The LSST EFD Client¶
The LSST EFD Client helps you access the LSST Engineering Facility Database (EFD), which is backed by InfluxDB.
The client, EfdClient handles authentication and provides convenience methods for accessing data in ready-to-use formats:
get_topics- Get the topics in the EFD.
get_fields- Get the fields in a particular topic.
build_time_range_query- Build an InfluxQL query for a topic and time range.
select_time_series:- Get a
DataFramecontaining results of a time range query. select_packed_time_series:- Get a
DataFramewith high cadence telemetry expanded into a singleDataFrame. select_top_n- Get a
DataFramewith the results of just the most recent rows. get_schema- Return metadata about fields associated with a topic.
This includes the description, units and an
astropy.units.Unitwhere possible. If any of the metadata is missing in the topic definition, it will beNonein the returned schema.
This package also provides some useful utility functions for dealing with data returned from the various EfdClient data access methods:
resample- Resample a
pandas.DataFrameonto the the sampling of a secondpandas.DataFrame rendezvous_dataframes- Given one
pandas.DataFrame, find all entries in anotherpandas.DataFramethat are closest (default is nearest in the past).
Follow the Getting started guide to start accessing EFD data. Also, check out the demo notebooks for examples.
Using lsst_efd_client¶
Python API reference¶
lsst_efd_client Package¶
Collection of EFD utilities
Functions¶
resample(df1, df2[, interp_type]) |
Resample one DataFrame onto another. |
rendezvous_dataframes(left, right[, …]) |
Each record in left will be extended with a corresponding record in right if one exists. |
merge_packed_time_series(packed_dataframe, …) |
Select fields that are time samples and unpack them into a dataframe. |
Classes¶
NotebookAuth([service_endpoint]) |
Class to help keep authentication credentials secret. |
EfdClient(efd_name[, db_name, port, …]) |
Class to handle connections and basic queries |
Contributing¶
lsst_efd_client is developed at https://github.com/lsst-sqre/lsst-efd-client.
Please use GitHub issues in the project repository to report problems and contribute.