{"id":3384,"date":"2019-05-31T21:26:06","date_gmt":"2019-05-31T21:26:06","guid":{"rendered":"https:\/\/notebooks.dataone.org\/?p=3384"},"modified":"2019-05-31T21:26:07","modified_gmt":"2019-05-31T21:26:07","slug":"week-2-prov-one-galaxy","status":"publish","type":"post","link":"https:\/\/notebooks.dataone.org\/prov-self\/week-2-prov-one-galaxy\/","title":{"rendered":"Week 2 PROV ONE & Galaxy"},"content":{"rendered":"\n

Hello, World!<\/p>\n\n\n\n

Professor Bertram and I had several meetings this week. During the first meeting, we identified several terminologies I had read about last week. The main topic we discussed is what is provenance? Form OPM to W3C PROV to PROV ONE, provenance has different meanings. OPM and W3C focus more on retrospective provenance while PROV ONE is more about prospective provenance. In the following days of this week, I went deeper into the use of a provenance tool called Galaxy and started research on PROV ONE.<\/p>\n\n\n\n

Galaxy<\/strong><\/p>\n\n\n\n

Galaxy is a web-based platform for computational biomedical research. The goal of Galaxy is to allow users without a professional background to perform data analysis on, especially, those data related to biology. Furthermore, the operations scientists execute on data will be captured by the system within Galaxy which can be used to create workflows. In the next time, users just need to find appropriate datasets and re-run the workflows on the datasets to make certain changes or analysis.
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Through redoing the step by step hands-on experiment and learning official tutorials, it is not hard to manage the skills such as how to input\/get data, how to process data by multiple tools, how to create a workflow based on the history and how to execute the \u201crecipe\u201d on new datasets. Several highlighted part of Galaxy need to be pointed out for further discussion.<\/p>\n\n\n\n