Coding with AI? My 5 go-to tricks for vetting output - and avoiding trouble

ZDNet - Artificial Intelligence
Jul 14, 2025 15:52
1 views
aibusinessenterprisetechnology

Summary

AI tools are transforming coding, but recent research suggests they don't always make developers faster and can even increase errors among experts. The article highlights practical strategies for vetting AI-generated code to mitigate these risks. This underscores the importance of careful oversight and validation when integrating AI into software development workflows.

AI tools are revolutionizing coding and IT work, but are they making developers faster? One study says no. Here's why AI sometimes slows experts down and speeds up mistakes.

Related Articles

Early Investor Who Bought XRP at Its $0.0028 All-Time Low Exits with 85,614% Profit, AI Identifies 1 Token That Can Pull Off a Similar Run

Analytics InsightJul 14

An early investor who purchased XRP at its all-time low of $0.0028 has exited with an 85,614% profit, highlighting the potential for massive gains in the crypto market. The article notes that AI tools have identified another promising token that could experience similar exponential growth. This underscores the increasing role of AI in analyzing market trends and identifying high-potential investment opportunities in the cryptocurrency space.

Cardano 2025 Price Analysis: ADA May Hit $2 With Ozak AI Climbing From $0.005 to $1

Analytics InsightJul 14

The article analyzes Cardano's (ADA) potential to reach $2 by 2025, highlighting the rapid rise of Ozak AI's token from $0.005 to $1. It suggests that the integration of AI technologies like Ozak AI within blockchain ecosystems could drive significant growth and innovation in both the cryptocurrency and AI sectors.

SceneScript: An AI model and method to understand and describe 3D spaces

Hacker News - AIJul 14

Meta has introduced SceneScript, a new AI model and method designed to understand and generate detailed descriptions of 3D spaces from visual data. This advancement enables more accurate scene understanding and could enhance applications in augmented reality, robotics, and spatial computing, marking a significant step forward in AI's ability to interpret complex real-world environments.