Pullback Strategy Backtested in Tradingview

QuantProgram · Intermediate ·🎮 Reinforcement Learning ·4y ago

About this lesson

We have backtested a really good pullback strategy in Tradingview Pinescript. This has a really good risk to reward ratio of 3:1 and is meant ideally for stocks. Hope you like it. Click on the link below if you want to download the code. https://www.quantprogram.com/PullbackStrategy Let us know if you have any questions. HAPPY TO HELP. Check out our channel for more backtesting and strategy videos. Backtesting Pullback Strategy Pinecript: https://youtu.be/F_yGjiB0bro Stan Weinstein Strategy Pinecript code: https://youtu.be/Wodr4rCWzPw Create Stop Loss Take Profit Code: https://youtu.be/yP7qWD0JElo Creating Trailing stop Loss in Tradingview Pinescript: https://youtu.be/ZWyVF0fmGMs RSI divergence Pinescript code: https://youtu.be/zCfMv_FxvME Donchian Breakout Pinescript Code: https://youtu.be/7fBlpT0YHpc Inside day Strategy Pinescript Code: https://youtu.be/_-QIv0KYnSM Bullish Engulfing Strategy Pinescript Code: https://youtu.be/JMEI9zbacbA Disclaimer: The contents provided in the channel are purely educational. We do not provide any financial or investment advice. There is a very high degree of risk involved in trading. Past results are not indicative of future returns. quantprogram.com and all individuals affiliated with this site assume no responsibilities for your trading and investment results. The contents, videos, columns, articles and all other features are for educational purposes only and should not be construed as investment advice.

Original Description

We have backtested a really good pullback strategy in Tradingview Pinescript. This has a really good risk to reward ratio of 3:1 and is meant ideally for stocks. Hope you like it. Click on the link below if you want to download the code. https://www.quantprogram.com/PullbackStrategy Let us know if you have any questions. HAPPY TO HELP. Check out our channel for more backtesting and strategy videos. Backtesting Pullback Strategy Pinecript: https://youtu.be/F_yGjiB0bro Stan Weinstein Strategy Pinecript code: https://youtu.be/Wodr4rCWzPw Create Stop Loss Take Profit Code: https://youtu.be/yP7qWD0JElo Creating Trailing stop Loss in Tradingview Pinescript: https://youtu.be/ZWyVF0fmGMs RSI divergence Pinescript code: https://youtu.be/zCfMv_FxvME Donchian Breakout Pinescript Code: https://youtu.be/7fBlpT0YHpc Inside day Strategy Pinescript Code: https://youtu.be/_-QIv0KYnSM Bullish Engulfing Strategy Pinescript Code: https://youtu.be/JMEI9zbacbA Disclaimer: The contents provided in the channel are purely educational. We do not provide any financial or investment advice. There is a very high degree of risk involved in trading. Past results are not indicative of future returns. quantprogram.com and all individuals affiliated with this site assume no responsibilities for your trading and investment results. The contents, videos, columns, articles and all other features are for educational purposes only and should not be construed as investment advice.
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