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How Goldman Sachs Deployed its AI Platform
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高盛构建了一个名为GS AI的内部人工智能平台,将GPT-4、Gemini、Llama、Claude等多种大语言模型部署在防火墙内部,并通过加密、提示过滤、访问控制、审计日志和人工干预等措施确保安全与合规。该平台旨在提升员工生产力,已实现超过50%的员工采用率,尤其在编码方面效率提升20%,发布后bug减少15%。高盛CEO和CIO大力支持,目标是到2026年实现全员使用。平台通过检索增强生成(RAG)和模型微调,结合专有数据,提供领域相关的精准回答。在软件开发生命周期(SDLC)中,AI辅助编码,提供代码建议、错误修复和语言翻译。平台还支持模型定制和多模型策略,以满足不同任务需求。未来,高盛正试点Devin等更自主的AI工具,以进一步提升效率并探索其在各业务领域的应用潜力。

🔒 **安全合规的内部AI架构**:高盛的GS AI平台将多种领先大语言模型(如GPT-4、Gemini、Llama、Claude)部署在公司防火墙内,通过数据加密、提示过滤、基于角色的访问控制、详细的审计日志以及必要时的人工干预等一系列安全措施,确保敏感数据不外泄,并符合公司及行业监管规定,为企业级AI应用树立了安全标杆。

🚀 **全员覆盖与显著的生产力提升**:该平台已覆盖高盛46,000多名员工中的50%以上,并设定了2026年实现100%普及的目标。用户反馈显示,AI在提升生产力方面成效显著,例如编码效率提升了20%,发布后bug数量减少了15%,IPO文件起草时间从数周缩短至数分钟,极大地提高了工作效率和质量。

🧠 **定制化与领域专精的模型策略**:高盛并非简单使用现成模型,而是通过喂养内部海量专有数据(如金融文本、代码库、研究档案)进行微调和检索增强生成(RAG),使AI能够提供与公司内部知识体系高度一致的回答。同时,采用多模型策略,利用小型模型处理简单任务,大型模型应对复杂挑战,并根据员工角色提供定制化的模型能力,以最大化性能和安全性。

💡 **AI在软件开发生命周期(SDLC)中的深度融合**:GS AI平台为软件开发者提供了强大的AI编码助手,集成在VS Code和JetBrains等IDE中,能够提供代码建议、自动补全、代码解释、错误修复、语言翻译以及生成样板代码等功能。所有AI生成的代码都经过正常的代码审查流程和自动化测试,确保了代码质量和稳定性,加速了开发进程。

Code and Content Gen AI is among the most adopted and highest RoI AI use cases among enterprises

Everyone’s probably already heard that Goldman Sachs built an internal AI platform called GS AI platform but here’s how they did it. 

TLDR 

Goldman Sachs wanted to allow their employees to converse with large language models to boost productivity across the firm with emphasis on security, compliance and governance controls. 

In this article we’ll go through the platform’s architecture, security measures, developer integrations, model customization, organizational impact and next steps


Architecture: Secure Multi-Model AI Behind the Firewall

A GS employee uses the GS AI interface through a chat interface much like how we use ChatGPT where they can start new conversations.

“a very simple interface that allows you to have access to the latest and greatest models” - Marco Argenti, CIO, GS

Technical stack and orchestration: GS AI Platform supports local or secure API deployments of models like OpenAI’s GPT variants, Google’s Gemini, Meta’s LLaMA, and Anthropic’s Claude. Its flexible architecture can add new models and route tasks to the best fit  code requests to coding models, document summaries to language/finance-tuned models ensuring high-quality results across use cases. This method of multi-model orchestration means that GS can swap out models without retraining the users.

Use of proprietary data: All queries are routed through an internal gateway that adds proprietary data and context before reaching the model. Using retrieval-augmented generation (RAG) and fine-tuning, responses are generated primarily from GS’ own up-to-date, domain-specific knowledge. Initially trained on Goldman data within models from OpenAI, Meta, Google, and others, the system will increasingly integrate more internal context as additional firm data is indexed.


Security and Compliance

All AI interactions pass through a secure compliance gateway that applies prompt filtering, data anonymization and policy checks so that no sensitive information is sent to the models and outputs comply with firm and regulatory rules. Encryption is used for data in transit into any model APIs, and sensitive prompts or responses are masked within the system. 

Compliance and audit trails: The platform maintains an audit trail of all AI interactions allowing compliance teams to check the information given to or generated by AI, which model was used and who was the person running the interaction. 

Access control: AI limits access to certain models and databases based on employee role, department and use-case. For instance a research analyst can get access to financial data while a developer might get access only to codebases.

Token-level filtering: Every prompt is analysed to strip or replace sensitive data (e.g., client names, account numbers) before sending them to external models. Combined with real-time compliance scanning of both inputs and outputs, this prevents leaks, blocks disallowed content.

AI in the SDLC

One of the earliest and most impactful uses of Goldman’s AI platform is to assist software developers and engineers in coding tasks. Goldman deployed AI coding assistants within VS Code and JetBrains IDEs so developers can get code suggestions, completions, and explanations right as they write code.

The AI Developer Copilot is capable of tasks like: explaining existing code, suggesting bug fixes or improvements, translating code between programming languages, and even generating boilerplate code or test cases on the fly. 

To integrate this safely, Goldman sandboxed the AI’s coding suggestions and instituted additional checks. All code generated by the AI goes through the normal code review process and automated testing pipelines before being merged or deployed, ensuring that any mistakes are caught by human developers or QA tools.

GS offers both Microsoft’s and Google’s code models internally, so they could compare their performance and ensure redundancy (if one model had an outage or limitation, another could be used).


Model Customization and Domain Specific Tuning

Goldman Sachs didn’t simply take off-the-shelf AI models - they customized and fine-tuned models for internal use cases to maximize performance and safety. One key aspect of this is feeding Goldman’s extensive internal data (financial texts, code repositories, research archives, etc.) into the models, so that the AI’s knowledge is grounded in Goldman’s context.

Fine-tuning: Open-source and internal models are trained on Goldman’s proprietary codebases, research, and market data, making outputs align with internal standards, abbreviations, and historical context.

RAG: The AI can pull relevant internal documents in real time via platforms like Legend to answer queries with precise, source-backed information.

Role-based behaviour: Access and model capabilities are segmented by user clearance. Specialised variants (e.g., Banker Copilot, Research Assistant) are tuned for department-specific needs.

Multi-size model strategy: Smaller models that could handle less complex tasks quickly, allows them to reserve the giant models for truly hard problems.


Organizational Impact and Cultural Change

“Leveraging AI solutions to scale and transform our engineering capabilities as well as to simplify and modernize our technology stack”  - David Solomon, CEO, Goldman Sachs


The Next Phase: Devin

Goldman Sachs is piloting Devin, an AI software engineer built by Cognition, as part of its move into autonomous AI tools. Unlike an AI Assistant, which waits for you to tell it what to do step by step, Devin can take a goal, figure out the steps, write the code, test it, and hand it back for review.

Right now, the pilot is aimed at the kind of work developers don’t love - updating old code, migrating systems, cleaning up legacy frameworks, and cranking out boilerplate. The idea is to clear backlogs and speed up delivery. Developers still stay in the loop, assigning Devin tasks and checking its work before anything goes live.

Goldman’s CIO, Marco Argenti, thinks this could mean 3-4x faster output compared to today’s AI tools. If it works, the bank could roll out hundreds of these agents and use them for other areas like operations, research, or finance.

The trial is also a test of whether this kind of AI can work inside Goldman’s tight compliance rules. If Devin proves itself, it could be plugged into the GS AI Platform so employees could ask the AI to just get things done, not just assist. That could change how a lot of work gets done at the bank.


Yes, We Can

Goldman Sachs’ AI strategy shows how a large, regulated enterprise can embrace transformative technology without compromising security or compliance. The firm’s behind-the-firewall approach allows the entire workforce to access advanced AI models. Early results are impressive with productivity lifts on the order of 20% in key functions. Equally important is the change in mindset - Goldman’s workforce is increasingly treating AI as a collaborator, and the firm is training its people to leverage and supervise AI effectively. Executive leadership is fully aligned with these changes, clearly articulating that AI is central to Goldman’s strategy for innovation, efficiency, and competitiveness in the coming years.

GS AI platform offers a case study for CIOs in regulated industries. It demonstrates that with the right architecture and controls, even sensitive sectors like finance can harness generative AI to automate grunt work, surface insights, and enhance decision-making

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高盛 AI平台 企业AI 信息安全 生产力提升
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