Cutting Edge Deep Learning
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πŸ“• Deep learning
πŸ“— Reinforcement learning
πŸ“˜ Machine learning
πŸ“™ Papers - tools - tutorials

πŸ”— Other Social Media Handles:
https://linktr.ee/cedeeplearning
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βšͺ️Basics of Neural Network Programming

βœ’οΈ by prof. Andrew Ng
πŸ”ΉSource: Coursera

πŸ”– Lecture 4 Binary Classification

Neural Networks and Deep Learning
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πŸ“ŒVia: @cedeeplearning
πŸ“ŒOther social media: https://linktr.ee/cedeeplearning

#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #binary
FineGym: A Hierarchical Video Dataset for Fine-grained Action Understanding
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@cedeeplearning
πŸ”» Learning to Smell: Using Deep Learning to Predict the Olfactory Properties of Molecules

πŸ”ΉSmell is a sense shared by an incredible range of living organisms, and plays a critical role in how they analyze and react to the world. For humans, our sense of smell is tied to our ability to enjoy food and can also trigger vivid memories.

πŸ”ΉIn β€œMachine Learning for Scent: Learning Generalizable Perceptual Representations of Small Molecules”, we leverage graph neural networks (GNNs), a kind of deep neural network designed to operate on graphs as input, to directly predict the odor descriptors for individual molecules, without using any handcrafted rules.
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πŸ“ŒVia: @cedeeplearning

https://ai.googleblog.com/2019/10/learning-to-smell-using-deep-learning.html

#deeplearning #neuralnetworks
#GNN #graph #network #machinelearning
πŸ”»Quantum Supremacy Using a Programmable #Superconducting #Processor

πŸ”ΉPhysicists have been talking about the power of quantum computing for over 30 years, but the questions have always been: will it ever do something useful and is it worth investing in? For such large-scale endeavors it is good engineering practice to formulate decisive short-term goals that demonstrate whether the designs are going in the right direction.

πŸ”ΉToday we published the results of this quantum supremacy experiment in the Nature article, β€œQuantum Supremacy Using a Programmable Superconducting Processor”. We developed a new 54-qubit processor, named β€œSycamore”, that is comprised of fast, high-fidelity quantum logic gates, in order to perform the benchmark testing.
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πŸ“ŒVia: @cedeeplearning

https://ai.googleblog.com/2019/10/quantum-supremacy-using-programmable.html

#quantomcomputing #deeplearning
#machinelearning #neuralnetworks
#AI #sycamore #hardware
πŸ“ Machine Learning Resume Sample: how to build a strong ML Resume

πŸ”»Tips to make machine learning resume
πŸ”»What are the must-have skills for an AI resume
πŸ”»Common skills that employers look for on an ML Resume
πŸ”»How to master programming languages
πŸ”»Creating your Machine Learning Resume
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πŸ“ŒVia: @cedeeplearning

https://www.mygreatlearning.com/blog/5-must-haves-machine-learning-resume/#tips

#resume #machinelearning
#datascience #skill #AI
#python #programming
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βšͺ️Basics of Neural Network Programming

βœ’οΈ by prof. Andrew Ng
πŸ”ΉSource: Coursera

πŸ”– Lecture 5 Derivatives

Neural Networks and Deep Learning
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πŸ“ŒVia: @cedeeplearning
πŸ“ŒOther social media: https://linktr.ee/cedeeplearning

#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #binary
πŸ”— Build your Own Object Detection Model using #TensorFlow API

πŸ”»The World of Object Detection

πŸ”ΉOne of my favorite computer vision and deep learning concepts is object detection. The ability to build a model that can go through images and tell me what objects are present – it’s a priceless feeling!

πŸ‘ Nice reading article
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πŸ“ŒVia: @cedeeplearning

https://www.analyticsvidhya.com/blog/2020/04/build-your-own-object-detection-model-using-tensorflow-api/

#object_detection
#imagedetection
#deeplearning #computervision
#AI #machinelearning
#neuralnetworks
πŸ“—13 β€˜Must-Read’ Papers from AI Experts

1. Learning to Reinforcement Learn (2016) - Jane X Wang et al

2. Gradient-based Hyperparameter Optimization through Reversible Learning (2015) - Dougal Maclaurin

3. Long Short-Term Memory (1997) - Sepp Hochreiter and JΓΌrgen Schmidhuber

4. Efficient Incremental Learning for Mobile Object Detection (2019) - Dawei Li et al

5. Emergent Tool Use From Multi-Agent Autocurricula (2019) - Bowen Baker et al

6. Open-endedness: The last grand challenge you’ve never heard of (2017) - Kenneth Stanley et al

7. Attention Is All You Need (2017) - Ashish Vaswani et al

8. Modeling yield response to crop management using convolutional neural networks (2020) - Andre Barbosa et al.

9. A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis (2019) - Xiaoxuan Liu et al

10. The Next Decade in AI: Four Steps Towards Robust Artificial Intelligence (2020) - Gary Marcus

11. On the Measure of Intelligence (2019) - FranΓ§ois Chollet

12. Tackling climate change with Machine Learning (2019) - David Rolnick, Priya L Donti, Yoshua Bengio et al.

13. The Netflix Recommender System: Algorithms, Business Value, and Innovation (2015) - Carlos Gomez-Uribe & Neil Hunt.
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πŸ“ŒVia: @cedeeplearning

https://blog.re-work.co/ai-papers-suggested-by-experts/
#paper #resource #free #AI
#machinelearning #datascience
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βšͺ️Basics of Neural Network Programming

βœ’οΈ by prof. Andrew Ng
πŸ”ΉSource: Coursera

πŸ”– Lecture 6 Gradient Descent

Neural Networks and Deep Learning
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πŸ“ŒVia: @cedeeplearning
πŸ“ŒOther social media: https://linktr.ee/cedeeplearning

#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #gradient
πŸ”ΉJump-start Training for #Speech_Recognition Models in Different Languages with NVIDIA NeMo

πŸ–ŠBy Oleksii Kuchaiev

Transfer learning is an important machine learning technique that uses a model’s knowledge of one task to make it perform better on another. Fine-tuning is one of the techniques to perform transfer learning.
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πŸ“ŒVia: @cedeeplearning

https://devblogs.nvidia.com/jump-start-training-for-speech-recognition-models-with-nemo/

#deeplearning #neuralnetworks
#machinelearning #NVIDIA
#AI #datascience #math
#nemo #model #data
πŸ”ΉAnnouncing NVIDIA NeMo: Fast Development of Speech and Language Models

πŸ–ŠBy Raghav Mani

πŸ”»The inputs and outputs, coding style, and data processing layers in these models may not be compatible with each other. Worse still, you may be able to wire up these models in your code in such a way that it technically β€œworks” but is in fact semantically wrong. A lot of time, effort, and duplicated code goes into making sure that you are reusing models safely.

πŸ”»Build a simple ASR model to see how to use NeMo. You see how neural types provide semantic safety checks, and how the tool can scale out to multiple GPUs with minimal effort.
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πŸ“ŒVia: @cedeeplearning

https://devblogs.nvidia.com/announcing-nemo-fast-development-of-speech-and-language-models/

#deeplearning #neuralnetworks
#machinelearning #NVIDIA
#AI #datascience #math
#nemo #model #data
πŸ”Ήβš™οΈ Everything about NVIDIA Deep Learning

Nvidia Deep Learning AI lets users pull insights from big data. This lets them realize their true value by utilizing them in creating solutions for current and forecasted problems. This allows them to arm themselves with the knowledge that can prove to be instrumental at a time when a challenge arises.

1. What is Nvidia Deep Learning AI?
2. Nvidia Deep Learning AI benefits
3. Overview of Nvidia Deep Learning AI features
4. Nvidia Deep Learning AI pricing
5. User satisfaction
6. Video
7. Technical details
8. Support details
9. User reviews
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πŸ“ŒVia: @cedeeplearning

https://reviews.financesonline.com/p/nvidia-deep-learning-ai/

#deeplearning #NVIDIA
#machinelearning
#bigdata #analytics
#neuralnetworks
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βšͺ️Basics of Neural Network Programming

βœ’οΈ by prof. Andrew Ng
πŸ”ΉSource: Coursera

Lecture 7 Logistic Regression Cost Function

Neural Networks and Deep Learning
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πŸ“ŒVia: @cedeeplearning
πŸ“ŒOther social media: https://linktr.ee/cedeeplearning

#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #logistic_regression
#regression
πŸ“• State of Deep Reinforcement Learning: Inferring future outlook

Today machines can teach themselves based upon the results of their own actions. This advancement in Artificial Intelligence seems like a promising technology through which we can explore more innovative potentials of AI. The process is termed as deep reinforcement learning.

πŸ”»What Future Holds for Deep Reinforcement Learning?

Experts believe that deep reinforcement learning is at the cutting-edge right now and it has finally reached a to be applied in real-world applications. They also believe that moving it will have a great impact on AI advancement and can eventually researchers closer to Artificial General Intelligence (AGI).
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πŸ“ŒVia: @cedeeplearning

https://www.analyticsinsight.net/state-deep-reinforcement-learning-inferring-future-outlook/

#deeplearning #AI #AGI
#reinforcement #math
#datascience #machinelearning
Data Mining Methods for Recommender Systems.pdf
481 KB
πŸ“• Data Mining Methods for Recommender Systems

βœ’οΈ by Xavier Amatriain
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πŸ“ŒVia: @cedeeplearning

#datamining #recommendersystems
#clustering #classification #regression
#machinelearning #datascience
⭕️ Top 10 machine learning startups of 2020

βœ’οΈ by Priya Dialani

πŸŒ€ As per #Crunchbase, there are 8,705 startups and organizations today depending on AI and machine learning for their essential applications, products, and services. Practically 83% of AI and machine learning startups that Crunchbase tracks, had just three or fewer funding rounds, the most well-known being seed rounds, angel rounds, and early-stage rounds.

1. Alation
2. Graphcore
3. AI.reverie
4. DataRobot
5. Anodot
6. Viz.ai
7. FogHorn
8. Jus Mundi
9. Rosetta.ai
10. Folio3
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πŸ“ŒVia: @cedeeplearning

link: https://www.analyticsinsight.net/top-10-machine-learning-startups-of-2020/

#machinelearning #AI
#datascience #starutp
#technology #hightech
#deeplearning #neuralnetworks
πŸ“• Automated Machine Learning: The Free eBook

βœ’οΈ By Matthew Mayo

There is a lot to learn about automated machine learning theory and practice. This free eBook can get you started the right way.

The book's table of contents is as follows:

Part I: AutoML Methods
1. Hyperparameter Optimization
2. Meta-Learning
3. Neural Architecture Search

Part II: AutoML Systems
4. Auto-WEKA: Automatic Model Selection and Hyperparameter Optimization in WEKA
5. Hyperopt-Sklearn
6. Auto-sklearn: Efficient and Robust Automated Machine Learning
7. Towards Automatically-Tuned Deep Neural Networks
8. TPOT: A Tree-Based Pipeline Optimization Tool for Automating Machine Learning
9. The Automatic Statistician

Part III: AutoML Challenges
10. Analysis of the AutoML Challenge Series 2015–2018
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πŸ“ŒVia: @cedeeplearning

https://www.kdnuggets.com/2020/05/automated-machine-learning-free-ebook.html

#automl #machinelearning
#automated_ML #free #ebook
⭕️ Top 6 Open Source Pre-trained Models for Text Classification you should use

1. XLNet
2. ERNIE
3. Text-to-Text Transfer Transformer (T5)
4. Binary - Partitioning Transformation (BPT)
5. Neural Attentive Bag-of-Entities Model for Text Classification (NABoE)
6. Rethinking Complex Neural Network Architectures for Document Classification
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πŸ“ŒVia: @cedeeplearning


https://www.analyticsvidhya.com/blog/2020/03/6-pretrained-models-text-classification/

#classification #machinelearning
#datascience #model #training
#deeplearning #dataset #neuralnetworks
#NLP #math #AI
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βšͺ️ Basics of Neural Network Programming

βœ’οΈ by prof. Andrew Ng
πŸ”ΉSource: Coursera

πŸ”– Lecture 8 More Derivative Examples

Neural Networks and Deep Learning
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πŸ“ŒVia: @cedeeplearning
πŸ“ŒOther social media: https://linktr.ee/cedeeplearning

#DeepLearning #NeuralNeworks
#machinelearning #AI #coursera
#free #python #supervised_learning
#classification #logistic_regression
#regression