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Data

Data is a peer-reviewed, open access journal on data in science, with the aim of enhancing data transparency and reusability.
The journal publishes in two sections: a section on the collection, treatment and analysis methods of data in science; a section publishing descriptions of scientific and scholarly datasets (one dataset per paper). The journal is published monthly online by MDPI.
Quartile Ranking JCR - Q2 (Multidisciplinary Sciences)

All Articles (1,289)

  • Data Descriptor
  • Open Access

A Curated Dataset on the Acute In Vivo Ecotoxicity of Metallic Nanomaterials from Published Literature

  • Surendra Balraadjsing,
  • Willie J. G. M. Peijnenburg and
  • Martina G. Vijver

Metallic engineered nanomaterials (ENMs) have enormous technological potential and are increasingly applied across different fields and products. However, substances (including ENMs) can be detrimental to the environment and human health, thus requiring systematic testing to uncover potential hazardous effects (in compliance with REACH). Although hazard testing traditionally involves the use of animal experiments, recent years have seen a shift towards in silico modeling. High-quality data is required for in silico modeling, which is frequently not readily available for ENMs. Vast amounts of data have been published in literature but they are unstructured and scattered across numerous sources. To mitigate the limitations in data availability, we have compiled and created a nanotoxicity dataset based on published literature. The compiled dataset focuses mainly on acute in vivo endpoints conducted in a laboratory setting using metallic nanomaterials. The data extracted from literature include material information, physico-chemical properties, experimental conditions, endpoint information, and literary meta-data. The dataset presented here is useful for meta-analysis or in silico modeling purposes.

15 January 2026

Number of observations for the most abundant 20 ENMs within the dataset. Values on the right of the bars represent the counts for the corresponding material.
  • Data Descriptor
  • Open Access

Congested platforms in public transportation systems can jeopardize the safety and comfort of passengers. Real-time crowd size estimation using Device-Free Wireless Sensing (DFWS) can offer a privacy-preserving solution for monitoring and preventing overcrowding. However, no public dataset exists on DFWS in public transportation environments. In this work, we introduce a new dataset comprising two different public transportation environments, which contains data on the presence of rail vehicles at the platform, as well as manual people counts at regular intervals. By providing this dataset, we aim to offer a foundation for other DFWS researchers to explore novel algorithms and methods in public transportation environments.

14 January 2026

This diagram shows the three communication components of the Device-Free Wireless Sensing technique.
  • Data Descriptor
  • Open Access

Evapotranspiration (ET) refers to the total water vapor flux transported by vegetation and surface soil to the atmosphere. It is an important component of water and heat regulation, and has an impact on plant productivity and water resource management. As a water-shortage region, the Mongolian Plateau is characterized by drought and an uneven distribution of rainwater resources. Understanding the spatiotemporal distribution characteristics of ET on the Mongolian Plateau is important for water resource regulation for climate change adaption and regional sustainable development. This study calculated the spatiotemporal distribution characteristics of the actual ET in the Mongolian Plateau based on the SFE-NP model and generated a surface ET dataset with a spatial resolution of 1 km and monthly temporal resolution from 2001 to 2020. Theil-Sen median and Mann–Kendall trend models were used to analyze the temporal and spatial distribution characteristics of the actual ET over the Mongolian Plateau. This dataset has been validated for accuracy against the commonly used authoritative ET datasets ERA5_Land and MOD16A2, demonstrating high precision and accuracy. This dataset can provide data support for research and applications such as surface water resource allocation and drought detection in the Mongolian Plateau.

13 January 2026

Data processing flowchart.

Future agriculture will depend on smart systems and digital technologies to improve food production and sustainability. Data-driven methods, such as artificial intelligence, will become integral to agricultural research and development, transforming how decisions are made and how sustainability goals are achieved. Reliable, high-quality data is essential to ensure that research users can trust their conclusions and decisions. To achieve this, a standard for assessing and reporting data quality is required to realise the full potential of data-driven agriculture. Two practical and empirical data quality assessment tools are proposed—a trial data quality test (primarily for data contributors) and a trial data quality statement (for data users). These tools provide information on data qualities assessed for contributors to the submitted trial data and those seeking to use the data for decision support purposes. An action case study using the Online Farm Trials platform illustrates their application. The proposed data quality framework provides a consistent approach for evaluating trial quality and determining fitness for purpose. Flexible and adaptable, the DQF and its tools can be tailored to different agricultural contexts, strengthening confidence in data-driven decision-making and advancing sustainable agriculture.

13 January 2026

Key components of the proposed data quality framework for grains trial research, illustrating the overarching data quality vision supported by four interconnected elements: a data quality strategy, data quality assessment tool, data quality reports and a continuous improvement cycle.

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Data Mining and Computational Intelligence for E-learning and Education
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Data Mining and Computational Intelligence for E-learning and Education

Editors: Antonio Sarasa Cabezuelo, Ramón González del Campo Rodríguez Barbero
Recent Advances and Applications in Partial Least Squares Structural Equation Modeling (PLS-SEM)
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Recent Advances and Applications in Partial Least Squares Structural Equation Modeling (PLS-SEM)

Editors: María del Carmen Valls Martínez, José-María Montero, Pedro Antonio Martín Cervantes

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Data - ISSN 2306-5729