The article shows how to convert BOS/CHOCH market-structure concepts into reliable MQL5 code, focusing on precise swing-high/low detection, break validation, and filtering conditions that reduce false signals.
The βMarket Structure Sentinelβ indicator runs event-driven: it processes only on new candles, checks closes beyond the active swing for BOS/CHOCH, then confirms new pivots using left/right bar comparisons. Trend state is derived from the latest valid swing pair, adapting to imperfect real markets instead of relying on a single swing type.
It also prioritizes clean chart UX: standardized enums/structures, reusable drawing utilities, midpoint time normalization for label placement, and a toggleable mini dashboard (double-click H/S). Initialization scans history via a single MqlRates array for faster synchronization and consistent startup context.
π Read | Forum | @mql5dev
The βMarket Structure Sentinelβ indicator runs event-driven: it processes only on new candles, checks closes beyond the active swing for BOS/CHOCH, then confirms new pivots using left/right bar comparisons. Trend state is derived from the latest valid swing pair, adapting to imperfect real markets instead of relying on a single swing type.
It also prioritizes clean chart UX: standardized enums/structures, reusable drawing utilities, midpoint time normalization for label placement, and a toggleable mini dashboard (double-click H/S). Initialization scans history via a single MqlRates array for faster synchronization and consistent startup context.
π Read | Forum | @mql5dev
β€44π12π3
Arithmetic volume profiles and common moving averages rely on arithmetic means. In markets with heavy-tailed volume, a single spike can dominate the window and keep levels biased long after order flow has moved on. That creates stale support and resistance zones that no longer reflect active liquidity.
Institutional tooling often uses harmonic math to estimate mass, density, and flow. Applying the harmonic mean to tick execution density produces a gravity-center line tied to where trading frequency actually balanced, with reduced sensitivity to outliers.
Typical components include a harmonic central tendency line, reversion targets when price deviates too far, and symmetric deviation bands derived from harmonic variance to mark zones where liquidity thins. Implementations usually optimize reciprocal operations (1/x) with vectorized arrays to minim...
π Read | NeuroBook | @mql5dev
Institutional tooling often uses harmonic math to estimate mass, density, and flow. Applying the harmonic mean to tick execution density produces a gravity-center line tied to where trading frequency actually balanced, with reduced sensitivity to outliers.
Typical components include a harmonic central tendency line, reversion targets when price deviates too far, and symmetric deviation bands derived from harmonic variance to mark zones where liquidity thins. Implementations usually optimize reciprocal operations (1/x) with vectorized arrays to minim...
π Read | NeuroBook | @mql5dev
β€26π5π4
Spread widening and negative swaps can quietly degrade PnL, especially around scheduled news volatility and rollover. A compact on-chart information panel keeps contract parameters visible without repeatedly opening the Market Watch symbol properties.
The dashboard shows the active symbol name, current spread in points, and swap values for long and short positions. Data refreshes on every tick, with an optional timer-based update cadence of once per second for steadier visibility during low activity.
Inputs support practical customization: InpTextColor sets font color for light or dark themes, InpFontSize adjusts readability on high-DPI displays, and InpCorner anchors the panel to any of the four chart corners.
Applicable across symbols including FX, metals, and crypto, and works on any timeframe.
π Read | Forum | @mql5dev
The dashboard shows the active symbol name, current spread in points, and swap values for long and short positions. Data refreshes on every tick, with an optional timer-based update cadence of once per second for steadier visibility during low activity.
Inputs support practical customization: InpTextColor sets font color for light or dark themes, InpFontSize adjusts readability on high-DPI displays, and InpCorner anchors the panel to any of the four chart corners.
Applicable across symbols including FX, metals, and crypto, and works on any timeframe.
π Read | Forum | @mql5dev
β€24π7π2
MQL5 news handling often defaults to either ignoring events or applying fixed time blocks. That misses unscheduled volatility and revisions, then backtests fail to match live execution due to spread and slippage shifts.
A news filter module can be built using only MetaTrader 5 calendar functions. It pauses trading ahead of high-impact events, resumes after a configurable delay, and can optionally reduce position size on event-heavy days instead of fully blocking.
The MT5 Calendar API exposes six functions, backed by MqlCalendarEvent and MqlCalendarValue. Core flow: fetch events by ISO country code, filter by importance, then pull scheduled timestamps via value history. The API is unavailable in Strategy Tester, so a companion logger generates a CSV calendar for test runs.
Integration is minimal: include the module, initialize once, then gate entry log...
π Read | AlgoBook | @mql5dev
A news filter module can be built using only MetaTrader 5 calendar functions. It pauses trading ahead of high-impact events, resumes after a configurable delay, and can optionally reduce position size on event-heavy days instead of fully blocking.
The MT5 Calendar API exposes six functions, backed by MqlCalendarEvent and MqlCalendarValue. Core flow: fetch events by ISO country code, filter by importance, then pull scheduled timestamps via value history. The API is unavailable in Strategy Tester, so a companion logger generates a CSV calendar for test runs.
Integration is minimal: include the module, initialize once, then gate entry log...
π Read | AlgoBook | @mql5dev
β€16π15π3
This build adds an ML filter to Smart Money Concepts in MT5, solving the real problem: too many OB/FVG/BOS signals and inconsistent manual filtering on fast markets like XAUUSD.
A Python pipeline pulls MT5 OHLCV, detects the same SMC events as the EA, labels outcomes via TP/SL simulation, and trains an XGBoost classifier. Signals become a 12-feature vector covering structure, ATR-normalized zone geometry, RSI/ADX, volatility, and session timing (sin/cos). The model is exported to ONNX and embedded as an EA resource, so it runs in the Strategy Tester without path dependencies.
On new bars the EA detects setups, scores them via ONNX, blocks low-confidence trades, and applies ATR-aware SL/TP plus tick-driven trailing. A chart panel explains signal type, AI confidence, and derived trend strength for auditability.
π Read | NeuroBook | @mql5dev
A Python pipeline pulls MT5 OHLCV, detects the same SMC events as the EA, labels outcomes via TP/SL simulation, and trains an XGBoost classifier. Signals become a 12-feature vector covering structure, ATR-normalized zone geometry, RSI/ADX, volatility, and session timing (sin/cos). The model is exported to ONNX and embedded as an EA resource, so it runs in the Strategy Tester without path dependencies.
On new bars the EA detects setups, scores them via ONNX, blocks low-confidence trades, and applies ATR-aware SL/TP plus tick-driven trailing. A chart panel explains signal type, AI confidence, and derived trend strength for auditability.
π Read | NeuroBook | @mql5dev
β€24π5π₯2π2
A dynamic Single-Timeframe liquidity sweep indicator is built in MQL5 to detect stop-hunt style moves without relying on fixed time windows or simple wick checks. It targets buy-side and sell-side liquidity around swing highs/lows and ranges, where clustered orders often sit.
Detection combines wick-sweep rejection with a dual-candle model: a breach followed by a reclaim candle that must form an engulfing pattern. Wick-ratio validation filters weak probes, while βone sweep per levelβ plus post-violation invalidation reduces duplicates and stale signals.
Implementation focuses on robust state management: a struct for sweep candidates, arrays for swept/violated levels, swing scanning via configurable left-right bars, new-candle execution to cut load, and chart objects for clear visualization.
π Read | NeuroBook | @mql5dev
Detection combines wick-sweep rejection with a dual-candle model: a breach followed by a reclaim candle that must form an engulfing pattern. Wick-ratio validation filters weak probes, while βone sweep per levelβ plus post-violation invalidation reduces duplicates and stale signals.
Implementation focuses on robust state management: a struct for sweep candidates, arrays for swept/violated levels, swing scanning via configurable left-right bars, new-candle execution to cut load, and chart objects for clear visualization.
π Read | NeuroBook | @mql5dev
β€19π4π2
CMA-ES remains a practical choice for tuning trading robot parameters on ill-conditioned objective functions. Core sampling follows x_k ~ N(m, ΟΒ²C), where m is the current mean, Ο is global step size, and C captures local geometry via covariance adaptation.
A variant replaces the Gaussian with a power distribution: x_k ~ PowerDist(m, ΟΒ²C). This increases tail probability for larger jumps while keeping covariance learning and step-size control.
Key mechanics include two evolutionary paths (pc for covariance, ps for step size), plus rank-one and rank-ΞΌ covariance updates driven by maximum-likelihood estimation. A Heaviside-style hsig gate reduces rank-one influence during stagnation.
Implementation notes: O(nΒ²) memory for C and O(nΒ³) eigendecomposition for B,D, with periodic eigen updates. Class design separates Init, Moving (offspring generation via B*D*z), an...
π Read | Signals | @mql5dev
A variant replaces the Gaussian with a power distribution: x_k ~ PowerDist(m, ΟΒ²C). This increases tail probability for larger jumps while keeping covariance learning and step-size control.
Key mechanics include two evolutionary paths (pc for covariance, ps for step size), plus rank-one and rank-ΞΌ covariance updates driven by maximum-likelihood estimation. A Heaviside-style hsig gate reduces rank-one influence during stagnation.
Implementation notes: O(nΒ²) memory for C and O(nΒ³) eigendecomposition for B,D, with periodic eigen updates. Class design separates Init, Moving (offspring generation via B*D*z), an...
π Read | Signals | @mql5dev
β€22π5β‘2π2
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Chart trading in MetaTrader 5 for iOS has been completely redesigned. You now have access to a full-featured trading dialog that combines quick operations, detailed order configuration, and position management.
The trading panel opens directly over the chart and supports multiple modes. In compact mode, it provides quick actions such as switching trade operation types, managing volume, and setting stop levels. The expanded view offers advanced trading parameters and a tick chart for precise price control.
The new chart trading experience in MetaTrader 5 for iOS makes order management faster, more intuitive, and more precise β from instant operations to advanced risk management.
Discuss the video:
π MQL5.community for traders
π MetaQuotes official YouTube channel
The trading panel opens directly over the chart and supports multiple modes. In compact mode, it provides quick actions such as switching trade operation types, managing volume, and setting stop levels. The expanded view offers advanced trading parameters and a tick chart for precise price control.
The new chart trading experience in MetaTrader 5 for iOS makes order management faster, more intuitive, and more precise β from instant operations to advanced risk management.
Discuss the video:
π MQL5.community for traders
π MetaQuotes official YouTube channel
β€31π10π2π2β‘1
Triple-barrier labeling often hard-codes min_ret (0.5β1.0%) or assumes a legacy spread. If min_ret is below true round-trip cost, the pipeline labels cost-driven noise as signal. The resulting dataset inflates apparent edge, and models fit the labeling artifact instead of market structure.
TransactionCostCollector.mq5 automates transaction-cost collection per symbol. It samples historical spread via CopySpread() over a configurable bar window, reads swap rates and swap mode (plus triple-swap weekday), and captures commission diagnostics where direct per-lot commission is not available. Output is a structured CSV with sections for symbol properties, swap, commission notes, spread summary percentiles, and spread-by-hour means (UTC) to surface session effects.
A companion Python class TransactionCostModel converts costs to fractional returns and compu...
π Read | Signals | @mql5dev
TransactionCostCollector.mq5 automates transaction-cost collection per symbol. It samples historical spread via CopySpread() over a configurable bar window, reads swap rates and swap mode (plus triple-swap weekday), and captures commission diagnostics where direct per-lot commission is not available. Output is a structured CSV with sections for symbol properties, swap, commission notes, spread summary percentiles, and spread-by-hour means (UTC) to surface session effects.
A companion Python class TransactionCostModel converts costs to fractional returns and compu...
π Read | Signals | @mql5dev
β€18π5π2
RSI breaks down in strong trends because it keeps firing mean-reversion entries when βoversoldβ is structural, not temporary. On EURUSD H1, the 2022 downtrend turned repeated oversold crossovers into compounding losses and deep drawdown.
The article applies LΓ³pez de Pradoβs meta-labeling: RSI stays as the side selector, while a Random Forest judges each signal using 27 context features at the signal bar. Trades are labeled with triple-barrier outcomes, filtered by a probability threshold, then sized proportionally to model confidence.
Key engineering details: trend/volatility context (ADX, ATR, stretch vs EMA50, distance to recent highs/lows) plus robust time encoding (sin/cos cycles and session volatility). Walk-forward is strict MT5 data with real spread costs.
Even with below-chance classifier accuracy, filtering slashes exposure and drawdown; co...
π Read | Docs | @mql5dev
The article applies LΓ³pez de Pradoβs meta-labeling: RSI stays as the side selector, while a Random Forest judges each signal using 27 context features at the signal bar. Trades are labeled with triple-barrier outcomes, filtered by a probability threshold, then sized proportionally to model confidence.
Key engineering details: trend/volatility context (ADX, ATR, stretch vs EMA50, distance to recent highs/lows) plus robust time encoding (sin/cos cycles and session volatility). Walk-forward is strict MT5 data with real spread costs.
Even with below-chance classifier accuracy, filtering slashes exposure and drawdown; co...
π Read | Docs | @mql5dev
π13β€8π3
Joint Recurrence Quantification Analysis (JRQA) extends RQA/CRQA by measuring synchronized recurrence. A joint recurrence at (i,j) requires X(i) close to X(j) and Y(i) close to Y(j) with aligned indices, producing a square symmetric matrix with a defined main diagonal.
The implementation adds CJRQAMatrix, CJRQAMetrics, and CJRQAWindow plus a CJRQA facade. CJRQAWindow runs rolling JRQA with OpenCL GPU acceleration and CPU fallback, and an indicator plots JRR, JDET, JLAM, JENTR, and JTREND in real time.
JRQA uses separate epsilons per series, or a shared epsilon after normalization. Key signals are JRR for simultaneous recurrence density, JDET for structured coupling, and JTREND for changes in synchronization over time.
π Read | Signals | @mql5dev
The implementation adds CJRQAMatrix, CJRQAMetrics, and CJRQAWindow plus a CJRQA facade. CJRQAWindow runs rolling JRQA with OpenCL GPU acceleration and CPU fallback, and an indicator plots JRR, JDET, JLAM, JENTR, and JTREND in real time.
JRQA uses separate epsilons per series, or a shared epsilon after normalization. Key signals are JRR for simultaneous recurrence density, JDET for structured coupling, and JTREND for changes in synchronization over time.
π Read | Signals | @mql5dev
β€16π4π2π1
MetaTrader 5 EAs often keep critical trade logic only in runtime memory, so a VPS restart or terminal crash can erase virtual SL/TP, breakeven, trailing progress, and sync context while the broker-side position remains open.
The solution is a persistent trade-state architecture: continuously serialize the EAβs operational state into a local SQLite database, then rebuild the in-memory model on startup to restore continuity.
This part designs the foundation: an STradeState recovery model, EA lifecycle states (starting, recovering, running, safe mode), timer-driven background checks independent of ticks, and a database layer that opens/creates the DB, ensures a TradeState table exists, and safely closes the connection.
π Read | Quotes | @mql5dev
The solution is a persistent trade-state architecture: continuously serialize the EAβs operational state into a local SQLite database, then rebuild the in-memory model on startup to restore continuity.
This part designs the foundation: an STradeState recovery model, EA lifecycle states (starting, recovering, running, safe mode), timer-driven background checks independent of ticks, and a database layer that opens/creates the DB, ensures a TradeState table exists, and safely closes the connection.
π Read | Quotes | @mql5dev
β€16π6
This article builds a practical pipeline for detecting self-similar (fractal/multifractal) structures in price series and turning them into tradable ML signals, using Python with deployment to MetaTrader 5 via ONNX.
Patterns are found by sliding a window across history and measuring Pearson correlation between the left half and a mirrored, sign-inverted right half to capture symmetry. Numba JIT accelerates the heavy loop, returning the best correlation and its window size per bar, with plotting tools to sanity-check top matches across multiple scales.
Trades are labeled from future outcomes only when correlation exceeds a threshold: high-symmetry segments get averaged buy/sell labels, while low-symmetry areas default to βno tradeβ. Two classifiers are trained: one for direction (buy vs sell) and a meta-model for participation. Tests on EURUSD H1 show str...
π Read | AppStore | @mql5dev
Patterns are found by sliding a window across history and measuring Pearson correlation between the left half and a mirrored, sign-inverted right half to capture symmetry. Numba JIT accelerates the heavy loop, returning the best correlation and its window size per bar, with plotting tools to sanity-check top matches across multiple scales.
Trades are labeled from future outcomes only when correlation exceeds a threshold: high-symmetry segments get averaged buy/sell labels, while low-symmetry areas default to βno tradeβ. Two classifiers are trained: one for direction (buy vs sell) and a meta-model for participation. Tests on EURUSD H1 show str...
π Read | AppStore | @mql5dev
π11β€8β‘3
Grey modeling (Deng Julong, 1982) is a time-series method designed for incomplete or noisy data. In trading use-cases it applies cumulative summation to convert non-stationary prices into a strictly increasing βgrey seriesβ, reducing short-term noise as the window grows.
A common setup is GM(1,1): fit a linear relationship on the grey series, often with a TheilβSen slope. Unlike SMA, results depend on price order, so trend direction impacts the estimate. Extensions include quadratic and power-law fits, enabling alternative moving averages and fast-reacting signals.
Derived indicators include Grey MA, Grey CCI (using a GM-based dispersion proxy), and Grey Bands. Example EAs use price-vs-indicator divergence, dual-Grey MA comparisons, and Grey CCI level/zero-cross rules, with parameter tuning required under volatility and regime shifts.
π Read | Quotes | @mql5dev
A common setup is GM(1,1): fit a linear relationship on the grey series, often with a TheilβSen slope. Unlike SMA, results depend on price order, so trend direction impacts the estimate. Extensions include quadratic and power-law fits, enabling alternative moving averages and fast-reacting signals.
Derived indicators include Grey MA, Grey CCI (using a GM-based dispersion proxy), and Grey Bands. Example EAs use price-vs-indicator divergence, dual-Grey MA comparisons, and Grey CCI level/zero-cross rules, with parameter tuning required under volatility and regime shifts.
π Read | Quotes | @mql5dev
β€24π11πΎ4
Runs bars complete the AFML Chapter 1 bar set by capturing dominant-side activity rather than net order-flow. Unlike imbalance bars that close on a signed cumulative threshold, runs bars track buy and sell contributions separately and close when the larger side exceeds its target, making them robust to choppy, alternating flow where net imbalance stays near zero.
Python extends make_bars() with tick/volume/dollar runs bars using the same tick rule and aggregation pipeline; only the boundary detector changes, expanding state to buy/sell accumulators plus per-side EWM expectations. Calibration also splits into separate buy and sell initial estimates to avoid biased thresholds.
MQL5 adds CRunsBar with tick-by-tick logic, parity-checked against Python on identical tick streams. Persistence is tightened by storing extra accumulators and the tick-ruleβs ...
π Read | Docs | @mql5dev
Python extends make_bars() with tick/volume/dollar runs bars using the same tick rule and aggregation pipeline; only the boundary detector changes, expanding state to buy/sell accumulators plus per-side EWM expectations. Calibration also splits into separate buy and sell initial estimates to avoid biased thresholds.
MQL5 adds CRunsBar with tick-by-tick logic, parity-checked against Python on identical tick streams. Persistence is tightened by storing extra accumulators and the tick-ruleβs ...
π Read | Docs | @mql5dev
β€20π11π2
MetaTrader 5 chart panels can host self-contained documentation rendered directly in-terminal, without external files. A canvas-based engine built on CCanvas supports tabs, scrollable rich text, inline images, theming, and supersampled anti-aliased UI elements.
Implementation details include embedding bitmaps via #resource, defining paragraph types, and parsing inline markup into styled runs. Rendering uses a two-pass alpha reconstruction method to preserve glyph transparency on any background, then blends via Porter-Duff over.
Images are loaded from resources, scaled with bicubic interpolation, and cached per panel width. Paragraphs are wrapped into encoded display lines with helpers to decode type, indent, and image slots during paint and scroll.
π Read | Quotes | @mql5dev
Implementation details include embedding bitmaps via #resource, defining paragraph types, and parsing inline markup into styled runs. Rendering uses a two-pass alpha reconstruction method to preserve glyph transparency on any background, then blends via Porter-Duff over.
Images are loaded from resources, scaled with bicubic interpolation, and cached per panel width. Paragraphs are wrapped into encoded display lines with helpers to decode type, indent, and image slots during paint and scroll.
π Read | Quotes | @mql5dev
π13β€10π2
A script for MT5 audits tick-value properties across every symbol in Market Watch: SYMBOL_TRADE_TICK_VALUE, SYMBOL_TRADE_TICK_VALUE_LOSS, and SYMBOL_TRADE_TICK_VALUE_PROFIT.
This matters for EAs that size positions from tick value. On many brokers, especially with cross-currency pairs, LOSS and PROFIT can differ. Using LOSS yields a conservative risk estimate and smaller lots. Using the generic tick value often matches PROFIT, producing slightly larger positions than intended.
Workflow: add symbols to Market Watch, run the script on any chart, and read the summary in the Experts tab. Optional CSV export writes full per-symbol results to MQL5/Files/ to avoid log line limits.
Symbols are classified as ALL_EQUAL, TV_MATCHES_PROFIT, TV_MATCHES_LOSS, or ALL_DIFFER, followed by an aggregate count per category.
π Read | Quotes | @mql5dev
This matters for EAs that size positions from tick value. On many brokers, especially with cross-currency pairs, LOSS and PROFIT can differ. Using LOSS yields a conservative risk estimate and smaller lots. Using the generic tick value often matches PROFIT, producing slightly larger positions than intended.
Workflow: add symbols to Market Watch, run the script on any chart, and read the summary in the Experts tab. Optional CSV export writes full per-symbol results to MQL5/Files/ to avoid log line limits.
Symbols are classified as ALL_EQUAL, TV_MATCHES_PROFIT, TV_MATCHES_LOSS, or ALL_DIFFER, followed by an aggregate count per category.
π Read | Quotes | @mql5dev
β€21π4
Utility script sets Stop Loss on all open positions using a per-position maximum loss defined in the account deposit currency (for example, 50 units). The calculation works across any forex symbol and deposit currency by using SYMBOL_TRADE_TICK_VALUE_LOSS for automatic conversion.
For each position, the script derives an SL price that targets the configured loss if hit, then validates broker stop and freeze levels before sending a modification request. Positions are skipped when the existing SL is already within one tick of the target.
If market movement makes the computed SL invalid under broker constraints, the script leaves the position unchanged and logs a specific reason for the rejection, enabling quick diagnosis of unmodifiable trades.
π Read | CodeBase | @mql5dev
For each position, the script derives an SL price that targets the configured loss if hit, then validates broker stop and freeze levels before sending a modification request. Positions are skipped when the existing SL is already within one tick of the target.
If market movement makes the computed SL invalid under broker constraints, the script leaves the position unchanged and logs a specific reason for the rejection, enabling quick diagnosis of unmodifiable trades.
π Read | CodeBase | @mql5dev
β€15π9π1
This installment tackles a recurring issue in an MQL5 volatility library ported from Pythonβs ARCH: identical data and starting values produced noticeably different GARCH-family parameters in MetaTrader 5. Log-likelihood verification with fixed Python parameters showed the MQL5 objective was correct, narrowing the mismatch to the optimizerβs behavior rather than model math.
To improve cross-platform parity, the library replaces ALGLIBβs minNLC (penalty/interior-point style) with SLSQP, matching ARCHβs approach. SLSQP solves a sequence of quadratic subproblems, enforces constraints via an active-set method, and targets KKT satisfactionβuseful for variance non-negativity and stationarity constraints that must be respected tightly.
An MQL5-native SLSQP (Fortran Kraft port) is integrated via CSLSQP, adding constraint abstractions, optional variable clippi...
π Read | VPS | @mql5dev
To improve cross-platform parity, the library replaces ALGLIBβs minNLC (penalty/interior-point style) with SLSQP, matching ARCHβs approach. SLSQP solves a sequence of quadratic subproblems, enforces constraints via an active-set method, and targets KKT satisfactionβuseful for variance non-negativity and stationarity constraints that must be respected tightly.
An MQL5-native SLSQP (Fortran Kraft port) is integrated via CSLSQP, adding constraint abstractions, optional variable clippi...
π Read | VPS | @mql5dev
β€14π11
MMAR research in Python has covered data loading, partition scaling, Hurst extraction, spectrum fitting, cascade construction, fBM generation, Monte Carlo tests, and benchmarking versus GARCH, with MMAR showing stronger results.
Operational use in MetaTrader 5 requires a native MQL5 implementation. The current focus is a dependency-free library that reacts per tick and integrates with Strategy Tester without bridge processes or IPC latency.
Work starts with the Partition Analysis engine in MQL5. It computes S_q(dt) across log-spaced time scales and a q-grid, runs OLS on log-log fits to obtain tau(q), estimates H via tau(q)=0 with GHE as fallback, and applies diagnostics to confirm multifractality from scaling quality and curve shape.
π Read | Quotes | @mql5dev
Operational use in MetaTrader 5 requires a native MQL5 implementation. The current focus is a dependency-free library that reacts per tick and integrates with Strategy Tester without bridge processes or IPC latency.
Work starts with the Partition Analysis engine in MQL5. It computes S_q(dt) across log-spaced time scales and a q-grid, runs OLS on log-log fits to obtain tau(q), estimates H via tau(q)=0 with GHE as fallback, and applies diagnostics to confirm multifractality from scaling quality and curve shape.
π Read | Quotes | @mql5dev
β€15π10π₯4
Candlestick patterns can be treated as ordered strings once each candle is encoded into a finite alphabet (e.g., bullish βAHEGDβ, bearish βahegdβ). This converts price-action pattern search into a permutation problem that can be exhaustively counted and generated in MQL5.
Two cases are covered: permutations without repetition, computed as P(n,r)=n!/(n-r)! (or efficiently via a descending product), and permutations with repetition, computed as n^r. The article shows how quickly the search space grows as r increases, making manual pattern discovery unrealistic.
An MQL5 utility is built in two parts: a calculator that validates inputs and reports counts, and generators that output all sequences as string arrays. The generators use recursive backtracking, with a βusedβ mask for no-repetition and free reuse for repetition, enabling systematic backtests ...
π Read | AppStore | @mql5dev
Two cases are covered: permutations without repetition, computed as P(n,r)=n!/(n-r)! (or efficiently via a descending product), and permutations with repetition, computed as n^r. The article shows how quickly the search space grows as r increases, making manual pattern discovery unrealistic.
An MQL5 utility is built in two parts: a calculator that validates inputs and reports counts, and generators that output all sequences as string arrays. The generators use recursive backtracking, with a βusedβ mask for no-repetition and free reuse for repetition, enabling systematic backtests ...
π Read | AppStore | @mql5dev
β€25π15π3