18

I have a text file which I read in. This is a log file so it follows a particular pattern. I need to create a JSON ultimately, but from researching this problem, once it is in a dict it will be a matter of using json.loads() or json.dumps().

A sample of the text file is below.

INFO:20180606_141527:submit:is_test=False
INFO:20180606_141527:submit:username=Mary
INFO:20180606_141527:env:sys.platform=linux2
INFO:20180606_141527:env:os.name=ubuntu

The dict structure which I am ultimatly looking for is

{
  "INFO": {
    "submit": {
      "is_test": false,
      "username": "Mary"
    },
    "env": {
      "sys.platform": "linux2",
      "os.name": "ubuntu"
    }
  }
}

I am ignoring the timestamp information in each list for now.

This is a snippet of the code I am using,

import csv
tree_dict = {}
with open('file.log') as file:
    for row in file:
        for key in reversed(row.split(":")):
            tree_dict = {key: tree_dict}

Which results in an undesired output,

{'INFO': {'20180606_141527': {'submit': {'os.name=posix\n': {'INFO': {'20180606_141527': {'submit': {'sys.platform=linux2\n': {'INFO': {'20180606_141527': {'submit': {'username=a227874\n': {'INFO': {'20180606_141527': {'submit': {'is_test=False\n': {}}}}}}}}}}}}}}}}}

I need to dynamically populate the dict because I don't know the actual field/key names.

2
  • how do you want to handle multiple logs/dicts? give us an example with at least 2 logs
    – ted
    Jul 10, 2018 at 6:29
  • The question seems unrelated to the title Jul 10, 2018 at 22:26

7 Answers 7

14
with open('demo.txt') as f:
    lines = f.readlines()

dct = {}

for line in lines:
    # param1 == INFO
    # param2 == submit or env
    # params3 == is_test=False etc.
    param1, _, param2, params3 = line.strip().split(':')

    # create dct[param1] = {} if it is not created
    dct.setdefault(param1, {})

    # create dct[param1][param2] = {} if it is no created
    dct[param1].setdefault(param2, {})

    # for example params3 == is_test=False
    # split it by '=' and now we unpack it
    # k == is_test
    # v == False
    k, v = params3.split('=')

    # and update our `dict` with the new values
    dct[param1][param2].update({k: v})

print(dct)

Output

{
'INFO': {
    'submit': {
        'is_test': 'False', 'username': 'Mary'
        }, 
    'env': {
        'sys.platform': 'linux2', 'os.name': 'ubuntu'
        }
    }
}  
1
  • You could use setdefault to get rid of the two if checks.
    – tobias_k
    Jul 10, 2018 at 8:37
7

This is one of the rare cases where recursion in Python seems to be appropriate and helpful. The following function adds a value to the hierarchical dictionary d specified by the list of keys:

def add_to_dict(d, keys, value): 
    if len(keys) == 1: # The last key
        d[keys[0]] = value
        return
    if keys[0] not in d:
        d[keys[0]] = {} # Create a new subdict
    add_to_dict(d[keys[0]], keys[1:], value)

The function works with the dictionaries of arbitrary depth. The rest is just the matter of calling the function:

d = {}
for line in file:
    keys, value = line.split("=")
    keys = keys.split(":")
    add_to_dict(d, keys, value.strip())

Result:

{'INFO': {'20180606_141527': {
                       'submit': {'is_test': 'False', 
                                  'username': 'Mary'}, 
                       'env': {'sys.platform': 'linux2', 
                               'os.name': 'ubuntu'}}}}

You can modify the code to exclude certain levels (like the timestamp).

4

You could use a nested collections.defaultdict() here:

from collections import defaultdict
from pprint import pprint

d = defaultdict(lambda: defaultdict(dict))
with open('sample.txt') as in_file:
    for line in in_file:
        info, _, category, pair = line.strip().split(':')
        props, value = pair.split('=')
        d[info][category][props] = value

pprint(d)

Which gives the following:

defaultdict(<function <lambda> at 0x7ff8a341aea0>,
            {'INFO': defaultdict(<class 'dict'>,
                                 {'env': {'os.name': 'ubuntu',
                                          'sys.platform': 'linux2'},
                                  'submit': {'is_test': 'False',
                                             'username': 'Mary'}})})

Note: defaultdict() is a subclass of the builtin dict, so their is not reason to convert it to dict in the end result. Additionally, defaultdict() can also be serialized to JSON with json.dumps().

1
  • 1
    You might add that for all practial purposes a defaultdict behaves like a normal dict and in particular can also be serialized to JSON.
    – tobias_k
    Jul 10, 2018 at 8:35
3

You can use itertools.groupby:

import itertools, re
content = [re.split('\=|:', i.strip('\n')) for i in open('filename.txt')]
new_content = [[a, *c] for a, _, *c in content]
def group_vals(d):
  new_d = [[a, [c for _, *c in b]] for a, b in itertools.groupby(sorted(d, key=lambda x:x[0]), key=lambda x:x[0])]
  return {a:b[0][0] if len(b) ==1 else group_vals(b) for a, b in new_d}

import json
print(json.dumps(group_vals(new_content), indent=4))

Output:

{
 "INFO": {
     "env": {
        "os.name": "ubuntu",
        "sys.platform": "linux2"
     },
     "submit": {
         "is_test": "False",
         "username": "Mary"
     }
  }
}
0

Check for the presence of keys:

import csv
import json

tree_dict = {}
with open('file.log') as file:
    tree_dict = {}
    for row in file:
        keys = row.split(":")

        if keys[0] not in tree_dict:
            tree_dict[keys[0]] = {}

        if keys[-2] not in tree_dict[keys[0]]:
            tree_dict[keys[0]][keys[-2]] = {}

        key, value = keys[-1].split("=")

        if value == "False":
            value = False
        if value == "True":
            value = True

        tree_dict[keys[0]][keys[-2]][key] = value

dumped = json.dumps(tree_dict)
0
import re
from functools import reduce

with open('file.txt') as f:
    lines = f.readlines()

def rec_merge(d1, d2):
    for k, v in d1.items():
        if k in d2:
            d2[k] = rec_merge(v, d2[k])
    d3 = d1.copy()
    d3.update(d2)
    return d3

lst_of_tup = re.findall(r'^([^:]*):[\d_]+:([^:]*):([^=]*)=(.*)$', lines, re.MULTILINE)
lst_of_dct = [reduce(lambda x,y: {y:x}, reversed(t)) for t in lst_of_tup]

dct = reduce(rec_merge, lst_of_dct)

pprint(dct)
# {'INFO': {'env': {'os.name': 'ubuntu', 'sys.platform': 'linux2'},
#           'submit': {'is_test': 'False', 'username': 'Mary'}}}
0

Source :

import os

with open('file.log') as file:
    tree_dict = {}
    is_test = False
    username = ""              
    sysplatform = ""
    osname = ""
    for row in file: 
        row = row.rstrip('\n')
        for key in reversed(row.split(":")):            
            if not key.find('is_test'):
                is_test = key.split('=')[1]
            elif not key.find('username'):
                username =key.split('=')[1]
            elif not key.find('sys.platform'):
                sysplatform = key.split('=')[1]
            elif not key.find('os.name'):
                osname = key.split('=')[1]    

     tree_dict = {
         "INFO": {
              "submit": {
                       "is_test": is_test,
                        "username": username
              },
              "env": {
                      "sys.platform":  sysplatform,
                      "os.name": osname
             }
        }
    }
    print(tree_dict)

Result :

 {'INFO': {'submit': {'is_test': 'False', 'username': 'Mary'}, 'env': {'sys.platform': 'linux2', 'os.name': 'ubuntu'}}}

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.