Introduction
The study by Shin et al. (2023) provides valuable insights into lipid membrane remodeling by the micellar aggregation of long-chain unsaturated fatty acids, offering sustainable antimicrobial strategies. However, challenges remain in automating data collection, optimizing experimental tracking, and enhancing the predictive power of these studies. By integrating artificial intelligence (AI) and machine learning (ML), the research process can be significantly improved in terms of efficacy, efficiency, and productivity. Institutionalizing AI/ML into research workflows can enable real-time insights, adaptive experimentation, and data-driven decision-making.

Unlock the Future: Why AI & ML Skills Matter Now More Than Ever

The world is changing faster than ever, and at the heart of this transformation are technologies like Artificial Intelligence (AI) and Machine Learning (ML). These fields are no longer confined to tech giants and researchers—they’re becoming tools that every professional, regardless of industry, can leverage to stay ahead. From healthcare to finance, sales, and agriculture, AI and ML are shaping decisions, streamlining operations, and uncovering insights that were once unimaginable.