Víctor G. G. Quiroga

AI Engineer | Python | LLM Systems | RAG | Data Automation

AI Engineer with 10+ years building data-driven systems, automation workflows, and production-grade ML pipelines across enterprise, fintech, and retail environments. Focused on LLM-powered applications, intelligent automation, predictive modeling, and scalable data platforms. Strong background in Python, distributed systems, and turning complex data into actionable business decisions.

Professional Experience

AI Engineer | LLM Systems | Data Automation
Independent AI & Data Consultant
Jul 2025

Delivered enterprise AI and data solutions for airline and retail clients, including GateGroup and Grupo AXO (Calvin Klein).

  • Architected Azure-based data pipelines and automation workflows for enterprise operations, improving SLA reliability and reducing manual work.
  • Implemented enterprise data governance and cataloging workflows using Microsoft Purview across SAP and distributed systems.
  • Designed and deployed an LLM-powered retail intelligence system for Grupo AXO (Calvin Klein), integrating multimodal data from store visits, promoter activity, inventory, events, and images.
  • Reduced visual merchandising photo reporting workflows from hours to seconds through AI-driven automation.
  • Built inventory reconciliation and anomaly detection pipelines, reducing shrinkage by 20% and identifying root causes such as theft, inventory mismatch, and missing labels.
  • Developed demand forecasting and trend detection models across products, colors, stores, and regional hot/warm/cold zones, reducing analysis time from days to seconds.
  • Enabled natural language interaction with analytics and AI workflows through a WhatsApp interface for non-technical business users.
Senior Consultant
Deloitte
Jul 2023 - May 2025

Worked across enterprise data, cloud automation, and AI experimentation initiatives for clients including Toyota, Boehringer Ingelheim, and Nestlé.

  • Designed and automated infrastructure workflows across 1,500+ cloud resources using AWS, Terraform, and serverless architectures.
  • Improved IT governance efficiency by 30% through automated tagging across 2,000+ AWS assets.
  • Built automated deployment workflows for Python OCR pipelines using GitHub Pipelines, Serverless, and CloudFormation.
  • Implemented secure data pipeline components and encryption middleware for enterprise supply chain data platforms.
  • Resolved 11 high-to-critical security issues across production and non-production cloud environments.
  • Contributed to AI-driven experimentation pipelines in Deloitte's Azure Hackathon, helping achieve 20x acceleration in R&D simulations using Azure Quantum ML.
Data Engineer & Data Scientist
albo
Feb 2021 - Jun 2022

Built data, ML, and compliance systems in a high-growth fintech environment.

  • Designed high-throughput decision systems with theoretical scaling up to 10,000 transactions per second using PySpark ML and microservices.
  • Prevented a potential 20x portfolio loss by combining LSTM forecasting, Monte Carlo simulation, statistical modeling, and inventive feature engineering under constrained tooling conditions.
  • Produced reproducible modeling outputs and technical evidence for regulatory validation in a pre-LLM tooling environment.
  • Automated regulatory reporting workflows covering 19 CNBV reports by coordinating cross-functional engineering and data teams.
  • Built data quality and schema inference frameworks and helped recover 99.98% of customer data during a production outage incident.
Senior Consultant
Indra (BBVA México)
Feb 2020 - Feb 2021

Worked on enterprise data governance, customer intelligence, and predictive modeling initiatives.

  • Productionized CRM intelligence data models using PySpark, enabling compatibility with enterprise marketing automation workflows in 3 months.
  • Developed alternative credit scoring models using non-traditional data sources such as behavioral and web-derived signals, applying feature engineering and machine learning techniques.
  • Built scalable data pipelines supporting customer intelligence and enterprise analytics use cases.
  • Co-led a semifinalist team in Indra's 2020 DataHack, developing a portfolio rationalization solution using clustering, PySpark, and Azure-based analytics infrastructure.

Education

B.Sc. in Actuarial Science
UNAM Facultad de Ciencias
Aug 2011 - Aug 2016

Technical Skills

AI & LLM Engineering
LLM ApplicationsRAG SystemsEmbeddingsVector SearchPrompt EngineeringAI Workflow DesignAI AgentsModel EvaluationFeature Engineering
Programming
PythonSQLScalaJavaScriptNode.js
Data & Machine Learning
PySparkPredictive ModelingLSTMMonte CarloForecastingAnomaly DetectionClusteringData Pipelines
Cloud & Platform Engineering
AzureAWSGCPTerraformServerlessDatabricksSnowflakeMicrosoft PurviewCloudFormation
Workflow Automation & Enterprise Systems
Automation WorkflowsAPI IntegrationsSAPOCR PipelinesData GovernanceDistributed Systems

Key Projects

AI Trading Signal System
Mar 2025 - Jun 2025

Machine learning-based signal system for leveraged intraday trading.

Machine LearningTradingViewPine ScriptSignal GenerationQuantitative Trading
  • Built a trading system using Lorentzian classification and multi-indicator strategies for 2-minute to 15-minute timeframes.
  • Achieved 62.5% profitability in high-frequency trading scenarios.
  • Combined statistical and ML-driven signal generation using StochRSI, Williams %R, ADX, and VZO-inspired strategies.

Awards & Recognition

Semifinalist - Deloitte Global Azure Hackathon
Deloitte
2025

Top-performing team among roughly 100 global teams. Delivered an Azure Quantum ML solution achieving 20x acceleration in R&D simulations.

Semifinalist - Indra DataHack
Indra
2020

Built a semifinalist portfolio optimization system using clustering, PySpark, and Azure-based analytics infrastructure.

Top 10% Global Trading Performance
TradingView / Pepperstone
2025

Ranked top 10% globally, with peak placement in the top 6%, using an ML-based trading signal system.

3rd Place - Sustain Engineering Team
Deloitte / Nestle
2024

Ranked 3rd among 150 sustain engineers in enterprise support performance.