Senior Machine Learning Engineer

  • Full-time
  • Contract Type: Long term contract

Company Description

Talan – Positive Innovation

Talan is an international consulting group specializing in innovation and business transformation through technology. With over 7,200 consultants in 21 countries and a turnover of €850M, we are committed to delivering impactful, future-ready solutions.

Talan at a Glance

Headquartered in Paris and operating globally, Talan combines technology, innovation, and empowerment to deliver measurable results for our clients. Over the past 22 years, we’ve built a strong presence in the IT and consulting landscape, and we’re on track to reach €1 billion in revenue this year.

Our Core Areas of Expertise

  • Data & Technologies: We design and implement large-scale, end-to-end architecture and data solutions, including data integration, data science, visualization, Big Data, AI, and Generative AI.

  • Cloud & Application Services: We integrate leading platforms such as SAP, Salesforce, Oracle, Microsoft, AWS, and IBM Maximo, helping clients transition to the cloud and improve operational efficiency.

  • Management & Innovation Consulting: We lead business and digital transformation initiatives through project and change management best practices (PM, PMO, Agile, Scrum, Product Ownership), and support domains such as Supply Chain, Cybersecurity, and ESG/Low-Carbon strategies.

We work with major global clients across diverse sectors, including Transport & Logistics, Financial Services, Energy & Utilities, Retail, and Media & Telecommunications.

Job Description

You will join a global data ecosystem built on Google Cloud Platform, working on large-scale data and machine learning initiatives. The environment focuses on industrializing ML solutions—moving beyond experimentation into robust, production-ready systems. You will collaborate closely with Data Engineers, DevOps, and product teams to deploy, scale, and monitor ML models in real-world applications.

What you will do

  • Design, build, and deploy machine learning models into production on GCP
  • Lead development of scalable ML pipelines for data ingestion, processing, and inference
  • Implement model lifecycle management using MLflow and DVC
  • Containerize ML applications using Docker and deploy via Kubernetes
  • Collaborate with DevOps teams to build CI/CD pipelines using GitLab
  • Optimize model performance, monitoring, and reliability in production environments
  • Contribute to architecture decisions and best practices for ML systems
  • Mentor junior engineers and promote engineering excellence across teams

Qualifications

Required:

  • Strong proficiency in Python (advanced level)
  • Proven experience deploying ML models into production environments
  • Solid experience with Google Cloud Platform (ideally Vertex AI)
  • Hands-on experience with Docker and Kubernetes
  • Experience with ML lifecycle tools (MLflow, DVC)
  • CI/CD experience (GitLab preferred)
  • Experience working in Agile/SCRUM environments
  • Professional working proficiency in Spanish and English.

Nice to have:

  • Knowledge of R for data analysis
  • Experience working with large-scale data ecosystems (Data Engineering exposure)
  • Infrastructure as Code (IaC) experience
  • Exposure to Azure environments

Additional Information

What do we offer you?

  • Full-time contract
  • Remote position based in Málaga, Spain
  • Possibility to manage work permits
  • Training and career development opportunities.
  • Perks & Benefits: smart office, private medical inssurance, flexible remuneration, extra holidays
  • Be part of a multicultural team working on international projects. 

If you are passionate about data, development & tech, we want to meet you!

  • Talan Spain’s commitment to non-discrimination based on gender, race, ideology, or any other reason, in accordance with the company’s "Equality Plan" and the current regulations on gender equality between women and men (Royal Decree-Law 6/2019).

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