tableau-hyper-management 1.5.10

Creator: bradpython12

Last updated:

0 purchases

tableau-hyper-management 1.5.10 Image
tableau-hyper-management 1.5.10 Images

Languages

Categories

Add to Cart

Description:

tableauhypermanagement 1.5.10

Tableau-Hyper-Management



What is this repository for?
Based on Tableau Hyper API this repository is intended to manage importing any CSV file into Tableau-Hyper format (to be used with Tableau Desktop/Server) with minimal configuration (as column detection, content type detection and reinterpretation of content are part of the included logic), therefore speed up the process of building extract.
Also a publishing data source script allows to take resulted Tableau Hyper file and publish it to a Tableau Server. This is possible thank to excellent Tableau supported logic: Tableau Server Client (Python) package.

This features allows you to automate tedious tasks to refresh data on the server side (one real-life example could be a daily/weekly snapshot of a dynamically changing content to capture big variations in time in Development or Quality layer before reaching Production environment).

Who do I talk to?
Repository owner is: Daniel Popiniuc
Implemented features

conversion intake data from a single or multiple CSV files based on a single input parameter (can be specific or contain a file pattern);
dynamic fields detection based ont 1st line content and provided field separator (strategic advantage);
dynamic advanced content type detection covering following data types: integer, float-dot, date-iso8601, date-DMY-dash, date-DMY-dot, date-DMY-slash, date-MDY, date-MDY-medium, date-MDY-long, time-12, time-12-micro-sec, time-24, time-24-micro-sec, datetime-iso8601, datetime-iso8601-micro-sec, datetime-MDY, datetime-MDY-micro-sec, datetime-MDY-medium, datetime-MDY-medium-micro-sec, datetime-MDY-long, datetime-MDY-long-micro-sec, string;
support for empty field content for any data type (required re-interpreting CSV to be accepted by Hyper Inserter to ensure INT or DOUBLE data types are considered);
use Panda package to benefit of Data Frames speed and flexibility;
log file to capture entire logic details (very useful for either traceability but also debugging);
most of the logic actions are not timed for performance measuring so you can plan better your needs;
publishing a Tableau Extract (Hyper format) to a Tableau Server (specifying Site and Project);
detection of operating system current region language and log all feedback details using that.

Combinations of file types supported



Output (right)File Type/FormatInput (down)
Comma Separated Values
Excel
JSON
Parquet
Pickle
Tableau Extract (Hyper)




Comma Separated Values
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:


Excel
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:no_entry:


JSON
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:no_entry:


Parquet
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:


Pickle
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:
:heavy_check_mark:


Tableau Extract (Hyper)
:heavy_check_mark:
:no_entry:
:no_entry:
:no_entry:
:heavy_check_mark:
:soon:



Installation
Installation can be completed in few steps as follows:

Ensure you have git available to your system:

$ git --version


If you get an error depending on your system you need to install it.

For Windows you can do so from Git for Windows;



Download this project from Github:

$ git clone https://github.com/danielgp/tableau-hyper-management <local_path_of_this_package>


conventions used:

<content_within_html_tags> = variables to be replaced with user values relevant strings



Create a Python Virtual Environment using following command executed from project root folder:

$ python(.exe) -m venv <local_folder_on_your_computer_for_this_package>/virtual_environment/


Upgrade pip (PIP is a package manager for Python packages) and SetupTools using following command executed from newly created virtual environment and Scripts sub-folder:

$ <local_path_of_this_package>/virtual_environment/Scripts/python(.exe) -m pip install --upgrade pip
$ <local_path_of_this_package>/virtual_environment/Scripts/pip(.exe) install --upgrade setuptools


Install project prerequisites using following command executed from project root folder:

$ <local_path_of_this_package>/virtual_environment/Scripts/python(.exe) <local_path_of_this_package>/setup.py install


Ensure all localization source files are compile properly in order for the package to work properly

$ <local_path_of_this_package>/virtual_environment/Scripts/python(.exe) <local_path_of_this_package>/sources/localizations_compile.py

Maintaining local package up-to-date
Once the package is installed is quite important to keep up with latest releases as such are addressing important code improvements and potential security issues, and this can be achieved by following command:
$ git --work-tree=<local_path_of_this_package> --git-dir=<local_path_of_this_package>/.git/ --no-pager pull origin master


conventions used:

<content_within_html_tags> = variables to be replaced with user values relevant strings



Usage
Converting CSV file into Tableau Extract (Hyper format)
$ <local_path_of_this_package>/virtual_environment/Scripts/python(.exe) <local_path_of_this_package>/tableau_hyper_management/converter.py --input-file <full_path_and_file_base_name_to_file_having_content_as_CSV> --input-file-format csv|excel|json|pickle --input-file-compression infer|bz2|gzip|xz|zip --csv-field-separator ,|; --output-file <full_path_and_file_base_name_to_generated_file>(.hyper) --output-file-format csv|excel|hyper|json|pickle --output-file-compression infer|bz2|gzip|xz|zip (--output-log-file <full_path_and_file_name_to_log_running_details>) (--unique-values-to-analyze-limit 100|200=default_value_if_omitted|500|1000)


conventions used:

(content_within_round_parenthesis) = optional
<content_within_html_tags> = variables to be replaced with user values relevant strings
single vertical pipeline = separator for alternative options



Publishing a Tableau Extract (Hyper format) to a Tableau Server
$ <local_path_of_this_package>/virtual_environment/Scripts/python(.exe) <local_path_of_this_package>/tableau_hyper_management/publish_data_source.py --input-file <full_path_and_file_base_name_with_tableau_extract>(.hyper) --tableau-server <tableau_server_url> --tableau-site <tableau_server_site_to_publish_to> --tableau-project <tableau_server_project_to_publish_to> --publishing-mode Append|CreateNew|Overwrite==default_if_omitted --input-credentials-file %credentials_file% (--output-log-file <full_path_and_file_name_to_log_running_details>)


conventions used:

(content_within_round_parenthesis) = optional
<content_within_html_tags> = variables to be replaced with user values relevant strings
single vertical pipeline = separator for alternative options



Change Log / Releases detailed
see CHANGE_LOG.md
Planned features to add (of course, when time will permit / help would be appreciated / votes|feedback is welcomed)

additional formats to be recognized, like:

float-USA-thousand-separator,
float-EU,
float-EU-thousand-separator;
geographical identifiers (Country, US - Zip Codes)



Features to request template
Use feature_request.md
Required software/drivers/configurations
see readme_software.md
Used references
see readme_reference.md

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

Customer Reviews

There are no reviews.