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336 KiB
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{"config":{"lang":["en"],"separator":"[\\s\\-]+","pipeline":["stopWordFilter"]},"docs":[{"location":"","title":"Freqtrade","text":"<p>Star</p> <p>Fork</p> <p>Download</p> <p>Follow @freqtrade</p>"},{"location":"#introduction","title":"Introduction","text":"<p>Freqtrade is a crypto-currency algorithmic trading software developed in python (3.6+) and supported on Windows, macOS and Linux.</p> <p>DISCLAIMER</p> <p>This software is for educational purposes only. Do not risk money which you are afraid to lose. USE THE SOFTWARE AT YOUR OWN RISK. THE AUTHORS AND ALL AFFILIATES ASSUME NO RESPONSIBILITY FOR YOUR TRADING RESULTS.</p> <p>Always start by running a trading bot in Dry-run and do not engage money before you understand how it works and what profit/loss you should expect.</p> <p>We strongly recommend you to have basic coding skills and Python knowledge. Do not hesitate to read the source code and understand the mechanisms of this bot, algorithms and techniques implemented in it.</p>"},{"location":"#features","title":"Features","text":"<ul> <li>Develop your Strategy: Write your strategy in python, using pandas. Example strategies to inspire you are available in the strategy repository.</li> <li>Download market data: Download historical data of the exchange and the markets your may want to trade with.</li> <li>Backtest: Test your strategy on downloaded historical data.</li> <li>Optimize: Find the best parameters for your strategy using hyperoptimization which employs machining learning methods. You can optimize buy, sell, take profit (ROI), stop-loss and trailing stop-loss parameters for your strategy.</li> <li>Select markets: Create your static list or use an automatic one based on top traded volumes and/or prices (not available during backtesting). You can also explicitly blacklist markets you don't want to trade.</li> <li>Run: Test your strategy with simulated money (Dry-Run mode) or deploy it with real money (Live-Trade mode).</li> <li>Run using Edge (optional module): The concept is to find the best historical trade expectancy by markets based on variation of the stop-loss and then allow/reject markets to trade. The sizing of the trade is based on a risk of a percentage of your capital.</li> <li>Control/Monitor: Use Telegram or a REST API (start/stop the bot, show profit/loss, daily summary, current open trades results, etc.).</li> <li>Analyse: Further analysis can be performed on either Backtesting data or Freqtrade trading history (SQL database), including automated standard plots, and methods to load the data into interactive environments.</li> </ul>"},{"location":"#requirements","title":"Requirements","text":""},{"location":"#up-to-date-clock","title":"Up to date clock","text":"<p>The clock on the system running the bot must be accurate, synchronized to a NTP server frequently enough to avoid problems with communication to the exchanges.</p>"},{"location":"#hardware-requirements","title":"Hardware requirements","text":"<p>To run this bot we recommend you a cloud instance with a minimum of:</p> <ul> <li>2GB RAM</li> <li>1GB disk space</li> <li>2vCPU</li> </ul>"},{"location":"#software-requirements","title":"Software requirements","text":"<ul> <li>Docker (Recommended)</li> </ul> <p>Alternatively</p> <ul> <li>Python 3.6.x</li> <li>pip (pip3)</li> <li>git</li> <li>TA-Lib</li> <li>virtualenv (Recommended)</li> </ul>"},{"location":"#support","title":"Support","text":""},{"location":"#help-slack","title":"Help / Slack","text":"<p>For any questions not covered by the documentation or for further information about the bot, we encourage you to join our passionate Slack community.</p> <p>Click here to join the Freqtrade Slack channel.</p>"},{"location":"#ready-to-try","title":"Ready to try?","text":"<p>Begin by reading our installation guide for docker, or for installation without docker.</p>"},{"location":"advanced-hyperopt/","title":"Advanced Hyperopt","text":"<p>This page explains some advanced Hyperopt topics that may require higher coding skills and Python knowledge than creation of an ordinal hyperoptimization class.
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