🤖 Agentic AI for Engineers - Build your own Financial Advisor with MCP
Details
Retail investors and wealth management platforms are increasingly exploring AI-driven advisory tools to support portfolio construction, market analysis, and long-term investment decisions.
But building a reliable financial AI advisor requires far more than connecting an LLM to stock prices.
How do you design an Agentic AI system that can:
- Retrieve and structure financial market data,
- Reason over portfolio allocation and risk,
- Maintain state and context across interactions,
- And provide structured, explainable investment insights?
In this 60-minute interactive webinar, we’ll walk through the end-to-end design and implementation of an Agentic AI Financial Advisor, combining structured financial data with reasoning agents powered by LLMs.
The session includes a live implementation using Python, LangChain, OpenAI models, MCP protocol, and Yahoo Finance data, demonstrating how to orchestrate tools, memory, and reasoning steps into a coherent financial advisory system.
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### You’ll learn
Core Concepts of Agentic AI in Finance
How agent-based systems differ from simple chatbots:
- Tool use and financial data retrieval
- Multi-step reasoning over market signals
- State management across sessions
- Guardrails and responsible AI considerations
Using MCP Protocol for Structured Agent Orchestration
How MCP enables:
- Modular agent communication
- Tool abstraction and extensibility
- Separation of reasoning and execution layers
- Scalable financial agent architectures
Integrating Real Market Data (Yahoo Finance)
How to:
- Retrieve live and historical market data
- Structure time-series inputs for analysis
- Perform portfolio-level reasoning
- Generate explainable investment summaries
Live Demo: Building a Financial Advisor Agent
Step-by-step implementation:
- Setting up LangChain with OpenAI
- Connecting to Yahoo Finance APIs
- Implementing MCP-based tool orchestration
- Generating portfolio analysis and allocation suggestions
- Producing transparent, plain-text financial explanations
From Data to Advice: Responsible AI & Limitations
Discussion around:
- Risk, uncertainty, and hallucination management
- Compliance considerations
- Human-in-the-loop investment workflows
- Where Agentic AI adds value in wealth management
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Duration: 60 minutes
Level: Intermediate (basic Python knowledge recommended)
Tech Stack: Python, LangChain, OpenAI, MCP protocol, Yahoo Finance
URL: https://events.teams.microsoft.com/event/0dc10ae2-1ad4-4435-9239-6fd1db7be98a@d94ea0cb-fd25-43ad-bf69-8d9e42e4d175
