Close Menu
    Trending
    • Why Should We Bother with Quantum Computing in ML?
    • Federated Learning and Custom Aggregation Schemes
    • How To Choose The Perfect AI Tool In 2025 » Ofemwire
    • Implementing DRIFT Search with Neo4j and LlamaIndex
    • Agentic AI in Finance: Opportunities and Challenges for Indonesia
    • Dispatch: Partying at one of Africa’s largest AI gatherings
    • Topp 10 AI-filmer genom tiderna
    • OpenAIs nya webbläsare ChatGPT Atlas
    ProfitlyAI
    • Home
    • Latest News
    • AI Technology
    • Latest AI Innovations
    • AI Tools & Technologies
    • Artificial Intelligence
    ProfitlyAI
    Home » My Honest Advice for Aspiring Machine Learning Engineers
    Artificial Intelligence

    My Honest Advice for Aspiring Machine Learning Engineers

    ProfitlyAIBy ProfitlyAIJuly 5, 2025No Comments7 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email



    wish to be machine studying engineers.

    I get it.

    It’s an awesome job, with attention-grabbing work, nice pay, and total, it’s very cool.

    Nonetheless, it’s undoubtedly not a stroll within the park to turn into one. On this article, I goal to supply my unfiltered and candid recommendation to aspiring machine studying engineers. 

    This can be extra of a pep discuss, offering you with clear expectations of what it takes to turn into a machine studying engineer and whether or not it’s one thing you actually wish to pursue.

    Be taught each week

    If you wish to turn into a machine studying engineer, then you have to dedicate at the very least 10 hours every week to learning outdoors of your on a regular basis tasks.

    I’m sorry if that upsets you, however once more, if you wish to land a job within the highest-paying tech occupation, you have to put in additional effort and time than different individuals. There may be merely no approach round it.

    With out sounding boastful, I be taught one thing new in machine studying each single week, though I work full-time, create YouTube movies, train 5 occasions per week, and have mentoring and training purchasers. If I could make time, so are you able to. All of it comes all the way down to priorities.

    Virtually the whole lot I’ve achieved in my profession comes from persistently learning and documenting my studying outdoors of labor. I’ve written over 150 technical articles on Medium on matters equivalent to:

    …and lots of extra. You possibly can see the whole listing here.

    This isn’t to boast however to indicate the extent of dedication required to turn into a machine studying engineer.

    Consider this occupation in the identical class as attorneys, docs, or accountants. These fields demand years of examine and observe. The identical is true for machine studying; it’s not usually seen as that attributable to its relative newness.

    I usually say:

     Every little thing is straightforward, however exhausting.

    It’s straightforward to grasp what you have to do however exhausting to do it persistently over time. There is no such thing as a secret; it’s important to take the lengthy highway.

    So, decide one thing you wish to be taught and stick with it till the tip; then, recycle this course of time and again. That’s all there’s to it.

    Lengthen your time horizon

    Even with essentially the most superb background, it is going to nonetheless possible take at the very least two years to turn into a completely certified machine studying engineer at a high firm.

    Don’t fall into the entice of considering that just a few on-line programs and tasks are sufficient to land a job in certainly one of as we speak’s highest-paying tech roles.

    On-line certifications show you how to be taught the content material in knowledge science and machine studying, which could be very useful. Nonetheless, they not often assist you to get employed these days, particularly in our tough job market.

    I don’t say this to discourage you however to set practical expectations. I’ve spoken with many individuals who attempt to shortcut their journey, and I’ve but to see it succeed.

    To turn into a machine studying engineer, you want strong foundations in:

    • Arithmetic
    • Statistics
    • Machine Studying
    • Software program Engineering
    • DevOps
    • Cloud Methods

    A few of these expertise can solely be developed by means of real-world expertise. That’s why I normally suggest individuals begin as knowledge scientists or software program engineers first after which pivot to machine studying engineers, because it’s not an entry-level function.

    Accepting the truth that it is going to take you just a few years to turn into a machine studying engineer is liberating and takes the stress off you.

    Take your time to be taught issues deeply, actually examine, and your data will construct over time. I promise, finally, you’ll be prepared for that ML engineering function when the time is true.

    Cease chasing AI

    Newsflash: A machine studying engineer is not an AI engineer. So cease considering that calling a chatbot API like ChatGPT or Claude makes you a machine studying engineer.

    As a machine studying engineer, you’re anticipated to deeply perceive how fashions/algorithms work and have a agency grasp of statistical studying idea and all the basic arithmetic.

    Meaning realizing core algorithms like:

    Inside and outside.

    Most individuals declare to know them, however you’ll be shocked at how little you truly know.

    I’ve mock-interviewed numerous candidates, and lots of can’t even clarify gradient descent from first rules utilizing calculus.

    Once more, I’m not attempting to be harsh however to indicate you the truth I’ve seen.

    I at all times inform individuals to cease dashing to be taught flashy matters like NLP, pc imaginative and prescient, or generative AI.

    Your first few years ought to be about mastering the basics; mastering them completely so you might have a strong understanding for a lot of machine studying idea interview.

    The truth is that the majority machine studying engineer roles primarily give attention to classical supervised studying. Your job is usually much less about constructing unique fashions and extra about tailoring well-understood algorithms to resolve particular issues. That’s why a deep understanding of the fundamentals is important.

    If you wish to check your basic data, I supply mock interviews primarily based on actual questions I’ve confronted in precise ML job interviews. Be happy to examine it beneath.

    Mock Interview with Egor Howell
    Customised for your particular role and interviewtopmate.io

    It is very hard

    Let’s end with something that might seem a bit obvious: becoming a machine learning engineer is just hard.

    As I’ve said throughout this post, the role demands expertise across a wide range of disciplines. You’ll need strong foundations in maths, statistics, and programming, plus real-world experience as a software engineer or data scientist first (which are tough jobs in their own right). Additionally, you must commit to continuous learning throughout this entire period.

    Even with the most perfect background — a STEM master’s or PhD — it’s still a long, difficult journey. If you’re coming from a non-traditional path, it’s even harder. That doesn’t mean it’s impossible, but it is more difficult, and you need to decide if the challenge is worth it for you.

    I often say: 

    Anyone can become a machine learning engineer — but that doesn’t mean everyone should, or even wants to.

    It takes sustained effort for at least a few years.

    You have to be honest with yourself about whether you’re willing to invest 2–3 years minimum (and, in most cases, 4–5 years) to break into the field.

    That’s a long time.

    For me personally, giving up four years for a decades-long career doing work I love is absolutely worth it. But that’s a calculation only you can make.

    In fact, I find it liberating that it’s so hard, as it makes me feel better about struggling through it.


    I am someone who doesn’t sugarcoat anything, and you might have noticed that most of my points boil down to two key factors: time and effort.

    Anything worth doing often requires consistent effort over a long period. That is the secret to becoming a machine learning engineer.

    If you are serious about becoming a machine learning engineer, then I recommend checking out the below article, where I detail my roadmap:

    Link.

    One other factor!

    I supply 1:1 teaching calls the place we are able to chat about no matter you want — whether or not it’s tasks, profession recommendation, or simply determining the next move. I’m right here that will help you transfer ahead!

    1:1 Mentoring Call with Egor Howell
    Career guidance, job advice, project help, resume reviewtopmate.io

    Connect with me



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleRobotic probe quickly measures key properties of new materials | MIT News
    Next Article ChatGPT styrde ett rymdskepp och överraskade forskarna
    ProfitlyAI
    • Website

    Related Posts

    Artificial Intelligence

    Why Should We Bother with Quantum Computing in ML?

    October 22, 2025
    Artificial Intelligence

    Federated Learning and Custom Aggregation Schemes

    October 22, 2025
    Artificial Intelligence

    Implementing DRIFT Search with Neo4j and LlamaIndex

    October 22, 2025
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    Katy Perry Didn’t Attend the Met Gala, But AI Made Her the Star of the Night

    May 7, 2025

    The Beauty of Space-Filling Curves: Understanding the Hilbert Curve

    September 7, 2025

    Everything You Need to Know About the New Power BI Storage Mode

    August 21, 2025

    Seeing AI as a collaborator, not a creator

    April 23, 2025

    Temporal-Difference Learning and the Importance of Exploration: An Illustrated Guide

    October 2, 2025
    Categories
    • AI Technology
    • AI Tools & Technologies
    • Artificial Intelligence
    • Latest AI Innovations
    • Latest News
    Most Popular

    OPWNAI : Cybercriminals Starting to Use ChatGPT

    April 4, 2025

    Build Algorithm-Agnostic ML Pipelines in a Breeze

    July 7, 2025

    From RGB to HSV — and Back Again

    May 7, 2025
    Our Picks

    Why Should We Bother with Quantum Computing in ML?

    October 22, 2025

    Federated Learning and Custom Aggregation Schemes

    October 22, 2025

    How To Choose The Perfect AI Tool In 2025 » Ofemwire

    October 22, 2025
    Categories
    • AI Technology
    • AI Tools & Technologies
    • Artificial Intelligence
    • Latest AI Innovations
    • Latest News
    • Privacy Policy
    • Disclaimer
    • Terms and Conditions
    • About us
    • Contact us
    Copyright © 2025 ProfitlyAI All Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.