Schema
Each table in Pinot is associated with a Schema. A schema defines what fields are present in the table along with the data types.
The schema is stored in the Zookeeper, along with the table configuration.
Categories
A schema also defines what category a column belongs to. Columns in a Pinot table can be categorized into three categories:
Dimension
Dimension columns are typically used in slice and dice operations for answering business queries. Some operations for which dimension columns are used:
GROUP BY
- group by one or more dimension columns along with aggregations on one or more metric columnsFilter clauses such as
WHERE
Metric
These columns represent the quantitative data of the table. Such columns are used for aggregation. In data warehouse terminology, these can also be referred to as fact or measure columns.
Some operation for which metric columns are used:
Aggregation -
SUM
,MIN
,MAX
,COUNT
,AVG
etcFilter clause such as
WHERE
DateTime
This column represents time columns in the data. There can be multiple time columns in a table, but only one of them can be treated as primary. The primary time column is the one that is present in the segment config.
The primary time column is used by Pinot to maintain the time boundary between offline and real-time data in a hybrid table and for retention management. A primary time column is mandatory if the table's push type is APPEND
and optional if the push type is REFRESH
.
Common operations that can be done on time column:
GROUP BY
Filter clauses such as
WHERE
Pinot does not enforce strict rules on which of these categories columns belong to, rather the categories can be thought of as hints to Pinot to do internal optimizations.
For example, metrics may be stored without a dictionary and can have a different default null value.
The categories are also relevant when doing segment merge and rollups. Pinot uses the dimension and time fields to identify records against which to apply merge/rollups.
Metrics aggregation is another example where Pinot uses dimensions and time are used as the key, and automatically aggregates values for the metric columns.
Data Types
Data types determine the operations that can be performed on a column. Pinot supports the following data types:
BIG_DECIMAL
Not supported
0.0
BOOLEAN
0 (false)
N/A
TIMESTAMP
0 (1970-01-01 00:00:00 UTC)
N/A
STRING
"null"
N/A
JSON
"null"
N/A
BYTES
byte array of length 0
byte array of length 0
BOOLEAN
, TIMESTAMP
, JSON
are added after release 0.7.1
. In release 0.7.1
and older releases, BOOLEAN
is equivalent to STRING.
BIG_DECIMAL
is added after release 0.10.0
.
The lowest granularity TIMESTAMP type supports is milliseconds epoch, nanoseconds is not supported.
Pinot also supports columns that contain lists or arrays of items, but there isn't an explicit data type to represent these lists or arrays. Instead, you can indicate that a dimension column accepts multiple values. For more information, see DimensionFieldSpec in the Schema configuration reference.
Date Time Fields
Since Pinot doesn't have a dedicated DATETIME
datatype support, you need to input time in either STRING, LONG, or INT format. However, Pinot needs to convert the date into an understandable format such as epoch timestamp to do operations. You can refer to DateTime field spec configs for more details on supported formats.
Built-in Virtual Columns
There are several built-in virtual columns inside the schema the can be used for debugging purposes:
$hostName
Dimension
STRING
Name of the server hosting the data
$segmentName
Dimension
STRING
Name of the segment containing the record
$docId
Dimension
INT
Document id of the record within the segment
These virtual columns can be used in queries in a similar way to regular columns.
Creating a Schema
First, Make sure your cluster is up and running.
Let's create a schema and put it in a JSON file. For this example, we have created a schema for flight data.
For more details on constructing a schema file, see the Schema configuration reference.
Then, we can upload the sample schema provided above using either a Bash command or REST API call.
Check out the schema in the Rest API to make sure it was successfully uploaded
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