Introduction to AI: Separating Hype from Reality
The recent advancements in Artificial Intelligence (AI) have created a lot of buzz, with many people getting excited about its potential to revolutionize various aspects of our lives. However, this hype has also led to a lot of misconceptions about what AI can and cannot do. In this article, we will explore the difference between generative AI and predictive AI, and how the latter is more likely to make a positive impact on our daily lives.
What is Generative AI?
Generative AI involves tasks that have no finite set of correct answers. The system must blend snippets of information it has been trained on to create something new, such as a novel picture or a piece of text. This type of AI is often used in applications like chatbots, face-swaps, and synthetic video. While generative AI can be impressive, it is not the type of AI that is most likely to improve our lives.
What is Predictive AI?
Predictive AI, on the other hand, involves tasks with a finite, known set of answers. The system processes information to determine which answer is correct. A simple example of predictive AI is plant recognition, where a phone camera can identify a plant as a Western sword fern. Predictive AI has been quietly improving various aspects of our lives, from weather prediction and food safety to music production and photo organization.
Real-World Applications of Predictive AI
Predictive AI has been making significant progress in recent years, with applications in various fields. For instance, it can:
- Identify problematic lesions and heart arrhythmia in medical services
- Predict earthquakes and flooding with greater accuracy
- Detect and classify objects while driving, making self-driving cars a reality
- Recognize birds in photos, down to the specific species
The Progress of Predictive AI
Over the past 20 years, predictive AI has come a long way. In 2005, AI systems struggled to differentiate between a person and a pencil. By 2013, they were still unable to reliably detect birds in photos. However, in the past decade, predictive AI has made tremendous progress, with significant improvements in accuracy and reliability.
Conclusion
In conclusion, while generative AI may be flashy and attention-grabbing, it is predictive AI that is more likely to make a positive impact on our daily lives. By understanding the difference between these two types of AI, we can appreciate the significant progress that has been made in predictive AI and its potential to improve various aspects of our lives.
FAQs
- Q: What is the main difference between generative AI and predictive AI?
A: Generative AI involves tasks with no finite set of correct answers, while predictive AI involves tasks with a finite, known set of answers. - Q: What are some real-world applications of predictive AI?
A: Predictive AI has applications in weather prediction, food safety, music production, photo organization, medical services, and self-driving cars, among others. - Q: How has predictive AI improved over the past 20 years?
A: Predictive AI has made significant progress in the past 20 years, with improvements in accuracy and reliability, and is now capable of tasks such as bird detection, earthquake prediction, and medical diagnosis.








