Get in Touch

Edgardo Ponce

Architect of Intelligent Systems

Freelance developer specialized in LLMs, LangChain, RAG pipelines, and intelligent automation.

I build software that solves real problems without over-engineering.

I help businesses evolve from paper-based processes to intelligent cloud systems.

My main stack includes:

LangChain
LangGraph
LangSmith
Ollama
Hugging Face
PyTorch
FastAPI
ChromaDB
N8N
Azure AI

Thinking About Using AI in Your Business?

I help you identify real opportunities, estimate costs, and create a clear action plan before you invest a single cent.

Do any of these questions sound familiar?

You hear about AI everywhere, but you don't know where to start in your company.

You're worried about implementation costs and whether the investment will truly be worth it.

You're not sure which of your business problems is the ideal candidate for an AI solution.

You need a clear plan to avoid common mistakes and costly experiments.

A Strategic Advisory to Start on the Right Foot

Strategic Opportunity Analysis
Together, we will identify the key pain point or challenge in your business that AI can realistically solve, ensuring your investment focuses on generating real value.
Cost Projection and Return on Investment (ROI)
You will receive a clear breakdown of potential costs, both in API usage (OpenAI, Gemini, etc.) and infrastructure, so you understand the total investment required.
Implementation Roadmap
I will provide a strategic step-by-step plan, with technology recommendations and clear phases, to guide your project from idea to a successful launch.

Areas of Expertise

Defining my capabilities across three clear and technical service pillars.

Autonomous AI Agents

I design and develop sophisticated AI agents capable of reasoning, planning, and executing complex multi-step tasks. Powered by LangGraph and serverless backend for maximum reliability and efficiency.

LangGraph
LangChain
Autonomous Agents
Automation
Python
Scalable Cloud AI Infrastructure

From successful prototype to production solution: I build cost-effective and highly scalable serverless infrastructure on Google Cloud, offering complete transparency with LangSmith for monitoring and debugging.

Google Cloud
Serverless
LangSmith
Terraform
Docker
Custom API Interfaces and Endpoints

An AI is only as good as its interface: I deliver the AI engine through a robust FastAPI endpoint and can build custom web interfaces (using Vue.js) for testing, validation, or final user interaction.

API
FastAPI
Vue.js
Headless AI
Integration

Functional AI Prototype in Two Weeks

My clear, predictable, and client-focused process.

1

Step 1: Scope Definition

Together we define a clear goal and measurable objective for the prototype.

2

Step 2: Active Collaboration

We work together as partners. I maintain constant and transparent communication throughout the development.

3

Step 3: Solution Delivery

I deliver a real and functional solution, not just a demonstration. A system you can test and validate with real data.

Case Studies

Practical demonstrations of my skills with technical analysis.

Product Catalog Assistant with Vector Search
mini-store-qa-demo

The Challenge

Enable users to ask natural language questions about a product catalog in JSON format, obtaining accurate and contextual answers.

The Architectural Solution

I implemented a RAG (Retrieval-Augmented Generation) pipeline. Catalog data is processed and stored as vectors in ChromaDB. User questions are converted into embeddings and used to search for the most relevant information fragments in the vector database. These fragments are injected into a prompt for an LLM (via Ollama), which generates a coherent response based on the data.

Tech Stack

Python
ChromaDB
Ollama
FastAPI
Docker
Intelligent Messaging Orchestrator
pyqt-ai-chat-runner

The Challenge

Create an unattended system capable of receiving messages from a server, processing them with local AI logic, and sending responses, all controlled through a simple graphical interface.

The Architectural Solution

I developed a two-component application: a PyQt5 GUI that acts as a control panel, and a background daemon that runs the main loop. The daemon connects to the server, processes incoming messages with a local LLM through Ollama and ChromaDB, and manages response sending. This decoupling ensures that AI logic can run continuously without blocking the user interface.

Tech Stack

PyQt5
Daemon
Ollama
ChromaDB

Complete Technical Profile

My experience, tech stack, and continuous training.

AI & Machine Learning

LangChain
LangGraph
LangSmith
Ollama
Hugging Face
PyTorch
FastAPI
ChromaDB
N8N
Azure AI

Backend & APIs

Python
PHP
Node.js
Laravel
Flask
Sanic
Magento

Frontend & Design

TypeScript
JavaScript
Vue
React
Tailwind CSS
Vite
Figma

Infrastructure & DevOps

AWS
Google Cloud
Docker
Kubernetes
Terraform
Linux

Databases

MySQL
PostgreSQL
MongoDB
BigQuery

Let's Talk About Your Technical Challenge

If you're looking for a collaborator to design and build a complex and well-architected software solution, I'd be interested in learning the details. I'm available to discuss the technical feasibility and strategic approach of your project.

Location

San Rafael, Mendoza, Argentina

Edgardo Ponce | Architect of Intelligent Systems