dd = {'ID': ['H576','H577','H578','H600', 'H700'],
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?


4 Answers 4


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

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

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

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

Reference docs:

  • 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

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)
        return pa.deserialize(data)
        print("No data")

storeInRedis('locations', locdf)


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()

        buffer = io.BytesIO(r.get(alias))
        df = pd.read_parquet(buffer)
        return df
        return None


Pickle and zlib can be an alternative to pyarrow:

import pandas as pd
import redis
import zlib
import pickle

r = redis.Redis(host='localhost', port=6379, db=0)
r.set("key", zlib.compress( pickle.dumps(df)))

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.