Machine Learning

These simulated live cell microscopy sequences were generated by the CytoPacq web service https://cbia.fi.muni.cz/simulator [R1]. The dataset is composed of 51 2D sequences and 41 3D sequences. The 2D sequences are divided into distinct 44 training and 7 test sets. The 3D sequences are divided into distinct 34 training and 7 test sets. Each sequence contains up to 200 frames.

Categories:
303 Views

The dataset represents the negative interaction dataset of the Drugbank that has been generated from our proposed machine learning method based on drug similarity, which achieved an average accuracy of 95% compared to the randomly generated negative datasets in the literature. Drugbank was used as the drug target interaction dataset from https://go.drugbank.com/.

Categories:
984 Views

This dataset contains measurements of TPC-C benchmark executions in MySQL server deployed in Google Cloud Platform.

Categories:
334 Views

The SiCWell Dataset contains data of battery electric vehicle lithium-ion batteries for modeling and diagnosis purposes. In this experiment, automotive-grade lithium-ion pouch bag cells are cycled with current profiles plausible for electric vehicles. 

The analysis of current ripples in electric vehicles and the corresponding aging experiments of the battery cells result in a dataset, which is composed of the following parts: 

 

Categories:
5279 Views

This dataset contains world news related to politics and also with the news article's available metadata.

Categories:
1024 Views

This dataset contains world news related to Science and technology and also with the news article's available metadata.

Categories:
705 Views

This dataset contains world news and also the news article's available metadata.

Categories:
307 Views

This dataset contains world news related to Covid-19 and vaccine and also with the news article's available metadata.

Categories:
689 Views

Data augmentation is commonly used to increase the size and diversity of the datasets in machine learning. It is of particular importance to evaluate the robustness of the existing machine learning methods. With progress in geometrical and 3D machine learning, many methods exist to augment a 3D object, from the generation of random orientations to exploring different perspectives of an object. In high-precision applications, the machine learning model must be robust with respect to the small perturbations of the input object.

Categories:
228 Views

Pages