Skip to main content
EFFecting Change: Get the Flock Out of Our City on February 19

The last decade has seen rapid progress in the field of machine learning and neural networking. Using these techniques, computers now routinely recognise images, parse and respond to human speech, answer questions and make decisions. Welcome to the early robot future.

There is a wide range of views about how urgent or profound the policy questions raised by general, "human level", artificial intelligence may be. But regardless of whether you think general purpose AI is imminent or still in the distant future, there are some topics raised by the state of the art in neural networking and machine learning algorithms that need to be addressed in the short term. For instance:

  • What rules, if any, should constrain the use of machine learning methods when coupled to the large scale surveillance technologies operated by intelligence agencies? What about the large datasets collected by private tech companies?
  • When algorithms, including AI and machine learning systems, make decisions that affect human lives, from the mundane (e.g. price discrimination) to the profound (e.g. sentencing recommendations), what standards of transparency, openness and accountability should apply to those decisions? If the decisions are "wrong", who is legally and ethically responsible?
  • How do we prevent machine learning systems from producing racially biased results, or from engaging in other problematic forms of "profiling"?

EFF is tracking these issues, and will intervene to ensure there are protections against the privacy, safety and due process problems that could be caused by poorly designed or deployed machine learning systems, while protecting the rights of innovators to build, experiment with and deploy awesome new forms of AI.

Artificial Intelligence Highlights

Artificial Intelligence Updates

EFF, Human Rights Watch y más de 70 grupos de la sociedad civil solicitan a Mark Zuckerberg que proporcione a todos los usuarios y usuarias un mecanismo para apelar ante la censura de contenidos en Facebook

English versionSan Francisco - The Electronic Frontier Foundation y más de 70 grupos de derechos humanos y digitales pidieron hoy a Mark Zuckerberg que añadiera transparencia y responsabilidad real al proceso de eliminación de contenidos de Facebook. Específicamente, los grupos exigen que Facebook explique – claramente - cuánto contenido...

EFF, Human Rights Watch, and Over 70 Civil Society Groups Ask Mark Zuckerberg to Provide All Users with Mechanism to Appeal Content Censorship on Facebook

Spanish version San Francisco—The Electronic Frontier Foundation (EFF) and more than 70 human and digital rights groups called on Mark Zuckerberg today to add real transparency and accountability to Facebook’s content removal process. Specifically, the groups demand that Facebook clearly explain how much content it removes, both rightly and...

Pages

Back to top

JavaScript license information