Overview

Crypto Signal AI monitors configured markets, detects strategy setups, explains them in plain language, applies risk checks, and delivers transparent alerts — so you always know why a signal appeared and whether it passed approval.

Research and education only.The app does not place trades and does not provide financial advice. Alerts are decision support — review every signal manually before acting.

What You Get

When a setup is detected, you receive a structured alert — not a vague tip. Each message includes the symbol and timeframe, long or short direction, strategy name, entry/stop/target prices, reward-to-risk, signal strength, AI explanation, strategy trigger reasons, conflict notes, and why risk approved or rejected the signal.

Clear trade levelsEntry, stop loss, and take profit are defined upfront — not implied after the move.
Readable contextExplanations describe regime alignment, indicator state, and anything the scorer flagged as conflicting.
Honest rejectionsSignals that fail risk checks are still logged and can alert — so you see filtered setups too, not just winners.

See a full field-by-field guide in Signal Workflow.

Design Principles

The platform is intentionally risk-first and rule-based first. These four principles shape every layer — from how signals are generated to how the product evolves over time.

Rule-Based First

Signals originate from deterministic strategies that are inspectable, testable, and backtestable — not opaque buy/sell calls.

Today
  • EMA RSI Breakout — trend-following
  • Mean Reversion — range reversals
  • Volatility Breakout — compression breakouts
Planned
  • Trend pullback, z-score mean reversion, funding-rate divergence, and more

Learn more in Strategies.

AI as Analyst

AI scores setup quality, writes plain-English explanations, and flags conflicts. It does not bypass risk controls or place trades.

Today
  • Signal quality scoring (0–1) with pass/reject decision
  • Plain-English explanations and conflict notes
  • OpenAI when configured; deterministic rule engine as fallback
Planned
  • Richer regime context and historical performance in prompts
  • Separate ML trade-quality prediction from explanation

Learn more in AI scoring.

Risk Before Profit

Every final signal passes hard risk checks before it is marked approved. Risk management has final authority over AI scoring.

Today
  • Daily approved-signal cap
  • AI rejection enforcement
  • Minimum reward-to-risk (1.0)
  • Maximum stop-distance check
  • Position size suggestion with human-readable risk_reasons
Planned
  • Drawdown circuit breaker, consecutive-loss halt, portfolio exposure limits

Learn more in Risk Management.

Data-Driven Evolution

Signals and outcomes are stored so performance can be measured over time — the foundation for analytics, ML filtering, and strategy refinement.

Today
  • Full signal audit records in PostgreSQL
  • Outcome tracking for take profit, stop loss, expiry, and pending
  • Backtesting with expanded metrics (stdout today)
Planned
  • Strategy performance by regime, ML quality filter, strategy retirement rules

Learn more in Outcome Tracking.

3Implemented strategies
4Outcome states tracked
0Live execution paths

See the full implementation status table on the Product Roadmap. Configure markets and alerts on Configuration.

Platform Architecture

Data flows in one direction through fixed layers. Strategies and backtesting branch from enriched market data; outcome tracking runs after signals are stored. Nothing skips AI scoring or risk checks.

Exchange APIs
  → Market Data (CCXT OHLCV)
  → Indicators + Regime Analysis
  → Strategy Engine
  → Raw Signals
  → AI / Rule-Based Evaluation
  → Risk Manager + Position Size Suggestion
  → PostgreSQL
  → Telegram / Discord Alerts
  → Outcome Tracking
  → Backtesting (parallel research path)
  → Future ML Filter (planned)
LayerRoleStatus
Market DataFetches OHLCV candles from the configured exchange for each symbol and timeframe.Available
Indicators + RegimeEMA, RSI, MACD, ATR, Bollinger Bands, ADX, and regime classification with confidence scores.Available
Strategy EngineRegistry-based pluggable strategies; each emits entry, stop, target, and trigger reasons.Available
AI EvaluationScores and explains each raw signal; adds conflict notes including cross-strategy disagreements.Available
Risk ManagerApplies daily caps, min R:R, stop distance, and AI rejection rules; suggests position size.Available
PersistencePostgreSQL stores signals and outcomes; Alembic manages schema migrations.Available
AlertsTelegram and Discord delivery for approved and rejected final signals.Available
Outcome TrackingResolves approved signals against future candles — TP, SL, expired, or pending.Available
BacktestingHistorical simulation with Sharpe, Sortino, Calmar, profit factor, and more. Not persisted yet.Available
ML FilterMachine-learning quality scoring from historical outcomes. Planned Phase 3.Planned

For step-by-step detail on each stage — including sample JSON and alert examples — see Signal Workflow.

Strategies

Three complementary rule-based strategies cover trend continuation, range reversals, and volatility breakouts. Each publishes the exact conditions it checks — no proprietary mystery logic.

EMA RSI Breakout

Trend-following setup using EMA alignment, RSI recovery or rollover, and MACD confirmation.

Mean Reversion

Range-oriented reversal setup using RSI and Bollinger Band context for stretched prices.

Volatility Breakout

Compression-to-expansion setup using Bollinger Band width and recent range breaks.

Full setup rules, regime filters, and exit logic are documented on the Strategies page.

Signal Pipeline

Every alert follows the same path — from raw market data to a reviewed final signal. Nothing skips scoring or risk checks.

  1. 1. Market scan

    Live exchange candles are loaded for configured symbols and timeframes, then enriched with technical indicators and regime classification.

  2. 2. Strategy match

    Each enabled strategy evaluates the same snapshot and may produce a signal with entry, stop loss, take profit, and trigger reasons.

  3. 3. Score & explain

    AI or rule-based scoring rates setup quality, writes an explanation, and flags conflicts such as regime mismatch or weak volume.

  4. 4. Risk approval

    Daily caps, minimum reward-to-risk, stop distance limits, and AI rejection rules are applied before a signal is marked approved or rejected.

  5. 5. Alert delivery

    Final signals reach Telegram or Discord with trade levels, strength, explanation, sizing hint, and risk notes — approved or rejected.

Dive into each stage — including sample JSON and alert examples — on Signal Workflow. Risk rules and outcome resolution are covered separately on Risk Management and Outcome Tracking.

Explore Docs

Looking Ahead

The product is built in deliberate stages — from transparent alerts today toward validated research tools and, only after strict gates, optional live execution. That future direction is documented separately so the guides above stay focused on what you can use now.

Product RoadmapImplementation status, planned phases, success metrics, and long-term vision — including why live trading stays gated and opt-in.