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Canva apologizes after its AI tool replaces ‘Palestine’ in designs33m◆China blocks Meta’s $2B Manus deal after months-long probe1h◆OpenAI could be making a phone with AI agents replacing apps1h◆Rebuilding the data stack for AI2h◆Join the new AI Agents Vibe Coding Course from Google and Kaggle2h◆The AI-designed car is taking shape4h◆Meta inks deal for solar power at night, beamed from space5h◆The next phase of the Microsoft OpenAI partnership9h◆From Local to Cluster: A Unified Framework for Causal Discovery with Latent Variables11h◆Consequentialist Objectives and Catastrophe11h◆EgoMAGIC- An Egocentric Video Field Medicine Dataset for Training Perception Algorithms11h◆ReCast: Recasting Learning Signals for Reinforcement Learning in Generative Recommendation11h◆A Probabilistic Framework for Hierarchical Goal Recognition11h◆CNSL-bench: Benchmarking the Sign Language Understanding Capabilities of MLLMs on Chinese National Sign Language11h◆The Shape of Adversarial Influence: Characterizing LLM Latent Spaces with Persistent Homology11h◆Toward Principled LLM Safety Testing: Solving the Jailbreak Oracle Problem11h◆Learning from Natural Language Feedback for Personalized Question Answering11h◆TS-Arena -- A Live Forecast Pre-Registration Platform11h◆Report for NSF Workshop on AI for Electronic Design Automation11h◆Initial results of the Digital Consciousness Model11h◆Canva apologizes after its AI tool replaces ‘Palestine’ in designs33m◆China blocks Meta’s $2B Manus deal after months-long probe1h◆OpenAI could be making a phone with AI agents replacing apps1h◆Rebuilding the data stack for AI2h◆Join the new AI Agents Vibe Coding Course from Google and Kaggle2h◆The AI-designed car is taking shape4h◆Meta inks deal for solar power at night, beamed from space5h◆The next phase of the Microsoft OpenAI partnership9h◆From Local to Cluster: A Unified Framework for Causal Discovery with Latent Variables11h◆Consequentialist Objectives and Catastrophe11h◆EgoMAGIC- An Egocentric Video Field Medicine Dataset for Training Perception Algorithms11h◆ReCast: Recasting Learning Signals for Reinforcement Learning in Generative Recommendation11h◆A Probabilistic Framework for Hierarchical Goal Recognition11h◆CNSL-bench: Benchmarking the Sign Language Understanding Capabilities of MLLMs on Chinese National Sign Language11h◆The Shape of Adversarial Influence: Characterizing LLM Latent Spaces with Persistent Homology11h◆Toward Principled LLM Safety Testing: Solving the Jailbreak Oracle Problem11h◆Learning from Natural Language Feedback for Personalized Question Answering11h◆TS-Arena -- A Live Forecast Pre-Registration Platform11h◆Report for NSF Workshop on AI for Electronic Design Automation11h◆Initial results of the Digital Consciousness Model11h◆
News/Rebuilding the data stack for AI
mit-tech-review
PublishedApril 27, 2026 at 1:00 PM
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Rebuilding the data stack for AI

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Artificial intelligence may be dominating boardroom agendas, but many enterprises are discovering that the biggest obstacle to meaningful adoption is the state of their data. While consumer-facing AI tools have dazzled users with speed and ease, enterprise leaders are discovering that deploying AI a

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