
Inside the Engine: How Our AI Analyzes Markets
Many "AI" trading bots are just simple if-then scripts in disguise. TradingMaster AI is different. It uses a Deep Learning Neural Network trained on 7 years of historical data.
The 3-Layer Architecture
Layer 1: Data Ingestion (The Senses)
The engine consumes 50+ data points per second for every pair:
- Price Action: Open, High, Low, Close.
- Order Book: Bid/Ask depth.
- Alternative Data: Sentiment, Correlation matrices.
Layer 2: Feature Extraction (The Brain)
Raw data is useless without context. The AI converts noise into "Features":
- "Is Volume anomalous?"
- "Is volatility contracting (Bollinger Squeeze)?"
- "Is there an On-Chain Divergence?"
Layer 3: Probability Weighting (The Judgement)
Unlike a human who thinks in absolutes ("Buy now!"), the AI thinks in probabilities.
- Output: "78.4% chance of price incrase >1% in the next 4 hours."
Continuous Learning
Every night, the model "retrains" itself on the day's data. If it made a mistake, it adjusts its weights to avoid that mistake tomorrow. This is why our performance improves over time.
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