原来用 Java 和 Python 实现过 Avro 转换成 Parquet 格式,所以 Schema 都是在 Avro 中定义的。这里要尝试的是如何定义 Parquet 的 Schema, 然后据此填充数据并生成 Parquet 文件。
本文将演示两个例子,一个是没有层级的两个字段,另一个是含于嵌套级别的字段,将要使用到的 Python 模块有 pandas 和 pyarrow
import pandas as pd import pyarrow as pa import pyarrow.parquet as pq # 定义 Schema schema = pa.schema([ ('id', pa.int32()), ('email', pa.string()) ]) # 准备数据 ids = pa.array([1, 2], type = pa.int32()) emails = pa.array(['first@example.com', 'second@example.com'], pa.string()) # 生成 Parquet 数据 batch = pa.RecordBatch.from_arrays( [ids, emails], schema = schema ) table = pa.Table.from_batches([batch]) # 写 Parquet 文件 plain.parquet pq.write_table(table, 'plain.parquet') import pandas as pd import pyarrow as pa import pyarrow . parquet as pq # 定义 Schema schema = pa . schema ( [ ( 'id' , pa . int32 ( ) ) , ( 'email' , pa . string ( ) ) ] ) # 准备数据 ids = pa . array ( [ 1 , 2 ] , type = pa . int32 ( ) ) emails = pa . array ( [ 'first@example.com' , 'second@example.com' ] , pa . string ( ) ) # 生成 Parquet 数据 batch = pa . RecordBatch . from_arrays ( [ ids , emails ] , schema = schema ) table = pa . Table . from_batches ( [ batch ] )
pq . write_table ( table , ‘plain.parquet’ )
我们可以用工具 parquet-tools 来查看 plain.parquet 文件的数据和 Schema
$ parquet-tools schema plain.parquet message schema { optional int32 id; optional binary email (STRING); } $ parquet-tools cat --json plain.parquet {"id":1,"email":"first@example.com"} {"id":2,"email":"second@example.com"}
没问题,与我们期望的一致。也可以用 pyarrow 代码来获取其中的 Schema 和数据
schema = pq.read_schema('plain.parquet') print(schema) df = pd.read_parquet('plain.parquet') print(df.to_json()) schema = pq . read_schema ( 'plain.parquet' ) print ( schema ) df = pd . read_parquet ( 'plain.parquet' ) print ( df . to_json ( ) )
输出为
id: int32 -- field metadata -- PARQUET:field_id: '1' email: string -- field metadata -- PARQUET:field_id: '2' {"id":{"0":1,"1":2},"email":{"0":"first@example.com","1":"second@example.com"}} id : int32 -- field metadata -- PARQUET : field_id : '1' email : string -- field metadata -- PARQUET : field_id : '2' { "id" : { "0" : 1 , "1" : 2 } , "email" : { "0" : "first@example.com" , "1" : "second@example.com" } }
下面的 Schema 定义加入一个嵌套对象,在 address 下分 email_address 和 post_address,Schema 定义及生成 Parquet 文件的代码如下
import pandas as pd import pyarrow as pa import pyarrow.parquet as pq # 内部字段 address_fields = [ ('email_address', pa.string()), ('post_address', pa.string()), ] # 定义 Parquet Schema,address 嵌套了 address_fields schema = pa.schema(j) # 准备数据 ids = pa.array([1, 2], type = pa.int32()) addresses = pa.array( [('first@example.com', 'city1'), ('second@example.com', 'city2')], pa.struct(address_fields) ) # 生成 Parquet 数据 batch = pa.RecordBatch.from_arrays( [ids, addresses], schema = schema ) table = pa.Table.from_batches([batch]) # 写 Parquet 数据到文件 pq.write_table(table, 'nested.parquet') import pandas as pd import pyarrow as pa import pyarrow . parquet as pq # 内部字段 address_fields = [ ( 'email_address' , pa . string ( ) ) , ( 'post_address' , pa . string ( ) ) , ] # 定义 Parquet Schema,address 嵌套了 address_fields schema = pa . schema ( j ) # 准备数据 ids = pa . array ( [ 1 , 2 ] , type = pa . int32 ( ) ) addresses = pa . array ( [ ( 'first@example.com' , 'city1' ) , ( 'second@example.com' , 'city2' ) ] , pa . struct ( address_fields ) ) # 生成 Parquet 数据 batch = pa . RecordBatch . from_arrays ( [ ids , addresses ] , schema = schema ) table = pa . Table . from_batches ( [ batch ] ) # 写 Parquet 数据到文件 pq . write_table ( table , 'nested.parquet' )
同样用 parquet-tools 来查看下 nested.parquet 文件
$ parquet-tools schema nested.parquet message schema { optional int32 id; optional group address { optional binary email_address (STRING); optional binary post_address (STRING); } } $ parquet-tools cat --json nested.parquet {"id":1,"address":{"email_address":"first@example.com","post_address":"city1"}} {"id":2,"address":{"email_address":"second@example.com","post_address":"city2"}}
用 parquet-tools 看到的 Schama 并没有 struct 的字样,但体现了它 address 与下级属性的嵌套关系。
用 pyarrow 代码来读取 nested.parquet 文件的 Schema 和数据是什么样子
schema = pq.read_schema("nested.parquet") print(schema) df = pd.read_parquet('nested.parquet') print(df.to_json()) schema = pq . read_schema ( "nested.parquet" ) print ( schema ) df = pd . read_parquet ( 'nested.parquet' ) print ( df . to_json ( ) )
id: int32 -- field metadata -- PARQUET:field_id: '1' address: struct<email_address: string, post_address: string> child 0, email_address: string -- field metadata -- PARQUET:field_id: '3' child 1, post_address: string -- field metadata -- PARQUET:field_id: '4' -- field metadata -- PARQUET:field_id: '2' {"id":{"0":1,"1":2},"address":{"0":{"email_address":"first@example.com","post_address":"city1"},"1":{"email_address":"second@example.com","post_address":"city2"}}} id : int32 -- field metadata -- PARQUET : field_id : '1' address : struct & lt ; email_address : string , post_address : string & gt ; child 0 , email_address : string -- field metadata -- PARQUET : field_id : '3' child 1 , post_address : string -- field metadata -- PARQUET : field_id : '4' -- field metadata -- PARQUET : field_id : '2' { "id" : { "0" : 1 , "1" : 2 } , "address" : { "0" : { "email_address" : "first@example.com" , "post_address" : "city1" } , "1" : { "email_address" : "second@example.com" , "post_address" : "city2" } } }
数据当然是一样的,有略微不同的是显示的 Schema 中, address 标识为 struct<email_address: string, post_address: string> , 明确的表明它是一个 struct 类型,而不是只展示嵌套层次。
最后留下一个问题,前面我们定义 Parquet Schema 都是在 Python 代码中完成了,Parquet 是否也能像 Avro 一样用外部文件来定义 Schema, 然后编译给 Python 用?
如果对软件测试、接口测试、自动化测试、持续集成、面试经验。感兴趣可以进到806549072,群内会有不定期的分享测试资料。还会有技术大牛,业内同行一起交流技术