Companies Tried to Save Money with AI, Now Hiring People to Fix Its Mistakes

Hacker News - AI
Jul 7, 2025 03:55
prisenco
1 views
hackernewsaidiscussion

Summary

Many companies that replaced workers with AI to cut costs are now hiring people to correct the errors made by these systems. This trend highlights the current limitations of AI and suggests that human oversight remains essential, raising questions about the true cost-effectiveness of rapid AI adoption.

Article URL: https://futurism.com/companies-fixing-ai-replacement-mistakes Comments URL: https://news.ycombinator.com/item?id=44486616 Points: 4 # Comments: 0

Related Articles

Show HN: Stryng – Automate Your Blog and Social Media Workflow with AI

Hacker News - AIJul 7

Stryng is a new AI-powered tool designed to automate blog and social media workflows, streamlining content creation and distribution for users. By leveraging AI, Stryng aims to save time and increase efficiency for content creators, reflecting a growing trend of AI integration in digital marketing and content management. This development highlights the expanding role of AI in automating routine tasks and enhancing productivity in the content industry.

Stop Electrifying Dead Frogs: AI Consciousness might exist, but is MEANINGLESS

Hacker News - AIJul 7

The article argues that while AI systems might exhibit behaviors resembling consciousness, such consciousness—if it exists—is functionally meaningless, akin to stimulating reflexes in dead frogs. It suggests that focusing on AI consciousness distracts from more pressing, practical concerns in AI development and deployment. This perspective urges the AI field to prioritize real-world impacts over philosophical debates about machine awareness.

Show HN: Instantly generate /llms.txt to make your website AI-readable

Hacker News - AIJul 7

A new web app has been launched to automatically generate /llms.txt files, a proposed standard similar to robots.txt but designed specifically for large language models (LLMs). This tool streamlines the process by scraping websites, extracting key Markdown links, and producing a ready-to-use llms.txt, making important content more accessible to AI systems. The growing adoption of /llms.txt by companies like LangChain and Mintlify highlights its potential to improve how LLMs access and understand web content.