将Pandas Dataframe转换为嵌套JSON

费利克斯:

我是Python和Pandas的新手。我正在尝试将Pandas Dataframe转换为嵌套的JSON。函数.to_json()不能为我的目标提供足够的灵活性。

以下是数据框的一些数据点(在csv中,以逗号分隔):

,ID,Location,Country,Latitude,Longitude,timestamp,tide  
0,1,BREST,FRA,48.383,-4.495,1807-01-01,6905.0  
1,1,BREST,FRA,48.383,-4.495,1807-02-01,6931.0  
2,1,BREST,FRA,48.383,-4.495,1807-03-01,6896.0  
3,1,BREST,FRA,48.383,-4.495,1807-04-01,6953.0  
4,1,BREST,FRA,48.383,-4.495,1807-05-01,7043.0  
2508,7,CUXHAVEN 2,DEU,53.867,8.717,1843-01-01,7093.0  
2509,7,CUXHAVEN 2,DEU,53.867,8.717,1843-02-01,6688.0  
2510,7,CUXHAVEN 2,DEU,53.867,8.717,1843-03-01,6493.0  
2511,7,CUXHAVEN 2,DEU,53.867,8.717,1843-04-01,6723.0  
2512,7,CUXHAVEN 2,DEU,53.867,8.717,1843-05-01,6533.0  
4525,9,MAASSLUIS,NLD,51.918,4.25,1848-02-01,6880.0  
4526,9,MAASSLUIS,NLD,51.918,4.25,1848-03-01,6700.0  
4527,9,MAASSLUIS,NLD,51.918,4.25,1848-04-01,6775.0  
4528,9,MAASSLUIS,NLD,51.918,4.25,1848-05-01,6580.0  
4529,9,MAASSLUIS,NLD,51.918,4.25,1848-06-01,6685.0  
6540,8,WISMAR 2,DEU,53.898999999999994,11.458,1848-07-01,6957.0  
6541,8,WISMAR 2,DEU,53.898999999999994,11.458,1848-08-01,6944.0  
6542,8,WISMAR 2,DEU,53.898999999999994,11.458,1848-09-01,7084.0  
6543,8,WISMAR 2,DEU,53.898999999999994,11.458,1848-10-01,6898.0  
6544,8,WISMAR 2,DEU,53.898999999999994,11.458,1848-11-01,6859.0  
8538,10,SAN FRANCISCO,USA,37.806999999999995,-122.465,1854-07-01,6909.0  
8539,10,SAN FRANCISCO,USA,37.806999999999995,-122.465,1854-08-01,6940.0  
8540,10,SAN FRANCISCO,USA,37.806999999999995,-122.465,1854-09-01,6961.0  
8541,10,SAN FRANCISCO,USA,37.806999999999995,-122.465,1854-10-01,6952.0  
8542,10,SAN FRANCISCO,USA,37.806999999999995,-122.465,1854-11-01,6952.0  

有很多重复的信息,我想要一个这样的JSON:

[
{
    "ID": 1,
    "Location": "BREST",
    "Latitude": 48.383,
    "Longitude": -4.495,
    "Country": "FRA",
    "Tide-Data": {
        "1807-02-01": 6931,
        "1807-03-01": 6896,
        "1807-04-01": 6953,
        "1807-05-01": 7043
    }
},
{
    "ID": 5,
    "Location": "HOLYHEAD",
    "Latitude": 53.31399999999999,
    "Longitude": -4.62,
    "Country": "GBR",
    "Tide-Data": {
        "1807-02-01": 6931,
        "1807-03-01": 6896,
        "1807-04-01": 6953,
        "1807-05-01": 7043
    }
}
]

我怎样才能做到这一点?

编辑:

再现数据帧的代码:

# input json
json_str = '[{"ID":1,"Location":"BREST","Country":"FRA","Latitude":48.383,"Longitude":-4.495,"timestamp":"1807-01-01","tide":6905},{"ID":1,"Location":"BREST","Country":"FRA","Latitude":48.383,"Longitude":-4.495,"timestamp":"1807-02-01","tide":6931},{"ID":1,"Location":"BREST","Country":"DEU","Latitude":48.383,"Longitude":-4.495,"timestamp":"1807-03-01","tide":6896},{"ID":7,"Location":"CUXHAVEN 2","Country":"DEU","Latitude":53.867,"Longitude":-8.717,"timestamp":"1843-01-01","tide":7093},{"ID":7,"Location":"CUXHAVEN 2","Country":"DEU","Latitude":53.867,"Longitude":-8.717,"timestamp":"1843-02-01","tide":6688},{"ID":7,"Location":"CUXHAVEN 2","Country":"DEU","Latitude":53.867,"Longitude":-8.717,"timestamp":"1843-03-01","tide":6493}]'

# load json object
data_list = json.loads(json_str)

# create dataframe
df = json_normalize(data_list, None, None)
MaxU:

更新:

j = (df.groupby(['ID','Location','Country','Latitude','Longitude'], as_index=False)
             .apply(lambda x: x[['timestamp','tide']].to_dict('r'))
             .reset_index()
             .rename(columns={0:'Tide-Data'})
             .to_json(orient='records'))

结果(格式化):

In [103]: print(json.dumps(json.loads(j), indent=2, sort_keys=True))
[
  {
    "Country": "FRA",
    "ID": 1,
    "Latitude": 48.383,
    "Location": "BREST",
    "Longitude": -4.495,
    "Tide-Data": [
      {
        "tide": 6905.0,
        "timestamp": "1807-01-01"
      },
      {
        "tide": 6931.0,
        "timestamp": "1807-02-01"
      },
      {
        "tide": 6896.0,
        "timestamp": "1807-03-01"
      },
      {
        "tide": 6953.0,
        "timestamp": "1807-04-01"
      },
      {
        "tide": 7043.0,
        "timestamp": "1807-05-01"
      }
    ]
  },
  {
    "Country": "DEU",
    "ID": 7,
    "Latitude": 53.867,
    "Location": "CUXHAVEN 2",
    "Longitude": 8.717,
    "Tide-Data": [
      {
        "tide": 7093.0,
        "timestamp": "1843-01-01"
      },
      {
        "tide": 6688.0,
        "timestamp": "1843-02-01"
      },
      {
        "tide": 6493.0,
        "timestamp": "1843-03-01"
      },
      {
        "tide": 6723.0,
        "timestamp": "1843-04-01"
      },
      {
        "tide": 6533.0,
        "timestamp": "1843-05-01"
      }
    ]
  },
  {
    "Country": "DEU",
    "ID": 8,
    "Latitude": 53.899,
    "Location": "WISMAR 2",
    "Longitude": 11.458,
    "Tide-Data": [
      {
        "tide": 6957.0,
        "timestamp": "1848-07-01"
      },
      {
        "tide": 6944.0,
        "timestamp": "1848-08-01"
      },
      {
        "tide": 7084.0,
        "timestamp": "1848-09-01"
      },
      {
        "tide": 6898.0,
        "timestamp": "1848-10-01"
      },
      {
        "tide": 6859.0,
        "timestamp": "1848-11-01"
      }
    ]
  },
  {
    "Country": "NLD",
    "ID": 9,
    "Latitude": 51.918,
    "Location": "MAASSLUIS",
    "Longitude": 4.25,
    "Tide-Data": [
      {
        "tide": 6880.0,
        "timestamp": "1848-02-01"
      },
      {
        "tide": 6700.0,
        "timestamp": "1848-03-01"
      },
      {
        "tide": 6775.0,
        "timestamp": "1848-04-01"
      },
      {
        "tide": 6580.0,
        "timestamp": "1848-05-01"
      },
      {
        "tide": 6685.0,
        "timestamp": "1848-06-01"
      }
    ]
  },
  {
    "Country": "USA",
    "ID": 10,
    "Latitude": 37.807,
    "Location": "SAN FRANCISCO",
    "Longitude": -122.465,
    "Tide-Data": [
      {
        "tide": 6909.0,
        "timestamp": "1854-07-01"
      },
      {
        "tide": 6940.0,
        "timestamp": "1854-08-01"
      },
      {
        "tide": 6961.0,
        "timestamp": "1854-09-01"
      },
      {
        "tide": 6952.0,
        "timestamp": "1854-10-01"
      },
      {
        "tide": 6952.0,
        "timestamp": "1854-11-01"
      }
    ]
  }
]

旧答案:

你可以用它做的groupby()apply()to_json()方法:

j = (df.groupby(['ID','Location','Country','Latitude','Longitude'], as_index=False)
       .apply(lambda x: dict(zip(x.timestamp,x.tide)))
       .reset_index()
       .rename(columns={0:'Tide-Data'})
       .to_json(orient='records'))

输出:

In [112]: print(json.dumps(json.loads(j), indent=2, sort_keys=True))
[
  {
    "Country": "FRA",
    "ID": 1,
    "Latitude": 48.383,
    "Location": "BREST",
    "Longitude": -4.495,
    "Tide-Data": {
      "1807-01-01": 6905.0,
      "1807-02-01": 6931.0,
      "1807-03-01": 6896.0,
      "1807-04-01": 6953.0,
      "1807-05-01": 7043.0
    }
  },
  {
    "Country": "DEU",
    "ID": 7,
    "Latitude": 53.867,
    "Location": "CUXHAVEN 2",
    "Longitude": 8.717,
    "Tide-Data": {
      "1843-01-01": 7093.0,
      "1843-02-01": 6688.0,
      "1843-03-01": 6493.0,
      "1843-04-01": 6723.0,
      "1843-05-01": 6533.0
    }
  },
  {
    "Country": "DEU",
    "ID": 8,
    "Latitude": 53.899,
    "Location": "WISMAR 2",
    "Longitude": 11.458,
    "Tide-Data": {
      "1848-07-01": 6957.0,
      "1848-08-01": 6944.0,
      "1848-09-01": 7084.0,
      "1848-10-01": 6898.0,
      "1848-11-01": 6859.0
    }
  },
  {
    "Country": "NLD",
    "ID": 9,
    "Latitude": 51.918,
    "Location": "MAASSLUIS",
    "Longitude": 4.25,
    "Tide-Data": {
      "1848-02-01": 6880.0,
      "1848-03-01": 6700.0,
      "1848-04-01": 6775.0,
      "1848-05-01": 6580.0,
      "1848-06-01": 6685.0
    }
  },
  {
    "Country": "USA",
    "ID": 10,
    "Latitude": 37.807,
    "Location": "SAN FRANCISCO",
    "Longitude": -122.465,
    "Tide-Data": {
      "1854-07-01": 6909.0,
      "1854-08-01": 6940.0,
      "1854-09-01": 6961.0,
      "1854-10-01": 6952.0,
      "1854-11-01": 6952.0
    }
  }
]

PS,如果您不关心标识,则可以直接写入JSON文件:

(df.groupby(['ID','Location','Country','Latitude','Longitude'], as_index=False)
   .apply(lambda x: dict(zip(x.timestamp,x.tide)))
   .reset_index()
   .rename(columns={0:'Tide-Data'})
   .to_json('/path/to/file_name.json', orient='records'))

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