No et perdis res!
Uneix-te a la comunitat de wijobs i rep per email les millors ofertes d'ocupació
Mai no compartirem el teu email amb ningú i no t'enviarem correu brossa
Subscriu-te araTransport i Logística
13Comercial i Vendes
10Educació i Formació
10Administració i Secretariat
8Comerç i Venda al Detall
7Veure més categories
Dret i Legal
5Informàtica i IT
5Disseny i Usabilitat
3Instal·lació i Manteniment
3Construcció
2Cures i Serveis Personals
2Desenvolupament de Programari
2Enginyeria i Mecànica
2Hostaleria
2Immobiliària
2Indústria Manufacturera
2Màrqueting i Negoci
2Recursos Humans
2Sanitat i Salut
2Atenció al client
1Comptabilitat i Finances
1Energia i Mineria
1Farmacèutica
1Producte
1Publicitat i Comunicació
1Seguretat
1Agricultura
0Alimentació
0Art, Moda i Disseny
0Arts i Oficis
0Assegurances
0Banca
0Ciència i Investigació
0Editorial i Mitjans
0Esport i Entrenament
0Social i Voluntariat
0Telecomunicacions
0Turisme i Entreteniment
0Top Zones
Alacant
58Data Engineer
NovaVerisure
Alicante/Alacant, ES
Data Engineer
Verisure · Alicante/Alacant, ES
. Python Azure Jenkins Docker Cloud Coumputing Kubernetes AWS DevOps Terraform Machine Learning
We are looking for a MLOps / AIOps / LLMOps / AgentOps Engineer to join a multidisciplinary Data & AI team. The main mission of this role is to design, operate, and continuously evolve our AIOps platform, ensuring that our AI products run in a reliable, scalable, and cost‑efficient way.
This position is strongly focused on platform, infrastructure, automation, observability, and operations rather than on building ML models or AI products themselves.
You will work with modern cloud technologies (mainly AWS, with some Azure exposure) and collaborate closely with Data Scientists, Data Engineers, and Product teams to bring AI solutions into production and keep them running smoothly.
We are open to candidates with strong expertise in at least one core area (e.g. cloud, DevOps, platform engineering, or ML operations) and solid foundational knowledge in the others, with motivation to grow across the full AI operations stack.
Key Responsibilities
- Design, maintain, and evolve the AIOps platform supporting:
- Traditional machine learning models in production
- LLM‑based solutions such as RAG pipelines and AI Agents
- Speech Analytics use cases (ASR, conversation analysis, NLP)
- Build and operate ML and LLM pipelines with a strong focus on:
- Reliability, automation, and observability
- Model and LLM quality, performance, and drift monitoring
- Cloud cost control and optimization
- Implement LLMOps / AgentOps practices, including:
- LLM evaluation and observability
- Prompt management, traceability, and specialized logging
- Agent integration, orchestration, and lifecycle management
- Ensure continuous operation of AI products, including:
- Alerts, dashboards, SLOs / SLIs
- Scalability strategies and basic auto‑remediation mechanisms
- Manage deployments in cloud environments (AWS / Azure) and container platforms (Docker / Kubernetes)
- Collaborate closely with Data Scientists and Data Engineers to productionize robust, scalable AI solutions
- Contribute to internal standards, automation, and best practices across the AI and data ecosystem
- Hands‑on experience in MLOps, AIOps, or operating ML systems in production
- Solid understanding of LLMOps and AgentOps concepts (RAGs, agents, evaluation, monitoring)
- Experience working with AWS and/or Azure in production environments
- Practical knowledge of containers and Kubernetes (Docker, basic Helm usage, etc.)
- Experience with CI/CD pipelines (GitHub Actions, GitLab CI, Azure DevOps, Jenkins, or similar)
- Familiarity with observability and monitoring concepts (CloudWatch, OpenTelemetry, Prometheus, etc.)
- Experience managing infrastructure as code (Terraform, Bicep, CDK, or similar)
- Python experience and familiarity with the ML ecosystem (e.g. scikit‑learn, PyTorch), even if not a Data Scientist
- Good understanding of the ML / LLM lifecycle, from development to production and monitoring
- Fluent English to work in an international environment
- Experience with ML/AI platforms such as SageMaker, Azure ML, MLflow, Kubeflow
- Exposure to Speech Analytics technologies (ASR, diarization, conversational NLP)
- Experience with cloud cost optimization / FinOps, especially for AI workloads
- Experience building or operating AI agents, copilots, or conversational systems
- Familiarity with LLM frameworks (LangChain, LlamaIndex, Semantic Kernel, etc.)
- Experience with workflow and orchestration tools (Airflow, Argo, Step Functions, Durable Functions)
- Strong focus on reliability, automation, and scalability
- Ability to collaborate effectively in multidisciplinary teams
- Clear communication and documentation‑oriented mindset
- Platform mindset: building reusable, maintainable, and robust solutions
- Proactive, analytical, and continuous‑improvement driven
- Strong sense of ownership and end‑to‑end responsibility
- Motivation to learn and grow across the AI operations stack
- Cloud: AWS, Azure
- Orchestration & Containers: Kubernetes, Docker
- CI/CD: GitHub Actions, GitLab CI, Azure DevOps
- Observability: Prometheus, Grafana, ELK/EFK, OpenTelemetry
- Infrastructure as Code: Terraform, Bicep, CloudFormation
- AI / ML Tools: MLflow, Azure ML, SageMaker, LangChain, LlamaIndex, Semantic Kernel
- Primary Language: Python