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Sustainable Energy Technologies

Key Takeaways

•   AI is a foundational technology that is advancing other scientific fields and, like electricity and the internet, has the potential to transform how society operates.

•   Even the most advanced AI has many failure modes that are unpredictable, not widely appreciated, not easily fixed, not explainable, and capable of leading to unintended consequences.

•   There is substantial debate among AI experts about whether AI poses a long-term existential risk to humans, and whether the most important risks are also current weaknesses of AI.

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Overview

Artificial intelligence (AI) is the ability of computers to perform functions associated with the human brain, including perceiving, reasoning, learning, interacting, problem solving, and exercising creativity. AI promises to be a fundamental enabler of technological advancement and progress in many fields, arguably as important as electricity or the internet.

SUBFIELDS

AI has three core subfields; the boundaries between them are often fluid.

  • Computer vision (CV) enables machines to recognize and understand visual information, convert pictures and videos into data, and make decisions based on the results.

  • Machine learning (ML) enables computers to perform tasks without explicit instructions, often by generalizing from patterns in data. ML includes deep learning that relies on multilayered artificial neural networks to model and understand complex relationships within data. 

  • Natural language processing (NLP) equips machines with capabilities to understand, interpret, and produce spoken words and written texts.
INPUTS TO MACHINE LEARNING
 

Most of today’s AI is based on machine learning (ML), though it draws on other subfields. ML requires data and computing power, often on an enormous scale. Data can take various forms, including text, images, videos, sensor readings, and more. The quality and quantity of data play a crucial role in determining the performance and capabilities of AI models. Without sufficient high-quality data, AI models may generate inaccurate or biased outcomes. Furthermore, the hardware costs of training leading AI models are substantial. For example, reports have estimated that the training of GPT-4, ChatGPT’s more capable cousin, costs at least a few hundred million dollars. Currently, only a select number of large US companies have the resources to build cutting-edge models from scratch. 

REGULATION
 

Research on foundational AI technologies is difficult—if not impossible—to regulate, especially when other nations have strong incentives to carry on regardless of actions taken by US policymakers. The same applies to voluntary restrictions on research by companies concerned about competition. Regulation of specific applications of AI may be more easily implemented, in part because of existing regulatory frameworks in application domains such as health care, finance, and law.

 

Over the Horizon

AI OPPORTUNITIES   
 

AI users will not be limited to those with specialized training; instead, the average person will interact directly with sophisticated AI applications for a multitude of everyday activities. While AI can automate a wide range of tasks, it has promise in enabling people to do what they are best at doing. AI systems can work alongside people, complementing and assisting rather than replacing them. Key sectors poised to take advantage of AI include health care, agriculture, law, and the logistics and transportation field.

 

AI RISKS    

The primary challenge of bringing AI innovation into operation is risk management. Some of the known issues with today’s leading AI models include:

  • Explainability: Today’s AI is for the most part incapable of explaining how it arrives at a specific conclusion. Explanations are not always necessary, but in cases such as medical decision making, they may be critical.

  • Bias and fairness: Machine learning models are trained on existing datasets, which means that any bias in the data can skew results. (For example, using historical employment information at a particular firm to predict which job applicants are most desirable may lead to hiring preferences for men.)

  • Vulnerability to spoofing: For many AI models, data inputs can be tweaked to fool them into drawing false conclusions.

  • Deepfakes: AI provides the capability for generating highly realistic but entirely inauthentic audio and video, with concerning implications for courtroom evidence and political deception.

  • Overtrust: As trust in AI grows, the risk of overlooking errors, mishaps, and unforeseen incidents also grows.
  • Hallucinations: AI models can generate results or answers that seem plausible but are completely made up, incorrect, or both.

Report Preview: Artificial Intelligence

Faculty Council Advisor

fei-fei-li_profilephoto.jpg
Fei-Fei Li
Author
Fei-Fei Li

Fei-Fei Li is the Sequoia Professor of Computer Science and professor, by courtesy, of psychology at Stanford University. She serves as codirector of Stanford’s Human-Centered AI Institute and as an affiliated faculty at Stanford Bio-X. Her current research includes cognitively inspired AI, machine learning, computer vision, and ambient intelligent systems for health-care delivery. She received her PhD in electrical engineering from the California Institute of Technology.

View Bio
fei-fei-li_profilephoto.jpg
Fei-Fei Li

Fei-Fei Li is the Sequoia Professor of Computer Science and professor, by courtesy, of psychology at Stanford University. She serves as codirector of Stanford’s Human-Centered AI Institute and as an affiliated faculty at Stanford Bio-X. Her current research includes cognitively inspired AI, machine learning, computer vision, and ambient intelligent systems for health-care delivery. She received her PhD in electrical engineering from the California Institute of Technology.

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