Hlomohang John Borotho
Hlomohang John Borotho
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Founder and CEO GIT Capital
The founder and CEO of GIT(Gold Intraday Trader) i am GIT
From me to you will be GOLD(XAUUSD) market analysis
EA's that will only be on GOLD markets
Hlomohang John Borotho
게재된 기고글 Graph Theory: Traversal Depth-First Search (DFS) Applied in Trading
Graph Theory: Traversal Depth-First Search (DFS) Applied in Trading

This article applies Depth-First Search to market structure by modeling swing highs and lows as graph nodes and tracking one structural path as deeply as conditions remain valid. When a key swing is broken, the algorithm backtracks and explores an alternative branch. Readers gain a practical framework to formalize structural bias and test whether the current path aligns with targets like liquidity pools or supply and demand zones.

Hlomohang John Borotho
게재된 기고글 Formulating Dynamic Multi-Pair EA (Part 7): Cross-Pair Correlation Mapping for Real-Time Trade Filtering
Formulating Dynamic Multi-Pair EA (Part 7): Cross-Pair Correlation Mapping for Real-Time Trade Filtering

In this part, we will integrate a real-time correlation matrix into a multi-symbol Expert Advisor to prevent redundant or risk-stacked trades. By dynamically measuring cross-pair relationships, the EA will filter entries that conflict with existing exposure, improving portfolio balance, reducing systemic risk, and enhancing overall trade quality.

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Hlomohang John Borotho
게재된 기고글 Swing Extremes and Pullbacks in MQL5 (Part 2): Automating the Strategy with an Expert Advisor
Swing Extremes and Pullbacks in MQL5 (Part 2): Automating the Strategy with an Expert Advisor

Built on lower-timeframe market structure, and then orchestrated on the higher-timeframe, this indicator detects swing extremes where price becomes statistically vulnerable to reversal. It visualizes overextension and pullback zones, offering early insight into mean-reversion behavior.

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Hlomohang John Borotho
게재된 기고글 Swing Extremes and Pullbacks in MQL5 (Part 1): Developing a Multi-Timeframe Indicator
Swing Extremes and Pullbacks in MQL5 (Part 1): Developing a Multi-Timeframe Indicator

In this discussion we will Automate Swing Extremes and the Pullback Indicator, which transforms raw lower-timeframe (LTF) price action into a structured map of market intent, precisely identifying swing highs, swing lows, and corrective phases in real time. By programmatically tracking microstructure shifts, it anticipates potential reversals before they fully unfold—turning noise into actionable insight.

Hlomohang John Borotho
게재된 기고글 Automating Market Memory Zones Indicator: Where Price is Likely to Return
Automating Market Memory Zones Indicator: Where Price is Likely to Return

This article turns Market Memory Zones from a chart-only concept into a complete MQL5 Expert Advisor. It automates Displacement, Structure Transition (CHoCH), and Liquidity Sweep zones using ATR- and candle-structure filters, applies lower-timeframe confirmation, and enforces risk-based position sizing with dynamic SL and structure-based TP. You will get the code architecture for detection, entries, trade management, and visualization, plus a brief backtest review.

Hlomohang John Borotho
게재된 기고글 Integrating MQL5 with Data Processing Packages (Part 7): Building Multi-Agent Environments for Cross-Symbol Collaboration
Integrating MQL5 with Data Processing Packages (Part 7): Building Multi-Agent Environments for Cross-Symbol Collaboration

The article presents a complete Python–MQL5 integration for multi‑agent trading: MT5 data ingestion, indicator computation, per‑agent decisions, and a weighted consensus that outputs a single action. Signals are stored to JSON, served by Flask, and consumed by an MQL5 Expert Advisor for execution with position sizing and ATR‑derived SL/TP. Flask routes provide safe lifecycle control and status monitoring.

Hlomohang John Borotho
게재된 기고글 Graph Theory: Traversal Breadth-First Search (BFS) Applied in Trading
Graph Theory: Traversal Breadth-First Search (BFS) Applied in Trading

Breadth First Search (BFS) uses level-order traversal to model market structure as a directed graph of price swings evolving through time. By analyzing historical bars or sessions layer by layer, BFS prioritizes recent price behavior while still respecting deeper market memory.

Hlomohang John Borotho
게재된 기고글 Formulating Dynamic Multi-Pair EA (Part 6): Adaptive Spread Sensitivity for High-Frequency Symbol Switching
Formulating Dynamic Multi-Pair EA (Part 6): Adaptive Spread Sensitivity for High-Frequency Symbol Switching

In this part, we will focus on designing an intelligent execution layer that continuously monitors and evaluates real-time spread conditions across multiple symbols. The EA dynamically adapts its symbol selection by enabling or disabling trading based on spread efficiency rather than fixed rules. This approach allows high-frequency multi-pair systems to prioritize cost-effective symbols.

Hlomohang John Borotho
게재된 기고글 Developing Market Memory Zones Indicator: Where Price Is Likely To Return
Developing Market Memory Zones Indicator: Where Price Is Likely To Return

In this discussion, we will develop an indicator to identify price zones created by strong market activity, such as impulsive moves, structure shifts, and liquidity events. These zones represent areas where the market has left “memory” due to unfilled orders or rapid price displacement. By marking these regions on the chart, the indicator highlights where price is statistically more likely to revisit and react in the future.

Hlomohang John Borotho 출시돈 제품

Indicator Description (based on AVPT EA ): This indicator visualizes a Volume Profile-based liquidity architecture on the chart by analyzing where trading volume is concentrated across price levels over a specified lookback period. It calculates key volume structures such as: Point of Control (POC): the price level with the highest traded volume. Value Area (VA): the range containing a configurable percentage of total volume (typically ~70%). High-Volume Nodes (HVNs): price levels with

Hlomohang John Borotho
게재된 기고글 Adaptive Smart Money Architecture (ASMA): Merging SMC Logic With Market Sentiment for Dynamic Strategy Switching
Adaptive Smart Money Architecture (ASMA): Merging SMC Logic With Market Sentiment for Dynamic Strategy Switching

This topic explores how to build an Adaptive Smart Money Architecture (ASMA)—an intelligent Expert Advisor that merges Smart Money Concepts (Order Blocks, Break of Structure, Fair Value Gaps) with real-time market sentiment to automatically choose the best trading strategy depending on current market conditions.

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Hlomohang John Borotho
게재된 기고글 Fortified Profit Architecture: Multi-Layered Account Protection
Fortified Profit Architecture: Multi-Layered Account Protection

In this discussion, we introduce a structured, multi-layered defense system designed to pursue aggressive profit targets while minimizing exposure to catastrophic loss. The focus is on blending offensive trading logic with protective safeguards at every level of the trading pipeline. The idea is to engineer an EA that behaves like a “risk-aware predator”—capable of capturing high-value opportunities, but always with layers of insulation that prevent blindness to sudden market stress.

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Hlomohang John Borotho
게재된 기고글 Analytical Volume Profile Trading (AVPT): Liquidity Architecture, Market Memory, and Algorithmic Execution
Analytical Volume Profile Trading (AVPT): Liquidity Architecture, Market Memory, and Algorithmic Execution

Analytical Volume Profile Trading (AVPT) explores how liquidity architecture and market memory shape price behavior, enabling more profound insight into institutional positioning and volume-driven structure. By mapping POC, HVNs, LVNs, and Value Areas, traders can identify acceptance, rejection, and imbalance zones with precision.

Hlomohang John Borotho
게재된 기고글 Automating Black-Scholes Greeks: Advanced Scalping and Microstructure Trading
Automating Black-Scholes Greeks: Advanced Scalping and Microstructure Trading

Gamma and Delta were originally developed as risk-management tools for hedging options exposure, but over time they evolved into powerful instruments for advanced scalping, order-flow modeling, and microstructure trading. Today, they serve as real-time indicators of price sensitivity and liquidity behavior, enabling traders to anticipate short-term volatility with remarkable precision.

Hlomohang John Borotho
게재된 기고글 Integrating MQL5 with Data Processing Packages (Part 6): Merging Market Feedback with Model Adaptation
Integrating MQL5 with Data Processing Packages (Part 6): Merging Market Feedback with Model Adaptation

In this part, we focus on how to merge real-time market feedback—such as live trade outcomes, volatility changes, and liquidity shifts—with adaptive model learning to maintain a responsive and self-improving trading system.

Hlomohang John Borotho
게재된 기고글 Formulating Dynamic Multi-Pair EA (Part 5): Scalping vs Swing Trading Approaches
Formulating Dynamic Multi-Pair EA (Part 5): Scalping vs Swing Trading Approaches

This part explores how to design a Dynamic Multi-Pair Expert Advisor capable of adapting between Scalping and Swing Trading modes. It covers the structural and algorithmic differences in signal generation, trade execution, and risk management, allowing the EA to intelligently switch strategies based on market behavior and user input.

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Hlomohang John Borotho
게재된 기고글 Black-Scholes Greeks: Gamma and Delta
Black-Scholes Greeks: Gamma and Delta

Gamma and Delta measure how an option’s value reacts to changes in the underlying asset’s price. Delta represents the rate of change of the option’s price relative to the underlying, while Gamma measures how Delta itself changes as price moves. Together, they describe an option’s directional sensitivity and convexity—critical for dynamic hedging and volatility-based trading strategies.

Hlomohang John Borotho
게재된 기고글 Dynamic Swing Architecture: Market Structure Recognition from Swings to Automated Execution
Dynamic Swing Architecture: Market Structure Recognition from Swings to Automated Execution

This article introduces a fully automated MQL5 system designed to identify and trade market swings with precision. Unlike traditional fixed-bar swing indicators, this system adapts dynamically to evolving price structure—detecting swing highs and swing lows in real time to capture directional opportunities as they form.

Hlomohang John Borotho
게재된 기고글 Reusing Invalidated Orderblocks As Mitigation Blocks (SMC)
Reusing Invalidated Orderblocks As Mitigation Blocks (SMC)

In this article, we explore how previously invalidated orderblocks can be reused as mitigation blocks within Smart Money Concepts (SMC). These zones reveal where institutional traders re-enter the market after a failed orderblock, providing high-probability areas for trade continuation in the dominant trend.

Hlomohang John Borotho
게재된 기고글 Automating The Market Sentiment Indicator
Automating The Market Sentiment Indicator

In this article, we automate a custom market sentiment indicator that classifies market conditions into bullish, bearish, risk-on, risk-off, and neutral. The Expert Advisor delivers real-time insights into prevailing sentiment while streamlining the analysis process for current market trends or direction.

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