Skip to main content

Modular Agent Infrastructure Collection, a python framework for managing and sharing DSPy agents

Project description

Docs PyPI

Modaic 🐙

Modular Agent Infrastructure Collection, a Python framework for maintaining DSPy applications.

Overview

Modaic provides a comprehensive toolkit for creating intelligent DSPY pipelines that can work with diverse data sources including tables, documents, and databases. Built on top of DSPy, it offers a way to share and manage DSPY pipelines with integrated vector, SQL, and graph database support.

Key Features

  • Hub Support: Load and share precompiled DSPY programs from Modaic Hub
  • Context Management: Structured handling of molecular and atomic context types
  • Database Integration: Support for Vector (Milvus, Pinecone, Qdrant), SQL (SQLite, MySQL, PostgreSQL), and Graph (Memgraph, Neo4j)
  • Program Framework: Precompiled and auto-loading DSPY programs
  • Table Processing: Advanced Excel/CSV processing with SQL querying capabilities

Installation

Using uv (recommended)

uv add modaic

Optional (for hub operations):

export MODAIC_TOKEN="<your-token>"

Using pip

Please note that you will not be able to push DSPY programs to the Modaic Hub with pip.

pip install modaic

Quick Start

Creating a Simple Program

from modaic import PrecompiledProgram, PrecompiledConfig

class WeatherConfig(PrecompiledConfig):
    weather: str = "sunny"

class WeatherProgram(PrecompiledProgram):
    config: WeatherConfig

    def __init__(self, config: WeatherConfig, **kwargs):
        super().__init__(config, **kwargs)

    def forward(self, query: str) -> str:
        return f"The weather in {query} is {self.config.weather}."

weather_program = WeatherProgram(WeatherConfig())
print(weather_program(query="Tokyo"))

Save and load locally:

weather_program.save_precompiled("./my-weather")

from modaic import AutoProgram, AutoConfig

cfg = AutoConfig.from_precompiled("./my-weather", local=True)
loaded = AutoProgram.from_precompiled("./my-weather", local=True)
print(loaded(query="Kyoto"))

Working with Tables

from pathlib import Path
from modaic.context import Table, TableFile
import pandas as pd

# Load from Excel/CSV
excel = TableFile.from_file(
    file_ref="employees.xlsx",
    file=Path("employees.xlsx"),
    file_type="xlsx",
)
csv = TableFile.from_file(
    file_ref="data.csv",
    file=Path("data.csv"),
    file_type="csv",
)

# Create from DataFrame
df = pd.DataFrame({"col1": [1, 2, 3], "col2": [4, 5, 6]})
table = Table(df=df, name="my_table")

# Query with SQL (refer to in-memory table as `this`)
result = table.query("SELECT * FROM this WHERE col1 > 1")

# Convert to markdown
markdown = table.markdown()

Database Integration

SQL Database

from modaic.databases import SQLDatabase, SQLiteBackend

# Configure and connect
backend = SQLiteBackend(db_path="my_database.db")
db = SQLDatabase(backend)

# Add table
db.add_table(table)

# Query
rows = db.fetchall("SELECT * FROM my_table")

Vector Database

Graph Database

from modaic.context import Context, Relation
from modaic.databases import GraphDatabase, MemgraphConfig, Neo4jConfig

# Configure backend (choose one)
mg = GraphDatabase(MemgraphConfig())
# or
neo = GraphDatabase(Neo4jConfig())

# Define nodes
class Person(Context):
    name: str
    age: int

class KNOWS(Relation):
    since: int

alice = Person(name="Alice", age=30)
bob = Person(name="Bob", age=28)

# Save nodes
alice.save(mg)
bob.save(mg)

# Create relationship (Alice)-[KNOWS]->(Bob)
rel = (alice >> KNOWS(since=2020) >> bob)
rel.save(mg)

# Query
rows = mg.execute_and_fetch("MATCH (a:Person)-[r:KNOWS]->(b:Person) RETURN a, r, b LIMIT 5")
from modaic import Embedder
from modaic.context import Text
from modaic.databases import VectorDatabase, MilvusBackend

# Setup embedder and backend
embedder = Embedder("openai/text-embedding-3-small")
backend = MilvusBackend.from_local("vector.db")  # milvus lite

# Initialize database
vdb = VectorDatabase(backend=backend, embedder=embedder, payload_class=Text)

# Create collection and add records
vdb.create_collection("my_collection", payload_class=Text)
vdb.add_records("my_collection", [Text(text="hello world"), Text(text="modaic makes sharing DSPY programs easy")])

# Search
results = vdb.search("my_collection", query="hello", k=3)
top_hit_text = results[0][0].context.text

Architecture

Program Types

  1. PrecompiledProgram: Statically defined programs with explicit configuration
  2. AutoProgram: Dynamically loaded programs from Modaic Hub or local repositories

Database Support

Database Type Providers Use Case
Vector Milvus Semantic search, RAG
SQL SQLite, MySQL, PostgreSQL Structured queries, table storage

Examples

TableRAG Example

The TableRAG example demonstrates a complete RAG pipeline for table-based question answering:

from modaic import PrecompiledConfig, PrecompiledProgram
from modaic.context import Table
from modaic.databases import VectorDatabase, SQLDatabase
from modaic.types import Indexer

class TableRAGConfig(PrecompiledConfig):
    k_recall: int = 50
    k_rerank: int = 5

class TableRAGProgram(PrecompiledProgram):
    config: TableRAGConfig # ! Important: config must be annotated with the config class

    def __init__(self, config: TableRAGConfig, indexer: Indexer, **kwargs):
        super().__init__(config, **kwargs)
        self.indexer = indexer
        # Initialize DSPy modules for reasoning

    def forward(self, user_query: str) -> str:
        # Retrieve relevant tables
        # Generate SQL queries
        # Combine results and provide answer
        pass

Support

For issues and questions:

  • GitHub Issues: https://github.com/modaic-ai/modaic/issues
  • Docs: https://docs.modaic.dev

Project details


Release history Release notifications | RSS feed

This version

0.9.1

Download files

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

Source Distribution

modaic-0.9.1.tar.gz (34.1 kB view details)

Uploaded Source

Built Distribution

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

modaic-0.9.1-py3-none-any.whl (35.0 kB view details)

Uploaded Python 3

File details

Details for the file modaic-0.9.1.tar.gz.

File metadata

  • Download URL: modaic-0.9.1.tar.gz
  • Upload date:
  • Size: 34.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.9.9 {"installer":{"name":"uv","version":"0.9.9"},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"macOS","version":null,"id":null,"libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":null}

File hashes

Hashes for modaic-0.9.1.tar.gz
Algorithm Hash digest
SHA256 0b47c703491c30ec8a9ef7d34206b0c8c34206a99e2850d69278e454a9a5309d
MD5 663f5ada215687f98a84e5fb2ebce19e
BLAKE2b-256 37983e8e9e8cb9f268aaa1905fa3b8f1f34b1af1b49ebd3fb6d19e439f587fda

See more details on using hashes here.

File details

Details for the file modaic-0.9.1-py3-none-any.whl.

File metadata

  • Download URL: modaic-0.9.1-py3-none-any.whl
  • Upload date:
  • Size: 35.0 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.9.9 {"installer":{"name":"uv","version":"0.9.9"},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"macOS","version":null,"id":null,"libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":null}

File hashes

Hashes for modaic-0.9.1-py3-none-any.whl
Algorithm Hash digest
SHA256 6a94ab2a6c58433d69f7ccd359d38d22f61becbc4ab81084de085eb421c19393
MD5 6136aa35caa0ea852cac70f44f63f4cd
BLAKE2b-256 aac273a3d230e9688dcacb0c7be9e9c42631851c76166b24532629f4da367c36

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