| name | freqtrade-strategy-dev |
| description | Develop, iterate, and improve Freqtrade cryptocurrency trading strategies. Use when writing a new strategy, improving an existing one, analyzing why a strategy is losing, or understanding which indicators to use. Covers strategy anatomy, key configuration parameters, proven entry/exit patterns, and the iteration workflow. Trigger phrases: write freqtrade strategy, improve strategy, why is my strategy losing, freqtrade indicators, strategy not profitable, freqtrade entry conditions. |
| metadata | {"clawdbot":{"emoji":"🧠","requires":{"bins":["docker","docker-compose"]},"os":["linux","darwin","win32"]}} |
Freqtrade Strategy Development
Build profitable trading strategies with disciplined iteration, tight risk management, and data-driven entry/exit rules. Assumes Freqtrade is running via Docker (docker-compose).
Strategy Anatomy
Every Freqtrade strategy requires three methods:
populate_indicators(dataframe, metadata) — Add technical indicators (RSI, MACD, Bollinger Bands, etc.) to the dataframe
populate_entry_trend(dataframe, metadata) — Define buy signal logic; set enter_long = 1 when conditions met
populate_exit_trend(dataframe, metadata) — Define sell signal logic; set exit_long = 1 when conditions met (optional if using ROI/stop-loss)
Key Config Parameters
stoploss = -0.03
trailing_stop = True
trailing_stop_positive = 0.01
trailing_stop_positive_offset = 0.02
minimal_roi = {
"0": 0.04,
"30": 0.02,
"60": 0.01,
}
timeframe = "5m"
stake_currency = "USDT"
dry_run = True
Proven Entry Pattern
stoploss = -0.03
trailing_stop = True
trailing_stop_positive = 0.01
trailing_stop_positive_offset = 0.02
minimal_roi = {"0": 0.04, "30": 0.02, "60": 0.01}
conditions = [
(dataframe['rsi'] < 30),
(dataframe['cci'] < -100),
(dataframe['close'] < dataframe['bb_lowerband']),
(dataframe['volume'] > dataframe['volume_sma']),
(dataframe['bullish_candle']),
]
dataframe.loc[reduce(lambda x, y: x & y, conditions), 'enter_long'] = 1
Key Lessons Learned
- Tight stops save accounts — 3% max loss beats 5%, 7%, or 8% every time
- Quality over quantity — 25 selective trades outperform 308 mediocre ones
- Win rate alone is meaningless — 63% win rate unprofitable if avg loss is 5x avg gain
- Selectivity is survival — RSI(30) + CCI(-100) dual filters dramatically reduce noise
- Test in bear markets — If strategy survives a crash, it works everywhere
- Volume confirms conviction — Entries without above-average volume fail more often
Useful Indicators
- RSI (14) — Momentum; < 30 = oversold, > 70 = overbought
- CCI — Commodity Channel Index; momentum confirmation; < -100 = deep oversold
- MACD — Trend following; watch for crossovers
- Bollinger Bands — Volatility; price near lower band = potential reversal
- EMA — Trend filter; price above EMA = uptrend
- MFI — Money Flow Index; volume-weighted momentum
Iteration Workflow
- Write baseline strategy with core entry/exit logic
- Backtest on 90–120 days of historical data
- Analyze exit reasons: are you exiting winners or losers too fast?
- Tighten ONE parameter at a time (e.g., RSI threshold)
- Backtest same period, compare vs. baseline
- If better → keep; if worse → revert
- Test different market conditions (Bull, bear, sideways)
- Dry-run on live feeds before deploying to live trading
Version Control
Keep all versions: name files MyStrategy_v1.py, MyStrategy_v2.py, etc. Add comments above each change explaining what improved and why. This preserves your iteration history and makes reverting safe.
References
references/indicators-guide.md — Technical indicator formulas and interpretation
references/iteration-workflow.md — Step-by-step walkthrough of strategy optimization