Amanda Vitoria De Paula Pereira / Profile
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I specialize in building asynchronous order loops and deep Python API integrations, look at my history, i have a 0% arbitration loss record because my setups protect your capital from systemic bugs, if you have a strategy that needs institutional-grade risk controls and rock-solid logic, let's plug it in.
Aegis Sweep Pro EA MT5 — Institutional Liquidity Hunter IMPORTANT: After completing your purchase, please send me a direct private message to receive the official installation guide, specialized set files, and your invitation to the private support group. Special Launch Offer The current price is $1,499 available for a limited time only. The price will increase to $1,899 after the next 5 sales, moving progressively until reaching its final structural value of $2,499. Exclusive Bonus: Every
Aegis SMC Matrix EA is a high-performance automated architecture engineered for XAUUSD structure trading, the engine bypasses lagging retail templates by mapping institutional order blocks and liquidity sweeps directly on the terminal execution thread. The core algorithm tracks raw price expansion and volume displacement to secure clean entries at market extremes with zero phase-lag, every trade gets handled by a dynamic position matrix that locks partial targets fast to stabilize your equity
Aegis Kalman Trend is a raw automated trading engine built specifically to extract real momentum from XAUUSD without chasing market noise or taking dummy entries, most retail expert advisors use slow moving averages that cruzam atrasadas and wipe your balance during choppy sessions but this chassi uses a dual-matrix Kalman filter to track the true institutional price line with zero phase-lag, the core algorithm runs an adaptive noise engine that calculates volatility on the fly, it adjusts the
Aegis Quantum Reversal is a straight rules-based trading tool built to stop you from chasing bad entries, most indicators repaint or shift arrows backward to look good on past history but this one doesn't, the signals plot only when a bar closes and what you see on the chart stays there forever with no tricks, there is no generic retail moving average lag either because the engine uses a refined Nadaraya-Watson core combined with standard deviation lookbacks, it creates dynamic
| Specification quality | 5.0 | |
| Result check quality | 5.0 | |
| Availability and communication skills | 5.0 |
| Specification quality | 5.0 | |
| Result check quality | 5.0 | |
| Availability and communication skills | 5.0 |
| Specification quality | 5.0 | |
| Result check quality | 5.0 | |
| Availability and communication skills | 5.0 |
This article shows how to implement a session vwap in MQL5 as a reusable include class with a strict daily reset at broker midnight. The engine computes VWAP and volume‑weighted deviation bands only on closed bars and anchors accumulation with MqlDateTime to avoid distortions from missing candles. A companion indicator plots the baseline and bands, while an Expert Advisor reads signals once per bar for consistent, CPU‑efficient execution and reliable testing.
| Specification quality | 5.0 | |
| Result check quality | 5.0 | |
| Availability and communication skills | 5.0 |
This article shows how to implement a production Z-Score engine in MQL5 using an object-oriented include file, the library computes a rolling mean and population standard deviation, exposes a shift parameter for historical queries, and avoids redundant tick work by running on bar close. An Expert Advisor executes rule-based entries at positive/negative sigma thresholds and closes on mean reversion; a custom indicator provides visual verification.
| Specification quality | 5.0 | |
| Result check quality | 5.0 | |
| Availability and communication skills | 5.0 |
This article shows how to run Python-trained models natively in MetaTrader 5 via the terminal's ONNX functions. We build an MQL5 class that encapsulates session creation, fixes input/output tensor shapes, applies min-max feature normalization to mirror training, and executes OnnxRun once per bar to protect the CPU, the result is a reliable, maintainable inference path for live charts and the Strategy Tester without sockets or DLLs.
| Specification quality | 5.0 | |
| Result check quality | 5.0 | |
| Availability and communication skills | 5.0 |
| Specification quality | 5.0 | |
| Result check quality | 5.0 | |
| Availability and communication skills | 5.0 |



