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) 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Show on-line API help for DMelt Java classes
Source code name: "tools_doc.py"
Programming language: Python
Topic: Tools/Misc
DMelt Version 1. Last modified: 01/09/2016. License: Free
https://datamelt.org/code/cache/tools_doc_6630.py
To run this script using the DMelt IDE,
copy the above URL link to the menu [File]→[Read script from URL] of the DMelt IDE.
from jhplot import P0D
# build an 1D array
p0=P0D("My first P0D array")
p0.doc() # display help