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Understanding Data Storage: Lakes vs. Warehouses

DevOps.com

Now more than ever, companies are looking for new ways to incorporate data analytics into their daily operations and leverage data-driven insights to improve business functions. The post Understanding Data Storage: Lakes vs. Warehouses appeared first on DevOps.com. However, understanding […].

Storage 139
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Machine Learning with Python, Jupyter, KSQL and TensorFlow

Confluent

Building a scalable, reliable and performant machine learning (ML) infrastructure is not easy. It takes much more effort than just building an analytic model with Python and your favorite machine learning framework. Impedance mismatch between data scientists, data engineers and production engineers.

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The Proverbial “Water Cooler” Discussions 2024: Key Topics that Drive Enterprise Storage Conversations (Part One)

Infinidat

The Proverbial “Water Cooler” Discussions 2024: Key Topics that Drive Enterprise Storage Conversations (Part One) Adriana Andronescu Thu, 06/06/2024 - 09:19 Talk about storage – this is your opportunity to react to what is being discussed around the proverbial “water cooler” in enterprise storage industry circles, online, in-person, and otherwise.

Storage 69
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Building a Machine Learning Application With Cloudera Data Science Workbench And Operational Database, Part 1: The Set-Up & Basics

Cloudera

Python is used extensively among Data Engineers and Data Scientists to solve all sorts of problems from ETL/ELT pipelines to building machine learning models. Apache HBase is an effective data storage system for many workflows but accessing this data specifically through Python can be a struggle. Example Operations .

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The impact of AI on edge computing

CIO

AI, including Generative AI (GenAI), has emerged as a transformative technology, revolutionizing how machines learn, create, and adapt. Read more about the impacts AI at the edge is predicted to have on the manufacturing industry in this recent blog. billion in 2027 with a compound annual growth rate (CAGR) of 86.1%

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Machine Learning and AI Underpin Predictive Analytics to Achieve Clinical Breakthroughs

Cloudera

Despite advances made in EHRs of late, they, unfortunately, do not provide advanced analytics or intelligent search for that matter. It is fair to say that healthcare faces many challenges, including developing, deploying, and integrating machine learning and artificial intelligence (AI) into clinical workflow and care delivery.

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Optimizing the Energy Sector with Data Analytics

Cloudera

In this respect, several studies project that a proper use of advanced analytics implies savings of between 5% and 7.5%. For example, predictive maintenance, based on machine learning, will enable utility companies to take preventative action that avoids large-scale power outages and costs.

Energy 85