Friday, 3 May 2019

Big Data & Machine Learning in Telecom Market— Technological Advancements Driving the Industry Growth 2025: ZTE, Allot, Argyle data, Ericsson, Guavus, HUAWEI, Intel, NOKIA

Researchmoz added Most up-to-date research on "Global Big Data & Machine Learning in Telecom Market Size, Status and Forecast 2019-2025" to its huge collection of research reports.

Big Data & Machine Learning in Telecom Market report includes (6 Year Forecast 2019-2025) includes Overview, classification, industry value, price, cost and gross profit. It also offers in-intensity insight of the Big Data & Machine Learning in Telecom industry masking all vital parameters along with, Drivers, Market Trends, Market Dynamics, Opportunities, Competitive Landscape, Price and Gross Margin, Big Data & Machine Learning in Telecom market Share via Region, New Challenge Feasibility Evaluation, Analysis and Guidelines on New mission Investment.

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Telecom big data spending includes distributed storage and computing Hadoop (and Spark) clusters, HDFS file systems, SQL and NoSQL software database frameworks, and other operational software. Telecom analytics software, such as for revenue assurance, business intelligence, strategic marketing, and network performance, are considered separately. The evolution from non-machine learning based descriptive analytics to machine learning driven predictive analytics is also considered. Telecom data meets the fundamental 3Vs criteria of big data: velocity, variety, and volume, and should be supported with a big data infrastructure (processing, storage, and analytics) for both real-time and offline analysis.

In 2018, the global Big Data & Machine Learning in Telecom market size was xx million US$ and it is expected to reach xx million US$ by the end of 2025, with a CAGR of xx% during 2019-2025.

This report focuses on the global Big Data & Machine Learning in Telecom status, future forecast, growth opportunity, key market and key players. The study objectives are to present the Big Data & Machine Learning in Telecom development in United States, Europe and China.

The key players covered in this study

Allot
Argyle data
Ericsson
Guavus
HUAWEI
Intel
NOKIA
Openwave mobility
Procera networks
Qualcomm
ZTE
Google
AT&T
Apple
Amazon
Microsoft

Market analysis by product type

Descriptive analytics
Predictive analytics
Machine learning
Feature engineering

Market analysis by market

Processing
Storage
Analyzing

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Market analysis by Region

United States
Europe
China
Japan
Southeast Asia
India
Central & South America

The study objectives of this report are:


To analyze global Big Data & Machine Learning in Telecom status, future forecast, growth opportunity, key market and key players.
To present the Big Data & Machine Learning in Telecom development in United States, Europe and China.
To strategically profile the key players and comprehensively analyze their development plan and strategies.
To define, describe and forecast the market by product type, market and key regions.

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