# πŸš€ LinkedIn Post Drafts for Aegis / Sentinel Here are three variations for your LinkedIn post, depending on the angle you want to take. ## Option 1: The "Technical Deep Dive" (Best for Engineering Networks) **Headline:** Building a Proactive Financial AI Agent with LangGraph & Microservices πŸ›‘οΈ I just wrapped up building **Aegis**, a "Premium Financial Terminal" powered by AI. It’s not just a chatbot; it’s a fully orchestrated agentic system. **The Tech Stack:** * **Brain:** LangGraph for stateful orchestration (Google Gemini). * **Architecture:** Microservices pattern using the **Model Context Protocol (MCP)**. * **Real-Time:** A background monitor that watches my portfolio and pushes alerts. * **Frontend:** Streamlit for that Bloomberg Terminal vibe. **How it works:** The "Orchestrator" breaks down natural language directives (e.g., "Analyze TSLA and check my exposure"). It routes tasks through a FastAPI Gateway to specialized agents: a **Web Researcher** (Tavily), a **Market Analyst** (Alpha Vantage), and a **Portfolio Manager** (Local DB). It’s been a great journey learning how to decouple AI tools from the core logic. #AI #LangGraph #Python #Microservices #FinTech #LLM #OpenSource --- ## Option 2: The "Product Showcase" (Best for General Audience) **Headline:** Meet Sentinel: My Personal AI Financial Analyst ⚑ Tired of switching between news sites, stock charts, and my brokerage app, I decided to build my own solution. Introducing **Sentinel** (Project Aegis) – an AI agent that acts as a proactive financial analyst. **What it does:** βœ… **Deep Dives:** I ask "Why is Apple down?", and it reads the news, checks the charts, and writes a report. βœ… **24/7 Monitoring:** It watches my watchlist and alerts me to price spikes or breaking news. βœ… **Portfolio Context:** It knows what I own, so its advice is personalized. The power of Agentic AI is that it doesn't just talk; it *does*. It plans, researches, and synthesizes information faster than I ever could. #ArtificialIntelligence #FinTech #Productivity #Coding #Streamlit --- ## Option 3: The "Learning Journey" (Best for Engagement) **Headline:** From "Chatbot" to "Agentic System" – My latest build 🧠 I spent the last few days building **Aegis**, and it completely changed how I think about AI applications. I started with a simple script, but realized that for complex tasks like financial analysis, a single LLM call isn't enough. You need **Agents**. **Key Lessons Learned:** 1. **State Management is King:** Using LangGraph to pass context between a "Researcher" and a "Data Analyst" is a game changer. 2. **Decoupling Matters:** I built a "Gateway" so I can swap out my News provider without breaking the whole app. 3. **Latency vs. Accuracy:** Orchestrating multiple AI calls takes time, but the depth of insight is worth the wait. Check out the architecture in the comments! πŸ‘‡ What are you building with Agents right now? #BuildInPublic #AI #Learning #SoftwareEngineering #TechTrends