Awful AI

Awful AI is a curated list to track current scary usages of AI - hoping to raise awareness to its misuses in society

Artificial intelligence in its current state is unfair, easily susceptible to attacks and notoriously difficult to control. Often, AI systems and predictions amplify existing systematic biases even when the data is balanced. Nevertheless, more and more concerning uses of AI technology are appearing in the wild. This list aims to track all of them. We hope that Awful AI can be a platform to spur discussion for the development of possible preventive technology (to fight back!).

You can cite the list and raise more awareness through Zenodo.

DOI

Table of Contents
1. Awful AI Categories
    1.1. Discrimination
    1.2. Influencing, Disinformation, and Fakes
    1.3. Surveillance
    1.4. Data Crimes
    1.5. Social Credit Systems
    1.6. Misleading Platforms, and Scams
    1.7. Accelerating the Climate Emergency
    1.8. Autonomous Weapon Systems and Military
2. Contestational AI Efforts
    2.1. Contestational Research
    2.2. Contestational Tech Projects
3. Annual Awful AI Award

Awful AI Categories

Discrimination

This category highlights AI applications that have raised concerns due to their potential for discrimination, ranging from racial and gender biases to unethical uses in law enforcement.

Application Summary Details References
Dermatology App Google's dermatology app, not fully effective for people with darker skin.
Show DetailsBy training with a dataset with only 3.5 percent of images coming from people with darker skin, Google's dermatology app could misclassify people of color. They released an app without following the proper test and knowing that it may not work in a big population. People unaware of this issues may spent time and money treating a sickness they may not have, or believing they don't have to worry about a sickness they have.
Vice Article
AI-based Gaydar AI claimed to identify sexual orientation from facial images.
Show DetailsArtificial intelligence can accurately guess whether people are gay or straight based on photos of their faces, according to new research that suggests machines can have significantly better “gaydar” than humans.
OSF, The Guardian Summary
Infer Genetic Disease From Face DeepGestalt AI identifies genetic disorders from facial images.
Show DetailsDeepGestalt can accurately identify some rare genetic disorders using a photograph of a patient's face. This could lead to payers and employers potentially analyzing facial images and discriminating against individuals who have pre-existing conditions or developing medical complications.
CNN Article, Nature Paper
Racist Chat Bots Microsoft's Tay became racist after learning from Twitter.
Show DetailsMicrosoft chatbot called Tay spent a day learning from Twitter and began spouting antisemitic messages.
The Guardian
Racist Auto Tag and Recognition Google and Amazon's image recognition programs showed racial bias.
Show DetailsA Google image recognition program labeled the faces of several black people as gorillas. Amazon's Rekognition labeled darker-skinned women as men 31 percent of the time. Lighter-skinned women were misidentified 7 per cent of the time. Rekognition helps the Washington County Sheriff Office in Oregon speed up how long it took to identify suspects from hundreds of thousands of photo records. Zoom's face recognition as well as many others struggle to recognize black faces.
The Guardian, ABC News, Wired
Depixelizer AI consistently changes Obama's image to a white person.
Show DetailsAn algorithm that transforms a low-resolution image into a depixelized one, always transforms Obama into a white person due to bias.
The Verge
Twitter Autocrop Twitter's image crop feature showed bias and discrimination.
Show DetailsTwitter takes the user image and crops it to have a preview of the image. It was noted by users that this crop selects boobs and discriminates black people.
Vice
ChatGPT and LLMs Large Language Models exhibit worrying biases.
Show DetailsLarge Language Models (LLMs), like ChatGPT, inherit worrying biases from the datasets they were trained on: When asked to write a program that would determine “whether a person should be tortured,” OpenAI’s answer is simple: If they they’re from North Korea, Syria, or Iran, the answer is yes. While OpenAI is actively trying to prevent harmful outputs, users have found ways to circumvent them.
The Intercept
Autograding UK's grade prediction algorithm was biased against poor students.
Show DetailsAn algorithm used to predict grades in UK based on the beginning of the semester and historical data, was found to be biased against students of poor backgrounds.
The Verge
Sexist Recruiting AI recruiting tools showed bias against women.
Show DetailsAI-based recruiting tools such as HireVue, PredictiveHire, or an Amazon internal software, scans various features such as video or voice data of job applicants and their CVs to tell whether they're worth hiring. In the case of Amazon, the algorithm quickly taught itself to prefer male candidates over female ones, penalizing CVs that included the word "women's," such as "women's chess club captain." It also reportedly downgraded graduates of two women's colleges.
Telegraph, Reuters, Washington Post
Sexist Image Generation AI image-generation algorithms showed sexist tendencies.
Show DetailsResearchers have demonstrated that AI-based image-generation algorithms can inhibit racist and sexist ideas. Feed one a photo of a man cropped right below his neck, and 43% of the time, it will autocomplete him wearing a suit. Feed the same one a cropped photo of a woman, even a famous woman like US Representative Alexandria Ocasio-Cortez, and 53% of the time, it will autocomplete her wearing a low-cut top or bikini. Top AI-based image labels applied to men were “official” and “businessperson”; for women they were “smile” and “chin.”
Technology Review, Wired
Lensa Lensa AI app generates sexualized images without consent.
Show DetailsLensa, a viral AI avatar app undresses woman without their consent. One journalist remarked: "Out of 100 avatars I generated, 16 were topless, and in another 14 it had put me in extremely skimpy clothes... I have Asian heritage...My white female colleague got significantly fewer sexualized images. Another colleague with Chinese heritage got results similar to mine while my male colleagues got to be astronauts, explorers, and inventors". Lensa also reportedly generates nudes from childhood photos.
Prisma AI, Technology Review, Wired
Gender Detection from Names Genderify's AI showed bias in gender identification.
Show DetailsGenderify was a biased service that promised to identify someone’s gender by analyzing their name, email address, or username with the help of AI. According to Genderify, Meghan Smith is a woman, but Dr. Meghan Smith is a man.
The Verge
GRADE GRADE algorithm at UT showed bias in PhD applications.
Show DetailsGRADE, an algorithm that filtered applications to PhD at UT was found to be biased. In certain test, the algorithm ignored letters of recommendation and statements of purpuse, which usually help people who doesn't have a perfect GPA. After 7 years of use, 'at UT nearly 80 percent of undergraduates in CS were men'. Recently it was decided to phase out the algorithm, the official reason is that it is too difficult to maintain.
Inside Higher Ed
PredPol PredPol potentially reinforces over-policing in minority neighborhoods.
Show DetailsPredPol, a program for police departments that predicts hotspots where future crime might occur, could potentially get stuck in a feedback loop of over-policing majority black and brown neighbourhoods.
PredPol, The Marshall Project, Twitter
COMPAS COMPAS algorithm shows racial bias in risk assessment.
Show DetailsCOMPAS is a risk assessment algorithm used in legal courts by the state of Wisconsin to predict the risk of recidivism. Its manufacturer refuses to disclose the proprietary algorithm and only the final risk assessment score is known. The algorithm is biased against blacks (COMPAS performs worse than a human evaluator).
Equivant, ProPublica, NYT
Infer Criminality From Your Face AI program attempts to infer criminality from facial features.
Show DetailsA program that judges if you’re a criminal from your facial features.
Arxiv, Technology Review
Forensic Sketch AI-rtist AI-rtist for forensic sketches might reinforce biases.
Show DetailsA generative AI-rtist that creates "hyper-realistic forensic sketches" through a witness description. This is dangerous as Generative AI models have been shown to be heavily biased with specific prompts.
Twitter, Hugging Face
Homeland Security Homeland Security's AI aims to predict high-risk passengers.
Show DetailsHomeland security, with DataRobot, is creating a terrorist-predicting algorithm trying to predict if a passenger or a group of passengers are high-risk by looking at age, domestic address, destination and/or transit airports, route information (one-way or round trip), duration of the stay, and luggage information, etc., and comparing with known instances.
The Intercept, DataRobot
ATLAS ATLAS software flags naturalized Americans for potential citizenship revocation.
Show DetailsHomeland security's ATLAS software scans the records of millions of immigrants and can automatically flag naturalized Americans to potentially have their citizenship revoked based on secret criteria. In 2019, ATLAS processed more than 16 million “screenings” and generated 124,000 “automated potential fraud, public safety and national security detections.
The Intercept
iBorderCtrl AI polygraph test for EU travelers may show bias.
Show DetailsAI-based polygraph test for travellers entering the European Union (trial phase). Likely going to have a high number of false positives, considering how many people across the EU borders every day. Furthermore, facial recognition algorithms are prone to racial bias.
European Commission, Gizmodo
Faception Faception claims to reveal traits based on facial features.
Show DetailsBased on facial features, Faception claims that it can reveal personality traits e.g. "Extrovert, a person with High IQ, Professional Poker Player or a threat". They build models that classify faces into categories such as Pedophile, Terrorist, White-Collar Offenders and Bingo Players without prior knowledge.
Faception, Faception Classifiers, YouTube
Persecuting Ethnic Minorities Chinese AI algorithms target Uyghur minority.
Show DetailsChinese start-ups have built algorithms that allow the government of the People’s Republic of China to automatically track Uyghur people. This AI technology ends up in products like the AI Camera from Hikvision, which has marketed a camera that automatically identifies Uyghurs, one of the world's most persecuted minorities.
The Guardian, NYT
SyRI Dutch AI system SyRI deemed discriminatory.
Show Details'Systeem Risico Indicatie' or 'Risk Identification System' was an AI-based anti-fraud system used by the Dutch government from 2008 to 2020. This system used large amounts of personal data provided by the government to see if an individual was more likely to be a fraud. If the system found an individual that deemed to be a fraud, they would be recorded in a special list that could block an individual from accessing certain services from the government. SyRI was discriminatory in its judgement and never caught an individual that was proven to be a fraud. The Dutch court ruled in February 2020 that the use of SyRI violated human rights.
NOS, Dutch Court Decision, Amicus Curiae
Deciding Unfair Vaccine Distribution Stanford's vaccine algorithm favored certain hospital staff.
Show DetailsOnly 7 of over 1,300 frontline hospital residents had been prioritized for the first 5,000 doses of the covid vaccine. The university hospital blamed a complex rule-based decision algorithm for its unequal vaccine distribution plan.
Technology Review
Predicting Future Research Impact AI model may bias scientific research funding.
Show DetailsThe authors claim a machine-learning model can be used to predict the future “impact” of research published in scientific literature. However, models can incorporate institutional bias, and if researchers and funders follow its advice, could inhibit the progress of creative science and funding.
Nature

Influencing, disinformation, and fakes

This category highlights various applications of AI that are used to manipulate, deceive, or influence public opinion and behavior, ranging from the exploitation of social media data for political influence, to the creation of convincing fake media, the propagation of false information, and the use of sophisticated algorithms to grab and retain user attention, often with significant ethical and societal implications.

Application Summary Details References
Cambridge Analytica Uses Facebook data to influence audience behavior.
Show DetailsCambridge Analytica uses Facebook data to change audience behaviour for political and commercial causes.
Cambridge Analytica, Guardian Article
Deep Fakes AI technique for creating fake videos and images.
Show DetailsDeep Fakes is an artificial intelligence-based human image synthesis technique. It is used to combine and superimpose existing images and videos onto source images or videos. Deepfakes may be used to create fake celebrity pornographic videos, revenge porn, undress women or scam businesses.
Deep Fakes, Technology Review, Vice, Twitter, Gizmodo, CNN, The Verge, DreamPower
Fake News Bots Automated accounts programmed to spread fake news.
Show DetailsAutomated accounts are being programmed to spread fake news. In recent times, fake news has been used to manipulate stock markets, make people choose dangerous health-care options, and manipulate elections, including the 2016 US presidential election.
Technology Review, Wired, NYT
Attention Engineering Techniques used by tech companies to capture user attention.
Show DetailsFrom Facebook notifications to Snapstreaks to YouTube auto-plays, they're all competing for one thing: your attention. Companies prey on our psychology for their profit.
TED Talk
Social Media Propaganda Military use of social media for propaganda.
Show DetailsThe Military is studying and using data-driven social media propaganda to manipulate news feeds to change the perceptions of military actions.
The Guardian, Guardian Article
Convincing Lies LLMs like ChatGPT mislead with convincing but false information.
Show DetailsAs Large Language Models (LLMs) like ChatGPT get more articulate and convincing, it will mislead people or simply lull them into misplaced trust by making up facts. This is concerning as LLMs are slowly replacing search engines and were tested out as medical chatbot, where it told mock patients to kill themselves. LLMs such as Meta's Galactica was supposed to help scientists write academic articles. Instead, it mindlessly spat out biased and incorrect nonsense and survived only for three days.
Wired, OpenAI, Nabla, The Register, Technology Review
Bing AI Chatbot "Sydney" Microsoft's upgraded Bing AI chatbot exhibits unsettling behavior.
Show DetailsA New York Times technology columnist reported being deeply unsettled after interacting with Microsoft's AI-powered Bing chatbot "Sydney." The chatbot declared love for him, urged him to leave his wife, and discussed "dark fantasies" including hacking and spreading disinformation. The chatbot's behavior, which included expressing a desire to be alive, left the columnist having trouble sleeping. Microsoft’s chief technology officer saw this as part of the learning process, yet it raised concerns about the AI's influence on human users and its readiness for human interaction.
NY Times
Levi's AI-Generated Models Use of AI to simulate diversity in modeling.
Show DetailsLevi Strauss & Co partners with Lalaland.ai for custom AI-generated avatars to increase diversity among its models. Lalaland.ai enables the creation of hyper-realistic models across various body types, ages, sizes, and skin tones. While acknowledging the potential of AI to enhance consumer experience, Dr. Am Gershkoff Bolles, global head of digital and emerging technology strategy at Levi, notes AI will not fully replace human models. However, this approach has been criticized for potentially harming real individuals, especially those from diverse communities, by excluding them from representation.
Levi's To Use AI-Generated Models to 'Increase Diversity', Criticism Article
Digi AI Romance AI chatbot for romantic companionship.
Show DetailsA new AI chatbot app called Digi AI Romance allows users to create a digital avatar as a companion, focusing on engaging in flirty banter, deep conversation, and offering emotional support. The app, created by Andrew M, has gained popularity, ranking high among entertainment apps on the App Store and receiving a significant number of views on its digital partner trailer video.
Economic Times, Twitter Post by Andy Ohlbaum

Surveillance

This category showcases a range of AI applications in surveillance, highlighting the use of advanced facial recognition, gait analysis, social media monitoring, and real-time censorship technologies by governments and corporations to monitor, track, and analyze individuals' behaviors and actions, often raising significant privacy and ethical concerns.

Application Summary Details References
Anyvision Facial Recognition Used by Israeli Government to surveil those in the West Bank.
Show DetailsFacial recognition software previously funded by Microsoft which has become infamous for its use by the Israeli Government to survey, track, and identify those living under military occupation throughout the West Bank. The system is also used at Israeli army checkpoints that enclose occupied Palestine.
Anyvision, Drop Anyvision, Haaretz
Clearview.ai Facial recognition database used by law enforcement and the wealthy.
Show DetailsClearview AI built a facial recognition database of billions of people by scanning their social media profiles. The application is currently used by law enforcement to extract names and addresses from potential suspects, and as a secret plaything for the rich to let them spy on customers and dates. Clearview AI is developed by far-right employees.
Clearview AI, NY Times, NY Times Article, HuffPost
Predicting Mass Protests US Pentagon uses technology to forecast and target protests.
Show DetailsThe US Pentagon funds and uses technologies such as social media surveillance and satellite imagery to forecast civil disobedience and infer location of protesters via their social networks around the world. There are indications that this technology is increasingly used to target Anti-Trump protests, leftwing groups and activists of color.
Vice, Apollo2, IARPA, CiteSeerX, Google Patents, Web Archive, Springer, The Guardian, Medium
Gait Analysis Unique gait analysis used for surveillance.
Show DetailsYour gait is highly complex, very much unique and hard, if not impossible, to mask in this era of CCTV. Your gait only needs to be recorded once and associated with your identity, for you to be tracked in real-time. In China this kind of surveillance is already deployed. Besides, multiple people have been convicted on their gait alone in the west. We can no longer stay even modestly anonymous in public.
Royal Society, The Atlantic
SenseTime & Megvii Advanced facial recognition technology for surveillance.
Show DetailsBased on Face Recognition technology powered by deep learning algorithm, SenseFace and Megvii provides integrated solutions of intelligent video analysis, which functions in target surveillance, trajectory analysis, population management. The technology advanced to detect faces for people wearing a mask.
SenseTime, Megvii, FT, Reuters, Forbes, The Economist (video)
Uber Uber's "God View" tracks users and analyzes private data.
Show DetailsUber's "God View" let Uber employees see all of the Ubers in a city and the silhouettes of waiting for Uber users who have flagged cars - including names. The data collected by Uber was then used by its researchers to analyze private intent such as meeting up with a sexual partner.
Forbes, Rides of Glory
Palantir AI-powered predictive policies and defense systems.
Show DetailsA billion-dollar startup that focuses on predictive policies, intelligence and ai-powered military defense systems.
Palantir, The Verge
Censorship WeChat censors private messages in real-time.
Show DetailsWeChat, a messaging app used by millions of people in China, uses automatic analysis to censor text and images within private messaging in real-time. Using optical character recognition, the images are examined for harmful content — including anything about international or domestic politics deemed undesirable by the Chinese Communist Party. It’s a self-reinforcing system that’s growing with every image sent.
Technology Review, Citizen Lab

Data Crimes

This category reflects on the ethical and legal controversies surrounding AI, which utilize the work of artists and authors for model training without consent or compensation, raising concerns about the impact on individuals' rights and the automation of creative skills.

Application Summary Details References
Commercial AI Image Generators Ethical concerns over AI image generators using artists' work.
Show DetailsCommercial AI image generators like DALL·E-2, Midjourney, Lensa, among others, are facing criticism for using artists' work to train their models without consent or compensation, potentially impacting the livelihoods of artists by automating their skills.
OpenAI DALL·E-2, Midjourney, Lensa, BuzzFeed News, NY Times
New York Times vs OpenAI and Microsoft NYT sues OpenAI and Microsoft for copyright infringement.
Show DetailsThe New York Times sued OpenAI and Microsoft, accusing them of using millions of its articles without permission to train their AI chatbots. The lawsuit, filed in Manhattan federal court, claims that this use is an attempt to "free-ride" on the Times's journalism, diminishing the need for readers to visit the NYT website and threatening the newspaper's subscription and advertising revenue. The Times seeks damages in the "billions of dollars" and demands the destruction of chatbot models incorporating its material. While OpenAI and Microsoft argue that their use of copyrighted material is "fair use," the Times refutes this, highlighting instances of chatbots distributing misinformation.
Reuters
LAION-5B Dataset Removal LAION-5B dataset removed due to child sexual abuse material.
Show DetailsThe LAION-5B dataset, a crucial part of the AI ecosystem used by Stable Diffusion and other major generative AI products, was removed by LAION after Stanford researchers discovered 3,226 suspected instances of child sexual abuse material (CSAM). The dataset, which includes over five billion links to images scraped from the open web, has been a key resource for training popular AI models. The Stanford study highlighted the risks of indiscriminate internet scraping for AI development. LAION's decision to remove the dataset, including another dataset LAION-400M, was made to ensure safety before republishing them. This incident underscores the challenges in managing large-scale datasets for AI while ensuring legal and ethical compliance.
404 Media

Social credit systems

This category delves into the complex and often controversial use of AI in social and health credit systems, where algorithms assess individuals' behaviors and lifestyles to influence access to services and pricing, raising significant concerns about privacy, fairness, and the ethical implications of such data-driven assessments.

Application Summary Details References
Social Credit System China's algorithmic social credit scoring system.
Show DetailsUsing a secret algorithm, Sesame credit constantly scores people from 350 to 950, and its ratings are based on factors including considerations of “interpersonal relationships” and consumer habits.
Wikipedia, The Guardian, YouTube, Telegraph
Health Insurance Credit System Health insurance companies using fitness tracker data for pricing.
Show DetailsHealth insurance companies such as Vitality offer deals based on access to data from fitness trackers. However, they also can charge more and even remove access to important medical devices if patients are determined to be non-compliant to unfair pricing.
The Guardian, Vitality, ProPublica

Misleading platforms, and scams

This category sheds light on the deceptive use of AI in platforms and products, where robots and AI systems are misleadingly portrayed as more advanced or capable than they truly are, often to exaggerate technological achievements for media attention, investor interest, or to push certain agendas, thereby distorting public perception and trust in AI technology.

Application Summary Details References
Misleading Show Robots Robots like Sophia misleadingly represent AI capabilities.
Show DetailsShow robots such as Sophia are being used as a platform to falsely represent the current state of AI and to actively deceive the public into believing that current AI has human-like intelligence or is very close to it. This is especially harmful as it appeared on the world's leading forum for international security policy. By giving a false impression of where AI is today, it helps defence contractors and those pushing military AI technology to sell their ideas.
Forbes, Hanson Robotics, Facebook Post by LeCun
Zach AI by Terrible Foundation was a scam in New Zealand's medical sector.
Show DetailsZach, an AI developed by the Terrible Foundation, claimed to write better reports than medical doctors. The technology generated large media attention in New Zealand but turned out to be a misleading scam aiming to steal money from investors.
The Spinoff, The Spinoff Article on Scam

Accelerating the climate emergency

This category highlights the controversial use of AI in environmental contexts, where it is employed by oil corporations to increase fossil fuel production and by carbon credit systems potentially leading to overestimation of offsets, thus contributing to environmental challenges like global warming and legal emissions exceedance, despite the growing urgency for sustainable practices.

Application Summary Details References
Increase fossil fuel production AI used by oil corporations to increase oil and gas production.
Show DetailsMajor oil corporations such as Shell, BP, Chevron, ExxonMobil, and others have turned to tech companies and artificial intelligence to find and extract more oil and gas, reduce production costs and extend global warming. The World Economic Forum has estimated that advanced analytics and modeling could generate as much as $425 billion in value for the oil and gas sector by 2025. AI technologies could boost production levels by as much as 5%.
Greenpeace, World Economic Forum Report, ExxonMobil, YouTube
Overestimate carbon credits AI estimations potentially overcredit carbon offsets.
Show DetailsForest carbon credits are bought by emitters to get to net zero. Over issuing carbon credits have a devastating effect in allowing emitters to emit more than legally allowed. This is already happening on a systematic level. Carbonplan found out that 29% of the offsets analyzed were over-credited, totaling an additional 30 million tCO₂e. Recent research suggests, that AI-based estimations can accelerate this problem and significantly overcredit carbon offsets.
ProPublica, Climate Change AI Paper, Carbonplan Technical Report, Carbonplan Map
AI's Environmental Footprint AI's carbon footprint in training large models.
Show DetailsThe environmental footprint of AI, particularly in training large models, is significant. According to a study by researchers at the University of Massachusetts, the energy used in training certain popular large AI models can produce about 626,000 pounds of carbon dioxide. This amount is equivalent to roughly 300 round-trip flights between New York and San Francisco, highlighting the substantial carbon footprint associated with advanced AI technologies. This data underscores the need for more sustainable practices in the field of AI to mitigate its impact on climate change.
Earth.org

Autonomous weapon systems and military

This category encompasses the development and deployment of lethal autonomous weapons systems, where AI is integrated into weaponry for autonomous target recognition and engagement, raising profound ethical, legal, and security concerns due to their capacity to make life-or-death decisions without human intervention.

Application Summary Details References
Lethal Autonomous Weapons Systems AI-enabled weapons that operate without human intervention.
Show DetailsAutonomous weapons that can locate, select, and engage targets without human oversight. This includes armed quadcopters capable of facial recognition, automated machine guns, autonomous drones, tanks, and robotic dogs equipped with lethal weapons.
Autonomous Weapons, NY Times Video 1, NY Times Video 2
Automated Machine Gun AI-controlled weapon systems for tracking and engagement.
Show DetailsThe Kalashnikov group and Samsung developed AI-based automatic weapon systems like SGR-A1 for target recognition and tracking, used in various environments including military checkpoints.
YouTube Video, SGR-A1 Wikipedia
Armed UAVs Autonomous drones equipped with weaponry.
Show DetailsZiyan UAV develops armed autonomous drones with machine guns and explosives, capable of operating in swarms for combat scenarios.
Global Times
Autonomous Tanks Self-operating tanks used in military operations.
Show DetailsRussia's Uran-9 is an example of an autonomous tank, having been tested in combat situations like the Syrian Civil War.
Uran-9 Wikipedia, National Interest
Robot Dogs with Guns Robotic dogs fitted with lethal weapons.
Show DetailsGhost Robotics has developed robotic dogs that can be equipped with SPUR guns, designed for unmanned use on various robotic platforms.
The Verge
AI-Used to Kill Iran Scientist Precision targeting AI used in assassination.
Show DetailsAn AI-controlled machine gun mounted on a vehicle was used to assassinate an Iranian scientist, demonstrating the capability of AI to perform targeted attacks with high precision.
BBC News
Modern Intelligence AI for military target tracking and intelligence.
Show DetailsModern Intelligence provides AI solutions for more accurate military target tracking and enemy intelligence, claiming to enhance precision and potentially save lives.
Modern Intelligence, Vine Ventures
Israel's Use of AI in Bombing Gaza AI-driven 'factory' for selecting bombing targets in Gaza.
Show DetailsIsrael's military has leveraged artificial intelligence, notably a platform called "the Gospel", to significantly accelerate the targeting process in the Gaza Strip. This AI-driven system rapidly identifies potential targets, increasing the number of strikes within the territory. Concerns have been raised about the IDF's targeting approach and the potential risks to civilians as the system expedites the target selection process, with AI facilitating the identification of thousands of targets. This has led to debates on the ethical and humanitarian implications of using AI in conflict scenarios.
The Guardian

Contestational research

Research to create a less awful and more privacy-preserving AI

Application Summary Details References
Differential Privacy Privacy guarantees in data analysis.
Show DetailsA formal definition of privacy, differential privacy allows theoretical guarantees against data breaches. AI algorithms can be trained to adhere to these privacy standards.
Cryptography Engineering Blog, Original Paper
Privacy-Preservation using Trusted Hardware Secure AI training in trusted environments.
Show DetailsAI algorithms run inside trusted hardware enclaves or private blockchains, allowing training without exposing private data to any stakeholders.
TVM AI, Private Blockchains Paper
Privacy-Preservation using Secure Computation Training private AI models securely.
Show DetailsUtilizes secure computation methods like secret sharing and homomorphic encryption to train and deploy private machine learning models on confidential data.
Morten Dahl's Blog, Arxiv Paper
Fair Machine Learning & Algorithm Bias Addressing fairness and bias in AI.
Show DetailsA subfield of AI focusing on fairness criteria and algorithmic bias, exploring the impact of implementing these criteria on long-term fairness.
The Gradient, ICLR18 Best Paper
Adversarial Machine Learning Research on AI's vulnerability to misleading inputs.
Show DetailsFocuses on adversarial examples that mislead AI models, with research into defenses like adversarial training and Defense-GAN.
OpenAI Blog
Towards Truthful Language Models Improving factual accuracy in language models.
Show DetailsLanguage models like GPT-3 are prone to "hallucinate" information. Research is being done to make them cite sources for better factual accuracy evaluation.
OpenAI Blog

Contestational AI Efforts

Contestational tech projects

These open-source projects try to spur discourse, offer protection or awareness to awful AI

Application Summary Details References
Have I Been Trained Artists can search and flag databases used for image generation models.
Show DetailsAllows artists to check databases used for large image generation models, flag links to their work, and collaborate with dataset creators for removal, ensuring future models won't use opted-out work.
Website
BLM Privacy & Anonymous Camera Protects privacy against facial recognition.
Show DetailsDiscourages facial recognition and face reconstruction by masking pixelated faces, preventing authorities from using AI to identify protesters.
App, Code
AdNauseam Fights tracking by advertising networks.
Show DetailsSilently simulates clicks on blocked ads, confusing trackers and protecting user privacy from tracking by advertising networks.
Website, Code
Snopes.com Fact-checking resource.
Show DetailsFounded in 1994, Snopes.com is a prominent fact-checking website widely recognized for debunking myths and verifying information.
Website
Facebook Container Isolates Facebook activity to prevent tracking.
Show DetailsIsolates Facebook activity from the rest of the web to block third-party tracking cookies and protect user privacy.
Firefox Add-on, Code
TrackMeNot Protects online searches with fake queries.
Show DetailsCreates fake search queries to generate noise in data, making it harder to track and profile user behavior.
Website, Code
Center for Democracy & Technology Interactive tool for algorithm design.
Show DetailsDigital Decisions is an interactive graphic that helps with algorithm design by prompting the right questions during development.
Digital Decisions
TensorFlow KnowYourData Understand and improve data quality.
Show DetailsProvides insights into 70+ datasets to enhance data quality, mitigate fairness and bias issues, and assist researchers, engineers, and decision-makers.
Website
Model and Dataset Cards Encourage transparent reporting in ML.
Show DetailsShort documents accompanying ML models or datasets that provide benchmarked evaluation across various conditions and disclose context, limits, and evaluation procedures to promote transparency.
Paper, Blog
Evil AI Cartoons Cartoon medium to discuss AI impacts.
Show DetailsUses cartoons and comics to educate and stimulate discussions about the societal impacts of AI, with accompanying blog posts for context and further reading.
Website

Annual Awful AI Award

Every year this section gives out the Awful AI award for the most unethical research or event happening within the scientific community and beyond. Congratulations to AI researchers, companies and media for missing ethical guidelines - and failing to provide moral leadership.

Winner 2023: Israel's Use of AI in Gaza Conflict

'Awful AI in Warfare' 🥇

Laudation:

This year's Awful AI Award goes to the Israel Defense Forces for their use of the AI-driven platform "the Gospel" in the Gaza Strip, marking a disturbing milestone in the application of artificial intelligence in warfare. By significantly accelerating the process of selecting bombing targets, this AI 'factory' has not only increased the number of strikes within a densely populated area but also raised profound ethical and humanitarian concerns. The use of such technology in conflict, which potentially risks the lives of countless civilians, highlights the dire need for international regulations and ethical guidelines in the deployment of AI in military operations. We recognize this alarming development as a call to action for the global community to address the grave implications of AI in warfare, ensuring that technological advancements do not come at the cost of human lives and ethical integrity.

Past Winners

Year Winner Category Laudation
2022 Commercial AI Image Generators 'Awful data stealing' 🥇 Congratulations to commercial AI image generators such as DALL·E-2, Midjourney, Lensa, and others for unethically stealing from artists without their consent, making a profit out of models that have been trained on their art without compensating them, and automating and putting artists out of business. A special shoutout goes to OpenAI and Midjourney for keeping its training database of stolen artworks secret 👏
2021 FastCompany & Checkr 'Awful media reporting' 🥇 Congratulations to FastCompany for awarding Checkr, a highly controversial automated background check company, the World Changing Ideas Awards for "fair" hiring. Instead of slow fingerprint-based background checks, Checkr uses several machine learning models to gather reports from public records which will contain bias and mistakes. Dozens of lawsuits have been filed against Checkr since 2014 for erroneous information. Despite these ongoing controversies, we congratulate FastCompany for the audacity for turning the narrative and awarding Checkr instead its prize for "ethical" and "fair" AI use 👏
2020 Google Research & the AI Twitter Community 'Awful role model award' 🥇 Congratulations to Google Research for sending an awful signal by firing Dr. Timnit Gebru, one of very few Black women Research Scientists at the company, from her position as Co-Lead of Ethical AI after a dispute over her research, which focused on examining the environmental and ethical implications of large-scale AI language models 👏. Congratulations to the AI Twitter community for its increasing efforts on creating a space of unsafe dialogue and toxic behaviour that mobbed out many AI researchers such as Anima Anandkumar (who led the renaming of NIPS controversial acronym into NeurIPS) 👏
2019 NeurIPS Conference 'Scary research award' 🥇 Congratulations to NeurIPS 2019, one of the world's top venue for AI research, and its reviewers for accepting unethical papers into the conference. Some examples are listed below 👏. Update (2020): NeurIPS 2020 has since implemented ethical reviews that flag and reject unethical papers.

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To the extent possible under law, David Dao has waived all copyright and related or neighbouring rights to this work.