What If I Am Not Good At Mathematics

Practitioners of practical subjects can suffer from math envy.

This is where they think that mathematicians are smarter than they are and that they cannot excel in a subject until they “know the math”.

I have seen this first hand, and I have seen it stop people from getting started.

In this post, I want to convince you that you can get started and make great progress in machine learning without being strong in mathematics.

What if I'm Not Good at Mathematics

What if I’m Not Good at Mathematics
Photo by meneldur, some rights reserved

Get Started and Learn by Doing

I didn’t learn boolean logic before I started programming.

I just started programming and you probably did to.

I followed an empirical path that involved trial and error. It is slow and I wrote a lot of bad code, but I was passionately interested and I could see progress.

As I built larger and more complicated software programs I devoured textbooks because they let me build my programs better. I hunted for conceptual and practical tools I could use to overcome the limitations I was actually experiencing.

This was a powerful learning tool. If I had started out programming by being forced to learn boolean logic or concepts like polymorphism, my passion would never have been ignited.

The Danger Zone

I like it when my programs don’t work. It means I have to roll up my sleeves and really understand what is going on.

You can get a long way by copy and pasting code without really understanding it. You only need to understand blocks of code as functional units that do a thing you need done. Glue enough of them together and you have a program that solves the problem you need solved.

This empirical hackery is a great way to learn fast, but a terrifying way to build production systems. This is an important distinction to make. The often spoken of “danger zone” is when systems built from empirical learning are made operational and the author does not really know how it works or what the results actually mean.

This is a very real problem. For example, take a look at some I.T. systems and webpages of small businesses that put up with this level of work.

In my mind, a prototype is a ball of copy-pasted mud held together with sticky tape that might sketch out what a solution could look like.

An operational system or a system that produces results or decisions used operationally has no surprises. You feel comfortable having an all day code review with the team picking over every line of code.

The Technician

You can get started in machine learning today, empirically. Three options available to you are:

  1. Learn to drive a tool like scikit-learn, R or WEKA.
  2. Use libraries that provide algorithms and write little programs
  3. Implement algorithms yourself from tutorials and books.

More than options, this can be the path of the technician from beginner to intermediate that is learning the mathematics required for a technique, just-in-time.

Define small problems, solve them methodically and present the results of what you have learned on your blog. You will start to build up some momentum following this process.

There will be interesting algorithms that you will want to know more about, such as what a particular parameter actually does when you change it or how to get better results from a particular algorithm.

This will drive you to want (need) to understand how that technique really works and what it is doing. You may draw pictures of data flow and transformations, but eventually, you will need to internalize the vector or matrix representations and transformations that are occurring, only because it is the best tools we have available to clearly unambiguously describe what is going on.

You can remain the empiricist. I call this the path of the technician.

You can build up an empirical intuition of which methods to use and how to use them. You can also learn just enough algebra to be able to read algorithm descriptions and turn them into code.

There is a path here for the skilled technician to create tools, plug-in’s and even operational systems that use machine learning.

The technician is contrasted to the theoretician at the other end of the scale. The theoretician can:

  1. Internalize existing methods.
  2. Propose extensions to existing methods.
  3. Devise entirely new methods.

The theoretician may be able to demonstrate the capability of a method in the abstract, but is likely insufficiently skilled to turn the methods into code beyond prototype demonstration systems at best.

You can learn as little or as much mathematics as you like, just in time. Focus on your strengths and be honest about your limitations.

Mathematics is Critical, Later

If you have to learn linear algebra just-in-time, why not learn it fully more completely up front and understand the machine learning methods at this deep level from the beginning?

This is certainly an option, perhaps the most efficient option which is why it is the path used to teach in university. It’s just not the only option available to you.

Just like learning to program by starting with logic and abstract concepts, internalizing machine learning theory may not be the most efficient way for you to get started.

In this post, you learned that there is a path available for the technician separate from that of the theoretician.

You learned that the technician can learn the mathematical representations and descriptions of machine learning algorithms just-in-time. You also learned that the danger zone for the technician is overconfidence and the risk of putting systems into production that are poorly understood.

This might be a controversial post, leave a comment and let me know what you think.

56 Responses to What If I Am Not Good At Mathematics

  1. Avatar
    Rishi July 11, 2014 at 11:20 am #

    This is exactly what I did at Cal. Started off with the technician route, struggled and studied through really intense ML classes, learning as I went. The math was definitely intimidating, but over time I got a lot better at it. While Ive got a ways to go before becoming the theoretician, the more I do, the more intuition I develop. Also, learning theory is a lot more fun once you have some sense of why you need it. Learning the limitations of simple hacking is a strong motivator for doing more math and CS stuff.

    • Avatar
      jasonb July 11, 2014 at 7:14 pm #

      Thanks for sharing Rishi, it’s great yo hear that you had a similar experience.

      • Avatar
        Peter November 25, 2017 at 3:09 pm #

        I had some college, I love math but I am over 50 and scare if it wouldn’t be waste of time. Also, which is easier Data Analytics or ML Tech.?

        • Avatar
          Jason Brownlee November 26, 2017 at 7:31 am #

          Data analysis is easier than machine learning.

          Don’t follow easy, use whatever tools you need in the toolbox to get the results required.

          • Avatar
            Francois March 30, 2023 at 7:16 am #

            I have a ML instructor who’s part of a Data Analytics (DA) boot camp; he’s helping us with the fundamentals we need to use and understand how ML can be used to perform better Data Analytics.

            This approach is very motivating for us, students, because we already got a taste of the limits of strict DA and how ML can help go beyond and farther.

          • Avatar
            James Carmichael March 31, 2023 at 7:06 am #

            Thank you for your feedback Fracois!

  2. Avatar
    Alex September 24, 2014 at 11:10 am #

    Great advice!

  3. Avatar
    Mike September 29, 2014 at 2:28 pm #

    Awesome post. You spoke to the core of my existence as a software engineer and also the route I have been taking in machine learning. I appreciate you taking the time to inspire me to keep pressing on.

    • Avatar
      jasonb September 29, 2014 at 7:34 pm #

      I’m really glad to here that Mike! Hang in there mate.

  4. Avatar
    Stefan October 21, 2014 at 2:03 pm #

    Thanks for this post. I found it by searching for an answer to the question “why I don’t get machine learning”. I guess you can say I am on the “theoretician” path right now, trying to learn machine learning in university without having sound math nor statistics background. It is a very daunting experience. Reading textbooks in machine learning without understanding most of the mathematics/statistics terminology is like reading in a language you don’t know. But I am able to solve problems with scikit-learn and your reminder of how I started learning programming helps me to keep going.

    • Avatar
      jasonb October 21, 2014 at 6:04 pm #

      Great to hear, hang in there Stefan and ask lots of questions!

  5. Avatar
    Cornelius April 7, 2015 at 1:10 pm #

    An enormous source of encouragement for a person with little background in Statistics & Probability!!

    No words can fully describe my heart-felt gratitude towards your contribution to the quest of Machine Learning for all!

    God bless!

  6. Avatar
    Ishwar August 22, 2015 at 10:50 pm #

    Great advice.
    I started coursera course on machine learning. While it is a great course, I am almost giving up on it, due to the theory intensive approach. I definitely have learnt a lot. But as a programmer, I would swear by your approach.

    Thanks!

  7. Avatar
    Andri September 30, 2015 at 2:27 am #

    But what if one wanted to improve on the math needed in ML, to get from math novice to advanced? What are the main areas to study (foundations/fundamentals/prelim concepts and definitions)? do you have a post on this?

    Thanks!

  8. Avatar
    Robert November 1, 2015 at 2:37 am #

    The project centric approach is by far the most effective. Mathematics makes sense and actually sticks when its applied in context.

  9. Avatar
    Shreejit March 2, 2016 at 3:25 pm #

    I just love this post simply because I am a programmer first who wants to understand the problem and solve it with “code”. I do not understand a lot of stats/maths/linear algebra.
    Your top down approach should be the go to approach for programmers in this field.

  10. Avatar
    Tyler March 9, 2016 at 2:11 am #

    Another reason for top-down is this. Once you hit the math, it perks your ears to the applicable concepts when they come. I took stats once & remember thinking “Eigenvectors? When the heck am I gonna use these?”. Now I’m going back, re-learning and eating it up.

    I personally like the “sweet and mop” approach. Sweep: take a basics on math (even some quickie YouTube vids); learn the basics of ML, enough to use scikit-learn. Now start doing, and 1h each day mop: start from the beginning, and thoroughly learn it all. That is: (1) quickie top-down, (2) do, (3) thorough bottom-up.

  11. Avatar
    James Burkill March 16, 2016 at 7:41 pm #

    There still seems to be a lot of people out there who believe they can never become proficient at mathematics. This really holds a lot of people back and it shouldn’t.

    That could be, in part, because of math anxiety (I wrote about this recently http://www.mlopt.com/?p=73). It could also be due to the abstract manner in which math is taught in schools. It isn’t easy to learn abstract concepts, but it’s also unnecessary in this case. You can learn the math effectively by applying it to a concrete problem. That means diving in to the machine learning, and dealing with the math as it is presented. In my view it is a mistake to avoid the math, especially early in the learning process when the student is becoming acquainted with the algorithms.

    • Avatar
      S. September 17, 2016 at 10:56 pm #

      thank you so, so much for your piece on math anxiety. as someone who just started their computer science track (undergrad), and aspires to go into artificial intelligence, with very little background in math and terrible math anxiety.. this helped a lot. I know that if I can do it in the code, I should be able to do it on paper. yet I’m trying to avoid a calculus/math course at all cost. this really motivated me to do better and just keep practicing.

  12. Avatar
    Paul Hargis March 19, 2016 at 6:20 am #

    I have a B.S. in Mathematics, and I agree with your approach. I certainly don’t remember everything I studied in college, and I have spent my career as a software developer learning things as-needed (just-in-time). And you are right, once you have the motivation to learn something, because it solves an immediate problem you have, you will learn it. I also agree with James above that people should not fear math – however, math anxiety is real, possibly the result of how we teach math to kids. Another point of view that your post alludes to is, spend your time solving the RIGHT problem; there are lots of problems out there, so spend your time wisely. Once you are sure your time will be well spent, the learning will be much easier.

  13. Avatar
    Michael Rasolom June 13, 2016 at 10:36 pm #

    Great , thank you jason

  14. Avatar
    Adolfo October 6, 2016 at 6:45 am #

    Hello, currently I’m taking a MOOC from CalTech and it’s math intensive and sometimes I got very angry and frustrated for not understanding the concepts and the math involved, it makes me feel dumb! Thanks for this post, it gives me some motivation to give it a second chance.

  15. Avatar
    Ravi Shankar October 19, 2016 at 7:20 pm #

    I do agree with your very practical approach. A new area like machine learning is quite exciting for people right from a researcher to a software professional. For me, machine learning provides me a new way to address my challenging problems. A formal learning will provide me good foundation to understand machine learning better. But I am quite keen on applying it to solve my problems. While I can pick up theory by putting extra effort, I would love to do just-in time when and how much is needed. Yes, I am motivated to learn/apply new stuff wearing a practical hat, Thanks, Ravi

  16. Avatar
    Abhinav Kumar April 22, 2017 at 11:40 pm #

    I am interested in Machine Learning and I am going to follow the above approach. Thank you

  17. Avatar
    Rajiv Manivannan May 22, 2017 at 4:17 pm #

    I do agree with your approach. I really don’t remember the mathematics learned in my college stream.Hope this will workout. Thanks for your advise.

    • Avatar
      Jason Brownlee May 23, 2017 at 7:48 am #

      Thanks Rajiv, hang in there!

      • Avatar
        Bintang A.S.W.A.M September 20, 2017 at 11:55 pm #

        I totally agree, it should require lots of experience on code implementation rather than mathematical theory inside Machine Learning. Thank’s for your guidance in this dilemma, right now I am more confident learning ML.

  18. Avatar
    suraj Bohara November 3, 2017 at 3:28 pm #

    sir i am learing java script now . i was planing to do application enviroment in php .but sciene i heard about machine learning i want to go for this…what shold i do?

  19. Avatar
    Brian Griner December 21, 2017 at 5:06 am #

    Hi Jason, So the statement ‘get over math envy’ really means ‘delay math envy until you better understand the context for it.’ Makes a lot of sense. It’s essentially how I did it in Grad school when I learned calculus from several books while taking graduate level courses in micro, math econ and math stats. Starting with math for math sake made little sense to me but when I discovered economics and modeling I got it and loved learning it. Thanks, Brian

  20. Avatar
    Jesús Martínez February 19, 2018 at 12:43 pm #

    I’m not sure if learning the theory and math behind everything before using machine learning is the most efficient way, or at least not in an academic or college context due to the limitations it imposes on your learning speed. I think it’s better to learn by doing and deepening as needed. I think the key is to learn the 20% that’s used in 80% of scenarios.

    • Avatar
      Jason Brownlee February 19, 2018 at 3:08 pm #

      I agree. In fact, the 20% can come after you learn the process of working through problems end to end, so that you have a context for the math.

  21. Avatar
    Chih-Yu Hsu February 24, 2018 at 12:43 pm #

    I like to learn mathematics about machine learning.

  22. Avatar
    Wasim May 14, 2018 at 2:44 am #

    What a lovely article. I am sure you won’t something like anywhere else… It’s really awesome if you think. When everyone on the web is just trying to sell their training programs, no one is bothered about writing about this. Thanks a ton.

  23. Avatar
    Saurav June 20, 2018 at 6:50 pm #

    Hi Jason – I am sure you are highly motivated but needed a quick advice from you . I am in mid forties( currently in India and been into database admin most of my career). Undergoing one overseas institutes data science formal path of learning that involves lot of maths. Much of the maths I left and forgot after my grad some 18-20yrs back although i recently built some to an reasonable extent to pass my course and can handle basic matrices, eigen vectors , linear algebra , optimization , but get frustrated everyday when I see that this world of maths is endless and nothing can affirm within us with a conviction that am accomplished . The guys who are already into mathematics core studies are definitely better . I am still determined to learn and jump into machine learning soon . But the very basic question is – will I be able to compete with the maths champs already in the market . By the time I start getting mastery , will be out of the market and retired – so thats my worry . Is it worth doing now although I have no fallback option to revert as am determined – just that am doubting my future success
    Thanks
    Saurav

    • Avatar
      Jason Brownlee June 21, 2018 at 6:15 am #

      Hang in there Saurav.

      Think about to how many programmers you have worked with that had no CS degree. To how many network engineers who had no EE degree, etc.

      Focus on the skill of working through real problems and delivering results.

      The math is not magic that makes everything work or everything make sense. Applied ml is hard work, just like applied anything-else.

  24. Avatar
    Hani Nabulsi May 1, 2019 at 5:03 pm #

    Hi jason. I’m an engineer with a master in Data Science. I totally agree with your post and explain the reason in my personal learning path. With a technical background i had no problem with calculus . I began to developt program in python but i didn’t know some concept for most advanced predictive models (deep learning). So i studied linear algebra (matrix calculus) and a general course in statistics. With this math knowledge I have a deeper understanding of a NN (ex: how a NN is trained). Next step try to build my own cost function (and gradients) for a specific network.(A proj involves RNN algos….I will buy your book ;))

    I’m not a “just in time ” learner. I’d prefer to take a book ( or at least a good number of chapters on most relevant topics) and read it. After that i developt my own projects. The bad news you need a lot of time to familiarize with some advance math/programming concept and at work you don’t have so much time..

    • Avatar
      Jason Brownlee May 2, 2019 at 7:59 am #

      Yes, it’s hard. Each of must find our unique path.

      Hang in there!

  25. Avatar
    Harshit Taneja October 25, 2019 at 6:56 am #

    Hi Jason, I am very afraid of Machine learning because I really do not like calculus at all. It is just so hard. But now I see that every start up is using ML in their software company. Or just every company is using ML. How can someone thrive in this era if he cannot do calculus? I cannot just learn ML because of calculus. Can you please give advice to some guy like me how should I proceed if I am very bad at calculus and complex mathematics? (Barely passed my high school mathematics an year ago)

  26. Avatar
    KS Ganguly July 5, 2020 at 6:11 pm #

    Hi Jason,
    Your article is very motivating for me as I am a CS graduate and have 5 years of experience in Web/ Mobile Development field and I want to step into the field Machine Learning and AI. I am currently working as a software engineer in a organisation where I use languages viz. Python, JavaScript for web/mobile app development. I also have expertise in SQL. As you told to work in real problems, I tried to solve some Kaggle problems. But every time I really get confused that how to start solving a specific ML problem or which model to use to solve a problem. When I tried to search for some solution, I found some core math oriented solutions which demotivate me a lot in my progress. It will be very helpful If you please suggest something to overcome this problem.

    Does my previous software development experience will help me in any way to find a job in Machine Learning? Or this is a total different field where those expertise is no longer needed?

    • Avatar
      Jason Brownlee July 6, 2020 at 6:30 am #

      Thanks, I’m happy to hear that.

      Yes, experience with software development helps a lot!

      The reason, at the end of the day, machine learning methods are just another programming tool. You have to integrate them into software for the model/results to be useful. This is easily forgotten and people spend too much time focusing on the ml methods.

  27. Avatar
    Santiago August 20, 2021 at 12:50 pm #

    Hi Jason, I came across with your blog, while doing a prep course of Udacity (one they gave for free) I’m from Argentina and here in my field, it’s difficult to grow. The teamwork is a dream that never comes true, so with the pandemic situation i come back to this passion (and kind of dream) of being a programmer, learn with some teammates, enjoy the journey. Actually i’m finishing a course in Data Science but honestly i am more bewildered than before. My background is in health science and I started learning machine learning with the idea of combine health with computers so that i can take advantage of my previous knowledge, here i am, starting all over again, trying to find a path to stay in, definitely i am a theoretician, and i need more practice. Thanks a lot for this opportunity of making a ladder where i can feel i am making step by step and go deeper to conquer this dream and hack my life.

    • Adrian Tam
      Adrian Tam August 21, 2021 at 1:04 am #

      Thank you for sharing your story. Hope you enjoy other posts here as well.

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