π»Basic-Mathematics-for-Machine-Learning
GitHub is home to over 40 million developers working together to host and review code, manage projects, and build software together.
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πVia: @cedeeplearning
https://github.com/hrnbot/Basic-Mathematics-for-Machine-Learning/blob/master/Cheat%20Sheet%20Suggested%20by%20Siraj%20Raval/Calculus%20Cheat%20Sheet.pdf
#machinelearning
#deeplearning
#neuralnetworks
GitHub is home to over 40 million developers working together to host and review code, manage projects, and build software together.
ββββββββββββββ
πVia: @cedeeplearning
https://github.com/hrnbot/Basic-Mathematics-for-Machine-Learning/blob/master/Cheat%20Sheet%20Suggested%20by%20Siraj%20Raval/Calculus%20Cheat%20Sheet.pdf
#machinelearning
#deeplearning
#neuralnetworks
GitHub
Basic-Mathematics-for-Machine-Learning/Cheat Sheet Suggested by Siraj Raval/Calculus Cheat Sheet.pdf at master Β· hrnbot/Basic-Mathematicsβ¦
The motive behind Creating this repo is to feel the fear of mathematics and do what ever you want to do in Machine Learning , Deep Learning and other fields of AI - hrnbot/Basic-Mathematics-for-Ma...
πΉMicrosoft Rolls Out π»Freeπ» AI Courses Geared Toward Business Leaders
Microsoft is releasing a new set of artificial intelligence courses geared toward business leaders. The free instructional videos and case studies focus on the less technical aspects of the technology as it applies to top execs attempting to integrate AI, including strategy, company culture and ethical responsibilities, into their operations.
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πVia: @cedeeplearning
https://www.adweek.com/digital/microsoft-rolls-out-free-ai-courses-geared-toward-business-leaders/amp/
#machinelearning
#deeplearning
#AI
#free
Microsoft is releasing a new set of artificial intelligence courses geared toward business leaders. The free instructional videos and case studies focus on the less technical aspects of the technology as it applies to top execs attempting to integrate AI, including strategy, company culture and ethical responsibilities, into their operations.
ββββββββββββββββ
πVia: @cedeeplearning
https://www.adweek.com/digital/microsoft-rolls-out-free-ai-courses-geared-toward-business-leaders/amp/
#machinelearning
#deeplearning
#AI
#free
Adweek
Microsoft Rolls Out Free AI Courses Geared Toward Business Leaders
Videos and case studies cover less technical aspects of the field
π’ 74 Summaries of Machine Learning and NLP Research
π you will find short summaries of a number of different research papers published in the areas of Machine Learning and Natural Language Processing in the past couple of years (2017-2019). They cover a wide range of different topics, authors and venues.
πhttp://www.marekrei.com/blog/74-summaries-of-machine-learning-and-nlp-research/
Via: @cedeeplearning π
π you will find short summaries of a number of different research papers published in the areas of Machine Learning and Natural Language Processing in the past couple of years (2017-2019). They cover a wide range of different topics, authors and venues.
πhttp://www.marekrei.com/blog/74-summaries-of-machine-learning-and-nlp-research/
Via: @cedeeplearning π
π Adapted Center and Scale Prediction: More Stable and More Accurate
π In order to enjoy the simplicity of anchor-free detectors and the accuracy of two-stage ones simultaneously, they have proposed some adaptations based on a detector, Center and Scale Prediction(CSP). The main contributions of their paper are:
1. Improve the robustness of CSP and make it easier to train.
2. Propose a novel method to predict width, namely compressing width.
3. Achieve the second best performance on CityPersons benchmark, i.e. 9.3% log-average miss rate(MR) on reasonable set, 8.7% MR on partial set and 5.6% MR on bare set, which shows an anchor-free and one-stage detector can still have high accuracy.
4. Explore some capabilities of Switchable Normalization which are not mentioned in its original paper.
Link: http://arxiv.org/abs/2002.09053
Via: @cedeeplearning π
π’ Other social media: https://linktr.ee/cedeeplearning
π In order to enjoy the simplicity of anchor-free detectors and the accuracy of two-stage ones simultaneously, they have proposed some adaptations based on a detector, Center and Scale Prediction(CSP). The main contributions of their paper are:
1. Improve the robustness of CSP and make it easier to train.
2. Propose a novel method to predict width, namely compressing width.
3. Achieve the second best performance on CityPersons benchmark, i.e. 9.3% log-average miss rate(MR) on reasonable set, 8.7% MR on partial set and 5.6% MR on bare set, which shows an anchor-free and one-stage detector can still have high accuracy.
4. Explore some capabilities of Switchable Normalization which are not mentioned in its original paper.
Link: http://arxiv.org/abs/2002.09053
Via: @cedeeplearning π
π’ Other social media: https://linktr.ee/cedeeplearning
Neural network architectures
Deep neural networks and Deep Learning are powerful and popular algorithms. And a lot of their success lays in the careful design of the neural network architecture.
https://towardsdatascience.com/neural-network-architectures-156e5bad51ba
Via: @cedeeplearning
Other social media: https://linktr.ee/cedeeplearning
Deep neural networks and Deep Learning are powerful and popular algorithms. And a lot of their success lays in the careful design of the neural network architecture.
https://towardsdatascience.com/neural-network-architectures-156e5bad51ba
Via: @cedeeplearning
Other social media: https://linktr.ee/cedeeplearning
Medium
Neural Network Architectures
Deep neural networks and Deep Learning are powerful and popular algorithms. And a lot of their success lays in the careful design of theβ¦
πProgressive Learning and Disentanglement of Hierarchical Representations
πpresent a strategy to progressively learn independent hierarchical representations from high- to low-levels of abstractions. The model starts with learning the most abstract representation, and then progressively grow the network architecture to introduce new representations at different levels of abstraction.
arXiv, Apr 3, 2020
Link: http://arxiv.org/abs/2002.10549
Via: @cedeeplearningπ
π’Other social media: https://linktr.ee/cedeeplearning
πpresent a strategy to progressively learn independent hierarchical representations from high- to low-levels of abstractions. The model starts with learning the most abstract representation, and then progressively grow the network architecture to introduce new representations at different levels of abstraction.
arXiv, Apr 3, 2020
Link: http://arxiv.org/abs/2002.10549
Via: @cedeeplearningπ
π’Other social media: https://linktr.ee/cedeeplearning
Machine Learning Mind Map
π This is an interactive chart. Click on the icons to go to a specific sub-field/section.
Straightforward A-Z explanation of ML algorithms with Python implementation and clearly explained math behind -
Link: thelearningmachine.ai/ml
Via: @cedeeplarningπ
π’ Other social media: https://linktr.ee/cedeeplearning
π This is an interactive chart. Click on the icons to go to a specific sub-field/section.
Straightforward A-Z explanation of ML algorithms with Python implementation and clearly explained math behind -
Link: thelearningmachine.ai/ml
Via: @cedeeplarningπ
π’ Other social media: https://linktr.ee/cedeeplearning
πΉMIT Deep Learning Basics: Introduction and Overview with TensorFlow
As part of the MIT Deep Learning series of lectures and GitHub tutorials, we are covering the basics of using neural networks to solve problems in computer vision, natural language processing, games, autonomous driving, robotics, and beyond.
πVia: @cedeeplearning
https://medium.com/tensorflow/mit-deep-learning-basics-introduction-and-overview-with-tensorflow-355bcd26baf0
#deeplearning
#neuralnetworks
#TensorFlow
#machinelearning
As part of the MIT Deep Learning series of lectures and GitHub tutorials, we are covering the basics of using neural networks to solve problems in computer vision, natural language processing, games, autonomous driving, robotics, and beyond.
πVia: @cedeeplearning
https://medium.com/tensorflow/mit-deep-learning-basics-introduction-and-overview-with-tensorflow-355bcd26baf0
#deeplearning
#neuralnetworks
#TensorFlow
#machinelearning
Medium
MIT Deep Learning Basics: Introduction and Overview with TensorFlow
As part of the MIT Deep Learning series of lectures and GitHub tutorials, we are covering the basics of using neural networks to solveβ¦
πΉOlympics Win Gold Medal For Big Data
Nearly 60 GB of information per second is expected to travel across British Telecomβs networks during the Olympic Games. Unsurprisingly social media has generated reams of content during the games. The estimated 845 million monthly active Facebook users are expected to be responsible for more than 15 terabytes of data each day, while Twitter is expecting over 13,000 tweets per second.
link: https://www.forbes.com/sites/netapp/2012/08/08/olympic-charter-big-data-airplane/#17ce8a38180f
πVia: @cedeeplearning
πOther Social Media: https://linktr.ee/cedeeplearning
#bigdata
#machinelearning
#datascience
Nearly 60 GB of information per second is expected to travel across British Telecomβs networks during the Olympic Games. Unsurprisingly social media has generated reams of content during the games. The estimated 845 million monthly active Facebook users are expected to be responsible for more than 15 terabytes of data each day, while Twitter is expecting over 13,000 tweets per second.
link: https://www.forbes.com/sites/netapp/2012/08/08/olympic-charter-big-data-airplane/#17ce8a38180f
πVia: @cedeeplearning
πOther Social Media: https://linktr.ee/cedeeplearning
#bigdata
#machinelearning
#datascience
π»Some points to visualizing your data
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
link: https://policyviz.com/2018/08/07/dataviz-cheatsheet/
#visualization
#bigdata
#machinelearning
#datascience
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
link: https://policyviz.com/2018/08/07/dataviz-cheatsheet/
#visualization
#bigdata
#machinelearning
#datascience
π»The 8 Data Science Skills
1. Programming Skills
2. Statistics
3. Machine Learning
4. Multivariable Calculus & Linear Algebra
5. Data Wrangling
6. Data Visualization & Communication
7. Software Engineering
8. Data Intuition
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
link: https://blog.udacity.com/2014/11/data-science-job-skills.html
#datascience
#bigdata
#skill
#machineleraning
1. Programming Skills
2. Statistics
3. Machine Learning
4. Multivariable Calculus & Linear Algebra
5. Data Wrangling
6. Data Visualization & Communication
7. Software Engineering
8. Data Intuition
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
link: https://blog.udacity.com/2014/11/data-science-job-skills.html
#datascience
#bigdata
#skill
#machineleraning
πStyleGAN2 Distillation for Feed-forward Image Manipulation
πA new way to distill a particular image manipulation of StyleGAN2 into image-to-image network trained in paired way. The resulting pipeline is an alternative to existing GANs, trained on unpaired data. They provide results of human faces' transformation: gender swap, aging/rejuvenation, style transfer and image morphing. The quality of generation using this method is comparable to StyleGAN2 backpropagation and current state-of-the-art methods in these particular tasks.
By Yandex.MILAB π 2020
π arxiv.org/abs/2003.03581
Via: @CEdeeplearning π
π’ Other social media handles: https://linktr.ee/cedeeplearning
πA new way to distill a particular image manipulation of StyleGAN2 into image-to-image network trained in paired way. The resulting pipeline is an alternative to existing GANs, trained on unpaired data. They provide results of human faces' transformation: gender swap, aging/rejuvenation, style transfer and image morphing. The quality of generation using this method is comparable to StyleGAN2 backpropagation and current state-of-the-art methods in these particular tasks.
By Yandex.MILAB π 2020
π arxiv.org/abs/2003.03581
Via: @CEdeeplearning π
π’ Other social media handles: https://linktr.ee/cedeeplearning
πΉDeep Learning vs. Machine Learning Models
One topic we find very interesting and will freely admit consumes much of our free time is machine learning. We devote considerable time to researching meaningful business-level topics related to AI, deep learning and machine learning.
If youβre unsure of the core differences between the two, this brief video by MATLAB gives an excellent quick and digestible overview.
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πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
π»link: https://youtu.be/-SgkLEuhfbg
#machinelearning
#deeplearning
#matlab
One topic we find very interesting and will freely admit consumes much of our free time is machine learning. We devote considerable time to researching meaningful business-level topics related to AI, deep learning and machine learning.
If youβre unsure of the core differences between the two, this brief video by MATLAB gives an excellent quick and digestible overview.
ββββββββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
π»link: https://youtu.be/-SgkLEuhfbg
#machinelearning
#deeplearning
#matlab
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πΉAchieving Digital Economies of Scale Via Machine Learning and Model Sequencing
As you deploy something as complex as machine learning, youβll often start the initial work of scoping initiative X, exploring data, surfacing various levels of insights or predictions and deploying the solution into the wild.
The types of βworkβ weβre talking about here could fall in the range of any of the following:
1. A specific set of data exploration protocols
2. An outlier that was discovered and that may apply to subsequent models
3. Specific features engineered for a given reason
4. A given team that properly and adequately ideates
5. Scopes and plans of a given initiative or model
6. Specific meta-data and semantic rules or data points that are cultivated and subsequently documented and disseminated across the proper channels and teams throughout an organization
βββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
Credit: https://www.rocketsource.co/blog/machine-learning-model
As you deploy something as complex as machine learning, youβll often start the initial work of scoping initiative X, exploring data, surfacing various levels of insights or predictions and deploying the solution into the wild.
The types of βworkβ weβre talking about here could fall in the range of any of the following:
1. A specific set of data exploration protocols
2. An outlier that was discovered and that may apply to subsequent models
3. Specific features engineered for a given reason
4. A given team that properly and adequately ideates
5. Scopes and plans of a given initiative or model
6. Specific meta-data and semantic rules or data points that are cultivated and subsequently documented and disseminated across the proper channels and teams throughout an organization
βββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
Credit: https://www.rocketsource.co/blog/machine-learning-model
πΉThe Span of Influence in Machine Learning Models
Each player here is an expert in his own right, he must know what the other influencers in the machine learning model need to succeed. Youβve likely heard us talk about the importance of V-Shaped Teams in the past when discussing the concept of skilling up your team members in areas outside of their immediate expertise. The same concept applies here. Peripheral skills matter a lot because your team cannot successfully build and leverage machine learning models if theyβre working in silos.
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πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
Link: https://www.rocketsource.co/blog/machine-learning-models/
#machinelearning
#deeplearning
#datascience
Each player here is an expert in his own right, he must know what the other influencers in the machine learning model need to succeed. Youβve likely heard us talk about the importance of V-Shaped Teams in the past when discussing the concept of skilling up your team members in areas outside of their immediate expertise. The same concept applies here. Peripheral skills matter a lot because your team cannot successfully build and leverage machine learning models if theyβre working in silos.
ββββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
Link: https://www.rocketsource.co/blog/machine-learning-models/
#machinelearning
#deeplearning
#datascience
π Automating Botnet Detection with Graph Neural Networks
π’ Botnets are a major source for many network attacks, such as DDoS attacks and spam
(Submitted on 13 Mar 2020)
https://arxiv.org/abs/2003.06344?utm_content=buffer8e745&utm_medium=social&utm_source=twitter.com&utm_campaign=buffer
Via: @cedeeplearning
Other social media: https://linktr.ee/cedeeplearning
π’ Botnets are a major source for many network attacks, such as DDoS attacks and spam
(Submitted on 13 Mar 2020)
https://arxiv.org/abs/2003.06344?utm_content=buffer8e745&utm_medium=social&utm_source=twitter.com&utm_campaign=buffer
Via: @cedeeplearning
Other social media: https://linktr.ee/cedeeplearning
πConfused by numerous resources and road-maps to start machine learning?
then this curated list is just for you! π
you will find a mostly complete road-map of topics and skills you need to learn
In this tutorial, getting started in ML is broken into 5 main steps and each of which has their sub-steps
Link
Via: @cedeeplearning π
ππOther social media handles: Instagram and facebook
then this curated list is just for you! π
you will find a mostly complete road-map of topics and skills you need to learn
In this tutorial, getting started in ML is broken into 5 main steps and each of which has their sub-steps
Link
Via: @cedeeplearning π
ππOther social media handles: Instagram and facebook
πΉResearchers composed new protein based on sonification using Deep Learning
Recently, an innovation came into being when researchers in the United States and Taiwan explored how to create new proteins by using machine learning to translate #protein structures into musical scores, presenting an unusual way to translate physics concepts across disparate domains, noted APL #Bioengineering.
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πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
https://www.analyticsinsight.net/researchers-composed-new-protein-based-sonification-using-deep-learning
#deeplearning
#machinelearning
#datascience
Recently, an innovation came into being when researchers in the United States and Taiwan explored how to create new proteins by using machine learning to translate #protein structures into musical scores, presenting an unusual way to translate physics concepts across disparate domains, noted APL #Bioengineering.
ββββββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
https://www.analyticsinsight.net/researchers-composed-new-protein-based-sonification-using-deep-learning
#deeplearning
#machinelearning
#datascience
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πΉDeep Learning technologies impacting computer vision advances
A significant focus of study in the field of computer vision is on systems to recognize and remove highlights from digital pictures. Extracted features context for inference about an image, and often the more extravagant the highlights, the better the derivation.
Until not long ago, facial recognition was an awkward and costly innovation constrained to police research labs. However, as of late, because of advances in #computer_vision #algorithms, #facial_recognition has discovered its way into different computing gadgets.
ββββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
link: https://www.analyticsinsight.net/deep-learning-technologies-impacting-computer-vision-advances/
#deeplearning
#neuralnetworks
#machinelearning
A significant focus of study in the field of computer vision is on systems to recognize and remove highlights from digital pictures. Extracted features context for inference about an image, and often the more extravagant the highlights, the better the derivation.
Until not long ago, facial recognition was an awkward and costly innovation constrained to police research labs. However, as of late, because of advances in #computer_vision #algorithms, #facial_recognition has discovered its way into different computing gadgets.
ββββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
link: https://www.analyticsinsight.net/deep-learning-technologies-impacting-computer-vision-advances/
#deeplearning
#neuralnetworks
#machinelearning
π»Unlocking potentials of NLP to fight against COVID-19 crisis
DAMOβs existing model has already been deployed widely in Alibabaβs ecosystem, powering its customer-service AI chatbot and the search engine on Alibabaβs retail platforms, as well as anonymous healthcare data analysis. The model was used in the text analysis of medical records and epidemiological investigation by CDCs in different cities in China for fighting against #COVID-19.
βββββββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
https://www.analyticsinsight.net/unlocking-potentials-nlp-fight-covid-19-crisis/
#machinelearning
#deeplearning
#neuralnetworks
#NLP
DAMOβs existing model has already been deployed widely in Alibabaβs ecosystem, powering its customer-service AI chatbot and the search engine on Alibabaβs retail platforms, as well as anonymous healthcare data analysis. The model was used in the text analysis of medical records and epidemiological investigation by CDCs in different cities in China for fighting against #COVID-19.
βββββββββββββββββ
πVia: @cedeeplearning
πOther social media: https://linktr.ee/cedeeplearning
https://www.analyticsinsight.net/unlocking-potentials-nlp-fight-covid-19-crisis/
#machinelearning
#deeplearning
#neuralnetworks
#NLP
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