nanofts 0.3.2

High-performance full-text search engine in Rust
Documentation

NanoFTS

A high-performance full-text search engine with Rust core, featuring efficient indexing and searching capabilities for both English and Chinese text.

Crates.io Documentation PyPI

Features

  • High Performance: Rust-powered core with sub-millisecond search latency
  • LSM-Tree Architecture: Scalable to billions of documents
  • Incremental Updates: Real-time document add/update/delete
  • Fuzzy Search: Intelligent fuzzy matching with configurable thresholds
  • Full CRUD: Complete document management operations
  • Result Handle: Zero-copy result with set operations (AND/OR/NOT)
  • NumPy Support: Direct numpy array output (Python only)
  • Multilingual: Support for both English and Chinese text
  • Persistence: Disk-based storage with WAL recovery
  • LRU Cache: Built-in caching for frequently accessed terms
  • Data Import: Import from pandas, polars, arrow, parquet, CSV, JSON (Python only)
  • Dual API: Available as both Rust crate and Python package

Installation

Rust (Cargo)

Add to your Cargo.toml:

[dependencies]
nanofts = "0.3"

Python (pip)

pip install nanofts

Rust Quick Start

use nanofts::{UnifiedEngine, EngineConfig, EngineResult};
use std::collections::HashMap;

fn main() -> EngineResult<()> {
    // Create an in-memory search engine
    let engine = UnifiedEngine::new(EngineConfig::memory_only())?;

    // Add a document
    let mut fields = HashMap::new();
    fields.insert("title".to_string(), "Hello World".to_string());
    fields.insert("content".to_string(), "This is a test document".to_string());
    engine.add_document(1, fields)?;

    // Search
    let result = engine.search("hello")?;
    println!("Found {} documents", result.total_hits());

    // Get document IDs
    for doc_id in result.iter() {
        println!("Document ID: {}", doc_id);
    }

    Ok(())
}

Persistent Storage (Rust)

use nanofts::{UnifiedEngine, EngineConfig};

// Create a persistent search engine
let config = EngineConfig::persistent("my_index.nfts")
    .with_lazy_load(true)       // Enable lazy loading for large indexes
    .with_cache_size(10000);    // LRU cache size

let engine = UnifiedEngine::new(config)?;

// ... add documents and search ...

// Flush to disk
engine.flush()?;

Boolean Search Operations (Rust)

// AND search
let result = engine.search_and(vec!["rust".to_string(), "programming".to_string()])?;

// OR search  
let result = engine.search_or(vec!["rust".to_string(), "python".to_string()])?;

// Result set operations
let result1 = engine.search("rust")?;
let result2 = engine.search("python")?;
let intersection = result1.intersect(&result2);
let union = result1.union(&result2);
let difference = result1.difference(&result2);

Python Quick Start

from nanofts import create_engine

# Create a search engine
engine = create_engine(
    index_file="./index.nfts",
    track_doc_terms=True,  # Enable update/delete operations
)

# Add documents (field values must be strings)
engine.add_document(1, {"title": "Python教程", "content": "学习Python编程"})
engine.add_document(2, {"title": "数据分析", "content": "使用pandas进行数据处理"})
engine.flush()

# Search - returns ResultHandle object
result = engine.search("Python")
print(f"Found {result.total_hits} documents")
print(f"Document IDs: {result.to_list()}")

# Update document
engine.update_document(1, {"title": "高级Python教程", "content": "深入学习Python"})

# Delete document
engine.remove_document(2)

# Compact to persist deletions
engine.compact()

API Reference

Creating Engine

from nanofts import create_engine

engine = create_engine(
    index_file="./index.nfts",     # Index file path (empty string for memory-only)
    max_chinese_length=4,          # Max Chinese n-gram length
    min_term_length=2,             # Minimum term length to index
    fuzzy_threshold=0.7,           # Fuzzy search similarity threshold (0.0-1.0)
    fuzzy_max_distance=2,          # Maximum edit distance for fuzzy search
    track_doc_terms=False,         # Enable for update/delete support
    drop_if_exists=False,          # Drop existing index on creation
    lazy_load=False,               # Lazy load mode (memory efficient)
    cache_size=10000,              # LRU cache size for lazy load mode
)

Document Operations

# Add single document
engine.add_document(doc_id=1, fields={"title": "Hello", "content": "World"})

# Add multiple documents
docs = [
    (1, {"title": "Doc 1", "content": "Content 1"}),
    (2, {"title": "Doc 2", "content": "Content 2"}),
]
engine.add_documents(docs)

# Update document (requires track_doc_terms=True)
engine.update_document(1, {"title": "Updated", "content": "New content"})

# Delete single document
engine.remove_document(1)

# Delete multiple documents
engine.remove_documents([1, 2, 3])

# Flush buffer to disk
engine.flush()

# Compact index (applies deletions permanently)
engine.compact()

Search Operations

# Basic search - returns ResultHandle
result = engine.search("python programming")

# Get results
doc_ids = result.to_list()           # List[int]
doc_ids = result.to_numpy()          # numpy array
top_10 = result.top(10)              # Top N results
page_2 = result.page(page=2, size=10)  # Pagination

# Result properties
print(result.total_hits)             # Total match count
print(result.is_empty)               # Check if empty
print(1 in result)                   # Check if doc_id in results

# Fuzzy search (for typo tolerance)
result = engine.fuzzy_search("pythn", min_results=5)
print(result.fuzzy_used)             # True if fuzzy matching was applied

# Batch search
results = engine.search_batch(["python", "rust", "java"])

# AND search (intersection)
result = engine.search_and(["python", "tutorial"])

# OR search (union)
result = engine.search_or(["python", "rust"])

# Filter by document IDs
result = engine.filter_by_ids([1, 2, 3, 4, 5])

# Exclude specific IDs
result = engine.exclude_ids([1, 2])

Result Set Operations

# Search for different terms
python_docs = engine.search("python")
rust_docs = engine.search("rust")

# Intersection (AND)
both = python_docs.intersect(rust_docs)

# Union (OR)
either = python_docs.union(rust_docs)

# Difference (NOT)
python_only = python_docs.difference(rust_docs)

# Chained operations
result = engine.search("python").intersect(
    engine.search("tutorial")
).difference(
    engine.search("beginner")
)

Statistics

stats = engine.stats()
print(stats)
# {
#     'term_count': 1234,
#     'search_count': 100,
#     'fuzzy_search_count': 10,
#     'total_search_ns': 1234567,
#     ...
# }

Data Import

NanoFTS supports importing data from various sources:

from nanofts import create_engine

engine = create_engine("./index.nfts")

# Import from pandas DataFrame
import pandas as pd
df = pd.DataFrame({
    'id': [1, 2, 3],
    'title': ['Hello World', '全文搜索', 'Test Document'],
    'content': ['This is a test', '支持多语言', 'Another test']
})
engine.from_pandas(df, id_column='id')

# Import from Polars DataFrame
import polars as pl
df = pl.DataFrame({
    'id': [1, 2, 3],
    'title': ['Doc 1', 'Doc 2', 'Doc 3']
})
engine.from_polars(df, id_column='id')

# Import from PyArrow Table
import pyarrow as pa
table = pa.Table.from_pydict({
    'id': [1, 2, 3],
    'title': ['Arrow 1', 'Arrow 2', 'Arrow 3']
})
engine.from_arrow(table, id_column='id')

# Import from Parquet file
engine.from_parquet("documents.parquet", id_column='id')

# Import from CSV file
engine.from_csv("documents.csv", id_column='id')

# Import from JSON file
engine.from_json("documents.json", id_column='id')

# Import from JSON Lines file
engine.from_json("documents.jsonl", id_column='id', lines=True)

# Import from Python dict list
data = [
    {'id': 1, 'title': 'Hello', 'content': 'World'},
    {'id': 2, 'title': 'Test', 'content': 'Document'}
]
engine.from_dict(data, id_column='id')

Specifying Text Columns

By default, all columns except the ID column are indexed. You can specify which columns to index:

# Only index 'title' and 'content' columns, ignore 'metadata'
engine.from_pandas(df, id_column='id', text_columns=['title', 'content'])

# Same for other import methods
engine.from_csv("data.csv", id_column='id', text_columns=['title', 'content'])

CSV and JSON Options

You can pass additional options to the underlying pandas readers:

# CSV with custom delimiter
engine.from_csv("data.csv", id_column='id', sep=';', encoding='utf-8')

# JSON Lines format
engine.from_json("data.jsonl", id_column='id', lines=True)

Chinese Text Support

NanoFTS handles Chinese text using n-gram tokenization:

engine = create_engine(
    index_file="./chinese_index.nfts",
    max_chinese_length=4,  # Generate 2,3,4-gram for Chinese
)

engine.add_document(1, {"content": "全文搜索引擎"})
engine.flush()

# Search Chinese text
result = engine.search("搜索")
print(result.to_list())  # [1]

Persistence and Recovery

# Create persistent index
engine = create_engine(index_file="./data.nfts")
engine.add_document(1, {"title": "Test"})
engine.flush()

# Close and reopen
del engine
engine = create_engine(index_file="./data.nfts")

# Data is automatically recovered
result = engine.search("Test")
print(result.to_list())  # [1]

# Important: Use compact() to persist deletions
engine.remove_document(1)
engine.compact()  # Deletions are now permanent

Memory-Only Mode

# Create in-memory engine (no persistence)
engine = create_engine(index_file="")

engine.add_document(1, {"content": "temporary data"})
# No flush needed for in-memory mode

result = engine.search("temporary")

Best Practices

For Production Use

  1. Always call compact() after bulk deletions - Deletions are only persisted after compaction
  2. Use track_doc_terms=True if you need update/delete operations
  3. Call flush() periodically to persist new documents
  4. Use lazy_load=True for large indexes that don't fit in memory

Performance Tips

# Batch operations are faster
docs = [(i, {"content": f"doc {i}"}) for i in range(10000)]
engine.add_documents(docs)  # Much faster than individual add_document calls
engine.flush()

# Use batch search for multiple queries
results = engine.search_batch(["query1", "query2", "query3"])

# Use result set operations instead of multiple searches
# Good:
result = engine.search_and(["python", "tutorial"])
# Instead of:
# result = engine.search("python").intersect(engine.search("tutorial"))

Migration from Old API

If you're upgrading from the old FullTextSearch API:

# Old API (deprecated)
# from nanofts import FullTextSearch
# fts = FullTextSearch(index_dir="./index")
# fts.add_document(1, {"title": "Test"})
# results = fts.search("Test")  # Returns List[int]

# New API
from nanofts import create_engine
engine = create_engine(index_file="./index.nfts")
engine.add_document(1, {"title": "Test"})
result = engine.search("Test")
results = result.to_list()  # Returns List[int]

Key differences:

  • FullTextSearchcreate_engine() function
  • index_dirindex_file (file path, not directory)
  • Search returns ResultHandle instead of List[int]
  • Call .to_list() to get document IDs
  • Use compact() to persist deletions

Cargo Features

Feature Description Default
python Enable Python bindings via PyO3 No
simd Enable SIMD acceleration (requires nightly) No
mimalloc Use mimalloc allocator Yes

Building with Python Support

# Build with Python bindings
cargo build --features python

# Build Python wheel with maturin
maturin build --release --features python

Publishing to crates.io

# Login to crates.io (first time only)
cargo login

# Publish the crate
cd nanofts
cargo publish

License

This project is licensed under the Apache License 2.0 - see the LICENSE file for details.

Contributing

Contributions are welcome! Please feel free to submit a Pull Request.