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Pentagon Officially Notifies Anthropic It Is a ‘Supply Chain Risk’

Anthropic has said it will sue the Defense Department over the designation, which could prevent the start-up from doing business with the U.S. government.

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New Update Makes GPT-5.3 Instant More Useful For Everyday Tasks

You don’t always go for a benchmark score to see which AI model fits your needs. Even the highest ranking models sometimes seem to miss the essence of a conversation entirely. What matters then is how fluid and helpful your conversations with AI are. Taking a step in this direction, OpenAI has now introduced an

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NotebookLM Gets a Game-changing Feature: Check Out Cinematic Video Overviews

Whenever I am to suggest a new AI tool to someone who is just starting out, there is one name I know can bring them unprecedented value. NotebookLM, the famous AI tool by Google, is just one-too-many solutions wrapped into a neat package of an “AI research tool.” It can summarise your notes, find you

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Workers report watching Ray-Ban Meta-shot footage of people using the bathroom

Meta’s approach to user privacy is under renewed scrutiny following a Swedish report that employees of a Meta subcontractor have watched footage captured by Ray-Ban Meta smart glasses showing sensitive user content. The workers reportedly work for Kenya-headquartered Sama and provide data annotation for Ray-Ban Metas. The February report, a collaboration from Swedish newspapers Svenska

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A Coding Guide to Build a Scalable End-to-End Machine Learning Data Pipeline Using Daft for High-Performance Structured and Image Data Processing

In this tutorial, we explore how we use Daft as a high-performance, Python-native data engine to build an end-to-end analytical pipeline. We start by loading a real-world MNIST dataset, then progressively transform it using UDFs, feature engineering, aggregations, joins, and lazy execution. Also, we demonstrate how to seamlessly combine structured data processing, numerical computation, and

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