rocksdict 0.3.23

Creator: bradpython12

Last updated:

0 purchases

TODO
Add to Cart

Description:

rocksdict 0.3.23

RocksDict / SpeeDict
Key-value storage for Python & Wrapper of Rocksdb and Speedb




Installation
Wheels available for macOS amd64/arm64, linux amd64/arm64, and windows amd64.

pip install rocksdict for rocksdb backend, then from rocksdict import Rdict
pip install speedict for speedb backend, then from speedict import Rdict

Introduction
This library has two purposes.

As an on-disk key-value storage solution for Python.
As a RocksDB / Speedict interface.

These two purposes operate in different modes:


Default mode, which allows storing int, float,
bool, str, bytes, and other python objects (with Pickle).


Raw mode (options=Options(raw_mode=True)),
which allows storing only bytes.


Examples
A minimal example
from rocksdict import Rdict
import numpy as np
import pandas as pd

path = str("./test_dict")

# create a Rdict with default options at `path`
db = Rdict(path)
db[1.0] = 1
db["huge integer"] = 2343546543243564534233536434567543
db["good"] = True
db["bytes"] = b"bytes"
db["this is a list"] = [1, 2, 3]
db["store a dict"] = {0: 1}
db[b"numpy"] = np.array([1, 2, 3])
db["a table"] = pd.DataFrame({"a": [1, 2], "b": [2, 1]})

# reopen Rdict from disk
db.close()
db = Rdict(path)
assert db[1.0] == 1
assert db["huge integer"] == 2343546543243564534233536434567543
assert db["good"] == True
assert db["bytes"] == b"bytes"
assert db["this is a list"] == [1, 2, 3]
assert db["store a dict"] == {0: 1}
assert np.all(db[b"numpy"] == np.array([1, 2, 3]))
assert np.all(db["a table"] == pd.DataFrame({"a": [1, 2], "b": [2, 1]}))

# iterate through all elements
for k, v in db.items():
print(f"{k} -> {v}")

# batch get:
print(db[["good", "bad", 1.0]])
# [True, False, 1]

# delete Rdict from dict
db.close()
Rdict.destroy(path)

An Example of Raw Mode
This mode allows only bytes as keys and values.
from rocksdict import Rdict, Options

PATH_TO_ROCKSDB = str("path")

# open raw_mode, which allows only bytes
db = Rdict(path=PATH_TO_ROCKSDB, options=Options(raw_mode=True))

db[b'a'] = b'a'
db[b'b'] = b'b'
db[b'c'] = b'c'
db[b'd'] = b'd'

for k, v in db.items():
print(f"{k} -> {v}")

# close and delete
db.close()
Rdict.destroy(PATH_TO_ROCKSDB)

New Feature Since v0.3.3
Loading Options from RocksDict Path.
Load Options and add A New ColumnFamily
from rocksdict import Options, Rdict
path = str("./rocksdict_path")

opts, cols = Options.load_latest(path)
opts.create_missing_column_families(True)
cols["bytes"] = Options()
self.test_dict = Rdict(path, options=opts, column_families=cols)

Reopening RocksDB Reads DB Options Automatically
import shutil

from rocksdict import Rdict, Options, SliceTransform, PlainTableFactoryOptions
import os

def db_options():
opt = Options()
# create table
opt.create_if_missing(True)
# config to more jobs
opt.set_max_background_jobs(os.cpu_count())
# configure mem-table to a large value (256 MB)
opt.set_write_buffer_size(0x10000000)
opt.set_level_zero_file_num_compaction_trigger(4)
# configure l0 and l1 size, let them have the same size (1 GB)
opt.set_max_bytes_for_level_base(0x40000000)
# 256 MB file size
opt.set_target_file_size_base(0x10000000)
# use a smaller compaction multiplier
opt.set_max_bytes_for_level_multiplier(4.0)
# use 8-byte prefix (2 ^ 64 is far enough for transaction counts)
opt.set_prefix_extractor(SliceTransform.create_max_len_prefix(8))
# set to plain-table
opt.set_plain_table_factory(PlainTableFactoryOptions())
return opt


# create DB
db = Rdict("./some_path", db_options())
db[0] = 1
db.close()

# automatic reloading all options on reopening
db = Rdict("./some_path")
assert db[0] == 1

# destroy
db.close()
Rdict.destroy("./some_path")

More Examples on BatchWrite, SstFileWrite, Snapshot, RocksDB Options, and etc.
Go to example folder.
Limitations
Currently, do not support merge operation and custom comparator.
Full Documentation
See rocksdict documentation.

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

Files:

Customer Reviews

There are no reviews.