pandas.io.json.json_normalize 非常嵌套 json

pandas.io.json.json_normalize with very nested json

我一直在尝试 normalize 一个非常嵌套的 json 文件,稍后我将对其进行分析。我正在努力解决的问题是如何深入到不止一个层次来规范化。

我浏览了 pandas.io.json.json_normalize 文档,因为它完全符合我的要求。

我已经能够规范化其中的一部分,现在理解了字典是如何工作的,但我仍然不在那里。

使用下面的代码我只能获得第一级。

import json
import pandas as pd
from pandas.io.json import json_normalize

with open('authors_sample.json') as f:
    d = json.load(f)

raw = json_normalize(d['hits']['hits'])

authors = json_normalize(data = d['hits']['hits'], 
                         record_path = '_source', 
                         meta = ['_id', ['_source', 'journal'], ['_source', 'title'], 
                                 ['_source', 'normalized_venue_name']
                                 ])

我试图用下面的代码 'dig' 进入 'authors' 字典,但是 record_path = ['_source', 'authors'] 抛出了我 TypeError: string indices must be integers。据我了解 json_normalize 逻辑应该是好的,但我仍然不太明白如何使用 dictlist.[=23 深入研究 json =]

我什至通过了这个简单的 example

authors = json_normalize(data = d['hits']['hits'], 
                         record_path = ['_source', 'authors'], 
                         meta = ['_id', ['_source', 'journal'], ['_source', 'title'], 
                                 ['_source', 'normalized_venue_name']
                                 ])

下面是 json 文件的一部分(5 条记录)。

{u'_shards': {u'failed': 0, u'successful': 5, u'total': 5},
 u'hits': {u'hits': [{u'_id': u'7CB3F2AD',
    u'_index': u'scibase_listings',
    u'_score': 1.0,
    u'_source': {u'authors': None,
     u'deleted': 0,
     u'description': None,
     u'doi': u'',
     u'is_valid': 1,
     u'issue': None,
     u'journal': u'Physical Review Letters',
     u'link': None,
     u'meta_description': None,
     u'meta_keywords': None,
     u'normalized_venue_name': u'phys rev lett',
     u'pages': None,
     u'parent_keywords': [u'Chromatography',
      u'Quantum mechanics',
      u'Particle physics',
      u'Quantum field theory',
      u'Analytical chemistry',
      u'Quantum chromodynamics',
      u'Physics',
      u'Mass spectrometry',
      u'Chemistry'],
     u'pub_date': u'1987-03-02 00:00:00',
     u'pubtype': None,
     u'rating_avg_weighted': 0,
     u'rating_clarity': 0.0,
     u'rating_clarity_weighted': 0.0,
     u'rating_innovation': 0.0,
     u'rating_innovation_weighted': 0.0,
     u'rating_num_weighted': 0,
     u'rating_reproducability': 0,
     u'rating_reproducibility_weighted': 0.0,
     u'rating_versatility': 0.0,
     u'rating_versatility_weighted': 0.0,
     u'review_count': 0,
     u'tag': [u'mass spectra', u'elementary particles', u'bound states'],
     u'title': u'Evidence for a new meson: A quasinuclear NN-bar bound state',
     u'userAvg': 0.0,
     u'user_id': None,
     u'venue_name': u'Physical Review Letters',
     u'views_count': 0,
     u'volume': None},
    u'_type': u'listing'},
   {u'_id': u'7AF8EBC3',
    u'_index': u'scibase_listings',
    u'_score': 1.0,
    u'_source': {u'authors': [{u'affiliations': [u'Punjabi University'],
       u'author_id': u'780E3459',
       u'author_name': u'munish puri'},
      {u'affiliations': [u'Punjabi University'],
       u'author_id': u'48D92C79',
       u'author_name': u'rajesh dhaliwal'},
      {u'affiliations': [u'Punjabi University'],
       u'author_id': u'7D9BD37C',
       u'author_name': u'r s singh'}],
     u'deleted': 0,
     u'description': None,
     u'doi': u'',
     u'is_valid': 1,
     u'issue': None,
     u'journal': u'Journal of Industrial Microbiology & Biotechnology',
     u'link': None,
     u'meta_description': None,
     u'meta_keywords': None,
     u'normalized_venue_name': u'j ind microbiol biotechnol',
     u'pages': None,
     u'parent_keywords': [u'Nuclear medicine',
      u'Psychology',
      u'Hydrology',
      u'Chromatography',
      u'X-ray crystallography',
      u'Nuclear fusion',
      u'Medicine',
      u'Fluid dynamics',
      u'Thermodynamics',
      u'Physics',
      u'Gas chromatography',
      u'Radiobiology',
      u'Engineering',
      u'Organic chemistry',
      u'High-performance liquid chromatography',
      u'Chemistry',
      u'Organic synthesis',
      u'Psychotherapist'],
     u'pub_date': u'2008-04-04 00:00:00',
     u'pubtype': None,
     u'rating_avg_weighted': 0,
     u'rating_clarity': 0.0,
     u'rating_clarity_weighted': 0.0,
     u'rating_innovation': 0.0,
     u'rating_innovation_weighted': 0.0,
     u'rating_num_weighted': 0,
     u'rating_reproducability': 0,
     u'rating_reproducibility_weighted': 0.0,
     u'rating_versatility': 0.0,
     u'rating_versatility_weighted': 0.0,
     u'review_count': 0,
     u'tag': [u'flow rate',
      u'operant conditioning',
      u'packed bed reactor',
      u'immobilized enzyme',
      u'specific activity'],
     u'title': u'Development of a stable continuous flow immobilized enzyme reactor for the hydrolysis of inulin',
     u'userAvg': 0.0,
     u'user_id': None,
     u'venue_name': u'Journal of Industrial Microbiology & Biotechnology',
     u'views_count': 0,
     u'volume': None},
    u'_type': u'listing'},
   {u'_id': u'7521A721',
    u'_index': u'scibase_listings',
    u'_score': 1.0,
    u'_source': {u'authors': [{u'author_id': u'7FF872BC',
       u'author_name': u'barbara eileen ryan'}],
     u'deleted': 0,
     u'description': None,
     u'doi': u'',
     u'is_valid': 1,
     u'issue': None,
     u'journal': u'The American Historical Review',
     u'link': None,
     u'meta_description': None,
     u'meta_keywords': None,
     u'normalized_venue_name': u'american historical review',
     u'pages': None,
     u'parent_keywords': [u'Social science',
      u'Politics',
      u'Sociology',
      u'Law'],
     u'pub_date': u'1992-01-01 00:00:00',
     u'pubtype': None,
     u'rating_avg_weighted': 0,
     u'rating_clarity': 0.0,
     u'rating_clarity_weighted': 0.0,
     u'rating_innovation': 0.0,
     u'rating_innovation_weighted': 0.0,
     u'rating_num_weighted': 0,
     u'rating_reproducability': 0,
     u'rating_reproducibility_weighted': 0.0,
     u'rating_versatility': 0.0,
     u'rating_versatility_weighted': 0.0,
     u'review_count': 0,
     u'tag': [u'social movements'],
     u'title': u"Feminism and the women's movement : dynamics of change in social movement ideology, and activism",
     u'userAvg': 0.0,
     u'user_id': None,
     u'venue_name': u'The American Historical Review',
     u'views_count': 0,
     u'volume': None},
    u'_type': u'listing'},
   {u'_id': u'7DAEB9A4',
    u'_index': u'scibase_listings',
    u'_score': 1.0,
    u'_source': {u'authors': [{u'author_id': u'0299B8E9',
       u'author_name': u'fraser j harbutt'}],
     u'deleted': 0,
     u'description': None,
     u'doi': u'',
     u'is_valid': 1,
     u'issue': None,
     u'journal': u'The American Historical Review',
     u'link': None,
     u'meta_description': None,
     u'meta_keywords': None,
     u'normalized_venue_name': u'american historical review',
     u'pages': None,
     u'parent_keywords': [u'Superconductivity',
      u'Nuclear fusion',
      u'Geology',
      u'Chemistry',
      u'Metallurgy'],
     u'pub_date': u'1988-01-01 00:00:00',
     u'pubtype': None,
     u'rating_avg_weighted': 0,
     u'rating_clarity': 0.0,
     u'rating_clarity_weighted': 0.0,
     u'rating_innovation': 0.0,
     u'rating_innovation_weighted': 0.0,
     u'rating_num_weighted': 0,
     u'rating_reproducability': 0,
     u'rating_reproducibility_weighted': 0.0,
     u'rating_versatility': 0.0,
     u'rating_versatility_weighted': 0.0,
     u'review_count': 0,
     u'tag': [u'iron'],
     u'title': u'The iron curtain : Churchill, America, and the origins of the Cold War',
     u'userAvg': 0.0,
     u'user_id': None,
     u'venue_name': u'The American Historical Review',
     u'views_count': 0,
     u'volume': None},
    u'_type': u'listing'},
   {u'_id': u'7B3236C5',
    u'_index': u'scibase_listings',
    u'_score': 1.0,
    u'_source': {u'authors': [{u'author_id': u'7DAB7B72',
       u'author_name': u'richard m freeland'}],
     u'deleted': 0,
     u'description': None,
     u'doi': u'',
     u'is_valid': 1,
     u'issue': None,
     u'journal': u'The American Historical Review',
     u'link': None,
     u'meta_description': None,
     u'meta_keywords': None,
     u'normalized_venue_name': u'american historical review',
     u'pages': None,
     u'parent_keywords': [u'Political Science', u'Economics'],
     u'pub_date': u'1985-01-01 00:00:00',
     u'pubtype': None,
     u'rating_avg_weighted': 0,
     u'rating_clarity': 0.0,
     u'rating_clarity_weighted': 0.0,
     u'rating_innovation': 0.0,
     u'rating_innovation_weighted': 0.0,
     u'rating_num_weighted': 0,
     u'rating_reproducability': 0,
     u'rating_reproducibility_weighted': 0.0,
     u'rating_versatility': 0.0,
     u'rating_versatility_weighted': 0.0,
     u'review_count': 0,
     u'tag': [u'foreign policy'],
     u'title': u'The Truman Doctrine and the origins of McCarthyism : foreign policy, domestic politics, and internal security, 1946-1948',
     u'userAvg': 0.0,
     u'user_id': None,
     u'venue_name': u'The American Historical Review',
     u'views_count': 0,
     u'volume': None},
    u'_type': u'listing'}],
  u'max_score': 1.0,
  u'total': 36429433},
 u'timed_out': False,
 u'took': 170}

In the pandas example (below) what do the brackets mean? Is there a logic to be followed to go deeper with the []. [...]

result = json_normalize(data, 'counties', ['state', 'shortname', ['info', 'governor']])

['state', 'shortname', ['info', 'governor']] 值中的每个字符串或字符串列表都是要包含的元素的路径,除了selected 行。第二个参数 json_normalize() 参数(record_path,在文档示例中设置为 'counties')告诉函数如何从输入数据结构中 select 组成行的元素输出和 meta 路径添加了进一步的元数据,这些元数据将包含在每一行中。如果愿意,可以将这些视为 table 加入数据库。

the US States documentation example 的输入在一个列表中有两个词典,并且这两个词典都有一个 counties 键引用另一个字典列表:

>>> data = [{'state': 'Florida',
...          'shortname': 'FL',
...         'info': {'governor': 'Rick Scott'},
...         'counties': [{'name': 'Dade', 'population': 12345},
...                      {'name': 'Broward', 'population': 40000},
...                      {'name': 'Palm Beach', 'population': 60000}]},
...         {'state': 'Ohio',
...          'shortname': 'OH',
...          'info': {'governor': 'John Kasich'},
...          'counties': [{'name': 'Summit', 'population': 1234},
...                       {'name': 'Cuyahoga', 'population': 1337}]}]
>>> pprint(data[0]['counties'])
[{'name': 'Dade', 'population': 12345},
 {'name': 'Broward', 'population': 40000},
 {'name': 'Palm Beach', 'population': 60000}]
>>> pprint(data[1]['counties'])
[{'name': 'Summit', 'population': 1234},
 {'name': 'Cuyahoga', 'population': 1337}]

它们之间有 5 行数据用于输出:

>>> json_normalize(data, 'counties')
         name  population
0        Dade       12345
1     Broward       40000
2  Palm Beach       60000
3      Summit        1234
4    Cuyahoga        1337

meta 参数然后命名一些 next 到那些 counties 列表的元素,然后将这些元素单独合并。第一个 data[0] 字典中那些 meta 元素的值分别是 ('Florida', 'FL', 'Rick Scott')data[1] 的值是 ('Ohio', 'OH', 'John Kasich'),所以你会看到附加的这些值到来自同一顶级词典的 counties 行,分别重复 3 次和 2 次:

>>> data[0]['state'], data[0]['shortname'], data[0]['info']['governor']
('Florida', 'FL', 'Rick Scott')
>>> data[1]['state'], data[1]['shortname'], data[1]['info']['governor']
('Ohio', 'OH', 'John Kasich')
>>> json_normalize(data, 'counties', ['state', 'shortname', ['info', 'governor']])
         name  population    state shortname info.governor
0        Dade       12345  Florida        FL    Rick Scott
1     Broward       40000  Florida        FL    Rick Scott
2  Palm Beach       60000  Florida        FL    Rick Scott
3      Summit        1234     Ohio        OH   John Kasich
4    Cuyahoga        1337     Ohio        OH   John Kasich

因此,如果您为 meta 参数传入一个列表,则列表中的每个元素都是一个单独的路径,并且每个单独的路径都标识要添加到输出中的行的数据。

您的示例JSON中,只有少数嵌套列表需要使用第一个参数提升,就像示例中的'counties'一样。该数据结构中唯一的例子是嵌套的 'authors' 键;您必须提取每个 ['_source', 'authors'] 路径,之后您可以从父对象添加其他键以增加这些行。

第二个 meta 参数然后从最外面的对象中拉入 _id 键,然后是嵌套的 ['_source', 'title']['_source', 'journal'] 嵌套路径。

record_path 参数以 authors 列表为起点,它们看起来像:

>>> d['hits']['hits'][0]['_source']['authors']   # this value is None, and is skipped
>>> d['hits']['hits'][1]['_source']['authors']
[{'affiliations': ['Punjabi University'],
  'author_id': '780E3459',
  'author_name': 'munish puri'},
 {'affiliations': ['Punjabi University'],
  'author_id': '48D92C79',
  'author_name': 'rajesh dhaliwal'},
 {'affiliations': ['Punjabi University'],
  'author_id': '7D9BD37C',
  'author_name': 'r s singh'}]
>>> d['hits']['hits'][2]['_source']['authors']
[{'author_id': '7FF872BC',
  'author_name': 'barbara eileen ryan'}]
>>> # etc.

所以给你以下几行:

>>> json_normalize(d['hits']['hits'], ['_source', 'authors'])
           affiliations author_id          author_name
0  [Punjabi University]  780E3459          munish puri
1  [Punjabi University]  48D92C79      rajesh dhaliwal
2  [Punjabi University]  7D9BD37C            r s singh
3                   NaN  7FF872BC  barbara eileen ryan
4                   NaN  0299B8E9     fraser j harbutt
5                   NaN  7DAB7B72   richard m freeland

然后我们可以使用第三个 meta 参数添加更多列,例如 _id_source.title_source.journal,使用 ['_id', ['_source', 'journal'], ['_source', 'title']]:

>>> json_normalize(
...     data['hits']['hits'],
...     ['_source', 'authors'],
...     ['_id', ['_source', 'journal'], ['_source', 'title']]
... )
           affiliations author_id          author_name       _id   \
0  [Punjabi University]  780E3459          munish puri  7AF8EBC3  
1  [Punjabi University]  48D92C79      rajesh dhaliwal  7AF8EBC3
2  [Punjabi University]  7D9BD37C            r s singh  7AF8EBC3
3                   NaN  7FF872BC  barbara eileen ryan  7521A721
4                   NaN  0299B8E9     fraser j harbutt  7DAEB9A4
5                   NaN  7DAB7B72   richard m freeland  7B3236C5

                                     _source.journal
0  Journal of Industrial Microbiology & Biotechno...
1  Journal of Industrial Microbiology & Biotechno...
2  Journal of Industrial Microbiology & Biotechno...
3                     The American Historical Review
4                     The American Historical Review
5                     The American Historical Review

                                       _source.title  \
0  Development of a stable continuous flow immobi...
1  Development of a stable continuous flow immobi...
2  Development of a stable continuous flow immobi...
3  Feminism and the women's movement : dynamics o...
4  The iron curtain : Churchill, America, and the...
5  The Truman Doctrine and the origins of McCarth...

您还可以查看库 flatten_json,它不需要您像 json_normalize:[=12 那样编写列层次结构=]

from flatten_json import flatten

data = d['hits']['hits']
dict_flattened = (flatten(record, '.') for record in data)
df = pd.DataFrame(dict_flattened)
print(df)

https://github.com/amirziai/flatten