Spark IoTDB Connecter
version
The versions required for Spark and Java are as follow:
| Spark Version | Scala Version | Java Version | TsFile |
|---|---|---|---|
2.4.3 | 2.11 | 1.8 | 0.10.0 |
install
mvn clean scala:compile compile install
1. maven dependency
<dependency><groupId>org.apache.iotdb</groupId><artifactId>spark-iotdb-connector</artifactId><version>0.10.0</version></dependency>
2. spark-shell user guide
spark-shell --jars spark-iotdb-connector-0.10.0.jar,iotdb-jdbc-0.10.0-jar-with-dependencies.jarimport org.apache.iotdb.spark.db._val df = spark.read.format("org.apache.iotdb.spark.db").option("url","jdbc:iotdb://127.0.0.1:6667/").option("sql","select * from root").loaddf.printSchema()df.show()
if you want to partition your rdd, you can do as following
spark-shell --jars spark-iotdb-connector-0.10.0.jar,iotdb-jdbc-0.10.0-jar-with-dependencies.jarimport org.apache.iotdb.spark.db._val df = spark.read.format("org.apache.iotdb.spark.db").option("url","jdbc:iotdb://127.0.0.1:6667/").option("sql","select * from root").option("lowerBound", [lower bound of time that you want query(include)]).option("upperBound", [upper bound of time that you want query(include)]).option("numPartition", [the partition number you want]).loaddf.printSchema()df.show()
3. Schema Inference
Take the following TsFile structure as an example: There are three Measurements in the TsFile schema: status, temperature, and hardware. The basic information of these three measurements is as follows:
| Name | Type | Encode | |||
|---|---|---|---|---|---|
| status | Boolean | PLAIN | |||
| temperature | Float | RLE | |||
| hardware | Text | PLAIN |
The existing data in the TsFile is as follows:
| device:root.ln.wf01.wt01 | device:root.ln.wf02.wt02 | ||||||
|---|---|---|---|---|---|---|---|
| status | temperature | hardware | status | ||||
| time | value | time | value | time | value | time | value |
| 1 | True | 1 | 2.2 | 2 | “aaa” | 1 | True |
| 3 | True | 2 | 2.2 | 4 | “bbb” | 2 | False |
| 5 | False | 3 | 2.1 | 6 | “ccc” | 4 | True |
The wide(default) table form is as follows:
| time | root.ln.wf02.wt02.temperature | root.ln.wf02.wt02.status | root.ln.wf02.wt02.hardware | root.ln.wf01.wt01.temperature | root.ln.wf01.wt01.status | root.ln.wf01.wt01.hardware |
|---|---|---|---|---|---|---|
| 1 | null | true | null | 2.2 | true | null |
| 2 | null | false | aaa | 2.2 | null | null |
| 3 | null | null | null | 2.1 | true | null |
| 4 | null | true | bbb | null | null | null |
| 5 | null | null | null | null | false | null |
| 6 | null | null | ccc | null | null | null |
You can also use narrow table form which as follows: (You can see part 4 about how to use narrow form)
| time | device_name | status | hardware | temperature |
|---|---|---|---|---|
| 1 | root.ln.wf02.wt01 | true | null | 2.2 |
| 1 | root.ln.wf02.wt02 | true | null | null |
| 2 | root.ln.wf02.wt01 | null | null | 2.2 |
| 2 | root.ln.wf02.wt02 | false | aaa | null |
| 3 | root.ln.wf02.wt01 | true | null | 2.1 |
| 4 | root.ln.wf02.wt02 | true | bbb | null |
| 5 | root.ln.wf02.wt01 | false | null | null |
| 6 | root.ln.wf02.wt02 | null | ccc | null |
4. Transform between wide and narrow table
from wide to narrow
import org.apache.iotdb.spark.db._val wide_df = spark.read.format("org.apache.iotdb.spark.db").option("url", "jdbc:iotdb://127.0.0.1:6667/").option("sql", "select * from root where time < 1100 and time > 1000").loadval narrow_df = Transformer.toNarrowForm(spark, wide_df)
from narrow to wide
import org.apache.iotdb.spark.db._val wide_df = Transformer.toWideForm(spark, narrow_df)
5. Java user guide
import org.apache.spark.sql.Dataset;import org.apache.spark.sql.Row;import org.apache.spark.sql.SparkSession;import org.apache.iotdb.spark.db.*public class Example {public static void main(String[] args) {SparkSession spark = SparkSession.builder().appName("Build a DataFrame from Scratch").master("local[*]").getOrCreate();Dataset<Row> df = spark.read().format("org.apache.iotdb.spark.db").option("url","jdbc:iotdb://127.0.0.1:6667/").option("sql","select * from root").load();df.printSchema();df.show();Dataset<Row> narrowTable = Transformer.toNarrowForm(spark, df)narrowTable.show()}}
