Remove 2022 Remove Blog Remove Natural Language Processing Remove Supervised Learning
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AI Trends for 2023: Sparking Creativity and Bringing Search to the Next Level

Dataversity

2022 was a big year for AI, and we’ve seen significant advancements in various areas – including natural language processing (NLP), machine learning (ML), and deep learning. Unsupervised and self-supervised learning are making ML more accessible by lowering the training data requirements.

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Five machine learning types to know

IBM Journey to AI blog

And retailers frequently leverage data from chatbots and virtual assistants, in concert with ML and natural language processing (NLP) technology, to automate users’ shopping experiences. Semi-supervised learning The fifth type of machine learning technique offers a combination between supervised and unsupervised learning.

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Google at NeurIPS 2022

Google Research AI blog

Posted by Cat Armato, Program Manager, Google This week marks the beginning of the 36th annual Conference on Neural Information Processing Systems ( NeurIPS 2022 ), the biggest machine learning conference of the year.

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2022 and the Emergence of the Natural Language-Enabled Enterprise

Dataversity

This has created a need for humans and artificial intelligence (AI) to work side by side to create a true natural language-enabled enterprise, which allows the organization to deliver business outcomes with an effectiveness that far surpasses […].

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Foundation models: a guide

Snorkel AI

Foundation models are large AI models trained on enormous quantities of unlabeled data—usually through self-supervised learning. This process results in generalized models capable of a wide variety of tasks, such as image classification, natural language processing, and question-answering, with remarkable accuracy.

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Against LLM maximalism

Explosion

A lot of people are building truly new things with Large Language Models (LLMs), like wild interactive fiction experiences that weren’t possible before. But if you’re working on the same sort of Natural Language Processing (NLP) problems that businesses have been trying to solve for a long time, what’s the best way to use them?

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Everything you should know about AI models

Dataconomy

Reminder : Training data refers to the data used to train an AI model, and commonly there are three techniques for it: Supervised learning: The AI model learns from labeled data, which means that each data point has a known output or target value. In March of 2022, DeepMind released Chinchilla AI.