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Welcome to the updated NEON website! This site features more intuitive navigation and a seamlessly integrated Biorepository portal, making it easier to explore NEON data, samples and resources. For a brief summary of changes visit this page. Your feedback is welcome through our webform through February 20.

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  1. Resources
  2. Learning Hub
  3. Tutorials

Tutorials

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Looking to improve your data skills using tools like R or Python? Want to learn more about working with a specific NEON data product? NEON develops online tutorials to help you improve your research. These self-paced tutorials are designed for you to used as standalone help on a single topic or as a series to learn new techniques.

Code for most script based tutorials can be downloaded at the end of the tutorial. Source files can also be found on GitHub. If you are interested in contributing a tutorial to this collection, please reach out using the Contact Us form, and we can guide you through the process of submitting resources to the GitHub repository.

All materials are freely available for you to use and reuse. We suggest the following citation for tutorials: 
[AUTHOR(S), NEON (National Ecological Observatory Network)]. Data Tutorial: [TUTORIAL NAME]. [URL] (accessed [DATE OF ACCESS]). See Citation Guidelines for examples, and for guidance in citing data and code.

Tutorials

Start Tutorial

Resources for Learning R

20 minutes
A brief overview of available resource to get started learning R.
Start Tutorial

Select pixels and compare spectral signatures in R

0.5 - 1 Hours
Plot and comapre the spectral signatures of multiple different land cover types using an interactive click-to-extract interface to select pixels.
Start Tutorial

Set up GitHub Working Directory - Quick Intro to Bash

1.0 - 1.5 Hours
This page reviews how to check that github is installed on your computer. It also provides a quick overview of Bash shell. Finally, we will setup a working GitHub directory.
Start Tutorial

Soil temperature and moisture controls on soil microbial biomass

1 hour
Explore the relationships between microbial biomass and soil temperature and moisture
Start Tutorial

Subsetting NEON HDF5 hyperspectral files to reduce file size

1.0 Hour
Take a large NEON hyperspectral HDF5 file and extract only the information that you need, then save as a new HDF5 file. For an example, we will take an existing hyperspectral dataset (~600Mb) and reduce it in size for subsequent tutorials.
Start Tutorial

The Basics of LiDAR - Light Detection and Ranging - Remote Sensing

0.25 Hours
Explore the basics of how a LiDAR system works and what a LiDAR system measures.
Start Tutorial

The Importance of Reproducible Science

1.0 Hour
This page outlines the tools and resources that you will need to complete the Data Institute activities.
Start Tutorial

The Relationship Between Raster Resolution, Spatial Extent & Number of Pixels

1 hour
Learn about the key attributes needed to work with raster data in non-GUI programs. Examples in R.
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Time Series 00: Intro to Time Series Data in R - Managing Date/Time Formats

30 minutes
This tutorial will demonstrate how to import a time series dataset stored
Start Tutorial

Time Series 01: Why Metadata Are Important: How to Work with Metadata in Text & EML Format

30 minutes
This tutorial covers what metadata are, and why we need to work with metadata. It covers the 3 most common metadata formats: text file format, web page format and Ecological Metadata Language (EML).
Start Tutorial

Time Series 02: Dealing With Dates & Times in R - as.Date, POSIXct, POSIXlt

30 minutes
This tutorial explores working with date and time classes in R. We will
Start Tutorial

Time Series 03: Cleaning & Subsetting Time Series Data in R - NoData Values & Subset by Date

30 minutes
This tutorial explores how to deal with NoData values encountered in a time series dataset, in R. It also covers how to subset large data files by date and export the results to a csv (text format) file.
Start Tutorial

Time Series 04: Subset and Manipulate Time Series Data with dplyr

30 minutes
In this tutorial, we will use the group_by, summarize and mutate functions in the `dplyr` package to efficiently manipulate atmospheric data collected at the NEON Harvard Forest Field Site. We will use pipes to efficiently perform multiple tasks within a single chunk of code.
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Time Series 05: Plot Time Series with ggplot2 in R

30 minutes
This tutorial uses ggplot2 to create customized plots of time series data. We will learn how to adjust x- and y-axis ticks using the scales package, how to add trend lines to a scatter plot and how to customize plot labels, colors and overall theme.
Start Tutorial

Time Series 06: Create Plots with Multiple Panels, Grouped by Time Using ggplot Facets

30 minutes
This tutorial covers how to plot subsetted time series data (e.g., plot by season) using facets() and ggplot2. It also covers how to plot multiple metrics in one display panel.
Start Tutorial

Time Series Culmination Activity: Plot using Facets & Plot NDVI with Time Series Data

30 minutes
This tutorial is a data integration wrap-up culmination activity for the spatio-temporal time series tutorials.
Start Tutorial

Tree Classification with NEON Airborne Imaging Spectrometer Data using Python xarray

1 hr 30 minutes
Download, explore, interactively visualize, and perform a supervised classification using NEON AOP bidirectional reflectance data and TOS vegetation structure data.
Start Tutorial

Understanding AOP Data Releases and Best Practices for AOP Data Management

1 hour
Understand how AOP data releases differ from the rest of NEON and learn tips and tricks for handling large AOP data volumes
Start Tutorial

Understanding Releases and Provisional Data

40 minutes
Access, work with, and navigate data from NEON data releases and provisional data.
Start Tutorial

Unsupervised Spectral Classification in Python: KMeans & PCA

1 hour
Learn to classify spectral data using KMeans and Principal Components Analysis (PCA).
Start Tutorial

Use the neonUtilities Package to Access NEON Data

40 minutes
Use the neonUtilities R package to download data, and to convert downloaded data from zipped month-by-site files into a table with all data of interest. Temperature data are used as an example.
Start Tutorial

Using an API Token when Accessing NEON Data with neonUtilities

20 minutes
Get an API token tied to your NEON user account, and use it for faster download speeds when accessing NEON data via the neonUtilities package.
Start Tutorial

Using neonUtilities in Python

0.5 hour
Use the neonUtilities R package in Python, via the rpy2 library.
Start Tutorial

Using the NEON API in R

1 - 1.5 hours
Tutorial for getting data from the NEON API, using R and the R package httr
Start Tutorial

Using the neonOS Package to Check for Duplicates and Join Tables

40 minutes
Use the functions in the neonOS package to process NEON observational data: check for duplicate data records and join data tables.
Start Tutorial

Using the neonstore Package to Download and Store NEON Data

40 minutes
Download data using the neonstore package to maintain a reproducible local archive for your analyses, and stack from the local data using the stackFromStore() function in neonUtilities.
Start Tutorial

Vector 00: Open and Plot Shapefiles in R - Getting Started with Point, Line and Polygon Vector Data

30 minutes
This spatial data tutorial explains the how to open and plot shapefiles containing point, line and polygon vector data in R.
Start Tutorial

Vector 01: Explore Shapefile Attributes & Plot Shapefile Objects by Attribute Value in R

30 minutes
This tutorial provides an overview of how to locate and query shapefile attributes as well as subset shapefiles by specific attribute values in R. It also covers plotting multiple shapefiles by attribute and building a custom plot legend.
Start Tutorial

Vector 02: Plot Multiple Shapefiles and Create Custom Legends in Base Plot in R

30 minutes
This tutorial provides an overview of how to create a a plot of multiple shapefiles using base R plot. It also explores adding a legend with custom symbols that match your plot colors and symbols.
Start Tutorial

Vector 03: When Vector Data Don't Line Up - Handling Spatial Projection & CRS in R

30 minutes
This tutorial will cover how to identify the CRS of a spatial vector object in R. It will also explore differences in units associated with different projections and how to reproject data using spTransform in R. Spatial data need to be in the same projection in order to successfully map and process them in non-gui tools such as R.

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Copyright © Battelle, 2026

The National Ecological Observatory Network is a major facility fully funded by the U.S. National Science Foundation.

Any opinions, findings and conclusions or recommendations expressed in this material do not necessarily reflect the views of the U.S. National Science Foundation.