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QUANTAXIS avatar

QUANTAXIS/QUANTAXIS

0
View on GitHub↗
10,720 estrellas·3,381 forks·Python·MIT·3 vistasyutiansut.github.io/QUANTAXIS↗

QUANTAXIS

QuantAxis is a quantitative trading platform and algorithmic trading framework. It provides a comprehensive local environment for backtesting strategies, managing financial market data, and executing trades across stocks, futures, and options markets.

The system distinguishes itself through a distributed task scheduler that spreads asynchronous computations and heavy mathematical workloads across a network of remote agents. It incorporates a multi-account trading interface to standardize the monitoring of positions and the execution of orders across various brokerage accounts.

The platform covers several high-level capability areas, including financial market data management for price ticks and order books, quantitative factor research, and strategy backtesting. It also includes tools for custom indicator calculation and a pub-sub messaging system for real-time data routing.

The project is implemented in Python.

Features

  • Algorithmic Trading Frameworks - Provides a modular software platform for building, simulating, and executing automated investment strategies.
  • Trading Strategy Backtesters - Offers a high-performance engine for simulating trading strategies by validating logic against historical market data.
  • Technical Indicator Calculators - Includes an expression builder for creating and batch-processing custom technical indicators across entire markets.
  • Automated Trading Execution - Executes buy and sell orders for stocks and futures across multiple accounts through a unified interface.
  • Multi-Account Trading Protocols - Standardizes the tracking of holdings and orders across different exchanges through a common data representation layer.
  • Position Tracking - Standardizes the monitoring of holdings and trades across various financial markets and brokerage accounts.
  • Quantitative Trading Platforms - Offers a comprehensive local environment for backtesting strategies and executing trades across multiple financial markets.
  • Market Data - Implements a high-performance database system for storing and updating tick-level financial market data.
  • Time Series Databases - Provides a high-performance time-series store optimized for rapid retrieval of historical market ticks and order books.
  • Quantitative Financial Modeling - Provides tools for developing and testing mathematical indicators to identify predictive patterns in financial time-series data.
  • Technical Indicator Engines - Provides an expression-based builder for batch processing custom mathematical technical indicators across large datasets.
  • Unified Trading Interfaces - Provides a unified tool for monitoring positions and executing orders across various financial assets and brokerage accounts.
  • Shared Memory Data Exchange - Utilizes shared-memory regions to move large datasets between processes without copying overhead.
  • Distributed Computing Frameworks - Distributes asynchronous computational workloads across a local network of remote agents.
  • Quantitative Computing Distribution - Spreads heavy mathematical workloads and strategy simulations across remote agents to increase processing speed.
  • Distributed Task Schedulers - Coordinates recurring jobs and spreads asynchronous computations across a network of remote agents.
  • Distributed Task Workers - Implements a system for spreading heavy quantitative computations across a network of remote worker nodes.
  • Message Bus Architectures - Uses a pub-sub message bus to coordinate real-time data flows and task distribution between system components.
  • Trading Frameworks - Local quantitative solution for data, backtesting, and multi-account trading.

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Preguntas frecuentes

¿Qué hace quantaxis/quantaxis?

QuantAxis is a quantitative trading platform and algorithmic trading framework. It provides a comprehensive local environment for backtesting strategies, managing financial market data, and executing trades across stocks, futures, and options markets.

¿Cuáles son las características principales de quantaxis/quantaxis?

Las características principales de quantaxis/quantaxis son: Algorithmic Trading Frameworks, Trading Strategy Backtesters, Technical Indicator Calculators, Automated Trading Execution, Multi-Account Trading Protocols, Position Tracking, Quantitative Trading Platforms, Market Data.

¿Qué alternativas de código abierto existen para quantaxis/quantaxis?

Las alternativas de código abierto para quantaxis/quantaxis incluyen: fasiondog/hikyuu — Hikyuu is a quantitative trading framework designed for developing, backtesting, and executing systematic trading… yutiansut/quantaxis — Quantaxis is a quantitative trading framework designed for building, backtesting, and executing automated strategies… edtechre/pybroker — pybroker is a Python algorithmic trading framework and quantitative technical analysis library designed for… shinnytech/tqsdk-python — tqsdk-python is a quantitative trading SDK and framework designed for developing automated strategies for futures,… mementum/backtrader — Backtrader is a Python framework designed for the development, backtesting, and live execution of algorithmic trading… jesse-ai/jesse — Jesse is a Python algorithmic trading framework used for developing, backtesting, and executing quantitative trading…

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