LSEG and Microsoft have taken their multi‑year strategic partnership a decisive step further by opening LSEG‑licensed financial data to agentic AI built inside Microsoft Copilot Studio, using an LSEG‑managed Model Context Protocol (MCP) server to deliver secure, low‑latency access to market data and analytics directly into Microsoft 365 Copilot workflows.
The collaboration builds on a 10‑year commercial agreement announced in December 2022 that committed LSEG to a long‑term migration and co‑development plan with Microsoft’s cloud and AI platform. That original deal included a multi‑billion‑dollar cloud spend commitment and strategic co‑investment to transform LSEG’s data platform and Workspace product into a cloud‑native, AI‑ready environment. The latest announcement—formally disclosed in mid‑October 2025—focuses on making LSEG content and analytics consumable by agentic AI via the Model Context Protocol, enabling customers to build, deploy and scale bespoke AI agents in Copilot Studio and use them inside Microsoft 365 Copilot.
This move ties together three trends that are reshaping financial technology: the commoditization of high‑quality market data as a programmable asset, the rise of agentic AI that can perform multi‑step tasks autonomously, and the emergence of protocols such as MCP that standardize how models access external tools and knowledge sources.
Key technical characteristics of MCP in practice:
Competitors and adjacent dynamics to watch:
Adoption will depend on several factors:
The strategic strengths are clear: trusted data, enterprise governance, and workflow integration. Yet meaningful risks remain around licensing, security, provenance and operational resilience—matters that will determine whether agentic workflows become reliably productive or create new compliance headaches.
For pragmatic teams, the path forward is methodical: start with narrow, measurable pilots; invest in governance, observability and security; and treat agents as software systems that must be audited, versioned and matured. If executed carefully, this initiative has the potential to redefine how financial professionals discover, analyze, and act on market intelligence—moving from passive dashboards to proactive, situationally aware agents that augment human judgement while respecting the demanding governance of financial markets.
Source: The TRADE LSEG and Microsoft extend multi-year partnership - The TRADE
Background
The collaboration builds on a 10‑year commercial agreement announced in December 2022 that committed LSEG to a long‑term migration and co‑development plan with Microsoft’s cloud and AI platform. That original deal included a multi‑billion‑dollar cloud spend commitment and strategic co‑investment to transform LSEG’s data platform and Workspace product into a cloud‑native, AI‑ready environment. The latest announcement—formally disclosed in mid‑October 2025—focuses on making LSEG content and analytics consumable by agentic AI via the Model Context Protocol, enabling customers to build, deploy and scale bespoke AI agents in Copilot Studio and use them inside Microsoft 365 Copilot.This move ties together three trends that are reshaping financial technology: the commoditization of high‑quality market data as a programmable asset, the rise of agentic AI that can perform multi‑step tasks autonomously, and the emergence of protocols such as MCP that standardize how models access external tools and knowledge sources.
Overview: what changed and why it matters
- LSEG will make licensed data and analytics available through an LSEG‑managed MCP server, enabling agentic AI built in Microsoft Copilot Studio to call LSEG data as tools and knowledge sources.
- Agents created in Copilot Studio can be deployed into Microsoft 365 Copilot, allowing the AI to operate inside the everyday productivity surface used across investment banks, asset managers, and corporate finance teams.
- The integration begins in a phased rollout, starting with LSEG Financial Analytics, with the intent to expand to additional datasets and capabilities over time.
- The aim is to reduce the time, cost and complexity of integrating data, analytics, and agentic AI into front‑office and research workflows.
Technical primer: MCP, Copilot Studio, and agentic AI
What is the Model Context Protocol (MCP)?
The Model Context Protocol is an open, tool‑orientated specification designed to let language models and agentic systems discover, describe and call external services (knowledge servers, APIs, actions) in a standardized way. An MCP server publishes a catalog of “tools” (data queries, actions, document stores) with names, inputs, outputs and metadata. Agent platforms such as Copilot Studio can then dynamically discover and invoke those tools as part of an agent’s reasoning or orchestration flow.Key technical characteristics of MCP in practice:
- MCP servers can provide descriptive metadata for actions and datasets so agents understand how to use them.
- Connectors expose MCP servers into agent development environments as first‑class “actions” that are automatically updated when the backend changes.
- Transport layers like Server‑Sent Events (SSE) are used to stream updates and keep agent descriptions current without manual maintenance.
- MCP supports interoperability: a single MCP server can serve multiple agent ecosystems and be used by different vendors’ agent runtimes.
How Copilot Studio makes MCP useful
Microsoft’s Copilot Studio is a low‑code/no‑code environment for building agentic workflows and orchestration. With MCP support, Copilot Studio can:- Automatically import LSEG tools published on an MCP server into an agent’s action palette.
- Keep tool definitions in sync as LSEG updates APIs or dataset schemas.
- Combine LLM prompts, guardrails, and connectors to deliver governed, auditable agents for production use inside Microsoft 365 Copilot.
What “agentic AI” means in this context
Agentic AI refers to systems that can perform multi‑step tasks, call external tools, and carry out autonomous actions within defined constraints—rather than relying on a single LLM prompt/response. In finance, agentic AI can do things such as:- Assemble and validate a go‑to‑market pitchbook using real‑time prices, earnings, and comparable transactions.
- Monitor a watchlist and trigger trade workflows or compliance checks.
- Run scenario analyses combining market factors, risk models, and institutional rules.
What LSEG is delivering (and the phased rollout)
LSEG’s approach for this initial phase centers on the following deliverables:- An LSEG‑managed MCP server that publishes LSEG Financial Analytics tools and datasets for use in Copilot Studio agents.
- Connectors and SDK support to let customers integrate LSEG MCP endpoints into their own agent environments and third‑party systems.
- Governance and security controls to support enterprise features like VNet integration, authentication, and data governance when using MCP connectors.
Business and product context: how this fits into LSEG’s roadmap
This announcement ties closely to LSEG’s strategic modernization:- Workspace, LSEG’s cloud‑native data and workflow product, is being positioned as the primary end‑user surface for LSEG content and was designed to be interoperable with cloud and productivity suites.
- LSEG has been consolidating execution and front‑office capabilities—examples include embedding execution systems into Workspace to minimize context switching between data, research and trading tools.
- The multi‑year Microsoft relationship includes both technology migration to Azure and co‑development of cloud‑native analytics; the cloud spend commitment established in the earlier 10‑year deal underscores the commercial scale of that migration.
Strategic strengths: what makes this partnership powerful
- Trusted data meets modern AI: LSEG brings curated, licensed datasets and analytics that have been the backbone of institutional workflows for years. Coupling that with Microsoft’s Copilot and Azure AI stack gives customers an enterprise‑grade path to building practical agents.
- Lower integration friction: MCP abstracts integration complexity. Firms don’t need point‑to‑point connectors for each agent or app—the MCP server becomes a reusable bridge.
- Governance and enterprise controls: Copilot Studio’s governance features and Microsoft’s security controls (VNet, DLP, authentication) align with the risk posture required by regulated financial firms.
- Workflow first: Deploying agents into Microsoft 365 Copilot means agents arrive where knowledge workers already operate—email, Excel, PowerPoint and chat—reducing adoption friction.
- Speed to market: Prebuilt MCP connectors and the ability to expose updates to agents automatically can materially shorten development cycles for production agents.
Crucial risks and unknowns
While the proposition is attractive, there are several important risks and practical questions that require sober assessment:- Licensing and usage boundaries: Using LSEG‑licensed data inside agent prompts or for model fine‑tuning raises licensing and entitlements questions. Firms must ensure agent usage adheres to LSEG license terms and does not inadvertently expose paid content to external LLM vendors or public outputs.
- Vendor lock‑in and commercial exposure: The tie‑up deepens LSEG‑Microsoft coupling. While this can accelerate innovation, it may constrain customers who want multi‑cloud or vendor‑diverse deployments. The long‑term cloud spend commitment by LSEG itself highlights the commercial scale of the relationship.
- Data residency and regulatory compliance: Financial institutions face strict rules on where data resides and how it is processed. MCP servers and Copilot integrations must support regionally‑compliant hosting, audit trails and regulator‑friendly controls.
- Security vectors unique to agents: Introducing MCP actions and agent orchestration creates new attack surfaces—credential exposure, token theft, prompt injections and unauthorized tool use. Firms need hardened controls across connectors, secrets management and runtime monitoring.
- Model hallucinations & provenance: When agents produce recommendations or synthesized content that combines LSEG data and LLM reasoning, firms need robust provenance and explainability to defend decisions, especially in regulated contexts like investment advice.
- Operational resilience and latency: Real‑time trading or execution workflows impose tight SLAs. Adding additional network hops—agent runtime → Copilot → MCP → LSEG APIs—creates dependencies that must be monitored for latency and failure modes.
- Governance complexity across life cycle: Agents evolve: prompts change, tools are updated, and models are upgraded. Keeping governance, testing and validation aligned across all those change vectors is a nontrivial operational challenge.
Practical guide: how financial IT and workflow teams should approach MCP + Copilot Studio integration
Below is a pragmatic, step‑by‑step checklist for teams planning a pilot or production deployment that combines LSEG data with Microsoft agentic tooling.- Define the business use case and success metrics
- Pick a narrowly scoped workflow (e.g., earnings‑season research assistant, pre‑trade risk checklist, pitchbook assembler).
- Define KPIs: time saved, error reduction, number of human escalations, time to first trusted recommendation.
- Build a data and entitlements map
- Identify required LSEG datasets, their licensing terms, and any redistribution restrictions.
- Determine who in the organisation should have access to each dataset and implement role‑based controls.
- Establish secure MCP connectivity
- Deploy an LSEG‑managed MCP connector according to bank security policy, with VNet integration and private endpoints.
- Use enterprise authentication (OAuth / Azure AD) and short‑lived tokens for runtime calls.
- Create governance‑first agents in Copilot Studio
- Use Copilot Studio’s governance controls to enforce prompt policies, escalation rules, and data access boundaries.
- Version agents and maintain an audit trail of prompt updates, tool changes and training data.
- Test with shadow and canary deployments
- Start with read‑only queries and synthetic stress tests before allowing actioning (e.g., trade creation).
- Run a human‑in‑the‑loop stage where agents generate recommendations that are validated by subject matter experts.
- Instrument and monitor continuously
- Instrument usage metrics, latency, error rates, and model output drift.
- Track provenance for each agent response (which LSEG datasets were used, what steps the agent executed).
- Harden against adversarial inputs
- Implement protections against prompt injection, ensure output sanitization, and do red‑team testing of agents.
- Enforce least‑privilege for actions that can trigger downstream systems.
- Plan for lifecycle and cost management
- Include plans for model updates, connector schema evolution, and cloud cost monitoring to manage variable consumption.
Architecture patterns and implementation notes
- Use a layered architecture:
- Data layer: LSEG MCP server (managed) exposing curated toolset.
- Integration layer: Microsoft connectors and Copilot Studio agent runtime.
- Application layer: Microsoft 365 Copilot surfaces and internal apps (Excel, PowerPoint, Teams).
- Governance layer: Identity, DLP, audit logging, compliance workflows.
- Security controls to prioritize:
- VNet isolation for MCP connectors and private endpoints.
- Managed identities and key vaults for secrets.
- Data loss prevention policies that govern what agents may surface externally.
- Latency considerations:
- For front‑office or execution workflows, keep agent logic lightweight where possible and avoid excessive round trips to external APIs.
- Cache commonly used, non‑sensitive data at the edge to reduce latency, while respecting licensing.
Governance and compliance playbook
- Create an internal “agent review board” of business, risk, compliance and SRE representatives to vet agents before deployment.
- Mandate model cards and tool documentation for every MCP tool exposed to agents.
- Maintain immutable logs linking agent outputs to data sources, actions taken and human approvals.
- Require regular audits of agent prompts and policies, and maintain an incident response plan for misbehaving agents.
Market implications and competitive landscape
This integration positions LSEG to monetize its data as an actionable, agent‑ready asset while accelerating Microsoft’s push to make Copilot Studio the enterprise hub for agentic applications. For customers, the proposition is attractive: authoritative market data inside the same Copilot environment that employees use for analysis and communication.Competitors and adjacent dynamics to watch:
- Other market data vendors will accelerate their own agent‑friendly exposures or seek similar partnerships with cloud providers.
- Cloud providers and AI platforms are promoting their own agent standards and connectors—firms will need to manage multi‑vendor interoperability and guard against proprietary lock‑in.
- Regulators and auditors will focus on provenance and data usage, which will influence how widely banks adopt agentic workflows for client‑facing or regulated decisions.
Early signals and adoption considerations
Initial customer pilots are already underway to build first agents using Copilot Studio and LSEG data. These early projects typically focus on non‑mission‑critical workflows—research assistants, reporting automation, pitchbook generation—where agents can demonstrate productivity gains while limiting operational risk.Adoption will depend on several factors:
- Clear demonstration of ROI in pilot use cases.
- The maturity of governance tooling inside Copilot Studio and third‑party observability for agents.
- Simplicity of entitlements and licensing for LSEG datasets consumed by agents.
- Firms’ comfort with cloud residency, cross‑border data flows and regulator engagement.
Practical checklist for Windows and enterprise IT teams
- Ensure Microsoft 365 licensing for Copilot and Copilot Studio is in place and compatible with your security posture.
- Validate Azure tenancy and network architecture to support VNet‑integrated MCP connectors.
- Prepare a data‑entitlement matrix for LSEG content and align it with Azure AD groups.
- Run internal compliance reviews with legal to confirm permitted uses of licensed content inside agent outputs.
- Set up logging and SIEM integration to capture agent activity and MCP connector calls.
- Create a sandbox environment for red‑teaming and adversarial testing before production rollout.
Conclusion
The LSEG‑Microsoft extension to expose LSEG content via an LSEG‑managed MCP server into Copilot Studio and Microsoft 365 Copilot is a consequential development for financial IT and trading workflows. It turns authoritative market data into a first‑class toolset for agentic AI, lowering integration costs and promising faster, more contextual insights inside the productivity surfaces that traders, researchers and bankers use every day.The strategic strengths are clear: trusted data, enterprise governance, and workflow integration. Yet meaningful risks remain around licensing, security, provenance and operational resilience—matters that will determine whether agentic workflows become reliably productive or create new compliance headaches.
For pragmatic teams, the path forward is methodical: start with narrow, measurable pilots; invest in governance, observability and security; and treat agents as software systems that must be audited, versioned and matured. If executed carefully, this initiative has the potential to redefine how financial professionals discover, analyze, and act on market intelligence—moving from passive dashboards to proactive, situationally aware agents that augment human judgement while respecting the demanding governance of financial markets.
Source: The TRADE LSEG and Microsoft extend multi-year partnership - The TRADE