Mizar
  • Whitepaper
    • Abstract
    • C-Mizar
      • Problem
      • Solution
      • Opportunity
      • Product
        • Marketplace
        • DCA Bots
        • API Bots
        • Smart Trading
        • Paper Trading
        • Portfolio Manager
    • D-Mizar
      • Problem
      • Solution
      • Opportunity
      • Product
        • Contract Sniffer
        • Sniper Bot
    • $MZR Token
      • Use Cases
      • Token Metrics
      • Vesting Schedule and Release
      • FAQ
    • Roadmap
      • Supersonic Phase (C-Phase)
      • Hypersonic Phase (D-Phase)
    • Team
  • SDK
    • DCA Bots
      • DCA Bot SDK
      • DCA Bot - TradingView
    • API Bots
      • API Trading SDK
      • API Trading - TradingView
  • Mizar AI (on hold)
    • Mizar AI (on hold)
    • Data Sources
    • Model
      • Downsampling with CUSUM Filter
      • Average Uniqueness
      • Sample Weights
      • Sequentially Bootstrapped Bagging Classifier
      • Metalabeling
      • Bet Sizing
      • Combinatorial Purged Cross Validation
    • Structural Breaks
    • Transformations
      • Labeling Methods
      • Technical Analysis Features
      • Microstructural Features
    • Strategy Backtesting
    • Strategy Deployment
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  1. Mizar AI (on hold)

Mizar AI (on hold)

Mizar provides users with an open source repository containing the state of the art machine learning techniques to help them develop trading strategies and to maximise their returns.

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Last updated 1 year ago

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is an open-source library containing a set of tools for building advanced algorithmic strategies using the latest research mostly based on the work of in his book . Mizar Labs offers tools from machine learning models designed for time-series predictions to transformers that extract the most useful information from the pricing data.

For more info about MizarLabs, check .

Mizar Labs
Marcos Lopez de Prado
Advances in Financial Machine Learning (2018)
here