Every week I was burning the same hours doing the same thing: opening tabs, copying data, pasting it into a spreadsheet and starting over. The work was mindless. It was repetitive. It was exactly the kind of task that shouldn't require a human being in 2024. So I built an n8n scraper workflow that now handles all of it automatically — and here's exactly how I did it.
The Problem Worth Automating
Keeping product data current is non-negotiable for tech content research. Specs change. Prices shift overnight. Availability fluctuates without warning. Before automation, that meant manually visiting product pages and logging updates into a tracking sheet — a process that consumed three to five hours every single week.
The inefficiency compounded fast. I missed updates between check-ins. Formatting stayed inconsistent across entries. The cognitive overhead of context-switching between dozens of tabs left me mentally depleted before I even reached the analytical work. Data collection wasn't just slow — it actively degraded everything downstream.
Something had to change.






