Django Rest-framework (Half the way to go)
Code
https://github.com/iampython-team/DjangoRestFramework
Doc
https://github.com/iampython-team/DjangoRestFramework/blob/master/DRF_Doc.pdf
Video Playlist
https://youtube.com/playlist?list=PLw945x_O7SHqseUNT1V_6EpKlon-mxylb
Code
https://github.com/iampython-team/DjangoRestFramework
Doc
https://github.com/iampython-team/DjangoRestFramework/blob/master/DRF_Doc.pdf
Video Playlist
https://youtube.com/playlist?list=PLw945x_O7SHqseUNT1V_6EpKlon-mxylb
πAlternative for Keras ::
β‘οΈTFLearn.
β‘οΈKnet.
β‘οΈClarifai.
β‘οΈDeepPy.
β‘οΈTorch.
β‘οΈNVIDIA Deep Learning GPU Training System (DIGITS)
β‘οΈRustNN.
π¨βπ€βοΈβοΈπππ»ββοΈπ πΌββοΈ
β‘οΈTFLearn.
β‘οΈKnet.
β‘οΈClarifai.
β‘οΈDeepPy.
β‘οΈTorch.
β‘οΈNVIDIA Deep Learning GPU Training System (DIGITS)
β‘οΈRustNN.
π¨βπ€βοΈβοΈπππ»ββοΈπ πΌββοΈ
Hello Python Developers !!!
Next week, we'll reach 300,000 projects in the pypi package index.
That's up from 200,000 on 14 Oct 2019 and 100,000 on 4 Mar 2017.
What is your prediction for when we'll reach 400,000?
Current project Count : 299,092 projects
Next week, we'll reach 300,000 projects in the pypi package index.
That's up from 200,000 on 14 Oct 2019 and 100,000 on 4 Mar 2017.
What is your prediction for when we'll reach 400,000?
Current project Count : 299,092 projects
If your machine learning model is 99% correct, something is wrong
Possible reasons:
β‘οΈWrong evaluation metric
β‘οΈBad validation set
β‘οΈOverfitting
β‘οΈLeakage
β‘οΈAccepted data as "objective" or "authoritative"
β‘οΈyou're accidentally using 100% of the training set as your test set
β‘οΈYou just don't understand your data.
β‘οΈModel is clearly memorizing data. Could be that number of features being used is more than the number of data points?
β‘οΈForget that all data are shaped through human intervention at many stages
Possible reasons:
β‘οΈWrong evaluation metric
β‘οΈBad validation set
β‘οΈOverfitting
β‘οΈLeakage
β‘οΈAccepted data as "objective" or "authoritative"
β‘οΈyou're accidentally using 100% of the training set as your test set
β‘οΈYou just don't understand your data.
β‘οΈModel is clearly memorizing data. Could be that number of features being used is more than the number of data points?
β‘οΈForget that all data are shaped through human intervention at many stages
https://developer.ibm.com/callforcode/?utm_content=000039JL&utm_term=10008917&p1=PSocial&p2=297609258&p3=142596057&dclid=CLP4z7HPh_ACFQFUKwodbu0K0w
Your solution is officially in the running for a chance to win $200,000 USD and support in setting up your team as a startup.
Your solution is officially in the running for a chance to win $200,000 USD and support in setting up your team as a startup.
IBM Developer
Call for Code | Tech for Good | IBM Developer
Use your skills to take on sustainability issues and join a community of developers and innovators using IBM AI technology in the 2023 #CallforCode challenge.
I already created video for understanding on Yellobrick. Yellowbrick is Machine Learning Visualisation library and best suit for Diagnosing the ML problems in every stage. Yellowbrick is built top on Scikit-Learn and Matplotlib.
$ pip install yellowbrick
conda install -c districtdatalabs yellowbrick
Tuning hyperparameters
Select features
Visualize the score of your models
Visualize Rank Algorithms
β¬β¬β¬β¬β¬β¬ Installation β¬β¬β¬β¬β¬β¬ $ pip install yellowbrick
conda install -c districtdatalabs yellowbrick
β¬β¬β¬β¬β¬β¬ Significance of Yellowbrick Python library β¬β¬β¬β¬β¬β¬Tuning hyperparameters
Select features
Visualize the score of your models
Visualize Rank Algorithms
Hi All,
We have special interaction on AI, ML, DL and NLP.
Interested people join on zoom meeting at 3PM IST
Letβs talk about something interesting π§
Will share zoom link before 20mins
We have special interaction on AI, ML, DL and NLP.
Interested people join on zoom meeting at 3PM IST
Letβs talk about something interesting π§
Will share zoom link before 20mins
Join Zoom Meeting
https://us02web.zoom.us/j/84127482955?pwd=SFpUVEZ2U2p2dCtsRzRYOFlnWFdQZz09
Meeting ID: 841 2748 2955
Passcode: robo
https://us02web.zoom.us/j/84127482955?pwd=SFpUVEZ2U2p2dCtsRzRYOFlnWFdQZz09
Meeting ID: 841 2748 2955
Passcode: robo
TalkSomething_part3.pdf
161.7 KB
Resources for NLP and DL .. this is our third edition
People who wants to join free ML sessions daily at 9:30 PM IST
https://chat.whatsapp.com/ECDLgJ50bZx7cw9IJ4GoOS
Remember who seriously wants to learn join .. this is open source platform
https://chat.whatsapp.com/ECDLgJ50bZx7cw9IJ4GoOS
Remember who seriously wants to learn join .. this is open source platform
WhatsApp.com
A&D BoonDocks
WhatsApp Group Invite
arxiv.org/abs/2104.10350 -- a detailed study of CO2 emission in large models from Google
A visual introduction to machine learning
http://www.r2d3.us/visual-intro-to-machine-learning-part-1/
Best view in desktop π₯
Join in their team If you are interested for part3 launch π
http://www.r2d3.us/visual-intro-to-machine-learning-part-1/
Best view in desktop π₯
Join in their team If you are interested for part3 launch π
r2d3.us
A Visual Introduction to Machine Learning
What is machine learning? See how it works with our animated data visualization.
What salaries does a data science professional earn?
The base annual pay for a data scientist in the US is USD 117,345, with a range of USD 86,000β157,000 (source: Glassdoor).
Here is a look at estimated salaries for data scientists by experience level (source: ZipRecruiter):
πEntry level: The annual salary is estimated at USD 69,000.
πMid-level: The median annual salary is USD 89,000.
πExperienced: These are professionals with extensive experience in their data science careers. They could earn median annual salaries of USD 1,28,000.
πExperienced at manager level: The median annual salary could be as high as USD 184,000.
Estimated annual salaries:
πIn India: INR 708,012 (approx USD 9,507, source: PayScale)
πIn the US: USD 96,106 (source: PayScale)
The base annual pay for a data scientist in the US is USD 117,345, with a range of USD 86,000β157,000 (source: Glassdoor).
Here is a look at estimated salaries for data scientists by experience level (source: ZipRecruiter):
πEntry level: The annual salary is estimated at USD 69,000.
πMid-level: The median annual salary is USD 89,000.
πExperienced: These are professionals with extensive experience in their data science careers. They could earn median annual salaries of USD 1,28,000.
πExperienced at manager level: The median annual salary could be as high as USD 184,000.
Estimated annual salaries:
πIn India: INR 708,012 (approx USD 9,507, source: PayScale)
πIn the US: USD 96,106 (source: PayScale)
Tesla uses advanced AI for vision and planning, supported by efficient use of inference hardware to make Autopilot to full self-driving. A full build of Tesla's Autopilot neural networks (Deep leaning Model ) involves 48 networks that take 70,000 GPU hours to train.
AI features in Tesla.
1. AI integrated chips
2. Autopilot
AI features in Tesla.
1. AI integrated chips
2. Autopilot
β‘οΈβ‘οΈβ‘οΈProfessor π¨βπ« at University Of Washington stated that π
2000s: Neural networks = Deep learning.
2010s: Machine learning = Deep learning.
2020s: Artificial intelligence = Deep learning.
2030s: Computer science = Deep learning.
2040s: Science = Deep learning.
2050s: The universe = Deep learning.
Your learning never going to be wasted .. πͺπͺ
2000s: Neural networks = Deep learning.
2010s: Machine learning = Deep learning.
2020s: Artificial intelligence = Deep learning.
2030s: Computer science = Deep learning.
2040s: Science = Deep learning.
2050s: The universe = Deep learning.
Your learning never going to be wasted .. πͺπͺ
IIT Madras Team Develop AI To Restore Old, Damaged Photos To New.
Researchers from IIT Madras have harnessed the power of artificial neural networks to restore CCTV images that have been degraded due to weather conditions, beyond recognition.
Paper published in IEEE.
Degradation Aware Approach to Image Restoration Using Knowledge Distillation
https://ieeexplore.ieee.org/document/9288928/authors#authors
Researchers from IIT Madras have harnessed the power of artificial neural networks to restore CCTV images that have been degraded due to weather conditions, beyond recognition.
Paper published in IEEE.
Degradation Aware Approach to Image Restoration Using Knowledge Distillation
https://ieeexplore.ieee.org/document/9288928/authors#authors
ieeexplore.ieee.org
Degradation Aware Approach to Image Restoration Using Knowledge Distillation
Image restoration is the task of recovering a clean image from a degraded version. In most cases, the degradation is spatially varying, and it requires the restoration network to both localize and restore the affected regions. In this paper, we present aβ¦