28

Using

dd = {'ID': ['H576','H577','H578','H600', 'H700'],
      'CD': ['AAAAAAA', 'BBBBB', 'CCCCCC','DDDDDD', 'EEEEEEE']}
df = pd.DataFrame(dd)

Pre Pandas 0.25, this below worked.

set:  redisConn.set("key", df.to_msgpack(compress='zlib'))
get:  pd.read_msgpack(redisConn.get("key"))

Now, there are deprecated warnings..

FutureWarning: to_msgpack is deprecated and will be removed in a future version.
It is recommended to use pyarrow for on-the-wire transmission of pandas objects.

The read_msgpack is deprecated and will be removed in a future version.
It is recommended to use pyarrow for on-the-wire transmission of pandas objects.

How does pyarrow work? And, how do I get pyarrow objects into and back from Redis.

reference: How to set/get pandas.DataFrame to/from Redis?

0

4 Answers 4

45

Here's a full example to use pyarrow for serialization of a pandas dataframe to store in redis

apt-get install python3 python3-pip redis-server
pip3 install pandas pyarrow redis

and then in python

import pandas as pd
import pyarrow as pa
import redis

df=pd.DataFrame({'A':[1,2,3]})
r = redis.Redis(host='localhost', port=6379, db=0)

context = pa.default_serialization_context()
r.set("key", context.serialize(df).to_buffer().to_pybytes())
context.deserialize(r.get("key"))
   A
0  1
1  2
2  3

I just submitted PR 28494 to pandas to include this pyarrow example in the docs.

Reference docs:

8
  • 4
    This is really nice. I'm assuming that a defensive programmer should check the size of the dataframe before pushing to Redis, since to my knowledge the 512MB limit still exists. github.com/antirez/redis/issues/757 Mar 5, 2020 at 17:29
  • 2
    @BrifordWylie: I use bz2 package to compress data before pushing it to Redis. Apr 30, 2020 at 19:30
  • I am getting below error at: context.deserialize(r.get("key")) UnicodeDecodeError: 'utf-8' codec can't decode byte 0xff in position 16: invalid start byte
    – sumon c
    Aug 5, 2020 at 3:11
  • @sumonc what do you get with r.get("key") alone?
    – Shadi
    Aug 5, 2020 at 4:26
  • 1
    Is the above answer doing any compression at all? In to_pybytes()?
    – sray
    Jan 13, 2021 at 18:06
10

Here is how I do it since default_serialization_context is deprecated and things are a bit simpler:

import pyarrow as pa
import redis

pool = redis.ConnectionPool(host='localhost', port=6379, db=0)
r = redis.Redis(connection_pool=pool)

def storeInRedis(alias, df):
    df_compressed = pa.serialize(df).to_buffer().to_pybytes()
    res = r.set(alias,df_compressed)
    if res == True:
        print(f'{alias} cached')

def loadFromRedis(alias):
    data = r.get(alias)
    try:
        return pa.deserialize(data)
    except:
        print("No data")


storeInRedis('locations', locdf)

loadFromRedis('locations')
1
6

If you would like to compress the data in Redis, you can use the built in support for parquet & gzip

def openRedisCon():
   pool = redis.ConnectionPool(host=REDIS_HOST, port=REDIS_PORT, db=0)
   r = redis.Redis(connection_pool=pool)
   return r

def storeDFInRedis(alias, df):
    """Store the dataframe object in Redis
    """

    buffer = io.BytesIO()
    df.to_parquet(buffer, compression='gzip')
    buffer.seek(0) # re-set the pointer to the beginning after reading
    r = openRedisCon()
    res = r.set(alias,buffer.read())

def loadDFFromRedis(alias, useStale: bool = False):
    """Load the named key from Redis into a DataFrame and return the DF object
    """

    r = openRedisCon()

    try:
        buffer = io.BytesIO(r.get(alias))
        buffer.seek(0)
        df = pd.read_parquet(buffer)
        return df
    except:
        return None


0

Pickle and zlib can be an alternative to pyarrow:

import pandas as pd
import redis
import zlib
import pickle

df=pd.DataFrame({'A':[1,2,3]})
r = redis.Redis(host='localhost', port=6379, db=0)
r.set("key", zlib.compress( pickle.dumps(df)))
df=pickle.loads(zlib.decompress(r.get("key")))

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