Contents¶
Quick Start
Working with Data
User Guide
Api Reference
Examples
- Q22 All Platform Features: A Beginner’s Guide Strategy
- Full code
 - 1) Load libraries
 - 2) Data
 - 3) Strategy. Weights allocation
 - 4) Performance estimation
 - 5) Submit Your strategy to the competition
 - Strategy Guidelines
 - Working with Data
 - Loading Data
 - Accessing Data Fields
 - Working with xarray and pandas
 - QNT Technical Indicators
 - Frequently used functions
 - Optimization
 - How to find good parameters for my algorithm?
 - Dynamic Assets Selection
 - Applying to Liquid Assets
 - Trading Stocks with Different Volatilities
 - Selecting Stocks by Sharpe Ratio
 - Volatility Using a Rolling Window
 - Filtering Stocks by Normalized Average True Range (NATR)
 - How can you reduce slippage impace when trading?
 - How to get the Sharpe ratio?
 - How can you check the quality of your strategy?
 - Common Reasons for Submission Rejection and Their Solutions
 - 1) Missed call to write_output
 - 2) Not eligible send to contest. In-Sample Sharpe must be larger than 1
 - 3) Not enough bid information.
 
 - Q22 Quick Start S&P500
 - Technical Analysis using atr, lwma
 - Q18 Technical Analysis using Index Data
 - Technical Analysis using trix, ema
 - Quick Start Fundamental Data
 - Stateful Long-Short with Exits
 - Machine Learning - LSTM - State
 - Q22 Stateful Machine Learning Neural Network
 - Trend-Following Futures System
 - Machine Learning with a Voting Classifier
 - Trend-Following System with Custom Arguments
 - Stateful Strategy Optimization
 - Q20 Quick Start
 - Q18 Quick Start
 - Trading System Optimization
 - Futures - BLS Macro Data
 - Futures - IMF Currency Data
 - Futures - IMF Commodity Data
 - Trading System Optimization by Asset
 - Predicting BTC Futures Using IMF Data
 
Theory
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