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Israel Adolfo López MaízIA

Israel Adolfo López Maíz

High-Performance AI Systems Engineer

€400/day
Madrid, ES
15+ years

Average response time: 1 hour

About Israel Adolfo

I design and build high-performance AI agents that automate complex workflows and integrate seamlessly with real-world systems.

With a strong background in backend engineering and distributed systems, I go beyond typical “AI wrappers” — I build reliable, production-grade solutions that actually scale.

I specialize in:
  • AI agents for business process automation
  • LLM-based systems (reasoning, tool use, orchestration)
  • Backend systems and APIs for AI integration
  • High-performance and low-latency architectures
I’ve worked on systems where performance, reliability, and correctness matter — and I bring that same engineering rigor to AI projects.

Whether you need to automate internal operations, build intelligent workflows, or create custom AI-powered tools, I can help you design and deliver a solution that works in production, not just in demos.

Let’s build something that actually delivers value.
  • Spanish

    Native or bilingual

  • English

    Fluent

  • Chinese

    Conversational

Can work on-site
Madrid (up to 50km)

Experience

  • Datura AI
    Senior Software Developer
    SOFTWARE PUBLISHING
    March 2025 - December 2025 (9 months)
    Celium is a distributed platform for deploying and running AI models across cloud, on-prem, and edge environments. The system operates over heterogeneous GPU-enabled nodes with strict latency, availability, and cost constraints. Action
    • • Designed and optimized the end-to-end model deployment lifecycle.
    • • Implemented orchestration, monitoring, and recovery modules in Python and Rust.
    • • Integrated C-based execution paths for latency-critical operations.
    • • Automated build, deployment, and rollback pipelines using Docker, Helm, and CI/CD.
    • • Tuned CPU/GPU scheduling, affinity, and resource allocation policies. Metrics
    • • Reduced model time-to-production from hours to minutes.
    • • Improved sustained GPU utilization by ~20–30%.
    • • Lowered P95 inference latency by ~30–40% on critical paths.
    • • Reduced deployment-related incidents by ~40%. Result Enabled fast, reliable, and cost-efficient AI model deployment at scale. Improved platform stability and
    predictability while supporting decentralized execution and continued network growth.
    High Performance Computing Artificial Intelligence (AI) AI Agents Orchestration LLM
  • Indra
    Senior Software Developer
    TECH
    April 2024 - February 2025 (10 months)
    Context Mission-critical defense platform developed under the European Defence Fund. The system targets next
    generation military vehicles and must operate under strict availability, security, and interoperability constraints across NATO environments. Action
    • • Designed and implemented backend services in Java and Node.js using Clean Architecture.
    • • Integrated a RAG system for low-latency contextual retrieval of operational intelligence.
    • • Developed GIS components for real-time geospatial analysis and tactical visualization.
    • • Defined secure APIs and interfaces to interoperate with NATO-compliant systems.
    • • Automated CI/CD pipelines and Kubernetes deployments with full observability. Metrics
    • • Reduced operational data retrieval time from seconds to sub-second latency.
    • • Improved service availability to >99.9% in simulated hostile environments.
    • • Decreased deployment and integration errors by ~35% via automated CI/CD.
    AI Agents AI Security Python Real-Time Systems Distributed Architecture
  • Devo
    Senior Software Developer
    TECH
    March 2020 - March 2024 (4 years)
    Cloud-native security analytics platform ingesting massive volumes of sensitive logs. The ingestion layer must handle bursty traffic, strict reliability targets, and compliance constraints (FedRAMP/FIPS/NIST). Action
    • • Owned and optimized the ingestion load balancer for sustained high-throughput production traffic.
    • • Improved fault tolerance, recovery paths, and observability across ingestion services.
    • • Implemented reliability features (including RELP support) to reduce event loss under failure scenarios.
    • • Built multi-region / multi-cloud redundancy mechanisms to improve disaster recovery posture.
    • • Integrated quality and security controls into CI/CD to support FedRAMP readiness. Metrics
    • • Sustained ~60 TB/day ingestion under production load.
    • • Reduced event loss and improved delivery guarantees during network/service failures.
    • • Lowered incident frequency and improved detection time via stronger telemetry and alerting.
    • • Improved recovery time for ingestion components through hardened failover and runbooks. Result Delivered a faster and more reliable ingestion layer for mission-critical security data. Increased
    operational resilience and strengthened the compliance path while keeping performance stable at scale.
    Artificial Intelligence (AI) Cybersecurity Observability High Performance Computing Node.js

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Education

  • Master's Degree in Artificial Intelligence for Information and Communication Technologies
    University of Alcalá de Henares
    2009
    Master's Degree in Artificial Intelligence for Information and Communication Technologies
  • Technical Degree in Computer Engineering
    University of Alcalá de Henares
    2007
    Technical Degree in Computer Engineering

Skill set

Categories