The Data Science Channel
The Data Science Channel
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Video

Why use Numpy for Data Science? - Gael Varoquaux creator of Scikit Learn
zhlédnutí 92Před měsícem
Why use Numpy for Data Science? - Gael Varoquaux creator of Scikit Learn
Topic Modelling Example - Gael Varoquaux creator of Scikit Learn
zhlédnutí 88Před měsícem
Topic Modelling Example - Gael Varoquaux creator of Scikit Learn
Regularization and Curse of Dimensionality in Machine Learning - Gael Varoquaux ScikitLearn creator
zhlédnutí 126Před 2 měsíci
Regularization and Curse of Dimensionality in Machine Learning - Gael Varoquaux creator of Scikit Learn
Overfitting vs Underfitting and the Bias Variance Tradeoff - Gael Varoquaux creator of Scikit Learn
zhlédnutí 28Před 2 měsíci
Overfitting vs Underfitting and the Bias Variance Tradeoff - Gael Varoquaux creator of Scikit Learn
Decoding approach to Machine Learning for fMRI - Gael Varoquaux creator of Scikit Learn
zhlédnutí 30Před 3 měsíci
Decoding approach to Machine Learning for fMRI - Gael Varoquaux creator of Scikit Learn
Encoding approach to Machine Learning for fMRI - Gael Varoquaux creator of Scikit Learn
zhlédnutí 68Před 3 měsíci
Encoding approach to Machine Learning for fMRI - Gael Varoquaux creator of Scikit Learn
Machine Learning for fMRI - Gael Varoquaux creator of Scikit Learn
zhlédnutí 41Před 3 měsíci
Machine Learning for fMRI - Gael Varoquaux creator of Scikit Learn
nilearn package for brain imaging - Gael Varoquaux creator of Scikit Learn
zhlédnutí 33Před 4 měsíci
nilearn package for brain imaging - Gael Varoquaux creator of Scikit Learn
Machine Learning for Brain Imaging - Gael Varoquaux creator of Scikit Learn
zhlédnutí 35Před 4 měsíci
Machine Learning for Brain Imaging - Gael Varoquaux creator of Scikit Learn
Learning Scikit Learn Start Here - Gael Varoquaux creator of Scikit Learn
zhlédnutí 23Před 5 měsíci
Learning Scikit Learn Start Here - Gael Varoquaux creator of Scikit Learn
Unsupervised Learning in Scikit Learn - Gael Varoquaux creator of Scikit Learn
zhlédnutí 199Před 5 měsíci
Unsupervised Learning in Scikit Learn - Gael Varoquaux creator of Scikit Learn
Measuring model performance scikit learn - Gael Varoquaux creator of Scikit Learn
zhlédnutí 31Před 6 měsíci
Measuring model performance scikit learn - Gael Varoquaux creator of Scikit Learn
LangChain Modules
zhlédnutí 107Před 6 měsíci
LangChain Modules LangChain provides standard, extendable interfaces and external integrations for the following main modules: - Model I/O - Interface with language models - Retrieval - Interface with application-specific data - Agents - Let chains choose which tools to use given high-level directives - Chains - Common, building block compositions - Memory - Persist application state between ru...
Regression models in Scikit Learn - Gael Varoquaux creator of Scikit Learn
zhlédnutí 39Před 6 měsíci
Regression models in Scikit Learn - Gael Varoquaux creator of Scikit Learn
VectorBT for Quantitative Analysis in Python
zhlédnutí 549Před 6 měsíci
VectorBT for Quantitative Analysis in Python
Neuroscience Applications of Generative Adversarial Networks - Ian Goodfellow GAN inventor
zhlédnutí 69Před 6 měsíci
Neuroscience Applications of Generative Adversarial Networks - Ian Goodfellow GAN inventor
TA lib with Python and Pandas
zhlédnutí 1,5KPřed 7 měsíci
TA lib with Python and Pandas
Computer Vision with Scikit Learn - Gael Varoquaux creator of Scikit Learn
zhlédnutí 151Před 7 měsíci
Computer Vision with Scikit Learn - Gael Varoquaux creator of Scikit Learn
Darts - Time Series Forecasting in Python
zhlédnutí 1,7KPřed 7 měsíci
Darts - Time Series Forecasting in Python
Machine Learning Interpretability applications for Generative Adversarial Networks - Ian Goodfe
zhlédnutí 52Před 7 měsíci
Machine Learning Interpretability applications for Generative Adversarial Networks - Ian Goodfe
Langchain Cookbook Overview
zhlédnutí 246Před 7 měsíci
Langchain Cookbook Overview
LangChain Quickstart
zhlédnutí 243Před 7 měsíci
LangChain Quickstart
Mistral 7B from Mistral.AI - FULL WHITEPAPER OVERVIEW
zhlédnutí 349Před 7 měsíci
Mistral 7B from Mistral.AI - FULL WHITEPAPER OVERVIEW
Supervised Learning models in Scikit Learn - Gael Varoquaux creator of Scikit Learn
zhlédnutí 94Před 7 měsíci
Supervised Learning models in Scikit Learn - Gael Varoquaux creator of Scikit Learn
Machine Learning Fairness with Generative Adversarial Networks - Ian Goodfellow GAN inventor
zhlédnutí 167Před 7 měsíci
Machine Learning Fairness with Generative Adversarial Networks - Ian Goodfellow GAN inventor
Intro to LangChain - Full Documentation Overview
zhlédnutí 644Před 7 měsíci
Intro to LangChain - Full Documentation Overview
Core Principles of Scikit Learn - Gael Varoquaux creator of Scikit Learn
zhlédnutí 100Před 8 měsíci
Core Principles of Scikit Learn - Gael Varoquaux creator of Scikit Learn
Generative Adversarial Networks for Domain Adaptation - Ian Goodfellow GAN inventor
zhlédnutí 282Před 8 měsíci
Generative Adversarial Networks for Domain Adaptation - Ian Goodfellow GAN inventor
What is machine learning? - Gael Varoquaux creator of Scikit Learn
zhlédnutí 177Před 8 měsíci
What is machine learning? - Gael Varoquaux creator of Scikit Learn

Komentáře

  • @mitchellgallagher8113

    Cut the beginning until he says 2006 and don't speed up the video

  • @aaronjaggars321
    @aaronjaggars321 Před 18 dny

    This guy's a badass well just smart af idk

  • @qwertyasdf-ps2yi
    @qwertyasdf-ps2yi Před měsícem

    Interesting!

  • @tanvifaladu6955
    @tanvifaladu6955 Před měsícem

    Can i get notes of this video?

  • @allstarmark12345
    @allstarmark12345 Před měsícem

    First to comment? Really?

  • @DmitryRomanov
    @DmitryRomanov Před měsícem

    Clean description - rare and precious thing today 👍

  • @rudysoobaroyen6878
    @rudysoobaroyen6878 Před měsícem

    GANs use machine learning algorithms to (1) Generate inputs and outputs through iterative processes and (2) Discriminate between real and fake/non-factual data and remove those fake/non-factual variables.

  • @TheDataScienceChannel
    @TheDataScienceChannel Před měsícem

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter thedatasciencenewsletter.substack.com/

  • @TheDataScienceChannel
    @TheDataScienceChannel Před měsícem

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter thedatasciencenewsletter.substack.com/

  • @drm8164
    @drm8164 Před měsícem

    does is worth to have the OpenCV certification ?

  • @yuvrajkukreja9727
    @yuvrajkukreja9727 Před měsícem

    more OpenCV Tutorial for Beginners :)

  • @Manfred_Z
    @Manfred_Z Před 2 měsíci

    Great Overview. Please more of it. And some deep dive in some topics.

  • @sillymesilly
    @sillymesilly Před 2 měsíci

    C++ is no where near to a clean code. Only simple syntax can do that. Example: C programming language.

  • @Raiseren
    @Raiseren Před 4 měsíci

    ASMR potential

  • @redabitar
    @redabitar Před 4 měsíci

    Thank you for this very brief and straight-to-the-point summary! Just wish in the end there were no "next video" recommendation cards cause I couldn't see the code properly!

  • @guocity
    @guocity Před 5 měsíci

    Pandas work much better in unclean data, how do you handle pyarrow headache with data conversion error?: ArrowInvalid: Could not convert '230' with type str: tried to convert to double make many dependencies unusable: to_parquet() convert pandas to polars open csv in data wrangle, save as parquet in data wrangle

  • @deeplearningpartnership
    @deeplearningpartnership Před 5 měsíci

    Cool.

  • @TheDataScienceChannel
    @TheDataScienceChannel Před 6 měsíci

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter 👉 thedatasciencenewsletter.substack.com/

  • @TheDataScienceChannel
    @TheDataScienceChannel Před 6 měsíci

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter 👉 thedatasciencenewsletter.substack.com/

  • @TheDataScienceChannel
    @TheDataScienceChannel Před 6 měsíci

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter 👉 thedatasciencenewsletter.substack.com/

  • @TheDataScienceChannel
    @TheDataScienceChannel Před 6 měsíci

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter 👉 thedatasciencenewsletter.substack.com/

  • @TheDataScienceChannel
    @TheDataScienceChannel Před 6 měsíci

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter 👉 thedatasciencenewsletter.substack.com/

  • @TheDataScienceChannel
    @TheDataScienceChannel Před 6 měsíci

    Want to learn more about Data Science? Subscribe to the Data Science Newsletter 👉 thedatasciencenewsletter.substack.com/

  • @tedspens
    @tedspens Před 6 měsíci

    Before he sets down the water @5:38, it gets the current wiki page. Okay, @6:01, it tears down the page, it it's a test does something, otherwise redirects to the parent or referral page. I'm a rookie, just guessing. Hitting continue... Okay, so it generates html. Let's see how I did on the middle parts, continue.... So, it appends setups and teardowns to a page for testing purposes. I may be a rookie but I know more now than I did a few minutes ago. Gonna watch the rest of the video now. Cheers! 🥂

  • @fredt3217
    @fredt3217 Před 6 měsíci

    What they are mainly looking for is how humans determine truth. This is easy for normal truths but when humans do not want to accept truth it gets difficult but since that too is based on physics so the equation is simple. The problem is they do not have the structure humans have to complete it. For example the baby example with gravity is simply they concentrate on the pattern of what the object is doing and if no negative associations come up they accept it cause it would be a negative not too. Same with words. It gets difficult in humans since we can also choose not to accept truth based on the same reason. Thus we accept truths that are not true if we want to. Then you need another more complex equation to verify it. If we don't do this those negative truths can be inputted and associated. But they don't have the structure needed for that. But if you want to know how humans learn so quick that is the basic reason and how. Basically you associate one pattern with another. If a negative is more than the positive we don't associate it since the mind goes to the negative and not the positive cutting off the process before it completes since it needs to snap the association in the mind. Thus true or false is born. It's super easy to trick the mind do denying truths like this. For example if I said people are being abused all around the world because computer scientists spend more time helping governments carry out arbitrary laws than prevent them... even though the first is true if you were a computer scientist this means you have to accept some of the blame. Thus want to deny it. But if we developed a program to detect arbitrary laws and give the reasons or negative consequences... it would stop them through detection and the negative associations. And once they accept this truth the negatives of doing it would come up. Thus not want to accept it till they do accept their blame. Check... the most widely used reason to justify illegal laws is still in use even though it caused more harm in the world than any other pattern. I'm in the group that thinks computers are needed to detect illegal laws and explain why they are arbitrary because they corrupt all other fields that are supposed to stop it but they can't bribe, threaton, discredit with unjustified ignorance triggers, etc, a computer like people. And because we don't have it we don't have the end of laws used for crimes. And all because this truth gets pushed out by negative associations of what would happen if computer scientists detect it. So the truth to us is we know laws can be crimes and should be doing it but it is not important in their minds even though it is. And they will think they are not to blame even though they are in two or more groups computers will check to see how the crime got passed when it should not. But until you build the 3 association processes, the perceived state, day long, long term and imagination like humans I have no idea how to do it since you wouldn't be able to check the data, consequences, etc, like humans do. Thus how do you determine truths? There may be a way to run the negative acceptance equation to see what the truth is and why they made that choice but It would be less complicated to build the system like it should be done since you need all the parts. You can do simple language but not complex without the prefrontal association processes for example. So the answers to most questions here is study truth and how humans determine it. I'm working on a video of it but not many will want to watch it since it is about 10 hours and it's to detect racism and those involved and to expose them all. And I wasn't in the best mood Long story short is if you want to build a computer to think like a human you need to understand your own mind works. Not how you got neural nets to do tricks.

  • @dr.mikeybee
    @dr.mikeybee Před 6 měsíci

    NER is important for memory. Agents need to chose what they remember.

  • @richardnunziata3221
    @richardnunziata3221 Před 6 měsíci

    I think Chris is looking more towards Geoffrey Hinton capsule networks or GNNS though I do think CNNs create feature hierarchies but are kernel based which is why you need many layers. None of these i think will solve the total problem that lies in neurobiology and machines other then tensor multipliers or liquid networks, bayesian flow networks and such.

  • @etticat
    @etticat Před 7 měsíci

    Great overview. Haven’t seen such information dense videos on langchain yet, learned a lot. Looking forward to the next videos like this

  • @votlook
    @votlook Před 7 měsíci

    Tip: set playback speed to 0.75

  • @russianbotfarm3036
    @russianbotfarm3036 Před 8 měsíci

    Even if human, structured learning proves inferior to ‘pure’, huge-data, (relatively) structureless learning, I’d want to know how we do it, anyway.

  • @flareonspotify
    @flareonspotify Před 9 měsíci

    make the objective function to gain more shannon entropy

  • @OnionKnight541
    @OnionKnight541 Před 9 měsíci

    there is an anthology from 2000 called "Minds, Brains, and Computers," and it is an amazing starting point for anyone interested in cognitive science (which is the bridged between simple computer science and artificial super intelligence).

  • @user-wr4yl7tx3w
    @user-wr4yl7tx3w Před 9 měsíci

    great questions!

  • @jitendratiwari6886
    @jitendratiwari6886 Před 10 měsíci

    thanks for sharing your insights in this topic.

  • @hamalishah
    @hamalishah Před 11 měsíci

    Very Interesting!

  • @NeumsFor9
    @NeumsFor9 Před 11 měsíci

    Still very relevant today but more for semantic, human, and methodology reasons than for performance. Polyvalence is very important as well.

  • @AI_Evangelist
    @AI_Evangelist Před 11 měsíci

    This video is more than one year old. It was recorded before ChatGPT was published. Many statements feel outdated today.

  • @tannguyen-tc1mk
    @tannguyen-tc1mk Před rokem

    LIKE

  • @techw4y
    @techw4y Před rokem

    listening to this at speed 0.75x is better :)

    • @mrfish89
      @mrfish89 Před 7 měsíci

      did they speed this up, or is Wes just a fast dude?

    • @clivebukhosi6586
      @clivebukhosi6586 Před měsícem

      @@mrfish89 I put all YT talks & tutorials at 1.5X or more, I thought something wrong with my brain for a minute

  • @JohnSmith-om6tf
    @JohnSmith-om6tf Před rokem

    Is this guy one of the artificial generations?

  • @WalterSamuels
    @WalterSamuels Před rokem

    Adversarial learning should be an emergent property of a traditional optimization system, based on the optimization metric. In other words, it should be a result of the optimization process, not a secondary flow or algorithm.

  • @deeplearningpartnership

    Nice.

  • @pratikdas9469
    @pratikdas9469 Před rokem

    awesome thanks

  • @andrewcurtis6370
    @andrewcurtis6370 Před rokem

    Thanks for making these videos.

  • @Pursuit_of_Insights

    That was interesting to see Business intelligence explained by Ralph kimball, could you share the full lecture

  • @wkgates
    @wkgates Před rokem

    Really great overview of computer vision and object detection in openCV. I've been studying computer vision through Matlab at my university and many functions are shared between the two.

  • @chantelleboutin
    @chantelleboutin Před rokem

    That was amazing. Excellent overview. I now know much more about OpenCV's capabilities.