Iceberg Java API🔗
Tables🔗
The main purpose of the Iceberg API is to manage table metadata, like schema, partition spec, metadata, and data files that store table data.
Table metadata and operations are accessed through the Table
interface. This interface will return table information.
Table metadata🔗
The Table
interface provides access to the table metadata:
schema
returns the current table schemaspec
returns the current table partition specproperties
returns a map of key-value propertiescurrentSnapshot
returns the current table snapshotsnapshots
returns all valid snapshots for the tablesnapshot(id)
returns a specific snapshot by IDlocation
returns the table's base location
Tables also provide refresh
to update the table to the latest version, and expose helpers:
io
returns theFileIO
used to read and write table fileslocationProvider
returns aLocationProvider
used to create paths for data and metadata files
Scanning🔗
File level🔗
Iceberg table scans start by creating a TableScan
object with newScan
.
To configure a scan, call filter
and select
on the TableScan
to get a new TableScan
with those changes.
Calls to configuration methods create a new TableScan
so that each TableScan
is immutable and won't change unexpectedly if shared across threads.
When a scan is configured, planFiles
, planTasks
, and schema
are used to return files, tasks, and the read projection.
TableScan scan = table.newScan()
.filter(Expressions.equal("id", 5))
.select("id", "data");
Schema projection = scan.schema();
Iterable<CombinedScanTask> tasks = scan.planTasks();
Use asOfTime
or useSnapshot
to configure the table snapshot for time travel queries.
Row level🔗
Iceberg table scans start by creating a ScanBuilder
object with IcebergGenerics.read
.
To configure a scan, call where
and select
on the ScanBuilder
to get a new ScanBuilder
with those changes.
When a scan is configured, call method build
to execute scan. build
return CloseableIterable<Record>
CloseableIterable<Record> result = IcebergGenerics.read(table)
.where(Expressions.lessThan("id", 5))
.build();
Record
is Iceberg record for iceberg-data module org.apache.iceberg.data.Record
.
Update operations🔗
Table
also exposes operations that update the table. These operations use a builder pattern, PendingUpdate
, that commits when PendingUpdate#commit
is called.
For example, updating the table schema is done by calling updateSchema
, adding updates to the builder, and finally calling commit
to commit the pending changes to the table:
Available operations to update a table are:
updateSchema
-- update the table schemaupdateProperties
-- update table propertiesupdateLocation
-- update the table's base locationnewAppend
-- used to append data filesnewFastAppend
-- used to append data files, will not compact metadatanewOverwrite
-- used to append data files and remove files that are overwrittennewDelete
-- used to delete data filesnewRewrite
-- used to rewrite data files; will replace existing files with new versionsnewTransaction
-- create a new table-level transactionrewriteManifests
-- rewrite manifest data by clustering files, for faster scan planningrollback
-- rollback the table state to a specific snapshot
Transactions🔗
Transactions are used to commit multiple table changes in a single atomic operation. A transaction is used to create individual operations using factory methods, like newAppend
, just like working with a Table
. Operations created by a transaction are committed as a group when commitTransaction
is called.
For example, deleting and appending a file in the same transaction:
Transaction t = table.newTransaction();
// commit operations to the transaction
t.newDelete().deleteFromRowFilter(filter).commit();
t.newAppend().appendFile(data).commit();
// commit all the changes to the table
t.commitTransaction();
Types🔗
Iceberg data types are located in the org.apache.iceberg.types
package.
Primitives🔗
Primitive type instances are available from static methods in each type class. Types without parameters use get
, and types like decimal
use factory methods:
Types.IntegerType.get() // int
Types.DoubleType.get() // double
Types.DecimalType.of(9, 2) // decimal(9, 2)
Nested types🔗
Structs, maps, and lists are created using factory methods in type classes.
Like struct fields, map keys or values and list elements are tracked as nested fields. Nested fields track field IDs and nullability.
Struct fields are created using NestedField.optional
or NestedField.required
. Map value and list element nullability is set in the map and list factory methods.
// struct<1 id: int, 2 data: optional string>
StructType struct = Struct.of(
Types.NestedField.required(1, "id", Types.IntegerType.get()),
Types.NestedField.optional(2, "data", Types.StringType.get())
)
// map<1 key: int, 2 value: optional string>
MapType map = MapType.ofOptional(
1, 2,
Types.IntegerType.get(),
Types.StringType.get()
)
Expressions🔗
Iceberg's expressions are used to configure table scans. To create expressions, use the factory methods in Expressions
.
Supported predicate expressions are:
isNull
notNull
equal
notEqual
lessThan
lessThanOrEqual
greaterThan
greaterThanOrEqual
in
notIn
startsWith
notStartsWith
Supported expression operations are:
and
or
not
Constant expressions are:
alwaysTrue
alwaysFalse
Expression binding🔗
When created, expressions are unbound. Before an expression is used, it will be bound to a data type to find the field ID the expression name represents, and to convert predicate literals.
For example, before using the expression lessThan("x", 10)
, Iceberg needs to determine which column "x"
refers to and convert 10
to that column's data type.
If the expression could be bound to the type struct<1 x: long, 2 y: long>
or to struct<11 x: int, 12 y: int>
.
Expression example🔗
table.newScan()
.filter(Expressions.greaterThanOrEqual("x", 5))
.filter(Expressions.lessThan("x", 10))
Modules🔗
Iceberg table support is organized in library modules:
iceberg-common
contains utility classes used in other modulesiceberg-api
contains the public Iceberg API, including expressions, types, tables, and operationsiceberg-arrow
is an implementation of the Iceberg type system for reading and writing data stored in Iceberg tables using Apache Arrow as the in-memory data formaticeberg-aws
contains implementations of the Iceberg API to be used with tables stored on AWS S3 and/or for tables defined using the AWS Glue data catalogiceberg-core
contains implementations of the Iceberg API and support for Avro data files, this is what processing engines should depend oniceberg-parquet
is an optional module for working with tables backed by Parquet filesiceberg-orc
is an optional module for working with tables backed by ORC files (experimental)iceberg-hive-metastore
is an implementation of Iceberg tables backed by the Hive metastore Thrift client
This project Iceberg also has modules for adding Iceberg support to processing engines and associated tooling:
iceberg-spark
is an implementation of Spark's Datasource V2 API for Iceberg with submodules for each spark versions (use runtime jars for a shaded version)iceberg-flink
is an implementation of Flink's Table and DataStream API for Iceberg (use iceberg-flink-runtime for a shaded version)iceberg-hive3
is an implementation of Hive 3 specific SerDe's for Timestamp, TimestampWithZone, and Date object inspectors (use iceberg-hive-runtime for a shaded version).iceberg-mr
is an implementation of MapReduce and Hive InputFormats and SerDes for Iceberg (use iceberg-hive-runtime for a shaded version for use with Hive)iceberg-nessie
is a module used to integrate Iceberg table metadata history and operations with Project Nessieiceberg-data
is a client library used to read Iceberg tables from JVM applicationsiceberg-runtime
generates a shaded runtime jar for Spark to integrate with iceberg tables