Why I'm Building AI in Public (And Why This Time Is Different)
For the last few months, I've been learning, experimenting, and building with AI.
Like many developers, I spent a lot of time consuming tutorials, reading documentation, and trying new tools.
Eventually I realized something:
Watching AI isn't the same as building AI.
So today I'm making a commitment.
I'm building in public.
What you'll find here
I'll document everything I build, including:
- AI Agents
- Voice AI
- LLM Applications
- Automation Workflows
- SaaS Projects
- Open Source Experiments
- Architecture Breakdowns
- Lessons from failures and debugging
Not just the final resultβthe entire process.
Why build in public?
Because shipping consistently teaches more than endlessly preparing.
My goal isn't to chase every AI trend.
It's to understand how to design, build, test, and deploy production-ready AI systems that solve real problems.
Current roadmap
I'm currently focusing on:
- Python
- Machine Learning
- AI Engineering
- Kaggle
- LLMs
- AI Agents
- Automation
- Full-stack AI applications
Every project will be shared with code, documentation, and lessons learned.
What's next?
Over the coming weeks I'll publish:
- AI project walkthroughs
- Kaggle learning notes
- AI agent architecture
- Voice AI experiments
- Automation workflows
- GitHub repositories
- Engineering insights
If you're also building with AI, I'd love to connect and learn together.
Let's build something meaningful.
π See you in the next project.
United States
NORTH AMERICA
Related News
π I Built a Dropshipping Automation Pipeline β Here's What I Learned (and What I'd Do Differently)
10h ago
How I Cut My LLM API Bill by 40x: A Freelancer's Migration Story
10h ago

Mattress Firm Coupons: Save up to $600
3h ago
Google Ordered to Pay $2 Billion For Anti-Competitive Practices By Swedish Court
20h ago
The Censorship Wall: Why Every AI Companion App Ends Up Filtering You
20h ago