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OpenAI closes $300M share sale at $27B-29B valuation

Flipboard

OpenAI, however, has some undeniable gravity amidst the competition, not least because of its singular focus on the AI space since its founding in 2015. Microsoft’s efforts have included integrating OpenAI’s APIs with its Azure infrastructure to support the computational requirements of the models.

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How to Optimize Power BI and Snowflake for Advanced Analytics

phData

Debuting in 2015, Power BI has undergone meaningful updates that have made it a leader not just in data visualization, but in the business intelligence space as well. In a perfect world, Microsoft would have clients push even more storage and compute to its Azure Synapse platform.

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TensorFlow vs. PyTorch: What’s Better for a Deep Learning Project?

Towards AI

Developed by Google in 2015, TensorFlow boasts extensive capabilities, resulting in the tool being used often for research purposes or companies using it for their programming purposes. It can also be used in a variety of languages, such as Python, C++, JavaScript, and Java.

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Top 10 Deep Learning Platforms in 2024

DagsHub

TensorFlow The Google Brain team created the open-source deep learning framework TensorFlow, which was made available in 2015. Developed by François Chollet, it was released in 2015 to simplify the creation of deep learning models. Further Reading and Documentation H2O.ai Documentation H2O.ai

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Top 6 Kubernetes use cases

IBM Journey to AI blog

In 2015, Google donated Kubernetes as a seed technology to the Cloud Native Computing Foundation (CNCF) (link resides outside ibm.com), the open-source, vendor-neutral hub of cloud-native computing. While Docker includes its own orchestration tool, called Docker Swarm , most developers choose Kubernetes container orchestration instead.

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Best Machine Learning Frameworks for ML Experts in 2023

Pickl AI

It is an open source framework that has been available since April 2015. Azure ML Studio Azure ML Studio is a machine learning framework that helps developers to build different machine learning models as well as the APIs. This can also be used as a library in our Python programming. Pros It is flexible and deals well with RNN.

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Why is Git Not the Best for ML Model Version Control

The MLOps Blog

Starting from AlexNet with 8 layers in 2012 to ResNet with 152 layers in 2015 – the deep neural networks have become deeper with time. Different tools: Your repository consists of multiple tools, libraries, and infrastructure providers like Azure, AWS, and GCP.

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