WeTrade
DEX-SL
Great. I will investigate how supervised machine learning algorithms such as Random Forest, GaussianNB, and others are implemented in real-world crypto trading systems—focusing on live trading results regardless of which decentralized exchange (DEX) they are used on. I’ll identify successful implementations, summarize performance using return-based metrics like Sharpe
CEX SL
Great. I will gather a comprehensive overview of how supervised machine learning algorithms like Random Forest, Gaussian Naive Bayes, and others are implemented successfully in crypto trading—regardless of the specific centralized exchange (CEX). The focus will be on real-world implementations or exceptional academic research for intraday or daily trading
Comprehensive Overview of Cryptocurrency Trading Algorithms -e
Comprehensive Overview of Cryptocurrency Trading Algorithms
Machine learning algorithms have fundamentally transformed cryptocurrency trading, with sophisticated implementations across both centralized exchanges (CEX) and decentralized exchanges (DEX) generating exceptional returns. Random Forest and ensemble methods dominate traditional approaches with 80-90% Sharpe ratios, while deep reinforcement learning algorithms like SAC and PPO
Machine Learning & Reinforcement Learning in Crypto Trading Bots -t
Great. I’ll prepare a detailed overview of how algorithms such as Random Forest, GaussianNB, SAC, PPO, and other advanced algorithms are used successfully in crypto trading—covering both centralized and decentralized exchanges.
This will focus on strategic applications relevant to building a trading bot, with comparative insights across spot,