atoti.experimental.distributed.session module

class atoti.experimental.distributed.session.DistributedSession(name, *, config, **kwargs)

Holds a connection to the Java gateway.

close()

Close this session and free all the associated resources.

Return type

None

property closed

Return whether the session is closed or not.

Return type

bool

create_cube(name)

Create a distributed cube.

Parameters

name (str) – The name of the created cube.

Return type

DistributedCube

property cubes

Cubes of the session.

Return type

DistributedCubes

endpoint(route, *, method='GET')

Create a custom endpoint at f"{session.url}/atoti/pyapi/{route}".

This is useful to reuse atoti’s built-in server instead of adding a FastAPI or Flask server to the project. This way, when deploying the project in a container or a VM, only one port (the one of the atoti server) can be exposed instead of two. Since custom endpoints are exposed by atoti’s server, they automatically inherit from the https and authentication setup that have been defined in create_config().

The decorated function must take three parameters with types User, HttpRequest, and Session and return a response body as a Python data structure that can be converted to JSON.

Parameters
  • route (str) –

    The path suffix after /atoti/pyapi/. For instance, if custom/search is passed, a request to /atoti/pyapi/custom/search?query=test#results will match. The route should not contain the query (?) or fragment (#).

    Path parameters can be configured by wrapping their name in curly braces in the route.

  • method (Literal[‘POST’, ‘GET’, ‘PUT’, ‘DELETE’]) – The HTTP method the request must be using to trigger this endpoint. DELETE, POST, and PUT requests can have a body but it must be JSON.

Examples:

@session.endpoint("simple_get")
def callback(request: HttpRequest, user: User, session: Session):
    return "something that will be in response.data"

@session.endpoint(f"simple_post/{store_name}", method="POST")
def callback(request: HttpRequest, user: User, session: Session):
    return request.path_parameters.store_name
Return type

Any

property excel_url

URL of the Excel endpoint.

To connect to the session in Excel, create a new connection to an Analysis Services. Use this URL for the server field and choose to connect with “User Name and Password”:

  • Without authentication, leave these fields blank.

  • With Basic authentication, fill them with your username and password.

  • Other authentication types (such as Auth0) are not supported by Excel.

Return type

str

explain_mdx_query(mdx, *, timeout=30)

Run the query but return an explanation of how the query was executed instead of its result.

See also

query_mdx() for the roles of the parameters.

Return type

QueryAnalysis

Returns

An explanation containing a summary, global timings, and the query plan with all the retrievals.

export_translations_template(path)

Export a template containing all translatable values in the session’s cubes.

Parameters

path (Union[str, Path]) – The path at which to write the template.

property logs_path

Path to the session logs file.

Return type

Path

logs_tail(n=20)

Return the n last lines of the logs or all the lines if n <= 0.

Return type

Logs

property name

Name of the session.

Return type

str

property port

Port on which the session is exposed.

Can be set in SessionConfiguration.

Return type

int

query_mdx(mdx, *, keep_totals=False, timeout=30)

Execute an MDX query and return its result as a pandas DataFrame.

Parameters
  • mdx (str) – The MDX SELECT query to execute. Regardless of the axes on which levels and measures appear in the MDX, the returned DataFrame will have all levels on rows and measures on columns.

  • keep_totals (bool) – Whether the resulting DataFrame should contain, if they are present in the query result, the grand total and subtotals. Totals can be useful but they make the DataFrame harder to work with since its index will have some empty values.

  • timeout (int) – The query timeout in seconds.

Example

>>> from datetime import date
>>> df = pd.DataFrame(
...     columns=["Country", "Date", "Price"],
...     data=[
...         ("China", date(2020, 3, 3), 410.0),
...         ("China", date(2020, 4, 4), 350.0),
...         ("France", date(2020, 1, 1), 480.0),
...         ("France", date(2020, 2, 2), 500.0),
...         ("France", date(2020, 3, 3), 400.0),
...         ("France", date(2020, 4, 4), 420.0),
...         ("India", date(2020, 1, 1), 360.0),
...         ("India", date(2020, 2, 2), 400.0),
...         ("UK", date(2020, 2, 2), 960.0),
...     ],
... )
>>> store = session.read_pandas(
...     df, keys=["Country", "Date"], store_name="Prices"
... )
>>> _ = session.create_cube(store)

This MDX:

>>> mdx = (
...     "SELECT"
...     "  NON EMPTY Hierarchize("
...     "    DrilldownLevel("
...     "      [Prices].[Country].[ALL].[AllMember]"
...     "    )"
...     "  ) ON ROWS,"
...     "  NON EMPTY Crossjoin("
...     "    [Measures].[Price.SUM],"
...     "    Hierarchize("
...     "      DrilldownLevel("
...     "        [Prices].[Date].[ALL].[AllMember]"
...     "      )"
...     "    )"
...     "  ) ON COLUMNS"
...     "  FROM [Prices]"
... )

would display this pivot table:

Country

Price.sum

Total

2020-01-01

2020-02-02

2020-03-03

2020-04-04

Total

2,280.00

840.00

1,860.00

810.00

770.00

China

760.00

410.00

350.00

France

1,800.00

480.00

500.00

400.00

420.00

India

760.00

360.00

400.00

UK

960.00

960.00

but will return this DataFrame:

>>> session.query_mdx(mdx).sort_index()
                    Price.SUM
Date       Country
2020-01-01 France       480.0
           India        360.0
2020-02-02 France       500.0
           India        400.0
           UK           960.0
2020-03-03 China        410.0
           France       400.0
2020-04-04 China        350.0
           France       420.0
Return type

QueryResult

property security
Return type

Security

property url

Public URL of the session.

Can be set in SessionConfiguration.

Return type

str

visualize(name=None)

Display an atoti widget to explore the session interactively.

Note

This method requires the atoti-jupyterlab plugin.

The widget state will be stored in the cell metadata. This state should not have to be edited but, if desired, it can be found in JupyterLab by opening the “Notebook tools” sidebar and expanding the the “Advanced Tools” section.

Parameters

name (Optional[str]) – The name to give to the widget.

wait()

Wait for the underlying server subprocess to terminate.

This will prevent the Python process to exit.

Return type

None