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import com.rods.backtestingstrategies.entity.*;
import com.rods.backtestingstrategies.strategy.*;
import lombok.RequiredArgsConstructor;
import org.springframework.stereotype.Service;
import java.time.temporal.ChronoUnit;
import java.util.*;
import java.util.stream.Collectors;
@Service
@RequiredArgsConstructor
public class BacktestService {
private final MarketDataService marketDataService;
private final StrategyFactory strategyFactory;
/**
* Run a backtest with default strategy parameters.
*/
public BacktestResult backtest(
String symbol,
StrategyType strategyType,
double initialCapital
) {
Strategy strategy = strategyFactory.getStrategy(strategyType);
return executeBacktest(symbol, strategy, initialCapital);
}
/**
* Run a backtest with custom strategy parameters.
*/
public BacktestResult backtestWithParams(
String symbol,
StrategyType strategyType,
double initialCapital,
Map<String, String> params
) {
Strategy strategy = createParameterizedStrategy(strategyType, params);
return executeBacktest(symbol, strategy, initialCapital);
}
/**
* Compare all available strategies on the same stock data.
*/
public StrategyComparisonResult compareStrategies(
String symbol,
double initialCapital
) {
Map<String, BacktestResult> results = new LinkedHashMap<>();
for (StrategyType type : StrategyType.values()) {
try {
Strategy strategy = strategyFactory.getStrategy(type);
BacktestResult result = executeBacktest(symbol, strategy, initialCapital);
results.put(strategy.getName(), result);
} catch (IllegalArgumentException e) {
// Strategy not implemented yet, skip
}
}
// Rank by return %
List<String> rankByReturn = results.entrySet().stream()
.sorted((a, b) -> Double.compare(b.getValue().getReturnPct(), a.getValue().getReturnPct()))
.map(Map.Entry::getKey)
.collect(Collectors.toList());
// Rank by Sharpe Ratio
List<String> rankBySharpe = results.entrySet().stream()
.sorted((a, b) -> Double.compare(
b.getValue().getMetrics().getSharpeRatio(),
a.getValue().getMetrics().getSharpeRatio()))
.map(Map.Entry::getKey)
.collect(Collectors.toList());
String best = rankByReturn.isEmpty() ? "N/A" : rankByReturn.getFirst();
return StrategyComparisonResult.builder()
.symbol(symbol)
.initialCapital(initialCapital)
.results(results)
.rankByReturn(rankByReturn)
.rankBySharpe(rankBySharpe)
.bestStrategy(best)
.build();
}
/**
* Run portfolio-level backtest across multiple symbols.
*/
public PortfolioResult backtestPortfolio(PortfolioRequest request) {
StrategyType strategyType = StrategyType.valueOf(request.getStrategy().toUpperCase());
Strategy strategy = strategyFactory.getStrategy(strategyType);
Map<String, BacktestResult> symbolResults = new LinkedHashMap<>();
Map<String, Double> allocations = new LinkedHashMap<>();
double totalFinalValue = 0;
for (PortfolioRequest.PortfolioEntry entry : request.getEntries()) {
double allocatedCapital = request.getTotalCapital() * entry.getWeight();
allocations.put(entry.getSymbol(), allocatedCapital);
BacktestResult result = executeBacktest(entry.getSymbol(), strategy, allocatedCapital);
symbolResults.put(entry.getSymbol(), result);
totalFinalValue += result.getFinalCapital();
}
double totalPnL = totalFinalValue - request.getTotalCapital();
double totalReturnPct = request.getTotalCapital() == 0 ? 0 :
(totalPnL / request.getTotalCapital()) * 100.0;
// Aggregate metrics weighted by allocation
PerformanceMetrics aggregateMetrics = calculateAggregateMetrics(symbolResults, allocations, request.getTotalCapital());
return PortfolioResult.builder()
.totalCapital(request.getTotalCapital())
.finalValue(totalFinalValue)
.totalPnL(totalPnL)
.totalReturnPct(totalReturnPct)
.strategyUsed(strategy.getName())
.aggregateMetrics(aggregateMetrics)
.symbolResults(symbolResults)
.allocations(allocations)
.build();
}
/* ==========================
Core Execution Engine
========================== */
private BacktestResult executeBacktest(String symbol, Strategy strategy, double initialCapital) {
List<Candle> candles = marketDataService.getCandles(symbol);
if (candles == null || candles.isEmpty()) {
return BacktestResult.empty(initialCapital);
}
candles.sort(Comparator.comparing(Candle::getDate));
double cash = initialCapital;
long shares = 0L;
List<EquityPoint> equityCurve = new ArrayList<>();
List<Transaction> transactions = new ArrayList<>();
List<CrossOver> crossovers = new ArrayList<>();
for (int i = 0; i < candles.size(); i++) {
Candle candle = candles.get(i);
double price = candle.getClosePrice();
TradeSignal signal = strategy.evaluate(candles, i)
.withStrategyName(strategy.getName());
switch (signal.getSignalType()) {
case BUY -> {
if (cash > 0 && shares == 0) {
long buyShares = (long) (cash / price);
if (buyShares > 0) {
cash -= buyShares * price;
shares += buyShares;
transactions.add(
Transaction.buy(candle, price, buyShares, cash, cash + shares * price)
);
crossovers.add(CrossOver.bullish(candle));
}
}
}
case SELL -> {
if (shares > 0) {
double proceeds = shares * price;
cash += proceeds;
transactions.add(
Transaction.sell(candle, price, shares, cash, cash)
);
crossovers.add(CrossOver.bearish(candle));
shares = 0;
}
}
case HOLD -> { /* no-op */ }
}
double equity = cash + shares * price;
equityCurve.add(EquityPoint.of(candle, equity, shares, cash));
}
EquityPoint last = equityCurve.getLast();
double finalValue = last.getEquity();
double pnl = finalValue - initialCapital;
double returnPct = initialCapital == 0 ? 0 : (pnl / initialCapital) * 100.0;
// Calculate advanced metrics
PerformanceMetrics metrics = calculateMetrics(equityCurve, transactions, initialCapital);
return BacktestResult.builder()
.startCapital(initialCapital)
.finalCapital(finalValue)
.profitLoss(pnl)
.returnPct(returnPct)
.strategyName(strategy.getName())
.metrics(metrics)
.equityCurve(equityCurve)
.transactions(transactions)
.crossovers(crossovers)
.build();
}
/* ==========================
Advanced Metrics Calculator
========================== */
private PerformanceMetrics calculateMetrics(
List<EquityPoint> equityCurve,
List<Transaction> transactions,
double initialCapital
) {
if (equityCurve.isEmpty()) {
return PerformanceMetrics.builder().build();
}
// --- Max Drawdown ---
double maxDrawdown = calculateMaxDrawdown(equityCurve);
// --- Trade Analysis ---
List<Double> tradePnLs = calculateTradePnLs(transactions);
int totalTrades = tradePnLs.size();
int winningTrades = (int) tradePnLs.stream().filter(p -> p > 0).count();
int losingTrades = (int) tradePnLs.stream().filter(p -> p < 0).count();
double winRate = totalTrades == 0 ? 0 : (double) winningTrades / totalTrades * 100.0;
double avgWin = tradePnLs.stream().filter(p -> p > 0).mapToDouble(Double::doubleValue).average().orElse(0);
double avgLoss = tradePnLs.stream().filter(p -> p < 0).mapToDouble(Double::doubleValue).average().orElse(0);
double winLossRatio = avgLoss == 0 ? 0 : Math.abs(avgWin / avgLoss);
double grossProfit = tradePnLs.stream().filter(p -> p > 0).mapToDouble(Double::doubleValue).sum();
double grossLoss = Math.abs(tradePnLs.stream().filter(p -> p < 0).mapToDouble(Double::doubleValue).sum());
double profitFactor = grossLoss == 0 ? 0 : grossProfit / grossLoss;
// --- Sharpe Ratio ---
double sharpeRatio = calculateSharpeRatio(equityCurve);
// --- Annualized Return ---
double finalEquity = equityCurve.getLast().getEquity();
long days = ChronoUnit.DAYS.between(
equityCurve.getFirst().getDate(),
equityCurve.getLast().getDate()
);
double years = Math.max(days / 365.25, 0.01);
double annualizedReturn = (Math.pow(finalEquity / initialCapital, 1.0 / years) - 1.0) * 100.0;
// --- Average Holding Period ---
double avgHoldingDays = calculateAvgHoldingPeriod(transactions);
return PerformanceMetrics.builder()
.sharpeRatio(round(sharpeRatio))
.maxDrawdown(round(maxDrawdown))
.winRate(round(winRate))
.avgWin(round(avgWin))
.avgLoss(round(avgLoss))
.winLossRatio(round(winLossRatio))
.totalTrades(totalTrades)
.winningTrades(winningTrades)
.losingTrades(losingTrades)
.annualizedReturn(round(annualizedReturn))
.profitFactor(round(profitFactor))
.avgHoldingPeriodDays(round(avgHoldingDays))
.build();
}
private double calculateMaxDrawdown(List<EquityPoint> equityCurve) {
double peak = equityCurve.getFirst().getEquity();
double maxDrawdown = 0;
for (EquityPoint point : equityCurve) {
if (point.getEquity() > peak) {
peak = point.getEquity();
}
double drawdown = (peak - point.getEquity()) / peak * 100.0;
if (drawdown > maxDrawdown) {
maxDrawdown = drawdown;
}
}
return -maxDrawdown; // Return as negative percentage
}
private double calculateSharpeRatio(List<EquityPoint> equityCurve) {
if (equityCurve.size() < 2) return 0;
// Daily returns
List<Double> dailyReturns = new ArrayList<>();
for (int i = 1; i < equityCurve.size(); i++) {
double prevEquity = equityCurve.get(i - 1).getEquity();
double currEquity = equityCurve.get(i).getEquity();
if (prevEquity != 0) {
dailyReturns.add((currEquity - prevEquity) / prevEquity);
}
}
if (dailyReturns.isEmpty()) return 0;
double avgReturn = dailyReturns.stream().mapToDouble(Double::doubleValue).average().orElse(0);
double stdDev = Math.sqrt(
dailyReturns.stream()
.mapToDouble(r -> Math.pow(r - avgReturn, 2))
.average()
.orElse(0)
);
if (stdDev == 0) return 0;
// Annualized Sharpe (assuming 252 trading days, risk-free rate = 0)
return (avgReturn / stdDev) * Math.sqrt(252);
}
private List<Double> calculateTradePnLs(List<Transaction> transactions) {
List<Double> pnls = new ArrayList<>();
Double buyPrice = null;
long buyShares = 0;
for (Transaction tx : transactions) {
if (tx.getType() == SignalType.BUY) {
buyPrice = tx.getPrice();
buyShares = tx.getShares();
} else if (tx.getType() == SignalType.SELL && buyPrice != null) {
double pnl = (tx.getPrice() - buyPrice) * buyShares;
pnls.add(pnl);
buyPrice = null;
buyShares = 0;
}
}
return pnls;
}
private double calculateAvgHoldingPeriod(List<Transaction> transactions) {
List<Long> holdingDays = new ArrayList<>();
Transaction buyTx = null;
for (Transaction tx : transactions) {
if (tx.getType() == SignalType.BUY) {
buyTx = tx;
} else if (tx.getType() == SignalType.SELL && buyTx != null) {
long days = ChronoUnit.DAYS.between(buyTx.getDate(), tx.getDate());
holdingDays.add(days);
buyTx = null;
}
}
return holdingDays.isEmpty() ? 0 :
holdingDays.stream().mapToLong(Long::longValue).average().orElse(0);
}
private PerformanceMetrics calculateAggregateMetrics(
Map<String, BacktestResult> symbolResults,
Map<String, Double> allocations,
double totalCapital
) {
// Weighted average of individual metrics
double weightedSharpe = 0;
double weightedReturn = 0;
double totalMaxDrawdown = 0;
int totalTrades = 0;
int totalWins = 0;
int totalLosses = 0;
for (var entry : symbolResults.entrySet()) {
double weight = allocations.getOrDefault(entry.getKey(), 0.0) / totalCapital;
PerformanceMetrics m = entry.getValue().getMetrics();
weightedSharpe += m.getSharpeRatio() * weight;
weightedReturn += m.getAnnualizedReturn() * weight;
totalMaxDrawdown = Math.min(totalMaxDrawdown, m.getMaxDrawdown());
totalTrades += m.getTotalTrades();
totalWins += m.getWinningTrades();
totalLosses += m.getLosingTrades();
}
double winRate = totalTrades == 0 ? 0 : (double) totalWins / totalTrades * 100.0;
return PerformanceMetrics.builder()
.sharpeRatio(round(weightedSharpe))
.maxDrawdown(round(totalMaxDrawdown))
.winRate(round(winRate))
.totalTrades(totalTrades)
.winningTrades(totalWins)
.losingTrades(totalLosses)
.annualizedReturn(round(weightedReturn))
.build();
}
/* ==========================
Parameterized Strategy Factory
========================== */
private Strategy createParameterizedStrategy(StrategyType type, Map<String, String> params) {
return switch (type) {
case SMA -> {
int shortPeriod = Integer.parseInt(params.getOrDefault("shortPeriod", "20"));
int longPeriod = Integer.parseInt(params.getOrDefault("longPeriod", "50"));
yield new SmaCrossoverStrategy(shortPeriod, longPeriod);
}
case RSI -> {
// RSI uses class constants — for custom params, create a new configurable version
yield strategyFactory.getStrategy(type);
}
case MACD -> {
int fast = Integer.parseInt(params.getOrDefault("fastPeriod", "12"));
int slow = Integer.parseInt(params.getOrDefault("slowPeriod", "26"));
int signal = Integer.parseInt(params.getOrDefault("signalPeriod", "9"));
yield new MacdStrategy(fast, slow, signal);
}
case BUY_AND_HOLD -> strategyFactory.getStrategy(type);
};
}
private double round(double value) {
return Math.round(value * 100.0) / 100.0;
}
}
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