Warehouse Schemas

A schema describes the way that the data in a warehouse is organized. Segment stores data in relational schemas, which organize data into the following template: <source>.<collection>.<property>, for example segment_engineering.tracks.user_id, where source refers to the source or project name (segment_engineering), collection refers to the event (tracks), and the property refers to the data being collected (user_id). All schemas convert collection and property names from CamelCase to snake_case using the go-snakecase package.

Warehouse column creation

Note: Segment creates tables for each of your custom events in your warehouse, with columns for each event’s custom properties. Segment does not allow unbounded event or property spaces in your data. Instead of recording events like “Ordered Product 15”, use a single property of “Product Number” or similar. Segment creates and populates a column only when it receives a non-null value from the source.

How warehouse tables handle nested objects and arrays

Segment’s libraries pass nested objects and arrays into tracking calls as properties, traits, and tracking calls. To preserve the quality of your events data, Segment uses the following methods to store properties and traits in database tables:

  • The warehouse connector stringifies all properties that contain a nested array
  • The warehouse connector stringifies all context fields that contain a nested array
  • The warehouse connector stringifies all traits that contain a nested array
  • The warehouse connector “flattens” all properties that contain a nested object
  • The warehouse connector “flattens” all traits that contain a nested object
  • The warehouse connector optionally stringifies arrays when they follow the Ecommerce spec
  • The warehouse connector “flattens” all context fields that contain a nested object (for example, context.field.nestedA.nestedB becomes a column called context_field_nestedA_nestedB)
Field Code (Example) Schema (Example)
Object (Context): Flatten
context: {
  app: {
    version: "1.0.0"
  }
}
Column Name:
context_app_version

Value:
“1.0.0”
Object (Traits): Flatten
traits: {
  address: {
    street: "6th Street"
  }
}
Column Name:
address_street

Value:
“6th Street”
Object (Properties): Flatten
properties: {
  product_id: {
    sku: "G-32"
  }
}
Column Name:
product_id_sku

Value:
“G-32”
Array (Any): Stringify
products: {
  product_id: [
    "507f1", "505bd"
  ]
}
Column Name:
product_id

Value: “[507f1, 505bd]”

Warehouse tables

The table below describes the schema in Segment Warehouses:

source property
<source>.aliases A table with your alias method calls. This table includes the traits you identify users by as top-level columns, for example <source>.aliases.email.
<source>.groups A table with your group method calls. This table includes the traits you record for groups as top-level columns, for example <source>.groups.employee_count.
<source>.accounts IN BETA A table with unique group method calls. Group calls are upserted into this table (updated if an existing entry exists, appended otherwise). This table holds the latest state of a group.
<source>.identifies A table with your identify method calls. This table includes the traits you identify users by as top-level columns, for example <source>.identifies.email.
<source>.users A table with unique identify calls. identify calls are upserted on user_id into this table (updated if an existing entry exists, appended otherwise). This table holds the latest state of a user. The id column in the users table is the same as the user_id column in the identifies table. Also note that this table won’t have an anonymous_id column since a user can have multiple anonymousIds. To retrieve a user’s anonymousId, query the identifies table. If you observe any duplicates in the users table contact Segment support (unless you are using BigQuery, where this is expected).
<source>.pages A table with your page method calls. This table includes the properties you record for pages as top-level columns, for example <source>.pages.title.
<source>.screens A table with your screen method calls. This table includes properties you record for screens as top-level columns, for example <source>.screens.title.
<source>.tracks A table with your track method calls. This table includes standardized properties that are all common to all events: anonymous_id, context_*, event, event_text, received_at, sent_at, and user_id. This is because every event that you send to Segment has different properties. For querying by the custom properties, use the <source>.<event> tables instead.
<source>.<event> For track calls, each event like Signed Up or Order Completed also has it’s own table (for example. initech.clocked_in) with columns for each of the event’s distinct properties (for example. initech.clocked_in.time).

Identifies table

The identifies table stores the .identify() method calls. Query it to find out user-level information. It has the following columns:

method property
anonymous_id The anonymous ID of the user.
context_<key> Non-user-related context fields sent with each identify call.
id The unique ID of the identify call itself.
received_at When Segment received the identify call.
sent_at When a user triggered the identify call.
user_id The unique ID of the user.
<trait> Each trait of the user you record creates its own column, and the column type is automatically inferred from your data. For example, you might have columns like email and first_name.

Querying the Identifies table

To see a list of the columns in the identifies table for your <source>, run the following:

SELECT column_name AS Columns
FROM columns
WHERE schema_name = '<source>'
AND table_name = 'identifies'
ORDER by column_name

The identifies table is where you can query information about your users and their traits. For example, this query returns unique users you’ve seen on your site each day:

SELECT DATE(sent_at) AS Day, COUNT(DISTINCT(user_id)) AS Users
FROM <source>.identifies
GROUP BY day
ORDER BY day

Groups table

The groups table stores the group method calls. Query it to find out group-level information. It has the following columns:

method property
anonymous_id The anonymous ID of the user.
context_<key> Non-user-related context fields sent with each group call.
group_id The unique ID of the group.
id The unique ID of the group call itself.
received_at When Segment received the groups call.
sent_at When a user triggered the group call.
user_id The unique ID of the user.
<trait> Each trait of the group you record creates its own column, and the column type is automatically inferred from your data. For example, you might have columns like email and name.

Querying the Groups table

To see a list of the columns in the groups table for your <source>, run the following:

SELECT column_name AS Columns
FROM columns
WHERE schema_name = '<source>'
AND table_name = 'groups'
ORDER by column_name

To see a list of the groups using your product, run the following:

SELECT name AS Company
FROM <source>.groups
GROUP BY name

Pages and Screens tables

The pages and screens tables store the page and screen method calls. Query it to find out information about page views or screen views. It has the following columns:

method property
anonymous_id The anonymous ID of the user.
context_<key> Non-user-related context fields sent with each page or screen call.
id The unique ID of the page or screen call itself.
received_at When Segment received the page or screen call.
sent_at When a user triggered the page or screen call.
received_at When Segment received the track call.
user_id The unique ID of the user.
property Each property of your pages or screens creates its own column, and the column type is automatically inferred from your data. For example, you might have columns like referrer and title.

Querying the Pages and Screens tables

To see a list of the columns in the pages table for your <source>, run the following:

SELECT column_name AS Columns
FROM columns
WHERE schema_name = '<source>'
AND table_name = 'pages'
ORDER by column_name

The pages table can give you interesting information about page views that happen on your site. The following query, for example, shows page views grouped by day:

SELECT DATE(sent_at) AS Day, COUNT(*) AS Views
FROM <source>.pages
GROUP BY day
ORDER BY day
day views
2015-01-14 2,203,198
2015-01-15 2,393,020
2015-07-21 1,920,290

Tracks table

The tracks table stores the track method calls. Query it to find out information about the events your users have triggered. It has the following columns:

method property
anonymous_id The anonymous ID of the user.
context_<key> Non-user-related context fields sent with each track call.
event The slug of the event name, mapping to an event-specific table.
event_text The name of the event.
id An ID attached to the event at execution time and used for deduplication at the server level.
received_at When Segment received the track call.
sent_at When a user triggered the track call.
user_id The unique ID of the user.

Querying the Tracks table

Your tracks table is a rollup of the different event-specific tables, for quick querying of just a single type. For example, you could see the number of unique users signed up each day:

SELECT DATE(sent_at) AS Day, COUNT(DISTINCT(user_id)) AS Users
FROM segment.tracks
WHERE event = 'signed_up'
GROUP BY day
ORDER BY day
day views
2015-01-14 25,198
2015-01-15 31,020
2015-07-21 19,290

Event Tables

Your event tables are a series of table for each custom event you record to Segment. We break them out into their own tables because the properties, and, as a result, the columns, differ for each event. Query these tables to find out information about specific properties of your custom events. They have the following columns:

event property
anonymous_id The anonymous ID of the user.
context_<key> Non-user-related context fields sent with each track call.
event The slug of the event name, so you can join the tracks table.
event_text The name of the event.
id The unique ID of the track call itself.
received_at When Segment received the track call.
sent_at When a user triggered the track call.
user_id The unique ID of the user.
<property> Each property of your track calls creates its own column, and the column type is automatically inferred from your data.

Querying the Events tables

To see a list of the event tables for a given <source>, run the following:

SELECT schema as source, "table" as Event
FROM disk
WHERE schema = '<source>'
  AND "table" != 'aliases'
  AND "table" != 'groups'
  AND "table" != 'identifies'
  AND "table" != 'pages'
  AND "table" != 'screens'
  AND "table" != 'tracks'
ORDER BY "table"
source event
production signed_up
production completed_order

To see a list of the columns in one of your event tables, run the following:

SELECT column_name AS Columns
FROM columns
WHERE schema_name = '<source>'
AND table_name = '<event>'
ORDER by column_name

Tracks vs. Events Tables

To see the tables for your organization, you can run this query:

SELECT schema || '.' || "table" AS table, rows
FROM disk
ORDER BY 1

The source.event tables have the same columns as the source.track tables, but they also include columns specific to the properties of each event.

If you’re recording an event like:

analytics.track('Register', {
  plan: 'Pro Annual',
  accountType: 'Facebook'
});

Then you can expect to see columns named plan and account_type as well as the default event, id, and so on. That way, you can write queries against any of the custom data sent in track calls.

Note

Because Segment adds properties and traits as un-prefixed columns to your tables, there is a chance the names can collide with the reserved column names. For this reason, Segment discards properties with the same name as the reserved column name (for example, user_id).

Your event tables are one of the more powerful datasets in Segment SQL. They allow you to see which actions users perform when interacting with your product.

Because every source has different events, what you can do with them will vary. Here’s an example where you can see the number of “Enterprise” users signed up for each day:

SELECT DATE(sent_at) AS Day, COUNT(DISTINCT(user_id)) AS Users
FROM <source>.signed_up
WHERE account_type = 'Enterprise'
GROUP BY day
ORDER BY day
day users
2015-01-14 258
2015-01-15 320
2015-07-21 190

Here’s an example that queries the daily revenue for an ecommerce store:

SELECT DATE(sent_at) AS Day, SUM(total) AS Revenue
FROM <source>.completed_order
GROUP BY day
ORDER BY day
day revenue
2014-07-19 $2,630
2014-07-20 $1,595
2014-07-21 $2,350

Schema Evolution and Compatibility

New Columns

New event properties and traits create columns. Segment processes the incoming data in batches, based on either data size or an interval of time. If the table doesn’t exist we lock and create the table. If the table exists but new columns need to be created, we perform a diff and alter the table to append new columns.

When Segment process a new batch and discover a new column to add, we take the most recent occurrence of a column and choose its datatype.

Data Types

The data types that Segment currently supports include:

timestamp

integer

float

boolean

varchar

Data types are set up in your warehouse based on the first value that comes in from a source. For example, if the first value that came in from a source was a string, Segment would set the data type in the warehouse to string.

In cases where a data type is determined incorrectly, the support team can help you update the data type. As an example, if a field can include float values as well as integers, but the first value we received was an integer, we will set the data type of the field to integer, resulting in a loss of precision.

To update the data type, reach out to the Segment support team. They will update the internal schema that Segment uses to infer your warehouse schema. Once the change is made, Segment will start syncing the data with the correct data type. However, if you want to backfill the historical data , you must drop the impacted tables on your end so that Segment can recreate them and backfill those tables.

To request data types changes, please reach out to Segment Support for assistance, and provide with these details for the affected columns in the following format: <schema_name>.<table_name>.<column_name>.<current_datatype>.<new_datatype>

Column Sizing

After analyzing the data from dozens of customers, we set the string column length limit at 512 characters. Longer strings are truncated. We found this was the sweet spot for good performance and ignoring non-useful data.

Segment uses special-case compression for some known columns, like event names and timestamps. The others default to LZO. Segment may add look-ahead sampling down the road, but from inspecting the datasets today this would be unnecessarily complex.

Timestamps

The Segment API associates four timestamps with every call: timestamp, original_timestamp, sent_at and received_at.

All four timestamps pass through to your Warehouse for every ETL’d event. In most cases the timestamps are close together, but they have different meanings which are important.

timestamp is the UTC-converted timestamp which is set by the Segment library. If you are importing historical events using a server-side library, this is the timestamp you’ll want to reference in your queries.

original_timestamp is the original timestamp set by the Segment library at the time the event is created. Keep in mind, this timestamp can be affected by device clock skew. You can override this value by manually passing in a value for timestamp which will then be relabeled as original_timestamp. Generally, this timestamp should be ignored in favor of the timestamp column.

sent_at is the UTC timestamp set by library when the Segment API call was sent. This timestamp can also be affected by device clock skew.

received_at is UTC timestamp set by the Segment API when the API receives the payload from client or server. All tables use received_at for the sort key.

Segment recommends using the received_at timestamp for all queries based on time. The reason for this is two-fold. First, the sent_at timestamp relies on a client’s device clock being accurate, which is generally unreliable. Secondly, Segment sets received_at as the sort key in Redshift schemas, which means queries will execute much faster when using received_at. You can continue to use timestamp or sent_at timestamps in queries if received_at doesn’t work for your analysis, but the queries will take longer to complete.

For Business Tier customers, Segment suggests enabling received_at in the Selective Sync settings to ensure syncs and backfills complete successfully.

received_at does not ensure chronology of events. For queries based on event chronology, timestamp should be used.

ISO-8601 date strings with timezones included are required when using timestamps with Engage. Sending custom traits without a timezone included in the timestamp will result in the value not being saved.

To learn more about timestamps in Segment, read our timestamps overview in the Segment Spec.

id

Each row in your database will have an id which is equivalent to the messageId which is passed through in the raw JSON events. The id is a unique message id associated with the row.

uuid, uuid_ts, and loaded_at

The uuid column is used to prevent duplicates. You can ignore this column.

The uuid_ts column is used to keep track of when the specific event was last processed by our connector, specifically for deduping and debugging purposes. You can generally ignore this column.

The loaded_at column contains the UTC timestamp reflecting when the data was staged by the processor. This column is created only in BigQuery warehouse.

Sort Key

All tables use received_at for the sort key. Amazon Redshift stores your data on disk in sorted order according to the sort key. The Redshift query optimizer uses sort order when it determines optimal query plans.

More Help

How do I send custom data to my warehouse?

How do I give users permissions to my warehouse?

How frequently does data sync to my warehouse?

Check out our Frequently Asked Questions about Warehouses and a list of helpful Redshift queries to get you started.

This page was last modified: 20 Jun 2023



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