FinFluential Global M2 Money Supply // Days Offset =The "Global M2 Money Supply" indicator calculates and visualizes the combined M2 money supply from multiple countries and regions worldwide, expressed in trillions of USD.
M2 is a measure of the money supply that includes cash, checking deposits, and easily convertible near-money assets. This indicator aggregates daily M2 data from various economies, converts them into a common USD base using forex exchange rates, and plots the total as a single line on the chart.
It is designed as an overlay indicator aligned to the right scale, making it ideal for comparing global money supply trends with price action or other market data.
Key Features
Customizable Time Offset: Users can adjust the number of days to shift the M2 data forward or backward (from -1000 to +1000 days) via the indicator settings. This allows for alignment with historical events or forward-looking analysis.
Global Coverage Includes:
Eurozone: Eurozone M2 (converted via EUR/USD)
North America: United States, Canada
Non-EU Europe: Switzerland, United Kingdom, Finland, Russia
Pacific: New Zealand
Asia: China, Taiwan, Hong Kong, India, Japan, Philippines, Singapore
Latin America: Brazil, Colombia, Mexico
Middle East: United Arab Emirates, Turkey
Africa: South Africa
Analisi fondamentale
Cash Flow YieldsCash Flow Yields Indicator
This indicator offers a straightforward way to visualize a company’s cash flow metrics—Free Cash Flow (FCF), Operating Cash Flow (OCF), and Capital Expenditures (CapEx)—as yields relative to its market capitalization. With the flexibility to switch between Trailing Twelve Months (TTM) and Quarterly data, it’s perfect for spotting financial efficiency trends at a glance. Values are plotted as dynamic lines with smart color coding and labeled for clarity.
Features:
TTM & Quarterly Data: Toggle between financial periods to suit your analysis.
Color-Coded Lines: Green for positive OCF, teal for positive FCF, and blue for CapEx. Red and maroon kick in when values turn negative.
Yield Perspective: See FCF, OCF, and CapEx as percentages of market cap, making it easy to compare cash flow strength across companies.
Clear Labels: The latest values pop up on the chart, positioned to the right of the last bar.
Simple & Intuitive: No clutter - just clean lines and numbers to help you focus on what matters.
To use it, add it to your chart and toggle between TTM or Quarterly to see trends. FCF should roughly equal OCF minus CapEx. Adjust your view to focus on companies with strong FCF yields for potential opportunities.
This indicator is freely available and open-source on TradingView for everyone to use. Enjoy!
PE Ratio & MAPE Ratio & Moving Average Indicator
Overview:
This indicator is designed to help traders monitor changes in a stock’s Price-to-Earnings (P/E) ratio using earnings per share data provided by TradingView’s financial database. It displays the raw P/E ratio alongside a smoothed trend line in a dedicated pane, allowing you to observe valuation trends over time.
Key Features:
Customizable Earnings Period: Choose your preferred earnings period (e.g., TTM, Fiscal Year, or Fiscal Quarter) to match your analysis style.
Real-Time P/E Calculation: The indicator computes the P/E ratio based on the latest available data and the current closing price.
Smoothed Trend Line: In addition to the raw P/E ratio, a smoothed moving line is plotted to help you easily identify underlying trends and turning points.
Alert Conditions: Built-in alert settings notify you when the P/E ratio shows significant directional changes, enabling you to react quickly to market shifts.
User-Friendly Interface: Simple inputs make customization straightforward, even if you’re not a coding expert.
The indicator has been thoroughly tested and is designed to accurately calculate and display the P/E Ratio in real-time , ensuring reliability in various market conditions..
Users can fully customize the indicator by adjusting the earnings period (TTM, Fiscal Year, or Fiscal Quarter) and smoothing parameters to match their analysis style and preferences.
The moving average smoothing options allow traders to fine-tune the trend line for a more accurate representation of the stock’s valuation.
How to Use:
Add the Indicator: Apply it to your TradingView chart to see the P/E ratio and its trend line displayed in a separate pane.
Customize Settings: Adjust the earnings period as needed using the input options.
Set Up Alerts: Configure alerts through TradingView’s Alerts panel to be notified when key changes occur in the P/E ratio’s behavior.
Integrate with Your Strategy: Use this tool in combination with your other technical and fundamental analysis methods to make more informed trading decisions.
Disclaimer:
This indicator is for informational and educational purposes only and does not constitute financial advice. Always conduct your own research before making any trading decisions.
EMA Ribbon with 100 MA BY TIJUThe EMA Ribbon with 100 MA is a powerful and visually intuitive indicator designed to help traders identify trends, momentum, and potential support/resistance levels using multiple Exponential Moving Averages (EMAs). By plotting a series of EMAs with varying periods, the script creates a "ribbon" effect on the chart, making it easier to spot trend direction and strength at a glance.
Key Features:
Multiple EMAs for Trend Analysis:
The script plots 8 EMAs with periods ranging from 20 to 55, creating a gradient ribbon effect.
The 100-period EMA is added as a thick blue line, acting as a key level for long-term trend analysis.
Customizable Periods:
Each EMA period is fully customizable, allowing traders to tailor the indicator to their preferred trading style and timeframe.
Visual Clarity:
The EMAs are color-coded, making it easy to distinguish between different periods and identify the overall trend direction.
Dynamic Support/Resistance:
The EMAs act as dynamic support and resistance levels, helping traders identify potential entry and exit points.
Drop Candles Feature:
The script includes an option to drop the first N candles, ensuring cleaner calculations and avoiding false signals during the initial periods.
How to Use:
Trend Identification:
Uptrend: When the shorter-period EMAs are stacked above the longer-period EMAs, it indicates a strong uptrend.
Downtrend: When the longer-period EMAs are stacked above the shorter-period EMAs, it indicates a strong downtrend.
Consolidation: When the EMAs are intertwined, it suggests a sideways or weak trend.
Support/Resistance Levels:
Use the EMAs as dynamic support/resistance levels. For example, in an uptrend, the price may bounce off the lower EMAs.
100-Period EMA:
The 100-period EMA (thick blue line) acts as a key level for long-term trend analysis. A price above this line suggests a bullish bias, while a price below suggests a bearish bias.
Customization:
Adjust the EMA periods and colors to suit your trading strategy.
Use the Drop first N candles option to avoid false signals during the initial periods.
Example Use Cases:
Trend Following:
Enter long positions when the price is above the EMA ribbon and the EMAs are stacked in an uptrend.
Enter short positions when the price is below the EMA ribbon and the EMAs are stacked in a downtrend.
Dynamic Support/Resistance:
Use the EMAs as dynamic support/resistance levels for setting stop-loss or take-profit targets.
Confirmation Tool:
Combine the EMA Ribbon with other indicators (e.g., RSI, MACD) to confirm trade signals.
Settings:
MA-1 to MA-8 Periods: Adjust the periods for the 8 EMAs (default: 20, 25, 30, 35, 40, 45, 50, 55).
MA-100 Period: Adjust the period for the 100 EMA (default: 100).
Source: Choose the price source for the EMAs (default: Close).
Drop First N Candles: Drop the first N candles to avoid false signals (default: 1).
Why Use EMA Ribbon ?
Versatility: Suitable for all trading styles (scalping, day trading, swing trading) and timeframes.
Visual Appeal: The color-coded ribbon makes it easy to interpret the trend at a glance.
Customizable: Tailor the indicator to your specific trading strategy.
Dynamic Levels: Use the EMAs as dynamic support/resistance levels for better risk management.
TILT - Timed Index of Liquidity TrendsThe Timed Index of Liquidity Trends (TILT) is a tracking tool for high-market cap, high-volatility assets like Bitcoin (BTCUSD), the S&P 500 (SPY), the Nasdaq 100 (QQQ), and Gold. Liquidity drives markets; understanding when liquidity is expanding or contracting can help traders anticipate major market swings with greater confidence.
TILT’s M2 Calculation
TILT is based on a global M2 money supply proxy, which aggregates liquidity conditions from major economies. Since TradingView does not provide direct M2 data for all regions, the indicator uses market-based proxies instead:
🇺🇸 United States – S&P 500 Index (SPX)
🇨🇦 Canada – TSX Composite Index (TSX)
🇪🇺 Eurozone – EUR/USD Exchange Rate (EURUSD)
🇬🇧 United Kingdom – GBP/USD Exchange Rate (GBPUSD)
🇷🇺 Russia – Moscow Exchange Index (MOEX)
🇨🇳 China – China 50 Index (CN50USD)
🇯🇵 Japan – Nikkei 225 Index (JPN225)
🇦🇺 Australia – Gold (XAUUSD) as a liquidity proxy
🇮🇳 India – Nifty 50 Index (NIFTY)
🇰🇷 South Korea – KOSPI Index (KOSPI)
🇧🇷 Brazil – Bovespa Index (IBOV)
🇿🇦 South Africa – USD/ZAR Exchange Rate (USDZAR)
By summing these liquidity proxies, TILT provides a comprehensive view of global M2 conditions, allowing traders to see when money supply is expanding (bullish liquidity conditions) or contracting (bearish liquidity conditions).
How to Use TILT for Trading High-Volatility Assets
TILT is not a traditional price indicator. It is a macro tool designed to show whether liquidity is flowing into or out of the financial system. Assets like Bitcoin, QQQ, and Gold tend to perform well when liquidity is expanding and decline when liquidity is contracting.
₿ Bitcoin (BTCUSD) – The Ultimate Liquidity Sponge
Bitcoin thrives on excess liquidity because it is still a speculative asset with no central authority.
· Liquidity Expanding → BTC tends to rise, as speculative capital flows in.
· Liquidity Contracting → BTC struggles or enters a bear market as leverage dries up.
Example Use Case: If TILT turns green (expanding liquidity) and BTC is near a technical support zone, it may indicate a buying opportunity before the next rally.
📊 S&P 500 (SPY) & Nasdaq 100 (QQQ) – Growth & Risk Appetite
These indices are heavily influenced by liquidity conditions because they represent growth stocks and corporate credit access.
· SPY (🇺🇸) → Moves based on global liquidity, particularly Fed policy & M2 expansion.
· QQQ (🇺🇸) → Even more sensitive than SPY due to high exposure to tech stocks.
Example Use Case: If TILT shows liquidity expansion, QQQ often leads SPY higher, providing early signals for market-wide risk-on behavior.
🥇 Gold – Liquidity & Inflation Hedge
Gold is a monetary asset, meaning it benefits from liquidity expansion and inflation fears.
· Liquidity Expanding → Gold can rally as real yields decline.
· Liquidity Contracting → Gold struggles, especially if real yields rise.
Example Use Case: If TILT turns red (liquidity contracting) and bond yields are rising, gold could enter a bearish phase.
⏱️ Timing Market Swings with the Offset Function
The offset function in TILT allows traders to shift liquidity data forward or backward in time to find the best correlation with price action. However, the offset is not fixed and should be re-evaluated periodically to ensure it remains optimized as a leading indicator. Liquidity cycles and market conditions change over time, meaning an offset that worked well in one period may need adjustment in another.
🤔 Why Use an Offset?
Liquidity moves markets with a lag – The effect of M2 expansion/contraction takes time to show up in risk assets.
Finding the right lag helps confirm liquidity-driven price moves – This is crucial for Bitcoin, QQQ, and Gold, which react differently to liquidity shifts.
Since liquidity conditions evolve, the offset should be adjusted from time to time to maintain predictive accuracy.
👋 How to Fit the Offset Using Vertical Reference Lines
The best way to optimize the offset is by testing historical liquidity cycles and using vertical reference lines (and/or the Date Range tool) to align liquidity trends with major price swings.
Step 1: Plot TILT and the asset you’re analyzing (e.g., BTCUSD) on the same chart.
Step 2: Add vertical lines on significant price reversals (major tops & bottoms).
Step 3: Adjust TILT’s offset forward or backward to see if liquidity trends lead or lag those reversals.
Step 4: Periodically revisit the offset setting to ensure it still aligns well with current market conditions.
Example: If BTC topped 10 bars after TILT turned red, you might set the offset to +10 to better align liquidity changes with price action. If, over time, BTC begins reacting faster or slower to liquidity shifts, the offset should be updated accordingly.
💡 Advanced Tips for TILT Users
· Combine TILT With Sentiment Indicators Like the Fear & Greed Index
· Low Fear & Expanding Liquidity → Strong buy signal for BTC & risk assets
· High Greed & Contracting Liquidity → Caution: Market topping signal
· Use With Volume & On-Chain Metrics for BTC
· Rising TILT + Increasing BTC Volume → Confirms strong accumulation
· TILT Falling + Weak BTC Volume → Potential distribution & market risk
· Watch for Divergences
If BTC makes a new high but TILT is falling, it could indicate a liquidity-driven market top.
If BTC makes a new low but TILT is rising, it could indicate a bottom forming.
Conclusion: TILT = The Macro Liquidity Key for Volatile Assets
TILT is an effective tool for timing market swings in Bitcoin, QQQ, SPY, and Gold, as these assets are highly sensitive to liquidity cycles.
· Tracks global M2 trends using liquidity proxies from major economies
· Helps confirm major tops & bottoms in risk assets
· Offset function allows precise timing of liquidity-driven market moves
· Offset should be reviewed periodically to maintain optimal accuracy
· Pairs well with sentiment tools like the Fear & Greed Index for crypto
By using TILT correctly, traders can anticipate major market turns and position ahead of liquidity-driven moves.
Gabriel's Global Market CapGabriel's Global Market Cap is a comprehensive financial indicator designed to track and analyze the total market capitalization across multiple asset classes. It incorporates various financial markets, including stocks, bonds, real estate, cryptocurrencies, commodities, derivatives, private equity, insurance, OTC markets, and natural resources, to provide a holistic view of global market dynamics.
This indicator integrates Ehlers' Adaptive Dominant Cycle Detection and a custom VIX formula to adjust market values based on volatility and volume fluctuations, allowing for a more refined understanding of market conditions.
Key Features
✅ Multi-Market Analysis – Tracks 10+ global financial sectors, each represented by a key ETF or index.
✅ Normalization & Readability – Converts market cap values into an easy-to-read format (Millions, Billions, Trillions, Quadrillions).
✅ Volatility & Volume Adjustments – Optional VIX-based smoothing and relative volume adjustment for more dynamic readings.
✅ Ehlers’ Cycle Detection – Utilizes dominant cycle length detection to uncover market rhythms and cyclic behavior.
✅ Risk Thresholds & Background Coloring – Identifies overbought and oversold conditions with cyclic bands and background shading.
✅ Customizable Inputs – Users can toggle different market categories on/off for focused analysis.
✅ Interactive Data Table – Displays real-time values for each asset class in a structured table format.
Market Categories & Data Sources
📈 Global Stock Market – iShares MSCI ACWI ETF (ACWI)
💰 Global Bond Market – Vanguard Total World Bond ETF (BNDW)
🏡 Real Estate Market – iShares Global REIT ETF (REET)
₿ Cryptocurrency Market – Total Crypto Market Cap (CRYPTOCAP:TOTAL)
🌾 Commodities Market – Invesco DB Commodity Index Fund (DBC)
📊 Derivatives Market – CME Group (CME)
🏦 Private Equity & VC – ProShares Global Listed Private Equity ETF (PEX)
🛡️ Insurance Market – SPDR S&P Insurance ETF (KIE)
💹 OTC Markets – OTC Markets Group (OTCM)
⛽ Natural Resources – iShares Global Energy ETF (IXC)
Technical Enhancements
1️⃣ Custom Volatility Index (VIX) Calculation (Work In Progress)
Adjusts asset values based on volatility conditions using Ehlers' Cycle Detection.
Higher VIX reduces market cap, while lower VIX stabilizes it.
2️⃣ Adaptive Market Normalization
Converts absolute market values into a relative strength scale (0-100) for better visual analysis.
Uses historical min/max values to adjust dynamically.
3️⃣ Cyclic Analysis & Overbought/Oversold Levels
Detects hidden market rhythms & time cycles.
Calculates upper and lower risk bands based on dominant cycle length.
Applies background shading for visualizing low or high risk periods.
Customization Options
🔧 Enable/Disable Market Categories – Select which asset classes to track.
📊 Toggle VIX & Volume Smoothing – Adjust how market cap reacts to volatility & volume.
🎨 Cyclic Risk Bands – Highlight overbought/oversold conditions with dynamic background colors.
Visual Elements
📉 Market Cap Trends – Each category is plotted with a unique color.
🌎 Total Global Value (TGV) – A combined index representing all selected markets.
🎨 Background Coloring – Indicates high/low risk periods.
📋 Real-Time Data Table – Displays normalized & raw market cap values in an easy-to-read format.
Practical Applications
📊 Macroeconomic Analysis – Track global liquidity and investment shifts across asset classes.
💹 Volatility & Risk Assessment – Identify high-risk market conditions based on cyclic behavior.
📈 Cross-Market Comparisons – See which sectors are leading or lagging in value growth.
🔍 Crypto & Stock Market Trends – Analyze how traditional and digital assets correlate.
On-Chain Momentum | QuantumResearch QuantumResearch On-Chain Momentum Indicator
The On-Chain Momentum Indicator is a unique macro-market analysis tool that aggregates multiple on-chain signals to provide insights into Bitcoin’s fundamental market trends. By leveraging real-time on-chain metrics, this indicator helps traders and investors gauge market momentum, capital flows, and potential trend shifts. 🚀📊
⚠️ This script is manually updated to ensure that the latest on-chain data is accurately reflected. The underlying data is extracted from a Google Spreadsheet that tracks various on-chain indicators.
1. Data Sources & Methodology
This indicator consolidates four major on-chain categories, each derived from multiple fundamental Bitcoin metrics:
📌 On-Chain Activity
Miner Revenue Momentum
Exchange Inflow Momentum
📌 Market Profitability
Supply in Profit Momentum
MVRV Momentum
AVIV Momentum
STH-MVRV Momentum
📌 Spending Behavior
SOPR Momentum
Realized Profit/Loss Ratio Momentum
📌 Wealth Distribution
SLRV Ribbons Momentum
Data Extraction Process:
The raw on-chain data is processed and aggregated within a Google Spreadsheet, which applies momentum calculations to each metric.
The results are then manually updated in this script to ensure an accurate reflection of on-chain trends.
The script assigns a momentum value (+1 for bullish, -1 for bearish) based on pre-defined historical trend patterns.
2. How It Works
A. On-Chain Market Regimes
The script analyzes historical on-chain behavior to determine whether the market is in a bullish or bearish phase.
Each major transition is manually updated based on on-chain macro shifts.
Market phases are categorized based on miner revenue, exchange flows, profitability, spending behavior, and wealth distribution trends.
B. Trend Identification & Signal Generation
Bullish Trend: If on-chain momentum metrics confirm strong accumulation behavior, the indicator turns green (Long). ✅
Bearish Trend: If on-chain momentum suggests distribution or capitulation, the indicator turns red (Short). ❌
Neutral Phase: If on-chain activity is mixed or inconclusive, the indicator remains gray (No clear signal). ⚪
C. Manually Updated On-Chain Data Integration
Unlike standard automated indicators, this script requires periodic manual updates to incorporate the most recent on-chain data.
This ensures that the indicator remains aligned with the latest fundamental trends.
The historical momentum shifts are carefully mapped based on previous on-chain cycles.
3. Visual Representation
A. Color-Coded Momentum Signals
Green Bars: Strong positive on-chain momentum 🟢
Blue Bars: Weak or negative on-chain momentum 🔴
B. Time-Based Macro Shifts
Each major historical period is defined based on key on-chain shifts.
The script provides clear visual segmentation of past macro-regimes.
C. Trend-Based Alerts
Long Signal: When on-chain data turns strongly bullish.
Short Signal: When on-chain data turns bearish.
Alerts notify traders when a new macro cycle begins based on updated data. 🔔
4. Customization & Parameters
Color Modes: 8 different visualization styles for enhanced clarity.
Historical Market Phases: Adjustments are made based on historical on-chain macro trends.
Manual Updates: Data is updated in accordance with key on-chain developments.
5. Trading & Investing Applications
📊 Best Used For:
Long-Term Market Analysis – Helps investors identify Bitcoin market cycles.
Trend Confirmation – Serves as an additional confluence factor for technical setups.
Macro Risk Management – Provides a big-picture perspective on market structure.
⚠️ Disclaimer: While on-chain metrics provide valuable insights, no single indicator should be used in isolation. Traders and investors should combine this with other macroeconomic, technical, and fundamental analysis tools.
6. Final Thoughts
The On-Chain Momentum Indicator provides a clear, structured view of Bitcoin’s macroeconomic health.
By combining key on-chain metrics, traders can identify significant market transitions with improved clarity.
This script is manually updated to ensure it remains aligned with the latest on-chain trends.
While this tool is highly effective for macro analysis, it should be used as part of a comprehensive trading/investing strategy.
Enhanced Doji Candle StrategyYour trading strategy is a Doji Candlestick Reversal Strategy designed to identify potential market reversals using Doji candlestick patterns. These candles indicate indecision in the market, and when detected, your strategy uses a Simple Moving Average (SMA) with a short period of 20 to confirm the overall market trend. If the price is above the SMA, the trend is considered bullish; if it's below, the trend is bearish.
Once a Doji is detected, the strategy waits for one or two consecutive confirmation candles that align with the market trend. For a bullish confirmation, the candles must close higher than their opening price without significant bottom wicks. Conversely, for a bearish confirmation, the candles must close lower without noticeable top wicks. When these conditions are met, a trade is entered at the market price.
The risk management aspect of your strategy is clearly defined. A stop loss is automatically placed at the nearest recent swing high or low, with a tighter distance of 5 pips to allow for more trading opportunities. A take-profit level is set using a 2:1 reward-to-risk ratio, meaning the potential reward is twice the size of the risk on each trade.
Additionally, the strategy incorporates an early exit mechanism. If a reversal Doji forms in the opposite direction of your trade, the position is closed immediately to minimize losses. This strategy has been optimized to increase trade frequency by loosening the strictness of Doji detection and confirmation conditions while still maintaining sound risk management principles.
The strategy is coded in Pine Script for use on TradingView and uses built-in indicators like the SMA for trend detection. You also have flexible parameters to adjust risk levels, take-profit targets, and stop-loss placements, allowing you to tailor the strategy to different market conditions.
Quantum Liquidity Fractal Dynamics (QLFD) v2.1The Quantum Liquidity Fractal Dynamics (QLFD) v2.1 is an advanced multi-dimensional market analysis too l engineered for professional traders seeking to identify high-probability liquidity-driven reversals. Built upon a proprietary Fractal-Liquidity Convergence Model (FLCM), QLFD v2.1 leverages quantum-phase liquidity oscillations and institutional absorption mapping to dynamically assess order flow efficiency within multi-timeframe market structures.
Core Algorithmic Methodology
QLFD v2.1 integrates a Hybridized Recursive Liquidity Matrix (HRLM) with High-Frequency Adaptive EMA Displacement (HFAED) to model non-linear liquidity density clusters. This proprietary framework is further reinforced by a Multi-Layered RSI Vorticity Filter (MLRVF), enhancing the signal integrity by filtering out stochastic noise anomalies.
The EMA-200 Rejection Dynamics, combined with the Vortex RSI Momentum Refraction Index (VRMRI), allow the system to isolate institutional footprint imbalances. By capturing transient liquidity voids and microstructure inefficiencies, QLFD v2.1 enables traders to position themselves ahead of high-probability liquidity sweeps.
Signal Efficiency & Institutional Calibration
While QLFD v2.1 exhibits an exceptionally high accuracy rate in identifying potential reversal vectors, it is imperative for traders to exercise institutional-grade signal filtration. The indicator autonomously detects Phase-Induced False Signal Clusters (PIFSCs), yet discretion remains paramount in avoiding transient liquidity mirages—a common occurrence in markets exhibiting hyper-fractalized liquidity dislocations.
For optimal performance, professional traders must apply a Multi-Stage Confirmation Protocol (MSCP), leveraging additional confluence layers such as:
Order Flow Delta Cohesion (OFDC)
Gamma-Weighted Imbalance Deviation (GWID)
Synthetic Volume Shockwave Ratio (SVSR)
These advanced methodologies ensure that traders engage only with high-probability fractal reversals, filtering out structurally unreliable signals induced by inter-market arbitrage distortions.
Final Thoughts
QLFD v2.1 is not designed for retail-grade signal chasing. It is an institutional-grade analytical framework tailored for professionals who understand the fractal complexity of modern liquidity landscapes. Mastering the art of discretionary filtration—by distinguishing true liquidity-driven reversals from algorithmically-induced decoy impulses—is the key to leveraging this system’s full potential.
Stock Earnings Viewer for Pine ScreenerThe script, titled "Stock Earnings Viewer with Surprise", fetches actual and estimated earnings, calculates absolute and percent surprise values, and presents them for analysis. It is intended to use in Pine Screener, as on chart it is redundant.
How to Apply to Pine Screener
Favorite this script
Open pine screener www.tradingview.com
Select "Stock Earnings Viewer with Surprise" in "Choose indicator"
Click "Scan"
Data
Actual Earnings: The reported earnings per share (EPS) for the stock, sourced via request.earnings().
Estimated Earnings: Analyst-predicted EPS, accessed with field=earnings.estimate.
Absolute Surprise: The difference between actual and estimated earnings (e.g., actual 1.2 - estimated 1.0 = 0.2).
Percent Surprise (%): The absolute surprise as a percentage of estimated earnings (e.g., (0.2 / 1.0) * 100 = 20%). Note: This may return NaN or infinity if estimated earnings are zero, due to division by zero.
Practical Use
This screener script allows users to filter stocks based on earnings metrics. For example, you could screen for stocks where Percent Surprise > 15 to find companies exceeding analyst expectations significantly, or use Absolute Surprise < -0.5 to identify underperformers.
EPS Line Indicator - cristianhkrOverview
The EPS Line Indicator displays the Earnings Per Share (EPS) of a publicly traded company directly on a TradingView chart. It provides a historical trend of EPS over time, allowing investors to track a company's profitability per share.
Key Features
📊 Plots actual EPS data for the selected stock.
📅 Updates quarterly as new EPS reports are released.
🔄 Smooths missing values by holding the last reported EPS.
🔍 Helps track long-term profitability trends.
How It Works
The script retrieves quarterly EPS using request.financial(syminfo.tickerid, "EARNINGS_PER_SHARE", "Q", barmerge.gaps_off).
If EPS data is missing for a given period, the last available EPS value is retained to maintain continuity.
The EPS values are plotted as a continuous green line on the chart.
A baseline at EPS = 0 is included to easily identify profitable vs. loss-making periods.
How to Use This Indicator
If the EPS line is trending upwards 📈 → The company is growing earnings per share, a strong sign of profitability.
If the EPS line is declining 📉 → The company’s EPS is shrinking, which may indicate financial weakness.
If EPS is negative (below zero) ❌ → The company is reporting losses per share, which can be a warning sign.
Limitations
Only works with stocks that report EPS data (not applicable to cryptocurrencies or commodities).
Does not adjust for stock splits or other corporate actions.
Best used on daily, weekly, or monthly charts for clear earnings trends.
Conclusion
This indicator is a powerful tool for investors who want to visualize earnings per share trends directly on a price chart. By showing how EPS evolves over time, it helps assess a company's profitability trajectory, making it useful for both fundamental analysis and long-term investing.
🚀 Use this indicator to track EPS growth and make smarter investment decisions!
CAPE / Shiller PE Ratio - cristianhkrThe Cyclically Adjusted Price-to-Earnings Ratio (CAPE Ratio), also known as the Shiller P/E Ratio, is a long-term valuation measure for stocks. It was developed by Robert Shiller and smooths out earnings fluctuations by using an inflation-adjusted average of the last 10 years of earnings.
This TradingView Pine Script indicator calculates the CAPE Ratio for a specific stock by:
Fetching historical Earnings Per Share (EPS) data using request.earnings().
Adjusting the EPS for inflation by dividing it by the Consumer Price Index (CPI).
Computing the 10-year (40-quarter) moving average of the inflation-adjusted EPS.
Calculating the CAPE Ratio as (Stock Price) / (10-year Average EPS adjusted for inflation).
Plotting the CAPE Ratio on the chart with a reference line at CAPE = 20, a historically significant threshold.
Revenue & Net IncomeRevenue & Net Income Indicator
This indicator provides a clear visual representation of a company's revenue and net income, with the flexibility to switch between Trailing Twelve Months (TTM) and Quarterly data. Values are automatically converted into billions and displayed in both an area chart and a dynamic table.
Features:
TTM & Quarterly Data: Easily toggle between financial periods.
Intuitive Visuals: Semi-transparent area charts make trends easy to spot.
Smart Number Formatting: Revenue below 1B is shown with two decimals (e.g., "0.85B"), while larger values use one decimal (e.g., "1.2B").
Customizable Table: Displays the most recent revenue and net income figures, with adjustable position and text size.
Light Mode: Switch table text to black with a white header for better readability on light backgrounds.
This indicator is freely available and open-source on TradingView for all. It is designed to help traders enhance their market analysis and strategic decision-making.
Trading Sessions Background ColorTrading Sessions Background Color
This indicator provides a visual representation of the major trading sessions — Asia, London, and USA — by applying distinct background colors to the chart. It allows traders to easily identify active market hours and session overlaps.
Features:
Customizable Sessions: Users can modify time ranges, and colors according to their preferences.
Predefined Major Trading Sessions: The indicator includes Asia, London, and USA sessions by default.
Time Zone Adjustment: A configurable UTC offset ensures accurate session display.
Clear Visual Differentiation: Background colors indicate when each session is active.
Usage Instructions:
Apply the indicator to a TradingView chart.
Adjust session settings and time zone offset as needed.
The chart background will update dynamically to reflect the active trading session.
Monthly Buy IndicatorIt shows us the the total balance when buying monthly, ploting the total invested amount and total current balance along the time.
Opening the Data Window, it displays the profit (%) and the number of trades.
The "Allow Fractional Purchase" flag can be used to check the the performance of the ticker, disregarding how much the monthly amount is set vs the price of the ticker.
The trades are considering buying the available amount on the 1st candle of each month, at the Open price. The "Total Balance" considers the close price of each candle.
RV- Intrinsic Value AnalyzerWhy These Metrics Matter in IVA Pro (Intrinsic Value Analyzer)?
The IVA Pro consolidates key valuation, profitability, and efficiency metrics into a single, easy-to-read table. These indicators provide a comprehensive view of a company’s financial health, helping traders and investors make informed decisions based on growth potential, profitability, and valuation. The color-coded signals (green for strong, orange for moderate, and red for weak values) simplify fundamental analysis and enable quick comparisons across different stocks.
Key Fundamental Parameters in IVA Pro
Market Capitalization (Market Cap): Measures a company's total market value, helping assess size, stability, and growth potential.
Earnings Yield (TTM): Indicates how much profit a company generates relative to its stock price—useful for comparing against bonds and other assets.
Return on Capital Employed (ROCE): Shows how efficiently a company generates profits using its capital—a key profitability metric.
Return on Equity (ROE): Evaluates how well a company uses shareholder funds to generate earnings.
Price-to-Earnings Ratio (PE): Helps determine whether a stock is overvalued or undervalued based on earnings.
Price-to-Book Ratio (PB): Assesses if a stock is trading above or below its net asset value—useful for asset-heavy industries.
Price-to-Sales Ratio (PS): Helps evaluate revenue potential, particularly for growth-stage companies.
PEG Ratio: Enhances PE ratio by factoring in earnings growth—ideal for identifying undervalued growth stocks.
Forward PE Ratio: Provides a future-looking valuation based on projected earnings.
Forward PS Ratio: Helps evaluate future revenue potential and overall stock valuation.
Value Area - Day Trading SuiteValue Area Day Trading Suite
A professional-grade indicator designed specifically for day traders who utilize Volume Profile and Auction Market Theory. This suite provides tracking of previous day's value areas, helping traders identify how current price interacts with these established institutional levels.
It tracks how much time has spent within the value area without Level to Help Measure Acceptance
Key Features
- Previous Day's Value Area tracking (VAH, POC, VAL)
- Precise time-in-value-area measurement
- Cash session integration with major market timezones
- Value Area acceptance alerts
Trading Applications
Perfect for day traders who:
- Trade using previous day's Volume Profile levels
- Focus on institutional price acceptance/rejection
- Trade market structure using confirmed value areas
- Want to automate their value area analysis
- Trade during specific market sessions
Value Area Analysis
The indicator tracks how long price stays within the previous day's value area, helping traders:
- Identify Potential Support / Resistance Levels
- Spot acceptance of established levels
- Find high-probability trading opportunities
- Time their entries and exits more effectively
Professional Tools
- Customizable cash session times for different markets
- Multiple timezone support
- Flexible dashboard positioning
- Clean, professional appearance with adjustable colors
- Alert system for value area acceptance
Built for day traders who utilize value areas
Tolga's Market Radar - DashboardTolga's Market Radar - Dashboard – The Only TradingView Dashboard Showing Both Daily Performance & Daily Range Together.
This unique dashboard concisely displays both the daily percentage change and the daily range position for up to 14 user-selected tickers, all in one clear, easy-to-follow table.
A customizable dashboard to track daily percentage changes and daily range positions for up to 14 user‐defined symbols. This script displays a color‐coded table (teal for bullish moves, red for bearish moves) that updates in real‐time, helping you quickly gauge market conditions across various assets.
Key Features:
Dual Metrics: Simultaneously shows daily performance (percentage change) and range position.
Customizable: Set your preferred tickers and labels, with an option to invert for quote-driven pairs.
Color-Coded Clarity: Uses a teal/red scheme to instantly highlight bullish or bearish moves.
Flexible Timeframes: Adjust the resolution to suit your trading strategy.
Ideal for traders who want a compact, real-time snapshot of market moves without clutter. Enjoy a streamlined view that uniquely combines both performance and range data in one dashboard!
Two Measurements
Daily % Change: (Close - Previous Close) / Previous Close × 100.
Daily Range Position: Where today’s close sits relative to the day’s high/low, expressed as a percentage (0% = at low, 100% = at high).
Configure Symbols
For each row (Group 1 for the top row, Group 2 for the bottom row), enter:
Symbol Label: The text you want displayed in the table header.
Symbol Ticker: The TradingView ticker (e.g., FX:AUDUSD, TVC:USOIL, etc.).
Invert?: Toggle this on if you want to flip the percentage change (for pairs like USDCAD, turning it into CAD’s perspective).
Interpretation of the Table
Each cell shows two lines:
Daily % Change (top line).
Daily Range Position (bottom line).
The background color instantly tells you if the asset is bullish or bearish and whether the close is near the top or bottom of the day’s range.
Notes & Disclaimers:
This script is designed for informational and educational purposes. Always do your own due diligence before making trading decisions.
Performance may vary depending on your TradingView plan and the number of tickers you request.
MosaicMix V3 | QuantEdgeBIntroducing MosaicMix V3 by QuantEdgeB
🔹 Overview
MosaicMix V3 is an advanced multi-dimensional trend-following indicator designed for investors, traders, and analysts looking to assess market cycles, identify strategic entry/exit points, and optimize risk management. This system integrates on-chain data, macroeconomic insights, and technical analysis into a unified scoring model to provide a data-driven approach to market decision-making.
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🛠️ Who is it for?
✔ Long-Term Investors – Helps in understanding deep-cycle valuation trends for Bitcoin and other assets highly influenced by global macroeconomic dynamics.
✔ Swing & Position Traders – Offers trend-based buy and sell signals, combining risk-adjusted momentum with on chain indicators.
✔ Risk-Averse Traders – Uses a systematic approach to risk quantification, making it useful for those aiming to avoid high-risk trades.
✔ Long-Term Horizon – Tailored for those managing positions over months to years, particularly in global risk assets like Bitcoin, where macroeconomic and market cycle dynamics play a crucial role.
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🔑 Key Features
✔ 📊 On-Chain Intelligence – Incorporates fundamental blockchain metrics, including MVRV momentum, profit/loss ratios, and MVRV Rate of Change, to assess valuation trends and market strength.
✔ 🌍 Macro & Risk Integration – Uses global economic indicators such as China’s equity index, PMI data, Baltic Dry Index, and the Silver-to-BTC ratio to capture external market influences.
✔ 📈 Adaptive Trend Identification – Implements DEMA, WMA, and EMA smoothing techniques to refine trend direction and momentum shifts, reducing noise and improving trade reliability.
✔ 📏 Risk-Weighted Mosaic Model – Merges technical and fundamental indicators into a single, risk-adjusted composite score, enabling a structured assessment of market conditions.
✔ 🛠️ Customizable Inputs & Dashboard – Traders can adjust on-chain parameters, macro settings, and smoothing techniques, ensuring flexibility across different market environments.
✔ ⚡ Signal-Based Trading Alerts – Automatic buy/sell signals triggered based on risk conditions and on-chain trend changes, with real-time alerts for trade execution.
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🔍 How It Works
1️⃣ On-Chain Market Evaluation – The system derives trend momentum using MVRV momentum, profit/loss ratios, and MVRV Rate of Change (RoC) to assess underlying market movements.
2️⃣ Macroeconomic Risk Mosaic – A composite Z-score model evaluates external influences like equity performance, supply metrics, and commodity ratios to refine long-term positioning.
3️⃣ Risk-Adjusted Filtering – The model smooths signals with exponential averaging and volatility normalization to ensure stable and consistent trade execution.
4️⃣ Unified Signal Scoring – The final signal integrates on-chain data and macro risk factors into a single trend indication, highlighting favorable long or short opportunities.
5️⃣ Visual & Data Dashboard – The embedded dashboard provides real-time updates on macro risk, on-chain trends, and technical positioning to inform decision-making.
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Behaviour across Crypto Majors
BTC
ETH
SOL
Note: Past behaviour/performance is not indicative of future results. Always conduct thorough testing and risk management before making trading decisions.
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Signal Generation
✅ Long Signals:
A Long Signal is triggered when the Final Section in the dashboard is positive, indicating a favorable macro and on-chain environment.
✅ Short Signals:
A Short Signal (or Cash Mode) is triggered when the Final Section turns negative, signaling potential downside risk or unfavorable conditions.
- Signal confirmation is visually represented through color changes on the chart, with bullish (long) and bearish (cash) states clearly distinguished.
- When Label Display is turned off, the signals "Long" and "Cash" will still appear directly on the chart to ensure clear trade visibility.
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⚙️ Default Settings
🔹 On-Chain Section:
- MVRV Momentum: 20 (DEMA)
- MVRV WMA Smoothing: 300
- Profit/Loss Lookback: 50
- MVRV RoC Period: 110
🔹 Macro Section:
- RSI Length: 30
- China Equity Index Length: 40
- BTC Supply Length: 40
- Silver Ratio Length: 40
- Baltic Dry Index Length: 60
- SOPR Length: 150
- RiskMosaic Smoothing: 24
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Conclusion
MosaicMix V3 is a powerful fundamental trend-following system that merges on-chain analysis, macroeconomic insights, and technical momentum into a comprehensive risk-adjusted model. It is particularly well-suited and optimized for Bitcoin and macro-aware traders, but can also be applied to other assets with sufficient historical data.
Whether you are an investor seeking long-term value signals, a trader optimizing for risk-adjusted trend entries, or an analyst monitoring multi-dimensional market conditions, MosaicMix V3 provides a systematic, structured approach to market navigation.
🔹 Disclaimer: Past performance is not indicative of future results. No trading strategy can guarantee success in financial markets.
🔹 Strategic Advice: Always backtest, optimize, and align parameters with your trading objectives and risk tolerance before live trading.
TradFi Fundamentals: Enhanced Macroeconomic Momentum Trading Introduction
The "Enhanced Momentum with Advanced Normalization and Smoothing" indicator is a tool that combines traditional price momentum with a broad range of macroeconomic factors. I introduced the basic version from a research paper in my last script. This one leverages not only the price action of a security but also incorporates key economic data—such as GDP, inflation, unemployment, interest rates, consumer confidence, industrial production, and market volatility (VIX)—to create a comprehensive, normalized momentum score.
Previous indicator
Explanation
In plain terms, the indicator calculates a raw momentum value based on the change in price over a defined lookback period. It then normalizes this momentum, along with several economic indicators, using a method chosen by the user (options include simple, exponential, or weighted moving averages, as well as a median absolute deviation (MAD) approach). Each normalized component is assigned a weight reflecting its relative importance, and these weighted values are summed to produce an overall momentum score.
To reduce noise, the combined momentum score can be further smoothed using a user-selected method.
Signals
For generating trade signals, the indicator offers two modes:
Zero Cross Mode: Signals occur when the smoothed momentum line crosses the zero threshold.
Zone Mode: Overbought and oversold boundaries (which are user defined) provide signals when the momentum line crosses these preset limits.
Definition of the Settings
Price Momentum Settings:
Price Momentum Lookback: The number of days used to compute the percentage change in price (default 50 days).
Normalization Period (Price Momentum): The period over which the price momentum is normalized (default 200 days).
Economic Data Settings:
Normalization Period (Economic Data): The period used to normalize all economic indicators (default 200 days).
Normalization Method: Choose among SMA, EMA, WMA, or MAD to standardize both price and economic data. If MAD is chosen, a multiplier factor is applied (default is 1.4826).
Smoothing Options:
Apply Smoothing: A toggle to enable further smoothing of the combined momentum score.
Smoothing Period & Method: Define the period and type (SMA, EMA, or WMA) used to smooth the final momentum score.
Signal Generation Settings:
Signal Mode: Select whether signals are based on a zero-line crossover or by crossing user-defined overbought/oversold (OB/OS) zones.
OB/OS Zones: Define the upper and lower boundaries (default upper zones at 1.0 and 2.0, lower zones at -1.0 and -2.0) for zone-based signals.
Weights:
Each component (price momentum, GDP, inflation, unemployment, interest rates, consumer confidence, industrial production, and VIX) has an associated weight that determines its contribution to the overall score. These can be adjusted to reflect different market views or risk preferences.
Visual Aspects
The indicator plots the smoothed combined momentum score as a continuous blue line against a dotted zero-line reference. If the Zone signal mode is selected, the indicator also displays the upper and lower OB/OS boundaries as horizontal lines (red for overbought and green for oversold). Buy and sell signals are marked by small labels ("B" for buy and "S" for sell) that appear at the bottom or top of the chart when the score crosses the defined thresholds, allowing traders to quickly identify potential entry or exit points.
Conclusion
This enhanced indicator provides traders with a robust approach to momentum trading by integrating traditional price-based signals with a suite of macroeconomic indicators. Its normalization and smoothing techniques help reduce noise and mitigate the effects of outliers, while the flexible signal generation modes offer multiple ways to interpret market conditions. Overall, this tool is designed to deliver a more nuanced perspective on market momentum.
Cryptolabs Global Liquidity Cycle Momentum IndicatorCryptolabs Global Liquidity Cycle Momentum Indicator (LMI-BTC)
This open-source indicator combines global central bank liquidity data with Bitcoin price movements to identify medium- to long-term market cycles and momentum phases. It is designed for traders who want to incorporate macroeconomic factors into their Bitcoin analysis.
How It Works
The script calculates a Liquidity Index using balance sheet data from four central banks (USA: ECONOMICS:USCBBS, Japan: FRED:JPNASSETS, China: ECONOMICS:CNCBBS, EU: FRED:ECBASSETSW), augmented by the Dollar Index (TVC:DXY) and Chinese 10-year bond yields (TVC:CN10Y). This index is:
- Logarithmically scaled (math.log) to better represent large values like central bank balances and Bitcoin prices.
- Normalized over a 50-period range to balance fluctuations between minimum and maximum values.
- Compared to prior-year values, with the number of bars dynamically adjusted based on the timeframe (e.g., 252 for 1D, 52 for 1W), to compute percentage changes.
The liquidity change is analyzed using a Chande Momentum Oscillator (CMO) (period: 24) to measure momentum trends. A Weighted Moving Average (WMA) (period: 10) acts as a signal line. The Bitcoin price is also plotted logarithmically to highlight parallels with liquidity cycles.
Usage
Traders can use the indicator to:
- Identify global liquidity cycles influencing Bitcoin price trends, such as expansive or restrictive monetary policies.
- Detect momentum phases: Values above 50 suggest overbought conditions, below -50 indicate oversold conditions.
- Anticipate trend reversals by observing CMO crossovers with the signal line.
It performs best on higher timeframes like daily (1D) or weekly (1W) charts. The visualization includes:
- CMO line (green > 50, red < -50, blue neutral), signal line (white), Bitcoin price (gray).
- Horizontal lines at 50, 0, and -50 for improved readability.
Originality
This indicator stands out from other momentum tools like RSI or basic price analysis due to:
- Unique Data Integration: Combines four central bank datasets, DXY, and CN10Y as macroeconomic proxies for Bitcoin.
- Dynamic Prior-Year Analysis: Calculates liquidity changes relative to historical values, adjustable by timeframe.
- Logarithmic Normalization: Enhances visibility of extreme values, critical for cryptocurrencies and macro data.
This combination offers a rare perspective on the interplay between global liquidity and Bitcoin, unavailable in other open-source scripts.
Settings
- CMO Period: Default 24, adjustable for faster/slower signals.
- Signal WMA: Default 10, for smoothing the CMO line.
- Normalization Window: Default 50 periods, customizable.
Users can modify these parameters in the Pine Editor to tailor the indicator to their strategy.
Note
This script is designed for medium- to long-term analysis, not scalping. For optimal results, combine it with additional analyses (e.g., on-chain data, support/resistance levels). It does not guarantee profits but supports informed decisions based on macroeconomic trends.
Data Sources
- Bitcoin: INDEX:BTCUSD
- Liquidity: ECONOMICS:USCBBS, FRED:JPNASSETS, ECONOMICS:CNCBBS, FRED:ECBASSETSW
- Additional: TVC:DXY, TVC:CN10Y
CycleSync | QuantEdgeBIntroducing CycleSync by QuantEdgeB
Overview
CycleSync is a powerful valuation and cycle-tracking system designed to provide insights into asset price behavior across different phases of market cycles. It integrates on-chain data, price-based indicators, and risk-adjusted metrics to offer a comprehensive valuation model that helps traders and investors identify accumulation, distribution, and momentum shifts.
This system is ideal for those who want data-driven confirmation of market tops and bottoms, leveraging a blend of statistical measures, trend-following techniques, and historical on-chain valuations.
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Key Features
1. Multi-Factor Valuation Framework
Incorporates a blend of on-chain, momentum, and price-based indicators to assess market cycles in real-time. Helps determine if an asset is overvalued, fairly valued, or undervalued over long term horizon.
2.Market Cycle Recognition
Tracks key macro and micro cycle shifts, identifying trends such as accumulation, expansion, distribution, and contraction phases.
3.Dynamic Valuation
CycleSync employs Z-score standardization and adaptive rescaling to continuously refine overbought and oversold thresholds based on evolving market conditions. Unlike static valuation models, which rely on fixed levels, CycleSync dynamically recalibrates these boundaries by analyzing historical price distributions and deviations from the mean.
4.Comprehensive Dashboard
Presents cycle indicators and valuation scores in a structured table format.
Displays color-coded overbought and oversold signals for quick interpretation.
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How It Works
1.On-Chain & Price-Based Data Collection
Gathers key market cycle indicators like MVRV, NUPL, SOPR, CVDD, VWAP, Pi-Cycle, RSI, and Risk Ratios to assess historical valuation.
2.Standardization & Rescaling
Each metric is normalized using either Z-score calculations or high-low rescaling, ensuring fair contribution across different data sources. By applying statistical normalization techniques, the system ensures that extreme valuations are detected relative to the asset's own historical behavior rather than arbitrary thresholds.
3.Valuation Score & Interpretation
🔹 CycleSync Score Ranges
- 📉 Strongly Oversold (-2 and below) → Market is extremely undervalued; potential reversal.
- 📉 Moderately Oversold (-1.5 to -2) → Discounted market conditions, buying interest may emerge.
- 📉 Slightly Oversold (-0.5 to -1.5) → Possible accumulation phase.
- ⚖ Fair Value (-0.5 to +0.5) → Market trading at equilibrium.
- 📈 Slightly Overbought (+0.5 to +1.5) → Initial signs of market strength.
- 📈 Moderately Overbought (+1.5 to +2) → Market heating up, caution warranted, selling interest may emerge.
- 📈 Strongly Overbought (+2 and above) → Extreme valuation, increased risk of correction.
This classification helps traders gauge overall market sentiment and make better allocation decisions.
Note : Past valuations and buy/sell signals generated by CycleSync do not guarantee future performance. Market conditions can change, and proper risk management should always be applied.
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Use Cases
✅ Crypto Traders & Long-Term Investors
Identify potential major market tops and bottoms using on-chain and price-based cycle indicators.Confirm long-term accumulation or distribution phases with CycleSync’s multi-cycle tracking.
✅ Macro Trend Followers
Detect macro bull and bear cycle shifts by integrating valuation metrics with trend-following strategies.
✅ Mean Reversion & Rotational Traders
Exploit valuation mean reversion strategies when assets enter extreme overvaluation or undervaluation zones. Rotate capital efficiently between risk-on and risk-off assets based on CycleSync’s valuation models.
✅ Risk Management & Portfolio Allocation
Adjust portfolio exposure by scaling in/out of positions based on historical valuation insights.
Use CycleSync’s Risk Ratios & CVDD metrics to refine entry and exit strategies.
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📊 Optimized for Bitcoin , Yet "Universally" Adaptable 🔄
CycleSync is primarily optimized for Bitcoin , leveraging their extensive on-chain and market data to provide robust long-term valuation insights. However, the system remains flexible and can be applied to other assets 📉📈—provided they have sufficient historical price data to support reliable statistical calculations.
Since CycleSync incorporates volume-based metrics, it is essential that the selected chart's ticker provides accurate volume data to function properly. For assets with limited history, results may be less reliable, as long-term valuation models depend on deep market data for precision.
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Conclusion
CycleSync is a powerful full-cycle valuation system designed to provide deep market insights 📊 by blending on-chain metrics, statistical rescaling, and technical analysis. Whether you're tracking Bitcoin or other assets with sufficient historical data, this tool offers a structured framework for identifying overbought/oversold conditions, potential cycle tops/bottoms, and long-term market positioning.
With its dynamic adaptability, intuitive scaling mechanisms, and multi-metric integration ⚡, CycleSync empowers traders and investors to make more informed, data-driven decisions 📈. While no valuation model is infallible, combining CycleSync with broader market context and risk management strategies enhances its effectiveness.
🔹 Who Should Use Sentival?
✅ Swing Traders & Long-Term Investors looking for structured valuation metrics.
✅ Quantitative & Systematic Traders incorporating multi-factor models.
✅ Portfolio Managers optimizing exposure to different market regimes.
✅ Use CycleSync as a guiding framework—not a standalone signal— and gain a clearer perspective on the ever-evolving market cycles!
🔹 Disclaimer: Past performance is not indicative of future results. No trading strategy can guarantee success in financial markets.
🔹 Strategic Advice: Always backtest, optimize, and align parameters with your trading objectives and risk tolerance before live trading.
Higher Time Frame Fair Value Gap [ZeroHeroTrading]A fair value gap (FVG) highlights an imbalance area between market participants, and has become popular for technical analysis among price action traders.
A bullish (respectively bearish) fair value gap appears in a triple-candle pattern when there is a large candle whose previous candle’s high (respectively low) and subsequent candle’s low (respectively high) do not fully overlap the large candle. The space between these wicks is known as the fair value gap.
The following script aims at identifying higher timeframe FVG's within a lower timeframe chart. As such, it offers a unique perspective on the formation of FVG's by combining the multiple timeframe data points in the same context.
You can change the indicator settings as you see fit to achieve the best results for your use case.
Features
It draws higher timeframe bullish and bearish FVG's on the chart.
For bullish (respectively bearish) higher timeframe FVG's, it adds the buying (respectively selling) pressure as a percentage ratio of the up (respectively down) volume of the second higher timeframe bar out of the total up (respectively down) volume of the first two higher timeframe bars.
It adds a right extended trendline from the most recent lowest low (respectively highest high) to the top (respectively bottom) of the higher timeframe bullish (respectively bearish) FVG.
It detects and displays higher timeframe FVG's as early as one starts forming.
It detects and displays lower timeframe (i.e. chart's timeframe) FVG's upon confirmation.
It allows for skipping inside first bars when evaluating FVG's.
It allows for dismissing higher timeframe FVG's if there is no update for any period of the chart's timeframe. For instance, this can occur at lower timeframes during low trading activity periods such as extended hours.
Settings
Higher Time Frame FVG dropdown: Selects the higher timeframe to run the FVG detection on. Default is 15 minutes. It must be higher than, and a multiple of, the chart's timeframe.
Higher Time Frame FVG color select: Selects the color of the text to display for higher timeframe FVG's. Default is black.
Show Trend Line checkbox: Turns on/off trendline display. Default is on.
Show Lower Time Frame FVG checkbox: Turns on/off lower timeframe (i.e. chart's timeframe) FVG detection. Default is on.
Show Lower Time Frame FVG color select: Selects the color of the border for lower timeframe (i.e. chart's timeframe) FVG's. Default is white.
Include Inside Bars checkbox: Turns on/off the inclusion of inside first bars when evaluating FVG's. Default is on.
With Consistent Updates checkbox: Turns on/off consistent updates requirement. Default is on.