![]() There is no doubt GenAI is having an impact on the industry. When considering the biggest challenge to bringing LLMs into production, nearly half of respondents point to infrastructure. Additionally, respondents rank compliance and privacy (28%), reliability (23%), high cost of implementation (19%) and a lack of technical skills (17%) as the greatest concerns with implementing LLMs into their businesses. This reveals a knowledge gap as one potential barrier to GenAI adoption that is reflected in organizations citing complexity and lack of AI talent as the biggest barriers to AI adoption and acceptance. Of the respondents, 84% admit that their skills need to improve due to increasing interest in LLM adoption, while only 19% say they have a strong understanding of the mechanisms of how LLMs generate responses. The survey highlights other challenges that might be causing a slow adoption of LLM technology in businesses, such as lack of knowledge, cost and compliance. The study indicates a majority of organizations approach GenAI by building their own LLM solutions and customizing to their use cases, yet nearly half of respondents (46%) see infrastructure as the greatest barrier to developing LLMs into products. About half of respondents say they have improved customer experiences (58%), improved efficiency (53%), enhanced product capabilities (52%) and benefited from cost savings (47%). While adoption may not have taken off, organizations that have deployed GenAI models in the past year are experiencing benefits. Recommended AI News: Greenberg Traurig Adds New IP Associate to Boston Office The survey also shows that U.S.-based respondents (40%) are significantly more likely than those outside the U.S. Three-quarters of respondents report their organizations have yet to deploy GenAI models to production, while 10% of respondents report their organizations have launched GenAI solutions to production in the past year. The survey reveals that adoption of large language models (the models for training generative AI applications and solutions) within organizations remains low. “With greater access to cost-effective infrastructure and services, such as those provided by cnvrg.io and the Intel Developer Cloud, we expect greater adoption in the next year as it will be easier to fine-tune, customize and deploy existing LLMs without requiring AI talent to manage the complexity.” GenAI Adoption Trendsĭespite the rise in awareness of GenAI technology in 2023, it is only a slice of the overall AI landscape. The survey suggests organizations may be hesitant to adopt GenAI due to the barriers they face when implementing LLMs,” said Markus Flierl, corporate vice president and general manager of Intel Cloud Services. “While still in early development, generative AI has been one of the most talked-about technologies of 2023. Recommended AI News: Riding on the Generative AI Hype, CDP Needs a New Definition in 2024 ![]() This year’s report offers insights from a global panel of 430 technology professionals on how they are developing AI solutions and their approaches to applying generative AI to their businesses. Released for the third year, cnvrg.io’s ML Insider survey provides an analysis of the machine learning industry, highlighting key trends, points of interest and challenges that AI professionals experience every day. While every industry appears to be racing toward AI, the annual survey revealed that despite interest, a majority of organizations are not yet leveraging generative AI (GenAI) technology. Annual cnvrg.io survey reveals majority of organizations are still in the research and testing phase for generative AIĬnvrg.io, an Intel company and provider of artificial intelligence (AI) and large language model (LLM) platforms, released the results of its 2023 ML Insider survey.
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