Yevgeniy Koshtenko
Yevgeniy Koshtenko
3.6 (8)
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2 années
expérience
13
produits
36
versions de démo
1
offres d’emploi
0
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0
les abonnés
Qualified Investor of Kazakhstan and the Russian Federation.
Trading since 2016, algorithmic trading since 2019, machine learning and programming since 2021.

I develop expert advisors, trading robots, indicators, smart contracts, cryptocurrency token and coin codebases, business automation software, and turnkey AI models.

Currently working on an institutional-grade trading system for my own hedge fund and on my own AI blockchain.
Author of 100+ international articles published in different languages worldwide.
Yevgeniy Koshtenko
Yevgeniy Koshtenko
Торговля портфелем роботов за месяц.
Yevgeniy Koshtenko
Yevgeniy Koshtenko
Торговля портфелем роботов за месяц.
Yevgeniy Koshtenko
Article publié Pair Trading: Algorithmic Trading with Auto Optimization Based on Z-Score Differences
Pair Trading: Algorithmic Trading with Auto Optimization Based on Z-Score Differences

In this article, we will explore what pair trading is and how correlation trading works. We will also create an EA for automating pair trading and add the ability to automatically optimize this trading algorithm based on historical data. In addition, as part of the project, we will learn how to calculate the differences between two pairs using the z-score.

4
Yevgeniy Koshtenko
Article publié Angular Analysis of Price Movements: A Hybrid Model for Predicting Financial Markets
Angular Analysis of Price Movements: A Hybrid Model for Predicting Financial Markets

What is angular analysis of financial markets? How to use price action angles and machine learning to make accurate forecasts with 67% accuracy? How to combine a regression and classification model with angular features and obtain a working algorithm? What does Gann have to do with it? Why are price movement angles a good indicator for machine learning?

4
Yevgeniy Koshtenko
Article publié Analyzing Overbought and Oversold Trends Via Chaos Theory Approaches
Analyzing Overbought and Oversold Trends Via Chaos Theory Approaches

We determine the overbought and oversold condition of the market according to chaos theory: integrating the principles of chaos theory, fractal geometry and neural networks to forecast financial markets. The study demonstrates the use of the Lyapunov exponent as a measure of market randomness and the dynamic adaptation of trading signals. The methodology includes an algorithm for generating fractal noise, hyperbolic tangent activation, and moment optimization.

3
Yevgeniy Koshtenko
Yevgeniy Koshtenko
То ли мне прилетел бан от MLQ5 за отправку мониторинга внешнего, то ли просто сайт глючит....Непонятно(
Maxim Kuznetsov
Maxim Kuznetsov 2025.04.14
раз в порфиле пишешь, значит это не бан :-)
Yevgeniy Koshtenko
Article publié Using Deep Reinforcement Learning to Enhance Ilan Expert Advisor
Using Deep Reinforcement Learning to Enhance Ilan Expert Advisor

We revisit the Ilan grid Expert Advisor and integrate Q-learning in MQL5 to build an adaptive version for MetaTrader 5. The article shows how to define state features, discretize them for a Q-table, select actions with ε-greedy, and shape rewards for averaging and exits. You will implement saving/loading the Q-table, tune learning parameters, and test on EURUSD/AUDUSD in the Strategy Tester to evaluate stability and drawdown risks.

4
Yevgeniy Koshtenko
Yevgeniy Koshtenko
Друзья, делаю распродажу - 5 копий своих лучших роботов, до 5 копий, 15 подписчикам - каждая по 15 000 рублей, против обычной цены в 100 000+ . Средний Шарп 2+. Алгоритмы со стопами. Пишите в личку)
Yevgeniy Koshtenko
Article publié Swap Arbitrage in Forex: Building a Synthetic Portfolio and Generating a Consistent Swap Flow
Swap Arbitrage in Forex: Building a Synthetic Portfolio and Generating a Consistent Swap Flow

Do you want to know how to benefit from the difference in interest rates? This article considers how to use swap arbitrage in Forex to earn stable profit every night, creating a portfolio that is resistant to market fluctuations.

Yevgeniy Koshtenko
Article publié Employing Game Theory Approaches in Trading Algorithms
Employing Game Theory Approaches in Trading Algorithms

We are creating an adaptive self-learning trading expert advisor based on DQN machine learning, with multidimensional causal inference. The EA will successfully trade simultaneously on 7 currency pairs. And agents of different pairs will exchange information with each other.

2
Yevgeniy Koshtenko
Article publié Forex arbitrage trading: Analyzing synthetic currencies movements and their mean reversion
Forex arbitrage trading: Analyzing synthetic currencies movements and their mean reversion

In this article, we will examine the movements of synthetic currencies using Python and MQL5 and explore how feasible Forex arbitrage is today. We will also consider ready-made Python code for analyzing synthetic currencies and share more details on what synthetic currencies are in Forex.

5
Yevgeniy Koshtenko
Yevgeniy Koshtenko
Друзья - трейдеры, кто-нибудь хочет получить 1000$ в управление? От вас - еженедельная отчётность и дисциплина в торгах. В качестве бонуса от меня ещё - арбитражный бот Сварог, НО строго на выданном именно вам треугольнике, чтобы счета не коррелировали, и с привязкой к счету.
Yevgeniy Koshtenko
Yevgeniy Koshtenko
Друзья, пока некогда писать посты. Я если честно, сижу за кодом уже несколько недель подряд. Пилю решение по совмещению моих арбитражных систем, ботов Синергии, Мидаса, и еще новых разработок по DQN. Если честно, это пипец как трудно, я первый раз пишу настолько мощную и огромную структуру кода....Пипец.
Yevgeniy Koshtenko
Article publié Forex arbitrage trading: A simple synthetic market maker bot to get started
Forex arbitrage trading: A simple synthetic market maker bot to get started

Today we will take a look at my first arbitrage robot — a liquidity provider (if you can call it that) for synthetic assets. Currently, this bot is successfully operating as a module in a large machine learning system, but I pulled up an old Forex arbitrage robot from the cloud, so let's take a look at it and think about what we can do with it today.

4
Yevgeniy Koshtenko
Yevgeniy Koshtenko
Наконец допилил Нексус. Полноценный биржевой ИИ на чистом языке MQL5 на DQN обучении + Casual многомерный причинно следственный вывод + теория игр Нэша.

В отличие от остальных моих алгоритмов, не требует обучения и оптимизации, обучается на лету и за пару дней выходит в прибыль. Постоянно дообучается на лету. Выходит в прибыль с любой точки графика на любой паре.

Осталось совместить это с арбитражным Сварогом и поставкой данных из Мидаса, и с удаленным риск менеджером. Но эта часть системы самодостаточна.
Yevgeniy Koshtenko
Article publié Forex Arbitrage Trading: Relationship Assessment Panel
Forex Arbitrage Trading: Relationship Assessment Panel

This article presents the development of an arbitrage analysis panel in MQL5. How to get fair exchange rates on Forex in different ways? Create an indicator to obtain deviations of market prices from fair exchange rates, as well as to assess the benefits of arbitrage ways of exchanging one currency for another (as in triangular arbitrage).

3
Yevgeniy Koshtenko
Yevgeniy Koshtenko
Мой робот-маркетмейкер, торгует у тещи.
Yevgeniy Koshtenko
Article publié Build a Remote Forex Risk Management System in Python
Build a Remote Forex Risk Management System in Python

We are making a remote professional risk manager for Forex in Python, deploying it on the server step by step. In the course of the article, we will understand how to programmatically manage Forex risks, and how not to waste a Forex deposit any more.

2
Yevgeniy Koshtenko
Article publié Currency pair strength indicator in pure MQL5
Currency pair strength indicator in pure MQL5

We are going to develop a professional indicator for currency strength analysis in MQL5. This step-by-step guide will show you how to develop a powerful trading tool with a visual dashboard for MetaTrader 5. You will learn how to calculate the strength of currency pairs across multiple timeframes (H1, H4, D1), implement dynamic data updates, and create a user-friendly interface.

2
Yevgeniy Koshtenko
Article publié Capital management in trading and the trader's home accounting program with a database
Capital management in trading and the trader's home accounting program with a database

How can a trader manage capital? How can a trader and investor keep track of expenses, income, assets, and liabilities? I am not just going to introduce you to accounting software; I am going to show you a tool that might become your reliable financial navigator in the stormy sea of trading.

2