PracticalAI: A practical approach to learning machine learning
By Goku Mohandas: https://lnkd.in/eyFbdCC
#machinelearning #naturallanguageprocessing #jupyter #python #pytorch
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By Goku Mohandas: https://lnkd.in/eyFbdCC
#machinelearning #naturallanguageprocessing #jupyter #python #pytorch
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Comixify: Transform video into a comics. They used a 2-stage approach: (a) frame selection and (b) style transfer. The results look pretty cool!
paper: https://lnkd.in/eszcexU
demo: https://lnkd.in/edrtfPd
test video: https://lnkd.in/ebWpPRD
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paper: https://lnkd.in/eszcexU
demo: https://lnkd.in/edrtfPd
test video: https://lnkd.in/ebWpPRD
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The AI art gallery from NeurIPS Creativity workshop
AI Art Gallery: http://aiartonline.com
#NeurIPS2018
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AI Art Gallery: http://aiartonline.com
#NeurIPS2018
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Media is too big
VIEW IN TELEGRAM
My 13-minute oral presentation at hashtag#NeurIPS2018 summarizing our world models paper. I felt like the weight of the world (model) was finally lifted off my shoulders after giving the talk.
article β https://lnkd.in/fa36JNH
paper β https://lnkd.in/gPjH_NJ
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article β https://lnkd.in/fa36JNH
paper β https://lnkd.in/gPjH_NJ
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A Programmerβs Introduction to Mathematics. It teaches someone with programming knowledge and experience how to engage with mathematics. Achieve this goal largely because of the implicit overlap in the content and ways of thinking between math and programming.
Until now. If youβre a programmer who wants to really grok math, this book is for you.
GitHub: Link
#Book #Ϊ©ΨͺΨ§Ψ¨
Download :
https://t.me/ai_python_en/190
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Until now. If youβre a programmer who wants to really grok math, this book is for you.
GitHub: Link
#Book #Ϊ©ΨͺΨ§Ψ¨
Download :
https://t.me/ai_python_en/190
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AI, Python, Cognitive Neuroscience
A Programmerβs Introduction to Mathematics. It teaches someone with programming knowledge and experience how to engage with mathematics. Achieve this goal largely because of the implicit overlap in the content and ways of thinking between math and programming.β¦
A Programmerβs Introduction to Mathematics.pdf
32.1 MB
Dr. Jeremy Kun:
A Programmerβs Introduction to Mathematics.
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A Programmerβs Introduction to Mathematics.
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Computer Vision problems are often solved using a Machine Learning approach. In Machine Learning, we learn from data.
What if you do not have enough data? Well, there is still some hope.
If you are able to segment your shape out, you can use Hu Moments for shape matching. These moments are invariant to translation, scale, and rotation and can identify the shape even if it has undergone those transformations.
You will learn about raw moments, central moments and Hu moments in our post today.
We also show how to use moments for matching shapes.
As always, we are sharing code in C++ and Python.
https://lnkd.in/eVk_J5M
#AI #MachineLearning #ComputerVision #OpenCV
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What if you do not have enough data? Well, there is still some hope.
If you are able to segment your shape out, you can use Hu Moments for shape matching. These moments are invariant to translation, scale, and rotation and can identify the shape even if it has undergone those transformations.
You will learn about raw moments, central moments and Hu moments in our post today.
We also show how to use moments for matching shapes.
As always, we are sharing code in C++ and Python.
https://lnkd.in/eVk_J5M
#AI #MachineLearning #ComputerVision #OpenCV
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How do I get a job in machine learning?
I get asked this question almost daily.
The short answer is "there's no one set path."
But this could fit with anything. And it isn't really helpful.
Here's what I would do if I was fired tomorrow.
π‘1. Get really good at whatever it is I decide to do (I'm working on this anyway)
Whatever field you want to get into, #machinelearning, #datascience, health, media, this is a given. You have to be good at what you do.
Not the best at one thing?
That's okay. Combine it with something else and become the best at the crossover.
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For me, my #coding skills were lacking, so I made it up for it through several different forms of communication (see point 2).
π€2. Communicate whatever it is I'm good at in a way people can understand
If you can #code but can't write practice writing.
I can't count the number of times I've found some brilliant code online but struggled to understand it because it hadn't been documented well.
Got a project you've worked on? (you should)
Share it. And share your thought process around each step. Why did you do that thing in part 3?
It's the Winston Churchill approach. He wasn't anywhere near the most qualified person for the role of Prime Minister. But he was the best at communicating what he knew. Because of this, the people put their trust in him. Then he backed it up by being good at what he did.
π3. Apply relentlessly
If I wasn't getting rejected once per week, I'd start applying more. And not just with a resumΓ©.
Someone told me their resumΓ© gets filtered. I'm not sure what a resumΓ© filter is but I'd find a way to get around it.
Plus, I'm not interested in somewhere that hires solely off the basis of an A4 sheet of paper.
I'd go out of my way to find who the best person would be to talk to. And then I'd find a problem they're having and fix it.
Will this work?
There's no guarantees. There's never a guarantee.
But what's the alternative?
To not be good at what you do?
Or to not communicate your skillset?
Or to not find the right person to talk to?
You already know the answer to these.
βοΈ @AI_Python
π£ @AI_Python_Arxiv
β΄οΈ @AI_Python_EN
I get asked this question almost daily.
The short answer is "there's no one set path."
But this could fit with anything. And it isn't really helpful.
Here's what I would do if I was fired tomorrow.
π‘1. Get really good at whatever it is I decide to do (I'm working on this anyway)
Whatever field you want to get into, #machinelearning, #datascience, health, media, this is a given. You have to be good at what you do.
Not the best at one thing?
That's okay. Combine it with something else and become the best at the crossover.
βοΈ @AI_Python
π£ @AI_Python_Arxiv
β΄οΈ @AI_Python_EN
For me, my #coding skills were lacking, so I made it up for it through several different forms of communication (see point 2).
π€2. Communicate whatever it is I'm good at in a way people can understand
If you can #code but can't write practice writing.
I can't count the number of times I've found some brilliant code online but struggled to understand it because it hadn't been documented well.
Got a project you've worked on? (you should)
Share it. And share your thought process around each step. Why did you do that thing in part 3?
It's the Winston Churchill approach. He wasn't anywhere near the most qualified person for the role of Prime Minister. But he was the best at communicating what he knew. Because of this, the people put their trust in him. Then he backed it up by being good at what he did.
π3. Apply relentlessly
If I wasn't getting rejected once per week, I'd start applying more. And not just with a resumΓ©.
Someone told me their resumΓ© gets filtered. I'm not sure what a resumΓ© filter is but I'd find a way to get around it.
Plus, I'm not interested in somewhere that hires solely off the basis of an A4 sheet of paper.
I'd go out of my way to find who the best person would be to talk to. And then I'd find a problem they're having and fix it.
Will this work?
There's no guarantees. There's never a guarantee.
But what's the alternative?
To not be good at what you do?
Or to not communicate your skillset?
Or to not find the right person to talk to?
You already know the answer to these.
βοΈ @AI_Python
π£ @AI_Python_Arxiv
β΄οΈ @AI_Python_EN
The Neural Aesthetic
Notes and around 30 hours of video lectures are up here, by Gene Kogan: https://lnkd.in/dCMpmGx
Big map of all the slides: https://lnkd.in/dB8yJtp
#artificialintelligence #deeplearning #generativemodel #machinelearning #reinforcementlearning
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Notes and around 30 hours of video lectures are up here, by Gene Kogan: https://lnkd.in/dCMpmGx
Big map of all the slides: https://lnkd.in/dB8yJtp
#artificialintelligence #deeplearning #generativemodel #machinelearning #reinforcementlearning
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"A Brief Survey of Deep Reinforcement Learning"
Arulkumaran et al.: https://lnkd.in/dwt_--X
#100DaysOfMLCode #ArtificialIntelligence #DeepLearning #MachineLearning #NeuralNetworks #ReinforcementLearning
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Arulkumaran et al.: https://lnkd.in/dwt_--X
#100DaysOfMLCode #ArtificialIntelligence #DeepLearning #MachineLearning #NeuralNetworks #ReinforcementLearning
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2018 Year-in-Review: Machine Learning Open Source Projects & Frameworks
https://heartbeat.fritz.ai/2018-year-in-review-machine-learning-open-source-projects-frameworks-430df2fe18cd
#ArtificialIntelligence #DeepLearning #MachineLearning #NeuralNetworks #ReinforcementLearning
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https://heartbeat.fritz.ai/2018-year-in-review-machine-learning-open-source-projects-frameworks-430df2fe18cd
#ArtificialIntelligence #DeepLearning #MachineLearning #NeuralNetworks #ReinforcementLearning
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An interesting collection of surprising snippets and lesser-known Python features.
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>>> WTF() == WTF() # two different instances can't be equal
False
>>> WTF() is WTF() # identities are also different
False
>>> hash(WTF()) == hash(WTF()) # hashes _should_ be different as well
True
>>> id(WTF()) == id(WTF())
True
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An interesting collection of surprising snippets and lesser-known Python features.
pip3 install wtfpython
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pip3 install wtfpython
class WTF(object):Output
def __init__(self): print("I")
def __del__(self): print("D")
>>> WTF() is WTF()βοΈ @AI_Python
I
I
D
D
False
>>> id(WTF()) == id(WTF())
I
D
I
D
True
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Professor Andrew Ng:
Iβm excited to share with you the AI Transformation Playbook: https://lnkd.in/gJMf_Pq
Drawn from my experience leading Google Brain, Baiduβs AI Group, and Landing AI, this Playbook provides a roadmap for your company to transform into a great AI company.
You can download a free copy of the AI Transformation Playbook here: https://lnkd.in/gJMf_Pq
Building strong AI capabilities for your company will require a long-term investment, but it is feasible for most enterprises. The AI Transformation Playbook will walk you through the following five steps:
1. Execute pilot projects to gain momentum
2. Build an in-house AI team
3. Provide broad AI training
4. Develop an AI strategy
5. Develop internal and external communications
Many of the biggest untapped opportunities in AI lie outside the software industry. I hope that this AI Transformation Playbook will help your company become an AI leader in your industry vertical.
Download your free copy of the AI Transformation Playbook here: https://lnkd.in/gJMf_Pq
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Iβm excited to share with you the AI Transformation Playbook: https://lnkd.in/gJMf_Pq
Drawn from my experience leading Google Brain, Baiduβs AI Group, and Landing AI, this Playbook provides a roadmap for your company to transform into a great AI company.
You can download a free copy of the AI Transformation Playbook here: https://lnkd.in/gJMf_Pq
Building strong AI capabilities for your company will require a long-term investment, but it is feasible for most enterprises. The AI Transformation Playbook will walk you through the following five steps:
1. Execute pilot projects to gain momentum
2. Build an in-house AI team
3. Provide broad AI training
4. Develop an AI strategy
5. Develop internal and external communications
Many of the biggest untapped opportunities in AI lie outside the software industry. I hope that this AI Transformation Playbook will help your company become an AI leader in your industry vertical.
Download your free copy of the AI Transformation Playbook here: https://lnkd.in/gJMf_Pq
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Professor Yann LeCun
At NYU, even the art school has a course on deep learning, complete with ConvNets, GANs and RL for artistic creation.
The class is called "neural aesthetics" and is taught by Gene Kogan in the ITP Master's program at the NYU Tisch..
http://ml4a.github.io/classes/itp-F18/
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At NYU, even the art school has a course on deep learning, complete with ConvNets, GANs and RL for artistic creation.
The class is called "neural aesthetics" and is taught by Gene Kogan in the ITP Master's program at the NYU Tisch..
http://ml4a.github.io/classes/itp-F18/
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Understanding Supervised, Unsupervised, and #ReinforcementLearning (RL) β getting under the hood with RL: http://bit.ly/2BNrJ1u #abdsc #BigData #DataScience #MachineLearning #Algorithms #AI
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PyText: Industrial-strength open source NLP package from Facebook AI: develop NLP models on PyTorch and deploy through ONNX.
Pre-trained models for text classification, sequence tagging, joint intent-slot...
https://t.co/phn8mu9Dhz
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Pre-trained models for text classification, sequence tagging, joint intent-slot...
https://t.co/phn8mu9Dhz
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Best paper award #NeurIPS2018 main idea: Defining a deep residual network as a continuously evolving system & instead of updating the hidden units layer by layer, define their derivative with respect to depth instead. Paper: https://arxiv.org/pdf/1806.07366.pdf β¦ Code: https://github.com/rtqichen/torchdiffeq
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**Hinton: "if you want to get a paper published in [ML] now it's got to have a table in it ... datasets ... methods ... and your method has to look like the best one. ... I don't think that's encouraging people to think about radically new ideas" ***
https://www.wired.com/story/googles-ai-guru-computers-think-more-like-brains/
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https://www.wired.com/story/googles-ai-guru-computers-think-more-like-brains/
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β¨π Did you know that you can connect to GoogleColab using a local runtime, or a virtual machine running in the cloud (AWSCloud, GoogleCloud, Azure, etc.)? π Check out our guide + blogpost for how to set up your environment: https://research.google.com/colaboratory/local-runtimes.html β¦ https://blog.kovalevskyi.com/gce-deeplearning-images-as-a-backend-for-google-colaboratory-bc4903d24947
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Stanford Tracking Artificial Intelligence Research To See Future - Palo Alto, CA Patch
Read more here: https://ift.tt/2PCc1JY
#ArtificialIntelligence #AI #DataScience #MachineLearning #BigData #DeepLearning #NLP #Robots #IoT
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Read more here: https://ift.tt/2PCc1JY
#ArtificialIntelligence #AI #DataScience #MachineLearning #BigData #DeepLearning #NLP #Robots #IoT
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