ΑΙhub.org
 

2023 landscape – a report from the AI Now Institute


by
12 April 2023



share this:

wires at the back of a large serverImage taken from the report cover. Credit: Amba Kak and Sarah Myers West.

The AI Now Institute have released their 2023 annual report. It focusses on the concentration of power in the tech industry and highlights a set of approaches to confront this. The authors suggest both policy reforms and nonregulatory interventions. The intention of the report is to provide strategic guidance to inform future work and to ensure that the technology serves the public, not industry.

The specific themes covered in the report are:

You can read the executive summary here.

Read the report in full

The full report can be read here.
The pdf version can be downloaded here.

The report is authored by Amba Kak and Sarah Myers West, with research and editorial contributions from Alejandro Calcaño, Jane Chung, Kerry McInerney and Meredith Whittaker.

Cite as: Amba Kak and Sarah Myers West, “AI Now 2023 Landscape: Confronting Tech Power”, AI Now Institute, April 11, 2023.

About the AI Now Institute

The AI Now Institute was founded in 2017 and produces diagnosis and policy research to address the concentration of power in the tech industry. Find out more here.



tags:


Lucy Smith is Senior Managing Editor for AIhub.
Lucy Smith is Senior Managing Editor for AIhub.

            AIhub is supported by:



Subscribe to AIhub newsletter on substack



Related posts :

Interview with Xinwei Song: strategic interactions in networked multi-agent systems

  16 Apr 2026
Xinwei Song tells us about her research using algorithmic game theory and multi-agent reinforcement learning.

2026 AI Index Report released

  15 Apr 2026
Find out what the ninth edition of the report, which was published on 13 April, says about trends in AI.

Formal verification for safety evaluation of autonomous vehicles: an interview with Abdelrahman Sayed Sayed

  14 Apr 2026
Find out more about work at the intersection of continuous AI models, formal methods, and autonomous systems.

Water flow in prairie watersheds is increasingly unpredictable — but AI could help

  13 Apr 2026
In recent years, the Prairies have seen bigger swings in climate conditions — very wet years followed by very dry ones.

Identifying interactions at scale for LLMs

  10 Apr 2026
Model behavior is rarely the result of isolated components; rather, it emerges from complex dependencies and patterns.

Interview with Sukanya Mandal: Synthesizing multi-modal knowledge graphs for smart city intelligence

  09 Apr 2026
A modular four-stage framework that draws on LLMs to automate synthetic multi-modal knowledge graphs.

Emergence of fragility in LLM-based social networks: an interview with Francesco Bertolotti

  08 Apr 2026
Francesco tells us how LLMs behave in the social network Moltbook, and what this reveals about network dynamics.

Scaling up multi-agent systems: an interview with Minghong Geng

  07 Apr 2026
We sat down with Minghong in the latest of our interviews with the 2026 AAAI/SIGAI Doctoral Consortium participants.



AIhub is supported by:







Subscribe to AIhub newsletter on substack




 















©2026.02 - Association for the Understanding of Artificial Intelligence