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Jose Antonio JimenezJA

Jose Antonio Jimenez

Supermalter

Data Scientist, IA Expert #ReadyToHelp

€360/day
2 projects
Sevilla, ES
15+ years

Average response time: 1 hour

About Jose Antonio

I’m a hands-on, strategic technologist focused on artificial intelligence, data science, and advanced automation systems. I design, develop, and deploy solutions across high-impact sectors including healthcare, defense, energy, biotechnology, public administration, and education.

My work blends systems thinking, ethical foresight, and technological depth. I operate across the full development cycle, translating complex AI frameworks (GPUs, MLOps, LLMs, autonomous agents) into robust, real-world applications with measurable outcomes.

From predictive bio-twins and synthetic data generation to RAG architectures and cognitive agent platforms, I lead initiatives that bridge research and operations—always with a focus on explainability, traceability, scalability, and responsible AI.
  • English

    Fluent

  • French

    Conversational

  • Spanish

    Native or bilingual

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

Experience

  • INDRA FACTORÍA TECNOLÓGICA
    Malt logoOn Malt
    MLOPS AND AI SPECIALIST FOR ELECTRONIC WARFARE SYSTEMS (EW)
    September 2024 - June 2025 (9 months)
    Alcalá de Guadaíra, España
    ▪ Defined the AI methodology for AI - Team Data Science Process (TDPS), aligning TDSP lifecycle phases with internal standards
    for CI/CD, storage layers (Bronze/Silver/Gold), and S3 structuring.
    ▫ Created and maintained multiple data reports and architecture documentation, including configuration files and dataset
    contracts under TDSP standards.
    ▫ Supported synchronization of tasks among teams, and formalization of development methodology for onboarding and
    scalability.
    ▪ Developed reusable Kubeflow pipelines and explored MLflow deployment alternatives, integrating local MinIO simulation and
    Docker Compose setups.
    ▪ Defined the official AI training platform integrating emitter disentanglement models, waveform generation, model training, and
    inference pipelines over OpenShift AI.
    ▪ Led the review and QA of code repositories and pipelines, identifying maintainability risks and proposing modular orchestration
    and API-based architecture.
    ▪ Provided continuous technical support and coordination for SuperPOD GPUs infrastructure, including resource availability,
    execution tracking and SLA definition.
    ▪ Coordinated integration with Waveblue/Umbrella platforms, ensuring compatibility, secure data flow, and interoperability.
    ▪ Participated in sensitivity analysis of data flows and setup of secure development environments.
    ▪ Contributed to dataset standardization and mapping, helping unify the generation and transformation workflows for data.
  • JRC - EUROPEAN COMMISSION
    DATA SCIENTIST
    May 2021 - September 2024 (3 years and 4 months)
    Spain
    ▪ Collaborating with Algorithmic Transparency Unit at the Joint Research Centre (JRC) as AI/ML/NLP Specialist, leading technical contributions to two data science work strands requiring large-scale data analysis had a significant impact on the project's success.
    ▪ Single developer of an end-to-end, automated data infrastructure designed to disaggregate, classify, and analyse customs records to identify secondary material flows critical to the EU’s circular economy, with a focus on titanium and photovoltaic (PV) panels. Pipeline. Advanced Natural Language Processing (NLP) techniques, transformer-based topic modeling using BERTopic, and fuzzy logic.
    ▪ Development of machine learning/deep learning/GenAI algorithms for economically complex research challenges at the Joint Research Center (JRC), the science and innovation service of the European Commission.
    ▫ Economic analysis of investment in R&D in the European territory (Patent Matching)
    ▫ Development of simulation and prediction models for complex energy scenarios (SIACES).
    ▫ MLOps in MS Azure Machine Learning with TDSP.
    ▫ Collaboration with the Pacific Northwest National Laboratory (PNNL) and Tufts University to model prediction in 1.5 °C global warming climate change scenarios.
    ▫ Exploratory Models of the Impact and Innovation ecosystem to identify new technologies and/or fields of activity (industrial sector or services)
    ▫ Extraction of information related to news about Food Fraud (web scraping and ETL).
    ▫ NLP/LLM classification modeling of extracted data on Food Fraud using AI (unsupervised classification). Publication of results through dashboard in PowerBI.
    ▫ Development of anomaly detection and alert generation systems using generative AI and machine learning algorithms such as Isolation Forest and Z-Score.
    ▫ Integrated NVIDIA CUDA to accelerate computational tasks, optimize performance, and enhance the efficiency of machine learning models and data processing pipelines.
    Machine learning Data science Bigdata
  • VIATRIS UK
    DATA SCIENTIST
    PHARMACEUTICALS INDUSTRY
    January 2023 - August 2024 (1 year and 7 months)
    ▪ Definition and execution of a data science strategy for pharmaceutical manufacturing, combining advanced machine learning methodologies with industry expertise to drive innovation and ensure regulatory compliance.
    ▪ Design and implementation of predictive models for Lot End Prediction, focused on forecasting batch completion inpharmaceutical production environments. These models enhanced operational planning, increased resource efficiency, and reduced production waste.
    ▪ Development of machine learning solutions to optimize manufacturing processes, improve yield, and prevent failures, aligned with regulatory frameworks (FDA, EMA, GxP).
    ▪ Execution of data engineering and modeling workflows using Python, and scalable cloud platforms (AWS, Azure), integrating data from laboratory systems, production lines, and quality control processes.
    ▪ Collaboration with cross-functional teams—including manufacturing, quality, compliance, and IT—to translate domain requirements into robust data-driven solutions.
    Python Machine learning

Reviews

5.0

Out of 1 rating

J

Joaquín

INDRA FACTORÍA TECNOLÓGICA

Reviewed on 7/14/2025

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Education

  • MSD COMPUTER ENGINEER
    University of Seville
    1996
    MSD COMPUTER ENGINEER

Certifications

  • MACHINE LEARNING CERTIFICATE
    STANFORD UNIVERSITY
    2016

Skill set (50)

Categories