Despite each respondent having direct responsibility for AI and deep learning within their organisation, only 60% of them were confident about what deep learning is and how it works – compared to 90% for other types of machine learning. Other key findings of the survey include:
“It’s clear that deep learning is a truly transformative technology that has the potential to change the world,” explains Luka Crnkovic-Friis, Co-Founder and CEO of Peltarion. “But the path to reaching that potential is inhibited by lack of familiarity with deep learning. With investment growing, we can expect to see more industries benefiting from this under-explored, yet incredibly powerful subset of AI. However, the barriers to adoption must be overcome before businesses can reap the benefits.”
The need to operationalise AI has never been clearer
When asked about the most common perceived issues standing in the way of investment in deep learning, complexity was by far the most common problem cited, with 70% of AI decision makers in accord. This was followed by the need for specialist skills (44%), lack of scalability (43%), with a lack of understanding around deep learning models (41%) and a lack of data availability tied for fourth at 41%. Making things tougher are all the existing IT solutions/services organisations are working with, with 36% citing integration as a setback to deep learning investment. This issue shows no signs of slowing though as the overall adoption of new digital technologies increases. On average, respondents said they have approximately 191 different IT applications, systems and services in use across their organisation, a figure they say is likely to rise in the next five years.
“In order to increase adoption of deep learning, companies need access to the right tools and skills,” Crnkovic-Friis concludes. “Operationalising AI, and deep learning specifically, will be key in doing this. Not only should experts offer guidance, spreading the knowledge of how it can be used within their companies, but deep learning should be operationalised to increase the speed of model development and experimentation, ease integration and deployments and make deep learning more ‘AI Ready’. Once a few of these projects are up and running, the costs, on-site skills and infrastructure required to keep deep learning operational and launch new projects gets lower each time.”