The neural network is a branch of AI that uses a series of interconnected algorithms to form a structure like that of the human brain. But how do neural networks work? The neural network helps AI algorithms mimic the way the human brain operates. Neural networks resemble artificial neurons that represent close to human brain neurons. These ANNs help to identify the relationship between different data feeds to the algorithm.
We can use it in various use cases like classification, regression, image recognition, pattern analysis, prediction, etc. According to the Markets and Markets research report, the global ANN market cap was 117 million USD in 2019. As per the report, it will reach 296 million USD by 2024, with a CAGR of 20.5% from 2020 to 2024.
Neural network algorithms adjust as per the input changes. Hence, depending on the data change, the network can generate the best possible result without altering the design of the network or the output criteria. If you are looking for a data science role that deals with complex neural network algorithm development, this article is for you. In the next section, we will discuss the advantages of neural networks and their importance in data science.
The neural network is a branch of AI that uses a series of interconnected algorithms to form a structure like that of the human brain. But how do neural networks work? The neural network helps AI algorithms mimic the way the human brain operates. Neural networks resemble artificial neurons that represent close to human brain neurons. These ANNs help to identify the relationship between different data feeds to the algorithm.
We can use it in various use cases like classification, regression, image recognition, pattern analysis, prediction, etc. According to the Markets and Markets research report, the global ANN market cap was 117 million USD in 2019. As per the report, it will reach 296 million USD by 2024, with a CAGR of 20.5% from 2020 to 2024.
Neural network algorithms adjust as per the input changes. Hence, depending on the data change, the network can generate the best possible result without altering the design of the network or the output criteria. If you are looking for a data science role that deals with complex neural network algorithm development, this article is for you. In the next section, we will discuss the advantages of neural networks and their importance in data science.