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| import streamlit as st | |
| import yfinance as yf | |
| import pandas as pd | |
| import numpy as np | |
| import plotly.graph_objs as go | |
| from itertools import product | |
| from datetime import datetime, timedelta | |
| from plotly.subplots import make_subplots | |
| # Set Streamlit page configuration | |
| st.set_page_config(page_title="Triple Moving Average Crossover Strategy", layout="wide") | |
| # Title and description | |
| st.title("Triple Moving Average Crossover Strategy") | |
| st.write(""" | |
| This tool allows users to backtest a 3-way moving average crossover strategy across different time horizons (short-term, medium-term, and long-term). | |
| The strategy uses three different moving averages to generate buy/sell signals when shorter-term averages cross above or below longer-term averages. | |
| By adjusting parameters like the length of each moving average and the signal threshold, you can further customize how strict or lenient the crossover signals are. | |
| """) | |
| # Sidebar: How to use the app | |
| with st.sidebar.expander("How to Use", expanded=False): | |
| st.write(""" | |
| 1. **Select Ticker**: Choose the asset ticker symbol (e.g., AAPL, TSLA, BTC-USD) and date range for historical data. | |
| 2. **Run Strategy**: Click "Run Strategy" to perform optimization and backtesting of the strategy using the default parameters for the selected horizon. | |
| 3. **Adjust Parameters**: After running the strategy, use the sliders to adjust the moving average windows and threshold, and see the results update live. | |
| 4. **Threshold Parameter**: Controls how strict the buy/sell signals are when moving averages cross. Lower thresholds generate more signals; higher thresholds generate fewer, stricter signals. | |
| """) | |
| # Sidebar: Navigation | |
| st.sidebar.markdown("### Page Navigation") | |
| page = st.sidebar.radio("Select Strategy Horizon", options=["Short-Term", "Medium-Term", "Long-Term"]) | |
| # Sidebar: Select Ticker and Date Range | |
| with st.sidebar.expander("Asset Settings", expanded=True): | |
| ticker = st.text_input("Asset Symbol", value="AAPL", help="Ticker symbol (Indicate the stock ticker or Cryptocurrency Pair (e.g., AAPL, BTC-USD))") | |
| start_date = st.date_input("Start Date", value=datetime(2015, 1, 1), help="Select the start date for historical data.") | |
| end_date = st.date_input("End Date", value=datetime.today() + timedelta(days=1), help="Select the end date for historical data.") | |
| # Function to download data with yfinance adjustments | |
| def download_data(ticker, start, end): | |
| data = yf.download(ticker, start=start, end=end, auto_adjust=False) | |
| if isinstance(data.columns, pd.MultiIndex): | |
| data.columns = data.columns.get_level_values(0) | |
| if data.empty: | |
| raise ValueError(f"No data fetched for {ticker} from {start} to {end}.") | |
| return data | |
| # Function to calculate moving averages | |
| def calculate_moving_averages(data, short_window, medium_window, long_window): | |
| data['short_ma'] = data['Adj Close'].rolling(window=short_window).mean() | |
| data['medium_ma'] = data['Adj Close'].rolling(window=medium_window).mean() | |
| data['long_ma'] = data['Adj Close'].rolling(window=long_window).mean() | |
| return data | |
| # Function to generate trading signals with a percentage-based threshold | |
| def generate_signals(data, threshold=0.01): | |
| data['signal'] = 0 | |
| data['signal'][(data['short_ma'] > data['medium_ma'] * (1 + threshold)) & | |
| (data['medium_ma'] > data['long_ma'] * (1 + threshold))] = 1 | |
| data['signal'][(data['short_ma'] < data['medium_ma'] * (1 - threshold)) & | |
| (data['medium_ma'] < data['long_ma'] * (1 - threshold))] = -1 | |
| data['positions'] = data['signal'].diff() | |
| return data | |
| # Function to calculate equity curve | |
| def calculate_equity_curve(data): | |
| data['returns'] = data['Adj Close'].pct_change() | |
| data['strategy_returns'] = data['returns'] * data['signal'].shift(1) | |
| data['equity_curve'] = (1 + data['strategy_returns']).cumprod() | |
| return data | |
| # Function to optimize parameters for different trading terms | |
| def optimize_parameters(data, short_window_range, medium_window_range, long_window_range): | |
| best_params = None | |
| best_equity = 0 | |
| for short, medium, long in product(short_window_range, medium_window_range, long_window_range): | |
| if short < medium < long: | |
| df = calculate_moving_averages(data.copy(), short, medium, long) | |
| df = generate_signals(df) | |
| df = calculate_equity_curve(df) | |
| final_equity = df['equity_curve'].iloc[-1] | |
| if final_equity > best_equity: | |
| best_equity = final_equity | |
| best_params = (short, medium, long) | |
| return best_params, best_equity | |
| # Function to execute and plot the strategy | |
| def execute_strategy(data, short_window, medium_window, long_window, threshold, title_suffix): | |
| data = calculate_moving_averages(data, short_window, medium_window, long_window) | |
| data = generate_signals(data, threshold) | |
| data = calculate_equity_curve(data) | |
| return data | |
| # Function to plot results with subplots for better alignment | |
| def plot_results(data, params, title_suffix): | |
| # Create subplots: 2 rows (Price + MA, and Equity Curve), shared x-axis for alignment | |
| fig = make_subplots( | |
| rows=2, cols=1, shared_xaxes=True, | |
| vertical_spacing=0.1, # Increased vertical spacing between plots | |
| subplot_titles=(f'{title_suffix} Price and Moving Averages', 'Equity Curve') | |
| ) | |
| # Price and Moving Averages plot | |
| fig.add_trace(go.Scatter(x=data.index, y=data['Adj Close'], mode='lines', name='Price', line=dict(color='white')), row=1, col=1) | |
| fig.add_trace(go.Scatter(x=data.index, y=data['short_ma'], mode='lines', name=f'Short MA ({params[0]})', line=dict(color='blue')), row=1, col=1) | |
| fig.add_trace(go.Scatter(x=data.index, y=data['medium_ma'], mode='lines', name=f'Medium MA ({params[1]})', line=dict(color='orange')), row=1, col=1) | |
| fig.add_trace(go.Scatter(x=data.index, y=data['long_ma'], mode='lines', name=f'Long MA ({params[2]})', line=dict(color='green')), row=1, col=1) | |
| # Buy/Sell Signals with markers | |
| buy_signals = data[data['positions'] == 1] | |
| sell_signals = data[data['positions'] == -1] | |
| fig.add_trace(go.Scatter(x=buy_signals.index, y=buy_signals['short_ma'], mode='markers', name='Buy Signal', | |
| marker=dict(color='green', symbol='triangle-up', size=10)), row=1, col=1) | |
| fig.add_trace(go.Scatter(x=sell_signals.index, y=sell_signals['short_ma'], mode='markers', name='Sell Signal', | |
| marker=dict(color='red', symbol='triangle-down', size=10)), row=1, col=1) | |
| # Equity Curve plot | |
| fig.add_trace(go.Scatter(x=data.index, y=data['equity_curve'], mode='lines', name='Equity Curve', line=dict(color='blue')), row=2, col=1) | |
| # Update layout for better clarity and spacing | |
| fig.update_layout( | |
| height=800, # Increased height for better visualization | |
| title_text=f'{title_suffix} 3-Way Moving Average Crossover', | |
| xaxis_title='Date', | |
| yaxis_title='Price', | |
| legend=dict(orientation="h", yanchor="bottom", y=1.15, xanchor="center", x=0.5), | |
| margin=dict(t=30, b=30), # Adjust top and bottom margins for spacing | |
| font=dict(size=12), | |
| showlegend=True | |
| ) | |
| # Display the chart in Streamlit | |
| st.plotly_chart(fig, use_container_width=True) | |
| # Load and cache data | |
| data = download_data(ticker, start_date, end_date) | |
| # Short, Medium, Long-Term settings | |
| horizons = { | |
| "Short-Term": {"short_range": range(2, 10, 1), "medium_range": range(10, 20, 1), "long_range": range(20, 50, 2)}, | |
| "Medium-Term": {"short_range": range(10, 30, 2), "medium_range": range(30, 60, 3), "long_range": range(60, 100, 5)}, | |
| "Long-Term": {"short_range": range(30, 60, 5), "medium_range": range(60, 120, 10), "long_range": range(120, 200, 10)} | |
| } | |
| # Cache the results for each horizon so they persist when switching between pages | |
| if "results_cache" not in st.session_state: | |
| st.session_state["results_cache"] = {} | |
| # Initialize or update the MA parameters and threshold based on the selected page | |
| if page in st.session_state["results_cache"]: | |
| params = st.session_state["results_cache"][page]["params"] | |
| threshold_value = st.session_state["results_cache"][page]["threshold"] | |
| else: | |
| params = None | |
| threshold_value = 0.01 # Default value for threshold | |
| # Run Strategy Button | |
| run_strategy = st.sidebar.button(f"Run Strategy for {page}") | |
| run_with_adjusted_params = False | |
| # If Run Strategy is clicked, run optimization and reset parameters | |
| if run_strategy: | |
| horizon_settings = horizons.get(page) | |
| # Re-run optimization and reset to best parameters | |
| best_params, best_equity = optimize_parameters( | |
| data, | |
| short_window_range=horizon_settings["short_range"], | |
| medium_window_range=horizon_settings["medium_range"], | |
| long_window_range=horizon_settings["long_range"] | |
| ) | |
| # Cache the best parameters and reset adjusted parameters to best params | |
| st.session_state["results_cache"][page] = { | |
| "best_params": best_params, | |
| "best_equity": best_equity, | |
| "threshold": threshold_value, # Store the default threshold initially | |
| "params": best_params, # Reset to best params after optimization | |
| } | |
| # Reset sliders to best parameters after optimization | |
| params = best_params | |
| run_with_adjusted_params = True | |
| # If user-adjusted parameters (after the initial run) | |
| if params: | |
| horizon_settings = horizons.get(page) | |
| short_window = st.sidebar.slider( | |
| f"Short MA Window ({page})", | |
| min_value=horizon_settings["short_range"].start, | |
| max_value=horizon_settings["short_range"].stop - 1, | |
| value=params[0], | |
| help="Defines the window for the shortest moving average. Increasing this value smooths the moving average and reduces its sensitivity to price changes." | |
| ) | |
| medium_window = st.sidebar.slider( | |
| f"Medium MA Window ({page})", | |
| min_value=horizon_settings["medium_range"].start, | |
| max_value=horizon_settings["medium_range"].stop - 1, | |
| value=params[1], | |
| help="Defines the window for the medium moving average. A larger window increases smoothing and lags price changes more than the short MA." | |
| ) | |
| long_window = st.sidebar.slider( | |
| f"Long MA Window ({page})", | |
| min_value=horizon_settings["long_range"].start, | |
| max_value=horizon_settings["long_range"].stop - 1, | |
| value=params[2], | |
| help="Defines the window for the long moving average. A larger window results in a much slower-moving average that tracks long-term trends." | |
| ) | |
| threshold = st.sidebar.slider( | |
| f"Threshold ({page})", | |
| 0.0, 0.05, threshold_value, 0.01, | |
| help="Adjusts the strictness of the crossover signals. A higher threshold generates fewer, stricter signals." | |
| ) | |
| # If any adjustments are made to the parameters, mark the run as "adjusted" | |
| run_with_adjusted_params = True | |
| # Execute the strategy using user-adjusted parameters | |
| result_data = execute_strategy(data.copy(), short_window, medium_window, long_window, threshold, page) | |
| # Cache updated parameters and threshold without overwriting the best params | |
| st.session_state["results_cache"][page]["params"] = (short_window, medium_window, long_window) | |
| st.session_state["results_cache"][page]["threshold"] = threshold | |
| st.session_state["results_cache"][page]["data"] = result_data | |
| # If results are cached, display them | |
| if page in st.session_state["results_cache"]: | |
| cached_result = st.session_state["results_cache"][page] | |
| # Display best parameters in JSON (always show the optimized "best" params, not the adjusted ones) | |
| st.json({ | |
| "Best Parameters": { | |
| "Short MA": cached_result["best_params"][0], | |
| "Medium MA": cached_result["best_params"][1], | |
| "Long MA": cached_result["best_params"][2], | |
| "Threshold": cached_result["threshold"], | |
| "Final Equity": cached_result["best_equity"] | |
| } | |
| }) | |
| # Plot results with either optimized or adjusted parameters | |
| if "data" in cached_result: | |
| plot_results(cached_result["data"], cached_result["params"], page) | |
| hide_streamlit_style = """ | |
| <style> | |
| #MainMenu {visibility: hidden;} | |
| footer {visibility: hidden;} | |
| </style> | |
| """ | |
| st.markdown(hide_streamlit_style, unsafe_allow_html=True) |