Ndbc

Posted By admin On 31/07/22
Latest version

Ndbc Casinos Usa Mobile

There are other ways a NDBC can be seen and that is through the online casino’s pop-up. For instance, let’s say a player signs on to an online casino and a pop-up appears informing them they are eligible to receive a NDBC. This is the one case wherein a player will be able to use the code without having to register or make a deposit. NBDC offers no-cost, one-on-one, long-term professional business advising, low-cost professional development, and other specialized resources to Nebraska businesses.

Released:

Check your cashier to redeem the bonus. This offer is For depositing only. No several consecutive free bonuses are allowed. In order to use this bonus, please make. Completed in 1994 by the PMEL research laboratory, and transferred to an operational status at NDBC in 2005, the array provides real-time high quality oceanographic and surface meteorological data for monitoring, forecasting and understanding climate swings associated with El Nino La Nina. Both services are identical with mixed music (traditional and modern) and the same sermon. Currently, services will be at capacity at 50 total reservations.

Ndbc 41009

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)
46088

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

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Files for NDBC, version 1.0.1
Filename, sizeFile typePython versionUpload dateHashes
Filename, size NDBC-1.0.1-py3-none-any.whl (11.5 kB) File type Wheel Python version py3 Upload dateHashes
Filename, size NDBC-1.0.1.tar.gz (12.2 kB) File type Source Python version None Upload dateHashes
Close

Hashes for NDBC-1.0.1-py3-none-any.whl

Hashes for NDBC-1.0.1-py3-none-any.whl
AlgorithmHash digest
SHA256a509390824af1d738032b6f1a7d6ad21a00650a9883ff9c25b68450f7e758647
MD572861125f0db37075a76d8112451709e
BLAKE2-256929a490b6dcccd8e1fa534ec9cdf2489719c789577daa4b48e3703bb6ffacec5
CloseNdbc

Hashes for NDBC-1.0.1.tar.gz

Ndbc 41114
Hashes for NDBC-1.0.1.tar.gz
AlgorithmHash digest
SHA256696b8c61e423129fc8e32f545f7923d99c470283da2095245f36f38b69c51cda
MD5666d0ea5eb7c880dadb045afc6a22ad3
BLAKE2-2563ce49ed950f62107a45574a69f74bbfb22d2523aaa13bb1b7aa3b35ba7c1f5ca

Ndbc Florida

The United States Naval Meteorology and Oceanography Command (NMOC) provides critical information from the ocean depths to the most distant reaches of space, meeting needs in the military, scientific, and civilian communities.

The following NMOC components make their products available to the public through this portal:

The Joint Typhoon Warning Center (JTWC) is the U.S. Department of Defense agency responsible for issuing tropical cyclone warnings for the Pacific and Indian Oceans.

The Fleet Numerical Meteorology and Oceanography Center (FNMOC) provides the highest quality, most relevant and timely worldwide meteorology and oceanography support to U.S. and coalition forces from its Operations Center in Monterey, California.

Ndbc 46014

The Naval Oceanographic Office (NAVO) maximizes seapower by applying relevant oceanographic knowledge in support of U.S. National Security.