A platform where AI creates, tests, and optimizes your trading strategies
Modern trading requires processing huge amounts of data and rapid adaptation to changing market conditions. Traders and investors face several key problems:
Numerous trading strategies are scattered across different resources without a unified system for evaluating their effectiveness.
Lack of a universal tool for testing strategies in various market conditions.
Creating effective trading strategies requires specialized knowledge and skills.
Traditional methods fail to adapt to rapidly changing market conditions.
MarketMaker.cc is an innovative platform that combines artificial intelligence, crowdsourcing of trading strategies, and advanced backtesting technologies to create a revolutionary algorithmic trading ecosystem.
The global algorithmic trading market is growing rapidly:
By 2028, 80% of the total financial planning and investment management market will be reached.
33% of enterprise software applications will include agent AI by 2028 (less than 1% in 2024).
15% of daily business decisions are already made autonomously by AI agents.
Real-time data providers, unified interface for all exchanges, and advanced order management
Portfolio tree management, rebalancing, and virtual portfolios with tokens
Ready-to-use API providers and custom data collection in Clickhouse/DuckDB
Visual bot constructor, 100+ strategies, and integration with TradingView
Comprehensive testing on historical data, virtual portfolios, and real accounts
Advanced market analysis, signals, and automated trading solutions
Unlike competitors offering a limited set of pre-installed strategies, MarketMaker.cc uses AI to continuously search for and integrate new strategies from open sources.
Our AI automatically transforms complex code into visual blocks, making strategy creation accessible to users without programming skills.
A system where AI agents compete for resources, ensuring constant improvement of strategies and adaptation to changing market conditions.
Combining all stages of working with strategies on a single platform: from discovery and creation to testing and real-world application.

Chief Executive Officer
Fullstack, DevOps, AI Engineer

Chief Technology Officer
Fullstack

Chief Financial Officer
Fullstack

Head of Quantitative Research
Fullstack, AI Engineer

Risk Manager
Fullstack, AI Engineer

Business Development Manager
Fullstack

Product owner
Quant Analyst/Researcher
Be Part of Our Team
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Financial Data Structures
Advanced systems for transforming unstructured financial datasets into organized bar formats, including traditional tick, volume, and dollar bars alongside innovative information-driven bar structures.
Labelling Techniques
Comprehensive suite of data labeling methodologies including Triple-Barrier, Meta-Labeling, Trend Scanning, Tail Sets, and Matrix Flags for precise classification of financial patterns.
Feature Engineering
Sophisticated processes that transform raw financial data into informative model features using domain knowledge, including techniques from market microstructure analysis and fractionally differentiated features.
Critical Line Algorithm
Advanced portfolio optimization technique that overcomes limitations of traditional Mean-Variance approaches by allowing precise upper and lower boundaries on asset allocation weights.
Mean-Variance Optimization
Collection of classic portfolio construction methodologies including Inverse Variance, Minimum Volatility, and Maximum Sharpe portfolios with customizable objectives and constraints.
Entropy Pooling
Sophisticated methodology that enables specification of non-linear market views to generate posterior distributions, extending beyond traditional return-focused models.
Shrinkage Methods
Specialized techniques for reducing noise in covariance matrices, creating more robust foundations for portfolio optimization applications.
Hierarchical Risk Parity
Modern optimization algorithm leveraging unsupervised machine learning through hierarchical tree clustering to group assets by risk characteristics.
Black-Litterman Model
Sophisticated allocation framework combining Capital Asset Pricing Theory with Bayesian statistics to generate efficient portfolio weight estimates.
Robust Bayesian Allocation
Advanced algorithm that formulates assumptions about prior market parameters and generates robust portfolios along the Bayesian Efficient Frontier.
De-noising and De-toning
Advanced matrix refinement methods that efficiently remove noise from covariance structures without information loss.
Distance Approach
Widely cited pairs trading strategy valued for its simplicity and transparency, making it ideal for large-scale empirical research applications.
Cointegration Approach
Established methodology that identifies pairs with econometrically reliable equilibrium relationships for statistical arbitrage trading.
Time Series Approach
Enhanced trading rule framework utilizing time series modeling of mean-reverting processes beyond traditional cointegration methods.
Stochastic Control Approach
Advanced methodology using stochastic processes to determine optimal trading rules without requiring spread forecasting or formation periods.
Machine Learning Approach
Integrated framework combining various statistical arbitrage techniques with machine learning algorithms to enhance strategy creation.
Time Machine Terminal
Advanced scalping terminal with comprehensive historical playback capabilities, allowing traders to review OHLCV data alongside order book structures and tick-by-tick movements simultaneously.
ProfitMaker.cc Framework
Open-source modular trading terminal designed for maximum flexibility through a component-based architecture that supports seamless integration of custom modules.
Custom Terminal Development
End-to-end development and ongoing support services for bespoke trading terminals tailored to specific trading strategies, asset classes, or institutional requirements.
AI Strategy Builder
Innovative platform that leverages artificial intelligence to construct, optimize, and backtest trading strategies without requiring coding expertise.
Backtesting Framework
Robust system for simulating trading strategies on historical data to evaluate performance before deploying with real capital.
RL Model Development
Development and implementation of reinforcement learning models for on-chain market making, including Deep Q-Networks (DQN) and Avellaneda-Stoikov models.
Reward Function Engineering
Custom development of reward functions that effectively balance profitability objectives with risk management constraints for optimal trading outcomes.
High-Latency Adaptation
Specialized techniques for adapting high-frequency trading strategies to operate effectively in high-latency on-chain environments.
Research Integration
Ongoing tracking and integration of emerging trends in quantitative finance, reinforcement learning, and DeFi to maintain competitive advantage.
Provide liquidity to our MM/USDT pool on STON.fi and earn rewards.
Valuation: $10M USDT
Pre-seed round: 5% for $500k USDT
(Valuation as of January 2026)
MM is the utility token of the MarketMaker.cc platform, used to pay for all key services and incentivize ecosystem participants.
In short: MM is a universal settlement and incentive tool for the platform. All key actions, services, and participant motivation are tied to the use of the MM token, which is freely traded on DEX.