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A dict-like SQLite wrapper with APSW for instant persistence and memory caching

Project description

NanaSQLite

PyPI version Python versions License: MIT Downloads Tests

A dict-like SQLite wrapper with instant persistence and intelligent caching.

English | 日本語


English

🚀 Features

  • Dict-like Interface: Use familiar db["key"] = value syntax
  • Instant Persistence: All writes are immediately saved to SQLite
  • Smart Caching: Lazy load (on-access) or bulk load (all at once)
  • Nested Structures: Full support for nested dicts and lists (up to 30+ levels)
  • High Performance: WAL mode, mmap, and batch operations for maximum speed
  • Security & Stability (v1.2.0): SQL validation, ReDoS protection, and strict connection management
  • Zero Configuration: Works out of the box with sensible defaults

📦 Installation

pip install nanasqlite

Optional installation extras:

# Performance boosters (orjson + lru-dict)
pip install "nanasqlite[speed]"

# Enable encryption features (AES-GCM/ChaCha20/Fernet)
pip install "nanasqlite[encryption]"

# Install all optional runtime features
pip install "nanasqlite[all]"

# Development tools (pytest, ruff, mypy, tox, etc.)
pip install -e ".[dev]"

⚡ Quick Start

from nanasqlite import NanaSQLite

# Create or open a database
db = NanaSQLite("mydata.db")

# Use it like a dict
db["user"] = {"name": "Nana", "age": 20, "tags": ["admin", "active"]}
print(db["user"])  # {'name': 'Nana', 'age': 20, 'tags': ['admin', 'active']}

# Data persists automatically
db.close()

# Reopen later - data is still there!
db = NanaSQLite("mydata.db")
print(db["user"]["name"])  # 'Nana'

🔧 Advanced Usage

# Bulk load for faster repeated access
db = NanaSQLite("mydata.db", bulk_load=True)

# Batch operations for high-speed reads/writes
db.batch_update({"k1": "v1", "k2": "v2"})
results = db.batch_get(["k1", "k2"])

# Context manager support
with NanaSQLite("mydata.db") as db:
    db["temp"] = "value"

📚 Documentation

✨ v1.3.x New Features

  • Advanced Cache Strategies: LRU and TTL support. Learn more
  • Data Encryption: Secure storage with AES-GCM (default), ChaCha20, or Fernet. Learn more
  • Persistence TTL: Self-expiring data for sessions and temporary storage.

✨ v1.2.0 New Features

Security Enhancements & Strict Connection Management:

# v1.2.0 Security Features
db = NanaSQLite("mydata.db", 
    strict_sql_validation=True,  # Disallow unauthorized SQL functions
    max_clause_length=500        # Limit SQL length to prevent ReDoS
)

# v1.2.0 Read-Only Connection Pool (Async only)
async with AsyncNanaSQLite("mydata.db", read_pool_size=5) as db:
    # Heavy read operations (query, fetch_all) use the pool automatically
    # allowing parallel execution without blocking writes or other reads
    results = await asyncio.gather(
        db.query("logs", where="level=?", parameters=("ERROR",)),
        db.query("logs", where="level=?", parameters=("INFO",)),
        db.query("logs", where="level=?", parameters=("WARN",))
    )

# Strict Connection Management
with db.transaction():
    sub_db = db.table("sub")
    # ... operations ...
db.close()
# Accessing sub_db now raises NanaSQLiteClosedError for safety!

Read Secure Development Guide ↗

✨ v1.1.0 New Features

Safely operate multiple tables in the same database with shared connections:

from nanasqlite import NanaSQLite

# Create main table instance
main_db = NanaSQLite("mydata.db", table="users")

# Get another table instance sharing the same connection
products_db = main_db.table("products")
orders_db = main_db.table("orders")

# Each table has isolated cache and operations
main_db["user1"] = {"name": "Alice", "email": "alice@example.com"}
products_db["prod1"] = {"name": "Laptop", "price": 999}
orders_db["order1"] = {"user": "user1", "product": "prod1"}

Transaction Support & Error Handling (v1.1.0+):

from nanasqlite import NanaSQLite, NanaSQLiteTransactionError

with db.transaction():
    db["key1"] = "value1"
    db["key2"] = "value2"

Explore Multi-table & Transactions ↗

✨ v1.0.3+ Legacy Features

Pydantic Support & Direct SQL:

# Pydantic support
db.set_model("user", User(name="Nana", age=20))

# Direct SQL execution
db.execute("SELECT * FROM data WHERE key LIKE ?", ("user%",))

# 22 new SQLite wrapper functions (sql_insert, sql_update, count, etc.)
db.sql_insert("users", {"name": "Alice", "age": 25})



日本語

🚀 特徴

  • dict風インターフェース: おなじみの db["key"] = value 構文で操作
  • 即時永続化: 書き込みは即座にSQLiteに保存
  • スマートキャッシュ: 遅延ロード(アクセス時)または一括ロード(起動時)
  • ネスト構造対応: 30階層以上のネストしたdict/listをサポート
  • 高性能: WALモード、mmap、バッチ操作で最高速度を実現
  • セキュリティと安定性 (v1.2.0): SQL検証、ReDoS対策、厳格な接続管理を導入
  • 設定不要: 合理的なデフォルト設定でそのまま動作

📦 インストール

pip install nanasqlite

オプション機能付きのインストール:

# 高速化オプション(orjson + lru-dict)
pip install "nanasqlite[speed]"

# 暗号化機能(AES-GCM/ChaCha20/Fernet)
pip install "nanasqlite[encryption]"

# すべてのランタイム用オプションを一括インストール
pip install "nanasqlite[all]"

# 開発用ツール(pytest, ruff, mypy, tox等)
pip install -e ".[dev]"

⚡ クイックスタート

from nanasqlite import NanaSQLite

# データベースを作成または開く
db = NanaSQLite("mydata.db")

# dictのように使う
db["user"] = {"name": "Nana", "age": 20, "tags": ["admin", "active"]}
print(db["user"])  # {'name': 'Nana', 'age': 20, 'tags': ['admin', 'active']}

# データは自動的に永続化
db.close()

# 後で再度開いても、データはそのまま!
db = NanaSQLite("mydata.db")
print(db["user"]["name"])  # 'Nana'

🔧 高度な使い方

# 一括ロードで繰り返しアクセスを高速化
db = NanaSQLite("mydata.db", bulk_load=True)

# バッチ操作で高速な読み書き
db.batch_update({"k1": "v1", "k2": "v2"})
results = db.batch_get(["k1", "k2"])

# コンテキストマネージャ対応
with NanaSQLite("mydata.db") as db:
    db["temp"] = "value"

📚 ドキュメント

✨ v1.3.x 新機能

  • キャッシュ戦略: LRU / TTL サポート (ドキュメント)
  • データ暗号化: AES-GCM / ChaCha20 / Fernet (ドキュメント)
  • 永続化 TTL: SQLite上のデータの自動消去。

✨ v1.2.0 新機能

セキュリティ強化と厳格な接続管理:

# v1.2.0 セキュリティ機能
db = NanaSQLite("mydata.db", 
    strict_sql_validation=True,  # 未許可のSQL関数を禁止
    max_clause_length=500        # SQLの長さを制限してReDoSを防止
)

# v1.2.0 読み取り専用接続プール(非同期のみ)
async with AsyncNanaSQLite("mydata.db", read_pool_size=5) as db:
    # 重い読み取り操作(query, fetch_all)は自動的にプールを使用
    results = await asyncio.gather(
        db.query("logs", where="level=?", parameters=("ERROR",)),
        db.query("logs", where="level=?", parameters=("INFO",))
    )

# 厳格な接続管理
db.close()
# 無効化されたインスタンスへのアクセスは NanaSQLiteClosedError を送出します。

セキュリティ詳細を見る ↗

✨ v1.1.0 新機能

同一データベース内の複数テーブルを接続共有で安全に操作:

from nanasqlite import NanaSQLite

# メインテーブルインスタンスを作成
main_db = NanaSQLite("mydata.db", table="users")

# 同じ接続を共有する別のテーブルインスタンスを取得
products_db = main_db.table("products")
orders_db = main_db.table("orders")

# 各テーブルは独立したキャッシュと操作を持つ
main_db["user1"] = {"name": "Alice"}
products_db["prod1"] = {"name": "Laptop"}

オプションのデータ暗号化 (v1.3.1a1+):

from nanasqlite import NanaSQLite

# 事前にインストール: pip install nanasqlite[encryption]
db = NanaSQLite("secure.db", encryption_key=b"your-32-byte-key") # デフォルトで AES-GCM

# モードを明示的に指定する場合
db_chacha = NanaSQLite("secure_cc.db", 
    encryption_key=b"your-32-byte-key", 
    encryption_mode="chacha20"
)

# SQLite内では暗号化されますが、メモリ上(キャッシュ)では平文で高速に扱えます
db["secret"] = {"password": "123"}

トランザクションサポートとエラーハンドリング (v1.1.0+):

from nanasqlite import NanaSQLite, NanaSQLiteTransactionError

with db.transaction():
    db["key1"] = "value1"
    db["key2"] = "value2"

マルチテーブルと非同期を詳しく ↗

✨ v1.0.3+ レガシー機能

Pydantic互換性と直接SQL実行:

# Pydantic互換性
db.set_model("user", User(name="Nana", age=20))

# 直接SQL実行
db.execute("SELECT * FROM data WHERE key LIKE ?", ("user%",))

# 22種類のSQLiteラッパー関数 (sql_insert, sql_update, count等)
db.sql_insert("users", {"name": "Alice", "age": 25})


License

MIT License - see LICENSE for details.

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