cancel
Showing results for 
Search instead for 
Did you mean: 
Data Engineering
Join discussions on data engineering best practices, architectures, and optimization strategies within the Databricks Community. Exchange insights and solutions with fellow data engineers.
cancel
Showing results for 
Search instead for 
Did you mean: 

DLT fails with Queries with streaming sources must be executed with writeStream.start();

Nastia
New Contributor III

Hi guys!

I am having an issue with passing the "streaming flow" between layers of the DLT.

first layer "ETD_Bz" is passing through, but then "ETD_Flattened_Bz" is failing with "pyspark.errors.exceptions.captured.AnalysisException: Queries with streaming sources must be executed with writeStream.start();" error.

Code:

 

# works successfully
@dlt.table
  name="ETD_Bz",
  temporary=False)
def Bronze():
    return (spark.readStream
                 .format("delta")
                 .option("skipChangeCommits", "true")
                 .table("default.tbl_raw_etd_data")
            )
 
 # function that flattens json
def process_raw_data(raw_tbl_name) :
    df = (spark.readStream # <- starts working once I am changing from readStream to read, but then it obviously stops processing incrementally
               .format("delta")
               .option("mergeSchema", "true")
               .table(raw_tbl_name)
         )
    json_schema = spark.read.json(df.rdd.map(lambda row: row.JsonString)).schema  # <- fails here
    kafka_df =  df.withColumn("JsonStruct", from_json(col("JsonString"), json_schema))
    fj = FlattenJson()
    kafka_flattened_json = fj.flatten_json(kafka_df)
    return kafka_flattened_json
 
 
# failing layer
@dlt.table(
  name="ETD_Flattened_Bz",
  spark_conf = {"spark.databricks.delta.schema.autoMerge.enabled" : "true"},
  temporary=False)

def Bronze_Flattend():
    return process_raw_data("live.ETD_Bz")
 
any help appreciated! Thank you very much in advance
1 REPLY 1

Nastia
New Contributor III

UPDATE: tried adding writeStream.start() like error suggested + as per other posts and ended up with following error/code:

 
@dlt.table
  name="ETD_Bz",
  temporary=False)
def Bronze():
    return (spark.readStream
                 .format("delta")
                 .option("skipChangeCommits""true")
                 .table("default.tbl_raw_etd_data")
            )
 
 # function that flattens json
def process_raw_data(df, batchId) :
    json_schema = spark.read.json(df.rdd.map(lambda row: row.JsonString)).schema
    kafka_df =  df.withColumn("JsonStruct", from_json(col("JsonString"), json_schema))
    fj = FlattenJson()
    kafka_flattened_json = fj.flatten_json(kafka_df)
    return kafka_flattened_json
 
 
@dlt.table(
  name="ETD_Flattened_Bz",
  spark_conf = {"spark.databricks.delta.schema.autoMerge.enabled" : "true"},
  temporary=False)

def Bronze_Flattend():
  stream = (spark.readStream
            .format("delta")
            .option("skipChangeCommits", "true")
            .table("live.ETD_Bz")
            .writeStream
            .format("json")
            .outputMode("append")
            .foreachBatch(process_raw_data)
            .table("default.tbl_bz_tmp_etd_data")
            .start()
            .awaitTermination())
  return (spark.readStream
                 .format("delta")
                 .option("skipChangeCommits", "true")
                 .table("default.tbl_bz_tmp_etd_data")
            )
 
getting following error:
"py4j.protocol.Py4JJavaError: An error occurred while calling o687.toTable. : org.apache.spark.SparkClassNotFoundException: [DATA_SOURCE_NOT_FOUND] Failed to find data source: foreachBatch. Please find packages at `https://spark.apache.org/third-party-projects.html`."

Connect with Databricks Users in Your Area

Join a Regional User Group to connect with local Databricks users. Events will be happening in your city, and you won’t want to miss the chance to attend and share knowledge.

If there isn’t a group near you, start one and help create a community that brings people together.

Request a New Group