Published January 6, 2026 | Version v1.10.0
Software Open

The Predictive Ecosystem Analyzer (PEcAn) is an integrated ecological bioinformatics toolbox.

  • 1. University of Arizona
  • 2. Boston University
  • 3. National Center for Supercomputing Applications
  • 4. NASA Goddard
  • 5. James Hutton Institute
  • 6. University of Illinois, Urbana-Champaign
  • 7. Finnish Meteorological Institute
  • 8. University of Michigan
  • 9. Carnegie Mellon University
  • 10. Pacific Northwest National Laboratory / University of Maryland
  • 11. Brookhaven National Laboratory
  • 12. Microsoft Corporation
  • 13. University of Cambridge
  • 14. Pools and Fluxes LLC
  • 15. Rutgers University
  • 16. University of Wisconsin-Madison
  • 17. Worchester Academy
  • 18. Wentworth Institute of Technology
  • 19. Morton Arboretum
  • 20. PulseLabs AI
  • 21. Purdue University
  • 22. University of New South Wales
  • 23. Uber
  • 24. Boston University Software & Application Innovation Lab(SAIL)
  • 25. CMR Institute of Technology, Bengaluru
  • 26. National Institute of Technology, Tiruchirappalli

Description

The Predictive Ecosystem Analyzer (PEcAn) (see pecanproject.org) is an integrated ecological bioinformatics toolbox (Dietze et al 2013, LeBauer et al, 2013) that consists of: 1) a scientific workflow system to manage the immense amounts of publicly-available environmental data and 2) a Bayesian data assimilation system to synthesize this information within state-of-the-art ecosystems models. This project is motivated by the fact that many of the most pressing questions about global change are not necessarily limited by the need to collect new data as much as by our ability to synthesize existing data. This project seeks to improve this ability by developing a accessibe framework for integrating multiple data sources in a sensible manner.

Notes

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Files

PecanProject/pecan-v1.10.0.zip

Files (71.6 MB)

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