Spaces:
Running
🚀 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 🛡️
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: ✅ Deep Dives: I ask "Why is Apple down?", and it reads the news, checks the charts, and writes a report. ✅ 24/7 Monitoring: It watches my watchlist and alerts me to price spikes or breaking news. ✅ 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:
- State Management is King: Using LangGraph to pass context between a "Researcher" and a "Data Analyst" is a game changer.
- Decoupling Matters: I built a "Gateway" so I can swap out my News provider without breaking the whole app.
- 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! 👇
What are you building with Agents right now?
#BuildInPublic #AI #Learning #SoftwareEngineering #TechTrends