Training eSupport System
  • Log In
    • Log in with UmbrellaID
    • Log in with Helmholtz AAI
    • Login
  • About
  • Events
  • Materials
  • Workflows
  • Collections
  • Learning paths
  • Spaces
  • Directory
    • Providers

PaN-Training makes use of some necessary cookies to provide its core functionality.

See our Privacy Policy for more information.

You can modify your cookie preferences at any time here, or from the link in the footer.

Allow necessary cookies
  1. Home
  2. Materials

Filter

  • Sort

  • Filter Clear filters

    • Date added
    • In the last 24 hours
    • In the last 1 week
    • In the last 1 month
    • Scientific topic
    • Active learning2
    • Data rendering2
    • Data visualisation2
    • Ensembl learning2
    • Kernel methods2
    • Knowledge representation2
    • Machine learning2
    • Neural networks2
    • Python2
    • Python program2
    • Python script2
    • R2
    • R program2
    • R script2
    • Recommender system2
    • Reinforcement learning2
    • Supervised learning2
    • Unsupervised learning2
    • py2
    • Bayesian methods1
    • Biostatistics1
    • Data management1
    • Descriptive statistics1
    • Gaussian processes1
    • Inferential statistics1
    • Markov processes1
    • Metadata management1
    • Multivariate statistics1
    • Probabilistic graphical model1
    • Probability1
    • Research data management (RDM)1
    • SQL1
    • Statistics1
    • Statistics and probability1
    • Structured Query Language1
    • Show N_FILTERS more
    • Content provider
    • Elixir TeSS8
    • Show N_FILTERS more
    • Keyword
    • R
    • Python52
    • NEPHEWS project21
    • FAIR data16
    • Data science13
    • synchrotron12
    • Data management10
    • expands10
    • Reproducibility9
    • TANGO9
    • tango-controls9
    • Elettra synchrotron8
    • Photon science8
    • NMR7
    • synchrotron beamline7
    • FAIR6
    • Materials Science6
    • Nuclear Magnetic Resonance6
    • PaNOSC6
    • Tango Kernel Webinar6
    • neutron research6
    • neutron sources6
    • SciCat5
    • life sciences5
    • CERIC4
    • Central European Research Infrastructure Consortium4
    • Data visualization4
    • EOSC4
    • Heritage Science4
    • ICAT4
    • Machine learning4
    • Neutron imaging4
    • metadata4
    • wp3-ExPaNDS4
    • COVID research3
    • EPR3
    • Electron Paramagnetic Resonance3
    • Neutron scattering3
    • PGAA3
    • Prompt-Gamma Neutron Activation Analysis3
    • PyMca3
    • Small Angle Neutron Scattering3
    • X-ray Diffraction3
    • XAS3
    • battery research3
    • crystallography3
    • data management3
    • material characterization3
    • neutron3
    • pyFAI3
    • synchrotron control3
    • taurus3
    • tomography3
    • tomwer3
    • wp2-ExPaNDS3
    • xanes3
    • B2FIND2
    • Beamtime access2
    • DMP2
    • Electron Microscopy2
    • Ion beams2
    • Ion microprobe applications2
    • Ion microprobe techniques2
    • Large-scale facilities2
    • Large-scale research facilities2
    • Liquid-state NMR2
    • Macromolecular Crystallography2
    • McStas2
    • McXtrace2
    • Neutron science2
    • Nuclear Physics2
    • OAI-PMH2
    • OpenAIRE2
    • Powder Diffraction2
    • PyTango2
    • Research infrastructures2
    • SAXS2
    • Sardana Configuration Demo2
    • Small-Angle X-ray scattering2
    • Statistics2
    • Unix/Linux2
    • Virtual training2
    • X-ray fluorescence2
    • XRF2
    • cpptango2
    • data catalogue2
    • drug delivery2
    • drug development2
    • exafs2
    • kernel2
    • machine learning2
    • material science2
    • neutron scattering2
    • open data2
    • persistent identifiers2
    • pharmaceutical research2
    • pid2
    • pogo2
    • programming2
    • scada2
    • Show N_FILTERS more
    • Difficulty level
    • Not specified8
    • Show N_FILTERS more
    • Licence
    • License Not Specified
    • Creative Commons Attribution Share Alike 4.0 International1
    • Show N_FILTERS more
    • Author
    • @posit-dev1
    • Coding For Reproducible Research (CfRR)1
    • Data Carpentry1
    • Emil Hvitfeldt1
    • Fred Hutch Data Science Lab1
    • Hacking for Science1
    • Jose A Dianes1
    • Rohan Alexander1
    • http://mosaic-tx.com1
    • rnorm1
    • Show N_FILTERS more
    • Contributor
    • @posit-dev1
    • Coding For Reproducible Research (CfRR)1
    • Data Carpentry1
    • Emil Hvitfeldt1
    • Fred Hutch Data Science Lab1
    • Hacking for Science1
    • Jose A Dianes1
    • Rohan Alexander1
    • http://mosaic-tx.com1
    • rnorm1
    • Show N_FILTERS more
  • Show materials from all spaces
  • Show disabled materials
  • Show materials with broken links
  • Show archived materials

Training materials

  • Subscribe via email

Email Subscription

Register training material

Keywords: R

and Licence: License Not Specified

8 materials found
  • rnorm/book_sample

    Python script R script Data science Python R
  • coding-for-reproducible-research/CfRR_Courses

    Data management Data management Python R Reproducibility Unix/Linux
  • fhdsl/better_plots

    Data visualisation Data visualization Python R
  • EmilHvitfeldt/feature-engineering-az

    Machine learning Statistics and probability Data science Machine learning Python R Statistics
  • RohanAlexander/tswd

    Data visualisation Data visualization Python R
  • h4sci/h4sci-course

    Python script R script Data science Python R
  • datacarpentry/ecology-workshop

    SQL Python R SQL
  • jadianes/data-science-your-way

    Machine learning Data science Machine learning Python R
Training eSupport System
pan-training@hzdr.de
Imprint
Contribute
About PaN-Training
Browse Spaces
Funding & acknowledgements
Privacy
Cookie preferences
Version: 1.5.1
Source code
API documentation

The training portal for the photon & neutron community is supported through the European Union's Horizon 2020 research and innovation programme, under grant agreement 857641, 823852, the Horizon Europe Framework under grant agreement 101129751, and the consortium DAPHNE4NFDI in the context of the work of the NFDI e.V. under the DFG - project number 460248799.