Artificial intelligence in neuropathology: deep learning-based assessment of tauopathy |
https://www.nature.com/articles/s41374-019-0202-4
#ai #pathology #medicine
https://www.nature.com/articles/s41374-019-0202-4
#ai #pathology #medicine
Laboratory Investigation
Artificial intelligence in neuropathology: deep learning-based assessment of tauopathy
Artificial intelligence in neuropathology: deep learning-based assessment of tauopathy
Lifelong GAN: Continual Learning for Conditional Image Generation
Zhai et al.: https://arxiv.org/abs/1907.10107
#deeplearning #generativemodels #GAN
Zhai et al.: https://arxiv.org/abs/1907.10107
#deeplearning #generativemodels #GAN
👌✊Learn, understand, and implement deep neural networks in a math- and programming-friendly approach using Keras and Python.
#AI #DeepLearning #TensorFlow https://bit.ly/2M44Ls7
#AI #DeepLearning #TensorFlow https://bit.ly/2M44Ls7
[#Tensorflow][#TensorflowDevSummit]
TensorBoard Hands On!
https://www.youtube.com/watch?v=eBbEDRsCmv4&t=1105s
Tensorflow Architecture
https://www.tensorflow.org/guide/extend/architecture
Tensorflow Dev Summit 2019
https://www.youtube.com/playlist?list=PLQY2H8rRoyvzoUYI26kHmKSJBedn3SQuB
Tensorflow Youtube Channel
https://www.youtube.com/channel/UC0rqucBdTuFTjJiefW5t-IQ/featured
Plenty of resources in the Google Channels. An advice is to learn according to the modelling. Have Fun.
TensorBoard Hands On!
https://www.youtube.com/watch?v=eBbEDRsCmv4&t=1105s
Tensorflow Architecture
https://www.tensorflow.org/guide/extend/architecture
Tensorflow Dev Summit 2019
https://www.youtube.com/playlist?list=PLQY2H8rRoyvzoUYI26kHmKSJBedn3SQuB
Tensorflow Youtube Channel
https://www.youtube.com/channel/UC0rqucBdTuFTjJiefW5t-IQ/featured
Plenty of resources in the Google Channels. An advice is to learn according to the modelling. Have Fun.
YouTube
Hands-on TensorBoard (TensorFlow Dev Summit 2017)
Join Dandelion Mané in this talk as they demonstrate all the amazing things you can do with TensorBoard. You'll learn how to visualize your TensorFlow graphs, monitor training performance, and explore how your models represent your data. The code examples…
The platform for Machine Learning methods dependencies 3D visualization
The project is available online: https://www.infornopolitan.xyz/backronym
For more information please read the Story: https://medium.com/@asadulaevarip/how-to-generate-ideas-in-machine-learning-bdb9a7267392
Work in progress, but I believe, together we can do it much better!
Support us: https://www.infornopolitan.xyz/support-project
The project is available online: https://www.infornopolitan.xyz/backronym
For more information please read the Story: https://medium.com/@asadulaevarip/how-to-generate-ideas-in-machine-learning-bdb9a7267392
Work in progress, but I believe, together we can do it much better!
Support us: https://www.infornopolitan.xyz/support-project
Medium
How to generate ideas in Machine Learning?
Little story about https://www.infornopolitan.xyz
CVPR
The best papers announced:
https://syncedreview.com/2019/06/18/cvpr-2019-attracts-9k-attendees-best-papers-announced-imagenet-honoured-10-years-later/
The best papers announced:
https://syncedreview.com/2019/06/18/cvpr-2019-attracts-9k-attendees-best-papers-announced-imagenet-honoured-10-years-later/
Synced
CVPR 2019 Attracts 9K Attendees; Best Papers Announced; ImageNet Honoured 10 Years Later
The 2019 IEEE Conference on Computer Vision and Pattern Recognition (CVPR) kicked off today in Long Beach, California. CVPR is one of the world’s top three academic conferences in the field of computer vision (along with ICCV and ECCV). A total of 1300 papers…
TabNine showed deep learning code autocomplete tool based on GPT-2 architecture.
Video demonstrates the concept. Hopefully, it will allow us to write code with less bugs, not more.
Link: https://tabnine.com/blog/deep
Something relatively similar by Microsoft: https://visualstudio.microsoft.com/ru/services/intellicode
#GPT2 #TabNine #autocomplete #product #NLP #NLU #codegeneration
Video demonstrates the concept. Hopefully, it will allow us to write code with less bugs, not more.
Link: https://tabnine.com/blog/deep
Something relatively similar by Microsoft: https://visualstudio.microsoft.com/ru/services/intellicode
#GPT2 #TabNine #autocomplete #product #NLP #NLU #codegeneration
How to Segment Buildings on Drone Imagery with Fast.ai & Cloud-Native GeoData Tools
Blog by Dave Luo : https://medium.com/@anthropoco/how-to-segment-buildings-on-drone-imagery-with-fast-ai-cloud-native-geodata-tools-ae249612c321
#DeepLearning #Geospatial #Drones #MachineLearning #Tutorial
Blog by Dave Luo : https://medium.com/@anthropoco/how-to-segment-buildings-on-drone-imagery-with-fast-ai-cloud-native-geodata-tools-ae249612c321
#DeepLearning #Geospatial #Drones #MachineLearning #Tutorial
Medium
How to Segment Buildings on Drone Imagery with Fast.ai & Cloud-Native GeoData Tools
An Interactive Intro to Geospatial Deep Learning on Google Colab
"Eidetic 3D LSTM: A Model for Video Prediction and Beyond"
Wang et al.: https://openreview.net/forum?id=B1lKS2AqtX
GitHub: https://github.com/metrofun/E3D-LSTM
#ArtificialIntelligence #DeepLearning #MachineLearning
Wang et al.: https://openreview.net/forum?id=B1lKS2AqtX
GitHub: https://github.com/metrofun/E3D-LSTM
#ArtificialIntelligence #DeepLearning #MachineLearning
OpenReview
Eidetic 3D LSTM: A Model for Video Prediction and Beyond
Spatiotemporal predictive learning, though long considered to be a promising self-supervised feature learning method, seldom shows its effectiveness beyond future video prediction. The reason is...
Lookahead Optimizer: k steps forward, 1 step back by Geoffrey Hinton, Michael R. Zhang, James Lucas, Jimmy Ba paper : arxiv.org/abs/1907.08610
Trading via Image Classification
Cohen et al.: https://arxiv.org/abs/1907.10046v1
#ArtificialIntelligence #DeepLearning #Trading
Cohen et al.: https://arxiv.org/abs/1907.10046v1
#ArtificialIntelligence #DeepLearning #Trading
Efficient Detection and Quantification of Timing Leaks with Neural Networks. arxiv.org/abs/1907.10159
Tensorpack
A Neural Net Training Interface on TensorFlow, with focus on speed + flexibility
GitHub: https://github.com/tensorpack/tensorpack
#tensorflow #reinforcementlearning #neuralnetworks https://t.iss.one/ArtificialIntelligenceArticles
A Neural Net Training Interface on TensorFlow, with focus on speed + flexibility
GitHub: https://github.com/tensorpack/tensorpack
#tensorflow #reinforcementlearning #neuralnetworks https://t.iss.one/ArtificialIntelligenceArticles
Pytorch-Transformers
A library of state-of-the-art pretrained models for Natural Language Processing (NLP)
By Hugging Face: https://huggingface.co/pytorch-transformers/
#naturallanguageprocessing #nlp #pytorch
A library of state-of-the-art pretrained models for Natural Language Processing (NLP)
By Hugging Face: https://huggingface.co/pytorch-transformers/
#naturallanguageprocessing #nlp #pytorch
GPU-Accelerated Atari Emulation for Reinforcement Learning"
Dalton et al.: https://arxiv.org/abs/1907.08467
#deeplearning #machinelearning #reinforcementlearning
Dalton et al.: https://arxiv.org/abs/1907.08467
#deeplearning #machinelearning #reinforcementlearning
3rd Workshop on Closing the Loop Between Vision and Language, October 28th, in conjunction with ICCV 2019 in Seoul, Korea
The scope of this workshop lies in the boundary of Computer Vision and Natural Language Processing. In recent years, there have been increasing interest in the intersection between Computer Vision and NLP. Researchers have studied a multitude of tasks, including generating textual descriptions from images and video, learning language embeddings of images and predicting visual classifiers from unstructured text. Recent work has extended the scope of this area to visual question answering, visual dialog, referring expression comprehension, vision-and-language navigation, embodied question answering and beyond.
In this workshop, we aim to provide a full day focused on these exciting research areas, helping to bolster the communication and share knowledge across tasks and approaches in this area, and provide a space to discuss the future and impact of Vision and Language technology. The workshop will also feature a new edition of the Large Scale Movie Description Challenge (details here), and the first VATEX challenge for Multilingual Video Captioning (details here).
Important dates:
------------------
Workshop paper submission deadline
Archival submissions: July 25, 2019
Non-archival submissions: September 15, 2019
Notification to authors
Archival submissions: August 15, 2019
Non-archival submissions: October 1, 2019
Camera ready deadline
Archival submissions (will be part of the proceedings): August 25, 2019
Non-archival submissions (will be posted online): October 15, 2019
Call for Papers:
----------------
We invite 4-page abstracts in ICCV format of new or previously published work addressing the topics outlined below. (For the previously published works re-formatting is not necessary.) We will make the accepted submissions available on our website as non-archival reports, and will also allow for novel submissions to appear in the ICCV workshop proceedings. The accepted works will be presented in the poster session and some will be selected for oral presentation. Topics of this workshop include but are not limited to (more details on our website):
Deep learning methods for vision and language
Established and novel problems in vision and language
Limitations of existing vision and language datasets and approaches
https://sites.google.com/site/iccv19clvllsmdc/important-dates
Workshop: October 28th, 2019
-----------------------------
Organizers:
Mohamed Elhoseiny, Assistant Professor, KAUST
Anna Rohrbach, Postdoctoral Scholar, UC Berkeley
Leonid Sigal, Associate Professor, University of British Columbia
Marcus Rohrbach, Research Scientist, Facebook AI Research
Xin Wang, PhD student, UC Santa Barbara
The scope of this workshop lies in the boundary of Computer Vision and Natural Language Processing. In recent years, there have been increasing interest in the intersection between Computer Vision and NLP. Researchers have studied a multitude of tasks, including generating textual descriptions from images and video, learning language embeddings of images and predicting visual classifiers from unstructured text. Recent work has extended the scope of this area to visual question answering, visual dialog, referring expression comprehension, vision-and-language navigation, embodied question answering and beyond.
In this workshop, we aim to provide a full day focused on these exciting research areas, helping to bolster the communication and share knowledge across tasks and approaches in this area, and provide a space to discuss the future and impact of Vision and Language technology. The workshop will also feature a new edition of the Large Scale Movie Description Challenge (details here), and the first VATEX challenge for Multilingual Video Captioning (details here).
Important dates:
------------------
Workshop paper submission deadline
Archival submissions: July 25, 2019
Non-archival submissions: September 15, 2019
Notification to authors
Archival submissions: August 15, 2019
Non-archival submissions: October 1, 2019
Camera ready deadline
Archival submissions (will be part of the proceedings): August 25, 2019
Non-archival submissions (will be posted online): October 15, 2019
Call for Papers:
----------------
We invite 4-page abstracts in ICCV format of new or previously published work addressing the topics outlined below. (For the previously published works re-formatting is not necessary.) We will make the accepted submissions available on our website as non-archival reports, and will also allow for novel submissions to appear in the ICCV workshop proceedings. The accepted works will be presented in the poster session and some will be selected for oral presentation. Topics of this workshop include but are not limited to (more details on our website):
Deep learning methods for vision and language
Established and novel problems in vision and language
Limitations of existing vision and language datasets and approaches
https://sites.google.com/site/iccv19clvllsmdc/important-dates
Workshop: October 28th, 2019
-----------------------------
Organizers:
Mohamed Elhoseiny, Assistant Professor, KAUST
Anna Rohrbach, Postdoctoral Scholar, UC Berkeley
Leonid Sigal, Associate Professor, University of British Columbia
Marcus Rohrbach, Research Scientist, Facebook AI Research
Xin Wang, PhD student, UC Santa Barbara