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RSA guide 2024: AI and security are top concerns for organizations in every industry

Dynatrace

In fact, according to the recent Dynatrace survey, “ The state of AI 2024 ,” 95% of technology leaders are concerned that using generative AI to create code could result in data leakage and improper or illegal use of intellectual property. In this blog, Carolyn Ford recaps her discussion with Tracy Bannon about AI in the workplace.

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OpenTelemetry enables automated operations management at scale

Dynatrace

The OpenTelemetry project was created to address the growing need for artificial intelligence-enabled IT operations — or AIOps — as organizations broaden their technology horizons beyond on-premises infrastructure and into multiple clouds. This is when the API library is referenced from the application code.

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Rethinking programming

O'Reilly

Like reading, some people learn how to code with little training, and others don’t. Minecraft has unwittingly taught a generation of grade-schoolers how to program in Java. Much of the rest is wiring things together: building data pipelines, connecting the application to the serving infrastructure, providing for monitoring.

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5 key areas for tech leaders to watch in 2020

O'Reilly

This year’s growth in Python usage was buoyed by its increasing popularity among data scientists and machine learning (ML) and artificial intelligence (AI) engineers. Software architecture, infrastructure, and operations are each changing rapidly. Exhibit A: Java-related usage dropped by a noteworthy 13% between 2018 and 2019.

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Structural Evolutions in Data

O'Reilly

” Each step has been a twist on “what if we could write code to interact with a tamper-resistant ledger in real-time?” Plus there was all of the infrastructure to push data into the cluster in the first place. But in its early form of a Hadoop-based ML library, Mahout still required data scientists to write in Java.