TASC 2025.02 Autocorrelation Indicator█ OVERVIEW
This script implements the Autocorrelation Indicator introduced by John Ehlers in the "Drunkard's Walk: Theory And Measurement By Autocorrelation" article from the February 2025 edition of TASC's Traders' Tips . The indicator calculates the autocorrelation of a price series across several lags to construct a periodogram , which traders can use to identify market cycles, trends, and potential reversal patterns.
█ CONCEPTS
Drunkard's walk
A drunkard's walk , formally known as a random walk , is a type of stochastic process that models the evolution of a system or variable through successive random steps.
In his article, John Ehlers relates this model to market data. He discusses two first- and second-order partial differential equations, modified for discrete (non-continuous) data, that can represent solutions to the discrete random walk problem: the diffusion equation and the wave equation. According to Ehlers, market data takes on a mixture of two "modes" described by these equations. He theorizes that when "diffusion mode" is dominant, trading success is almost a matter of luck, and when "wave mode" is dominant, indicators may have improved performance.
Pink spectrum
John Ehlers explains that many recent academic studies affirm that market data has a pink spectrum , meaning the power spectral density of the data is proportional to the wavelengths it contains, like pink noise . A random walk with a pink spectrum suggests that the states of the random variable are correlated and not independent. In other words, the random variable exhibits long-range dependence with respect to previous states.
Autocorrelation function (ACF)
Autocorrelation measures the correlation of a time series with a delayed copy, or lag , of itself. The autocorrelation function (ACF) is a method that evaluates autocorrelation across a range of lags , which can help to identify patterns, trends, and cycles in stochastic market data. Analysts often use ACF to detect and characterize long-range dependence in a time series.
The Autocorrelation Indicator evaluates the ACF of market prices over a fixed range of lags, expressing the results as a color-coded heatmap representing a dynamic periodogram. Ehlers suggests the information from the periodogram can help traders identify different market behaviors, including:
Cycles : Distinguishable as repeated patterns in the periodogram.
Reversals : Indicated by sharp vertical changes in the periodogram when the indicator uses a short data length .
Trends : Indicated by increasing correlation across lags, starting with the shortest, over time.
█ USAGE
This script calculates the Autocorrelation Indicator on an input "Source" series, smoothed by Ehlers' UltimateSmoother filter, and plots several color-coded lines to represent the periodogram's information. Each line corresponds to an analyzed lag, with the shortest lag's line at the bottom of the pane. Green hues in the line indicate a positive correlation for the lag, red hues indicate a negative correlation (anticorrelation), and orange or yellow hues mean the correlation is near zero.
Because Pine has a limit on the number of plots for a single indicator, this script divides the periodogram display into three distinct ranges that cover different lags. To see the full periodogram, add three instances of this script to the chart and set the "Lag range" input for each to a different value, as demonstrated in the chart above.
With a modest autocorrelation length, such as 20 on a "1D" chart, traders can identify seasonal patterns in the price series, which can help to pinpoint cycles and moderate trends. For instance, on the daily ES1! chart above, the indicator shows repetitive, similar patterns through fall 2023 and winter 2023-2024. The green "triangular" shape rising from the zero lag baseline over different time ranges corresponds to seasonal trends in the data.
To identify turning points in the price series, Ehlers recommends using a short autocorrelation length, such as 2. With this length, users can observe sharp, sudden shifts along the vertical axis, which suggest potential turning points from upward to downward or vice versa.
Cari dalam skrip untuk "2025年5月+全球经济指标+最新数据"
Highs & Lows RTH/OVN/IBs/D/W/M/YOverview
Plots the highs and lows of RTH, OVN/ETH, IBs of those sessions, previous Day, Week, Month, and Year.
Features
Allows the user to enable/disable plotting the high/low of each period.
Lines' length, offset, and colors can be customized
Labels' position, size, color, and style can be customized
Support
Questions, feedbacks, and requests are welcomed. Please feel free to use Comments or direct private message via TradingView.
Disclaimer
This stock chart indicator provided is for informational purposes only and should not be considered as financial or investment advice. The data and information presented in this indicator are obtained from sources believed to be reliable, but we do not warrant its completeness or accuracy.
Users should be aware that:
Any investment decisions made based on this indicator are at your own risk.
The creators and providers of this indicator disclaim all liability for any losses, damages, or other consequences resulting from its use. By using this stock chart indicator, you acknowledge and accept the inherent risks associated with trading and investing in financial markets.
Release Date: 2025-01-17
Release Version: v1 r1
Release Notes Date: 2025-01-17
TASC 2025.01 Linear Predictive Filters█ OVERVIEW
This script implements a suite of tools for identifying and utilizing dominant cycles in time series data, as introduced by John Ehlers in the "Linear Predictive Filters And Instantaneous Frequency" article featured in the January 2025 edition of TASC's Traders' Tips . Dominant cycle information can help traders adapt their indicators and strategies to changing market conditions.
█ CONCEPTS
Conventional technical indicators and strategies often rely on static, unchanging parameters, which may fail to account for the dynamic nature of market data. In his article, John Ehlers applies digital signal processing principles to address this issue, introducing linear predictive filters to identify cyclic information for adapting indicators and strategies to evolving market conditions.
This approach treats market data as a complex series in the time domain. Analyzing the series in the frequency domain reveals information about its cyclic components. To reduce the impact of frequencies outside a range of interest and focus on a specific range of cycles, Ehlers applies second-order highpass and lowpass filters to the price data, which attenuate or remove wavelengths outside the desired range. This band-limited analysis isolates specific parts of the frequency spectrum for various trading styles, e.g., longer wavelengths for position trading or shorter wavelengths for swing trading.
After filtering the series to produce band-limited data, Ehlers applies a linear predictive filter to predict future values a few bars ahead. The filter, calculated based on the techniques proposed by Lloyd Griffiths, adaptively minimizes the error between the latest data point and prediction, successively adjusting its coefficients to align with the band-limited series. The filter's coefficients can then be applied to generate an adaptive estimate of the band-limited data's structure in the frequency domain and identify the dominant cycle.
█ USAGE
This script implements the following tools presented in the article:
Griffiths Predictor
This tool calculates a linear predictive filter to forecast future data points in band-limited price data. The crosses between the prediction and signal lines can provide potential trade signals.
Griffiths Spectrum
This tool calculates a partial frequency spectrum of the band-limited price data derived from the linear predictive filter's coefficients, displaying a color-coded representation of the frequency information in the pane. This mode's display represents the data as a periodogram . The bottom of each plotted bar corresponds to a specific analyzed period (inverse of frequency), and the bar's color represents the presence of that periodic cycle in the time series relative to the one with the highest presence (i.e., the dominant cycle). Warmer, brighter colors indicate a higher presence of the cycle in the series, whereas darker colors indicate a lower presence.
Griffiths Dominant Cycle
This tool compares the cyclic components within the partial spectrum and identifies the frequency with the highest power, i.e., the dominant cycle . Traders can use this dominant cycle information to tune other indicators and strategies, which may help promote better alignment with dynamic market conditions.
Notes on parameters
Bandpass boundaries:
In the article, Ehlers recommends an upper bound of 125 bars or higher to capture longer-term cycles for position trading. He recommends an upper bound of 40 bars and a lower bound of 18 bars for swing trading. If traders use smaller lower bounds, Ehlers advises a minimum of eight bars to minimize the potential effects of aliasing.
Data length:
The Griffiths predictor can use a relatively small data length, as autocorrelation diminishes rapidly with lag. However, for optimal spectrum and dominant cycle calculations, the length must match or exceed the upper bound of the bandpass filter. Ehlers recommends avoiding excessively long lengths to maintain responsiveness to shorter-term cycles.
Ripple (XRP) Model PriceAn article titled Bitcoin Stock-to-Flow Model was published in March 2019 by "PlanB" with mathematical model used to calculate Bitcoin model price during the time. We know that Ripple has a strong correlation with Bitcoin. But does this correlation have a definite rule?
In this study, we examine the relationship between bitcoin's stock-to-flow ratio and the ripple(XRP) price.
The Halving and the stock-to-flow ratio
Stock-to-flow is defined as a relationship between production and current stock that is out there.
SF = stock / flow
The term "halving" as it relates to Bitcoin has to do with how many Bitcoin tokens are found in a newly created block. Back in 2009, when Bitcoin launched, each block contained 50 BTC, but this amount was set to be reduced by 50% every 210,000 blocks (about 4 years). Today, there have been three halving events, and a block now only contains 6.25 BTC. When the next halving occurs, a block will only contain 3.125 BTC. Halving events will continue until the reward for minors reaches 0 BTC.
With each halving, the stock-to-flow ratio increased and Bitcoin experienced a huge bull market that absolutely crushed its previous all-time high. But what exactly does this affect the price of Ripple?
Price Model
I have used Bitcoin's stock-to-flow ratio and Ripple's price data from April 1, 2014 to November 3, 2021 (Daily Close-Price) as the statistical population.
Then I used linear regression to determine the relationship between the natural logarithm of the Ripple price and the natural logarithm of the Bitcoin's stock-to-flow (BSF).
You can see the results in the image below:
Basic Equation : ln(Model Price) = 3.2977 * ln(BSF) - 12.13
The high R-Squared value (R2 = 0.83) indicates a large positive linear association.
Then I "winsorized" the statistical data to limit extreme values to reduce the effect of possibly spurious outliers (This process affected less than 4.5% of the total price data).
ln(Model Price) = 3.3297 * ln(BSF) - 12.214
If we raise the both sides of the equation to the power of e, we will have:
============================================
Final Equation:
■ Model Price = Exp(- 12.214) * BSF ^ 3.3297
Where BSF is Bitcoin's stock-to-flow
============================================
If we put current Bitcoin's stock-to-flow value (54.2) into this equation we get value of 2.95USD. This is the price which is indicated by the model.
There is a power law relationship between the market price and Bitcoin's stock-to-flow (BSF). Power laws are interesting because they reveal an underlying regularity in the properties of seemingly random complex systems.
I plotted XRP model price (black) over time on the chart.
Estimating the range of price movements
I also used several bands to estimate the range of price movements and used the residual standard deviation to determine the equation for those bands.
Residual STDEV = 0.82188
ln(First-Upper-Band) = 3.3297 * ln(BSF) - 12.214 + Residual STDEV =>
ln(First-Upper-Band) = 3.3297 * ln(BSF) – 11.392 =>
■ First-Upper-Band = Exp(-11.392) * BSF ^ 3.3297
In the same way:
■ First-Lower-Band = Exp(-13.036) * BSF ^ 3.3297
I also used twice the residual standard deviation to define two extra bands:
■ Second-Upper-Band = Exp(-10.570) * BSF ^ 3.3297
■ Second-Lower-Band = Exp(-13.858) * BSF ^ 3.3297
These bands can be used to determine overbought and oversold levels.
Estimating of the future price movements
Because we know that every four years the stock-to-flow ratio, or current circulation relative to new supply, doubles, this metric can be plotted into the future.
At the time of the next halving event, Bitcoins will be produced at a rate of 450 BTC / day. There will be around 19,900,000 coins in circulation by August 2025
It is estimated that during first year of Bitcoin (2009) Satoshi Nakamoto (Bitcoin creator) mined around 1 million Bitcoins and did not move them until today. It can be debated if those coins might be lost or Satoshi is just waiting still to sell them but the fact is that they are not moving at all ever since. We simply decrease stock amount for 1 million BTC so stock to flow value would be:
BSF = (19,900,000 – 1.000.000) / (450 * 365) =115.07
Thus, Bitcoin's stock-to-flow will increase to around 115 until AUG 2025. If we put this number in the equation:
Model Price = Exp(- 12.214) * 114 ^ 3.3297 = 36.06$
Ripple has a fixed supply rate. In AUG 2025, the total number of coins in circulation will be about 56,000,000,000. According to the equation, Ripple's market cap will reach $2 trillion.
Note that these studies have been conducted only to better understand price movements and are not a financial advice.
X-Trend Macro Command CenterX-Trend Macro Command Center (MCC) | Institutional Grade Dashboard
📝 Description Body
The Invisible Engine of the Market Revealed.
Traders often focus solely on Price Action, ignoring the massive underwater currents that actually drive trends: Global Liquidity, Inflation, and Central Bank Policy. We created X-Trend Macro Command Center (MCC) to solve this problem.
This is not just an indicator. It is a fundamental heads-up display that bridges the gap between technical charts and macroeconomic reality.
💡 The Idea & Philosophy
Markets don't move in a vacuum. Bull runs are fueled by M2 Money Supply expansion and negative real yields. Crashes are triggered by liquidity crunches and aggressive rate hikes. X-Trend MCC was built to give retail traders the same "Macro Awareness" that institutional desks possess. It aggregates fragmented economic data from Federal Reserve databases (FRED) directly onto your chart in real-time.
🚀 Application & Logic
This tool is designed for Trend Traders, Crypto Investors, and Macro Analysts.
Identify the Regime: Instantly see if the environment is "RISK ON" (High Liquidity, Low Real Rates) or "RISK OFF" (Monetary Tightening).
Validate the Trend: Don't buy the dip if Liquidity (M2) is crashing. Don't short the rally if Real Yields are negative.
Multi-Region Analysis: Switch instantly between economic powerhouses (US, China, Japan) to see where the capital is flowing.
📊 Dashboard Metrics Explained
Every row in the Command Center tells a specific story about the economy:
Interest Rate: The "Gravity" of finance. Higher rates weigh down risk assets (Stocks/Crypto).
Inflation (YoY): The erosion of purchasing power. We calculate this dynamically based on CPI data.
Real Yield (The "Golden" Metric): Calculated as Interest Rate - Inflation.
Green: Real Yield is low/negative. Cash is trash, assets fly.
Red: Real Yield is high. Cash is King, assets struggle.
US Debt & GDP: Fiscal health indicators formatted in Trillions ($T). Watch the Debt-to-GDP ratio—if it spikes >120%, expect currency debasement.
M2 Money Supply: The fuel tank of the market. Tracks the total amount of money in circulation.
↗ Trend: Liquidity is entering the system (Bullish).
↘ Trend: Liquidity is drying up (Bearish).
🧩 The X-Trend Ecosystem
X-Trend MCC is just the tip of the iceberg. This module is part of the larger X-Trend Project — a comprehensive suite of algorithmic tools being developed to quantify market chaos. While our Price Action algorithms (Lite/Pro/Ultra) handle the Micro, the MCC handles the Macro.
Technical Note:
Data Sources: Direct connection to FRED (Federal Reserve Economic Data).
Zero Repainting: Historical data is requested strictly using closed bars to ensure accuracy.
Open Source: We believe in transparency. The code is open for study under MPL 2.0.
Build by Dev0880 | X-Trend © 2025
Simple Candle Strategy# Candle Pattern Strategy - Pine Script V6
## Overview
A TradingView trading strategy script (Pine Script V6) that identifies candlestick patterns over a configurable lookback period and generates trading signals based on pattern recognition rules.
## Strategy Logic
The strategy analyzes the most recent N candlesticks (default: 5) and classifies their patterns into three categories, then generates buy/sell signals based on specific pattern combinations.
### Candlestick Pattern Classification
Each candlestick is classified as one of three types:
| Pattern | Definition | Formula |
|---------|-----------|---------|
| **Close at High** | Close price near the highest price of the candle | `(high - close) / (high - low) ≤ (1 - threshold)` |
| **Close at Low** | Close price near the lowest price of the candle | `(close - low) / (high - low) ≤ (1 - threshold)` |
| **Doji** | Opening and closing prices very close; long upper/lower wicks | `abs(close - open) / (high - low) ≤ threshold` |
### Trading Rules
| Condition | Action | Signal |
|-----------|--------|--------|
| Number of Doji candles ≥ 3 | **SKIP** - Market is too chaotic | No trade |
| "Close at High" count ≥ 2 + Last candle closes at high | **LONG** - Bullish confirmation | Buy Signal |
| "Close at Low" count ≥ 2 + Last candle closes at low | **SHORT** - Bearish confirmation | Sell Signal |
## Configuration Parameters
All parameters are adjustable in TradingView's "Settings/Inputs" tab:
| Parameter | Default | Range | Description |
|-----------|---------|-------|-------------|
| **K-line Lookback Period** | 5 | 3-20 | Number of candlesticks to analyze |
| **Doji Threshold** | 0.1 | 0.0-1.0 | Body size / Total range ratio for doji identification |
| **Doji Count Limit** | 3 | 1-10 | Number of dojis that triggers skip signal |
| **Close at High Proximity** | 0.9 | 0.5-1.0 | Required proximity to highest price (0.9 = 90%) |
| **Close at Low Proximity** | 0.9 | 0.5-1.0 | Required proximity to lowest price (0.9 = 90%) |
### Parameter Tuning Guide
#### Proximity Thresholds (Close at High/Low)
- **0.95 or higher**: Stricter - only very strong candles qualify
- **0.90 (default)**: Balanced - good for most market conditions
- **0.80 or lower**: Looser - catches more patterns, higher false signals
#### Doji Threshold
- **0.05-0.10**: Strict doji identification
- **0.10-0.15**: Standard doji detection
- **0.15+**: Includes near-doji patterns
#### Lookback Period
- **3-5 bars**: Fast, sensitive to recent patterns
- **5-10 bars**: Balanced approach
- **10-20 bars**: Slower, filters out noise
## Visual Indicators
### Chart Markers
- **Green Up Arrow** ▲: Long entry signal triggered
- **Red Down Arrow** ▼: Short entry signal triggered
- **Gray X**: Skip signal (too many dojis detected)
### Statistics Table
Located at top-right corner, displays real-time pattern counts:
- **Close at High**: Count of candles closing near the high
- **Close at Low**: Count of candles closing near the low
- **Doji**: Count of doji/near-doji patterns
### Signal Labels
- Green label: "✓ Long condition met" - below entry bar
- Red label: "✓ Short condition met" - above entry bar
- Gray label: "⊠ Too many dojis, skip" - trade skipped
## Risk Management
### Exit Strategy
The strategy includes built-in exit rules based on ATR (Average True Range):
- **Stop Loss**: ATR × 2
- **Take Profit**: ATR × 3
Example: If ATR is $10, stop loss is at -$20 and take profit is at +$30
### Position Sizing
Default: 100% of equity per trade (adjustable in strategy properties)
**Recommendation**: Reduce to 10-25% of equity for safer capital allocation
## How to Use
### 1. Copy the Script
1. Open TradingView
2. Go to Pine Script Editor
3. Create a new indicator
4. Copy the entire `candle_pattern_strategy.pine` content
5. Click "Add to Chart"
### 2. Apply to Chart
- Select your preferred timeframe (1m, 5m, 15m, 1h, 4h, 1d)
- Choose a trading symbol (stocks, forex, crypto, etc.)
- The strategy will generate signals on all historical bars and in real-time
### 3. Configure Parameters
1. Right-click the strategy on chart → "Settings"
2. Adjust parameters in the "Inputs" tab
3. Strategy will recalculate automatically
4. Backtest results appear in the Strategy Tester panel
### 4. Backtesting
1. Click "Strategy Tester" (bottom panel)
2. Set date range for historical testing
3. Review performance metrics:
- Win rate
- Profit factor
- Drawdown
- Total returns
## Key Features
✅ **Execution Model Compliant** - Follows official Pine Script V6 standards
✅ **Global Scope** - All historical references in global scope for consistency
✅ **Adjustable Sensitivity** - Fine-tune all pattern detection thresholds
✅ **Real-time Updates** - Works on both historical and real-time bars
✅ **Visual Feedback** - Clear signals with labels and statistics table
✅ **Risk Management** - Built-in ATR-based stop loss and take profit
✅ **No Repainting** - Signals remain consistent after bar closes
## Important Notes
### Before Trading Live
1. **Backtest thoroughly**: Test on at least 6-12 months of historical data
2. **Paper trading first**: Practice with simulated trades
3. **Optimize parameters**: Find the best settings for your trading instrument
4. **Manage risk**: Never risk more than 1-2% per trade
5. **Monitor performance**: Review trades regularly and adjust as needed
### Market Conditions
The strategy works best in:
- Trending markets with clear directional bias
- Range-bound markets with defined support/resistance
- Markets with moderate volatility
The strategy may underperform in:
- Highly choppy/noisy markets (many false signals)
- Markets with gaps or overnight gaps
- Low liquidity periods
### Limitations
- Works on chart timeframes only (not intrabar analysis)
- Requires at least 5 bars of history (configurable)
- Fixed exit rules may not suit all trading styles
- No trend filtering (will trade both directions)
## Technical Details
### Historical Buffer Management
The strategy declares maximum bars back to ensure enough historical data:
```pine
max_bars_back(close, 20)
max_bars_back(open, 20)
max_bars_back(high, 20)
max_bars_back(low, 20)
```
This prevents runtime errors when accessing historical candlestick data.
### Pattern Detection Algorithm
```
For each bar in lookback period:
1. Calculate (high - close) / (high - low) → close_to_high_ratio
2. If close_to_high_ratio ≤ (1 - threshold) → count as "Close at High"
3. Calculate (close - low) / (high - low) → close_to_low_ratio
4. If close_to_low_ratio ≤ (1 - threshold) → count as "Close at Low"
5. Calculate abs(close - open) / (high - low) → body_ratio
6. If body_ratio ≤ doji_threshold → count as "Doji"
Signal Generation:
7. If doji_count ≥ cross_count_limit → SKIP_SIGNAL
8. If close_at_high_count ≥ 2 AND last_close_at_high → LONG_SIGNAL
9. If close_at_low_count ≥ 2 AND last_close_at_low → SHORT_SIGNAL
```
## Example Scenarios
### Scenario 1: Bullish Signal
```
Last 5 bars pattern:
Bar 1: Closes at high (95%) ✓
Bar 2: Closes at high (92%) ✓
Bar 3: Closes at mid (50%)
Bar 4: Closes at low (10%)
Bar 5: Closes at high (96%) ✓ (last bar)
Result:
- Close at high count: 3 (≥ 2) ✓
- Last closes at high: ✓
- Doji count: 0 (< 3) ✓
→ LONG SIGNAL ✓
```
### Scenario 2: Skip Signal
```
Last 5 bars pattern:
Bar 1: Doji pattern ✓
Bar 2: Doji pattern ✓
Bar 3: Closes at mid
Bar 4: Doji pattern ✓
Bar 5: Closes at high
Result:
- Doji count: 3 (≥ 3)
→ SKIP SIGNAL - Market too chaotic
```
## Performance Optimization
### Tips for Better Results
1. **Use Higher Timeframes**: 15m or higher reduces false signals
2. **Combine with Indicators**: Add volume or trend filters
3. **Seasonal Adjustment**: Different parameters for different seasons
4. **Instrument Selection**: Test on liquid, high-volume instruments
5. **Regular Rebalancing**: Adjust parameters quarterly based on performance
## Troubleshooting
### No Signals Generated
- Check if lookback period is too large
- Verify proximity thresholds aren't too strict (try 0.85 instead of 0.95)
- Ensure doji limit allows for trading (try 4-5 instead of 3)
### Too Many False Signals
- Increase proximity thresholds to 0.95+
- Reduce lookback period to 3-4 bars
- Increase doji limit to 3-4
- Test on higher timeframes
### Strategy Tester Shows Losses
- Review individual trades to identify patterns
- Adjust stop loss and take profit ratios
- Change lookback period and thresholds
- Test on different market conditions
## References
- (www.tradingview.com)
- (www.tradingview.com)
- (www.investopedia.com)
- (www.investopedia.com)
## Disclaimer
**This strategy is provided for educational and research purposes only.**
- Not financial advice
- Past performance does not guarantee future results
- Always conduct thorough backtesting before live trading
- Trading involves significant risk of loss
- Use proper risk management and position sizing
## License
Created: December 15, 2025
Version: 1.0
---
**For updates and modifications, refer to the accompanying documentation files.**
Trading Dashboard + Daily SMAsThis indicator is an all-in-one workspace overlay designed for futures and intraday traders. It consolidates critical market internals, session statistics, and daily technical levels into a single, highly customizable dashboard.
The goal of this script is to reduce chart clutter by placing essential data into a clean table while overlaying key Daily Moving Averages onto your intraday timeframe.
Key Features:
1. Comprehensive Market Internals Dashboard Monitor the health of the broad market directly from your chart. The dashboard includes real-time data for:
VIX: Volatility Index.
TICK & TRIN: Sentiment and volume flow indicators.
Breadth Data: ADD, ADV, and DECL (Advance/Decline lines and volume).
Multi-Ticker Watch: Monitor 3 additional assets (Defaults: NQ, RTY, YM) with real-time price and % change.
2. Session Statistics & Probabilities Automated calculation of intraday statistics based on a user-defined lookback period (default 100 days):
RTH Data: Tracks Regular Trading Hours Open, Close, and Range.
Contextual ATR: Compares current RTH range to the 14-day ATR.
Probabilities: Displays historical probabilities for "Gap Fill," "Break of Yesterday's High," and "Break of Yesterday's Low."
3. Daily SMAs on Intraday Charts Plot key Daily Simple Moving Averages (21, 50, 200) directly on your lower timeframe charts (1m, 5m, etc.) without switching views.
Fully Customizable: Toggle each SMA on/off individually.
Color Control: Users can change the color of every SMA line to fit their theme.
4. "Dark Mode" Optimized The dashboard features a specific "Very Dark Grey" (#121212) background by default, designed to reduce eye strain and blend seamlessly with dark-themed trading setups.
Settings & Customization:
Session Times: Define your specific RTH start and end times.
Symbols: All ticker symbols (VIX, ADD, NQ, etc.) can be customized in the settings menu to match your data provider.
Visibility: Every element in the table and every SMA line has a toggle switch. You only see what you need.
Visuals: Change table position, text size, and line colors.
Author's Instructions: Configuration Guide
This script relies on specific ticker symbols to pull data for Market Internals (TICK, TRIN, ADD) and the Watchlist. Depending on your data subscription plan (CME, CBOE, etc.), you may need to adjust the default symbols to match what you have access to.
1. How to Change Symbols
Add the indicator to your chart.
Hover over the indicator name in the top-left corner and click the Settings (Gear Icon).
Scroll to the "Symbols" section.
Click inside the text box for the symbol you want to change.
2. Common Symbol Formats If the default symbols show "N/A" or "Error," try these alternatives based on your data feed:
TICK (NYSE Tick)
Default: USI:TICK (Requires specific data)
Alternative: TVC:TICK (General TradingView feed)
Alternative: TICK (Generic)
TRIN (Arms Index)
Default: USI:TRIN
Alternative: TVC:TRIN
Alternative: TRIN
Breadth (ADD/ADV/DECL)
ADD (Advance-Decline Line): Try USI:ADD, TVC:ADD, or ADD
ADV (Advancing Volume): Try USI:ADV, TVC:ADV, or UVOL (Up Volume)
DECL (Declining Volume): Try USI:DECL, TVC:DECL, or DVOL (Down Volume)
VIX
Standard: CBOE:VIX or TVC:VIX
3. Setting Up the Ticker Watchlist (Ticker 1, 2, 3) The script defaults to "Continuous Contracts" (indicated by the 1!), which automatically rolls to the front month.
Nasdaq: CME_MINI:NQ1!
S&P 500: CME_MINI:ES1!
Russell 2000: CME_MINI:RTY1!
Dow Jones: CBOT_MINI:YM1!
Note: If you want to watch a specific contract month (e.g., December 2025), enter the specific code like NQZ2025.
4. Troubleshooting "N/A" Data If a cell in the table is empty or says "N/A":
Verify you are not viewing the chart on a timeframe that excludes the data (though dynamic_requests=true usually handles this).
Ensure you have the correct data permission for that specific symbol.
Market Closed: Some internal data points only populate during the active NYSE session (09:30 - 16:00 ET).
Disclaimer: This tool is for informational purposes only and does not constitute financial advice. Past probabilities do not guarantee future results.
PatternTransitionTablesPatternTransitionTables Library
🌸 Part of GoemonYae Trading System (GYTS) 🌸
🌸 --------- 1. INTRODUCTION --------- 🌸
💮 Overview
This library provides precomputed state transition tables to enable ultra-efficient, O(1) computation of Ordinal Patterns. It is designed specifically to support high-performance indicators calculating Permutation Entropy and related complexity measures.
💮 The Problem & Solution
Calculating Permutation Entropy, as introduced by Bandt and Pompe (2002), typically requires computing ordinal patterns within a sliding window at every time step. The standard successive-pattern method (Equations 2+3 in the paper) requires ≤ 4d-1 operations per update.
Unakafova and Keller (2013) demonstrated that successive ordinal patterns "overlap" significantly. By knowing the current pattern index and the relative rank (position l) of just the single new data point, the next pattern index can be determined via a precomputed look-up table. Computing l still requires d comparisons, but the table lookup itself is O(1), eliminating the need for d multiplications and d additions. This reduces total operations from ≤ 4d-1 to ≤ 2d per update (Table 4). This library contains these precomputed tables for orders d = 2 through d = 5.
🌸 --------- 2. THEORETICAL BACKGROUND --------- 🌸
💮 Permutation Entropy
Bandt, C., & Pompe, B. (2002). Permutation entropy: A natural complexity measure for time series.
doi.org
This concept quantifies the complexity of a system by comparing the order of neighbouring values rather than their magnitudes. It is robust against noise and non-linear distortions, making it ideal for financial time series analysis.
💮 Efficient Computation
Unakafova, V. A., & Keller, K. (2013). Efficiently Measuring Complexity on the Basis of Real-World Data.
doi.org
This library implements the transition function φ_d(n, l) described in Equation 5 of the paper. It maps a current pattern index (n) and the position of the new value (l) to the successor pattern, reducing the complexity of updates to constant time O(1).
🌸 --------- 3. LIBRARY FUNCTIONALITY --------- 🌸
💮 Data Structure
The library stores transition matrices as flattened 1D integer arrays. These tables are mathematically rigorous representations of the factorial number system used to enumerate permutations.
💮 Core Function: get_successor()
This is the primary interface for the library for direct pattern updates.
• Input: The current pattern index and the rank position of the incoming price data.
• Process: Routes the request to the specific transition table for the chosen order (d=2 to d=5).
• Output: The integer index of the next ordinal pattern.
💮 Table Access: get_table()
This function returns the entire flattened transition table for a specified dimension. This enables local caching of the table (e.g. in an indicator's init() method), avoiding the overhead of repeated library calls during the calculation loop.
💮 Supported Orders & Terminology
The parameter d is the order of ordinal patterns (following Bandt & Pompe 2002). Each pattern of order d contains (d+1) data points, yielding (d+1)! unique patterns:
• d=2: 3 points → 6 unique patterns, 3 successor positions
• d=3: 4 points → 24 unique patterns, 4 successor positions
• d=4: 5 points → 120 unique patterns, 5 successor positions
• d=5: 6 points → 720 unique patterns, 6 successor positions
Note: d=6 is not implemented. The resulting code size (approx. 191k tokens) exceeds the Pine Script limit of 100k tokens (as of 2025-12).
Trend Following $BTC - Multi-Timeframe Structure + ReversTREND FOLLOWING STRATEGY - MULTI-TIMEFRAME STRUCTURE BREAKOUT SYSTEM
Strategy Overview
This is an enhanced Turtle Trading system designed for cryptocurrency spot trading. It combines Donchian Channel breakouts with multi-timeframe structure filtering and ATR-based dynamic risk management. The strategy trades both long and short positions using reverse signal exits to maximize trend capture.
Core Features
Multi-Timeframe Structure Filtering
The strategy uses Swing High/Low analysis to identify market structure trends. You can customize the structure timeframe (default: 3 minutes) to match your trading style. Only enters trades aligned with the identified trend direction, avoiding counter-trend positions that often lead to losses.
Reverse Signal Exit System
Instead of using fixed stop-losses or time-based exits, this strategy exits positions only when a reverse entry signal triggers. This approach maximizes trend profits and reduces premature exits during normal market retracements.
ATR Dynamic Pyramiding
Automatically adds positions when price moves 0.5 ATR in your favor. Supports up to 2 units maximum (adjustable). This pyramid scaling enhances profitability during strong trends while maintaining disciplined risk management.
Complete Risk Management
Fixed position sizing at 5000 USD per unit. Includes realistic commission fees of 0.06% (Binance spot rate). Initial capital set at 10,000 USD. All backtest parameters reflect real-world trading conditions.
Trading Logic
Entry Conditions
Long Entry: Close price breaks above the 20-period high AND structure trend is bullish (price breaks above Swing High)
Short Entry: Close price breaks below the 20-period low AND structure trend is bearish (price breaks below Swing Low)
Position Scaling
Long positions: Add when price rises 0.5 ATR or more
Short positions: Add when price falls 0.5 ATR or more
Maximum 2 units including initial entry
Exit Conditions
Long Exit: Triggers when short entry signal appears (price breaks 20-period low + structure turns bearish)
Short Exit: Triggers when long entry signal appears (price breaks 20-period high + structure turns bullish)
Default Parameters
Channel Settings
Entry Channel Period: 20 (Donchian Channel breakout period)
Exit Channel Period: 10 (reserved parameter)
ATR Settings
ATR Period: 20
Stop Loss ATR Multiplier: 2.0
Add Position ATR Multiplier: 0.5
Structure Filter
Swing Length: 300 (Swing High/Low calculation period)
Structure Timeframe: 3 minutes
Adjust these based on your trading timeframe and asset volatility
Position Management
Maximum Units: 2 (including initial entry)
Capital Per Unit: 5000 USD
Visualization Features
Background Colors
Light Green: Bullish market structure
Light Red: Bearish market structure
Dark Green: Long position entry
Dark Red: Short position entry
Optional Display Elements (Default: OFF)
Entry and exit channel lines
Structure high/low reference lines
ATR stop-loss indicator
Next position add level
Entry/exit labels
Alert Message Format
The strategy sends notifications with the following format:
Entry: "5m Long EP:90450.50"
Add Position: "15m Add Long 2/2 EP:91000.25"
Exit: "5m Close Long Reverse Signal"
Where the first part shows your current chart timeframe and EP indicates Entry Price
Backtest Settings
Capital Allocation
Initial Capital: 10,000 USD
Per Entry: 5,000 USD (split into 2 potential entries)
Leverage: 0x (spot trading only)
Trading Costs
Commission: 0.06% (Binance spot VIP0 rate)
Slippage: 0 (adjust based on your experience)
Best Use Cases
Ideal Scenarios
Trending markets with clear directional movement
Moderate to high volatility assets
Timeframes from 1-minute to 4-hour charts
Best suited for major cryptocurrencies with good liquidity
Not Recommended For
Highly volatile choppy/ranging markets
Low liquidity small-cap coins
Extreme market conditions or black swan events
Usage Recommendations
Timeframe Guidelines
1-5 minute charts: Use for scalping, consider Swing Length 100-160
15-30 minute charts: Good for short-term trading, Swing Length 50-100
1-4 hour charts: Suitable for swing trading, Swing Length 20-50
Optimization Tips
Always backtest on historical data before live trading
Adjust swing length based on asset volatility and your timeframe
Different cryptocurrencies may require different parameter settings
Enable visualization options initially to understand entry/exit points
Monitor win rate and drawdown during backtesting
Technical Details
Built on Pine Script v6
No repainting - uses proper bar referencing with offset
Prevents lookahead bias with lookahead=off parameter
Strategy mode with accurate commission and slippage modeling
Multi-timeframe security function for structure analysis
Proper position state tracking to avoid duplicate signals
Risk Disclaimer
This strategy is provided for educational and research purposes only. Past performance does not guarantee future results. Backtesting results may differ from live trading due to slippage, execution delays, and changing market conditions. The strategy performs best in trending markets and may experience drawdowns during ranging conditions. Always practice proper risk management and never risk more than you can afford to lose. It is recommended to paper trade first and start with small position sizes when going live.
How to Use
Add the strategy to your TradingView chart
Select your desired timeframe (1m to 4h recommended)
Adjust parameters based on your risk tolerance and trading style
Review backtest results in the Strategy Tester tab
Set up alerts for automated notifications
Consider paper trading before risking real capital
Tags
Trend Following, Turtle Trading, Donchian Channel, Structure Breakout, ATR, Cryptocurrency, Spot Trading, Risk Management, Pyramiding, Multi-Timeframe Analysis
---
Strategy Name: Trend Following BTC
Version: v1.0
Pine Script Version: v6
Last Updated: December 2025
Trend Following $ZEC - Multi-Timeframe Structure Filter + Revers# Trend Following CRYPTOCAP:ZEC - Strategy Guide
## 📊 Strategy Overview
Trend Following CRYPTOCAP:ZEC is an enhanced Turtle Trading system designed for cryptocurrency spot trading, combining Donchian Channel breakouts, multi-timeframe structure filtering, and ATR-based dynamic risk management for both long and short positions.
---
## 🎯 Core Features
1. Multi-Timeframe Structure Filtering
- Uses Swing High/Low to identify market structure
- Customizable structure timeframe (default: 1 minute)
- Only enters trades in the direction of the trend, avoiding counter-trend positions
2. Reverse Signal Exit
- No fixed stop-loss or fixed-period exits
- Exits only when a reverse entry signal triggers
- Maximizes trend profits, reduces premature exits
3. ATR Dynamic Pyramiding
- Adds positions when price moves 0.5 ATR in favorable direction
- Supports up to 2 units maximum (adjustable)
- Pyramid scaling to enhance profitability
4. Complete Risk Management
- Fixed position size (5000 USD per unit)
- Commission fee 0.06% (Binance spot rate)
- Initial capital 10,000 USD
---
## 📈 Trading Logic
Entry Conditions
✅ Long Entry:
- Close price breaks above 20-period high
- Structure trend is bullish (price breaks above Swing High)
✅ Short Entry:
- Close price breaks below 20-period low
- Structure trend is bearish (price breaks below Swing Low)
Add Position Conditions
- Long: Price rises ≥ 0.5 ATR
- Short: Price falls ≥ 0.5 ATR
- Maximum 2 units including initial entry
Exit Conditions
- Long Exit: When short entry signal triggers (price breaks 20-period low + structure turns bearish)
- Short Exit: When long entry signal triggers (price breaks 20-period high + structure turns bullish)
---
## ⚙️ Parameter Settings
Channel Settings
- Entry Channel Period: 20 (Donchian Channel breakout period)
- Exit Channel Period: 10 (reserved parameter, actually uses reverse signal exit)
ATR Settings
- ATR Period: 20
- Stop Loss ATR Multiplier: 2.0 (reserved parameter)
- Add Position ATR Multiplier: 0.5
Structure Filter
- Swing Length: 160 (Swing High/Low calculation period)
- Structure Timeframe: 1 minute (can change to 5/15/60, etc.)
Position Management
- Maximum Units: 2 (including initial entry)
- Capital Per Unit: 5000 USD
---
## 🎨 Visualization Features
Background Colors
- Light Green: Bullish structure
- Light Red: Bearish structure
- Dark Green: Long entry
- Dark Red: Short entry
Optional Display (Default: OFF)
- Entry/exit channel lines
- Structure high/low lines
- ATR stop-loss line
- Next add position indicator
- Entry/exit labels
---
## 📱 Alert Message Format
Strategy sends notifications on entry/exit with the following format:
- Entry: `1m Long EP:428.26`
- Add Position: `15m Add Long 2/2 EP:429.50`
- Exit: `1m Close Long Reverse Signal`
Where:
- `1m`/`15m` = Current chart timeframe
- `EP` = Entry Price
---
## 💰 Backtest Settings
Capital Allocation
- Initial Capital: 10,000 USD
- Per Entry: 5,000 USD (split into 2 entries)
- Leverage: 0x (spot trading)
Trading Costs
- Commission: 0.06% (Binance spot VIP0)
- Slippage: 0
---
## 🎯 Use Cases
✅ Best Scenarios
- Trending markets
- Moderate volatility assets
- 1-minute to 4-hour timeframes
⚠️ Not Suitable For
- Highly volatile choppy markets
- Low liquidity small-cap coins
- Extreme market conditions (black swan events)
---
## 📊 Usage Recommendations
Timeframe Suggestions
| Timeframe | Trading Style | Suggested Parameter Adjustment |
|-----------|--------------|-------------------------------|
| 1-5 min | Scalping | Swing Length 100-160 |
| 15-30 min | Short-term | Swing Length 50-100 |
| 1-4 hour | Swing Trading | Swing Length 20-50 |
Optimization Tips
1. Adjust swing length based on backtest results
2. Different coins may require different parameters
3. Recommend backtesting on 1-minute chart first before live trading
4. Enable labels to observe entry/exit points
---
## ⚠️ Risk Disclaimer
1. Past Performance Does Not Guarantee Future Results
- Backtest data is for reference only
- Live trading may be affected by slippage, delays, etc.
2. Market Condition Changes
- Strategy performs better in trending markets
- May experience frequent stops in ranging markets
3. Capital Management
- Do not invest more than you can afford to lose
- Recommend setting total capital stop-loss threshold
4. Commission Impact
- Frequent trading accumulates commission fees
- Recommend using exchange discounts (BNB fee reduction, etc.)
---
## 🔧 Troubleshooting
Q: No entry signals?
A: Check if structure filter is too strict, adjust swing length or timeframe
Q: Too many labels displayed?
A: Turn off "Show Labels" option in settings
Q: Poor backtest performance?
A:
1. Check if the coin is suitable for trend-following strategies
2. Adjust parameters (swing length, channel period)
3. Try different timeframes
Q: How to set alerts?
A:
1. Click "Alert" in top-right corner of chart
2. Condition: Select "Strategy - Trend Following CRYPTOCAP:ZEC "
3. Choose "Order filled"
4. Set notification method (Webhook/Email/App)
---
## 📞 Contact Information
Strategy Name: Trend Following CRYPTOCAP:ZEC
Version: v1.0
Pine Script Version: v6
Last Updated: December 2025
---
## 📄 Copyright Notice
This strategy is for educational and research purposes only.
All risks of using this strategy for live trading are borne by the user.
Commercial use without authorization is prohibited.
---
## 🎓 Learning Resources
To understand the strategy principles in depth, recommended reading:
- "The Complete TurtleTrader" - Curtis Faith
- "Trend Following" - Michael Covel
- TradingView Pine Script Official Documentation
---
Happy Trading! Remember to manage your risk 📈
Mutanabby_AI | ONEUSDT_MR1
ONEUSDT Mean-Reversion Strategy | 74.68% Win Rate | 417% Net Profit
This is a long-only mean-reversion strategy designed specifically for ONEUSDT on the 1-hour timeframe. The core logic identifies oversold conditions following sharp declines and enters positions when selling pressure exhausts, capturing the subsequent recovery bounce.
Backtested Period: June 2019 – December 2025 (~6 years)
Performance Summary
| Metric | Value |
|--------|-------|
| Net Profit | +417.68% |
| Win Rate | 74.68% |
| Profit Factor | 4.019 |
| Total Trades | 237 |
| Sharpe Ratio | 0.364 |
| Sortino Ratio | 1.917 |
| Max Drawdown | 51.08% |
| Avg Win | +3.14% |
| Avg Loss | -2.30% |
| Buy & Hold Return | -80.44% |
Strategy Logic :
Entry Conditions (Long Only):
The strategy seeks confluence of three conditions that identify exhausted selling:
1. Prior Move Filter:*The price change from 5 bars ago to 3 bars ago must be ≥ -7% (ensures we're not entering during freefall)
2. Current Move Filter: The price change over the last 2 bars must be ≤ 0% (confirms momentum is stalling or reversing)
3. Three-Bar Decline: The price change from 5 bars ago to 3 bars ago must be ≤ -5% (confirms a significant recent drop occurred)
When all three conditions align, the strategy identifies a potential reversal point where sellers are exhausted.
Exit Conditions:
- Primary Exit: Close above the previous bar's high while the open of the previous bar is at or below the close from 9 bars ago (profit-taking on strength)
- Trailing Stop: 11x ATR trailing stop that locks in profits as price rises
Risk Management
- Position Sizing:Fixed position based on account equity divided by entry price
- Trailing Stop:11× ATR (14-period) provides wide enough room for crypto volatility while protecting gains
- Pyramiding:Up to 4 orders allowed (can scale into winning positions)
- **Commission:** 0.1% per trade (realistic exchange fees included)
Important Disclaimers
⚠️ This is NOT financial advice.
- Past performance does not guarantee future results
- Backtest results may contain look-ahead bias or curve-fitting
- Real trading involves slippage, liquidity issues, and execution delays
- This strategy is optimized for ONEUSDT specifically — results may differ on other pairs
- Always test before risking real capital
Recommended Usage
- Timeframe:*1H (as designed)
- Pair: ONEUSDT (Binance)
- Account Size: Ensure sufficient capital to survive max drawdown
Source Code
Feedback Welcome
I'm sharing this strategy freely for educational purposes. Please:
- Drop a comment with your backtesting results any you analysis
- Share any modifications that improve performance
- Let me know if you spot any issues in the logic
Happy trading
As a quant trader, do you think this strategy will survive in live trading?
Yes or No? And why?
I want to hear from you guys
Continuation Model by XausThis report summarizes the historical performance of the Institutional Daily Bias Probability Model on
EURUSD daily data for the 2025 calendar year. The model combines three components: 1.
Continuation bias around the previous day's high/low (PDH/PDL). 2. Reversal bias based on failed
continuation, failed breakouts, and exhaustion. 3. Neutral bias to identify liquidity-building days when no
directional trades should be taken. A fixed 25-pip stop loss (0.0025) is assumed for R-multiple
calculations. Trades are only taken when Neutral score < 50 and either Continuation or Reversal score
is at least 70, with Neutral overriding, then Reversal, then Continuation.
FANBLASTERFANBLASTER
Methodology & Rules (Live Trading Version)
Purpose
Catch the exact moment the market flips from chop into a high-conviction trending move using a clean, stacked Fib EMA ribbon + volatility + volume confirmation.
Core Idea
When the 5-8-13-21-34-55 EMA stack suddenly “fans out” in perfect order with significant separation, a real trend is being born. Most retail traders chase late – FANBLASTER alerts you on the very first bar the fan opens.
What Triggers a “FAN BLAST” Alert
Perfect EMA Alignment
Bullish: 5 > 8 > 13 > 21 > 34 > 55
Bearish: 5 < 8 < 13 < 21 < 34 < 55
(Has to flip from NOT aligned on the previous bar → aligned on this bar)
Significant Separation
Distance between EMA 5 and EMA 55 ≥ 1.3 × ATR(14)
(1.3 is the ES sweet spot – filters fake little wiggles)
Trend Strength Confirmation
ADX(14) ≥ 22
(Ensures the move isn’t just noise; ES trends explode while ADX is still climbing)
Volume Conviction
Current volume > 1.4 × 20-period EMA of volume
(Real moves have real participation)
When ALL FOUR conditions are true on the same bar → you get the green or red circle + phone alert.
How to Trade It (Live Rules)
Alert fires → look at the chart immediately
If price is pulling back to the 8 or 13 EMA in the direction of the fan → enter on touch or close above/below
Initial stop: opposite side of the fan (below the 55 for longs, above the 55 for shorts)
Target: 2–4 R minimum, trail with the 21 or 34 once in profit
No alert = stay flat. This is a “trend birth” sniper, not a scalping tool.
Best Instruments & Timeframes (2025)
ES & NQ futures
2 min, 5 min, 15 min (all work with the exact same settings)
Works on MES/MNQ too (same params)
Bottom Line
FANBLASTER sits silent 90 % of the day and only screams when the market is actually about to run 20–100+ points.
One alert = one high-probability trend. That’s it.
Lock it, load it, and let the phone do the hunting.
Good luck, stay disciplined, and stack those points.
— Your edge is now live.
ART MACRO PEEK 2025-Info v2 With this indicator you will be able to understand what the (vix, btc, triple aaa, dxy) looks like before entering market in one glance, it will act more like market thermometer.
Trend Gazer: Unified ICT Trading System with Signals# Trend Gazer User Guide (English)
## 📖 Table of Contents
1. (#about-this-indicator)
2. (#quick-start-guide-3-steps)
3. (#detailed-usage)
4. (#settings-customization)
5. (#why-combine-multiple-features)
6. (#faq)
---
## About This Indicator
**Trend Gazer** is an integrated trading system designed to read institutional order flow like professional traders.
### 🎯 3 Problems This Indicator Solves
#### ❌ Problem 1: Too Many Indicators = Information Overload
```
Normal: RSI + MACD + Moving Average + Bollinger Bands... → Cluttered chart
Solution: All integrated into ONE indicator → Clean & Clear
```
#### ❌ Problem 2: Single Indicators Give False Signals
```
Normal: Enter based on RSI alone → Frequent stop-outs
Solution: Structure × Zone × Momentum multi-angle confirmation → Higher win rate
```
#### ❌ Problem 3: Unclear Entry Timing
```
Normal: Know the trend but don't know WHERE to enter
Solution: LS Bounce Signal shows EXACT entry points
```
---
## Quick Start Guide (3 Steps)
### 🚀 STEP 1: Confirm Trend Direction
**Look for CHoCH (Change of Character)**
```
📍 (1.CHoCH) label = Uptrend starting
📍 (a.CHoCH) label = Downtrend starting
```
**Important**: Wait for CHoCH! No direction without it.
---
### 🎯 STEP 2: Find Entry Points
**Wait for LS Bounce Signal (green/red labels)**
```
🟢 "Long@ HL only" label → LONG (buy) candidate
🔴 "Short@ LH only" label → SHORT (sell) candidate
```
**Label text color meaning**:
- **White text**: Clean trend (high confidence)
- **Yellow text**: Trend transition (moderate caution)
---
### 🛡️ STEP 3: Final Confirmation with Bar Color
**Bar color shows market state**
```
🔴 Red bar: BUY zone (buying is favored)
🟢 Green bar: SELL zone (selling is favored)
⚪ White bar: Neutral (wait and see)
```
---
## Detailed Usage
### 📊 Understanding the Chart
#### 1. Labels (Market Structure Changes)
```
(1.CHoCH) / (a.CHoCH) : Trend reversal
(2.SiMS) / (b.SiMS) : Momentum confirmation
(3.BoMS) / (c.BoMS) : Trend continuation
```
#### 2. Boxes (Institutional Order Zones)
```
📦 Blue boxes: Bullish OB (buy orders accumulated)
📦 Red boxes: Bearish OB (sell orders accumulated)
📦 Black transparent boxes: Liquidity Sweep
```
**How to use Order Blocks**:
- Function as support/resistance
- Signals within OB have higher reliability
- Use for stop-loss placement
#### 3. Lines (Trends and Support/Resistance)
```
━━━ Red lines: EMA20, EMA50, EMA100 (short to mid-term trends)
━━━ Blue lines: 60min NPR/BB bands (support/resistance)
```
#### 4. Bar Colors (Filter 6)
```
Bar color = Real-time market state
🔴 Red: Buying is favored
🟢 Green: Selling is favored
⚪ White: Neutral
```
---
### 🎯 Practical Trading Flow
#### 📍 Preparation Phase
```
1. Open chart (recommended: 5min or 15min)
2. Add Trend Gazer to chart
3. Start in observation mode (don't enter yet)
```
#### 📍 Entry Decision
```
✅ CHoCH confirms direction → Uptrend starting
✅ LS Bounce Signal "Long@ HL only" appears
→ Entry point candidate
✅ Bar turns red → Market supports buying
→ Entry decision 🎯
✅ Place stop below nearest Order Block (blue box)
```
#### 📍 Exit Decision
```
🔴 Opposite LS Bounce Signal "Short@ LH only" appears
→ Consider taking profit
🔴 Bar turns green
→ Potential trend reversal, review position
🔴 Stop loss hit
→ Exit with loss
```
---
### 💡 Tips for Higher Win Rate
#### ✅ DO's
```
1. Enter AFTER CHoCH appears
2. Prioritize white-text LS Bounce Signals
3. Check higher timeframe (1H or Daily) trend
4. Emphasize signals within Order Blocks
5. Use bar color as final confirmation
```
#### ❌ DON'Ts
```
1. Enter before CHoCH → No clear direction
2. Enter only on yellow text → Unstable transition period
3. Ignore bar color → Trading against market state
4. Don't check Order Blocks → Unclear support/resistance
5. Enter same direction consecutively → Overtrading
```
---
## Settings Customization
### 🔧 How to Open Settings
```
1. Right-click on indicator name on chart
2. Select "Settings..."
3. Settings panel opens
```
---
### 📋 Recommended Setting Profiles
#### 🔰 Beginner Settings (Simple)
**Goal**: Reduce noise, show only important signals
```
【FILTERS】
✅ Bonus Filter: ON
✅ Filter 6 (OB/BB/NPR Zone Filter): ON
❌ Direction Filter: OFF
❌ Liquidation Reversal Filter: OFF
❌ ICT Market Structure Filter: OFF
❌ EMA Trend Filter: OFF
❌ OB/FVG Filter 1: OFF
❌ OB/FVG Filter 2: OFF
【SIGNALS】
✅ Signal 0 (Bonus): ON
✅ Signal 1 (VWC Change): ON
✅ Signal 2 (Liq Rev): ON
❌ Signal 3 (LS): OFF (complex alone)
❌ Signal 4 (LS Break): OFF
❌ Signal 5 (OB+LS NPR): OFF
❌ Signal 6 (OB+LS EMA): OFF
【LS BOUNCE SIGNAL】
✅ Exclude EMA50 from touch detection: OFF
❌ Only show when EMA fills are mixed: OFF
```
**What happens with this setup**:
- Only Bonus (black background) signals display
- LS Bounce Signals clearly visible
- Noisy signals filtered out
---
#### 💪 Intermediate Settings (Balanced)
**Goal**: Enable key filters for better accuracy
```
【FILTERS】
✅ Bonus Filter: ON
✅ Filter 6 (OB/BB/NPR Zone Filter): ON
✅ ICT Market Structure Filter: ON
❌ Direction Filter: OFF
❌ Liquidation Reversal Filter: OFF
❌ EMA Trend Filter: OFF
❌ OB/FVG Filter 1: OFF
❌ OB/FVG Filter 2: OFF
【SIGNALS】
✅ Signal 0 (Bonus): ON
✅ Signal 1 (VWC Change): ON
✅ Signal 2 (Liq Rev): ON
✅ Signal 3 (LS): ON
❌ Signal 4 (LS Break): OFF
❌ Signal 5 (OB+LS NPR): OFF
❌ Signal 6 (OB+LS EMA): OFF
【LS BOUNCE SIGNAL】
✅ Exclude EMA50 from touch detection: OFF
❌ Only show when EMA fills are mixed: OFF
```
**What happens with this setup**:
- Signals only after CHoCH (trend confirmed)
- Filter 6 changes bar colors
- Liquidity Sweeps also displayed
---
#### 🚀 Advanced Settings (Full Utilization)
**Goal**: Master all features
```
【FILTERS】
✅ Bonus Filter: ON
✅ Filter 6 (OB/BB/NPR Zone Filter): ON
✅ ICT Market Structure Filter: ON
✅ Direction Filter: ON
✅ EMA Trend Filter: ON
❌ Liquidation Reversal Filter: OFF (optional)
✅ OB/FVG Filter 1: ON
✅ OB/FVG Filter 2: ON
【SIGNALS】
✅ All ON
【LS BOUNCE SIGNAL】
✅ Exclude EMA50 from touch detection: ON (reduce EMA50 noise)
✅ Only show when EMA fills are mixed: ON (show only transition zones)
```
**What happens with this setup**:
- Fewer signals (precision-focused)
- Multiple confirmations greatly reduce false signals
- Only signals confirmed by trend, momentum, and zones
---
### 🎨 Display Customization
#### Change Label Size
```
【BUY/SELL SIGNAL APPEARANCE】
→ "BUY/SELL Label Size"
→ Choose from: tiny / small / normal / large / huge
Recommended: small (default)
```
#### Order Block Display Settings
```
【ORDER BLOCK (OB) SETTINGS】
✅ Show Current TF OB: Current timeframe OB
✅ Show 1min OB: 1-minute OB
✅ Show 5min OB: 5-minute OB
✅ Show 15min OB: 15-minute OB
Recommended: Only 15min OB ON (simple)
```
#### Liquidity Sweep Display
```
【LIQUIDITY SWEEPS SETTINGS】
→ "Sweep Length": Sensitivity (small=frequent, large=selective)
→ "Sweep Option": Standard / Maximum
Recommended: Length=40, Option=Standard
```
#### NPR/BB Bands Display
```
【NPR (NON-REPAINT STDEV) SETTINGS】
✅ Display 60min NPR Bands: 60-minute support/resistance
❌ Display Current TF NPR Bands: Current timeframe (optional)
Recommended: Only 60min ON
```
---
### ⚙️ Advanced Settings
#### Fine-tune Filter 6
```
【FINAL FILTERS】
→ "Enable Filter 6 (OB/BB/NPR Zone Filter)"
When ON:
- Bars color-coded red/green/white
- Behavior at OB, NPR/BB touches controlled
```
#### LS Bounce Signal Adjustments
```
【LS BOUNCE SIGNAL】
→ "Exclude EMA50 from touch detection"
OFF: Detect NPR/BB/EMA50 (all 3)
ON: Detect NPR/BB only (exclude EMA50)
→ "Only show when EMA fills are mixed"
OFF: Show all LS Bounce Signals
ON: Show only transition zone signals (yellow text)
```
#### MTF (Multi-Timeframe) Control
```
【ORDER BLOCK (OB) SETTINGS】
→ "Disable MTF on 1hr+ Charts"
ON: Disable MTF on 1H+ (save memory)
OFF: MTF enabled on all timeframes
Recommended: ON (unnecessary on larger timeframes)
```
---
### 🎯 Purpose-Based Configuration Guide
#### 🔍 Goal 1: Reduce Signal Count
```
✅ Bonus Filter: ON
✅ ICT Market Structure Filter: ON
✅ Filter 6: ON
✅ All Signals OFF, only Signal 0 ON
```
#### 🔍 Goal 2: Get More Signals
```
❌ All Filters OFF
✅ All Signals ON
```
#### 🔍 Goal 3: Trend Following Only
```
✅ ICT Market Structure Filter: ON
✅ Direction Filter: ON
✅ EMA Trend Filter: ON
```
#### 🔍 Goal 4: Counter-Trend Trading
```
✅ LS Bounce Signal: ON
✅ Filter 6: ON
❌ ICT Market Structure Filter: OFF
```
#### 🔍 Goal 5: Day Trading (5-15min charts)
```
✅ Show 15min OB: ON
✅ Display 60min NPR Bands: ON
✅ LS Bounce Signal: ON
❌ Show 1min/5min OB: OFF
```
#### 🔍 Goal 6: Scalping (1-5min charts)
```
✅ Show 5min OB: ON
✅ Show 15min OB: ON
✅ Display 60min NPR Bands: ON
✅ All Signals: ON
```
---
### 💾 Saving and Loading Settings
#### Save Settings
```
1. Click "..." in top-right of Settings screen
2. Select "Save as default"
→ Same settings auto-applied next time
```
#### Reset Settings
```
1. Click "..." in top-right of Settings screen
2. Select "Reset settings"
→ Return to default settings
```
---
## Why Combine Multiple Features?
### 🎯 Problem: Single Indicator Limitations
Common trader problems:
```
❌ RSI alone → Trade against trend, lose
❌ Moving Average alone → Late entry timing
❌ Support/Resistance alone → Caught by false breakouts
```
**Markets are complex**. One angle isn't enough.
---
### 💡 Solution: Multi-Angle Integrated Approach
#### 1️⃣ Structure × Zone × Momentum
```
📐 Structure (ICT CHoCH)
→ "Which direction is likely?"
📦 Zone (OB/NPR/BB)
→ "Where will price react?"
💨 Momentum (EMA/VWC)
→ "Is there momentum now?"
```
**When all 3 align = Highest win-rate timing**
---
#### 2️⃣ Multi-Timeframe Analysis
```
Big picture: Confirm Daily direction
Medium-term: Check 1H Order Blocks
Short-term: Time entry on 5min
```
**Short-term entries aligned with higher timeframes = Better win rate**
---
#### 3️⃣ Understanding Liquidity
```
🎣 Institutional strategy:
1. Intentionally move price opposite to stop out retail
2. Then, move in real direction
💡 Liquidity Sweep = Visualize this "trap"
→ Read institutional order flow
```
---
### 🧠 Integration Examples
#### Case 1: RSI Alone vs Integrated System
**Scenario**: RSI at 30 (oversold)
```
❌ RSI-only decision:
→ "Buy!"
→ But downtrend continues, loss 😢
✅ Trend Gazer:
CHoCH check → Still downtrend ❌
Order Block → In Bearish OB ❌
LS Bounce → SHORT signal only ❌
→ Skip or SHORT
→ Avoid loss ✅
```
**Result**: Multiple filters block wrong entry
---
#### Case 2: LS Bounce Signal 2-Stage Logic
**Scenario**: Price touches 60min NPR lower band
```
🔍 Traditional method:
Touched → Buy!
→ But price continues down 😢
✅ Trend Gazer:
Stage 1: NPR touch + red bar → Flag ON
Stage 2: EMA20 crosses above EMA50 → Confirm bounce
→ Now "Long@ HL only" displays
→ Entry → Success ✅
```
**Result**: Not just "touch" but "touch + bounce confirmation" improves accuracy
---
### 🎓 Progressive Learning Design
This indicator is designed for **beginners to advanced**:
```
📖 Beginner (Month 1):
Use only CHoCH + LS Bounce Signal
→ Learn trend and entry points
📖 Intermediate (Months 2-3):
Add Order Block + Bar Color
→ Learn support/resistance and filtering
📖 Advanced (Month 6+):
Master all features
→ Read institutional order flow
```
**Ultimate goal**: Indicator becomes confirmation tool. Your market sense becomes primary.
---
### 🔬 Technical Advantages
#### 1. Non-Repaint STDEV (NPR)
```
Normal Bollinger Bands:
→ Past data changes (repaints)
→ Inaccurate backtesting
NPR:
→ Past data doesn't change (non-repaint)
→ Reliable verification possible
```
#### 2. 2-Stage Signal Logic
```
Traditional: Condition met → Immediate signal
→ Many false signals
Trend Gazer: Condition1 → Flag ON → Condition2 → Signal
→ Confirmation step improves accuracy
```
#### 3. Alternating Filter
```
Problem: Same-direction signals spam
→ Overtrading
Solution: LONG → SHORT → LONG alternating only
→ Prevent unnecessary entries
```
---
### 💎 Conclusion: Why Integration?
```
Single indicator = "Partial truth"
Integrated system = "3D market perspective"
```
**Markets are multifaceted**. One angle isn't enough.
Trend Gazer **integrates multiple screens pros watch simultaneously into ONE**,
allowing beginners to read charts with institutional perspective.
---
## FAQ
### ❓ Q1: Which timeframe is best?
**A**: Depends on trading style
```
Scalping: 1min ~ 5min
Day Trading: 5min ~ 15min
Swing: 1H ~ 4H
```
**Important**: LS Bounce Signal only works on 30min and below.
---
### ❓ Q2: Too many signals, confused
**A**: Enable filters
```
【Recommended Settings】
✅ Bonus Filter: ON
✅ Filter 6: ON
✅ ICT Market Structure Filter: ON
→ Show only Signal 0
```
This significantly reduces signal count.
---
### ❓ Q3: No CHoCH appearing, what to do?
**A**: Wait or check higher timeframe
```
Method 1: Wait for CHoCH (recommended)
Method 2: Check higher timeframe (e.g., Daily) for trend
Method 3: Disable ICT Filter (not recommended)
```
**When trend is unclear, sitting out is also strategy**.
---
### ❓ Q4: LS Bounce Signal not appearing
**A**: Checkpoints
```
1. Are you on 30min or below chart?
→ Doesn't show on 1H+
2. Are NPR/BB bands displayed?
→ Check Settings "Display 60min NPR Bands"
3. Is EMA50 excluded?
→ If "Exclude EMA50" is ON, EMA50 signals won't show
```
---
### ❓ Q5: Bar color not changing?
**A**: Check Filter 6
```
Settings → FINAL FILTERS
→ Confirm "Enable Filter 6 (OB/BB/NPR Zone Filter)" is ON
If ON but still not changing:
→ Current price may be outside OB/NPR/BB zones
```
---
### ❓ Q6: Too many Order Blocks, hard to see
**A**: Narrow down displayed OBs
```
Settings → ORDER BLOCK (OB) SETTINGS
Recommended:
❌ Show Current TF OB: OFF
❌ Show 1min OB: OFF
❌ Show 5min OB: OFF
✅ Show 15min OB: ON (only this)
```
---
### ❓ Q7: How to improve win rate?
**A**: Thorough multiple confirmations
```
Checklist:
✅ CHoCH appeared
✅ LS Bounce Signal (white text)
✅ Bar color matches (red bar=LONG, green bar=SHORT)
✅ Signal within Order Block
✅ Aligns with higher timeframe trend
Enter ONLY when all align
```
---
### ❓ Q8: Want to practice on demo
**A**: Recommended practice method
```
Week 1: Observation only
→ Watch signals and chart movement
→ Resist entering
Weeks 2-3: Keep records
→ Screenshot when signal appears
→ Record subsequent movement
Week 4+: Start demo trading
→ Start with small amounts
→ Continue keeping records
```
---
### ❓ Q9: Are there alert features?
**A**: Yes, multiple alerts available
```
Setup method:
1. Right-click indicator on chart
2. Select "Add Alert..."
3. Choose from:
- ANY ALERT: BUY/SELL Signals
- BUY ONLY ALERT
- SELL ONLY ALERT
- MS UP / MS DOWN
- BAR COLOR: RED / LIME
- LS BOUNCE: LONG / SHORT Signal
```
---
### ❓ Q10: Works on other markets?
**A**: Yes, works on all markets
```
✅ Cryptocurrency (BTC, ETH, etc.)
✅ Forex (EUR/USD, USD/JPY, etc.)
✅ Stocks (individual stocks, indices)
✅ Futures (oil, gold, etc.)
```
Works on any market with price and volume data.
---
## 📋 Disclaimer
### ⚠️ Important Notice
This indicator is for **educational and informational purposes only**.
```
❌ NOT investment advice
❌ Does NOT guarantee profits
❌ Past results do NOT guarantee future performance
```
### Risk Warning
```
⚠️ Trading involves substantial risk
⚠️ Only trade with funds you can afford to lose
⚠️ Practice extensively on demo account before live trading
⚠️ Make your own informed decisions and act at your own risk
```
---
## 📞 Support
### Feedback & Questions
Feel free to ask questions in TradingView comments section.
### Bug Reports
Please report with specific details (timeframe, symbol, screenshots).
---
**Author**: rasukaru666
**License**: Mozilla Public License 2.0
**Last Updated**: December 2025
**Version**: Latest
---
**Thank you for using Trend Gazer!**
**Happy Trading! 📈**
---------------
Inyerneck Quiet Bottom Hunter v36 — Last Sorta-Working VersionQuiet Bottom Hunter v36 — Accurate Description (the sorta-working version that fires signals)
Overview
A mean-reversion bottom-hunting strategy for small-cap stocks (<$2B market cap). Designed to catch slow-bleed stocks that quietly bottom out and rebound 20–60%+. Good for beginners because signals are infrequent and the setup is easy to understand.
Timeframe
Daily (D) — best results on 1-day charts. Works on weekly too, but signals are rarer.
Triggers / Conditions (all must be true at bar close)
Drop from high ≥ 25% from the highest high in the last 100 bars (previous bars only — no repainting)
Volume ≤ 80% of the 50-day average (quiet accumulation, no panic selling left)
RSI(14) ≤ 38 (oversold territory)
Green/flat streak ≥ 2 consecutive days where close ≥ open (shows sellers are exhausted)
When all four line up → tiny green “QB” triangle below the bar
Firing Frequency
1–4 signals per month on an average small-cap stock (depends on market conditions). Some months zero, some months a handful. Not spammy, but not ultra-rare either.
Usage Parameters
Position size: 10% of equity per trade (default — change to 5–20% depending on risk tolerance)
Profit target: 40%
Stop loss: 12%
Hold time: usually 2–8 weeks
Best on low-float, high-volatility small caps (TLRY, SNDL, MVIS, SOUN, INHD, etc.)
Expected Performance (backtested on 2025 small caps)
Win rate: ~80–85%
Average rebound on winners: +30–40%
Some losers when the bottom isn't "quiet" enough
How to use
Add to daily charts of your small-cap watchlist
When “QB” arrow appears, buy at next open or market
Set 40% target / 12% stop or trail it
Wait for the rebound — no day-trading needed
Buy & Sell Arrows - MACD + Best_Solve WPRMACD + Best_Solve Williams %R – Aggressive Trend-Reversal Catcher
(Allow Signals Even in Overbought/Oversold Zones)
This indicator combines the classic MACD histogram with Best_Solve’s popular custom Williams %R (a 0–100 momentum oscillator that behaves more like a fast Stochastic) to deliver clean, high-conviction entry signals on daily (and higher) timeframes.
Core Logic – Only TWO conditions are required
BUY (large green arrow below bar)
MACD histogram is green (bullish momentum)
Williams %R fast line is crossing above OR already above its EMA
SELL (large red arrow above bar)
MACD histogram is red (bearish momentum)
Williams %R fast line is crossing below OR already below its EMA
Unlike most oscillators, this version deliberately removes the traditional “do not buy when overbought / do not sell when oversold” filters. This allows the script to catch powerful trend reversals and explosive moves immediately — even on violent earnings gaps or panic sell-offs (example: META’s -11 % drop on Oct 30 2025 triggered an instant sell even though %R was deeply oversold).
Built-in Clean-Signal Logic
No consecutive buys or sells — each new signal must be preceded by the opposite direction.
This keeps the chart extremely clean and prevents whipsaw clusters during strong trends.
Best Use Cases
Daily and 4H swing trading on stocks, indices, crypto, forex
Excellent for catching sharp reversals after earnings, news events, or overextended moves
Works especially well on high-beta names and growth stocks
Visuals
Large green/red arrows with “BUY” / “SELL” text (your favorite style)
Subtle transparent MACD histogram overlaid on price for instant momentum context
Ready-to-use alerts (“Buy Alert” / “Sell Alert”)
Set it, alert it, trade it — one of the cleanest and most responsive daily reversal systems you’ll find.
Enjoy the edge!
Ichimoku Multi-Timeframe Heatmap 12/5/2025
Multi-Timeframe Ichimoku Heatmap - Scan Your Watchlist in Seconds
This indicator displays all 5 critical Ichimoku signals (Cloud Angle, Lagging Line, Price vs Cloud, Kijun Slope, and Tenkan/Kijun Cross) across 10 timeframes (15s, 1m, 3m, 5m, 15m, 30m, 1h, 4h, Daily, Weekly) in one compact heatmap table. Instantly spot multi-timeframe trend alignment with color-coded cells: green for bullish, red for bearish, and gray for neutral. Perfect for quickly scanning through your entire watchlist to identify the strongest setups with confluent signals across all timeframes.
DXY Volatility Ranges TableThe Dollar Index (DXY) measures the US dollar's value against a basket of six major currencies, including the Euro, Japanese Yen, British Pound, Canadian Dollar, Swedish Krona, and Swiss Franc. Here are some key ranges for the DXY:
- Historical Highs and Lows:
- All-time high: 164.720 in February 1985
- All-time low: 70.698 on March 16, 2008
- Recent Trends:
- Current value: around 99.603 (as of December 5, 2025)
- 52-week high: 129.670 (November 8, 1985)
- 52-week low: 94.650 (projected target by some analysts)
- Volatility Ranges:
- Low volatility: DXY < 95
- Moderate volatility: DXY between 95-105
- High volatility: DXY > 105
- Support and Resistance Levels:
- Support: around 94.650 and 90.00
- Resistance: around 100.15/35 and 105.00
GOD MODE HUNT v2.0 — SCREENER ULTIME 2025test screener pour détecter les crypto basée sur des règles strict
Anchored VWAP + Bands + Signals//@version=5
indicator("Anchored VWAP + Bands + Signals", overlay=true)
// ===== INPUTS =====
anchorTime = input.time(timestamp("2025-12-02 00:00"), "Anchor Date/Time")
std1 = input.float(1.0, "±1σ Band")
std2 = input.float(2.0, "±2σ Band")
// ===== VWAP CALCULATION =====
var float cumPV = 0.0
var float cumVol = 0.0
if time >= anchorTime
cumPV += close * volume
cumVol += volume
vwap = cumVol != 0 ? cumPV / cumVol : na
// ===== STANDARD DEVIATION =====
barsSinceAnchor = bar_index - ta.valuewhen(time >= anchorTime, bar_index, 0)
sd = barsSinceAnchor > 1 ? ta.stdev(close, barsSinceAnchor) : 0
// ===== BANDS =====
upper1 = vwap + std1 * sd
lower1 = vwap - std1 * sd
upper2 = vwap + std2 * sd
lower2 = vwap - std2 * sd
plot(vwap, color=color.orange, title="VWAP")
plot(upper1, color=color.green, title="+1σ Band")
plot(lower1, color=color.green, title="-1σ Band")
plot(upper2, color=color.red, title="+2σ Band")
plot(lower2, color=color.red, title="-2σ Band")
// ===== SIGNALS =====
buySignal = ta.crossover(close, lower1)
sellSignal = ta.crossunder(close, upper1)
plotshape(buySignal, style=shape.triangleup, location=location.belowbar, color=color.green, size=size.small, title="Buy Signal")
plotshape(sellSignal, style=shape.triangledown, location=location.abovebar, color=color.red, size=size.small, title="Sell Signal")
alertcondition(buySignal, title="Buy Alert", message="Price touched lower 1σ band – Buy Opportunity")
alertcondition(sellSignal, title="Sell Alert", message="Price touched upper 1σ band – Sell Opportunity")
inyerneck Quiet Bottom Hunter v1.5 — VERIFIED SIGNALSQuiet Bottom Hunter v1.5 — 85%+ Rebound Setup
Designed for new traders who want the highest-probability, lowest-stress small-cap entries.
Triggers only when ALL of these line up:
• –20% to –80% from 90-day high (slow bleed, not crash)
• Volume ≤80% of 50-day average (dry, no panic selling left)
• RSI(14) ≤35 (deep oversold)
• 2+ consecutive green or flat days at the low (quiet bottom confirmed)
Fires roughly 1–3 times per month on most small caps (<$2B).
Backtested 2024–2025: 85% win rate, avg +32% rebound, max DD ~11%.
Tiny green “QB” arrow = entry signal.
Use 10–20% position size. Works best on daily charts.
Public script — code visible.
use on 1 day or 4 hr chart. mid term swings, NOT day trades
No spam. No chasing. Just big, calm rebounds.
Market Movers TrackerMarket Movers Tracker — Live Big-Move + Volume + Gap Screener (2025)
The cleanest, fastest, most beautiful real-time scanner for stocks, crypto, forex — instantly tells you:
• Daily / Session / Weekly % change
• HUGE moves (5%+) and BIG moves (3%+) with glowing background
• Volume spikes (2x+ average) with orange bar highlights
• Gap-up / Gap-down detection with arrows
• Live stats table (movable to any corner)
• “HUGE” / “BIG” / “Normal” status with emoji
• Built-in alerts for huge moves, volume spikes & gaps
Perfect for:
→ Day traders hunting momentum
→ Swing traders catching breakouts
→ Scalpers riding volume explosions
→ Anyone who wants to see the hottest movers at a glance
Works on ANY symbol, ANY timeframe.
Zero lag. Zero repainting. Pure price + volume truth.
No complicated settings — turn it on and instantly see what’s moving the market right now.
Not financial advice. Just the sharpest scanner on TradingView.
Made with love for the degens, apes, and momentum chads & volume junkies.






















