Churned customers from MySQL

Introduction

Planning to use data about your churned customers from MySQL to start making predictions in Faraday? Great!

Since MySQL is natively supported by Faraday, it's easy to onboard your data and use it for predictions by creating a Churned customers cohort.

Cohorts are the building blocks of your predictions in Faraday, and your Churned customers cohort will enable you to predict how likely a customer is to churn. Follow the steps below to create your Churned customers cohort.

Getting started

Make sure you have a Faraday account (signup is free!) and that it's not in test mode.

Prerequisites

You'll need data representing one of the your churned customers available in MySQL. This data must take the form of one of the following:

  • Each row represents a single cancellation event that a person could experience in order to become a churned customers
  • Each row represents a fully qualified churned customer

You'll also need the following connections available in your Faraday account:

Screenshot of the connections listing that includes MySQL

Shortcuts

Your account may already have a cohort representing your churned customers. Before following the instructions below, check your existing cohorts.

Your account may already have a dataset with Churned customers or Cancellation data. If you see one listed among your existing datasets, you can skip the "Dataset" section below and proceed directly to the "Cohort" section.

Dataset

Connecting your data

First, you'll add data representing your churned customers from MySQL to Faraday using a Dataset.

  • In the navigation sidebar, choose Datasets. Screenshot of the datasets list
  • Click the New Dataset button.
  • Fill out the form
    • Choose MySQL and click the Next button. (Don't see MySQL on the list? Make sure you have the connection established—see "Prerequisites" above.)
    • Enter a memorable name, like "Cancellation data" or "Churned customers data".
    • Fill in the MySQL options.
    • Click the Create dataset button. Screenshot of the new dataset form, filled out
  • Wait briefly while Faraday analyzes your data. It shouldn't take long.

Describing your data

Next, you'll help Faraday understand what your data means, starting with recognizing people in your data.

Identities

Your data may contain multiple identities per person, like billing and shipping. Choose one to start with.

Screenshot of the dataset details, blank

  • Click the Add identity set button.
  • Fill out the form
    • Provide a memorable name for this identity set, like "billing," "shipping," or "customer." You can only use lowercase letters, numbers, and underscores here for technical reasons.
    • For each identity property listed on the left side of the table, use the dropdown on the right to see if there's a column in your data that contains this kind of data for your chosen identity set. (If not, you can leave that dropdown blank.) Screenshot of the new identity set form, filled out
  • Click the Finish button.

If there are other identity sets in your data, feel free to use the Add identity set button and repeat the process.

Screenshot of the dataset details, with identity set

Behavior

Now you have to make a decision about your data:

A. Does each row represent a single cancellation event that a person could experience in order to become a churned customer?

B. Or, alternatively, does each row represent a fully qualified churned customer?

Option A: each row represents a cancellation event
  • Click the Add event button.
  • Fill out the form:
    • Check the dropdown for an existing event that resembles a cancellation. If you find one, choose it.

    • Otherwise, choose Create a new event stream.

    • Click the Next button.

    • If you're creating a new event stream, enter a memorable name, like "cancellation." You can only use lowercase letters, numbers, and underscores to name event streams.

    • Under the Timestamp section, use the dropdown on the left to choose a column in your data that contains a "timestamp" for when that row's Cancellation event occurred. You may have to use the dropdown on the right to choose the correct format for your timestamp.

    • Skip the Value section.

    • Skip the optional Properties section. Screenshot of the new event stream form, filled out with eventlike details

  • Click the Finish button.
Option B: each row represents a single churned customer
  • Skip the Events section

  • Click the Add trait button.

  • Fill out the form:

    • In the Trait name textbox, enter a memorable name like "is_churned customer_member".
    • Choose any column that is guaranteed to be non-empty in your data.
  • Click the Finish button. Screenshot of the new event stream form, filled out with traitlike details You're done connecting your data to Faraday! Now let's use it to define a Churned customers cohort.

Cohort

Your Churned customers cohort is a formal, fluid representation of your churned customers. You'll use this cohort, along with others, as building blocks to configure Faraday to make powerful predictions about your churned customers and others.

  • In the navigation sidebar, click Cohorts. Screenshot of the cohorts list, empty
  • Click the New cohort button. Screenshot of the new cohort form, empty

Filtering

Here you will specify the qualifications a person needs to meet to be part of this cohort. If everyone in the dataset should be a member, you can skip this section.

Follow the instructions for option A or option B - whichever one you picked above.

Option A: each row represents a cancellation event

  • Click the Add event button.

  • Fill out the form:

    • Choose the event you created (or selected) in the "Dataset" section above. Screenshot of the new cohort form with event selected
    • Click the Next button. Screenshot of the new cohort form with event property details
  • Click the Finish button.

  • Skip the Traits section.

Option B: each row represents a single churned customer

  • Skip the Events section.

  • Click the Add trait button.

  • From the list of traits, choose the is_churned customer_member trait you created above (you can filter by "User defined" or the search bar to find it easier).

  • Click Next

  • Fill out the form:

    • From the dropdown, select Any values (non-null).
  • Click the Finish button Screenshot of the new cohort form with trait property details

Finishing touches

  • Enter a memorable name, like "Churned customers." Screenshot of the new cohort form filled out
  • Click the Save cohort button.

Your new cohort is now ready to use!

Conclusion

With your Churned customers cohort created from a dataset based on MySQL churned customers data, you're ready to use your cohort in a prediction!