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Learning to communicate
In this post weβll outline new OpenAI research in which agents develop their own language.
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Emergence of grounded compositional language in multi-agent populations
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Prediction and control with temporal segment models
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Third-person imitation learning
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Attacking machine learning with adversarial examples
Adversarial examples are inputs to machine learning models that an attacker has intentionally designed to cause the model to make a mistake; theyβre like optical illusions for machines. In this post weβll show how adversarial examples work across different mediums, and will discuss why securing syst...
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Adversarial attacks on neural network policies
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Team update
The OpenAI team is now 45 people. Together, weβre pushing the frontier of AI capabilitiesβwhether by validating novel ideas, creating new software systems, or deploying machine learning on robots.
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PixelCNN++: Improving the PixelCNN with discretized logistic mixture likelihood and other modifications
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Faulty reward functions in the wild
Reinforcement learning algorithms can break in surprising, counterintuitive ways. In this post weβll explore one failure mode, which is where you misspecify your reward function.
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#Exploration: A study of count-based exploration for deep reinforcement learning
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OpenAI and Microsoft
Weβre working with Microsoft to start running most of our large-scale experiments on Azure.
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On the quantitative analysis of decoder-based generative models
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A connection between generative adversarial networks, inverse reinforcement learning, and energy-based models
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RLΒ²: Fast reinforcement learning via slow reinforcement learning
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Variational lossy autoencoder
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Extensions and limitations of the neural GPU
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Semi-supervised knowledge transfer for deep learning from private training data
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Report from the self-organizing conference
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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Transfer from simulation to real world through learning deep inverse dynamics model
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Infrastructure for deep learning
Deep learning is an empirical science, and the quality of a groupβs infrastructure is a multiplier on progress. Fortunately, todayβs open-source ecosystem makes it possible for anyone to build great deep learning infrastructure.
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Machine Learning Unconference
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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Team update
Weβve hired more great people to help us achieve our goals. Welcome, everyone!
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Special projects
Impactful scientific work requires working on the right problemsβproblems which are not just interesting, but whose solutions matter.
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Concrete AI safety problems
We (along with researchers from Berkeley and Stanford) are co-authors on todayβs paper led by Google Brain researchers,Β 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 technical goals
OpenAIβs mission is to build safe AI, and ensure AIβs benefits are as widely and evenly distributed as possible.
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Generative models
This post describes four projects that share a common theme of enhancing or using generative models, a branch of unsupervised learning techniques in machine learning. In addition to describing our work, this post will tell you a bit more about generative models: what they are, why they are important...
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Adversarial training methods for semi-supervised text classification
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Team update
Weβd like to welcome the latest set of team members to OpenAI (and weβre still hiring!)
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