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Download data from the Australian Bureau of Statistics (ABS) using its SDMX API

Project description

sdmxabs

sdmxabs is a small python package to download data from the Australian Bureau of Statistics using its SDMX API. SDMX stands for Statistical Data and Metadata eXchange.

Usage

import sdmxabs as sa
from sdmxabs import MatchType as Mt

Before you fetch data from the ABS, you need to know three things:

  • the flow identifier (flow_id) for the data you want. These are short strings, like "CPI" for the Consumer Price Index. You find these using the data_flows() function
  • the dimensions for this flow_id, which are used to select a specific data series. If no dimensiosn are set, the fetch() function will return all data series for a flow identifier. The dimensions can be found using the data_dimensions() function.
  • the codes the ABS uses to specify selected data series against these dimensions. The codes can be found in the relevant code_lists using the code_lists() function. The code list names are part of the information provided with the data dimenions.

Note: it is much, much faster to fetch one or two series using the data dimensions and code lists, than to fetch every data series associated with a flow identifier, and then search through the meta data for the data you want.

Key functions

data_flows(flow_id:str='all', **kwargs: Unpack[GetFileKwargs]) -> dict[str, dict[str, str]] - returns the ABS data. The data is returned in a dictionary with the flow identifier as the key and the attributes of that flow in a dictionary of name-value pairs. You can turn the returned value from data_flows() into a pandas DataFrame, with the following: pd.DataFrame(data_flows()).T

data_dimensions(flow_id: str, **kwargs: Unpack[GetFileKwargs]) -> dict[str, dict[str, str]] - returns the data dimensions and attributes associated with a specific ABS dataflow. The data is returned in a dictionary of dimension/attribute names, and their associated information in a dictionary. You can turn the returned value from data_dimensions() into a pandas DataFrame, with the following: pd.DataFrame(data_dimensions(flow_id)).T

code_lists(cl_id: str, **kwargs: Unpack[GetFileKwargs])-> dict[str, dict[str, str]] The data is returned in a dictionary of codes and their associated information. The code list identifiers (cl_id) can be found in the data dimensions (see previous). You can turn the returned value from code_lists() into a pandas DataFrame, with the following: pd.DataFrane(code_lists(cl_id)).T

Once you know what data you want, you can specify that information in a fetch() request.

fetch(flow_id: str, dims: dict[str, str] | None, validate: bool, **kwargs: Unpack[GetFileKwargs]) -> tuple[pd.DataFrame, pd.DataFrame]: - this function returns two DataFrames, the first is for data. The second is for the associated meta data. The column names in the data DataFrame will match the row names in the meta DataFrame. The dims argument is a dictionary, where the key is a dimension, and the value one or more codes from the relevant code list. Multiple values are concatenated with the "+" symbol. For example, the key value pair for extracting Seasonally Adjusted and Trend data is typically, {"TSEST": "20+30"}, where "TSEST" is the data dimenion. The validate argument reports if there were any issues translating your dimensions dictionary into the SDMX key.

fetch_multi(wanted: pd.DataFrame, validate: bool = False, **kwargs: Unpack[GetFileKwargs],) -> tuple[pd.DataFrame, pd.DataFrame] - allows for multiple items to be fetched and returned. Each selection is a row in a DataFrame. The column names are the data dimensions, and the flow_id. The function returns two DataFrames, the first for data and the second for metadata.

fetch_selection(flow_id: str, criteria: MatchCriteria, validate: bool, **kwargs: Unpack[GetFileKwargs]) -> tuple[pd.DataFrame, pd.DataFrame] is a function to fetch ABS data based on match text strings to the code names used by the ABS. It allows for a more human readable and intuitive selection of ABS data. The function returns two DataFrames, the first for data and the second for metadata.

measure_names(meta: pd.DataFrame) -> pd.Series: a convenience function to convert a metadata DataFrame into a series of y-axis labels.

recalibrate(data: pd.DataFrame, units: pd.Series, as_a_whole: bool = False) -> tuple[pd.DataFrame, pd.Series] - a convenience function to recalibrate a DataFrame returned from a fetch function so that the absolute maximum value is between 1 and 1000. The labels (from measure_names()) are also adjusted.

Other

make_wanted(flow_id: str, criteria: MatchCriteria) -> pd.DataFrame - convert a selection criteria into a one line DataFrame that can be used as the wanted argument in fetch_multi().

match_item(pattern: str, dimension: str, match_type: MatchType = MatchType.PARTIAL) -> MatchItem create a MatchItem from the arguments.

GetFileKwargs is a TypedDict. It specifies the possible arguments for data retrieval from the ABS:

  • verbose: bool - provide step-by-step information about the data retrieval process.
  • modaility: str - Which will be one of "prefer-cache" or "prefer-url". By defaulkt, the calls to the metadata functions [data_flows(), data_dimensions(), and code_lists()] are set to "prefer-cache". The fetch functions default to "prefer-url", which means they get the latest data from the ABS.

MatchType is an Enum for specifying the type of text-matching to be used in fetch_selection().

  • MatchType.EXACT - for exact matches.
  • MatchType.PARTIAL - for partial (case-insensitive) matches, and
  • MatchType.REGEX - for regular expression matches.

MatchItem: tuple[str, str, MatchType] is a tuple use to select codes from a code list. It has three elements: the pattern to match against a code name (from a code list), The dimension being matched, and the MatchType.

MatchCriteria: Sequence[MatchItem] is a sequence of MatchItem used by select_items() to build a one line DataFrame, that can be used as the wanted argument to fetch_multi().

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