Category Archives: Artificial Intelligence

Missing data imputation for deep learning tasks

Let’s say you have a dataset with missing values that you want to use to train a deep neural network. You can use the following approach to handle the missing values: Here is some sample code that demonstrates how to handle missing values in a deep neural network using this approach:

Limitations of supervised learning

Supervised learning is a machine learning technique in which a model is trained on labeled data, meaning that the data consists of input features and the corresponding correct output labels. The goal of supervised learning is to make predictions on new, unseen data based on the patterns learned from the training data. While supervised learning…

Read More

Missing values and supervised learning

Missing values in supervised learning can be a major issue, as they can reduce the accuracy of the model and lead to poor performance. Several approaches can be taken to address missing values in supervised learning, including: Ultimately, the best approach to dealing with missing values in supervised learning will depend on the dataset’s specific…

Read More

What is quantum machine learning?

Quantum machine learning is an interdisciplinary field that combines principles from quantum physics and machine learning. It involves using quantum algorithms to process and analyze data for tasks such as classification and regression. One example of quantum machine learning is using a quantum computer to perform supervised learning, which involves training a model to make…

Read More

How to create a Convolutional Neural Network in Python?

Artificial Intelligence

Convolutional neural networks (CNNs) are a type of neural network that is particularly well-suited for image classification tasks. Here is an example of how you might create a simple CNN in Python using the popular deep learning library Keras: This code creates a simple CNN with two convolutional layers and two fully connected layers. The…

Read More