Skip to content
Python library for building highly effective data science workflows
Branch: master
Clone or download
Your Name
Your Name readme
Latest commit bea2309 Apr 20, 2019
Type Name Latest commit message Commit time
Failed to load latest commit information.
d6tflow xls Apr 1, 2019
docs Update transition.rst Apr 6, 2019
tests fixes Feb 25, 2019
LICENSE recommit Feb 2, 2019 recommit Feb 2, 2019 readme Apr 20, 2019
requirements-dev.txt recommit Feb 2, 2019
requirements.txt recommit Feb 2, 2019 fixes Feb 25, 2019

Databolt Flow

For data scientists and data engineers, d6tflow is a python library which makes building complex data science workflows easy, fast and intuitive. It is built on top of workflow manager luigi but unlike luigi it is optimized for data science workflows.

Why use d6tflow?

Data science workflows typically look like this.

Sample Data Workflow

The workflow involves chaining together parameterized tasks which pass multiple inputs and outputs between each other. The output data gets stored in multiple dataframes, files and databases but you have to manually keep track of where everything is. And often you want to rerun tasks with different parameters without inadvertently rerunning long-running tasks. The workflows get complex and your code gets messy, difficult to audit and doesn't scale well.

d6tflow to the rescue! With d6tflow you can easily chain together complex data flows and execute them. You can quickly load input and output data for each task. It makes your workflow very clear and intuitive.

Read more at 4 Reasons Why Your Machine Learning Code is Probably Bad

What can d6tflow do for you?

  • Build a data workflow made up of tasks with dependencies and parameters
  • Check task dependencies and their execution status
  • Execute tasks including dependencies
  • Intelligently continue workflows after failed tasks
  • Intelligently rerun workflow after changing parameters, code or data
  • Save task output to Parquet, CSV, JSON, pickle and in-memory
  • Load task output to pandas dataframe and python objects
  • Quickly share and hand off output data to others


Install with pip install d6tflow. To update, run pip install d6tflow -U --no-deps.

You can also clone the repo and run pip install .

For dask support pip install d6tflow[dask]

Example Output

Below is sample output for a machine learning workflow. TaskTrain() depends on TaskPreprocess() which in turn depends on TaskGetData(). In the end you want to train and evaluate a model but that requires running multiple dependencies.

See the full example here
Interactive mybinder example

# Check task dependencies and their execution status

└─--[TaskTrain-{'do_preprocess': 'True'} (PENDING)]
   └─--[TaskPreprocess-{'do_preprocess': 'True'} (PENDING)]
      └─--[TaskGetData-{} (PENDING)]

# Execute the model training task including dependencies[TaskTrain()])

===== Execution Summary =====

Scheduled 3 tasks of which:
* 3 ran successfully:
    - 1 TaskGetData()
    - 1 TaskPreprocess(do_preprocess=True)
    - 1 TaskTrain(do_preprocess=True)

# Load task output to pandas dataframe and model object for model evaluation
model = TaskTrain().output().load()
df_train = TaskPreprocess().output().load()
# 0.9733333333333334

# Intelligently rerun workflow after changing a preprocessing parameter

└─--[TaskTrain-{'do_preprocess': 'False'} (PENDING)]
   └─--[TaskPreprocess-{'do_preprocess': 'False'} (PENDING)]
      └─--[TaskGetData-{} (COMPLETE)] => this doesn't change and doesn't need to rerun
''' # execute with new parameter


d6tpipe Integration

To quickly share workflow outputs, we recommend you make use of d6tpipe. See Sharing Workflows and Outputs.

Accelerate Data Science

Check out other d6t libraries, including

  • push/pull data: quickly get and share data files like code
  • import data: quickly ingest messy raw CSV and XLS files to pandas, SQL and more
  • join data: quickly combine multiple datasets using fuzzy joins

Get notified

d6tflow is in active development. Join the databolt blog for the latest announcements and tips+tricks.

Collecting Errors Messages and Usage statistics

We have put a lot of effort into making this library useful to you. To help us make this library even better, it collects ANONYMOUS error messages and usage statistics. See d6tcollect for details including how to disable collection. Collection is asynchronous and doesn't impact your code in any way.

It may not catch all errors so if you run into any problems or have any questions, please raise an issue on github.

You can’t perform that action at this time.