Case Studies

Selected engagements showing how Helios converts business requirements into measurable technology outcomes.

Polykern GmbH — Zurich, Switzerland

Full-Stack Low-Latency Market-Making System

Architected and deployed a proprietary HFT market-making system from scratch, operating live on Binance and OKX with a ~12 ms hot-path execution engine and cross-venue options hedging on Deribit.

Domain: Trading Infrastructure

Timeline: 2023 – Present

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Rimath Group — Saudi Arabia

Sponsored Liquidity Provisioning System for Tadawul

Designed and delivered a market-making system for the Tadawul stock exchange, providing continuous two-sided quoting with inventory-driven spread control and KPI tracking aligned with exchange requirements.

Domain: Trading Infrastructure

Timeline: Institutional engagement

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Dubai Capital Management — Dubai

AI-Driven Portfolio Management System

Designed a deep learning portfolio management system translating neural network outputs directly into deployable portfolio weights, with a custom risk-adjusted cost function and multi-regime backtesting.

Domain: Quant AI

Timeline: Institutional engagement

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Perfusion Mind — AI Product Platform

Low-Latency Multi-Agent Intelligence System

Designed and deployed a production multi-agent intelligence system using a mixture-of-experts setup, with speculative parallel execution and shared memory for faster, deeper reasoning.

Domain: Agentic AI Systems

Timeline: 2025 – 2026

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Ohm Outdoor — Property Visualization Platform

Satellite-to-Ground AI Visualization System

Developed a system that transforms satellite imagery into realistic front-facing property visualizations and applies generative style variants at scale.

Domain: Multimodal AI

Timeline: 2024 – 2025

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Greyhound Racing Analytics — Quant Research Initiative

Predictive Modeling & Edge Detection System

Developed a predictive analytics system in a noisy market environment using feature engineering, baseline tree models, and learning-to-rank methods to identify potential inefficiencies.

Domain: Quant AI

Timeline: Research engagement

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