Spam detection in the physical world
We’ve created the world’s first Spam-detecting AI trained entirely in simulation and deployed on a physical robot.
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We’ve created the world’s first Spam-detecting AI trained entirely in simulation and deployed on a physical robot.
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We’ve discovered that evolution strategies (ES), an optimization technique that’s been known for decades, rivals the performance of standard reinforcement learning (RL) techniques on modern RL benchmarks (e.g. Atari/MuJoCo), while overcoming many of RL’s inconveniences.
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In this post we’ll outline new OpenAI research in which agents develop their own language.
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Adversarial examples are inputs to machine learning models that an attacker has intentionally designed to cause the model to make a mistake; they’re like optical illusions for machines. In this post we’ll show how adversarial examples work across different mediums, and will discuss why securing syst...
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The OpenAI team is now 45 people. Together, we’re pushing the frontier of AI capabilities—whether by validating novel ideas, creating new software systems, or deploying machine learning on robots.
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Reinforcement learning algorithms can break in surprising, counterintuitive ways. In this post we’ll explore one failure mode, which is where you misspecify your reward function.
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We’re working with Microsoft to start running most of our large-scale experiments on Azure.
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Last week we hosted over a hundred and fifty AI practitioners in our offices for our first self-organizing conference on machine learning.
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Deep learning is an empirical science, and the quality of a group’s infrastructure is a multiplier on progress. Fortunately, today’s open-source ecosystem makes it possible for anyone to build great deep learning infrastructure.
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The latest information about the Unconference is now available at the Unconference wiki, which will be periodically updated with more information for attendees.
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We’ve hired more great people to help us achieve our goals. Welcome, everyone!
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Impactful scientific work requires working on the right problems—problems which are not just interesting, but whose solutions matter.
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We (along with researchers from Berkeley and Stanford) are co-authors on today’s paper led by Google Brain researchers, Concrete Problems in AI Safety. The paper explores many research problems around ensuring that modern machine learning systems operate as intended.
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OpenAI’s mission is to build safe AI, and ensure AI’s benefits are as widely and evenly distributed as possible.
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