Let’s start by looking at the history of AI.
A Brief Look into the Past:
Humans have built machines for a long time to help make life easier. But most of these machines have been pretty simple. They needed systematic human input to work right. Sure, they were handy and changed how we do things, but you often needed some special skills to operate them. This is where AI steps in. This technology can handle manual or repetitive tasks that people used to do. It can even think a bit like us.
How AI Comes to Life:
So, how do we make AI? Well, we’ve looked at how our brains work and created something called a neural network. Our brains are made up of things called neurons. These neurons help us think and solve problems. Neural networks work in a similar way.
One type of neural network is called a large language model, or LLM for short. These models are made for understanding and processing language, which is what we humans use to talk. They learn from a vast amount of data, and the way they learn can be adjusted. But here’s the catch: these models have some security vulnerabilities. Even though they’re being used in lots of tech products, they can have weaknesses.
AI Weaknesses:
Let’s look at some common pitfalls in AI models.
Data Poisoning: Remember, an AI model’s performance depends on the data it learns from. If someone with bad intentions sneaks in the wrong input while the AI is learning, the AI can make mistakes. Misleading data can mess things up.
Sensitive Data Leaks: If we don’t sanitize the data correctly, AI models might share sensitive information. This could include private or confidential information. For example, if someone knows how to ask the right questions, an AI chatbot might spill details about its inner workings or give away secret information it has learned.
Prompt Injection: This is a common trick used against LLMs and AI chatbots. In this case, someone puts in a special kind of input that takes control. It can make the AI give answers that it wasn’t meant to say, similar to when hackers find ways to mess up programs in traditional computer systems.
It’s worth noting that tech companies are aware of these issues. They’re working on solutions, but there isn’t a silver bullet available just yet. The big question remains: will companies do a better job preventing these problems in the future? Or will these weaknesses still be a concern in a couple of years?
References
TryHackMe.com.(2024)https://tryhackme.com/r/room/adventofcyber2024. December 24, 2024
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