Will AI Snatch Your Job? and How to Stay in the Game

Will AI Snatch Your Job? and How to Stay in the Game

AI’s popping up everywhere—writing code, running chatbots, taking over customer support—and it’s got everyone stressing. “Will I still have a job or what?” Totally makes sense to wonder. I’m just digging into this mess—let’s figure out what’s up, what’s next, and how to keep rocking it in this AI madness.

The Drama Is On

No beating around the bush—AI’s flipping things upside down. Tools like GitHub Copilot are pumping out code faster than a fresher chasing a deadline, and chatbots are handling customer queries 24/7. In IT stuff—call centers, app support, all that—companies are loving it because it’s cheap and quick. Why hire people when a bot can do it, right? That’s what’s freaking everyone out.

But hold on—it’s not all over yet. AI’s like that nerd who’s brilliant at the dull stuff—churning out basic code, answering “where’s my order?” on repeat—but it flops when things get tricky or creative. Coding’s not just typing; it’s wrestling with weird bugs, guessing what the client really wants, and cooking up something new. Support? A bot can’t chill out an angry customer or throw in a quick laugh. Not yet, anyway.

My Two Cents: It’s a Calculator Moment

AI’s going to grab some jobs—let’s be straight about it. Those basic gigs where you’re just copying code or reading scripts? They’re on thin ice. But it’s not lights out. Think of AI like the calculator—back when it came, people panicked, “Oh no, math’s finished!” Did it kill math? Nope, it just changed the game. We ditched the slog of long division and tackled bigger stuff. Same here—AI’s a tool, not your boss. It might zap some rote work (heard it could be 30% by 2030), but it’ll cook up new roles too: AI fixers, system stitchers, ethics keepers. The catch? Switching tracks won’t be a breeze.

What’s Coming Next?

Not claiming to predict the future, but here’s what I’m seeing:

  1. Mix It Up: Devs who can code and mess with AI—or at least plug it in right—will shine. Support folks handling bot slip-ups? They’re in too.
  2. Niche Is Nice: AI’s still clueless about specific stuff. Healthcare apps, factory systems, new tech? You’re good. Basic website grinders? Tougher luck.
  3. Human Touch Wins: Creativity, quick thinking, teamwork—AI can’t fake that. Jobs needing a real person’s spark? Still safe.

How to Keep Your Seat

So, how do you stay in the race? Here’s the real-deal plan:

  • Get Friendly With AI: No rocket science needed—just play around. Call an API, tweak something, figure it out. If you get it, you run it.
  • Level Up Smart: Go for what AI can’t touch—big-picture ideas, user vibes, maybe even tech morals. Cloud skills (AWS, Azure) or Web3? Solid picks.
  • Ride the Tools: Let AI slog through debugging or drafts, so you can nail the big wins. Bosses love a guy who’s quick and sharp.
  • Find Your Spot: Dig into something AI’s too slow for—old systems, real-time tech, or an industry like banking or gaming. That’s your zone.
  • Stay Real: Work the human stuff—brainstorming over coffee, pitching to clients, rolling with changes. Bots can’t match that.

Wrapping It Up

This AI wave’s loud and messy—some jobs will vanish, no kidding. But it’s not here to kick us out; it’s shaking up the rules, calculator-style. The sharp ones will roll with it, not fight it. So, what’s your deal—dev, support, something else? Wherever you’re at, there’s a way to keep going.

Vithal Rao Lankapalli

Senior Technical manager AWS Cloud | Database Engineering | Database Design| IT Delivery | ITSM |Digital Transformation | Fin-Tech | SaaS | Cloud Migration Architect

1mo

Insightful

To view or add a comment, sign in

More articles by Siva Adhikarla

  • Choosing and Installing Your LLM

    Welcome back to our series on building a smart AI assistant for your company using AWS EC2! First we need set up an EC2…

    1 Comment
  • How to Deploy an LLM on AWS EC2 with Your Company Data—Securely

    Imagine having your own private ChatGPT-like assistant that knows everything about your company—sales targets, HR…

  • Creating an AI Roadmap to Bring Ideas to Life

    You’ve identified promising AI opportunities for your business—now it’s time to turn those ideas into action. That’s…

  • AI Opportunities for Business

    Finding AI Opportunities That Truly Matter for Your Business It’s about tackling real problems, making things run…

    1 Comment
  • AI Strategy & Business Integration

    AI Strategy & Business Integration: How Leaders Can Turn AI Into Real Business Growth Let’s be honest—AI is everywhere…

  • Time Series Forecasting: ARIMA vs. LSTMs

    Time series forecasting is crucial for predicting trends over time, such as stock prices, sales forecasts, energy…

    1 Comment
  • Types of Supervised Learning Problem Types

    Machine learning problems are broadly categorized into Supervised Learning, Unsupervised Learning, and Reinforcement…

  • Predicting Stock Prices Using Machine Learning

    Let's apply the ML workflow to a real-world scenario: predicting stock prices using historical data. Problem Statement…

    1 Comment
  • Deeper Dive into Machine Learning Workflow

    Let's take a closer look at specific steps in the machine learning workflow, especially those crucial for success: data…

  • Running deepseek locally

    Okay, after testing the waters, I decided to try deepseek locally on mac. It is pretty straightforward.

    5 Comments

Insights from the community

Others also viewed

Explore topics