Close Menu
    Trending
    • Dispatch: Partying at one of Africa’s largest AI gatherings
    • Topp 10 AI-filmer genom tiderna
    • OpenAIs nya webbläsare ChatGPT Atlas
    • Creating AI that matters | MIT News
    • Scaling Recommender Transformers to a Billion Parameters
    • Hidden Gems in NumPy: 7 Functions Every Data Scientist Should Know
    • Is RAG Dead? The Rise of Context Engineering and Semantic Layers for Agentic AI
    • ChatGPT Gets More Personal. Is Society Ready for It?
    ProfitlyAI
    • Home
    • Latest News
    • AI Technology
    • Latest AI Innovations
    • AI Tools & Technologies
    • Artificial Intelligence
    ProfitlyAI
    Home » Writing Is Thinking | Towards Data Science
    Artificial Intelligence

    Writing Is Thinking | Towards Data Science

    ProfitlyAIBy ProfitlyAISeptember 2, 2025No Comments5 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email


    Within the Creator Highlight sequence, TDS Editors chat with members of our group about their profession path in information science, their writing, and their sources of inspiration. As we speak, we’re thrilled to share our dialog with Egor Howell.

    Egor is an information scientist and machine studying engineer specialising in time sequence forecasting and combinatorial optimisation. He runs a content material and training enterprise serving to folks break into information science and machine studying, in addition to instructing technical subjects


    Let’s begin originally: What sparked your preliminary curiosity in information science, particularly since you didn’t follow the traditional CS degree or bootcamp route?

    I can just about single-handedly attest my profession to DeepMind’s AlphaGO documentary. It made me extremely interested by machine studying and its potential to unravel just about any drawback. After that, I used to be in search of careers that use machine studying, and naturally, an information scientist got here up. So, from then on, I principally self-studied to develop into one!

    You’ve written about doing more than 80 data science interviews. What have been some key insights you gained from that have, each concerning the hiring course of and your individual development?

    Interviewing is a talent and could be very totally different from what you do on the job. It’s principally a recreation, and it’s a must to discover ways to play it, like just about something in life.

    The central perception is that you just essentially have to organize; I’m shocked about what number of instances candidates don’t even actually know what the enterprise does!

    One other key level folks overlook is the comfortable abilities and the intangibles. Sadly, suppose somebody could be very monotone and shy however is aware of lots. In that case, they’re much less prone to get the job in comparison with somebody charismatic, pleasant, and, typically, who brings good vitality.

    And at last, be sure to don’t communicate for greater than 2 minutes at a time. I’ve interviewed individuals who discuss and discuss and discuss. For those who’ve observed you’ve been speaking for some time, say one thing like, “I can go into extra element should you like.” This manner, the ball is of their courtroom, they usually can transfer the interview ahead if they need. Nothing is worse than somebody who retains on talking, because it doesn’t enable the interviewer to ask all their questions. Plus, it’s a talent to have the ability to clarify your self concisely. 

    One among your extra provocative articles is titled “STOP Building Useless ML Projects.” Why do you suppose so many portfolio tasks miss the mark, and what makes a venture actually impactful?

    Individuals are at all times in search of a shortcut and don’t wish to spend time occupied with a good-quality venture. Any impactful venture is private to you, solves an issue or solutions a query that you just wish to know, and takes you at the very least a month to construct.

    There’s no secret; it’s extra concerning the effort folks don’t wish to put in more often than not. In that particular publish, I’ve a framework for folks to observe in the event that they wish to discover an impactful venture for themselves.

    You typically write with a transparent viewers in thoughts: Profession switchers, learners, and aspiring ML professionals. How do you determine what to jot down about, and who’re you hoping to assist most?

    At first, it was powerful, however now I ask my viewers or learn the feedback to see what individuals are in search of. 

    My aim is to assist folks break into the sphere, however I’m being brutally sincere alongside the way in which and never sugarcoating something.

    In most of my posts, I don’t “promise something,” and I truly typically say how arduous it’s and it is probably not the correct job for everybody.

    What’s one thing that surprised you if you began working full-time as a machine studying engineer—one thing you would like extra folks knew entering into?

    You spend a whole lot of time sustaining fashions and infrastructure versus growing fashions. The job isn’t thrilling 100% of the time.

    You’ve printed a whole lot of profession recommendation—from job prep to how to make a DS portfolio stand out. How has writing recurrently formed your individual pondering, and even your profession path?

    Writing is pondering, so the higher you write, the higher you’ll suppose. What folks don’t inform you is that a whole lot of the job is writing; you write plans, paperwork, tickets, and so forth. This talent is essential as a result of should you can clarify your self clearly, that goes a great distance in life.

    What developments in machine studying or AI are you personally most excited—or skeptical—about proper now? How are these developments shaping your focus or ambitions?

    I’m an enormous “hater” of AI. I feel it’s overrated, and it’s undoubtedly not going to take over any jobs, at the very least within the subsequent 5 years. Personally, I’m not placing a lot effort into studying it, as I feel it’s a “flash within the pan.” I’d slightly give attention to areas which have been round for many years, akin to statistics, operations analysis, time sequence, and so forth.

    For somebody who feels caught—possibly they’re in an information analyst function, or struggling to interrupt into ML—what’s probably the most sensible subsequent step they may take at this time?

    Take the whole lot one step at a time, and don’t attempt to suppose too far forward. First, give attention to tasks, then your resume, then on purposes, then on interviews, after which on the supply negotiation. 

    There’s no level in specializing in interviews should you’re not getting any; your time could be higher spent in your resume and tasks. Having a single focus is the way you make progress.

    To study extra about Egor‘s work and keep up-to-date along with his newest articles, observe him here on TDS, on YouTube, and on LinkedIn.



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleAutomated Data Extraction for AI Workflows: A Complete Guide
    Next Article Evaluating AI gateways for enterprise-grade agents
    ProfitlyAI
    • Website

    Related Posts

    Artificial Intelligence

    Creating AI that matters | MIT News

    October 21, 2025
    Artificial Intelligence

    Scaling Recommender Transformers to a Billion Parameters

    October 21, 2025
    Artificial Intelligence

    Hidden Gems in NumPy: 7 Functions Every Data Scientist Should Know

    October 21, 2025
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    Evaluation-Driven Development for LLM-Powered Products: Lessons from Building in Healthcare

    July 10, 2025

    The problem with AI agents

    June 12, 2025

    Implementing IBCS rules in Power BI

    July 1, 2025

    Microsoft introducerar Copilot Vision till Windows och mobilen för AI-hjälp

    April 7, 2025

    Meet the early-adopter judges using AI

    August 11, 2025
    Categories
    • AI Technology
    • AI Tools & Technologies
    • Artificial Intelligence
    • Latest AI Innovations
    • Latest News
    Most Popular

    The Hungarian Algorithm and Its Applications in Computer Vision

    September 9, 2025

    OpenAI’s new image generator aims to be practical enough for designers and advertisers

    April 3, 2025

    Why the White House and Big Tech Are Pouring Billions Into AI Education

    September 9, 2025
    Our Picks

    Dispatch: Partying at one of Africa’s largest AI gatherings

    October 22, 2025

    Topp 10 AI-filmer genom tiderna

    October 22, 2025

    OpenAIs nya webbläsare ChatGPT Atlas

    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.