Awesome List Updates on Feb 14, 2017
7 awesome lists updated today.
🏠 Home · 🔍 Search · 🔥 Feed · 📮 Subscribe · ❤️ Sponsor
1. Awesome Remote Job
Companies with "remote DNA"
- Deeson - UK-based with European team. Digital agency specialising in Drupal, Symfony and Laravel
2. Awesome Hacking Locations
United Kingdom 🇬🇧 / England
Denizli HS
A Hackerspace spot.
Webpage: http://www.denizlihs.org/
Wifi | Power | Address | Open Hours |
---|---|---|---|
✔ | ✔ | Çamlaraltı Mah. Hüseyin Yılmaz Cad. No:67 Pamukkale/Denizli | 24/7 |
3. Awesome Elixir
REST and API
- plug_rest (⭐54) - REST behaviour and Plug router for hypermedia web applications.
Validations
- jeaux (⭐13) - A light and easy schema validator.
4. Awesome Dev Fun
PHP
- Phpunit VW (⭐1.7k) - VW makes failing test cases succeed in continuous integration tools.
CLI
- lolcat (⭐5.2k) - Rainbows and unicorns!
5. Awesome Android
Cloud Services
- CloudRail - Unified API Library for: Cloud Storage, Social Profiles, Payment, Email, SMS & POIs.
Dependency Injection
- ActivityStarter (⭐428) - Android Library that provide simpler way to start the Activities with multiple arguments.
6. Awesome Deep Learning Papers
Awesome list criteria
- A list of top 100 deep learning papers published from 2012 to 2016 is suggested.
- If a paper is added to the list, another paper (usually from *More Papers from 2016" section) should be removed to keep top 100 papers. (Thus, removing papers is also important contributions as well as adding papers)
- Please refer to New Papers and Old Papers sections for the papers published in recent 6 months or before 2012.
- < 6 months : New Papers (by discussion)
- 2016 : +60 citations or "More Papers from 2016"
- 2012 : +800 citations
- ~2012 : Old Papers (by discussion)
Contents / Understanding / Generalization / Transfer
- Distilling the knowledge in a neural network (2015), G. Hinton et al. [pdf]
- Deep neural networks are easily fooled: High confidence predictions for unrecognizable images (2015), A. Nguyen et al. [pdf]
- How transferable are features in deep neural networks? (2014), J. Yosinski et al. [pdf]
- Learning and transferring mid-Level image representations using convolutional neural networks (2014), M. Oquab et al. [pdf]
Contents / Optimization / Training Techniques
- Batch normalization: Accelerating deep network training by reducing internal covariate shift (2015), S. Loffe and C. Szegedy [pdf]
- Adam: A method for stochastic optimization (2014), D. Kingma and J. Ba [pdf]
- Improving neural networks by preventing co-adaptation of feature detectors (2012), G. Hinton et al. [pdf]
- Random search for hyper-parameter optimization (2012) J. Bergstra and Y. Bengio [pdf]
Contents / Unsupervised / Generative Models
- Pixel recurrent neural networks (2016), A. Oord et al. [pdf]
- Unsupervised representation learning with deep convolutional generative adversarial networks (2015), A. Radford et al. [pdf]
- DRAW: A recurrent neural network for image generation (2015), K. Gregor et al. [pdf]
- Generative adversarial nets (2014), I. Goodfellow et al. [pdf]
- Auto-encoding variational Bayes (2013), D. Kingma and M. Welling [pdf]
Contents / Convolutional Neural Network Models
- Rethinking the inception architecture for computer vision (2016), C. Szegedy et al. [pdf]
- Inception-v4, inception-resnet and the impact of residual connections on learning (2016), C. Szegedy et al. [pdf]
- Identity Mappings in Deep Residual Networks (2016), K. He et al. [pdf]
- OverFeat: Integrated recognition, localization and detection using convolutional networks (2013), P. Sermanet et al. [pdf]
- Maxout networks (2013), I. Goodfellow et al. [pdf]
- Network in network (2013), M. Lin et al. [pdf]
Contents / Image: Segmentation / Object Detection
- You only look once: Unified, real-time object detection (2016), J. Redmon et al. [pdf]
- Fast R-CNN (2015), R. Girshick [pdf]
- Semantic image segmentation with deep convolutional nets and fully connected CRFs, L. Chen et al. [pdf]
Contents / Appendix: More than Top 100
- Learning Hierarchical Features for Scene Labeling (2013), C. Farabet et al. [pdf]
- Weakly supervised object localization with multi-fold multiple instance learning (2017), R. Gokberk et al. [pdf]
- Brain tumor segmentation with deep neural networks (2017), M. Havaei et al. [pdf]
- Understanding convolutional neural networks (2016), J. Koushik [pdf]
- Taking the human out of the loop: A review of bayesian optimization (2016), B. Shahriari et al. [pdf]
- Adaptive computation time for recurrent neural networks (2016), A. Graves [pdf]
- Densely connected convolutional networks (2016), G. Huang et al. [pdf]
- Continuous deep q-learning with model-based acceleration (2016), S. Gu et al. [pdf]
- A thorough examination of the cnn/daily mail reading comprehension task (2016), D. Chen et al. [pdf]
- Achieving open vocabulary neural machine translation with hybrid word-character models, M. Luong and C. Manning. [pdf]
- Very Deep Convolutional Networks for Natural Language Processing (2016), A. Conneau et al. [pdf]
- Bag of tricks for efficient text classification (2016), A. Joulin et al. [pdf]
- Efficient piecewise training of deep structured models for semantic segmentation (2016), G. Lin et al. [pdf]
- Learning to compose neural networks for question answering (2016), J. Andreas et al. [pdf]
- Perceptual losses for real-time style transfer and super-resolution (2016), J. Johnson et al. [pdf]
- Reading text in the wild with convolutional neural networks (2016), M. Jaderberg et al. [pdf]
- Inside-outside net: Detecting objects in context with skip pooling and recurrent neural networks (2016), S. Bell et al. [pdf].
- Instance-aware semantic segmentation via multi-task network cascades (2016), J. Dai et al. [pdf]
- Conditional image generation with pixelcnn decoders (2016), A. van den Oord et al. [pdf]
- Deep networks with stochastic depth (2016), G. Huang et al., [pdf]
- Ask your neurons: A neural-based approach to answering questions about images (2015), M. Malinowski et al. [pdf]
- Exploring models and data for image question answering (2015), M. Ren et al. [pdf]
- Are you talking to a machine? dataset and methods for multilingual image question (2015), H. Gao et al. [pdf]
- Mind's eye: A recurrent visual representation for image caption generation (2015), X. Chen and C. Zitnick. [pdf]
- From captions to visual concepts and back (2015), H. Fang et al. [pdf].
- Ask me anything: Dynamic memory networks for natural language processing (2015), A. Kumar et al. [pdf]
- Unsupervised learning of video representations using LSTMs (2015), N. Srivastava et al. [pdf]
- Deep compression: Compressing deep neural networks with pruning, trained quantization and huffman coding (2015), S. Han et al. [pdf]
- Improved semantic representations from tree-structured long short-term memory networks (2015), K. Tai et al. [pdf]
- Character-aware neural language models (2015), Y. Kim et al. [pdf]
- Grammar as a foreign language (2015), O. Vinyals et al. [pdf]
- Learning Deconvolution Network for Semantic Segmentation (2015), H. Noh et al. [pdf]
- Learning spatiotemporal features with 3d convolutional networks (2015), D. Tran et al. [pdf]
- Understanding neural networks through deep visualization (2015), J. Yosinski et al. [pdf]
- An Empirical Exploration of Recurrent Network Architectures (2015), R. Jozefowicz et al. [pdf]
- Deep generative image models using a laplacian pyramid of adversarial networks (2015), E.Denton et al. [pdf]
- Gated Feedback Recurrent Neural Networks (2015), J. Chung et al. [pdf]
- Fast and accurate deep network learning by exponential linear units (ELUS) (2015), D. Clevert et al. [pdf]
- Pointer networks (2015), O. Vinyals et al. [pdf]
- Visualizing and Understanding Recurrent Networks (2015), A. Karpathy et al. [pdf]
- Attention-based models for speech recognition (2015), J. Chorowski et al. [pdf]
- End-to-end memory networks (2015), S. Sukbaatar et al. [pdf]
- Describing videos by exploiting temporal structure (2015), L. Yao et al. [pdf]
- A neural conversational model (2015), O. Vinyals and Q. Le. [pdf]
- Learning a Deep Convolutional Network for Image Super-Resolution (2014, C. Dong et al. [pdf]
- Recurrent models of visual attention (2014), V. Mnih et al. [pdf]
- Empirical evaluation of gated recurrent neural networks on sequence modeling (2014), J. Chung et al. [pdf]
- Addressing the rare word problem in neural machine translation (2014), M. Luong et al. [pdf]
- On the properties of neural machine translation: Encoder-decoder approaches (2014), K. Cho et. al.
- Recurrent neural network regularization (2014), W. Zaremba et al. [pdf]
- Intriguing properties of neural networks (2014), C. Szegedy et al. [pdf]
- Towards end-to-end speech recognition with recurrent neural networks (2014), A. Graves and N. Jaitly. [pdf]
- Scalable object detection using deep neural networks (2014), D. Erhan et al. [pdf]
- On the importance of initialization and momentum in deep learning (2013), I. Sutskever et al. [pdf]
- Regularization of neural networks using dropconnect (2013), L. Wan et al. [pdf]
- Linguistic Regularities in Continuous Space Word Representations (2013), T. Mikolov et al. [pdf]
Contents / Image / Video / Etc
- Image Super-Resolution Using Deep Convolutional Networks (2016), C. Dong et al. [pdf]
- A neural algorithm of artistic style (2015), L. Gatys et al. [pdf]
- VQA: Visual question answering (2015), S. Antol et al. [pdf]
- DeepFace: Closing the gap to human-level performance in face verification (2014), Y. Taigman et al. [pdf]:
- Two-stream convolutional networks for action recognition in videos (2014), K. Simonyan et al. [pdf]
- 3D convolutional neural networks for human action recognition (2013), S. Ji et al. [pdf]
Contents / Natural Language Processing / RNNs
- Exploring the limits of language modeling (2016), R. Jozefowicz et al. [pdf]
- Teaching machines to read and comprehend (2015), K. Hermann et al. [pdf]
- Effective approaches to attention-based neural machine translation (2015), M. Luong et al. [pdf]
- Learning phrase representations using RNN encoder-decoder for statistical machine translation (2014), K. Cho et al. [pdf]
- Convolutional neural networks for sentence classification (2014), Y. Kim [pdf]
- Distributed representations of words and phrases and their compositionality (2013), T. Mikolov et al. [pdf]
Contents / Speech / Other Domain
- End-to-end attention-based large vocabulary speech recognition (2016), D. Bahdanau et al. [pdf]
- Speech recognition with deep recurrent neural networks (2013), A. Graves [pdf]
- Acoustic modeling using deep belief networks (2012), A. Mohamed et al. [pdf]
Contents / Reinforcement Learning / Robotics
- Learning Hand-Eye Coordination for Robotic Grasping with Deep Learning and Large-Scale Data Collection (2016), S. Levine et al. [pdf]
- Asynchronous methods for deep reinforcement learning (2016), V. Mnih et al. [pdf]
- Continuous control with deep reinforcement learning (2015), T. Lillicrap et al. [pdf]
- Deep learning for detecting robotic grasps (2015), I. Lenz et al. [pdf]
- Playing atari with deep reinforcement learning (2013), V. Mnih et al. [pdf])
Contents / More Papers from 2016
- Layer Normalization (2016), J. Ba et al. [pdf]
- Learning to learn by gradient descent by gradient descent (2016), M. Andrychowicz et al. [pdf]
- Domain-adversarial training of neural networks (2016), Y. Ganin et al. [pdf]
- Generative visual manipulation on the natural image manifold (2016), J. Zhu et al. [pdf]
- Texture networks: Feed-forward synthesis of textures and stylized images (2016), D Ulyanov et al. [pdf]
- SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and< 1MB model size (2016), F. Iandola et al. [pdf]
- Eie: Efficient inference engine on compressed deep neural network (2016), S. Han et al. [pdf]
- Binarized neural networks: Training deep neural networks with weights and activations constrained to+ 1 or-1 (2016), M. Courbariaux et al. [pdf]
- Dynamic memory networks for visual and textual question answering (2016), C. Xiong et al. [pdf]
- Stacked attention networks for image question answering (2016), Z. Yang et al. [pdf]
- Hybrid computing using a neural network with dynamic external memory (2016), A. Graves et al. [pdf]
Contents / Old Papers
- An analysis of single-layer networks in unsupervised feature learning (2011), A. Coates et al. [pdf]
- Deep sparse rectifier neural networks (2011), X. Glorot et al. [pdf]
- Recurrent neural network based language model (2010), T. Mikolov et al. [pdf]
- Stacked denoising autoencoders: Learning useful representations in a deep network with a local denoising criterion (2010), P. Vincent et al. [pdf]
- Learning mid-level features for recognition (2010), Y. Boureau [pdf]
- A practical guide to training restricted boltzmann machines (2010), G. Hinton [pdf]
- Understanding the difficulty of training deep feedforward neural networks (2010), X. Glorot and Y. Bengio [pdf]
- Why does unsupervised pre-training help deep learning (2010), D. Erhan et al. [pdf]
- Learning deep architectures for AI (2009), Y. Bengio. [pdf]
- Convolutional deep belief networks for scalable unsupervised learning of hierarchical representations (2009), H. Lee et al. [pdf]
- Greedy layer-wise training of deep networks (2007), Y. Bengio et al. [pdf]
- Reducing the dimensionality of data with neural networks, G. Hinton and R. Salakhutdinov. [pdf]
- A fast learning algorithm for deep belief nets (2006), G. Hinton et al. [pdf]
- Gradient-based learning applied to document recognition (1998), Y. LeCun et al. [pdf]
- Long short-term memory (1997), S. Hochreiter and J. Schmidhuber. [pdf]
Contents / HW / SW / Dataset
- OpenAI gym (2016), G. Brockman et al. [pdf]
- MatConvNet: Convolutional neural networks for matlab (2015), A. Vedaldi and K. Lenc [pdf]
- Imagenet large scale visual recognition challenge (2015), O. Russakovsky et al. [pdf]
Contents / Book / Survey / Review
- Deep learning (Book, 2016), Goodfellow et al. [html]
- LSTM: A search space odyssey (2016), K. Greff et al. [pdf]
Contents / Video Lectures / Tutorials / Blogs
- CS231n, Convolutional Neural Networks for Visual Recognition, Stanford University [web]
- CS224d, Deep Learning for Natural Language Processing, Stanford University [web]
- NIPS 2016 Tutorials, Long Beach [web]
- ICML 2016 Tutorials, New York City [web]
- ICLR 2016 Videos, San Juan [web]
- Deep Learning Summer School 2016, Montreal [web]
- Bay Area Deep Learning School 2016, Stanford [web]
- Andrej Karpathy Blog [web]
- Colah's Blog [Web]
- WildML [Web]
- FastML [web]
7. Awesome Creative Coding
Videos
- The Coding Train - Daniel Shiffman makes videos about creative coding.
- Prev: Feb 15, 2017
- Next: Feb 13, 2017