Why is customizing generative AI important for businesses?
Customization of generative AI is important for several reasons. According to a survey of 300 technology leaders, 50% of executives believe it enhances efficiency by automating tasks and streamlining workflows. Additionally, 49% see it as a way to gain a competitive advantage through unique solutions, while 47% cite improved user satisfaction as a key benefit. Customization also fosters innovation and creativity, which are essential for staying relevant in today's market.
What methods are companies using to customize AI models?
Organizations are increasingly using methods like retrieval-augmented generation (RAG) and fine-tuning techniques for customizing their AI models. The survey indicates that two-thirds of companies are exploring or using RAG, while 54% are employing fine-tuning techniques. These methods, often used in combination with prompt engineering, enable businesses to tailor AI models to their specific needs and improve performance.
What challenges do businesses face when customizing AI?
The main challenge businesses face when customizing generative AI models is ensuring data privacy and security, with 52% of respondents highlighting this concern. As companies become more active in customization, 86% report that focusing on privacy and security has become increasingly important. Other challenges include maintaining model integrity and avoiding inaccuracies, which can arise from using foundational models trained on public data.