AI has emerged as a transformative force in society, reshaping economies, work, and everyday life. We argue that AI can not only improve short-term productivity but can also enhance a group’s collective intelligence. Specifically, AI can be employed to enhance three elements of collective intelligence: collective memory, collective attention, and collective reasoning. This editorial reviews key emerging work in the area to suggest ways in which AI can support the socio-cognitive architecture of collective intelligence. We will then briefly introduce the articles in the “AI for Collective Intelligence” special issue.
In recent years, artificial intelligence (AI) has emerged as a transformative force in society, reshaping economies, work, and everyday life. This is happening at a time that humanity faces a plethora of global crises including climate change, destabilizing war and conflicts, social instability resulting from inequality, polarization, and spread of misinformation (Drori et al., 2025; Holliday et al., 2024; Jerit and Zhao, 2020). These societal challenges exceed the capacity of humans operating as individuals; instead they require collective intelligence (CI). Augmenting human CI with AI could be a crucial ingredient that allows us to develop large scale solutions to complex problems, and strengthen existing democratic institutions. Leveraging AI to activate collective intelligence may become the next frontier for organizations and society at large. If used right, AI has the potential to advance science, lead to innovation, and help address the polycrisis.
While AI is often defined by its capability to imitate intelligent human behavior, its true potential lies in collaboration. As a collaborator, AI can augment human abilities and enhance human intelligence (De Cremer and Kasparov, 2021). In other words, the two types of intelligence (artificial and human) can work together to enhance and improve outcomes. For this reason, the concept of collective intelligence becomes essential to inform how AI can be leveraged most effectively. Collective intelligence refers to the enhanced capacity created when humans and machines work together, producing outcomes greater than each could achieve alone (Riedl et al., 2021). Thinking about AI in terms of how it can support collective intelligence of human groups, as opposed to how it can automate tasks previously done by humans, opens new opportunities not only on how to design AI systems but also on how to study them.
Research suggests that collective intelligence emerges from three interdependent ingredients: collective memory, collective attention, and collective reasoning (Woolley and Gupta, 2024). AI can support collective memory by helping groups leverage distributed knowledge and skills (Westby and Riedl, 2023). AI can support collective attention by helping groups synchronize their focus of attention and limit costs of task switching (Zvelebilova et al., 2024). AI can enhance collective reasoning by amplifying diverse thinking styles and prioritizing group goals (Rosenberg et al., 2024). In each of the three areas, AI can also help individuals form and continuously update necessary meta-knowledge about who knows what, improve joint awareness of each other’s workloads and availability, and help individuals learn about each other's goals and priorities (Table 1).
AI can strengthen collective intelligence by supporting collective memory, collective attention, and collective reasoning.
Purpose
The RiskHow AI-based automation makes intellectual spaces smaller
The OpportunityHow AI can make intellectual spaces larger
Collective memory
Skills and knowledge of individuals; group processes to cooperatively allocate, retrieve, and update knowledge
Leads to individual skill loss and rigid structures which limit flexibility, human intuition, and information exchange
AI can enhance individual’s memory, and help coordinate distributed knowledge and skills. AI can help unearthing hidden information within and across individuals such as connecting teachers and learners. AI can support formation and updating of mental models of who knows what within the organization.
Collective attention
Ability to align focus of attention to process information in the environment; group processes to allocate and retrieve attention, and update understanding of others’ focus areas and current demands
Undermines individual autonomy and task variety by micromanaging, taking over decision-making processes, monitoring, and automating authority
AI can enhance individual attention, limit costs of task switching, and improve joint awareness of each other’s workloads and availability. AI can synchronize attention and help groups cooperatively focus and enhance their autonomy and identity.
Collective reasoning
Ability to align goals, priorities, and motivation; group processes that cooperatively allocate priorities, retrieve commitment, and update understanding of others’ goals and motivations
Excludes diverse views, amplifies views of technical experts, and introduces algorithmic monocultures
AI can enhance individuals’ reasoning abilities and amplify diverse thinking styles and backgrounds. AI can help sense changes in the environment. AI can help individuals learn what group members care about, draw inferences about their goals by explaining and elaborating differences that may otherwise be difficult to understand, and prioritize diverse group goals.
AI can be used to enhance each of these aspects and therefore can not only improve short-term productivity of collectives but also increase their long-term performance—and as such increase our capacity to address complex society scale challenges like climate change. This enhancing ability presents an opportunity for society to employ AI in human-centered ways that amplify human creativity and thriving. Such collaboration can empower us to address issues with a depth and breadth previously unattainable.
The socio-cognitive architecture outlined above suggests several functions AI could fulfill to enhance collective intelligence. Irrespective of whether it acts more passively responding only to specific queries or more actively as agentic generative AI, it can fulfill different roles. Specifically, AI can act as a teammate, coach, and manager to support collective memory, attention, and reasoning (Table 2). To augment collective intelligence in positive ways, it is important that those applications increase, rather than decrease, intellectual spaces. When AI deployment is focused on applications that automate processes, it often acts in a way that are inherently deskilling, lead to rigid structures, and homogenize solutions, all of which limit collectives’ capacity to adapt and adjust to changing environments (Kiron et al., 2023). As a result, those applications of AI have the tendency to reduce the diversity of ideas, hypotheses, and processes organizations consider. However, when designed in ways that focus on the goal of enhancing collective intelligence, AI can instead unburden individuals, increase their autonomy, and free up time for creative thinking.
Potential roles of AI agents to enhance collective intelligence.
Purpose
Example
AI as teammate
AI as a teammate augments individual’s memory, attention, and reasoning capacity in ways that increase experimentation and expand intellectual spaces. Used in this fashion, AI can expand human creativity by generating ideas, suggest candidates to explore, and shortening time, effort, and skill required to move from idea to solution. This increases both the number of ideas that can be explored and their diversity by making implementation accessible for people who wouldn’t otherwise have the skill or resources to do so. Most importantly, given generative AI’s ability to personalize responses it can incorporate knowledge of individual characteristics or preferences to specifically augment individual areas of weakness and align with personal goals.
As a writing teammate, agentic AI can create multiple first drafts from which the best one is selected for further development.AI teammate can identify candidates for new materials or drugs that should be explored experimentally.AI supported software development for apps, websites, and data analysis can expand the set of individuals who can explore ideas.
AI as coach
AI as a coach can enhance meta-knowledge about who knows what, improve joint awareness of each other’s workloads and availability, and help individuals learn about each other’s goals and priorities.
Generative AI gives feedback and critiques written documents thus helping people learn and develop new skills. By sensing and alerting team members to related information, individuals can learn about each other’s availability, leverage synergies between complementary skills and knowledge, and coordinate task assignments.
AI as manager
AI as a manager can proactively shape collaborative process to address three common sources of process loss: (a) Level of collective effort, (b) coordination of appropriate task strategy, and (c) matching individuals to tasks and roles that achieve appropriate skill use. To achieve these goals, managerial AI can then trigger appropriate interventions through an AI coach targeting memory, attention, and reasoning.
AI can monitor individual workload and knowledge utilization to identify efficient and inefficient coordination patterns. Identified gaps in knowledge could then be addressed with a coaching AI to acquire new knowledge or modify task assignments.
Applying the lens of AI for CI directly suggests direct ways in which agentic generative AI can be evaluated: does the agentic AI increase (or limit) the memory, attention, and reasoning capacity of individuals and groups? For example, an AI agent could be evaluated by measuring how much it increase the amount or diversity of knowledge that individuals or teams draw on in their work. This applies to both achieving and amplifying process gains in collective memory, attention, and reasoning, as well as limiting process losses in the same three areas. Including process losses is crucial as they may be unintentional. For example, an AI intended to enhance a group’s collective memory may inadvertently disrupt their collective attention by introducing subtle shifts in language use (Zvelebilova et al., 2024).
The lens of how AI can augment collective intelligence in human groups can also inform the design of AI systems. As the AI field moves to assemble multi-agent systems from the building blocks of individual agentic generative AI agents, the field of collective intelligence can offer valuable insights on how to assemble and coordinate such multi-agent systems. For example, the rich research on collective memory (Theiner et al., 2010) and specialization (Roberts and Goldstone 2011) may inform how multi-agent systems can form distributed cognition.
AI risks
The deployment of AI is not without risks. AI can lead to rigid structures, can be inherently deskilling, can amplify inequality, can perpetuate biases (Bengio et al., 2024), and can homogenize solutions and reduce intellectual diversity (Riedl and Bogert, 2024), all of which undermine collective intelligence rather than amplify it. Awareness of such unintended consequences is needed to ensure AI strengthens rather than weakens collective intelligence. For example, research has shown that AI can significantly affect what teams pay attention to, irrespective of the quality of the AI’s contribution or whether teams report trusting the AI or not (Zvelebilova et al., 2024). By considering both positive and negative effects of AI on collective memory, attention, and reasoning, researchers can more systematically evaluate AI risks.
In this special issue of ACM Collective Intelligence on “AI for Collective Intelligence,” we explore how this partnership can be harnessed by presenting a collection of diverse articles. The first article is an empirical study highlighting AI’s role in enhancing creativity—a frequently cited benefit of AI—through tools like chatbots and large language models (LLMs). The second article showcases practical applications of how AI can be leveraged to accelerate progress toward the Sustainable Development Goals (SDGs), how AI can help tackle problems that are collective in nature, and to scale community-led deliberation. These discussions aim to reveal how AI, in tandem with human effort, can drive innovative solutions and creative processes that benefit humanity at large.
We believe the field of collective intelligence holds the potential to deeply inform how AI can more effectively serve human interests. Collective intelligence sees AI not merely as a tool but as a collaborator capable of elevating intelligent approaches to significant problems. Such an integrative approach respects both types of intelligence (artificial and human) and uses the strengths of both to arrive at a better and more powerful outcome. We encourage scholars to integrate AI into their frameworks for addressing humanity’s challenges. By doing so, we not only define the role of AI but also enhance our capacity to solve complex problems collectively, marrying human creativity with computational power. Furthermore, we encourage scholars to study AI from a perspective of collective intelligence. Such a perspective allows us to advance science on how to productively design AI systems (e.g., multi-agent systems) and allows us to draw on a vast existing body of knowledge of how collectives form their emergent properties and structures.
Footnotes
Declaration of conflicting interests
The author(s) declared no potential conflicts of interest with respect to the research,authorship,and/or publication of this article.
Funding
The author(s) received no financial support for the research,authorship,and/or publication of this article.
ORCID iD
Christoph Riedl
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