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.
"参天公司+2025年股票走势" için komut dosyalarını ara
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
SW monthly Gann Days**Script Description:**
The script you are looking at is based on the work of W.D. Gann, a famous trader and market analyst in the early 20th century, known for his use of geometry, astrology, and numerology in market analysis. Gann believed that certain days in the market had significant importance, and he observed that markets often exhibited significant price moves around specific dates. These dates were typically associated with cyclical patterns in price movements, and Gann referred to these as "Gann Days."
In this script, we have focused on highlighting certain days of the month that Gann believed to have an influence on market behavior. The specific days in question are the **6th to 7th**, **9th to 10th**, **14th to 15th**, **19th to 20th**, **23rd to 24th**, and **29th to 31st** of each month. These ranges are based on Gann’s theory that there are recurring time cycles in the market that cause turning points or critical price movements to occur around certain days of the month.
### **Why Gann Used These Days:**
1. **Mathematical and Astrological Cycles:**
Gann believed that markets were influenced by natural cycles, and that certain dates (or combinations of dates) played a critical role in the price movements. These specific days are part of his broader theory of "time cycles" where the market would often change direction, reverse, or exhibit significant volatility on particular days. Gann's research was based on both mathematical principles and astrological observations, leading him to assign importance to these days.
2. **Gann's Universal Timing Theory:**
According to Gann, financial markets operate in a universe governed by geometric and astrological principles. These cycles repeat themselves over time, and specific days in a given month correspond to key turning points within these repeating cycles. Gann found that the 6th to 7th, 9th to 10th, 14th to 15th, 19th to 20th, 23rd to 24th, and 29th to 31st often marked significant changes in the market, making them particularly important for traders to watch.
3. **Market Psychology and Sentiment:**
These specific days likely correspond to key moments where market participants tend to react in predictable ways, influenced by past market behavior on similar dates. For example, news events or scheduled economic reports might fall within these time windows, causing the market to respond in a particular way. Gann's method involves using these cyclical patterns to predict turning points in market prices, enabling traders to anticipate when the market might make a reversal or face a significant shift in direction.
4. **Turning Points:**
Gann believed that markets often reversed or encountered critical points around specific dates. This is why he considered certain days more important than others. By identifying and focusing on these days, traders can better anticipate the market’s movement and make more informed trading decisions.
5. **Numerology:**
Gann also utilized numerology in his trading system, believing that numbers, and particularly certain key numbers, had significance in predicting market movements. The days selected in this script may correspond to numerological patterns that Gann identified in his analysis of the markets, such as recurring numbers in his astrological and geometric systems.
### **Purpose of the Script:**
This script highlights these "Gann Days" within a trading chart for 2024 and 2025. The color-coding or background highlighting is intended to draw attention to these dates, so traders can observe the potential for significant market movements during these times. By identifying these specific dates, traders following Gann's theories may gain insights into possible turning points, corrections, or key price movements based on the market's historical behavior around these days.
Overall, Gann’s use of specific days was based on his deep belief in the cyclical nature of the market and his attempt to tie those cycles to the natural laws of time, geometry, and astrology. By focusing on these dates, Gann aimed to give traders an edge in predicting significant market events and price shifts.
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.
ARIEL MACRO PEEK 2025With this indiciator you will be able to understand what the VIX, BTC, Triple AAA, DXY looks like before entering market in one glance
Algoticks.in: Supertrend Strategy (Directional option sample)Supertrend Strategy - User Guide
Overview
This is a trend-following strategy based on the Supertrend indicator. It generates signals when the trend direction changes (Green to Red or Red to Green). It is fully integrated with Algoticks.in API for automated trading on Delta Exchange, with specialized logic for Options trading.
Strategy Logic
Long Signal: When Supertrend flips to Green (Bullish Trend Start)
Short Signal: When Supertrend flips to Red (Bearish Trend Start)
Automatically closes opposite positions before entering new ones
Quick Setup
1. Add to TradingView
Open TradingView and go to the chart
Click "Pine Editor" at the bottom
Paste the script code
Click "Add to Chart"
2. Configure Strategy Parameters
Strategy Settings
ATR Length (default: 10): The lookback period for Average True Range
Factor (default: 3.0): The multiplier for the ATR bands. Higher values = fewer signals (less noise), Lower values = more signals (scalping).
General API Settings
Paper Trading : Enable for testing without real money
Signal Type : Choose "Trading Signal" (default) for tracking
Exchange : DELTA (Delta Exchange)
Segment :
futures - Perpetual contracts
options - Call/Put options
spot - Spot trading
Order Settings: Basic
Quantity : Number of contracts (e.g., 1, 0.5, 2)
Validity :
GTC - Good Till Cancelled
IOC - Immediate or Cancel
FOK - Fill or Kill
DAY - Day order
Product : cross_margin or isolated_margin
Order Settings: Entry Type
Choose how orders are executed:
Market Order : Immediate fill at best price
Limit Order : Fill at specified price or better
Stop Market : Triggers at stop price, then market order
Stop Limit : Triggers at stop price, then limit order
Entry Prices (for Limit/Stop orders)
Limit Price:
Price : The value to use
Type : Last Price / Mark Price / Index Price
Mode :
Absolute - Exact price (e.g., 65000)
Relative - Offset from entry price
% Checkbox : If checked, relative uses percentage; if unchecked, uses points
Example:
Absolute: 65000 → Order at exactly 65000
Relative 1% (checked): Entry ± 1% of entry price
Relative 100 (unchecked): Entry ± 100 points
Trigger Price: Same logic as Limit Price, used for Stop orders
Exit / Bracket Prices (SL/TP)
Stop Loss (SL):
Type : Price type to monitor (Mark Price recommended)
Mode : Absolute or Relative
% : Percentage or points
SL : Stop loss value (e.g., 2 for 2%)
Trig : Optional trigger price (creates Stop-Limit SL)
Take Profit (TP): Same structure as SL
Example:
Long entry at 65000, SL = 2% → Exit at 63700 (65000 - 2%)
Short entry at 65000, TP = 3% → Exit at 63050 (65000 - 3%)
3. Options Trading Setup (CRITICAL)
This strategy has special logic for Options trading to handle directional bias correctly.
Scenario A: Options Buying (Long Volatility)
You want to BUY Calls when the trend is Up, and BUY Puts when the trend is Down.
Segment : options
Strike Selection : Dynamic
Algo Type : Options Buying Algo
What happens:
Long Signal (Green Supertrend) → System sends BUY action. Backend buys a Call (CE) .
Short Signal (Red Supertrend) → System sends BUY action. Backend buys a Put (PE) .
Scenario B: Options Selling (Short Volatility)
You want to SELL Puts when the trend is Up (Bullish), and SELL Calls when the trend is Down (Bearish).
Segment : options
Strike Selection : Dynamic
Algo Type : Options Selling Algo
What happens:
Long Signal (Green Supertrend) → System sends SELL action. Backend sells a Put (PE) .
Short Signal (Red Supertrend) → System sends SELL action. Backend sells a Call (CE) .
Dynamic Strike Settings:
Strike Offset : 0 (ATM), +1 (OTM for Calls/ITM for Puts), -1 (ITM for Calls/OTM for Puts)
Strike Interval : Gap between strikes (e.g., BTC: 500, ETH: 50)
Expiry Date Formats:
T+0 - Today
T+1 - Tomorrow
current week - This Friday
next week - Next Friday
current month - Last Friday of month
131125 - Specific date (13 Nov 2025)
4. Create Alert for Automation
Right-click on chart → "Add Alert"
Condition : Select your strategy name
Alert Actions : Webhook URL
Webhook URL : Your Algoticks.in API endpoint
Message : Leave as {{strategy.order.alert_message}} (contains JSON)
Click "Create"
The alert will automatically send JSON payloads to your API when signals occur.
Example Configurations
Futures Trend Following
Strategy: ATR=10, Factor=3.0
Segment: futures
Order Type: market_order
Quantity: 1
SL: 2% (Relative)
TP: 6% (Relative)
Options Buying (Directional)
Segment: options
Strike Selection: Dynamic
Algo Type: Options Buying Algo
Strike Offset: 0 (ATM)
Strike Interval: 500 (for BTC)
Expiry: current week
Order Type: market_order
Important Notes
Paper Trading First : Always test with paper trading enabled before live trading
Order Tags : Automatically generated for tracking (max 18 chars)
Position Management : Strategy closes opposite positions automatically
Signal Confirmation : Uses barstate.isconfirmed to prevent repainting
JSON Payload : All settings are converted to JSON and sent via webhook
Troubleshooting
No signals : Check if Supertrend is flipping on your timeframe
Orders not executing : Verify webhook URL and API credentials
Wrong strikes : Double-check Strike Interval for your asset
SL/TP not working : Ensure values are non-zero and mode is correct
Support
For API setup and connector configuration, see visit Algoticks.in documentation.
1.1 SMF LONG: Sweep → BOS → OB → BOS break SMF LONG Strategy (Sweep → BOS → Order Block → BOS) — Summary
The strategy looks for a moment when the market takes liquidity to the downside through a sweep (breaking previous lows), followed by the formation of the first BOS, indicating that sellers have lost control. After that, the strategy waits for the creation of an Order Block (OB) — the last bearish candle before the upward impulse — which highlights the zone where large players entered positions. When price returns to the OB, the entry (TVH) is placed at the top of the OB, the stop-loss at the bottom of the OB, and the take-profit is always set to 3× the stop size, regardless of the OB width.
In a one-year backtest from December 2024 to December 2025, the strategy and indicator showed a win rate of 30.85%:
65 stop-losses,
29 take-profits,
and 15 missed trades where the take-profit was hit before price could return to the entry zone.
Algoticks.in: RSI StrategyRSI Strategy - User Guide
Overview
This is a Relative Strength Index (RSI) strategy that generates trading signals based on overbought and oversold levels. It integrates with Algoticks.in API for automated trading on Delta Exchange.
Strategy Logic
Long Signal: When RSI crosses above the Oversold level (Mean Reversion / Dip Buy)
Short Signal: When RSI crosses below the Overbought level (Mean Reversion / Top Sell)
Automatically closes opposite positions before entering new ones
Quick Setup
1. Add to TradingView
Open TradingView and go to the chart
Click "Pine Editor" at the bottom
Paste the script code
Click "Add to Chart"
2. Configure Strategy Parameters
Strategy Settings
RSI Length (default: 14): The lookback period for RSI calculation
Overbought Level (default: 70): Level above which the asset is considered overbought
Oversold Level (default: 30): Level below which the asset is considered oversold
General API Settings
Paper Trading : Enable for testing without real money
Signal Type : Choose "Trading Signal" (default) for tracking
Exchange : DELTA (Delta Exchange)
Segment :
futures - Perpetual contracts
options - Call/Put options
spot - Spot trading
Order Settings: Basic
Quantity : Number of contracts (e.g., 1, 0.5, 2)
Validity :
GTC - Good Till Cancelled
IOC - Immediate or Cancel
FOK - Fill or Kill
DAY - Day order
Product : cross_margin or isolated_margin
Order Settings: Entry Type
Choose how orders are executed:
Market Order : Immediate fill at best price
Limit Order : Fill at specified price or better
Stop Market : Triggers at stop price, then market order
Stop Limit : Triggers at stop price, then limit order
Entry Prices (for Limit/Stop orders)
Limit Price:
Price : The value to use
Type : Last Price / Mark Price / Index Price
Mode :
Absolute - Exact price (e.g., 65000)
Relative - Offset from entry price
% Checkbox : If checked, relative uses percentage; if unchecked, uses points
Example:
Absolute: 65000 → Order at exactly 65000
Relative 1% (checked): Entry ± 1% of entry price
Relative 100 (unchecked): Entry ± 100 points
Trigger Price: Same logic as Limit Price, used for Stop orders
Exit / Bracket Prices (SL/TP)
Stop Loss (SL):
Type : Price type to monitor (Mark Price recommended)
Mode : Absolute or Relative
% : Percentage or points
SL : Stop loss value (e.g., 2 for 2%)
Trig : Optional trigger price (creates Stop-Limit SL)
Take Profit (TP): Same structure as SL
Example:
Long entry at 65000, SL = 2% → Exit at 63700 (65000 - 2%)
Short entry at 65000, TP = 3% → Exit at 63050 (65000 - 3%)
3. Options Trading Setup (Only if Segment = Options)
Strike Selection Method
User Defined Mode:
Manually specify exact strike and option type
Best for: Trading specific levels
Required fields:
Strike Price : e.g., "65000"
Option Type : Call or Put
Dynamic Mode:
System calculates strike based on ATM price
Best for: Automated strategies
Required fields:
Algo Type : Options Buying or Selling
Strike Offset : 0 (ATM), +1 (above ATM), -1 (below ATM)
Strike Interval : Gap between strikes (e.g., BTC: 500, ETH: 50)
Expiry Date Formats:
T+0 - Today
T+1 - Tomorrow
current week - This Friday
next week - Next Friday
current month - Last Friday of month
131125 - Specific date (13 Nov 2025)
4. Create Alert for Automation
Right-click on chart → "Add Alert"
Condition : Select your strategy name
Alert Actions : Webhook URL
Webhook URL : Your Algoticks.in API endpoint
Message : Leave as {{strategy.order.alert_message}} (contains JSON)
Click "Create"
The alert will automatically send JSON payloads to your API when signals occur.
Example Configurations
Standard RSI Reversal
Strategy: RSI Length = 14, OB = 70, OS = 30
Segment: futures
Order Type: market_order
Quantity: 1
SL: 1.5% (Relative)
TP: 3% (Relative)
Aggressive Scalping
Strategy: RSI Length = 7, OB = 80, OS = 20
Segment: futures
Order Type: market_order
Quantity: 0.5
SL: 0.5% (Relative)
TP: 1% (Relative)
Important Notes
Paper Trading First : Always test with paper trading enabled before live trading
Order Tags : Automatically generated for tracking (max 18 chars)
Position Management : Strategy closes opposite positions automatically
Signal Confirmation : Uses barstate.isconfirmed to prevent repainting
JSON Payload : All settings are converted to JSON and sent via webhook
Troubleshooting
No signals : Check if RSI is actually reaching your OB/OS levels
Orders not executing : Verify webhook URL and API credentials
Wrong strikes : Double-check Strike Interval for your asset
SL/TP not working : Ensure values are non-zero and mode is correct
Support
For API setup and connector configuration, visit Algoticks.in documentation.
Q2A_CandlestickPatterns# Q2A Candlestick Patterns Library
A comprehensive Pine Script v6 library for detecting 44 candlestick patterns with trend detection and property calculations.
## 📋 Overview
The **Q2A_CandlestickPatterns** library provides a complete toolkit for identifying traditional Japanese candlestick patterns in TradingView. It includes both reversal and continuation patterns, organized by the number of candles required (1, 2, 3, and 5 candles).
### Key Features
- ✅ **44 Pattern Detection Functions** - Comprehensive coverage of major candlestick patterns
- ✅ **Organized by Candle Count** - Easy navigation (1, 2, 3, and 5 candle patterns)
- ✅ **Bullish/Bearish/Neutral Classification** - Clear signal categorization
- ✅ **Detailed Pattern Descriptions** - Each pattern returns name, type, and explanation
- ✅ **Property Calculation Helper** - Core function for analyzing candle characteristics
- ✅ **Clean Q2A Code Style** - Professional, maintainable, and well-documented
## 🚀 Quick Start
### Installation
```pinescript
import Quant2Alpha/Q2A_CandlestickPatterns/1 as candlePatterns
```
### Basic Usage Example
```pinescript
//@version=6
indicator("Candlestick Pattern Detector", overlay=true)
import Quant2Alpha/Q2A_CandlestickPatterns/1 as cp
// Calculate candle properties
= cp.calculateCandleProperties(open, close, high, low, ta.ema(close - open, 14), 5.0, 10.0, 10.0)
// Define trend
upTrend = close > ta.sma(close, 50)
downTrend = close < ta.sma(close, 50)
// Detect patterns
= cp.detectHammerBullish(smallBody, body, bodyLo, hl2, dnShadow, 2.0, hasUpShadow, downTrend)
= cp.detectShootingStarBearish(smallBody, body, bodyHi, hl2, upShadow, 2.0, hasDnShadow, upTrend)
// Visualize
if hammerDetected
label.new(bar_index, low, hammerName, style=label.style_label_up, color=color.green, textcolor=color.white, size=size.small, tooltip=hammerDesc)
if shootingStarDetected
label.new(bar_index, high, shootingStarName, style=label.style_label_down, color=color.red, textcolor=color.white, size=size.small, tooltip=shootingStarDesc)
```
## 📚 Library Structure
### Core Function
#### `calculateCandleProperties()`
Calculates essential candlestick properties for pattern detection.
**Parameters:**
- `p_open`, `p_close`, `p_high`, `p_low` - OHLC prices
- `bodyAvg` - Average body size (e.g., EMA of body sizes)
- `shadowPercent` - Minimum shadow size as % of body (typically 5.0)
- `shadowEqualsPercent` - Tolerance for equal shadows (typically 10.0)
- `dojiBodyPercent` - Max body size as % of range for doji (typically 10.0)
**Returns:** 17 properties including body dimensions, shadows, and candle characteristics
## 📊 Available Patterns
### Single Candle Patterns (13 patterns)
#### Bullish (5)
| Pattern | Function | Description |
| --------------------- | -------------------------------- | ----------------------------------------------------------- |
| **Hammer** | `detectHammerBullish()` | Small body at top, long lower shadow, forms in downtrend |
| **Inverted Hammer** | `detectInvertedHammerBullish()` | Small body at bottom, long upper shadow, forms in downtrend |
| **Marubozu White** | `detectMarubozuWhiteBullish()` | Long green body with little to no shadows |
| **Long Lower Shadow** | `detectLongLowerShadowBullish()` | Lower shadow is 75%+ of total range |
| **Dragonfly Doji** | `detectDragonflyDojiBullish()` | Doji with long lower shadow, no upper shadow |
#### Bearish (5)
| Pattern | Function | Description |
| --------------------- | -------------------------------- | --------------------------------------------------------- |
| **Hanging Man** | `detectHangingManBearish()` | Small body at top, long lower shadow, forms in uptrend |
| **Shooting Star** | `detectShootingStarBearish()` | Small body at bottom, long upper shadow, forms in uptrend |
| **Marubozu Black** | `detectMarubozuBlackBearish()` | Long red body with little to no shadows |
| **Long Upper Shadow** | `detectLongUpperShadowBearish()` | Upper shadow is 75%+ of total range |
| **Gravestone Doji** | `detectGravestoneDojiBearish()` | Doji with long upper shadow, no lower shadow |
#### Neutral (3)
| Pattern | Function | Description |
| ---------------------- | -------------------------- | --------------------------------------------- |
| **Doji** | `detectDoji()` | Open equals close, indicates indecision |
| **Spinning Top White** | `detectSpinningTopWhite()` | Small green body with long shadows both sides |
| **Spinning Top Black** | `detectSpinningTopBlack()` | Small red body with long shadows both sides |
### Two Candle Patterns (15 patterns)
#### Bullish (7)
| Pattern | Function | Description |
| ------------------------ | ------------------------------ | ------------------------------------------------------ |
| **Rising Window** | `detectRisingWindowBullish()` | Gap up between two candles in uptrend |
| **Tweezer Bottom** | `detectTweezerBottomBullish()` | Two candles with identical lows in downtrend |
| **Piercing** | `detectPiercingBullish()` | Green candle closes above midpoint of prior red candle |
| **Doji Star Bullish** | `detectDojiStarBullish()` | Doji gaps down after red candle in downtrend |
| **Engulfing Bullish** | `detectEngulfingBullish()` | Large green candle engulfs prior small red candle |
| **Harami Bullish** | `detectHaramiBullish()` | Small green candle contained in prior large red candle |
| **Harami Cross Bullish** | `detectHaramiCrossBullish()` | Doji contained in prior large red candle |
#### Bearish (8)
| Pattern | Function | Description |
| ------------------------ | ------------------------------- | ------------------------------------------------------ |
| **On Neck** | `detectOnNeckBearish()` | Small green closes near prior red candle's low |
| **Falling Window** | `detectFallingWindowBearish()` | Gap down between two candles in downtrend |
| **Tweezer Top** | `detectTweezerTopBearish()` | Two candles with identical highs in uptrend |
| **Dark Cloud Cover** | `detectDarkCloudCoverBearish()` | Red candle closes below midpoint of prior green candle |
| **Doji Star Bearish** | `detectDojiStarBearish()` | Doji gaps up after green candle in uptrend |
| **Engulfing Bearish** | `detectEngulfingBearish()` | Large red candle engulfs prior small green candle |
| **Harami Bearish** | `detectHaramiBearish()` | Small red candle contained in prior large green candle |
| **Harami Cross Bearish** | `detectHaramiCrossBearish()` | Doji contained in prior large green candle |
### Three Candle Patterns (14 patterns)
#### Bullish (7)
| Pattern | Function | Description |
| -------------------------- | ----------------------------------- | ------------------------------------------------ |
| **Upside Tasuki Gap** | `detectUpsideTasukiGapBullish()` | Three candles with gap that fails to close |
| **Morning Doji Star** | `detectMorningDojiStarBullish()` | Red, gapped doji, green - stronger morning star |
| **Morning Star** | `detectMorningStarBullish()` | Red, small middle, green - classic reversal |
| **Three White Soldiers** | `detectThreeWhiteSoldiersBullish()` | Three consecutive long green candles |
| **Abandoned Baby Bullish** | `detectAbandonedBabyBullish()` | Doji gaps away from both surrounding candles |
| **Tri-Star Bullish** | `detectTriStarBullish()` | Three dojis with gaps between them |
| **Kicking Bullish** | `detectKickingBullish()` | Black marubozu followed by gapped white marubozu |
#### Bearish (7)
| Pattern | Function | Description |
| -------------------------- | ---------------------------------- | ------------------------------------------------ |
| **Downside Tasuki Gap** | `detectDownsideTasukiGapBearish()` | Three candles with gap that fails to close |
| **Evening Doji Star** | `detectEveningDojiStarBearish()` | Green, gapped doji, red - stronger evening star |
| **Evening Star** | `detectEveningStarBearish()` | Green, small middle, red - classic reversal |
| **Three Black Crows** | `detectThreeBlackCrowsBearish()` | Three consecutive long red candles |
| **Abandoned Baby Bearish** | `detectAbandonedBabyBearish()` | Doji gaps away from both surrounding candles |
| **Tri-Star Bearish** | `detectTriStarBearish()` | Three dojis with gaps between them |
| **Kicking Bearish** | `detectKickingBearish()` | White marubozu followed by gapped black marubozu |
### Five Candle Patterns (2 patterns)
#### Bullish (1)
| Pattern | Function | Description |
| ------------------------ | ----------------------------------- | ----------------------------------------------------- |
| **Rising Three Methods** | `detectRisingThreeMethodsBullish()` | Long green, three small reds inside range, long green |
#### Bearish (1)
| Pattern | Function | Description |
| ------------------------- | ------------------------------------ | --------------------------------------------------- |
| **Falling Three Methods** | `detectFallingThreeMethodsBearish()` | Long red, three small greens inside range, long red |
## 💡 Advanced Usage Examples
### Multi-Pattern Strategy
```pinescript
//@version=6
strategy("Multi-Pattern Strategy", overlay=true)
import Quant2Alpha/Q2A_CandlestickPatterns/1 as cp
// Setup
bodyAvg = ta.ema(math.abs(close - open), 14)
= cp.calculateCandleProperties(open, close, high, low, bodyAvg, 5.0, 10.0, 10.0)
// Trends
sma50 = ta.sma(close, 50)
sma200 = ta.sma(close, 200)
upTrend = close > sma50 and sma50 > sma200
downTrend = close < sma50 and sma50 < sma200
// Detect bullish patterns
= cp.detectHammerBullish(smallBody, body, bodyLo, hl2, dnShadow, 2.0, hasUpShadow, downTrend)
= cp.detectEngulfingBullish(downTrend, whiteBody, longBody, blackBody, smallBody, close, open)
= cp.detectMorningStarBullish(longBody, smallBody, downTrend, blackBody, whiteBody, bodyHi, bodyLo, bodyMiddle)
// Detect bearish patterns
= cp.detectShootingStarBearish(smallBody, body, bodyHi, hl2, upShadow, 2.0, hasDnShadow, upTrend)
= cp.detectDarkCloudCoverBearish(upTrend, whiteBody, longBody, blackBody, open, high, close, bodyMiddle)
= cp.detectEveningStarBearish(longBody, smallBody, upTrend, whiteBody, blackBody, bodyLo, bodyHi, bodyMiddle)
// Entry signals
bullishSignal = hammer or engulfing or morningStar
bearishSignal = shootingStar or darkCloud or eveningStar
// Execute trades
if bullishSignal and strategy.position_size == 0
strategy.entry("Long", strategy.long)
if bearishSignal and strategy.position_size > 0
strategy.close("Long")
```
### Pattern Scanner Indicator
```pinescript
//@version=6
indicator("Pattern Scanner", overlay=true)
import Quant2Alpha/Q2A_CandlestickPatterns/1 as cp
// Configuration
showBullish = input.bool(true, "Show Bullish Patterns")
showBearish = input.bool(true, "Show Bearish Patterns")
showNeutral = input.bool(false, "Show Neutral Patterns")
// Calculate properties
bodyAvg = ta.ema(math.abs(close - open), 14)
= cp.calculateCandleProperties(open, close, high, low, bodyAvg, 5.0, 10.0, 10.0)
// Trends
upTrend = close > ta.sma(close, 50)
downTrend = close < ta.sma(close, 50)
// Scan for all patterns and display
// (Add pattern detection and visualization logic here)
```
## 🔧 Configuration Best Practices
### Recommended Parameter Values
| Parameter | Typical Value | Description |
| ---------------------- | ----------------------------- | ------------------------------- |
| `bodyAvg` | `ta.ema(abs(close-open), 14)` | 14-period EMA of body size |
| `shadowPercent` | `5.0` | 5% of body for shadow detection |
| `shadowEqualsPercent` | `10.0` | 10% tolerance for equal shadows |
| `dojiBodyPercent` | `10.0` | Body ≤10% of range = doji |
| `factor` (hammer/star) | `2.0` | Shadow should be 2x body size |
### Trend Definition
```pinescript
// Simple SMA crossover
upTrend = close > ta.sma(close, 50)
downTrend = close < ta.sma(close, 50)
// Double SMA confirmation
upTrend = close > ta.sma(close, 50) and ta.sma(close, 50) > ta.sma(close, 200)
downTrend = close < ta.sma(close, 50) and ta.sma(close, 50) < ta.sma(close, 200)
// EMA trend
upTrend = close > ta.ema(close, 20)
downTrend = close < ta.ema(close, 20)
```
## 📖 Function Return Format
All pattern detection functions return a tuple with 4 elements:
```pinescript
```
- **detected** (bool) - `true` if pattern is found, `false` otherwise
- **name** (string) - Pattern name (e.g., "Hammer", "Shooting Star")
- **type** (string) - "Bullish", "Bearish", or "Neutral"
- **description** (string) - Detailed explanation of the pattern
### Example
```pinescript
= cp.detectHammerBullish(...)
if isHammer
log.info("Pattern: " + patternName) // "Hammer"
log.info("Type: " + patternType) // "Bullish"
log.info("Info: " + patternInfo) // Full description
```
## 🎯 Pattern Reliability
### High Reliability (Strong Signals)
- Engulfing patterns (Bullish/Bearish)
- Morning/Evening Star formations
- Three White Soldiers / Three Black Crows
- Hammer / Shooting Star (with confirmation)
### Medium Reliability (Use with Confirmation)
- Harami patterns
- Piercing / Dark Cloud Cover
- Tweezer Top/Bottom
- Doji Star patterns
### Context-Dependent (Require Trend Analysis)
- Window patterns (gaps)
- Kicking patterns
- Tasuki Gap patterns
- Three Methods patterns
## 📝 Notes
- **Trend Context is Critical**: Most reversal patterns require proper trend identification for accuracy
- **Confirmation Recommended**: Wait for next candle confirmation before taking action
- **Volume Matters**: Consider volume alongside patterns (not included in this library)
- **Multiple Timeframes**: Check patterns across multiple timeframes for stronger signals
- **Risk Management**: Always use stop losses regardless of pattern strength
## 🔗 Integration with Other Indicators
This library works well with:
- Moving averages (trend confirmation)
- RSI/Stochastic (overbought/oversold)
- Volume indicators (confirmation)
- Support/Resistance levels (context)
- ATR (position sizing)
## 📄 License
This Pine Script® code is subject to the terms of the Mozilla Public License 2.0 at mozilla.org
## 👤 Author
© Quant2Alpha
## 🆘 Support
For issues, questions, or contributions, please refer to the QUANT2ALPHA documentation or community channels.
---
**Version:** 1.0
**Pine Script Version:** 6
**Last Updated:** 2025
Algoticks.in: MA Crossover Strategy (Sample)MA Crossover Strategy - User Guide
Overview
This is a Moving Average Crossover strategy that generates trading signals when a fast MA crosses a slow MA. It integrates with Algoticks.in API for automated trading on Delta Exchange.
Strategy Logic
Long Signal: When Fast MA crosses above Slow MA
Short Signal: When Fast MA crosses below Slow MA
Automatically closes opposite positions before entering new ones
Quick Setup
1. Add to TradingView
Open TradingView and go to the chart
Click "Pine Editor" at the bottom
Paste the script code
Click "Add to Chart"
2. Configure Strategy Parameters
Strategy Settings
Fast MA Length (default: 9): Shorter moving average period
Slow MA Length (default: 21): Longer moving average period
MA Type : Choose SMA (Simple) or EMA (Exponential)
General API Settings
Paper Trading : Enable for testing without real money
Signal Type : Choose "Trading Signal" (default) for tracking
Exchange : DELTA (Delta Exchange)
Segment :
futures - Perpetual contracts
options - Call/Put options
spot - Spot trading
Order Settings: Basic
Quantity : Number of contracts (e.g., 1, 0.5, 2)
Validity :
GTC - Good Till Cancelled
IOC - Immediate or Cancel
FOK - Fill or Kill
DAY - Day order
Product : cross_margin or isolated_margin
Order Settings: Entry Type
Choose how orders are executed:
Market Order : Immediate fill at best price
Limit Order : Fill at specified price or better
Stop Market : Triggers at stop price, then market order
Stop Limit : Triggers at stop price, then limit order
Entry Prices (for Limit/Stop orders)
Limit Price:
Price : The value to use
Type : Last Price / Mark Price / Index Price
Mode :
Absolute - Exact price (e.g., 65000)
Relative - Offset from entry price
% Checkbox : If checked, relative uses percentage; if unchecked, uses points
Example:
Absolute: 65000 → Order at exactly 65000
Relative 1% (checked): Entry ± 1% of entry price
Relative 100 (unchecked): Entry ± 100 points
Trigger Price: Same logic as Limit Price, used for Stop orders
Exit / Bracket Prices (SL/TP)
Stop Loss (SL):
Type : Price type to monitor (Mark Price recommended)
Mode : Absolute or Relative
% : Percentage or points
SL : Stop loss value (e.g., 2 for 2%)
Trig : Optional trigger price (creates Stop-Limit SL)
Take Profit (TP): Same structure as SL
Example:
Long entry at 65000, SL = 2% → Exit at 63700 (65000 - 2%)
Short entry at 65000, TP = 3% → Exit at 63050 (65000 - 3%)
3. Options Trading Setup (Only if Segment = Options)
Strike Selection Method
User Defined Mode:
Manually specify exact strike and option type
Best for: Trading specific levels
Required fields:
Strike Price : e.g., "65000"
Option Type : Call or Put
Dynamic Mode:
System calculates strike based on ATM price
Best for: Automated strategies
Required fields:
Algo Type : Options Buying or Selling
Strike Offset : 0 (ATM), +1 (above ATM), -1 (below ATM)
Strike Interval : Gap between strikes (e.g., BTC: 500, ETH: 50)
Expiry Date Formats:
T+0 - Today
T+1 - Tomorrow
current week - This Friday
next week - Next Friday
current month - Last Friday of month
131125 - Specific date (13 Nov 2025)
4. Create Alert for Automation
Right-click on chart → "Add Alert"
Condition : Select your strategy name
Alert Actions : Webhook URL
Webhook URL : Your Algoticks.in API endpoint
Message : Leave as {{strategy.order.alert_message}} (contains JSON)
Click "Create"
The alert will automatically send JSON payloads to your API when signals occur.
Example Configurations
Simple Futures Trading
Strategy: Fast MA = 9, Slow MA = 21, SMA
Segment: futures
Order Type: market_order
Quantity: 1
SL: 2% (Relative)
TP: 4% (Relative)
Options Buying (Dynamic)
Segment: options
Strike Selection: Dynamic
Algo Type: Options Buying Algo
Strike Offset: 0 (ATM)
Strike Interval: 500 (for BTC)
Expiry: current week
Order Type: market_order
Conservative Spot Trading
Segment: spot
Order Type: limit_order
Limit Price: 0.5% (Relative)
Quantity: 0.1
No SL/TP (manual management)
Important Notes
Paper Trading First : Always test with paper trading enabled before live trading
Order Tags : Automatically generated for tracking (max 18 chars)
Position Management : Strategy closes opposite positions automatically
Signal Confirmation : Uses barstate.isconfirmed to prevent repainting
JSON Payload : All settings are converted to JSON and sent via webhook
Troubleshooting
No signals : Check if MAs are crossing on your timeframe
Orders not executing : Verify webhook URL and API credentials
Wrong strikes : Double-check Strike Interval for your asset
SL/TP not working : Ensure values are non-zero and mode is correct
Support
For API setup and connector configuration, see CONNECTOR_SETUP_GUIDE.md or visit Algoticks.in documentation.
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")
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.
NQUSB Sector Industry Stocks Strength
A Comprehensive Multi-Industry Performance Comparison Tool
The complete Pine Script code and supporting Python automation scripts are available on GitHub:
GitHub Repository: github.com
Original idea from by www.tradingview.com
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
═══ WHAT'S NEW ═══
4-Level Hierarchical Navigation:
Primary: All 11 NQUSB sectors (NQUSB10, NQUSB15, NQUSB20, etc.)
Secondary (Default): Broad sectors like Technology, Energy
Tertiary: Industry groups within sectors
Quaternary: Individual stocks within industries (37 semiconductors)
Enhanced Stock Coverage:
1,176 total stocks across 129 industries
37 semiconductor stocks
Market-cap weighted selection: 60% tech / 35% others
Range: 1-37 stocks per industry
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
═══ CORE FEATURES ═══
1. Drill-Down/Drill-Up Navigation
View NVDA at different granularity levels:
Quaternary: ● NVDA ranks #3 of 37 semiconductors
Tertiary: ✓ Semiconductors at 85% (strongest in tech hardware)
Secondary: ✓ Tech Hardware at 82% (stronger than software)
Primary: ✓ Technology at 78% (#1 sector overall)
Insight: One indicator, one stock, four perspectives - instantly see if strength is stock-specific, industry-specific, or sector-wide.
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
2. Visual Current Stock Identification
Violet Markers - Instant Recognition:
● (dot) marker when current stock is in top N performers
✕ (cross) marker when current stock is below top N
Violet color (#9C27B0) on both symbol and value labels
Example: "NVDA ● ranks #3 of 37"
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
3. Rank Display in Title
Dynamic title shows performance context:
"Semiconductors (RS Rating - 3 Months) | NVDA ranks #3 of 37"
#1 = Best performer, higher number = lower rank
Total adjusts if current stock auto-added
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
4. Auto-Add Current Stock
Always Included:
Current stock automatically added if not in predefined list
Example: Viewing PRSO → "PRSO ranks #37 of 39 ✕"
Works for any stock - from NVDA to obscure small-caps
Violet markers ensure visibility even when ranked low
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
═══ DUAL PERFORMANCE METRICS ═══
RS Rating (Relative Strength):
Normalized strength score 1-99
Compare stocks across different price ranges
Default benchmark: SPX
% Return:
Simple percentage price change
Direct performance comparison
11 Time Periods:
1 Week, 2 Weeks, 1 Month, 2 Months, 3 Months (Default) , 6 Months, 1 Year, YTD, MTD, QTD, Custom (1-500 days)
Result: 22 analytical combinations (2 metrics × 11 periods)
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
═══ USE CASES ═══
Sector Rotation Analysis:
Is NVDA's strength semiconductors-specific or tech-wide?
Drill through all 4 levels to find answer
Identify which industry groups are leading/lagging
Finding Hidden Gems:
JPM ranks #3 of 13 in Major Banks
But Financials sector weak overall (68%)
= Relative strength play in weak sector
Cross-Industry Comparison:
129 industries covered
Market-wide scan capability
Find strongest performers across all sectors
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
═══ TECHNICAL SPECIFICATIONS ═══
V32 Stats:
Total Industries: 129
Total Stocks: 1,176
File Size: 82,032 bytes (80.1 KB)
Request Limit: 39 max (Semiconductors), 10-16 typical
Granularity Levels: 4 (Primary → Quaternary)
Smart Stock Allocation:
Technology industries: 60% coverage
Other industries: 35% coverage
Market-cap weighted selection
Formula: MIN(39, MAX(5, CEILING(total × percentage)))
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
═══ KEY ADVANTAGES ═══
vs. Single Industry Tools:
✓ 129 industries vs 1
✓ Market-wide perspective
✓ Hierarchical navigation
✓ Sector rotation detection
vs. Manual Comparison:
✓ No ETF research needed
✓ Instant visual markers
✓ Automatic ranking
✓ One-click drill-down
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
For complete documentation, Python automation scripts, and CSV data files:
github.com
Version: V32
Last Updated: 2025-11-30
Pine Script Version: v5
Ultra Reversion DCA Strategy with Manual Leverage - V.1Ultra Reversion DCA Strategy with Manual Leverage - V.1
2025-10-27
MFM – Light Context HUD (Minimal)Overview
MFM Light Context HUD is the free version of the Market Framework Model. It gives you a fast and clean view of the current market regime and phase without signals or chart noise. The HUD shows whether the asset is in a bullish or bearish environment and whether it is in a volatile, compression, drift, or neutral phase. This helps you read structure at a glance.
Asset availability
The free version works only on a selected list of five assets.
Supported symbols are
SP:SPX
TVC:GOLD
BINANCE:BTCUSD
BINANCE:ETHUSDT
OANDA:EURUSD
All other assets show a context banner only.
How it works
The free version uses fixed settings based on the original MFM model. It calculates the regime using a higher timeframe RSI ratio and identifies the current phase using simplified momentum conditions. The chart stays clean. Only a small HUD appears in the top corner. Full visual phases, ratio logic, signals, and auto tune are part of the paid version.
The free version shows the phase name only. It does not display colored phase zones on the chart.
Phase meaning
The Market Framework Model uses four structural phases to describe how the market
behaves. These are not signals but context layers that show the underlying environment.
Volatile (Phase 1)
The market is in a fast, unstable or directional environment. Price can move aggressively with
stronger momentum swings.
Compression (Phase 2)
The market is in a contracting state. Momentum slows and volatility decreases. This phase
often appears before expansion, but it does not predict direction.
Drift (Phase 3)
The market moves in a more controlled, persistent manner. Trends are cleaner and volatility
is lower compared to volatile phases.
No phase
No clear structural condition is active.
These phases describe market structure, not trade entries. They help you understand the conditions you are trading in.
Cross asset context
The Market Framework Model reads markets as a multi layer system. The full version includes cross asset analysis to show whether the asset is acting as a leader or lagger relative to its benchmark. The free version uses the same internal benchmark logic for regime detection but does not display the cross asset layer on the chart.
Cross asset structure is a core part of the MFM model and is fully available in the paid version.
Included in this free version
Higher timeframe regime
Current phase name
Clean chart output
Context only
Works on a selected set of assets
Not included
No forecast signals
No ratio leader or lagger logic
No MRM zones
No MPF timing
No auto tune
The full version contains all features of the complete MFM model.
Full version
You can find the full indicator here:
payhip.com
More information
Model details and documentation:
mfm.inratios.com
Momentum Framework Model free HUD indicator User Guide: mfm.inratios.com
Disclaimer
The Market Framework Model (MFM) and all related materials are provided for educational and informational purposes only. Nothing in this publication, the indicator, or any associated charts should be interpreted as financial advice, investment recommendations, or trading signals. All examples, visualizations, and backtests are illustrative and based on historical data. They do not guarantee or imply any future performance. Financial markets involve risk, including the potential loss of capital, and users remain fully responsible for their own decisions. The author and Inratios© make no representations or warranties regarding the accuracy, completeness, or reliability of the information provided. MFM describes structural market context only and should not be used as the sole basis for trading or investment actions.
By using the MFM indicator or any related insights, you agree to these terms.
© 2025 Inratios. Market Framework Model (MFM) is protected via i-Depot (BOIP) – Ref. 155670. No financial advice.
$TGM | Topological Geometry Mapper (Custom)TGM | Topological Geometry Mapper (Custom) – 2025 Edition
The first indicator that reads market structure the way institutions actually see it: through persistent topological features (Betti-1 collapse) instead of lagging price patterns.
Inspired by algebraic topology and persistent homology, TGM distills regime complexity into a single, real-time proxy using the only two macro instruments that truly matter:
• CBOE:VIX – market fear & convexity
• TVC:DXY – dollar strength & global risk appetite
When the weighted composite β₁ persistence drops below the adaptive threshold → market structure radically simplifies. Noise dies. Order flow aligns. A directional explosion becomes inevitable.
Features
• Structural Barcode Visualization – instantly see complexity collapsing in real time
• Dynamic color system:
→ Neon green = long breakout confirmed
→ red = short breakout confirmed
→ yellow = simplification in progress (awaiting momentum)
→ deep purple = complex/noisy regime
• Clean HUD table with live β₁ value, threshold, regime status and timestamp
• Built-in high-precision alerts (Long / Short / Collapse)
• Zero repaint – uses only confirmed data
• Works on every timeframe and every market
Best used on:
BTC, ETH, ES/NQ, EURUSD, GBPUSD, NAS100, SPX500, Gold – anywhere liquidity is institutional.
This is not another repainted RSI or MACD mashup.
This is structural regime detection at the topological level.
Welcome to the future of market geometry.
Made with love for the real traders.
Open-source. No paywalls. No BS.
#topology #betti #smartmoney #ict #smc #orderflow #regime #institutional
MFM - Light Context HUD (Free)Overview
MFM Light Context HUD is the free version of the Market Framework Model. It gives you a fast and clean view of the current market regime and phase without signals or chart noise. The HUD shows whether the asset is in a bullish or bearish environment and whether it is in a volatile, compression, drift, or neutral phase. This helps you read structure at a glance.
Asset availability
The free version works only on a selected list of five assets.
Supported symbols are
SP:SPX
TVC:GOLD
BINANCE:BTCUSD
BINANCE:ETHUSDT
OANDA:EURUSD
All other assets show a context banner only.
How it works
The free version uses fixed settings based on the original MFM model. It calculates the regime using a higher timeframe RSI ratio and identifies the current phase using simplified momentum conditions. The chart stays clean. Only a small HUD appears in the top corner. Full visual phases, ratio logic, signals, and auto tune are part of the paid version.
The free version shows the phase name only. It does not display colored phase zones on the chart.
Phase meaning
The Market Framework Model uses four structural phases to describe how the market behaves. These are not signals but context layers that show the underlying environment.
Volatile (Phase 1)
The market is in a fast, unstable or directional environment. Price can move aggressively with stronger momentum swings.
Compression (Phase 2)
The market is in a contracting state. Momentum slows and volatility decreases. This phase often appears before expansion, but it does not predict direction.
Drift (Phase 3)
The market moves in a more controlled, persistent manner. Trends are cleaner and volatility is lower compared to volatile phases.
No phase
No clear structural condition is active.
These phases describe market structure, not trade entries. They help you understand the conditions you are trading in.
Cross asset context
The Market Framework Model reads markets as a multi layer system. The full version includes cross asset analysis to show whether the asset is acting as a leader or lagger relative to its benchmark. The free version uses the same internal benchmark logic for regime detection but does not display the cross asset layer on the chart.
Cross asset structure is a core part of the MFM model and is fully available in the paid version.
Included in this free version
Higher timeframe regime
Current phase name
Clean chart output
Context only
Works on a selected set of assets
Not included
No forecast signals
No ratio leader or lagger logic
No MRM zones
No MPF timing
No auto tune
The full version contains all features of the complete MFM model.
Full version
You can find the full indicator here:
payhip.com
More information
Model details and documentation:
mfm.inratios.com
Disclaimer
The Market Framework Model (MFM) and all related materials are provided for educational and informational purposes only. Nothing in this publication, the indicator, or any associated charts should be interpreted as financial advice, investment recommendations, or trading signals. All examples, visualizations, and backtests are illustrative and based on historical data. They do not guarantee or imply any future performance. Financial markets involve risk, including the potential loss of capital, and users remain fully responsible for their own decisions. The author and Inratios© make no representations or warranties regarding the accuracy, completeness, or reliability of the information provided. MFM describes structural market context only and should not be used as the sole basis for trading or investment actions.
By using the MFM indicator or any related insights, you agree to these terms.
© 2025 Inratios. Market Framework Model (MFM) is protected via i-Depot (BOIP) – Ref. 155670. No financial advice.
$MTF Fractal Echo DetectorMIL:MTVFR FRACTAL ECHO DETECTOR by Timmy741
The first public multi-timeframe fractal convergence system that actually works.
Market makers don’t move price randomly.
They test the same fractal structure on lower timeframes first → then execute the real move on higher timeframes.
This indicator catches the “echo” — when 3–5 timeframes are printing fractals at almost the exact same price level.
That’s not coincidence. That’s preparation.
FEATURES
• 5 simultaneous timeframes (1min → 4H by default)
• Real Williams Fractal detection (configurable period)
• Dynamic echo tolerance & minimum TF alignment
• Visual S/R zones from every timeframe
• Bullish / Bearish echo convergence signals
• Strength meter (3/5, 4/5, 5/5 TF alignment)
• Zero repainting — uses proper lookahead=off
• Fully Pine v6 typed + optimized
USE CASE
When you see a 4/5 or 5/5 echo:
→ That level is being defended or attacked with intent
→ 80%+ chance the next real move comes from there
→ Trade the breakout or reversal at that exact fractal cluster
Works insane on:
• BTC / ETH (all timeframes)
• Nasdaq / SPX futures
• Forex majors (especially GBP & gold)
• 2025 small-cap rotation setups
100% Open Source • MPL 2.0 • Built by Timmy741 • December 2024
If you know about fractal echoes… you already know.
#fractal #mtf #echo #williamsfractal #multitimeframe #smartmoney #ict #smc #orderflow #convergence #timmy741 #snr #structure
inyerneck Diaper Sniper v16 — LOW VOL V CATCHERDiaper Sniper v16 — Low-Vol Reversal Hunter
Catches dead-cat bounces and V-shaped reversals on the day’s biggest losers.
Designed for pennies and trash stocks that drop 6 %+ from recent high and snap back on any volume + green candle.
Features:
• Tiny green “D” = reversal signal
• Works on 1m → daily
• Fully adjustable filters
Best on low-float runners that bleed hard and bounce harder.
Use tiny size — it fires a lot.
Public version — code visible. No invite-only on Essential plan.
do not alter settings with out first recording defaults.. defaults are quite effective
2025 build. Test at your own risk.
DPX+ Command Structural Flow Engine (v6) - FinalDPX+ COMMAND STRUCTURAL FLOW ENGINE v6 — DARKPOOL EDITION
The most advanced auto-calibrated dark-pool absorption + structural flow detector ever released to the public.
100% Open Source • Zero repainting • Institutional-grade math • Built for commanders only.
WHAT THIS ACTUALLY IS
A real-time fusion of:
• Reynolds Number proxy (laminar → turbulent flow detection)
• Tsallis Δq non-extensive entropy (tension & phase transition predictor)
• DPX — proprietary Dark Pool Absorption Index (volume-weighted inefficiency)
All three are AUTO-CALIBRATED to the current market regime. No manual thresholds. Works on BTC, SPX, TSLA, 1m or monthly — same settings.
FEATURES
• Jet-black military HUD with live COMMAND output
• Lethal Entry signals when ALL 3 systems align (extremely rare, extremely high win rate)
• Visualizes laminar vs turbulent flow in real time
• DPX absorption/distribution zones with dynamic bands
• Structural break warnings before violent moves
• Zero input tweaking needed — fully adaptive
USE CASE
This is not a "buy/sell arrow" script.
This is a command-center structural flow monitor used by professionals who understand order flow phases:
→ Accumulation (dark pool buying dips)
→ Tension buildup (Δq spike)
→ Phase transition (laminar → turbulent)
→ Lethal structural convergence = high-conviction entry
WHEN THE HUD SAYS "**BUY** (Lethal Structural Convergence)" — you listen.
Tested and proven on:
• Crypto bear market bottoms
• 2022–2023 SPX distribution tops
• 2025 small-cap rotation
Fully open source because real edge isn’t in the code — it’s in understanding what the code is showing you.
If you know, you know.
#darkpool #orderflow #structural #dpx #reynolds #tsallis #institutional #smartmoney #accumulation #distribution #phasechange #ict #smc #commandcenter
Made with respect for the craft.
Drop a ♥ if this speaks to you.
Classic Wave: The Easy WayClassic Wave is a simple strategy with few rules and no over-optimization. Despite its simplicity, it is backed by a nearly century-long historical track record, delivering excellent returns on the weekly chart of the SPX (TVC).
I also recommend observing its strong performance on the SPY (weekly), which is the perfect instrument for executing this strategy with futures in the future.
Strategy Rules and Parameters
When a bullish candle closes above the 20-period EMA, we place the stop-loss below the low of that candle and target a risk-reward ratio of 1:1.
A second, more profitable variant is to change the risk-reward ratio in the code to 2:1.
-Total capital: $10,000
-We use 10% of the total capital per trade.
-Commissions: 0.1% per trade.
The code construction is simple and very well detailed within the script itself.
Risk-Reward Ratio 2:1
Using a 2:1 risk-reward ratio reduces the win rate but significantly increases profitability.
Across the full historical data of the SPX index (weekly), the system would have generated 236 trades, with a win rate of 51.27% and a profit factor of 2.53.
From January 1, 2023, to November 28, 2025, the system would have generated 5 trades, with an 80% win rate and a profit factor of 9.244.
What makes this system so good?
-It takes advantage of the long-term bullish bias of U.S. stock indices and traditional markets.
-It filters out a lot of noise thanks to the weekly timeframe.
-It uses simple parameters with no over-optimization.
Final Notes:
This strategy has consistently outperformed the returns offered by most traditional funds over time, with fewer drawdowns and significantly less stress. I hope you like it.
Crypto Signals & Overlays –29-11-2025Nebula Crypto Signals & Overlays
Nebula is a multi-timeframe trend and momentum indicator designed for high-cap crypto pairs (BTC, ETH, SOL, DOGE, etc.).
• Uses 21/50/200 EMAs + higher-timeframe EMA for trend filtering
• RSI and Bollinger Bands for momentum and squeeze detection
• Generates BUY/SELL labels on trend-side pullbacks
• ATR line as a dynamic stop/target guide, plus pivot-based support/resistance zones
• Background colors: green = bullish regime, red = bearish regime, yellow = low-volatility squeeze
Not financial advice. Always backtest and use proper risk management before trading live.






















