video management software vendor Virage and rebuilds the company’s software on its own IDOL (Intelligent Data Operating Layer) unstructured data management platform. June 2010: Autonomy acquires CA Technologies’ information governance business.

Software 105
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6 Spectacular Reasons You Must Master the Data Sciences in 2020

Smart Data Collective

Data Science is a field that extracts useful information from loads of structured and unstructured data using algorithms, statistics, and programming. Its primary focus is to use user-generated data to good use. The concept of data science was first introduced in 2001, but it started gaining popularity in 2010.

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10 Best Big Data Analytics Tools You Need To Know in 2023

FineReport

Cost Savings : Big data tools such as FineReport , Hadoop, Spark, and Apache can assist businesses in saving costs by storing and handling huge amounts of data more efficiently. Market Insight : Analyzing big data can help businesses understand market demand and customer behavior.

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How The Cloud Made ‘Data-Driven Culture’ Possible | Part 1

BizAcuity

The cloud market is well on track to reach the expected $495 billion dollar mark by the end of 2022. Cloud washing is storing data on the cloud for use over the internet. The following timeline shows how the young cloud market blew almost as soon as it hit the markets. This gap sealed the domination of AWS in the market.

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Structural Evolutions in Data

O'Reilly on Data

This is the power of marketing.) But the grouping and summarizing just wasn’t exciting enough for the data addicts. While data scientists were no longer handling Hadoop-sized workloads, they were trying to build predictive models on a different kind of “large” dataset: so-called “unstructured data.”