Ndbc
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A package to automate the loading of NDBC data to a custom object.
Project description
This repository represents my attempts to build out Python class(es)to facilitate the acquisition, analysis, and visualization of NationalData Buoy Center (NDBC) data. The goal is to develop a set of APIs tofacilitate rapid discovery of data resources, exploratory data analysis,and allow integration into automated data workflows.
NDBC.py
This file defines the DataBuoy class. The purpose of this class is toallow a user to define a specific data buoy they wish to gather datafrom and provide the user with methods to collect and analyze this data.
Dependencies are listed in requirements.txt
Usage
Installation
Install using pip from PyPI
Then you are ready to start using this module in exploratory data analyses and scripted workflows.
Methods of DataBuoy Class
.set_station_id
If a DataBuoy class has been instantiated without any station_id
argument, this method allows for setting a station id
.get_station_metadata()
Perform a scrape of the public webpage for a specified data station and save a dictionary of available metadata to the .station_info
property. This is only available if a DataBuoy has a valid station_id
set (either during class instantiation or usingthe set_station_id
method).
.get_stdmet(datetime_index=False)
After importing, the DataBuoy class is instantiated with the ID of thestation from which historical data is sought. Then data may be gathered forthe years and months specified. If no time period is specified, the most recentfull month available is retrieved.
The default behavior is to append datetime values built from date part columns (YY, MM, DD, etc.) to a column 'datetime'. If value True
is passed as the datetime_index
argument, the datetime values will be used as index values for the returned dataframe. In some cases this is advantageous for time series analyses.
By default the get_stdmet
function will fetch the most current month's data. However, the function can take lists of years & months ([int]) to specify a timeframe.
Using the pandas DataFrame to store the returned data provides access to the wide array of methods the pandas packageprovides.
.save(filename(optional))
Saves an instantiated DataBuoy object as JSON to a file. If filename
is not specified the file name will follow thedatabuoy_{station_id}.json
convention.
classmethod
.load(filename)
Instantiate a DataBuoy object from a file, generated by the.save()
method.
Release historyRelease notifications RSS feed
1.0.1
1.0.0
0.1.1
0.1.0
0.0.1
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