Remove in-en services cloud-index
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Accelerating digital transformation with sustainable solutions

CIO Business Intelligence

From there, we can dynamically connect to industry-leading cloud and network providers around the world via software-defined interconnection, gaining maximum choice, flexibility, cost control, and performance advantages. Equinix has +22,760 volunteered community service hours to over 1,700 nonprofits in 2022.

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Beyond.pl: Addressing sovereign cloud needs in Poland and beyond

CIO Business Intelligence

a data center, cloud, and Managed Services provider, is quick to point out that enterprises’ data sovereignty requirements are growing in scope. In today’s public or multi-cloud environments data is dispersed. Wojciech Stramski, CEO of Beyond.pl Once everything was simple. This makes digital sovereignty even more critical.”

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Leveraging user-generated social media content with text-mining examples

IBM Big Data Hub

As it pertains to social media data, text mining algorithms (and by extension, text analysis) allow businesses to extract, analyze and interpret linguistic data from comments, posts, customer reviews and other text on social media platforms and leverage those data sources to improve products, services and processes. How does text mining work?

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Declarative Knowledge Graph APIs

Ontotext

Perhaps, you have already built one, which is inconsistent, fragile, difficult to integrate with modern front end stacks, does not support the basics such as role-based access control, data shape validation, caching or denial of service limits. Are you having difficulty joining your knowledge graph APIs with other data sources?

Modeling 130
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Data Science at The New York Times

Domino Data Lab

Wiggins advocated that data scientists find problems that impact the business; re-frame the problem as a machine learning (ML) task; execute on the ML task; and communicate the results back to the business in an impactful way. He covered examples of how his team addressed business problems with descriptive, predictive, and prescriptive ML solutions.