Futures
Access hundreds of perpetual contracts
TradFi
Gold
One platform for global traditional assets
Options
Hot
Trade European-style vanilla options
Unified Account
Maximize your capital efficiency
Demo Trading
Introduction to Futures Trading
Learn the basics of futures trading
Futures Events
Join events to earn rewards
Demo Trading
Use virtual funds to practice risk-free trading
Launch
CandyDrop
Collect candies to earn airdrops
Launchpool
Quick staking, earn potential new tokens
HODLer Airdrop
Hold GT and get massive airdrops for free
Launchpad
Be early to the next big token project
Alpha Points
Trade on-chain assets and earn airdrops
Futures Points
Earn futures points and claim airdrop rewards
Chen Guowang: There are four "red line scenarios" in the financial industry where the use of OpenClaw is strictly prohibited.
Question AI · How can the financial industry balance AI efficiency with compliance and security?
Recently, the open-source AI agent OpenClaw (nicknamed “Lobster”) has been gaining popularity. It can integrate and utilize communication software and large AI models to autonomously execute complex tasks such as file management and data processing on users’ local computers. However, in the highly regulated and sensitive financial industry, the security risks, application boundaries, and implementation challenges of OpenClaw remain a focal point of industry concern.
Defining Application Boundaries: Focus on Non-Core Assistance, Establish Four Major Red Lines
Regarding the application boundaries of OpenClaw in the financial sector, Chen Guowang, director of the Banking Research Institute, clearly stated that its core principles can be summarized as “strong human assistance, non-core business, data remaining in-domain, minimum permissions, and full-chain auditability.” These principles are derived from the combination of its security features and compliance requirements of the financial industry.
Specifically, the scenarios where OpenClaw can be implemented are mainly concentrated in non-core assistance areas, which do not involve core capital operations and can effectively enhance work efficiency. This includes internal office assistance, such as document organization, compliance document retrieval, and meeting minutes generation; customer service assistance, such as generating customer scripts, answering frequently asked questions, and pre-processing complaint tickets. However, since this type of scenario involves external communication, it must undergo human review as the final audit; and risk compliance assistance, such as anti-fraud rule verification, regulatory document interpretation, and preliminary identification of abnormal transactions.
At the same time, Director Chen emphasized that there are four “red line scenarios” that are strictly prohibited in the application of OpenClaw in the financial sector: core transaction execution, core risk control decision-making, sensitive data processing, and cross-domain or public network deployment. In addition, strict adherence to privatized deployment, minimum permissions, and full-chain auditability is required to prevent security and compliance risks from a detailed perspective.
Obstacles to Core Business Implementation: Three Major Shortcomings as Main Constraints
Although OpenClaw has certain application value in non-core assistance scenarios, Director Chen pointed out that due to its own security, compliance, and technical shortcomings, it is unlikely to be implemented in core financial businesses in the short term, presenting an inherent contradiction with the high demands of core financial operations.
Firstly, there are inherent flaws in the security architecture. On March 11, the Cybersecurity Threats and Vulnerabilities Information Sharing Platform of the Ministry of Industry and Information Technology released relevant alerts, clearly stating that using OpenClaw in financial transaction scenarios could lead to erroneous transactions or even account takeover risks. Director Chen interpreted this alert, stating that OpenClaw’s inherently high permissions and weak encryption architecture design severely mismatch the security requirements of banking core business systems and is riddled with vulnerabilities, making it difficult to rectify these inherent flaws in the short term.
Secondly, compliance requirements do not match the zero-tolerance standards of financial regulation. The China Internet Finance Association issued a risk alert on March 15, clearly indicating that OpenClaw’s default high system permissions and weak security configuration could easily become a breakthrough point for stealing sensitive data or illegal transaction manipulation. Director Chen stated that OpenClaw poses risks of violating sensitive data transmission and that its autonomous decision-making mode is untraceable, with unclear accountability, failing to meet the zero-tolerance requirements of financial regulation.
Finally, the technical capabilities have not reached financial business standards. Financial business requires extremely high accuracy, aiming for zero errors, but OpenClaw’s model has “hallucination” issues, making accuracy unreliable, and it lacks mature risk control and verification mechanisms; meanwhile, the cost of privatizing and reinforcing its security is extremely high, making it difficult for financial institutions to form a secure closed loop in the short term, further restricting its implementation in core businesses.
Path to Balance: Compliance First, Human-Machine Collaboration to Resolve Efficiency and Security Conflicts
In the application of AI in the financial sector, the contradiction between “efficiency improvement” and “zero tolerance for compliance” always exists. Director Chen believes that the essence of this contradiction lies in the underlying conflict between speed and security, and the key to resolving this contradiction is to adhere to the principle of “compliance first, human-machine collaboration, and gradual implementation.”
To this end, Director Chen proposed four specific balancing paths: first, strengthen top-level governance defenses, clarify AI’s supportive role, establish an AI governance committee, and develop compliance manuals and risk lists; second, enhance technical security by adopting privatized deployment and internal network isolation, implementing plugin whitelist management to ensure data security; third, adopt a gradual implementation approach, prioritizing application in non-core, low-risk scenarios, requiring human review; and fourth, improve the comprehensive process control by establishing a complete mechanism for pre-assessment, in-process circuit breakers, and post-audit to prevent various risks.
In conclusion, Director Chen summarized that the application of OpenClaw in the financial sector must be based on compliance as the bottom line and security as the premise, and in the short term, it can only be limited to non-core assistance scenarios. The key to its implementation in core businesses lies in addressing the four core issues of security architecture flaws, inadequate explainability, unclear accountability, and non-compliant data, ultimately achieving a win-win synergy between compliance and efficiency and maximizing the value of AI.