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Python interface for the MicroStrategy REST API

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mstrio: Simple and Secure Access to MicroStrategy Data

mstrio provides a high-level interface for Python and R and is designed to give data scientists and developers simple and secure access to MicroStrategy data. It wraps MicroStrategy REST APIs into simple workflows, allowing users to connect to their MicroStrategy environment, fetch data from cubes and reports, create new datasets, and add new data to existing datasets. And, because it enforces MicroStrategy's user and object security model, you don't need to worry about setting up separate security rules.

With mstrio, it's easy to integrate cross-departmental, trustworthy business data in machine learning workflows and enable decision-makers to take action on predictive insights in MicroStrategy reports, Dossiers, HyperIntelligence Cards, and customized, embedded analytical applications.

MicroStrategy for Jupyter is an extension for Jupyter Notebook which provides a graphical user interface for mstrio-py methods with the help of which user can perform all of the import and export actions without writing a single line of code manually. MicroStrategy for Jupyter is contained within mstrio-py package and is available after installation and enabling as Jupyter extension.

Table of Contents




  • Python 3.6+
  • MicroStrategy 2019 Update 4 (11.1.4)+

MicroStrategy for Jupyter

Install the mstrio-py Package

Note: it is not recommended to install mstrio-py in an Anaconda environment. For a seamless experience, install and run it in Python's virtual environment instead.

Installation is easy when using pip. Read more about installation on MicroStrategy's product documentation.

pip3 install mstrio-py

Enable the Jupyter Notebook extension

Once mstrio-py is installed you can install and enable the Jupyter Notebook extension by using the commands below:

jupyter nbextension install connector-jupyter --py --sys-prefix
jupyter nbextension enable connector-jupyter --py --sys-prefix

Versioning & Main Features


Current version: 11.2.2 (24 June 2020). Check out Release Notes to see what's new.

Functionalities may be added to mstrio either in combination with annual MicroStrategy platform releases or through updates to platform releases. To ensure compatibility with APIs supported by your MicroStrategy environment, it is recommended to install a version of mstrio that corresponds to the version number of your MicroStrategy environment.

The current version of mstrio-py is 11.2.2 and is supported on MicroStrategy 2019 Update 4 (11.1.4) and later. To leverage MicroStrategy for Jupyter, mstrio-py (11.1.4), Jupyter Notebook (6.0.2), ipywidgets (7.5.1) and MicroStrategy 2019 Update 4 (11.1.4) or higher are required.

If you intend to use mstrio with MicroStrategy version older than 11.1.4, refer to the Pypi package archive to download mstrio 10.11.1, which is supported on:

  • MicroStrategy 2019 (11.1)
  • MicroStrategy 2019 Update 1 (11.1.1)
  • MicroStrategy 2019 Update 2 (11.1.2)
  • MicroStrategy 2019 Update 3 (11.1.3)

Refer to the PyPi package archive for a list of available versions.

To install a specific, archived version of mstrio, choose the desired version available on PyPi's package archive and install with pip, as follows:

pip install mstrio-py==10.11.1

Main Features

Read the following tutorials to become more familiar with mstrio-py

  • Connect to your MicroStrategy environment
  • Import data from a Report into a Pandas DataFrame
  • Import data from a Cube into a Pandas DataFrame
  • Filter Cubes and Reports by selecting Attributes and Metrics or specifying a view filter
  • Export data into MicroStrategy by creating Datasets
  • Update, replace, or append new data to an existing Dataset


Connect to MicroStrategy

The Connection object manages your connection to MicroStrategy. Connect to your MicroStrategy environment by providing the URL to the MicroStrategy REST API server, your username, password and the ID of the Project to connect to. When a Connection object is created the user will be automatically logged-in.

from mstrio.connection import Connection
import getpass

base_url = ""
mstr_username = "Username"
mstr_password = getpass.getpass("Password: ")
project_id = "PROJECT_ID"
conn = Connection(base_url, mstr_username, mstr_password, project_id=project_id)

The URL for the REST API server typically follows this format:

Validate that the REST API server is running by accessing in your web browser.

To manage the connection the following methods are made available:


Authentication Methods

Currently, supported authentication modes are Standard (the default) and LDAP. To use LDAP, add login_mode=16 when creating your Connection object:

conn = Connection(base_url, mstr_username, mstr_password, project_id=project_id, login_mode=16)

Optionally, the Connection object can be created by passing the identity_token parameter, which will create a delegated session. The identity token can be obtained by sending a request to MicroStrategy REST API /auth/identityToken endpoint.

conn = Connection(base_url, identity_token=identity_token, project_id=project_id)

SSL Self-signed Certificate

By default, SSL certificates are validated with each API request. To turn this off, use ssl_verify flag:

conn = Connection(base_url, mstr_username, mstr_password, project_id=project_id, ssl_verify=False)

If you are using a SSL with a self-signed certificate you will need to perform an additional step to configure your connection. There are 2 ways to set it up:

  1. The easiest way to configure the SSL is to move your certificate file to your working directory. Just make sure the ssl_verify parameter is set to True when creating the Connection object in mstrio-py (it is True by default):
conn = Connection(base_url, mstr_username, mstr_password, project_id=project_id, ssl_verify=True)
  1. The second way is to pass the certificate_path parameter to your connection object in mstrio. It has to be the absolute path to your certificate file:
conn = Connection(base_url, mstr_username, mstr_password, project_id=project_id, certificate_path="C:/path/to/your/certificate.pem")

Import Data from Cubes and Reports

Better fetching performance can be achieved by utilizing the parallel download of data chunks. This feature is controlled by the parallel flag and is enabled by default. Disabling this setting will lower the peak I-Server load. To import the contents of a published Cube into a DataFrame for analysis in Python, use the Cube class:

from mstrio.cube import Cube
my_cube = Cube(connection=conn, cube_id=cube_id)
df = my_cube.to_dataframe()

To import Reports into a DataFrame for analysis in Python use the appropriate Report class:

from import Report
my_report = Report(connection=conn, report_id=report_id, parallel=False)
df = my_report.to_dataframe()

By default, all rows are imported when my_cube.to_dataframe() or my_report.to_dataframe() are called. Filter the contents of a Cube / Report by passing the selected object IDs for the metrics, attributes, and attribute elements to the apply_filters() method.

To get the list of object IDs of the metrics, attributes, or attribute elements that are available within the Cube / Report MicroStrategy objects, use the following Cube / Report class properties:


Then, choose those elements by passing their IDs to the my_cube.apply_filters() method. To see the chosen elements, call my_cube.selected_attributes, my_cube.selected_metrics, my_cube.selected_attr_elements. To clear any active filters, call my_cube.clear_filters().

    attributes=["A598372E11E9910D1CBF0080EFD54D63", "A59855D811E9910D1CC50080EFD54D63"],
    attr_elements=["A598372E11E9910D1CBF0080EFD54D63:Los Angeles", "A598372E11E9910D1CBF0080EFD54D63:Seattle"])

df = my_cube.to_dataframe()

If you need to exclude specific attribute elements, pass the operator="NotIn" parameter to the apply_filters() method.

    attributes=["A598372E11E9910D1CBF0080EFD54D63", "A59855D811E9910D1CC50080EFD54D63"],
    attr_elements=["A598372E11E9910D1CBF0080EFD54D63:Los Angeles", "A598372E11E9910D1CBF0080EFD54D63:Seattle"],
df = my_cube.to_dataframe()

Export Data into MicroStrategy with Datasets

Create a New Dataset

With mstrio-py you can create and publish single or multi-table Datasets. This is done by passing Pandas DataFrames to the Dataset constructor which translates the data into the format needed by MicroStrategy.

import pandas as pd
stores = {"store_id": [1, 2, 3],
          "location": ["New York", "Seattle", "Los Angeles"]}
stores_df = pd.DataFrame(stores, columns=["store_id", "location"])

sales = {"store_id": [1, 2, 3],
         "category": ["TV", "Books", "Accessories"],
         "sales": [400, 200, 100],
         "sales_fmt": ["$400", "$200", "$100"]}
sales_df = pd.DataFrame(sales, columns=["store_id", "category", "sales", "sales_fmt"])

from mstrio.dataset import Dataset
ds = Dataset(connection=conn, name="Store Analysis")
ds.add_table(name="Stores", data_frame=stores_df, update_policy="add")
ds.add_table(name="Sales", data_frame=sales_df, update_policy="add")

By default Dataset.create() will create a Dataset, upload the data to the Intelligence Server and publish it. If you just want to create the Dataset and upload the row-level data but leave it unpublished, use Dataset.create(auto_publish=False). If you want to create an empty Dataset, use Dataset.create(auto_upload=False, auto_publish=False). Skipped actions can be performed later using Dataset.update() and Dataset.publish() methods.

When using Dataset.add_table(), Pandas data types are mapped to MicroStrategy data types. By default, numeric data (integers and floats) are modeled as MicroStrategy Metrics and non-numeric data are modeled as MicroStrategy Attributes. This can be problematic if your data contains columns with integers that should behave as Attributes (e.g. a row ID), or if your data contains string-based, numeric-looking data which should be Metrics (e.g. formatted sales data: ["$450", "$325"]). To control this behavior, provide a list of columns that you want to convert from one type to another.

ds.add_table(name="Stores", data_frame=stores_df, update_policy="add",

ds.add_table(name="Sales", data_frame=sales_df, update_policy="add",

It is also possible to specify where the Dataset should be created by providing a folder ID in Dataset.create(folder_id=folder_id).

After creating the Dataset, you can obtain its ID using Datasets.dataset_id. This ID is needed for updating the data later.

Update a Dataset

When the source data changes and users need the latest data for analysis and reporting in MicroStrategy, mstrio-py allows you to update the previously created Dataset.

from mstrio.dataset import Dataset
ds = Dataset(connection=conn, dataset_id=dataset_id)
ds.add_table(name="Stores", data_frame=stores_df, update_policy="update")
ds.add_table(name="Sales", data_frame=sales_df, update_policy="upsert")

The update_policy parameter controls how the data in the Dataset gets updated. Currently supported update operations are add (inserts entirely new data), update (updates existing data), upsert (simultaneously updates existing data and inserts new data), and replace (truncates and replaces the data).

By default Dataset.update() will upload the data to the Intelligence Server and publish the Dataset. If you just want to update the Dataset but not publish the row-level data, use Dataset.update(auto_publish=False). To publish it later, use Dataset.publish().

By default, the raw data is transmitted to the server in increments of 100,000 rows. For very large datasets (>1 GB) it is beneficial to increase the number of rows transmitted to the Intelligence Server with each request. Do this with the chunksize parameter:


Certify a dataset

Use Dataset.certify() to certify / decertify an existing dataset.


Updating Datasets that were not created using the MicroStrategy REST API is not possible. This applies for example to Cubes created via MicroStrategy Web client.

More Resources


"Jupyter" and the Jupyter logos are trademarks or registered trademarks of NumFOCUS.

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