By Geraldine Garcia, editor of the blog “Abierto al Público” and consultant at the Knowledge Management Division of the Inter-American Development Bank (IDB)
So-called artificial intelligence is a science and a set of computational technologies inspired by the ways people use their nervous systems to feel, learn, reason and act. While advances in artificial intelligence have been inconsistent and unpredictable, there have been significant advances since the start of the field about 60 years ago.
In this respect, companies such as Google, Amazon, IBM, Facebook, Microsoft, and Twitter have made great developments in this area. For example, the technology called “deep learning” is already helping internet services identify faces in photos, recognize smartphone commands, and respond to internet search queries.
In Latin America and the Caribbean, various artificial intelligence developments are already being produced to solve specific challenges. For example, the National University of Engineering in Peru has developed an autonomous robot that detects gas leaks. For its part, Chile’s Codelco, the world’s largest copper producer, is a global pioneer in the adoption of self-driving trucks.
However, so far only some of these developments are open source for reuse and community input. Opening up such technology enhances the opportunity to accelerate its evolution since being open source allows third parties to contribute to improvements in the technology.
Below, you’ll find the keys to understanding the context of opening up artificial intelligence:
Important players in the opening of artificial intelligence
In 2015, pioneer Elon Musk, founder of the Tesla electric car company, launched OpenAI, a non-profit research company whose mission is to promote and develop artificial intelligence in an open, safe and fair manner.
For its part, the DeepMind company, a subsidiary of Google and its parent company Alphabet, seeks to solve major global challenges by opening up its research and automatic learning algorithms. For example, it developed technology that allowed for advances in energy efficiency at Google’s data centers, reducing the amount of electricity necessary for cooling by 40%. If it is possible to scale such technology to other large-scale industrial systems, there is real potential for significant environmental and overall cost benefits.
Open source tools
Two of OpenAI’s developments stand out from the others: Universe and Gym. The former is a software platform that allows you to train an artificial intelligence agent in any task that a human can complete with a computer. The latter is a toolkit for developing artificial intelligence systems via a technology called “reinforcement learning”. For example, it can be used to control a robot’s motors so that it can run and jump, make business decisions such as price and inventory management, or play video and board games.
For its part, DeepMind has a GitHub repository which allows the general public to train their own artificial intelligence systems. For example, the so-called DeepMind Lab is the training codebase for a 3D game platform for AI agent-based research.
You can access various publications produced by OpenAI that focus on learning, robotics and generative models here.
OpenAI also allows requests for research to be made in order to know which problems are worth working on and perfecting skills for. Once solved, alternative solutions are also accepted in order to understand other approaches to the same challenge.
For its part, DeepMind has also made a series of research publications available that not only push the limits of what artificial intelligence systems can do, but also reveal the amount of time spent trying to improve how they learn. For example, the article entitled “Reinforcement Learning with Unsupervised Auxiliary Tasks” describes methods to greatly improve the learning speed for certain tasks.
Opening up this knowledge allows the community of computer scientists and developers to implement such practices, and at the same time build on the work in this research.
The key associated dilemmas to keep in mind
These dilemmas range from basic artificial intelligence research to methods to evaluate its safety, privacy, fairness, and other associated impacts. Since it is a transformative technology, the technical skills necessary to evaluate the safety and other metrics are still lacking, along with the legal vacuum that this new practice entails. A prominent example involving safety is related to driverless cars.
These new technologies also present ethical dilemmas related to their integration into people’s daily lives and their awareness of the use of their data. In this respect, the Partnership on AI was recently formed by several major tech companies, including Amazon, Facebook, Google, Apple, Microsoft, and IBM. It aims to bring companies, academia, and civil society organizations together to share best practices and ensure the ethical, safe and reliable development of this technology.
Another key dilemma has to do with suitable business models for its development and sustainability. Given the newness of such technology, the open business model, while controversial, allows companies to maximize use, correct errors and improve algorithms at a low marginal cost. Some argue that since data is the basis of this technology, governments should promote the openness and quality of public domain data as a resource. DeepMind’s acquisition by Google reveals another strategy, in which acquiring research and developing smaller players may be less expensive than internal development.
In turn, another debate focuses on the role of artificial intelligence and automation in the labor market. According to a McKinsey report, automated technology could replace nearly 250 million workers worldwide by 2025. (To learn more about this issue, view the IDB’s Facebook Live on what the jobs of the future will be).
In conclusion, given the transformative and new aspects of artificial intelligence, opening it up allows us to improve its processes and understand the main problems to address in order to accelerate its development. Several of the most influential players in the tech industry have already taken steps in the direction of opening up their artificial intelligence knowledge, which reveals an upward trend. At the same time, such technology presents itself as an opportunity to help solve development challenges in Latin America and the Caribbean.
Do you know of other open artificial intelligence tools? Add your comment below!
Cuenta con una Licenciatura con Honores en Ciencia Política de la Universidad de Buenos Aires. Durante su segundo año como estudiante de Maestría en Estudios Internacionales de la Universidad Torcuato Di Tella de Argentina, realizó un intercambio de estudio en GW Elliott School of International Affairs que la llevó hasta Washington DC.
Durante los últimos 10 años ha desarrollado y brindado soporte en estrategias de asuntos públicos, alianzas público-privadas y comunicaciones para el sector multilateral y privado.
Geraldine is the editor-in-chief of the blog about open knowledge, “Abierto al público”,and a consultant in the Knowledge Management Division at the Inter-American Development Bank (IDB).
She has a Bachelor’s degree with Honors in Political Science from the University of Buenos Aires. During her second year as a student in the Master’s in International Studies program at Torcuato Di Tella University in Argentina, she participated in a study exchange program at the GW Elliott School of International Affairs, which brought her to Washington DC.
During the last 10 years, she has developed and supported public affairs strategies, public-private partnerships and communications for the multilateral and private sector.
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