ββLearning to Generalize from Sparse and Underspecified Rewards
Applying reinforcement learning to environments with sparse and underspecified rewards is an ongoing challenge, requiring generalization from limited feedback. Novel method that provides more refined feedback to the agent.
Link: https://ai.googleblog.com/2019/02/learning-to-generalize-from-sparse-and.html
#Google #RL
Applying reinforcement learning to environments with sparse and underspecified rewards is an ongoing challenge, requiring generalization from limited feedback. Novel method that provides more refined feedback to the agent.
Link: https://ai.googleblog.com/2019/02/learning-to-generalize-from-sparse-and.html
#Google #RL
ββHow 20th Century Fox uses ML to predict a movie audience
All modern blockbusters seem the same. They have common patterns of more exciting periods following less exciting, rotating emotional moments with action period. It is more about following well-known structure and template to make a well-boxing movie, than about directorβs skill. No suprise, that #ML can be used to predict success of the movie by its trailer.
Link: https://cloud.google.com/blog/products/ai-machine-learning/how-20th-century-fox-uses-ml-to-predict-a-movie-audience
#DL #LAindustry #Google
All modern blockbusters seem the same. They have common patterns of more exciting periods following less exciting, rotating emotional moments with action period. It is more about following well-known structure and template to make a well-boxing movie, than about directorβs skill. No suprise, that #ML can be used to predict success of the movie by its trailer.
Link: https://cloud.google.com/blog/products/ai-machine-learning/how-20th-century-fox-uses-ml-to-predict-a-movie-audience
#DL #LAindustry #Google
Data Science by ODS.ai π¦
ββExploring Neural Networks with Activation Atlases Amazing interactive article on feature visualizations, letting us see through the eyes of the neural network. The hidden layers of neural networks are quite fun to inspect. Interactive website: https:β¦
Introducing Activation Atlases by #OpenAI
OpenAI in collaboration with #Google created activation atlases, a new technique for visualizing what interactions between neurons can represent.
Link: https://blog.openai.com/introducing-activation-atlases/
Direct demo link: https://distill.pub/2019/activation-atlas/app.html
Github: https://github.com/tensorflow/lucid/#activation-atlas-notebooks
OpenAI in collaboration with #Google created activation atlases, a new technique for visualizing what interactions between neurons can represent.
Link: https://blog.openai.com/introducing-activation-atlases/
Direct demo link: https://distill.pub/2019/activation-atlas/app.html
Github: https://github.com/tensorflow/lucid/#activation-atlas-notebooks
OpenAI
Introducing Activation Atlases
Weβve created activation atlases (in collaboration with researchers from Google Brain), a new technique for visualizing interactions between neurons.
#Google has open-sourced #FederatedLearning code
Step-by-step #tutorial showing how to perform Federated Learning using the same infrastructure Google
uses on 10s of millions of smartphones.
Link: https://medium.com/tensorflow/introducing-tensorflow-federated-a4147aa20041
Step-by-step #tutorial showing how to perform Federated Learning using the same infrastructure Google
uses on 10s of millions of smartphones.
Link: https://medium.com/tensorflow/introducing-tensorflow-federated-a4147aa20041
Medium
Introducing TensorFlow Federated
Posted by Alex Ingerman (Product Manager) and Krzys Ostrowski (Research Scientist)
Coconet: the ML model behind 20th of March Bach Doodle
Network trained to recreate Bach's music.
Link: https://magenta.tensorflow.org/coconet
#magenta #google #audiolearning
Network trained to recreate Bach's music.
Link: https://magenta.tensorflow.org/coconet
#magenta #google #audiolearning
Magenta
Coconet: the ML model behind todayβs Bach Doodle
Have you seen todayβs Doodle? Join us to celebrate J.S. Bachβs 334th birthday with the first AI-powered Google Doodle. You can create your own melody, an...
ββReducing the Need for Labeled Data in Generative Adversarial Networks
How combination of self-supervision and semi-supervision can help learn from partially labeled data.
Link: https://ai.googleblog.com/2019/03/reducing-need-for-labeled-data-in.html
#GAN #DL #Google #supervisedvsunsupervised
How combination of self-supervision and semi-supervision can help learn from partially labeled data.
Link: https://ai.googleblog.com/2019/03/reducing-need-for-labeled-data-in.html
#GAN #DL #Google #supervisedvsunsupervised
ββGoogle announced the updated YouTube-8M dataset
Updated set now includes a subset with verified 5-s segment level labels, along with the 3rd Large-Scale Video Understanding Challenge and Workshop at #ICCV19.
Link: https://ai.googleblog.com/2019/06/announcing-youtube-8m-segments-dataset.html
#Google #YouTube #CV #DL #Video #dataset
Updated set now includes a subset with verified 5-s segment level labels, along with the 3rd Large-Scale Video Understanding Challenge and Workshop at #ICCV19.
Link: https://ai.googleblog.com/2019/06/announcing-youtube-8m-segments-dataset.html
#Google #YouTube #CV #DL #Video #dataset
ββXLNet: Generalized Autoregressive Pretraining for Language Understanding
Researchers at Google Brain and Carnegie Mellon introduce #XLNet, a pre-training algorithm for natural language processing systems. It helps NLP models (in this case, based on Transformer-XL) achieve state-of-the-art results in 18 diverse language-understanding tasks including question answering and sentiment analysis.
Article: https://towardsdatascience.com/what-is-xlnet-and-why-it-outperforms-bert-8d8fce710335
ArXiV: https://arxiv.org/pdf/1906.08237.pdf
#Google #GoogleBrain #CMU #NLP #SOTA #DL
Researchers at Google Brain and Carnegie Mellon introduce #XLNet, a pre-training algorithm for natural language processing systems. It helps NLP models (in this case, based on Transformer-XL) achieve state-of-the-art results in 18 diverse language-understanding tasks including question answering and sentiment analysis.
Article: https://towardsdatascience.com/what-is-xlnet-and-why-it-outperforms-bert-8d8fce710335
ArXiV: https://arxiv.org/pdf/1906.08237.pdf
#Google #GoogleBrain #CMU #NLP #SOTA #DL
ββUsing Deep Learning to Inform Differential Diagnoses of Skin Diseases
Deep Learning System (DLS) for quicker and cheaper skin diseases detection. DLS showed accuracy across 26 skin conditions on par with U.S. board-certified dermatologists, when presented with identical information about a patient case (images and metadata). This is an amazing example of how technology can help fight notoriously high medical bills in the USA and make top-level care available and more affordable in all other the world.
Link: https://ai.googleblog.com/2019/09/using-deep-learning-to-inform.html?m=1
ArXiV: https://arxiv.org/abs/1909.05382
#Inception4 #Google
Deep Learning System (DLS) for quicker and cheaper skin diseases detection. DLS showed accuracy across 26 skin conditions on par with U.S. board-certified dermatologists, when presented with identical information about a patient case (images and metadata). This is an amazing example of how technology can help fight notoriously high medical bills in the USA and make top-level care available and more affordable in all other the world.
Link: https://ai.googleblog.com/2019/09/using-deep-learning-to-inform.html?m=1
ArXiV: https://arxiv.org/abs/1909.05382
#Inception4 #Google
π₯ Tensorflow 2.0 release
Faster
TPU support
TensorFlow datasets
Change log: https://medium.com/tensorflow/tensorflow-2-0-is-now-available-57d706c2a9ab
#google #tensorflow #dl #tf
Faster
TPU support
TensorFlow datasets
Change log: https://medium.com/tensorflow/tensorflow-2-0-is-now-available-57d706c2a9ab
#google #tensorflow #dl #tf
Medium
TensorFlow 2.0 is now available!
Earlier this year, we announced TensorFlow 2.0 in alpha at the TensorFlow Dev Summit. Today, weβre delighted to announce that the finalβ¦