--- title: AndesOps AI emoji: 🧠 colorFrom: red colorTo: gray sdk: docker pinned: false app_port: 7860 --- # AndesOps AI: Agentic Tender Intelligence [![AMD Powered](https://img.shields.io/badge/AMD-Powered-ED1C24?style=for-the-badge&logo=amd&logoColor=white)](https://www.amd.com/en/developer/resources/ai-developer.html) [![ROCm](https://img.shields.io/badge/ROCm-Optimized-blue?style=for-the-badge)](https://rocm.docs.amd.com/) [![Next.js](https://img.shields.io/badge/Next.js-14-black?style=for-the-badge&logo=next.js)](https://nextjs.org/) [![FastAPI](https://img.shields.io/badge/FastAPI-Framework-009688?style=for-the-badge&logo=fastapi)](https://fastapi.tiangolo.com/) **AndesOps AI** is a state-of-the-art business intelligence platform designed to transform the complex landscape of public procurement in Chile (Mercado Público) into actionable strategic advantages. Built for the **AMD Developer Hackathon**, it leverages a sophisticated **Agentic Multi-Agent System** to analyze technical and administrative bases with unprecedented speed and precision. --- ## 🚀 The Challenge Public bidding processes are notoriously document-heavy, requiring legal, technical, and strategic expertise to evaluate a single opportunity. Companies often miss deadlines or overlook critical risks buried in 100+ page PDFs. ## 🧠 The Agentic Solution: "The Virtual Board of Experts" AndesOps AI moves beyond simple chatbots. It deploys a **coordinated panel of AI agents** that work in parallel to evaluate every tender: - ⚖️ **Legal & Compliance Agent**: Scans for administrative hurdles, critical deadlines, and compliance gaps. - 🏗️ **Technical Architect Agent**: Maps tender requirements to the company’s specific tech stack and experience. - 📊 **Strategy & ROI Agent**: Analyzes competition, calculates potential ROI, and defines a "Winning Strategy". - 🧠 **The Orchestrator**: Consolidates agent reports into a final **Strategic Fit Score** and an executive summary. --- ## 🛠️ Architecture & AMD Integration AndesOps AI is engineered to scale using high-performance compute: - **Hardware Acceleration**: Optimized to run on **AMD Instinct™ MI300X GPUs** via the **AMD Developer Cloud**. - **Software Stack**: Built on **ROCm™** for high-throughput inference, allowing simultaneous processing of multiple massive tender documents without bottlenecks. - **Backend**: **FastAPI** with asynchronous task execution for parallel agent processing. - **Frontend**: **Next.js 14** with a premium, enterprise-ready UI/UX. ### **Modern High-Performance Architecture** AndesOps AI is built for massive document analysis using a tiered approach that prioritizes hardware-accelerated inference. ```mermaid graph TD %% Node Styles classDef client fill:#0ea5e9,stroke:#fff,stroke-width:1px,color:#fff; classDef logic fill:#8b5cf6,stroke:#fff,stroke-width:1px,color:#fff; classDef hardware fill:#ec4899,stroke:#fff,stroke-width:2px,color:#fff; classDef data fill:#64748b,stroke:#fff,stroke-width:1px,color:#fff; %% Client Tier subgraph Client_Tier [Enterprise UI Layer] UI["AndesOps AI Dashboard
Next.js 14 + Tailwind CSS"] UI --- |Real-time Stream| WS[WebSocket / API] end %% Orchestration Tier subgraph Orchestration_Tier [Multi-Agent Consensus War Room] WS --> AgentManager[Consensus Orchestrator] AgentManager --> Agent1[⚖️ Dra. Legal] AgentManager --> Agent2[🛠️ Ing. Técnico] AgentManager --> Agent3[📈 Sra. Estrategia] end %% Compute Tier subgraph Compute_Tier [AMD HIGH-PERFORMANCE COMPUTE] Agent1 & Agent2 & Agent3 --> |Direct ROCm Link| ROCm[ROCm™ 6.1 Stack] ROCm --> vLLM[vLLM Inference Server] vLLM --> MI300X["AMD Instinct™ MI300X
(Private Compute Node)"] end %% Data Tier subgraph Data_Tier [Intelligence & Data] AgentManager -.-> MP[Mercado Público API] AgentManager -.-> Scraper[Intelligent Scraper] MP & Scraper --> DB[(SQL Persistence)] end %% Apply Styles class UI,WS client; class AgentManager,Agent1,Agent2,Agent3 logic; class ROCm,vLLM,MI300X hardware; class MP,Scraper,DB data; ``` --- ## 💻 Setup & Installation ### **Prerequisites** - Python 3.10+ - Node.js 18+ - AMD ROCm (Optional for local acceleration) ### **Backend Setup** ```powershell cd backend python -m venv .venv .\.venv\Scripts\Activate.ps1 pip install -r requirements.txt uvicorn app.main:app --reload --port 8000 ``` ### **Frontend Setup** ```powershell cd frontend npm install npm run dev ``` ### **Environment Variables** Copy `.env.example` to `.env` and configure: - `GEMINI_API_KEY`: For LLM orchestration (or your AMD local endpoint). - `MERCADO_PUBLICO_TICKET`: For real-time tender syncing. --- ## 📈 Business Value - **Efficiency**: Reduce manual analysis time by over 90%. - **Risk Mitigation**: Early detection of legal traps and technical gaps. - **Competitiveness**: Generate high-quality proposal drafts aligned with specific tender scoring criteria. ## 📄 License MIT License - Developed for the **AMD Developer Hackathon 2026** with ❤️ by the AndesOps Team, powered by [REW](https://www.rew.cl).