2020 Machine Learning Roadmap (87% valid for 2024)

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  • čas přidán 26. 07. 2024
  • Getting into machine learning is quite the adventure. And as any adventurer knows, sometimes it can be helpful to have a compass to figure out if you're heading in the right direction.
    Although the title of this video says machine learning roadmap, you should treat it as a compass. Explore it, follow your curiosity, learn something and use what you learn to create your next steps.
    Links:
    Interactive Machine Learning Roadmap - dbourke.link/mlmap
    Machine Learning Roadmap Resources - github.com/mrdbourke/machine-...
    Learn ML (beginner-friendly courses I teach) - www.mrdbourke.com/ml-courses/
    ML courses/books I recommend - www.mrdbourke.com/ml-resources/
    Read my novel Charlie Walks - www.charliewalks.com
    Timestamps:
    0:00 - Hello & logistics
    0:57 - PART 0: INTRO
    1:42 - Brief overview of topics
    3:05 - What is machine learning?
    4:37 - Machine learning vs. traditional programming
    7:41 - Why use machine learning?
    8:44 - The number 1 rule of machine learning
    10:45 - What is machine learning good for?
    14:27 - How Tesla uses machine learning
    17:57 - What we're going to cover in this video
    20:52 - PART 1: Machine Learning Problems
    22:27 - Categories of learning
    26:17 - Machine learning problem domains
    29:04 - Classification
    33:57 - Regression
    39:35 - PART 2: Machine Learning Process
    41:57 - 6 major steps in a machine learning project
    43:57 - Data collection
    49:15 - Data preparation
    1:04:00 - Training a model
    1:23:33 - Analysis/evaluation
    1:26:40 - Serving a model
    1:29:09 - Retraining a model
    1:30:07 - An example machine learning project
    1:33:15 - PART 3: Machine Learning Tools
    1:34:20 - Machine learning tools overview
    1:38:36 - Machine learning toolbox (experiment tracking)
    1:39:54 - Pretrained models for transfer learning
    1:41:49 - Data and model tracking
    1:43:35 - Cloud compute services
    1:47:07 - Deep learning hardware (build your own deep learning PC)
    1:47:53 - AutoML (automatic machine learning)
    1:51:47 - Explainability (explaining the outputs of your machine learning model)
    1:53:38 - Machine learning lifecycle (tools for end-to-end projects)
    1:59:24 - PART 4: Machine Learning Mathematics
    1:59:37 - The main branches of mathematics used in machine learning
    2:03:16 - How I learn the math for machine learning
    2:06:37 - PART 5: Machine Learning Resources
    2:07:17 - A warning
    2:08:42 - Where to start learning machine learning
    2:14:51 - Made with ML (one of my favourite new websites for ML)
    2:16:07 - Wokera ai (test your AI skills)
    2:17:17 - A beginner-friendly path to start machine learning
    2:19:02 - An advanced path for learning machine learning (after the beginner path)
    2:21:43 - Where to learn the mathematics for machine learning
    2:22:23 - Books for machine learning
    2:24:27 - Where to learn cloud services
    2:24:47 - Helpful rules and tidbits of machine learning
    2:26:05 - How and why you should create your own blog
    2:28:29 - Example machine learning curriculums
    2:30:19 - Useful machine learning websites to visit
    2:30:59 - Open-source datasets
    2:31:26 - How to learn how to learn
    2:32:57 - PART 6: Summary & Next Steps
    Connect elsewhere:
    Get email updates on my work - dbourke.link/newsletter
    Support on Patreon - bit.ly/mrdbourkepatreon
    Web - dbourke.link/web
    Quora - dbourke.link/quora
    Medium - dbourke.link/medium
    Twitter - dbourke.link/twitter
    LinkedIn - dbourke.link/linkedin
    #machinelearning #datascience
  • Věda a technologie

Komentáře • 1K

  • @mrdbourke
    @mrdbourke  Před 4 měsíci +72

    **2024 Update:** Hello hello! Welcome to the 2020 machine learning roadmap! A few people have asked, "is this still valid for 2024"?
    The short answer: yes, mostly.
    However, it does not include anything on LLMs or generative AI.
    When I made this, LLMs and generative AI were still being figured out. Now they work. Really well.
    Not to worry!
    A new roadmap is in the planning stage.
    I'll update this comment as more progress gets made.
    Leave a reply if there's anything in particular you'd like to see :)
    In the meantime, happy machine learning!

    • @MohammedMohammed-rr8jh
      @MohammedMohammed-rr8jh Před 4 měsíci +3

      Came across this roadmap back in 2020 when i was joining University, bookmarked it and never looked back. Moved on to WebDev, CV and Leetcoding.
      Now in 2024: regretting that decision to not explore/learn ML. I'm finally starting ML and came back to this vid just to see it gettting updated for 2024.

    • @rexsybimatrimawahyu3292
      @rexsybimatrimawahyu3292 Před 4 měsíci

      the rising of chat gpt makes me want to get deeper into LLM, especially the ones from scratch, now im currently learning ur 25H tutorial on PyTorch, but planning it to watch until i am ready to step into LLM,

    • @HamzaKhan-iq4up
      @HamzaKhan-iq4up Před 3 měsíci

      Hi daniel Bourke i am waiting eagerly for your updated roadmap for machine learning 2024

    • @alveeferdous6589
      @alveeferdous6589 Před 2 měsíci

      Thanks for this amazing roadmap !

    • @trilochanasatyakumarkottap5201
      @trilochanasatyakumarkottap5201 Před 2 měsíci

      Prepare new road map

  • @ambarishkapil8004
    @ambarishkapil8004 Před 4 lety +323

    Daniel you, my friend, are a legend. It's so good to see such passion and enthusiasm for your craft, and the ML community is glad to have someone like you blazing a trail so that the new members can follow.

    • @arima973
      @arima973 Před 4 lety +10

      goat for sure

    • @pchen1996
      @pchen1996 Před 4 lety +5

      Agreed, you are so appreciated Daniel

    • @gargitewari8109
      @gargitewari8109 Před 3 lety +2

      ​@@ayaan3429 Hi, could you let me know if we have to go through these resources just in the order he mentioned it? Like ML problems first and ML Process next and so on?

    • @manharsharma1760
      @manharsharma1760 Před 3 lety

      @@ayaan3429 *Tewari : )

    • @kakusingh4683
      @kakusingh4683 Před 2 lety

      @@arima973 1

  • @taejunoh1732
    @taejunoh1732 Před 4 lety +19

    I've never left a comment on CZcams, but I feel like I MUST DO after watching this video. It is very organized and useful to understand how we approach ML and keep learning it. I appreciate you made this great one.

  • @uzaykaradag
    @uzaykaradag Před 3 lety +61

    Presentations in the technical field such as this rarely have this much quality knowledge packed into them but it's even rarer that they are this aesthetically pleasing!

    • @shapesii
      @shapesii Před 2 lety

      you obviously are not technical - you must be one of those "visual people" 🙄

  • @JedidiJedidi
    @JedidiJedidi Před 3 lety +11

    You just contributed to make the world a better place!!!
    I wish if there is a roadmap like that for every subject in the world.

  • @shatandv
    @shatandv Před 3 lety +5

    Thanks, Daniel!
    This is epic and helped understand all of the ML more broadly, in a more connected way.

  • @jac001
    @jac001 Před 3 lety +5

    I'm enjoying this so far. I just started using whimsical and I already love it!

  • @casekingz2273
    @casekingz2273 Před 4 lety +3

    This is by far the most visual map ever created for ML. Daniel is a genius. Energy, communication, value is the most I have ever experienced. Keep this up

  • @daniyalahmed4440
    @daniyalahmed4440 Před 4 lety +9

    Daniel, this is an amazing video. I came back to say thank you for putting extensive work to make this video. The map, instructions, and resources are super helpful. This is the best guidance I have seen so far!
    Thank You Daniel

    • @mrdbourke
      @mrdbourke  Před 4 lety +1

      Thank you Daniyal! So glad you enjoyed it my friend

  • @KenJee_ds
    @KenJee_ds Před 4 lety +184

    Looking forward to this my friend! Great thumbnail 😉

  • @sangeethanarayanan7248

    Thank you Daniel for the incredible effort. Your passion for ML is so apparent thru out the video. Thanks much!

  • @lazarus8011
    @lazarus8011 Před 3 lety +2

    This is gold., Thanks mate, just about to begin my journey of learning Data Science and Machine Learning and this has definitely helped me to orient myself within the field. All the best.

  • @NiloRiver
    @NiloRiver Před 4 lety +9

    Watched the first hour and I would say this is the best foundation I've found so far. Thank You! Nice work brother.

  • @z1lla4
    @z1lla4 Před 4 lety +25

    I really like your organization reminds me of a visual representation of what a tool box would look like to a mechanic

    • @mrdbourke
      @mrdbourke  Před 4 lety +4

      Thank you! I'm showing this comment to my friend who loves cars

  • @lagseeing8341
    @lagseeing8341 Před 4 lety +12

    First time I watched a 2h+ video without sleep all the way to the end.

  • @spartancass
    @spartancass Před 4 lety +13

    Daniel, thanks for this superb video. As someone just starting out on this road, it's very easy to get sucked into the fine details, but this has given me a much better grasp of the big picture. I love your philosophy of not learning for learning's sake, but using this knowledge to build things that matter to people. Keep doing what you're doing!

  • @zachalbers6628
    @zachalbers6628 Před 4 lety +12

    WOW!!!! Thank you for the incredible amount of work you put into this project, it is truly an amazing creation!! Very useful and relative information and the interactive map is really cool! Stupendous!

    • @mrdbourke
      @mrdbourke  Před 4 lety +1

      Thank you Zach! So glad you liked it

  • @leosiemens9202
    @leosiemens9202 Před 4 lety +5

    This is probably one of the best videos out there, congratulations! Perfect compass!

    • @mrdbourke
      @mrdbourke  Před 4 lety +1

      Thank you Leo! So glad you enjoyed it

  • @tashie476
    @tashie476 Před 3 lety +1

    You're a life saver! I was feeling overwhelmed because I was just beginning 😃

  • @aletheavilla
    @aletheavilla Před 3 lety +1

    This is massive! Can't wait to explore these resources on my own. Huge thanks!!

  • @realastronaut4340
    @realastronaut4340 Před 4 lety +13

    This dude is great 🤣love how much fun you're having

  • @MB-hz7wm
    @MB-hz7wm Před 4 lety +7

    What a valuable resource ~ thanks for taking time to produce this, Daniel. I watched David Malon’s Harvard online CS 50 & 100 and wondered where that guy was when I was in high school ~ you both create engaging content. There are a lot of people who appreciate what you do.

    • @mrdbourke
      @mrdbourke  Před 4 lety

      David Malon is epic! Same with CS50!

  • @AJ-xn1qr
    @AJ-xn1qr Před 4 lety +1

    Hello Daniel, Just wanted to say thank you for sharing your knowledge and resources. I have been following you for weeks now and your channel is my favorite to learn about machine Learning... very inspiring and insightful ! Thank you and keep up the good work mate!
    Cheers, Aymane

  • @michaelsprindzhuk6008
    @michaelsprindzhuk6008 Před 4 lety +4

    Lol, man, You. Are. Amazing. Just thank you so much. I'm a software engineer and I don't know any ML engineers in person. It is so helpful to get something like this from the man from ML industry. So many thanks.

  • @velusamymarimuthan984
    @velusamymarimuthan984 Před 3 lety +6

    Thank you Daniel for putting together such an awesome roadmap! It helped me connect all the dots. As you said, there are so many resources out there on the internet but the challenge is to come up with the right path to achieve the goal. I was so confused until I saw this video. I think I have a lot more clarity now. Thank you once again.

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Thank you Velusamy! So stoked to hear it helped you

  • @keith4526
    @keith4526 Před 4 lety +7

    Really Really Really appreciate the time and effort you put into these videos by researching and providing the right info for people to enter the Machine learning space! Keep up the great work man! Cheers.

    • @mrdbourke
      @mrdbourke  Před 4 lety

      Thank you so much legend, so glad you liked it, I really appreciate the kind words

  • @larryyoung1687
    @larryyoung1687 Před 3 lety +2

    You guys are so energetic!! Gratitude and greeting from a newcomer on machine learning!

  • @SaidakbarP
    @SaidakbarP Před 3 lety +2

    Daniel, thank you for such a detailed and beautiful explanation of ML. It is making our learning journey much easier!

  • @anubratabhowmick
    @anubratabhowmick Před 4 lety +24

    This is probably the best roadmap ever!
    Best 2 hrs and 30 minutes ever spent!

    • @mrdbourke
      @mrdbourke  Před 4 lety +2

      Thank you Anubrata! Glad you enjoyed the machine learning feature film

  • @adelbennaceur7636
    @adelbennaceur7636 Před 4 lety +4

    for intermediate level machine learning practitioners this an excellent reminder, a detailed machine learning landscape.
    Very huge contribution to the community.
    you did an Excellent job Daniel. Wish you the best

    • @kennethporst4359
      @kennethporst4359 Před rokem

      Yeah but for a absolute newb like me, I do t know where to begin, or how long this going to take. I just wanted to create a few AI to work for me

  • @ikramansari7214
    @ikramansari7214 Před 4 lety

    Wow, such a nice and organized course, the best resource I found so far! Thank you very much Daniel

  • @santagoldie
    @santagoldie Před 3 lety +1

    Awesome effort, incredible great job, and most important of all, thank you for your generosity of sharing this!

  • @zohairniroomand2709
    @zohairniroomand2709 Před 3 lety +27

    Finally someone explains ML in an understandable, fun way with a lovely accent :)

  • @user-th7cu9ll4j
    @user-th7cu9ll4j Před 10 měsíci +6

    This was literally mind blowing, thank you for taking time to create the roadmap. I'm a junior at a university studying CS, and I just decided during my sophomore summer quarter that I want to specialize in machine learning/data science. But it's been overwhelming and I feel I don't have much time left since I'm already starting as a junior. I hope I can make it out alive and successful; Im gonna utilize all your resources and books and courses in the best of my abilities. Cheers!

  • @themathbehind3104
    @themathbehind3104 Před 4 lety +2

    Now, this is something else. The best instructions to learning ML I have ever seen, thank you Daniel for the effort you put in this. Now I can really start to learn ML like a true Legend, thank you sir!!!

  • @ziyangfeng4639
    @ziyangfeng4639 Před 4 lety

    One of the best guide videos I have ever seen. Thank you!

  • @win9160
    @win9160 Před 3 lety +6

    You literally have everything I was looking for. Thanks!

    • @mrdbourke
      @mrdbourke  Před 3 lety +2

      Thank you Win! So stoked you enjoyed it

  • @chriscockrell9495
    @chriscockrell9495 Před 4 lety +4

    "Data and Model preparation" would make sense from a process perspective. Collection and preparation are not steps of a process of building ML system. (Many of the subheading aren't process either, but concepts and their explanations for understanding.)
    I love the concept map and it's graph theory connectivity.
    Great teaching material. Truly inspirational. I've been looking at Data Analytics, Machine Learning, Neural Networks, Artificial Intelligence, and Time Series modeling for a while now as an effort to narrow down a PhD dissertation topic, and this really pulls together a lot that I've come to understand and see differently since starting this journey. This is such a great narration of ML that I'll have to watch it again and improve my notes.
    I've been exploring the nature of data to see about other angles of attack and I'm impressed at many of your summaries. I've looked a lot at graphs and the information they convey. I've explored your data types in depth. Nominal, ordinal, interval, numerical. Time series has been an interesting dimension as it forces you to see that people can only conceptualize and create systems that are discrete. We have to break a continuous reality (data) into discrete concepts like a person (or an object to be more precise, like the ship of thesius concept, if you cut off my hand, am I still me?) or a word (with an essences of structured properties and characteristics).
    Timestamps:
    0:00 - Hello & logistics
    0:57 - PART 0: INTRO
    1:42 - Brief overview of topics
    3:05 - What is machine learning?
    4:37 - Machine learning vs. traditional programming
    7:41 - Why use machine learning?
    8:44 - The number 1 rule of machine learning
    10:45 - What is machine learning good for?
    14:27 - How Tesla uses machine learning
    17:57 - What we're going to cover in this video
    20:52 - PART 1: Machine Learning Problems
    22:27 - Categories of learning
    26:17 - Machine learning problem domains
    29:04 - Classification
    33:57 - Regression
    39:35 - PART 2: Machine Learning Process
    41:57 - 6 major steps in a machine learning project
    43:57 - Data collection
    49:15 - Data preparation
    1:04:00 - Training a model
    1:23:33 - Analysis/evaluation
    1:26:40 - Serving a model
    1:29:09 - Retraining a model
    1:30:07 - An example machine learning project
    1:33:15 - PART 3: Machine Learning Tools
    1:34:20 - Machine learning tools overview
    1:38:36 - Machine learning toolbox (experiment tracking)
    1:39:54 - Pretrained models for transfer learning
    1:41:49 - Data and model tracking
    1:43:35 - Cloud compute services
    1:47:07 - Deep learning hardware (build your own deep learning PC)
    1:47:53 - AutoML (automatic machine learning)
    1:51:47 - Explainability (explaining the outputs of your machine learning model)
    1:53:38 - Machine learning lifecycle (tools for end-to-end projects)
    1:59:24 - PART 4: Machine Learning Mathematics
    1:59:37 - The main branches of mathematics used in machine learning
    2:03:16 - How I learn the math for machine learning
    2:06:37 - PART 5: Machine Learning Resources
    2:07:17 - A warning
    2:08:42 - Where to start learning machine learning
    2:14:51 - Made with ML (one of my favourite new websites for ML)
    2:16:07 - Wokera ai (test your AI skills)
    2:17:17 - A beginner-friendly path to start machine learning
    2:19:02 - An advanced path for learning machine learning (after the beginner path)
    2:21:43 - Where to learn the mathematics for machine learning
    2:22:23 - Books for machine learning
    2:24:27 - Where to learn cloud services
    2:24:47 - Helpful rules and tidbits of machine learning
    2:26:05 - How and why you should create your own blog
    2:28:29 - Example machine learning curriculums
    2:30:19 - Useful machine learning websites to visit
    2:30:59 - Open-source datasets
    2:31:26 - How to learn how to learn
    2:32:57 - PART 6: Summary & Next Steps

  • @tanvipunjani7096
    @tanvipunjani7096 Před 3 lety +1

    Thank you for sharing this ! Love it. It's the best video I came so far on ML

  • @germanshooter2
    @germanshooter2 Před 4 lety +2

    Absolute Legend mate! Well done!

  • @TheMrInnokenty
    @TheMrInnokenty Před 4 lety +184

    finally after 8 years of watching videos, youtube has recommended smth really good)!

  • @Hahalol663
    @Hahalol663 Před 4 lety +4

    You sir, are a legend. Unbelievable helpful, thank you so much for this!

    • @PeterFinch
      @PeterFinch Před 3 lety

      Yes Pandagoggles.
      What he said.

  • @ac6852
    @ac6852 Před 2 lety

    Incredible!!! Thank you for your hard work and spending the time to create this compass that makes my data journey a lot more clearer!! Cheers!

  • @yachturi
    @yachturi Před 3 lety

    This is the best machine learning introduction video than any others I have seen or sessions that I have attended.

  • @kesavae9552
    @kesavae9552 Před 4 lety +66

    Best thing happened to me so far in 2020😌

    • @mrdbourke
      @mrdbourke  Před 4 lety +6

      So glad you enjoyed it!

    • @vivasjimmy
      @vivasjimmy Před 4 lety +1

      think POSITIVE, we soon all will be fine

    • @itsbk6192
      @itsbk6192 Před 4 lety +3

      @@mrdbourke I really don't know how I can fully show you my appreciation. THIS IS AMAZING. Thank you so much m8! You're brilliant.

  • @vidhya_raghunathan
    @vidhya_raghunathan Před 3 lety +3

    Best roadmap for any AI/ML aspirants! . Thank you Daniel for such a comprehensive explanation full of valuable information complemented with inspiration and encouragement.

    • @mrdbourke
      @mrdbourke  Před 3 lety +1

      Thank you Vidhya! I appreciate it :)

  • @imagenigraphics
    @imagenigraphics Před 3 lety +1

    This has been very informative especially now that I am working on my capstone project. Thank you very much! Subscribed.

  • @anhiva
    @anhiva Před 4 lety

    Thank you very much for this roadmap, I will be using it, no doubt! And the video cleared some of the basic questions and fears I had.

  • @saisingamsetty5073
    @saisingamsetty5073 Před 3 lety +6

    Thank you Daniel, 😊
    This is the best movie I have seen in my life , now I have enough energy to boostup.⚡🔥
    learnt a lot. It cleared all my queries.😇
    I really love your setup.😁

    • @mrdbourke
      @mrdbourke  Před 3 lety +2

      Thank you Sai! Glad you enjoyed it legend! All the best my friend

  • @okewunmipaul2903
    @okewunmipaul2903 Před 4 lety +13

    Great work Dan 👍🏽 , My learning path almost aligns completely, One thing i feel is missing is "Joining a local community of ML enthusiasts around".. it can be a lot more difficult being a lone ranger.

    • @mrdbourke
      @mrdbourke  Před 4 lety +1

      Okewunmi! Thank you thank you thank you, that is some great advice my friend! Joining a community is definitely valuable.

    • @bad2160
      @bad2160 Před 2 lety

      @@mrdbourke L. P p po. M. M. M o. L ok. M pm

  • @haohe7098
    @haohe7098 Před 4 lety

    What a perfect video for people what wants to start their learning of machine learning but got no idea where to start with!

  • @GOA_Pictures
    @GOA_Pictures Před 4 lety

    I've been considering myself as a legendary procrastinator before watching this video.
    didn't even pause once, watched till the end.
    the most detailed guide, really, appreciate that

  • @1Galaron
    @1Galaron Před 4 lety +3

    I've just started to investigate ML as I'm a project manager, not a coder. So this introduction was the best I've seen so far, and I've been looking around for weeks. I particularly applaud the emphasis on being a chef, not a chemist. If you want a student to really get into a subject, you should start by having them fall in love with the subject, not begin at the molecular level. Your enthusiasm and clarity throughout this presentation supported that chef metaphor wonderfully. The only thing I would be interested in hearing your thoughts on are possible "fun" projects for beginners. I am not particularly interested in computer vision, for example, but using ML to create a custom audio engine, or ML to track personal bio-metrics, or something like that. I would love to know your ideas on some fun, easy projects. Thanks again for the wonderful work.

  • @PatelArpitt
    @PatelArpitt Před 4 lety +6

    Dude this is insaneeeee!!!! I love you

    • @mrdbourke
      @mrdbourke  Před 4 lety +2

      Thank you Arpit! Glad you enjoyed it!

  • @yaliofek4384
    @yaliofek4384 Před měsícem

    this is actually so good, that I think that you have done it better than anyone else

  • @starshipx1282
    @starshipx1282 Před 3 lety +2

    This really brings the big picture together. Great presentation.

  • @DataProfessor
    @DataProfessor Před 4 lety +8

    Same here, also looking forward to this video 😃👍

  • @jeetshah8513
    @jeetshah8513 Před 4 lety +6

    Hey, you are awesome, you have given so much of (WELL ORGANISED) content to everyone.....
    Great!!!
    I was wondering if you can make a similar one for Deep Learning???
    Eager for it.

    • @mrdbourke
      @mrdbourke  Před 4 lety +1

      Thank you so much Jeet! There’s a fair bit of deep learning in this one, but if you’re looking for a dedicated deep learning one, I’d check out: github.com/dformoso/deeplearning-mindmap (these are what I originally based the roadmap on)

  • @pahvalrehljkov
    @pahvalrehljkov Před 4 lety

    mate, gotta say, nice job, i appreciate the effort and sourcing of links and definitions...

  • @aniokechukwudi2472
    @aniokechukwudi2472 Před rokem +1

    You are are just so inspiring..You work so hard and there is still this energy you have that just motivates me..
    You are truly a legend. 💟

  • @SpicyMelonYT
    @SpicyMelonYT Před 4 lety +4

    you explain things exactly the way i think, sound like in explaining this stuff to myself. i also realise why people lose me when i'm explaining things to the haha. but nah i got what you would putting down and loved the professionalism of this video. That food example in the beginning is an amazing way to explain ML

    • @mrdbourke
      @mrdbourke  Před 3 lety +1

      Thank you! So glad you enjoyed it. I liked the food example too haha

  • @mrdbourke
    @mrdbourke  Před 3 lety +126

    Hey there! Happy New Year! Speaking of the new year, you might be wondering "is this still valid for 2021?" and the answer is yes, it's still valid for 2021.
    However, you might notice a few changes to the websites mentioned throughout video (some have had a design change), including sites like Made with ML who've recently pivoted: madewithml.com/pivot/
    All of the main concepts remain valid for the new year.
    If anything changes drastically, I'll look to update/make a new version of this video.
    In the meantime, happy machine learning!

    • @snehaliitbhucse5523
      @snehaliitbhucse5523 Před 3 lety +3

      YOU HAVE SAVED ME MANY YEARS!!!

    • @ATLTraveler
      @ATLTraveler Před 3 lety

      I swear, portions of this could be used as an SNL skit with Andy Samberg trying to explain or sell something to me, a dumb idiot...

    • @islandparadise
      @islandparadise Před 2 lety

      Sat through this beast (at 1.25x speed; perfect pace & Aussie accent). Gave me lots of clarity as I learn better from building than from watching videos. Guess I won't be needing Coursera Plus (yet)! Thanks so much Daniel!

    • @bhajanlaldaglabhajanlaldag4245
      @bhajanlaldaglabhajanlaldag4245 Před 2 lety +1

      Initially we can meet

    • @ramshringarmishra4885
      @ramshringarmishra4885 Před 2 lety

      sorry

  • @javiervaldeperez9752
    @javiervaldeperez9752 Před 3 lety +1

    Thank you very much Daniel. This video is so valuable! Amazing teaching and communicating skills!

  • @joeewert4503
    @joeewert4503 Před 3 lety +1

    Thank you so much for this. This is exactly what I’m looking for.

  • @ChrisLovejoy
    @ChrisLovejoy Před 4 lety +38

    Man like Daniel sitting on 1000+ Medium notifications 😂😂 5:33
    Respect bro hahahah

  • @MR-uk7iy
    @MR-uk7iy Před 3 lety +6

    pretty good, now we just got to teach 10 years old's this, change the future

  • @krishnendusinha5812
    @krishnendusinha5812 Před 2 lety

    mindblowing work Daniel!!! Thank you very much for such a roadmap!

  • @JohnnyG196
    @JohnnyG196 Před 3 lety

    God bless you, sir. This information is a Godsent! I'm very new to ML with a burning passion to help develop self driving cars and so many moments I want to give up because I'm aimless wandering around a sea of infinite overwhelming information. Your video has not only reignited my curiosity but has GIVEN ME A PATH to actually navigate this powerful journey. Thank you so much for gifting us this valuable knowledge. 🙏

  • @felixfunk6816
    @felixfunk6816 Před 4 lety +23

    Me checking the phone during a Pomodoro break: 'Oh, Dan uploaded a video.' I click it. Dan: "...I'm not going to hold you up for long. ..." - I look at the duration of the video. Me: Oh no...

    • @mrdbourke
      @mrdbourke  Před 4 lety +2

      Hahaha! I give permission to skip my videos in order to maintain concentration

  • @mperez671
    @mperez671 Před 4 lety +24

    I've been self-studying full-time since January. Had to make my own curriculum and everything. Really interested to see how our roadmap and resources line up.

    • @jimsbond03
      @jimsbond03 Před 4 lety +1

      same here...

    • @mperez671
      @mperez671 Před 4 lety +14

      One of the viewers reached out to me via email so I thought I'd share it here for anyone else that was curious. This is copied from my email to him so it's LONG.
      I mainly used textbooks and Stanford/MIT lectures and coursework freely available on CZcams and the courses' websites.
      I guess the biggest insight I learned from self-studying and everything is that the field is developing rapidly. It's getting easier and easier to access certain aspects of ML/DL without necessarily needing a deep understanding of the theory and academics to start working with them. This isn't to say that the foundations aren't important, but that you should actually start getting some hands-on experience sooner than you might think.
      If I was to distill the curriculum I had and maybe do things over from scratch I'd probably take the following approach.
      Start with basic probability and statistics on Khan Academy and the Statistics and Machine Learning playlists by StatQuest on CZcams. Use python to recreate what you can during those courses (combinatorics, probabilities, mean, standard deviation, etc). Look for standard library tools that can do it as well! Like sampling in the standard library's random module (this came up in a coding interview and I tried to hand-code something that could've been solved in one line!).
      Learn to clean data. Numerical, categorical, timedate, EVERYTHING! (Datetimes ate up 2 out of 3 hours I was giving for another coding interview).
      Learn how to do a couple basic linear and nonlinear ML models with sklearn (single and multinomial linear regression, random forests, gradient boosting, svm). Add in a video or two on regularization (StatQuest has some I think).
      Make a couple models or so on jupyter notebook. Get comfortable with the commands and cleaning and try it out on a problem you're interested. Pick a random dataset and see what it's like to really clean it and have to form a pipeline to feed your model. The modeling is the easy part.
      If you're comfortable or bored, go to the Deep Learning for Coders course by FastAI. Jeremy Howard's videos are great and you can immediately start fiddling with things. He also has a free book (FastAI Book) which covers a lot of topics and goes alongside the course. My favorite part is that the course has a section on how to actually deploy these things and not let them die in a forgotten jupyter notebook somewhere.
      The truth of the matter is that the majority of the people will not be developing state of the art algorithms or libraries. The FastAI course will kinda show you that. Think of something that interests you, something connected to a hobby or thought.
      If you get interested in learning deeper theory on Machine Learning, check out Intro to Statistical Learning with Tibshirani, Hastie, and Witten. For Deep Learning, find Karpathy's CS231n series on youtube then watch the updated version of the course in high speed to find what advances have happened in the last couple years. A very dry but amazing book is Hands-On ML. The first two chapters alone cleared up so much for me as far as how a real project is structured.
      Extra: Learn FastAPI, streamlit and plotly/dash and start cranking out some webapps.

    • @revelations2044
      @revelations2044 Před 2 lety

      @@mperez671 thanks buddy

  • @Aditya-zf7wq
    @Aditya-zf7wq Před 2 lety

    Wow never seen a 2+ hr roadmap video, grt work!

  • @jess.uraura
    @jess.uraura Před 4 lety +2

    Sweet. Can't wait for this! ❤️

  • @1122slickliverpool
    @1122slickliverpool Před 4 lety +56

    Brah you came out with a machine gun with this content today. 😂🔥❤️

    • @mrdbourke
      @mrdbourke  Před 4 lety +6

      Hahahaha thank you brother! Thought some people might be craving a movie-length field guide to machine learning

    • @davethomas3744
      @davethomas3744 Před 3 lety

      I have come up with a Life Goal of verifying everything so I can not be lied to anymore. That project is so vast that the Table Of Contents has become huge. I REQUIRE this kind of information to organize and make my research available to the world. I literally couldn't do it without this materia!!! Your enthusiasm sounds intimately familiar 😁😁😁
      I set a goal of reporting in 35 years. This will enable my books/website material. I will have fun getting down to a 3 minutes summary in English. 15 languages total, for less than 1 hour of talking.
      This material will end all the lies that I have functioned under.
      Now how to structure my data. Cosmology should be interesting area to START! Electric Universe vs gravity only models for fun and profit👍🏻👍🏻👍🏻😁

  • @dookoo2
    @dookoo2 Před 4 lety +227

    2:36 "don't want this video getting too long"
    *looks at the duration of the video*

    • @mrdbourke
      @mrdbourke  Před 4 lety +90

      If you wanted a feature length film on machine learning, I got you!

    • @anprabh1
      @anprabh1 Před 4 lety +28

      *Laughs in 2x

    • @dookoo2
      @dookoo2 Před 4 lety +16

      @@mrdbourke It's good. The long stuff is always the good stuff.

    • @quasa0
      @quasa0 Před 4 lety +3

      @@anprabh1 lmao

    • @anprabh1
      @anprabh1 Před 4 lety +17

      jayms that's what she said.

  • @zaheramasha8139
    @zaheramasha8139 Před 2 lety +1

    95 % confidence interval. Thank you for this amazing mind map

  • @jennykudymowa8454
    @jennykudymowa8454 Před 3 lety +1

    I'm only halfway through and I think what you created is amazing and extremely helpful! Thanks so much!

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Thank you Jenny! Stoked you’re enjoying :)

  • @yosansu
    @yosansu Před 3 lety +4

    Hey everyone! I wanted this comment to be the place where you can share, where you are at this point of time into the roadmap. All the best.

  • @gursimransingh815
    @gursimransingh815 Před 2 lety +10

    Great, is this still valid for 2022?

  • @emileharel4595
    @emileharel4595 Před 3 lety +2

    You're a great educator bro, thanks for this vid, it probably took a ton of editing

  • @madelcamp
    @madelcamp Před 4 lety

    Amazing work!!! thanks for existing in this life, bro!

  • @quahntasy
    @quahntasy Před 4 lety +7

    Best thing on CZcams right now.
    Also 2:36 *Don't want video to get long*
    Video duration 2 hours lol

  • @findingyou6905
    @findingyou6905 Před 4 lety +16

    NOTE!!!!! Please also tell us the resources where we should learn all from the ground zero to advance

  • @preethamdp729
    @preethamdp729 Před 4 lety

    you just made a huge contribution towards learning communities . What you have created here is a milestone . I knew most of the things you discussed here but still i was opened huge amount of resources i didn't know existed . Keep up the good work .

    • @mrdbourke
      @mrdbourke  Před 4 lety

      Thank you so much Preetham! Glad you enjoyed it :D

  • @nisun4231
    @nisun4231 Před 3 lety +1

    This is such an awesome learning map for ML! It has everything! Big thanks to you, Dan!

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Thank you Ni! I really appreciate it

  • @xSNYPSx
    @xSNYPSx Před 4 lety +3

    Why still nobody did "DNA - to - appearance" Deep learning alghoritm for animals and plants ?

    • @shivamraisharma1474
      @shivamraisharma1474 Před 4 lety

      @Newthon Raphson four five one any git or links for your research until now? I am very interested

    • @jameshughes3014
      @jameshughes3014 Před 4 lety

      Because you havn't written it yet.

  • @sabihass5361
    @sabihass5361 Před 3 lety

    This information is gold, please keep making stuff like this!

  • @sunbath1024
    @sunbath1024 Před rokem

    Thanks Daniel. This video is so cool. Watching this in 2023 as a start for ML learning journey~!

  • @bentoa3317
    @bentoa3317 Před 3 lety

    Wooh ! I am speechless you've done such a great work and shared it to allow us getting into this beautiful world of coding & ML, now let's get to work !

  • @rahulbandopadhyay6700
    @rahulbandopadhyay6700 Před 4 lety +1

    Wouldn't miss a single update from this channel. Daniel has been a brilliant instructor for me in his Complete ML and DS course (which I would highly recommend to the newcomers)

    • @mrdbourke
      @mrdbourke  Před 4 lety

      Thank you Rahul! That’s very kind of you

  • @hemrajmendon6234
    @hemrajmendon6234 Před 4 lety

    This is the most awesome detailed explanation on machine learning. You sparked a light for ML in me. Thank you very much!!!

  • @ganeshallam684
    @ganeshallam684 Před 3 lety +1

    Awesome, i was getting confused a lot when ever i thought to start machine learning, but one video by you cleared all my doubts and confusion in one shot

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Glad to hear you enjoyed Ganesh!

  • @mh369
    @mh369 Před 2 lety

    great work, thanks for taking the time to create the roadmap!

  • @probkaable
    @probkaable Před 3 lety

    Man, I've seen many valuable articles... but this ML road map is absolutely astonishing! Respect! :)

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Thank you Bartosz! I really appreciate it

  • @antigopp
    @antigopp Před 3 lety +1

    Amazing video, man! The best I've seen so far!
    Thank you and congratulations!

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Thank you! Glad you enjoyed it

  • @sakthiprakash9010
    @sakthiprakash9010 Před 4 lety

    dude you have done amazing thing for people like us who wants to starts ML journey .keep it up dude

  • @michakwiatek2076
    @michakwiatek2076 Před 4 lety +1

    That's a pure gold. Thank you Daniel for amazing roadmap and amazing presentation!

  • @brajasimhan
    @brajasimhan Před 3 lety

    Thanks Daniel. This is the single most comprehensive consolidation of every resource and avenue related to ML. May you live well ^^

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Thank you Rajasimhan! So stoked you enjoyed

  • @byrospyro4432
    @byrospyro4432 Před 3 lety +1

    wow thanks for this mate, its so much easier to understand when everything is laid out like this, great work!

  • @eliporter3980
    @eliporter3980 Před 5 měsíci

    This is incredible. Thanks for creating this.

  • @hybridlex8971
    @hybridlex8971 Před 3 lety

    Even though you posted this ages ago - just want to say THANK YOU SO MUCH for this resource, i've watched and clicked different bits at different times and it's literally always the ML and life boost I need haha !

    • @mrdbourke
      @mrdbourke  Před 3 lety

      Thank you thank you thank you! I really appreciate it