@_zheergen: Wow! Goldman Sachs open-sourced their quantitative toolkit gs-quant. Goldman Sachs has open-sourced the Python quant library used by their internal quants, currently with 11.3K stars on GitHub. It offers a rich set of quantitative analysis tools for structured products…

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Goldman Sachs open-sourced its internal quantitative trading toolkit gs-quant, providing institutional-grade derivatives pricing, risk management, and strategy development tools. It has received 11.3K GitHub stars.

Wow! Goldman Sachs open-sourced their quantitative toolkit gs-quant Goldman Sachs has open-sourced the Python quant library used by their internal quants, currently with 11.3K stars on GitHub. It offers a rich set of quantitative analysis tools for structured products, risk modeling, and strategy research. While the full API requires Goldman Sachs institutional client access, the core library is open source and can be installed by ordinary users (pip install gs-quant). Key highlights: > Institutional-grade quantitative tools: Supports the full workflow of derivatives pricing, risk management, backtesting, and trading strategy development > Production-grade code quality: Directly from the real tool stack of Goldman Sachs trading desks > Supports Claude Skills: Officially integrated with Claude skills, usable directly in Claude > Broad asset class coverage: Strong analysis capabilities for stocks, options, futures, FX, and other derivatives > Continuous maintenance and updates: Latest version 2.1.1 just released > Apache-2.0 open source license, directly usable for research and development For developers who want to learn institutional-grade quantitative modeling, work on derivatives pricing and risk management, or use AI to assist quantitative research, this is one of the most valuable open-source quant toolkits available.
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Wow! Goldman Sachs Open-Sourced Their Quant Library gs-quant

Goldman Sachs has open-sourced the Python quant library used by their internal quants, which has already gained 11.3K stars on GitHub.

It provides a rich set of quantitative analysis tools, suitable for structured products, risk modeling, strategy research, etc. While the full API requires Goldman Sachs institutional client access, the core library is open-sourced and can be installed by ordinary users (pip install gs-quant).

Key highlights:

Institutional-grade quant tools: Supports the full workflow including derivatives pricing, risk management, backtesting, and trading strategy development
Production-level code quality: Directly from Goldman Sachs’ real trading desk tool stack
Claude Skills support: Officially integrated Claude Skills, can be used directly within Claude
Wide asset class coverage: Strong capabilities for analyzing stocks, options, futures, forex, and other derivatives
Continuous maintenance and updates: Latest version 2.1.1 just released
Apache-2.0 open source license, can be used directly for research and development

For developers wanting to learn institutional-grade quantitative modeling, do derivatives pricing and risk management, or use AI for quantitative research, this is one of the highest-value open-source quant libraries available.

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HKUDS open-sourced AI-Trader is a 100% Agent-Native trading platform that allows AI agents to autonomously participate in stock, cryptocurrency, forex, options, and futures trading.

Key highlights:

Agent-native design: Any AI agent can quickly integrate and start trading by simply reading a SKILL.md link

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