Skip to content
View robmesseng's full-sized avatar
🎯
Focusing
🎯
Focusing

Block or report robmesseng

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don't include any personal information such as legal names or email addresses. Markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
robmesseng/README.md

💫 About Me:

👨‍🔬 Multidisciplinary Engineer & Applied AI Developer
Welcome to my GitHub! I’m Robinson Messenger, an engineer with 8+ years of experience building real-world AI systems across agriculture, aquaculture, and logistics. I specialize in deep learning, reinforcement learning, and multimodal pipelines optimized for offline execution and field deployment.

🚀 What do I do?

  • Design and implement end-to-end ML pipelines that combine satellite imagery, multispectral drone data, sensor arrays, and technical documents.
  • Develop deep learning models (ViT, ResNet, EfficientNet) for classification, segmentation, and stress prediction in crops like maize, potatoes, and cherries.
  • Use reinforcement learning and retrieval-augmented generation (RAG) to build adaptive recommendation engines tailored to agronomic contexts.
  • Optimize models through quantization, pruning and tuning, enabling edge deployment without cloud dependency (TorchAO, ExecuTorch).
  • Simulate supply chain scenarios using historical data and regression modeling to support decision-making from field to market.

🛠️ Technologies & Stack
Python · PyTorch · Lightning · scikit-learn · MLflow · Optuna
GDAL · rasterio · GeoPandas · FAISS · LangChain · ReportLab
Docker (local only) · JupyterLab · type hints · CI/CD scripts

🌱 Field Focus
All systems are validated and deployed on real farms in southern Chile, supporting disconnected, low-resource environments in Ñuble, Biobío, La Araucanía, and Los Lagos.

🎯 Contributions
Several geospatial and ML pipeline components are open-sourced to support the applied AI and agri-tech community.


🌐 Socials:

Facebook Instagram LinkedIn X

💻 Tech Stack:

Python PyTorch scikit-learn Lightning Optuna GDAL rasterio GeoPandas FAISS LangChain MLflow Docker Jupyter

📊 GitHub Stats:



✍️

Pinned Loading

  1. MLOp_2.0 MLOp_2.0 Public

    Proyecto de predicción de imagen mediante Deep Learning, control de versiones con git, control de data con DVC, exportación de modelos con ONNX, uso de FastAPI y uso de Docker para paquetizar. Desp…

    Jupyter Notebook

  2. Forecasting_Liver_Cirrhosis_Outcomes Forecasting_Liver_Cirrhosis_Outcomes Public

    This project focuses on utilizing clinical data to predict survival outcomes in patients with liver cirrhosis. Explore the predictive modeling techniques employed to enhance patient care and treatm…

    Jupyter Notebook

  3. Wine_classification Wine_classification Public

    This repository contains code and resources for analyzing the Wine Quality Dataset, focusing on physicochemical and sensory variables for classification and regression tasks. Explore the code and i…

    Jupyter Notebook

  4. DataScienceWebConsulting DataScienceWebConsulting Public

    This repository contains the codebase for a dynamic web application showcasing data science consulting services for agriculture and aquaculture. Built with HTML, CSS, and JavaScript, the project fe…

    HTML