Skip to main content

Default template for PDM package

Project description

Milvus Dataset

Milvus Dataset is a versatile Python library for efficient management and processing of large-scale datasets. While optimized for seamless integration with Milvus vector database, it also serves as a powerful standalone dataset management tool. The library provides a simple yet powerful interface for creating, writing, reading, and managing datasets, particularly excelling in handling large-scale vector data and general-purpose data management tasks.

Key Features

  1. Flexible Storage Support

    • Local storage support
    • Object storage support (S3/MinIO)
    • Easy migration between different storage types
  2. Rich Data Type Support

    • Basic data types (INT64, VARCHAR, etc.)
    • Vector data types (FLOAT_VECTOR)
    • JSON fields
    • Sparse vectors
    • Binary vectors
  3. Dataset Management

    • Training and test set split support
    • Dataset metadata management
    • Dataset statistics and analytics
    • Schema definition and validation
  4. Integration Capabilities

    • Import to Milvus database
    • Upload to Hugging Face Hub
    • Seamless pandas DataFrame integration
    • Built-in nearest neighbor computation
    • Built-in mock data generation

Installation

pip install milvus-dataset

Quick Start Guide

1. Basic Configuration

from milvus_dataset import ConfigManager, StorageType

# Initialize local storage
ConfigManager().init_storage(
    root_path="./data/my-dataset",
    storage_type=StorageType.LOCAL,
)

# Initialize S3 storage
ConfigManager().init_storage(
    root_path="s3://bucket/path",
    storage_type=StorageType.S3,
    options={
        "aws_access_key_id": "your_key",
        "aws_secret_access_key": "your_secret",
        "endpoint_url": "your_endpoint"  # Optional, for MinIO
    }
)

2. Creating a Dataset

from pymilvus import CollectionSchema, DataType, FieldSchema
from milvus_dataset import load_dataset

# Define Schema
schema = CollectionSchema(
    fields=[
        FieldSchema("id", DataType.INT64, is_primary=True),
        FieldSchema("text", DataType.VARCHAR, max_length=65535),
        FieldSchema("embedding", DataType.FLOAT_VECTOR, dim=1024)
    ],
    description="Text vector dataset"
)

# Load dataset
dataset = load_dataset("my-dataset", schema=schema)

3. Writing Data

import pandas as pd
import numpy as np

# Prepare data
df = pd.DataFrame({
    "id": range(1000),
    "text": ["text_" + str(i) for i in range(1000)],
    "embedding": [np.random.rand(1024) for _ in range(1000)]
})

# Write to training set
with dataset["train"].get_writer(mode="append") as writer:
    writer.write(df)

4. Dataset Operations

# View dataset information
print(dataset.summary())

# Compute neighbors
dataset.compute_neighbors(
    vector_field_name="embedding",
    pk_field_name="id",
    top_k=100
)

# import to Milvus
dataset.to_milvus(
    milvus_config={
        "host": "localhost",
        "port": 19530
    },
    milvus_storage=StorageConfig(
        root_path="s3://bucket/path",
        storage_type=StorageType.S3,
        options={
            "aws_access_key_id": "your_key",
            "aws_secret_access_key": "your_secret",
            "endpoint_url": "your_endpoint"  # Optional, for MinIO
        }
    )

)

# Upload to Hugging Face
dataset.to_hf(repo_name="username/dataset-name")

Advanced Usage

Performance Optimization

  1. File Size Configuration

    with dataset["train"].get_writer(
        mode="append",
        target_file_size_mb=512,  # Adjust file size
        num_buffers=15,           # Adjust buffer number
        queue_size=30             # Adjust queue size
    ) as writer:
        writer.write(df)
    
  2. Batch Processing

    # Read in batches
    for batch in dataset["train"].read(mode="batch", batch_size=1000):
        process_batch(batch)
    

Storage Migration

# Move data from local to S3
dataset.to_storage(StorageConfig(
    storage_type=StorageType.S3,
    root_path="s3://bucket/path",
    options={...}
))

Common Issues and Solutions

  1. Storage Type Selection

    • Use local storage for development and testing
    • Use object storage for production environments
  2. Handling Large-Scale Data

    • Use batch writing
    • Set appropriate buffer size and queue size
    • Consider parallel processing
  3. Ensuring Data Quality

    • Define comprehensive schema
    • Enable schema validation
    • Regularly check dataset statistics
  4. Performance Optimization Tips

    • Set reasonable file size (target_file_size_mb)
    • Adjust buffer parameters (num_buffers, queue_size)
    • Process data in batches instead of one by one

Contributing

We welcome contributions! Please feel free to submit a Pull Request.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

milvus_dataset-1.0.0.post47.tar.gz (50.5 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

milvus_dataset-1.0.0.post47-py3-none-any.whl (44.9 kB view details)

Uploaded Python 3

File details

Details for the file milvus_dataset-1.0.0.post47.tar.gz.

File metadata

  • Download URL: milvus_dataset-1.0.0.post47.tar.gz
  • Upload date:
  • Size: 50.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: pdm/2.22.3 CPython/3.13.4 Darwin/22.6.0

File hashes

Hashes for milvus_dataset-1.0.0.post47.tar.gz
Algorithm Hash digest
SHA256 46c4e93729730af766cbf759fb8247ccc300ce2615cc98d6733a7df0aee0b994
MD5 1694cf9cadab0fcf54332fd9ba2d1deb
BLAKE2b-256 373137de6ed73fe7489495241e9b0fb0724a5b298ca3276ab6c00d910df37953

See more details on using hashes here.

File details

Details for the file milvus_dataset-1.0.0.post47-py3-none-any.whl.

File metadata

File hashes

Hashes for milvus_dataset-1.0.0.post47-py3-none-any.whl
Algorithm Hash digest
SHA256 901206a6c18213574fc71b791d866252adc9c3f75df5ed234a1173b18d12c6bd
MD5 9ff5e9c05f45eb84312b4fa3485021dd
BLAKE2b-256 6154f9fd77fc14bf22e18af763b63d5a0408cfa9058cdba629a66e918939817e

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page