database for artificial intelligence/machine learning data

Related tags

Machine Learningaidb
Overview

License Version Downloads Supported Versions

AIDB v0.0.1

database for artificial intelligence/machine learning data

Overview

aidb is a database designed for large dataset for machine learning projects, that uses binary databases to minify data.

Examples

Basic Usage

from aidb import AIDB

database = AIDB({
    "date": "text",
    "points": "int"
})

database.add("01-01-2001", 1)

data = database.get()
print(data.size)

Here, the data variable is of type pandas.DataFrame, a type that is used by machine learning libraries like tensorflow for training data.

The aidb class takes a schema of type dict for the database, and expects values in add to be of the same order. get returns all data.

Copyright © 2021 Aarush Gupta

This code is copyrighted but licensed to the public under the GNU AGPLv3 license and any later versions.

Owner
Aarush Gupta
I like to build things.
Aarush Gupta
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