Deepfakes: Unveiling the Controversy and Opportunities

Key Takeaways

  • Deepfakes are AI-generated manipulated images, videos, or audio. They can be used to impersonate individuals or create entirely new content.
  • Deepfakes have a dark history. They first gained notoriety in 2017 when a Reddit user used them to create deepfake pornographic videos.
  • Deepfakes are created using deep learning models. These models require large amounts of data to learn a person’s features and patterns.
  • Deepfakes can be used for both malicious and beneficial purposes. They can be used to spread misinformation, harass individuals, and create fake news. However, they can also be used for training simulations, marketing, and creative expression.
  • Spotting deepfakes can be challenging but not impossible. Look for inconsistencies in facial movements, lighting, shadows, and audio. Trust your gut feeling.
  • Legal frameworks surrounding deepfakes are still evolving. While there are some state-level laws, a comprehensive federal law is still needed.
  • It’s important to be aware of the risks and benefits of deepfakes. As technology continues to advance, we need to develop effective detection methods and legal frameworks to mitigate their potential harms.
Bro, they have a video of you throwing something out of your window.
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Understanding Deepfakes: The Good, the Bad, and that’s not your Mom.

Over the years, the internet has been… well, the internet made with all interesting and mentally concerning individuals. Many of which may be right next door to you. As terms online pop-up, one is becoming more and more of a growing concern.

This growing issue deals with, yet again people, (we can’t seem to have anything nice) some of which you may know personally and others…not so much.

Give me that beautiful face!

It’s another day at the office, you’re online, your best work buddy called out, and you’re to fend for yourself. All great things when at work, we love this. While online, browsing through all the wonderful garbage the algorithm has to offer. (Let’s be honest doom-scrolling cute cat videos aren’t a thing anymore, we know) you find some photos and videos of your work buddy.

You think,” Is that? Nah, this can’t be them. They wouldn’t do something as crazy as hurling a basket of cute kittens out of a window.” In disbelief, you call your work buddy to verify if it’s indeed them. Countering disbelief with confusion and uttering that lovely phrase “What in the Sam Cooks hell are you talking about?”

You provide them with what you saw only to discover both surprises are mutual. Both of you wondering the what, when, and how could someone find the time and resources to impersonate anyone to perform such a sickening act. Welcome to the rise of the Deep Fakes.

AI is beginning to look like me more and more.
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What are Deepfakes?

You may be asking yourself, “What are deep fakes? What makes them fake?” Deep fakes are images, videos, and even audio manipulated using artificial intelligence to appear real. Deep fake is a portmanteau- a combination of two words to make a new word- of “deep learning” and “fake”. Deep fakes can be created by replacing a person with another person or by creating new content altogether.

Backstory of Deepfakes

The idea showed up back in 2017 when a Reddit user named “deepfakes” began sharing altered pornographic videos (it’s always porn) using face-swapping technology. If you’re not familiar with face-swapping, this was the craze that led to users being able to swap faces with their pets, friends, and eventually led to being able to put themselves into movie moments.

You know it’s amazing to see how far one species can come in advanced technology and quickly resort to using it for primitive ends. It really shows where our heads are at.

Faking in the Making

How are deep fakes made? And are they all created equal? To answer that last question is ‘no’. Clearly, there’s a different process since everyone’s face tends to have additional features to make them look unique. The process for creating a deep fake consists of collecting large amounts of data containing images or videos of a person.

This could involve having images of every angle, expression, and feature to ensure the AI captures them properly. The “data” or better known in the data science community as the “dataset” is fed into a deep learning model, this could be either variational autoencoder (VAE) or generative adversarial network (GAN), from there the model learns how to create images mimicking the person the dataset is based on.

Just a side note, hundreds of images on an individual are required to generate new images. This means you can’t supply the model with four or five images of someone and expect it to create a video. Models work best when more information is available to them. A key thing to remember when dealing with AI is “the more in, the better out.”

They’re Faking it

You’re on a date, things are going well, and the connection “feels” real. However, this is done in an effort to conserve your feelings. After finding out your date was putting in a playtime shift and more likely wants to see other people, you venture to embarrass them by posting some “not so covered” photos of them online. This scenario is just an example of the use cases for deepfakes.

They can be something small as creating a funny picture for a good laugh, new meme, or it can be vicious as recreating their image in comprising positions. Positions that could lead to some hard times if reputations are tarnished and careers are lost. So, use it with caution.

AI may have everyone else fooled, but not me. Something looks a little off here.
Photo by Andrea Piacquadio, please support by following @pexel.com

Exercising caution, Spotting the Fakes

We humans have an eye for spotting something that- to us just doesn’t look right. Trying to spot a deepfake can be challenging depending on how well the image was generated. The obvious telltale signs are an extra limb, appendage, eyeball, or extra anything that typically wouldn’t be on a human.

A reason for this to happen is the model was fed information on a person but not fed the limitations that would make the image of a person normal. Confusing, we know but understand computers don’t think the same way humans do. We speak in a way we can understand what we “mean” or what we “meant” to say. Computers cannot compute abstract meanings.

Other signs include but are not limited to, awkward facial movements, displaced lighting and shadows, and audio that could appear mismatched or just off to how the person would sound. In short, go with your gut feeling. Most often you’ll be right.

Laws Against Deepfakes

The legal landscape surrounding deepfakes is still evolving. In the United States, there is no comprehensive federal legislation specifically addressing deepfakes, but several states have enacted laws to combat their misuse.

For example, Texas has banned deepfakes intended to influence elections, while California prohibits the creation of deepfake videos of politicians within 60 days of an election. At the federal level, the proposed DEFIANCE Act aims to allow victims to sue creators of non-consensual deepfake pornography.

The Benefits of Deepfakes

Despite their potential for harm, deepfakes also offer several benefits. In the healthcare industry, they can be used to create realistic training simulations for medical professionals.

In marketing, deepfakes can lower the cost of video campaigns and provide hyper-personalized experiences for customers. Additionally, deepfakes have creative applications in the arts, allowing for innovative storytelling and the preservation of cultural heritage.

Conclusion

Deepfakes represent a powerful and controversial technology with far-reaching implications. While they offer exciting possibilities for entertainment, education, and marketing, they also pose significant risks to privacy, security, and trust.

As deepfake technology continues to evolve, it is crucial to develop robust detection methods and legal frameworks to mitigate its potential harms while harnessing its benefits for positive use.

Again, it never ceases to surprise us how quickly people resort back to primitive needs when it comes to technology. We’re not shaming, the lizard brain is strong but as technology evolves, the idea is we evolve with it.

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Balancing AI and Human Data: Strategies to Prevent Model Collapse

Key Takeaways

The Problem:

  • Dependence on AI-generated data: AI models are becoming increasingly reliant on data generated by other AI models, leading to a decline in data quality and diversity.
  • Regurgitative training: Training AI on AI-generated data can result in a reduction in the quality and accuracy of AI behavior, akin to digital inbreeding.
  • Filtering challenges: Big tech companies struggle to filter out AI-generated content, making it difficult to maintain data quality.

Potential Solutions:

  • Human data is irreplaceable: Ensuring that AI models are trained on high-quality human data is essential for maintaining their accuracy and reliability.
  • Promoting diversity: Encouraging a diverse ecosystem of AI platforms can help mitigate the risks of model collapse.
  • Regulatory measures: Regulators should promote competition and fund public interest technology to ensure a healthy AI landscape.

Additional Considerations:

  • Bias and malicious intent: Even with high-quality data, AI models can still exhibit bias or produce unintended consequences.
  • The human element: Humans play a crucial role in AI development, providing essential guidance and oversight.

Overall, the threat of model collapse is real, but it can be mitigated through careful attention to data quality, diversity, and regulation.

GenAI has a storm on the horizon if we don’t clean up our data.
Photo by Frank Cone, please support by following @pexel.com

The Looming Threat of AI Model Collapse: What You Need to Know

Introduction

As AI continues to evolve, researchers and the rest of us are trying to figure out what the Sam Cook is going on as we are witnessing raising alarms about a potential “model collapse,” where AI systems could become progressively less intelligent due to reliance on AI-generated data. This phenomenon poses significant challenges and concerns for the future of AI development.

The Problem

Dependence on AI Data

Modern AI systems require high-quality human data for training. However, the increasing use of AI-generated content is leading to a decline in data quality. This should be a surprise since we feed each other information that sometimes is questionable at best. This dependence on AI-generated data can result in a feedback loop where AI models learn from data produced by other AI models, leading to a degradation in the quality and diversity of AI behavior.

Regurgitative Training

Training AI on AI-generated data results in a reduction in the quality and diversity of AI behavior, akin to digital inbreeding. We’re not knocking inbreeding, we just won’t try it. However, if you’re in a rural area and that’s all that’s around then more power. This regurgitative training process can cause AI models to become less accurate and less capable of handling complex tasks, ultimately leading to a decline in their overall performance.

Filtering Challenges

Big tech companies struggle to filter out AI-generated content, making it harder to maintain data quality. As AI-generated content becomes more prevalent, it becomes increasingly difficult to distinguish between human-generated and AI-generated data, further exacerbating the problem of model collapse. This is a result of companies forgetting to keep the human element when interacting with AI.

I understand we need to turn a profit but we also need to consider using cleaner data.
Photo by Andrea Piacquadio, please support by following @pexel.com

Potential Solutions

Human Data is Irreplaceable

Despite the challenges, human-generated data remains crucial for AI development. With that being said, people you no longer have to worry about machines taking your jobs. With all of this technology, and we still have a five-day workweek, rest assured they’re not taking your jobs. Ensuring that AI models are trained on high-quality human data is essential for maintaining the accuracy and reliability of AI systems. Human data provides the diversity and richness needed for AI models to perform effectively.

Promoting Diversity

Encouraging a diverse ecosystem of AI platforms can help mitigate the risks of model collapse. By fostering a variety of AI models and approaches, we can reduce the likelihood of regurgitative training and ensure that AI systems continue to evolve and improve.

Regulatory Measures

Regulators should promote competition and fund public interest technology to ensure a healthy AI landscape. Implementing policies that encourage innovation and diversity in AI development can help prevent model collapse and maintain the progress and integrity of AI systems.

The Human Element in AI Development

Humans have achieved many remarkable things, and now we push tasks onto our computer counterparts. This transition has evolved from simple auto-correction of misspelled words to automating daily tasks, and now to having computers write and draw images from text. While some may call this lazy, not everything great was founded on hard work alone.

I hate data pre-processing, god, this is going to take hours!
Photo by Andrea Piacquadio, please support by following @pexel.com

The Complexity of Creating Gen AI

Creating a generative AI is hard and expensive. The concern for the future is that the AI we have might be taking a nosedive in the quality of information. The argument that has been swirling about AI is that the information provided could be biased. Depending on who is programming the model, this can be a cause for concern. However, that’s not the only area one has to worry about.

Bias and Malicious Intent

While quality data is being provided for the model, the output can sometimes seem like there was malicious intent behind it. For example, when Amazon was selling in a particular area, after a while of no one purchasing their product and doing some research, Amazon found that the area they were marketing to consisted of high-end individuals who had no desire for the product. Instead, the product was actually being used by urban areas. There wasn’t any malicious intent behind it; that’s just how the cookie crumbled.

Data vs. Gen AI

Machine models are learning from other machine models. This could be a problem because, as mentioned earlier, the quality of data has a huge impact. Having a machine learn from another machine isn’t inherently bad, but don’t expect it to be perfect. We are prime examples of learning from learning; we pass along information all the time, and depending on the quality, we don’t get most of it right all the time.

Conclusion

While the threat of model collapse is real, balanced use of human and AI data, along with regulatory support, can help maintain the progress and integrity of AI systems. By addressing the challenges of dependence on AI-generated data, promoting diversity in AI development, and implementing effective regulatory measures, we can ensure a sustainable and thriving future for AI technology. Remember, AI is a tool and not a replacement.



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