zoukankan      html  css  js  c++  java
  • python avro 数据格式使用demo

    {"name": "UEProcedures",
     "type": "record",
     "fields": [
         {"name": "imsi", "type": "string"},
         {"name": "time_at", "type": "string"},
         {"name": "procedures", "type": {"type": "array", "items": {
    	      "type": "record",
    	      "name": "SignalProcedure",
    	      "fields" : [
    	      {"name": "timestamp", "type": "string"},
    	      {"name": "procedure_tag", "type": "string"}
    	      ]
             }}
         }
     ]
    }
    

     ue_procedure.avsc数据格式说明,python3 下的示例代码:

    import avro.schema
    from avro.datafile import DataFileReader, DataFileWriter
    from avro.io import DatumReader, DatumWriter
    
    schema = avro.schema.Parse(open('ue_procedure.avsc', "r").read())
    
    writer = DataFileWriter(open("ue_procedures.avro", "wb"), DatumWriter(), schema)
    writer.append({"imsi": "UE001", "time_at": "2018-04-09 12:15", "procedures": [{"timestamp": "2019-04-09 12:01", "procedure_tag": "A"}, {"timestamp": "2019-04-09 12:02", "procedure_tag": "B"}]})
    writer.append({"imsi": "UE002", "time_at": "2018-04-09 12:15", "procedures": [{"timestamp": "2019-04-09 12:01", "procedure_tag": "A"}, {"timestamp": "2019-04-09 12:02", "procedure_tag": "B"}]})
    writer.close()
    
    reader = DataFileReader(open("ue_procedures.avro", "rb"), DatumReader())
    for ue in reader:
        print(ue)
    reader.close()
    

     输出:

    {'imsi': 'UE001', 'time_at': '2018-04-09 12:15', 'procedures': [{'timestamp': '2019-04-09 12:01', 'procedure_tag': 'A'}, {'timestamp': '2019-04-09 12:02', 'procedure_tag': 'B'}]}
    {'imsi': 'UE002', 'time_at': '2018-04-09 12:15', 'procedures': [{'timestamp': '2019-04-09 12:01', 'procedure_tag': 'A'}, {'timestamp': '2019-04-09 12:02', 'procedure_tag': 'B'}]}

    另外使用map的示例:

    {"name": "UEStat",
     "type": "record",
     "fields": [
         {"name": "imsi", "type": "string"},
         {"name": "time_at", "type": "string"},
         {"name": "procedures_total_cnt", "type": "long"},
         {"name": "is_over15_time_detach_minus_attach", "type": "boolean"},
         {"name": "detail_procedures_cnt", "type": {"type": "map", "values": "long"}}
     ]
    }
    
    import avro.schema
    from avro.datafile import DataFileReader, DataFileWriter
    from avro.io import DatumReader, DatumWriter
    
    schema = avro.schema.Parse(open('chr_ue_stat.avsc', "r").read())
    
    writer = DataFileWriter(open("chr_ue_stat.avro", "wb"), DatumWriter(), schema)
    writer.append({"imsi": "UE001", "time_at": "2018-04-09 12:15", "is_over15_time_detach_minus_attach": True, "procedures_total_cnt":789, "detail_procedures_cnt": {"A": 123, "B": 342}})
    writer.append({"imsi": "UE002", "time_at": "2018-04-09 12:15", "is_over15_time_detach_minus_attach": False, "procedures_total_cnt": 876, "detail_procedures_cnt": {"C":1123, "D": 313}})
    writer.close()
    
    reader = DataFileReader(open("ue_procedures.avro", "rb"), DatumReader())
    for ue in reader:
        print(ue)
    reader.close()
    

     输出:

    {'imsi': 'UE001', 'time_at': '2018-04-09 12:15', 'procedures': [{'timestamp': '2019-04-09 12:01', 'procedure_tag': 'A'}, {'timestamp': '2019-04-09 12:02', 'procedure_tag': 'B'}]}
    {'imsi': 'UE002', 'time_at': '2018-04-09 12:15', 'procedures': [{'timestamp': '2019-04-09 12:01', 'procedure_tag': 'A'}, {'timestamp': '2019-04-09 12:02', 'procedure_tag': 'B'}]}

     

      

    参考:https://avro.apache.org/docs/1.8.2/gettingstartedpython.html 

  • 相关阅读:
    动态存储区(堆)、动态存储区(栈)、静态存储区、程序代码区
    auto, extern, register, static
    #include <iomanip>
    use
    ZooKeeper某一QuorumPeerMain挂了
    python 中的 字符串 列表 元祖 字典
    JAVA的23种设计模式
    spark job分析
    Spark1
    SQL三大范式
  • 原文地址:https://www.cnblogs.com/bonelee/p/10678193.html
Copyright © 2011-2022 走看看