30 mar
|
gambooza I Fighting Food Waste
|
Comunidad de Madrid
30 mar
gambooza I Fighting Food Waste
Comunidad de Madrid
Postúlate en Kit Empleo: kitempleo.es/empleo/5vrp2r
Company DescriptionGambooza is a growing AI startup based in Madrid, building computer vision systems to help restaurants reduce food waste, tackle operational inefficiencies, and improve their long-term viability.We're tackling a massive, overlooked problem: inefficiencies and food waste in food service. Our technology brings visibility into kitchen operations using AI, helping operators reduce costs and environmental impact.We're an early-stage company, already backed by top programs like Lanzadera, Madrid Food Innovation Hub, Basque Culinary Center, and EU Tech Funds, and recognised in competitions such as the Future Gastronomy Startup Competition and Premio Emprendimiento Digital (Comunidad de Madrid).We're now entering a scaling phase, moving from pilots to real deployments — and building the infrastructure to support it.You will join as a key early member of the tech team, working closely with the founders and acting as the second core technical profile, with ownership over data and ML infrastructure.We're looking for someone with around 3+ years of experience in data engineering, MLOps, or related roles, comfortable working in early-stage environments and taking ownership end-to-end.If you want to work on real AI systems in production, own critical infrastructure, and help shape a company from the ground up, this is that kind of role.
RoleWe're looking for a Data Engineer & MLOps Engineer to own and scale the data and ML infrastructure behind our platform.This is not a maintenance role — you'll be building systems from scratch, making key architectural decisions, and working directly on production AI pipelines connected to real-world environments (kitchens, cameras, edge devices).You will be responsible for everything that happens between raw data and reliable AI in production.
What you ́ll doDesign and build end-to-end data pipelines (from edge devices to cloud)Own the infrastructure that powers our computer vision systems in productionDeploy, version,
and monitor machine learning models at scaleBuild robust MLOps workflows (training → evaluation → deployment → monitoring)Ensure data quality, reliability, and observability across the platformOptimize pipelines for performance, scalability, and costWork with large-scale image data and real-time ingestion systemsSupport the integration and improvement of machine learning and computer vision models (data preparation, evaluation, and iteration loops)Contribute to improving model performance in production through better data, monitoring, and feedback pipelinesMake foundational decisions on architecture, tooling, and infrastructure
What we are looking forStrong experience with Python and data-intensive systemsExperience building and maintaining production data pipelinesSolid understanding of cloud infrastructure (GCP preferred, AWS also valid)Hands-on experience with Docker and production deploymentsFamiliarity with MLOps concepts (model lifecycle, monitoring, reproducibility)Experience with workflow orchestration tools (Airflow, Prefect, or similar)Strong engineering mindset: you care about reliability, scalability, and clean systemsComfortable working in ambiguity and taking ownership of problems end-to-end
Strong PlusExperience deploying ML models in productionExperience with computer vision pipelinesFamiliarity with Kubernetes or similar orchestration systemsExperience with tools like MLflow, Weights & Biases, or feature storesExperience working with streaming or near real-time data systems
What makes this role differente?You'll work on real AI systems in production, not experimentsYour work will directly impact how much food is wasted every dayYou'll have high ownership over critical infrastructure from early stageYou'll help define how our data and ML platform is built from scratchYou'll be part of a small, high-impact team, where things move fast and ship often
Practical detailes & PerksFull-time roleHybrid setup (Madrid, ~2 days/week in office)Spanish requiredFlexible, outcome-driven work environment (we care about results, not hours)Competitive salary + phantom sharesHigh ownership and autonomy from day oneFlat organization with a small, highly talented team
Postúlate en Kit Empleo: kitempleo.es/empleo/5vrp2r
📌 Data engineer & ml ops (Comunidad de Madrid)
🏢 gambooza I Fighting Food Waste
📍 Comunidad de Madrid