I'm currently preparing my Master's degree in AI & Big Data.
You'd think that means I spend my days confidently building neural networks, designing data pipelines, and shipping ML models. And in a way, yes — that's the curriculum.
But here's the thing no one really talks about in tech education: we learned a lot of things, and almost none of them deeply enough.
The paradox of a broad curriculum
In my program, we covered a bit of everything. Machine learning. Big Data architecture. Statistics. Cloud infrastructure. Web development. Databases. Computer vision. NLP.
Every few weeks, a new topic. Every few weeks, just enough to understand the surface before moving on.
I don't blame my professors or my school. That's just the nature of a two-year program trying to give you a panoramic view of a field that's enormous.
But it left me with a strange feeling: I knew about a lot of things, but I couldn't really do most of them.
And as graduation gets closer, the pressure grows: pick a lane. Choose a specialty. Decide who you are professionally.
Web developer? Data engineer? ML engineer? Backend dev? DevOps?
I had to choose — because that's how the job market works.
The cost of choosing
Here's what hurt the most about that choice: curiosity doesn't disappear when you pick a lane.
I chose to focus on web development alongside my studies — Vue/Nuxt, JavaScript, TypeScript, CSS. I love it. But I've always been drawn to everything else too.
I'd look at a computer vision project and think: "I want to build something like this."
I'd see a cool data pipeline and think: "I want to understand how that really works."
I'd read about systems programming, DevOps, mobile development, and feel that familiar pull.
But exploring those domains felt expensive. Not in money — in time and frustration. The entry cost for any new technical field is high: new syntax, new mental models, new tooling, new vocabulary. You spend weeks just getting comfortable before you can do anything interesting.
And with a Master's thesis, coursework, and personal projects already fighting for my attention, that entry cost was almost always too high.
So I held back. I watched from the edges.
Then AI changed the equation
When I started using AI as a learning companion — not just to generate code, but to actually explore — something shifted.
The entry cost dropped dramatically.
Now when I'm curious about something new, I don't have to start from zero alone. I have a thinking partner that:
- Explains new concepts by connecting them to things I already know
- Helps me read and understand code from domains I'm not fluent in
- Answers the "dumb" questions I'd be embarrassed to ask anyone else
- Turns a confusing error message into an actual learning moment
Want to understand how a Kafka pipeline works? I can explore it in a real conversation, mapped to my existing mental models — not by reading a dense 40-page documentation for two weeks.
Curious about how a specific ML architecture actually processes data? I can dig into it interactively, ask follow-up questions, build a mental picture.
The translation layer that used to take weeks now takes a conversation.
This is not about shortcuts
I want to be honest here, because I know how this sounds.
This is not about having AI do everything for me. It's not about faking expertise I don't have.
It's about removing the fear and friction of being a beginner in something new.
I still struggle. I still hit walls. I still have to put in real work to actually understand things. But now I can get to the interesting part — the part where concepts click, where I can build something small, where curiosity turns into real knowledge — without burning weeks just fighting the setup.
That changes everything about how willing I am to explore.
What I actually believe now
For a long time, I thought choosing one specialty was the only responsible path. The market rewards experts, right? Go deep. Become the AI person, or the frontend person, or the data person.
But I've started to think that framing was always a bit off.
The most impactful people in tech I look up to aren't people who know one thing incredibly well. They're people with wide peripheral vision — who understand enough about different domains to connect ideas, ask better questions, and see things that pure specialists miss.
AI didn't make me a generalist overnight. But it gave me permission to be curious without guilt, and the tools to turn that curiosity into something real.
Where I am now
I'm still a Master's student in AI & Big Data. Still building in Vue/Nuxt. Still figuring out what my career will look like.
But I no longer feel like I have to wall myself off from everything that isn't my specialty.
I explore data engineering because it helps me understand the full picture of what I'm studying.
I write frontend code because building things that people can see and touch keeps me grounded.
I poke at ML projects not because I'll be an ML researcher, but because understanding them makes me better at everything else.
Am I an expert in all of these? Absolutely not.
But am I afraid of any of them? Not anymore.
Are you also a student or early-career dev who feels pressure to specialize? How do you handle the tension between depth and curiosity? I'd love to hear your experience in the comments.
Top comments (1)
“Thanks for reading! As a student, I often felt like I had to choose just one path. How about you—do you use AI to explore areas outside your comfort zone, or do you prefer to use it to delve deeper into your specialty?”😎😎