** Beyond Signals: CC’s Strategic Shift in the Age of AI

** Creative Commons is recalibrating its approach to AI, prioritizing thoughtful engagement over rapid response and embracing a new strategy focused on agency and systemic change.

📍 ** Global (with emphasis on the US and European contexts given the mention of jurisdictions)

** It’s been a while since we last shared an update on CC signals and our work around AI and the commons. Over the past several months, we’ve been deep in research, in conversation, and in active collaboration with communities, policymakers, and practitioners. At the same time, we kicked off our 25th anniversary celebrations, which gives us a rare opportunity to reflect on where we’ve been and, more importantly, where we need to go next. The biggest reason for the gap between updates is timing. We are deliberately resisting the pressure to move quickly simply because the broader technology landscape rewards speed. Our work touches the infrastructure of the commons. That requires care, consultation, and a willingness to sit with complexity. So we slowed down. We let the first wave of AI development crest without rushing to respond. We took the time to understand where power is consolidating, where harms are emerging, and where meaningful intervention is actually possible. We are now at a point where we believe we can act in ways that will have real impact. This post is meant to bring you into that journey. Our destination has not changed – continued support for the commons – but the path we are taking to get there has. Come along! When we first introduced CC signals, the idea was relatively straightforward. We proposed a set of preferences that creators could use to communicate with AI developers, relying on shared norms to guide behavior. It reflected how CC has historically operated. For 25 years, we have worked within copyright, building tools that expand access while maintaining a balance between creators and reusers. That history shaped our instincts. We assumed that a carefully calibrated, norms-based approach would move the ecosystem in a better direction. But as we began consulting with our community, it became clear that this approach was not enough. The feedback was direct and consistent in stating that preference signals without enforcement do not meaningfully shift power. Signals alone cannot create agency in a system that many people did not choose to participate in. That feedback forced us to confront some of our own assumptions. For a long time, copyright has been our primary tool, and with good reason. CC licenses have enabled the sharing of tens of billions of works and have helped build a more open internet. But relying on copyright as the default lens for every problem has its limits, especially in an AI-mediated environment. Beyond Copyright Over the past four months, we have been reexamining what it means to support the commons in this new context. CC licenses remain essential. They will continue to play a critical role in enabling human access to knowledge. However, when it comes to AI, copyright operates in a landscape that is uneven and often unclear. In many cases, CC license conditions do not apply to AI training. In others, they might. In some jurisdictions, broad exceptions mean that using CC-licensed works for AI development. **

Original Source: Link

** #CreativeCommons #AI #ArtificialIntelligence #Commons #Copyright #OpenAccess #DigitalRights #Innovation

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