November 28, 2022

The Complexity of Artificial Intelligence – Challenges to Know

AI (Artificial Intelligence) is a wide range branch of computer science. With the help of artificial intelligence, you can build smart machines. These machines can perform some typical tasks and these typical tasks require human intelligence. There are lots of benefits of artificial intelligence. With the help of AI, you can drive down the task to perform a specific task. It can perform multiple tasks and you can reduce the work of the existing resources. The AI machines can perform all the tasks 24×7 without any delay. It has mass-market potential. That’s why we can easily deploy it across industries. Nowadays, we are facing lots of challenges due to the complexity of artificial intelligence. Here, we will discuss the challenges that people are facing due to the complexity of artificial intelligence.

Trust Deficit:

It has become a real worry for AI. AI has an unknown nature. Due to this unknown nature, its deep learning models can’t predict the exact output especially when it comes to remote work. It means that we can’t devise the solutions to some specific problems with the help of a specific set of inputs. Moreover, the layman can’t understand a specific set of problems and their outputs. There are lots of people in the world who don’t know the existence of AI. If we integrate it into all the daily life problems, they can’t integrate it. These things are creating a challenge of trust deficit for artificial intelligence.

Computing Power:

In artificial intelligence, we have to use power-hungry algorithms. Most of the developers can’t provide such an amount of power to the power-hungry algorithms. Machine learning and deep learning are the core components of AI. This thing is increasing the demand for cores and GPUs. These kinds of functions of artificial intelligence require the computing power of supercomputers. Now, the problem is that supercomputers are not cheap. All people can’t afford them. Due to higher prices and complex algorithms, all people can’t afford artificial intelligence.

Data Privacy and Security:

In artificial intelligence, we have to use data. Millions of users across the globe are generating the same data. That’s why the users can use this data for bad purposes. For example, if you are using AI in the healthcare sector to keep the records of the patients, hackers can get access to this data. After getting access to this data, they can use this data for bad purposes. Similarly, if you have maintained the secrets of your company by using artificial intelligence, you may have to face the data leakage problem. Due to the data leakage, your company may have to face a major loss.

The Bias Problem:

After storing the data on artificial intelligence, we can use it for both good and bad purposes. If we get success to gather the data, we can use it for good AI purposes. On the other hand, if we fail to gather good data, we will lose the credibility of the data. After gathering this data, we can also show biasing with the help of AI. We can show biasing in various ways like religion, ethnicity and gender etc. We will also face some challenges while defining the algorithms. If we fail to define these algorithms, we can’t track the best solutions to these problems.

Rare and Expensive Workforce:

If we want to adopt and implement AI technology, we require specialists. In these specialists, there come data scientists and data engineers etc. Nowadays, it is difficult for us to find these workers. If we get success to find these workers, we will have to higher fees. Small and medium-sized enterprises have a limited budget. Due to a limited budget, they can’t afford these expensive workers. This thing will create a real manpower issue in enterprises.

Ethical Challenges:

AI technology is also creating ethical problems in society. For example, if you are providing services to the customers with the help of AI technology, this technology can provide some specific solutions to the problems of the customers. It means that it can’t provide those solutions to the problems that you have not fed in it. On the other hand, if you are providing the solutions to the problems of the customers with the help of human beings, you can easily provide the best solutions to all the problems of the customers. Moreover, AI can’t focus on the correctness of the data.

Lack of Computational Speed:

According to a dissertation help firm, if you want to provide AI solutions to the customers, you require a high degree of computational speed. The high-end processors can only offer this kind of speed. No doubt, if you want to create these high-end processors, you require a huge amount of money. For small businessmen, it is almost impossible to spend enough money. Moreover, when you will introduce it in your organization, you will observe an increase in the data time by time. Due to the growth of the data, you will have to develop next-generation computational infrastructures.

Data Scarcity:

Data is the most important component of an artificial intelligence system. After providing data to the machines, we can learn and make predictions. Now, the problem is that some companies are trying to develop their algorithms. These companies try to use these algorithms for bias. They try to get accurate results with the help of these AI models. It means that they try to get these results despite the data scarcity. After getting biased information, they can create lots of flaws in the entire system.


It is the most important challenge of artificial intelligence. With the help of AI, the researchers are claiming 90% accuracy. On the other hand, if you will hire human beings, you can get more than 99% accuracy. For example, if you want to differentiate a cat and a dog within a picture, you can easily differentiate it with the help of human beings. On the other, artificial intelligence may have to face some problems in differentiating the dog and cat in the picture. That’s why to get the human level with the help of AI is a real problem for us.

Leave a Reply

Your email address will not be published. Required fields are marked *