genderequalitygoals

genderequalitygoals

Tuesday, 23 May 2023

[New post] What is a black box? A computer scientist explains what it means when the inner workings of AIs are hidden

Site logo image PerceptivX posted: " For some people, the term "black box" brings to mind the recording devices in airplanes that are valuable for postmortem analyses if the unthinkable happens. For others it evokes small, minimally outfitted theaters. But black box is also an important ter" PerceptivX

What is a black box? A computer scientist explains what it means when the inner workings of AIs are hidden

PerceptivX

May 23

For some people, the term "black box" brings to mind the recording devices in airplanes that are valuable for postmortem analyses if the unthinkable happens. For others it evokes small, minimally outfitted theaters. But black box is also an important term in the world of artificial intelligence.

AI black boxes refer to AI systems with internal workings that are invisible to the user. You can feed them input and get output, but you cannot examine the system's code or the logic that produced the output.

Machine learning is the dominant subset of artificial intelligence. It underlies generative AI systems like ChatGPT and DALL-E 2. There are three components to machine learning: an algorithm or a set of algorithms, training data and a model. An algorithm is a set of procedures. In machine learning, an algorithm learns to identify patterns after being trained on a large set of examples – the training data. Once a machine-learning algorithm has been trained, the result is a machine-learning model. The model is what people use.

For example, a machine-learning algorithm could be designed to identify patterns in images, and training data could be images of dogs. The resulting machine-learning model would be a dog spotter. You would feed it an image as input and get as output whether and where in the image a set of pixels represents a dog.

Any of the three components of a machine-learning system can be hidden, or in a black box. As is often the case, the algorithm is publicly known, which makes putting it in a black box less effective. So to protect their intellectual property, AI developers often put the model in a black box. Another approach software developers take is to obscure the data used to train the model – in other words, put the training data in a black box.

Black box algorithms make it very difficult to understand how AIs work, but the situation isn't quite black and white.

The opposite of a black box is sometimes referred to as a glass box. An AI glass box is a system whose algorithms, training data and model are all available for anyone to see. But researchers sometimes characterize aspects of even these as black box.

That's because researchers don't fully understand how machine-learning algorithms, particularly deep-learning algorithms, operate. The field of explainable AI is working to develop algorithms that, while not necessarily glass box, can be better understood by humans.

Why AI black boxes matter

In many cases, there is good reason to be wary of black box machine-learning algorithms and models. Suppose a machine-learning model has made a diagnosis about your health. Would you want the model to be black box or glass box? What about the physician prescribing your course of treatment? Perhaps she would like to know how the model arrived at its decision.

What if a machine-learning model that determines whether you qualify for a business loan from a bank turns you down? Wouldn't you like to know why? If you did, you could more effectively appeal the decision, or change your situation to increase your chances of getting a loan the next time.

Black boxes also have important implications for software system security. For years, many people in the computing field thought that keeping software in a black box would prevent hackers from examining it and therefore it would be secure. This assumption has largely been proved wrong because hackers can reverse-engineer software – that is, build a facsimile by closely observing how a piece of software works – and discover vulnerabilities to exploit.

If software is in a glass box, then software testers and well-intentioned hackers can examine it and inform the creators of weaknesses, thereby minimizing cyberattacks.

Saurabh Bagchi receives research funding from a large number of sources, federal government, state government, and private enterprises. The full list can be seen from his CV at:
https://bagchi.github.io/vita.html

Bagchi is an office bearer of IEEE Computer Society. He is the co-founder and CTO of a cloud computing startup, KeyByte.

Comment

Unsubscribe to no longer receive posts from PerceptivX.
Change your email settings at manage subscriptions.

Trouble clicking? Copy and paste this URL into your browser:
https://perceptivx.com/what-is-a-black-box-a-computer-scientist-explains-what-it-means-when-the-inner-workings-of-ais-are-hidden/

WordPress.com and Jetpack Logos

Get the Jetpack app to use Reader anywhere, anytime

Follow your favorite sites, save posts to read later, and get real-time notifications for likes and comments.

Download Jetpack on Google Play Download Jetpack from the App Store
WordPress.com on Twitter WordPress.com on Facebook WordPress.com on Instagram WordPress.com on YouTube
WordPress.com Logo and Wordmark title=

Learn how to build your website with our video tutorials on YouTube.


Automattic, Inc. - 60 29th St. #343, San Francisco, CA 94110  

at May 23, 2023
Email ThisBlogThis!Share to XShare to FacebookShare to Pinterest

No comments:

Post a Comment

Newer Post Older Post Home
Subscribe to: Post Comments (Atom)

Nobody Warned Me That Sobriety Would Still Hurt

Thoughts on learning to live life with feeling ͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏ ...

  • [New post] “You Might Go to Prison, Even if You’re Innocent”
    Delaw...
  • Autistic Mental Health Conference 2025
    Online & In-Person ͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏     ­͏    ...
  • [Blog Post] Principle #16: Take care of your teacher self.
    Dear Reader,  To read this week's post, click here:  https://teachingtenets.wordpress.com/2025/07/02/aphorism-24-take-care-of-your-teach...

Search This Blog

  • Home

About Me

GenderEqualityDigest
View my complete profile

Report Abuse

Blog Archive

  • January 2026 (45)
  • December 2025 (52)
  • November 2025 (57)
  • October 2025 (65)
  • September 2025 (71)
  • August 2025 (62)
  • July 2025 (59)
  • June 2025 (55)
  • May 2025 (34)
  • April 2025 (62)
  • March 2025 (50)
  • February 2025 (39)
  • January 2025 (44)
  • December 2024 (32)
  • November 2024 (19)
  • October 2024 (15)
  • September 2024 (19)
  • August 2024 (2651)
  • July 2024 (3129)
  • June 2024 (2936)
  • May 2024 (3138)
  • April 2024 (3103)
  • March 2024 (3214)
  • February 2024 (3054)
  • January 2024 (3244)
  • December 2023 (3092)
  • November 2023 (2678)
  • October 2023 (2235)
  • September 2023 (1691)
  • August 2023 (1347)
  • July 2023 (1465)
  • June 2023 (1484)
  • May 2023 (1488)
  • April 2023 (1383)
  • March 2023 (1469)
  • February 2023 (1268)
  • January 2023 (1364)
  • December 2022 (1351)
  • November 2022 (1343)
  • October 2022 (1062)
  • September 2022 (993)
  • August 2022 (1355)
  • July 2022 (1771)
  • June 2022 (1299)
  • May 2022 (1228)
  • April 2022 (1325)
  • March 2022 (1264)
  • February 2022 (858)
  • January 2022 (903)
  • December 2021 (1201)
  • November 2021 (3152)
  • October 2021 (2609)
Powered by Blogger.