Least Squares Support Vector Machines (LS-SVM)

By maximising the width of the decision boundary then the generalisability of the model to new data is optimised. Rather than employ a non-linear separator such as a high-order polynomial, SVM techniques use a method to transform the feature space such that the classes do become linearly separable. Once a dataset has been organised into features and outcomes, a ML algorithm may be applied to it. Similarly, a machine-learning model can distinguish an object in its view, such as a guardrail, from a line running parallel to a highway. When a machine-learning model is provided with a huge amount of… Read More

Boltzmann Machines

CDP Machine Learning enables enterprise data science teams to collaborate across the full data lifecycle with immediate access to enterprise data pipelines, scalable compute resources, and access to preferred tools. Streamline the process of getting analytic workloads into production and intelligently manage machine learning use cases across the business at scale. Machine Learning Engineers implement the data scientists’ models and integrate them into the complex data and technological ecosystems of the firm. They are also at the helm for the implementation/programming of automated controls or robots that take actions based on incoming data. This is critical work — the massive… Read More