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AI vs. Machine Learning vs. Deep Learning vs. Neural Networks: What’s the difference?

IBM Journey to AI blog

While artificial intelligence (AI), machine learning (ML), deep learning and neural networks are related technologies, the terms are often used interchangeably, which frequently leads to confusion about their differences. Machine learning is a subset of AI. What is artificial intelligence (AI)?

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AI News Weekly - Issue #338: Marvel faces backlash over AI-generated opening credits - Jun 22nd 2023

AI Weekly

What kind of plan Lenovo has for its AI systems Lenovo worked with 45 software partners to release. gizchina.com AI in Packaging Market is expected to hit US$ 6,015.6 techxplore.com What Is Unsupervised Machine Learning? techxplore.com What Is Unsupervised Machine Learning? fool.com Sponsor Enterprise Devs love us.

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A Guide to Mastering Large Language Models

Unite.AI

LLMs are a class of deep learning models that are pretrained on massive text corpora, allowing them to generate human-like text and understand natural language at an unprecedented level. Cohere provides a studio for automating LLM workflows with a GUI, REST API and Python SDK.

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Graph Viz with Gephi and ChatGPT, Google’s Bard AI, and Reverse Engineering Image Prompts

ODSC - Open Data Science

The Role of DevSecOps in Ensuring Data Privacy and Security in Data Science Projects DevSecOps ensures that data privacy and security are maintained throughout the application’s lifecycle by promoting collaboration and automation. Check out some more highlights in the full schedule here!

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Evaluation Derangement Syndrome (EDS) in the GPU-poor’s GenAI. Part 1: the case for Evaluation-Driven Development

deepsense.ai

In short, EDS is the problem of the widespread lack of a rational approach to and methodology for the objective, automated and quantitative evaluation of performance in terms of generative model finetuning and prompt engineering for specific downstream GenAI tasks related to practical business applications. There is a ‘but’, however.