Agentforce chat window showcasing an advisor requesting the agent do a task out of compliance but the Agent declines and suggests an alternative.

The AI Stewardship Imperative: Addressing Key AI Security & Compliance Concerns in Financial Services

In financial services, trust isn’t just a core value; it is the currency we trade in.

82 %
intend to integrate AI agents.*
Organizations plan to integrate within three years.
14 %
have implemented AI agents at scale.*
Organizations have yet to scale implementations.

Capgemini Research Institute, “The Rise of Agentic AI” (July 2025).

78 %
report AI-powered threats (1)
CISOs that say AI-powered threats are now having a significant impact on their organizations.
100 %
of data is protected with Salesforce (2)
Salesforce zero-retention architecture protects all data.

(1) Darktrace, "State of AI Cybersecurity Report" (2024). (2) Salesforce Agentforce & Einstein Generative AI Security White Paper (EN) June 2025

26 %
increase in productivity (1)
Financial Services employees are more productive with AI.
1.9 x
more likely to exceed quota (2)
Sales teams close deals faster with AI.

(1) Salesforce “AI in Financial Services” Report (2025). (2) Salesforce State of Sales (6th Ed.) 2024.

1] Gartner, “2025 CIO and Technology Executive Survey,” October 2024. [2] Capgemini

Research Institute, “The Rise of Agentic AI,” July 2025. [3] Salesforce Trusted AI Principles

[4] Agentforce Privacy FAQ: Data Masking & Retention [5] Agentforce & Einstein Generative

AI Security Guide

Salesforce has made a good faith effort to provide you with responses to your request that are accurate as of the date of the response and within our knowledge. Because our procedures and policies change from time to time, we cannot guarantee that the answers to the questions you have asked will remain the same over time. The information provided here is for informational purposes only, and the rights and responsibilities related to your use of our services will be set forth solely in an agreement (a Main Services Agreement and/or a Professional Services Agreement) that will be mutually agreed upon, or if you are an existing customer in the applicable Main or Master Services Agreement and/or Professional Services Agreement agreed by the parties.

This article is for informational purposes only. This article features products from Salesforce, which we own. We have a financial interest in their success, but all recommendations are based on our genuine belief in their value.

AI Stewardship in Financial Services FAQ

It is a secure AI architecture built into the Salesforce Platform that resolves prompts and outputs within your boundary, ensuring data privacy, security, and safety before interacting with any LLM. 

It is a secure AI architecture built into the Salesforce Platform that resolves prompts and outputs within your boundary, ensuring data privacy, security, and safety before interacting with any LLM. 

We enforce a zero data retention policy where no customer data is stored by third-party model providers or used to train their foundational models.

Agentforce is not a bolt-on application but a metadata-driven layer of the Salesforce Platform that unifies Data Cloud, Flow, and MuleSoft to execute actions within your existing trust boundary.

Agents inherit your existing Salesforce role-based access controls (RBAC) and sharing rules. We also provide products to embed compliance controls directly into the AI agent’s workflow, enforcing adherence to regulatory policies and procedures, while every interaction is logged in a comprehensive Audit Trail stored in Data Cloud. 

The Trust Layer employs real-time scoring mechanisms to detect toxicity and applies dynamic grounding to anchor answers in your trusted data, minimizing hallucinations

The Agentforce Development Lifecycle (ADLC) follows a rigorous five-stage process — ideation, configuration, testing (including red-teaming), deployment, and monitoring — designed to treat prompts and agent actions as version-controlled code.

We leverage the Hyperforce architecture to provide elasticity and redundancy, while Data Cloud handles high-volume data ingestion and retrieval to ground agents at enterprise scale without performance degradation.

The first place to start is our Salesforce Well Architected Framework here which forms part of our overall Architecture Center here. You can also dive into the Agentforce Development Lifecycle in this page and the Agentforce Trust Layer here.