Skip to content

πŸ“ Papers I read and notes/reviews I made. Also useful links to courses (RL/NLP/Bio/QC/DevOps)

Notifications You must be signed in to change notification settings

akarazeev/Papernotes

Folders and files

NameName
Last commit message
Last commit date

Latest commit

May 4, 2021
515a547 Β· May 4, 2021
Oct 21, 2019
May 28, 2019
May 4, 2021

Repository files navigation

2021-05

  • code2vec: Learning Distributed Representations of Code [YT]

2020-12

  • Machine Learning for a Better Developer Experience [Medium]
  • DSL Development with Xtext [vimeo]
  • Life of a Netflix Partner Engineer β€” The case of the extra 40 ms [Medium]
  • How to spin your scientific research out of a university and into a startup [YC]

2020-11

  • Adaptive correction of program statements [ACM]
  • Compiling techniques to exploit the pattern of language usage [link]
  • Natural information processing [link]

2020-10

  • NeuralQA: A Usable Library for Question Answering (Contextual Query Expansion + BERT) on Large Datasets [arXiv]
  • T2API: Synthesizing API Code Usage Templates from English Texts with Statistical Translation [ACM]
  • NLP2Code: Code Snippet Content Assist via Natural Language Tasks [arXiv]

2020-04

  • CheXpert: A Large Chest Radiograph Dataset with Uncertainty Labels and Expert Comparison [arXiv]
  • Self-Training for Biomedical Parsing [link]
  • How Will You Measure Your Life? [HBR]
  • Quantum Computing for Pattern Classification [arXiv]

2020-04

  • Mining Change Logs and Release Notes to Understand Software Maintenance and Evolution [ResearchGate]
  • Network In Network [arXiv]
  • ChestX-ray8: Hospital-scale Chest X-ray Database and Benchmarks on Weakly-Supervised Classification and Localization of Common Thorax Diseases [arXiv]
  • Deep learning on unseen data: introducing federated learning [link]
  • U-Net: Convolutional Networks for Biomedical Image Segmentation [arXiv] [Medium]
  • Consistent Individualized Feature Attribution for Tree Ensembles [arXiv]

2019-11

  • Practical DevOps for the busy Data Scientist [link]
  • Human-level control through deep reinforcement learning [nature]
  • Deep Reinforcement Learning that Matters (! with interesting Conclusion and Supplementary)[arXiv]
  • Self-Supervised Representation Learning [github.io]
  • Learning to Predict Without Looking Ahead: World Models Without Forward Prediction [github.io]
  • Demonstration of Machine Learning-Based Model-Independent Stabilization of Source Properties in Synchrotron Light Sources [PhysRevLet]
  • Accelerated Methods for Deep Reinforcement Learning [arXiv]
  • Reproducible Research is more than Publishing Research Artefacts: A Systematic Analysis of Jupyter Notebooks from Research Articles [arXiv]
  • Self-training with Noisy Student improves ImageNet classification [arXiv]
  • Putting An End to End-to-End: Gradient-Isolated Learning of Representations [arXiv]

2019-10

  • A Public Domain Dataset for Human Activity Recognition Using Smartphones [link] [dataset]
  • Human Activity Recognition on Smartphones with Awareness of Basic Activities and Postural Transitions [Springer, p. 177] [dataset]
  • ETSI GS Quantum Key Distribution (QKD); Application Interface [link]
  • Maximal Adaptive-Decision Speedups in Quantum-State Readout [APS]
  • Decision Making Photonics Solving Bandit Problems Using Photons [ResearchGate]
  • A Reinforcement Learning approach for Quantum State Engineering [arXiv]
  • Stable Baselines Tutorial [github.io]
  • Relay Policy Learning: Solving Long-Horizon Tasks via Imitation and Reinforcement Learning [github.io]
  • Semantic Versioning [link]
  • State representation in Reinforcement Learning [stackexchange]
  • Troubleshooting Deep Neural Networks [link]

2019-09

  • Architectural Principles for a Quantum Internet [IETF]
  • A Link Layer Protocol for Quantum Networks [arXiv]
  • A Neural Algorithm of Artistic Style [arXiv]

2019-08

2019-07

2019-04


2018-08

  • Learning hard quantum distributions with variational autoencoders [nature]
  • A fully programmable 100-spin coherent Ising machine with all-to-all connections [science]

2018-07

  • Neural-network quantum state tomography [nature]
  • Deep learning with coherent nanophotonic circuits [nature]

2018-06

  • Quantum Kitchen Sinks: An algorithm for machine learning on near-term quantum computers [arXiv]
  • Solving the Quantum Many-Body Problem with Artificial Neural Networks [arXiv]
  • QVECTOR: an algorithm for device-tailored quantum error correction [arXiv]

2018-04

  • A Quantum Approximate Optimization Algorithm [arXiv]
  • A variational eigenvalue solver on a quantum processor [arXiv]
  • Quantum principal component analysis [arXiv]
  • Quantum Artificial Life in an IBM Quantum Computer [nature]
  • A Software Methodology for Compiling Quantum Programs [arXiv]

NLP RL
2017 fall [Deep Learning in NLP] [Deep Reinforcement Learning]
2017 spring [Deep learning in NLP] -

2017-10

  • Policy Gradient Methods for Reinforcement Learning with Function Approximation [nips]

2017-09

2017-08

2017-07

  • {+} Annotated Chemical Patent Corpus: A Gold Standard for Text Mining [link]
  • Event-based text mining for biology and functional genomics [link]
  • OSCAR4: a flexible architecture for chemical text-mining [link]
  • Word Representations via Gaussian Embedding [arXiv]
  • Gaussian Mixture Embeddings for Multiple Word Prototypes [arXiv]
  • Multimodal Word Distributions [arXiv]

2017-06

  • Canonical Correlation Analysis For Classifying Baby Crying Sound Events [link]
  • Seq2seq-Attention Question Answering Model [link]

2017-05

  • Approximating the Kullback Leibler Divergence Between Gaussian Mixture Models [ResearchGate]
  • Attention Is All You Need [arXiv]

2017-04

2017-03

2017-02


NLP RL
2016 fall [Natural language processing] [Reinforcement learning]