Andrew Ng Machine Learning Career Advice

Поделиться
HTML-код
  • Опубликовано: 26 июн 2024
  • Hi, my name is Jared Beckwith. I’m self studying artificial intelligence, machine learning, and deep learning. In this video I’m sharing a clip from MIT professor Lex Fridman’s video, “Nuts and Bolts of Applying Deep Learning (Andrew Ng)”
    The question Andrew Ng answers in this video is, “How do you build a career in machine learning?”
    Andrew Ng is an adjunct professor at Stanford University (formerly associate professor and Director of its AI lab). Also a pioneer in online education, Ng co-founded Coursers and deeplearning.ai. With his online courses, he has successfully spearheaded many efforts to "democratize deep learning" teaching over 2.5 million students through his online courses. He is one of the world's most famous and influential computer scientists being named one of Time magazine's 100 Most Influential People in 2012, and Fast Company's Most Creative People in 2014.
  • НаукаНаука

Комментарии • 96

  • @gacem213
    @gacem213 2 года назад +71

    I cannot thank you enough for sharing this lecture, I got so inspired! I really appreciate people like you contributing to the community

  • @pp-1954
    @pp-1954 Год назад +13

    Amazing to hear Prof Ng speaking about AI career! The secret seems to be consistency again!

  • @PremJay
    @PremJay 5 месяцев назад +3

    Awesome. Andrew Ng is the only person I like to follow advice. He is a very genuine person. Seems to me. I admire him.

  • @Minimalrevolt-m83
    @Minimalrevolt-m83 Год назад +12

    Been following up with Coursera and there’s so many subjects that our educational system even since secondary school doesn’t correspond to our realistic life with particularizing skills and values. So much an awe-inspiring for an extraordinary human being like Andrew Ng whose capable to help those who unfortunate to pursue education in spite of the fact that education learning doesn’t end when you graduated, it’s sustain in a long-life learning process, which Andrew offers to those who need an extra opportunity to pursue free learning in Coursera. Thanks!

  • @Olejo111
    @Olejo111 2 года назад +7

    Very motivating!!! Thank you.

  • @shemaths1668
    @shemaths1668 Год назад +3

    I love this autodidact movement!!!

  • @artsome
    @artsome Год назад +2

    incredible guy, thank you for sharing

  • @UsamaKarim
    @UsamaKarim 9 месяцев назад +8

    Key insights
    💡The process of reading and studying multiple papers (around 20 to 50) can reliably generate original ideas in the field of machine learning.
    📚"People often shy away from the dirty work in AI, but it is essential for success, whether it's downloading data, tuning parameters, or struggling to replicate results."
    💡The combination of doing dirty work and reading papers is the most reliable formula for producing great researchers.
    🧠The process of continuously learning and iterating is crucial for becoming really good at machine learning.

    • @vinaybanka7589
      @vinaybanka7589 5 месяцев назад

      Hi bro what are multiple papers? what is papers ? Do you mean

    • @UsamaKarim
      @UsamaKarim 5 месяцев назад

      @@vinaybanka7589 Research papers

  • @r.walid2323
    @r.walid2323 5 месяцев назад

    What an insightful content, thank you so much

  • @jiaoyangdong6988
    @jiaoyangdong6988 2 года назад +23

    That's very well said and very solid advice. Thanks for sharing!

    • @jaredbeckwith
      @jaredbeckwith  2 года назад

      Thank you for your comment. I’m glad I could help!

  • @KeyserTheRedBeard
    @KeyserTheRedBeard 3 года назад +2

    cool video Jared Beckwith. I crushed the thumbs up on your video. Keep up the solid work.

  • @behrad9712
    @behrad9712 Год назад +3

    great advice from my hero in AI thank you so much!🙏

    • @jaredbeckwith
      @jaredbeckwith  Год назад

      I’m a big fan of him too, glad you enjoyed my friend!

  • @jatinpatil2428
    @jatinpatil2428 Год назад

    Thanks for the lecture man. Great help

  • @bin4ry_d3struct0r
    @bin4ry_d3struct0r Год назад +173

    Pro tip: You don't need a PhD to be able to read research papers.

    • @jaredbeckwith
      @jaredbeckwith  Год назад +30

      Exactly!! I’ve learned so much from research papers even if I didn’t understand everything.

    • @Staticshock-rd8lv
      @Staticshock-rd8lv Год назад +13

      you do need to be math fluent though, and have an extensive math background when it comes to ai papers

    • @tomkamikaze
      @tomkamikaze Год назад +1

      Yep. Only the reverse is true

    • @tensai1043
      @tensai1043 11 месяцев назад +2

      You just have to be thorough with advanced undergraduate math courses like Measure theory, Measure theory based probability and advanced linear algebra.

    • @mohamed-aminebenhima4566
      @mohamed-aminebenhima4566 10 месяцев назад +4

      U just need chatgpt account and som engineering prompts skills now

  • @mutumkunjeshor1865
    @mutumkunjeshor1865 4 месяца назад

    I want to build my career in ML. But i dont know how.
    And thank you so much for sharing this video. It give me some ideas about generating new ideas.

  • @AmitChaudhary-qx5mc
    @AmitChaudhary-qx5mc 2 года назад +4

    Very good advice
    Thank you

  • @Jaydeep-ve4jy
    @Jaydeep-ve4jy 2 года назад +13

    Andrew Ng is a gem!

  • @working7343
    @working7343 Год назад

    Thank You

  • @subhamchakraborty4782
    @subhamchakraborty4782 2 года назад +1

    Thanks for sharing sir. 😍😍😍

    • @jaredbeckwith
      @jaredbeckwith  2 года назад

      Thanks for watching and commenting 😊

  • @xox14
    @xox14 2 года назад +1

    thanks for sharing

  • @suhailbashir2288
    @suhailbashir2288 2 года назад +1

    Very inspiring.

  • @christopheroyer1019
    @christopheroyer1019 Год назад

    inspiring. Thank you

  • @lamiasall4975
    @lamiasall4975 Год назад

    Claimed, thank you

  • @islamicsolution5618
    @islamicsolution5618 2 года назад +7

    First we should start ML , DL and then AI is
    it right path 👍

  • @ehab1077
    @ehab1077 2 года назад +1

    Thanks bro🖤🖤🖤🖤

  • @aryantomar8880
    @aryantomar8880 7 месяцев назад

    Bald guy in the front row is Pieter Abbeel, professor of AI in UCB and former PhD student of Andrew Ng. Pieter Abbeel has an amazing h-index of 153.

  • @_XY_
    @_XY_ 2 года назад

    Nice

  • @hotienaugustekone5053
    @hotienaugustekone5053 9 месяцев назад

    This is the more convaincing presentation I watched related to this subject with use-cases. Yes AGI (artoficial generative intelligence) is useful, whereas there are some risks officials must do their best to minimize, by using appropriate regulations. Thanks à lot.

  • @Staticshock-rd8lv
    @Staticshock-rd8lv Год назад +7

    reading ml papers wouldn't be so intimidating if they didn't throw out super math dense gibberish, tensors, linear algebra, statistics, diff eq etc.... take into account andrew ng's background an excerpt from andrew ng's Wikipedia page *"In 1997, he earned his undergraduate degree with a triple major in computer science, statistics, and economics from Carnegie Mellon University in Pittsburgh, Pennsylvania, graduating at the top of his class. Between 1996 and 1998 he also conducted research on reinforcement learning, model selection, and feature selection at the AT&T Bell Labs.[10]"* No wonder ai came so easy to him he is a genius who is also extremely math fluent.

    • @ctrlaltdebug
      @ctrlaltdebug Год назад +1

      Yes, papers would be much easier to read if the authors cut the math gibberish and knew fluent English.

    • @heatherbrm
      @heatherbrm 2 месяца назад +1

      “Came so easy to him” You mean mastered the necessary topics for over 20 years? That’s definitely a weird way to phrase it. If lacking that mastery is holding you back from mastering ML, then do the 4 year degree for the same topics. And it’s not just math gibberish, machine learning IS math. If you want to make discoveries in ML, not everything will be in PyTorch. The idea and math behind ML has been developing since 1943. Andrew Ng didn’t wake up one day and discover ML with the relevant skills conveniently sitting in his lap, he just worked very long and hard. Don’t expect one Python crash course to match that.

  • @vishalzinjade6094
    @vishalzinjade6094 3 месяца назад

    Where will I get the research papers

  • @randomthoughts7838
    @randomthoughts7838 8 месяцев назад

    What to do if you have 1 year for research

  • @renatosardinhalopes6073
    @renatosardinhalopes6073 2 года назад +10

    Those are some good advice for someone who already knows some ML stuff. What about the guy just starting? Any suggestions on what kind of courses I should pursue?

    • @jaredbeckwith
      @jaredbeckwith  2 года назад +11

      When I was brand new I watched this intro to deep learning video by MIT professor Lex Fridman. He leaves out a lot of complicated math/code and gives you a basic overview of the field.
      Here’s link: ruclips.net/video/O5xeyoRL95U/видео.html

    • @renatosardinhalopes6073
      @renatosardinhalopes6073 2 года назад

      @@jaredbeckwith thanks!

    • @xox14
      @xox14 2 года назад

      @@jaredbeckwith He will be doing new lectures next january

    • @-es2bf
      @-es2bf 11 месяцев назад

      @@jaredbeckwith Lex Fridman is not a professor. He is a researcher and he has nothing to do with MIT.

  • @gezahagnnegash9740
    @gezahagnnegash9740 2 года назад

    Learning ML, then DL then AI then what comes next...?

  • @mohammadtina2536
    @mohammadtina2536 2 года назад +3

    Thank you for sharing , Does any one knows of a good site to follow for ML papers as suggested?

    • @williamforman7171
      @williamforman7171 Год назад

      I have the same question!

    • @jaredbeckwith
      @jaredbeckwith  Год назад +2

      Google is how I find good papers. Use ML keywords like “convolutional neural network” if you’re interested in computer vision for example.
      Here is a paper on a neural network that is trained to recognize different clothing types: arxiv.org/abs/1708.07747?context=stat

    • @vaibhavgupta006
      @vaibhavgupta006 Год назад

      Paper with code

  • @seetsamolapo5600
    @seetsamolapo5600 2 месяца назад

    Read a lot of papers (do a lof of projevts)and work on replicating results
    At 20 or 50 papers you'll start having own ideas

  • @aminhamouda7812
    @aminhamouda7812 2 года назад +2

    What is meant by replicate results?I mean practically speaking?

    • @jaredbeckwith
      @jaredbeckwith  2 года назад +4

      Some research papers will reference datasets they used to build their neural networks. You would use the same data and copy the neural network in the paper to get the same results.

    • @Eswar.
      @Eswar. Год назад

      @@jaredbeckwith i thought he means
      follow the videos and follow them
      imitate
      does this okay ?

  • @pp-1954
    @pp-1954 6 месяцев назад

    Read enough papers, replicate the results - 20~50 papers later, you will start your own idea.
    Willing to do dirty work.
    It is a long term marathon. - train our own brains neural networks to learn how to do it

  • @aleemaleem9123
    @aleemaleem9123 2 года назад

    Where I can read papers ?

    • @jaredbeckwith
      @jaredbeckwith  2 года назад +1

      I Google research papers in my area of focus and most are freely available on the internet. For example for Ai, here is a research paper on convolutional neural networks: arxiv.org/pdf/1512.07108.pdf

  • @fuehnix
    @fuehnix Год назад

    How many weekends do I need to sacrifice to be a ML researcher? :')

  • @ansinsta6904
    @ansinsta6904 Год назад +1

    hey need a bit of help i am a graduated chemical engineer and now thinking to study further in machine learning and data science but i almost know nothing of machine learning and i have to submit a research proposal in machine learning or data science can someone help me to chose a topic or how to find a topi thanks

    • @jaredbeckwith
      @jaredbeckwith  Год назад

      If you know nothing about machine learning start by building a model to recognize handwritten digits. It is called the “MNIST dataset.” You take a dataset of human labeled handwritten digits and teach a machine to recognize digits correctly. There’s a lot of documentation on Google/RUclips about MNSIT. Afterwards, you can build something like a Cats vs Dogs detector using the same techniques.

  • @SamreenChaman-kq6wd
    @SamreenChaman-kq6wd 5 дней назад

    Helo sir, can I tenaslate your videos into Urdu language

  • @vinaybanka7589
    @vinaybanka7589 5 месяцев назад

    what are multiple papers? what and which papers ? Does he mean can anyone can say me please? Im interested in Ai

    • @jaredbeckwith
      @jaredbeckwith  5 месяцев назад

      Here’s one talking about using a CNN to detect handwritten digits: vision.stanford.edu/cs598_spring07/papers/Lecun98.pdf

    • @vinaybanka7589
      @vinaybanka7589 5 месяцев назад

      @@jaredbeckwith Thank you a lot for helping me!

    • @vinaybanka7589
      @vinaybanka7589 5 месяцев назад

      ​@@jaredbeckwith can you make video on automation autopilot Machine learning for cars ? Guidance from A to z ? Please and recommended books for Machine learning on automation autopilot for cars ?

  • @jansiranibdumtcs
    @jansiranibdumtcs 2 месяца назад

    Can someone answer me what is replicate results?

    • @jaredbeckwith
      @jaredbeckwith  2 месяца назад +2

      Be able to copy the research paper and get the same results. For example, if a cats vs dogs image detector was 95% accurate in the paper, you should be able to get the same accuracy by using the same neural network.

    • @jansiranibdumtcs
      @jansiranibdumtcs 2 месяца назад

      @@jaredbeckwith Thank you

    • @klindatv
      @klindatv Месяц назад

      ​@@jaredbeckwithIs not valid using the codes of others ? 😜

  • @user-rj2so8hd5i
    @user-rj2so8hd5i 5 месяцев назад

    Do i need extensive maths for good ai ml engineer

    • @jaredbeckwith
      @jaredbeckwith  5 месяцев назад

      You can probably implement the algorithms without knowing math, but a lot of employers will require advanced degrees

  • @PJ-hi1gz
    @PJ-hi1gz Год назад +2

    I have a life on the weekends

  • @007aha1
    @007aha1 9 месяцев назад

    a a a a a a

  • @sinan_islam
    @sinan_islam 2 месяца назад +2

    Please, do not be over enthusiastic. The complexity in this career and how messy are the software, will make you quit at some point.

  • @sanjeevjikamade
    @sanjeevjikamade Год назад

    Thanks Jared