62

The hmset function can set the value of each field, but I found that if the value itself is a complex structured object, the value return from hget is a serialized string, not the original object

e.g

images= [{'type':'big', 'url':'....'},
     {'type':'big', 'url':'....'},
     {'type':'big', 'url':'....'}]   

redis = Redis()
redis.hset('photo:1', 'images', images)

i = redis.hget('photo:1', 'images')
print type(i)

the type of i is a string, not a python object, is there any way to solve this problem besides manually parse each fields?

  • 1
    Most answers try to solve the problem by serializing the complex object into a string, either by json or pickle. However, it's very inefficient when you try to modify the complex object. Instead, you can use redis-protobuf to save nested data structures to Redis. Check this answer for an example. – for_stack Sep 9 '19 at 15:08
51

You can't create nested structures in Redis, meaning you can't (for example) store a native redis list inside a native redis hash-map.

If you really need nested structures, you might want to just store a JSON-blob (or something similar) instead. Another option is to store an "id"/key to a different redis object as the value of the map key, but that requires multiple calls to the server to get the full object.

| improve this answer | |
97

Actually, you can store python objects in redis using the built-in module pickle.

Here is example.

import pickle
import redis

r = redis.StrictRedis(host='localhost', port=6379, db=0)
obj = ExampleObject()
pickled_object = pickle.dumps(obj)
r.set('some_key', pickled_object)
unpacked_object = pickle.loads(r.get('some_key'))
obj == unpacked_object
| improve this answer | |
  • 32
    This is dangerous: unpickling can execute code. The JSON solution is more robust. – Eric O Lebigot Mar 15 '14 at 15:55
  • 20
    @EOL i don't think that your redis is untrusted source. You can not stop people from shooting themselves in the foot – Kyrylo Perevozchikov Jul 16 '14 at 14:58
  • 3
    @KyryloPerevozchikov: OK, fair enough, since the original question indeed connects locally. No downvote from me. The local Redis might still be a local copy of an untrusted source, so I'll leave my comment above, it cannot hurt. :) – Eric O Lebigot Jul 17 '14 at 4:51
  • 2
    It's better to use cPickle than pickle, because cPickle has better performance. – Jack Nov 5 '14 at 23:00
  • 4
    @EOL: It seems to me JSON is preferred when possible, but there are a great number of objects that cannot be serialized into JSON. – CivFan Sep 8 '15 at 22:59
46

JSON Example:

import json
import redis

r = redis.StrictRedis(host='localhost', port=6379, db=0)

images= [
    {'type':'big', 'url':'....'},
    {'type':'big', 'url':'....'},
    {'type':'big', 'url':'....'},
]

json_images = json.dumps(images)
r.set('images', json_images)
unpacked_images = json.loads(r.get('images'))
images == unpacked_images

python 3:

unpacked_images = json.loads(r.get('images').decode('utf-8'))
images == unpacked_images
| improve this answer | |
  • is it normal to get btyes object from redis.get()? i got b'['something']' from it in python 3 – shangsunset Jan 20 '16 at 16:08
  • 5
    @shangyeshen Looks like json.loads() doesn't play nice with bytes objects in python3. You'll need to decode the bytes result from redis.get() into a python3 str. See the new edit. – CivFan Jan 20 '16 at 17:10
6

I created a library, SubRedis, which lets you create much more complex structures/hierarchies in redis. If you give it a redis instance and a prefix, it gives you a nearly fully capable and independent redis instance.

redis = Redis()
photoRedis = SubRedis("photo:%s" % photoId, redis)
photoRedis.hmset('image0', images[0])
photoRedis.hmset('image1', images[1])
...

SubRedis just ends up prepending the string passed into it as a prefix onto the flat redis data structure. I find this to be a convenient wrapper for a pattern I end up doing a lot in redis -- prepending some id to nest some data.

| improve this answer | |
5

Here is a simple wrapper around Redis which pickles/unpickles data structures:

from redis import Redis
from collections import MutableMapping
from pickle import loads, dumps


class RedisStore(MutableMapping):

    def __init__(self, engine):
        self._store = Redis.from_url(engine)

    def __getitem__(self, key):
        return loads(self._store[dumps(key)])

    def __setitem__(self, key, value):
        self._store[dumps(key)] = dumps(value)

    def __delitem__(self, key):
        del self._store[dumps(key)]

    def __iter__(self):
        return iter(self.keys())

    def __len__(self):
        return len(self._store.keys())

    def keys(self):
        return [loads(x) for x in self._store.keys()]

    def clear(self):
        self._store.flushdb()


d = RedisStore('redis://localhost:6379/0')
d['a'] = {'b': 1, 'c': 10}
print repr(d.items())
# this will not work: (it updates a temporary copy and not the real data)
d['a']['b'] = 2
print repr(d.items())
# this is how to update sub-structures:
t = d['a']
t['b'] = 2
d['a'] = t
print repr(d.items())
del d['a']

# Here is another way to implement dict-of-dict eg d['a']['b']
d[('a', 'b')] = 1
d[('a', 'b')] = 2
print repr(d.items())
# Hopefully you do not need the equivalent of d['a']
print repr([{x[0][1]: x[1]} for x in d.items() if x[0][0] == 'a'])
del d[('a', 'b')]
del d[('a', 'c')]

If you prefer plaintext-readable data in redis (pickle stores a binary version of it), you can replace pickle.dumps with repr and pickle.loads with ast.literal_eval. For json, use json.dumps and json.loads.

If you always use keys which are a simple string, you can remove the pickling from the key.

| improve this answer | |
3

You can use RedisWorks library.

pip install redisworks

>>> from redisworks import Root
>>> root = Root()
>>> root.something = {1:"a", "b": {2: 2}}  # saves it as Hash
>>> print(root.something)  # loads it from Redis
{'b': {2: 2}, 1: 'a'}
>>> root.something['b'][2]
2

It converts python types to Redis types and vice-versa.

>>> root.sides = [10, [1, 2]]  # saves it as list in Redis.
>>> print(root.sides)  # loads it from Redis
[10, [1, 2]]
>>> type(root.sides[1])
<class 'list'>

Disclaimer: I wrote the library. Here is the code: https://github.com/seperman/redisworks

| improve this answer | |
1

You can use RedisJSON from RedisLabs with client for python. It's supported the nested data structure. Very useful for tasks like this.

Some code from the example:

   # Set the key `obj` to some object
   obj = {
       'answer': 42,
       'arr': [None, True, 3.14],
       'truth': {
           'coord': 'out there'
       }
   }
   rj.jsonset('obj', Path.rootPath(), obj)

   # Get something
   print 'Is there anybody... {}?'.format(
       rj.jsonget('obj', Path('.truth.coord'))
   )
| improve this answer | |
0

I have faced a similar use case recently. Storing a complex data structure in redis hash.

I think the best way to resolve the issue is by serialiasing the json object to string and store it as value for another object.

Typescript example

Object to store in hashmap

const payload = {
 "k1":"v1",
 "k2": "v2",
 "k3": {
     "k4":"v4",
     "k5":"v5"
  }
}

Store this payload as

await redis.hmset('hashMapKey', {somePayloadKey: JSON.stringify(payload) });

This can be retrieved as

      const result = await redis.hgetall('hashMapKey');
      const payload = JSON.parse(result.somePayloadKey);

hmset and hgetall are tedis equivalents to HMSET and HGETALL in redis.

Hope this helps.

| improve this answer | |
-2

You can just store your structure as is and do an 'eval' to convert from String to Object:

images= [{'type':'big', 'url':'....'},
 {'type':'big', 'url':'....'},
 {'type':'big', 'url':'....'}]   
redis = Redis()
redis.hset('photo:1', 'images', images)

i = eval(redis.hget('photo:1', 'images'))
print type(i) #type of i should be list instead of string now
| improve this answer | |
  • 14
    This is unnecessarily dangerous: arbitrary Python code is evaluated through eval(). The JSON approach does not suffer from this. – Eric O Lebigot Mar 15 '14 at 15:53

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