As of now, AI reigns supreme in the technology stack, with widespread adoption across all industries. But, believe it or not, Artificial Intelligence has its own set of limitations beyond which it cannot function. As traditional computers have limited computing power, AI can only operate to a certain extent on them.
Quantum computing has the potential to disrupt the entire planet, economies, and industries. However, quantum computing’s capabilities have the potential to provide a significant processing boost for machine learning and AI problems. Artificial Intelligence already has a growing impact all over the world. This influence will be amplified as quantum computing is integrated into AI.
In other words, quantum computing has the potential to play a significant role in the Artificial Intelligence revolution.
What Exactly Is Quantum Computing?
Quantum computing is a complex parallel computation method that employs the concept of the subatomic particle from physics to replace the simulation and calculation capabilities of today’s computers.
Quantum computing employs the physical phenomena of superposition, entanglement, and interference to perform calculations beyond even the most advanced supercomputers. Quantum computers can acquire massive processing and computing capacity by being in various states and completing tasks using all possible permutations simultaneously, thanks to these quantum physics concepts.
Classical Vs. Quantum AI
Classical computing uses bits, 0s, and 1s to encode information, whereas quantum computing uses quantum bits. However, quantum computing has its version: the quantum bit, also known as a qubit, in which data can exist in multiple states at once.
Training extensive AI and machine learning models on traditional systems could take months, and future models will take even longer as the number of parameters grows into the billions. This is one of the reasons why quantum computers, which outperform traditional CPUs and even GPUs, are required.
To aid and extend the capabilities of traditional computing, quantum computing is required. Quantum computers are expected to support their specialized abilities, such as systems optimization, rather than replace their traditional counterparts. They’re made to perform tasks much more precisely and efficiently than conventional computers, giving developers a new tool to work with for specific applications.
How Is Quantum Computing Beneficial?
Quantum computing has several advantages over traditional computing. One of the essential benefits of quantum computing is solving problems much more quickly than conventional computers.
This is because a quantum computer combines the properties of both a particle and a wave, allowing it to explore multiple solutions at once, a process known as “quantum parallelism.”
Quantum computers are also immune to noise and can operate in harsh environments, making them ideal for AI and machine learning applications. Another benefit of quantum computers is that they can correct errors in traditional computing systems.
Finally, quantum computers can store and process large amounts of data, critical for AI and machine learning models.
How Is Quantum Computing Revolutionizing The Future Of AI?
The following are a few ways how quantum computing can help to enable and accelerate the global AI revolution:
- Managing Massive Datasets
We generate enough data to fill 5 million computers every day, or roughly 2.5 exabytes. Quantum computers, on the other hand, are designed to manage massive amounts of data while quickly finding patterns and detecting abnormalities. In contrast, ordinary CPUs or GPUs may be unable to handle it.
- Solve Complex Problems Quickly
Our data sets are becoming more complex and large than our computers can handle, putting significant strain on our computing architecture. While today’s computers struggle and cannot solve specific problems, quantum computing is expected to solve these problems in seconds.
- Building More Effective Models
As the amount of data generated in the industry grows exponentially, companies break their ties with traditional computer technologies. These businesses now require complex models with the processing capability to analyze the most difficult situations.
If quantum technology can produce better models, it could lead to more effective disease treatments in the healthcare industry, reduced risk of financial collapse, and improved logistics.
- Detecting & Combating Fraud
Quantum computing and Artificial Intelligence will improve and enhance fraud detection in the banking and financial industries. Not only will models trained on quantum computers be able to recognize patterns that are difficult to detect with traditional equipment, but advances in algorithms will also help with the volume of data that the machines will be able to handle.
Conclusion
Quantum computing is a technology that is rapidly gaining traction due to its wide range of potential applications.
Quantum computers are much faster than traditional computers at decoding problems and can be used to model large-scale systems and molecules. They can also handle large amounts of data, which is necessary for Artificial Intelligence models to be trained.
Quantum computing will play an increasingly important role in developing Artificial Intelligence and future applications as it becomes more widely available.