AI Engineer
AIRemote

AI Engineer

We are looking for an AI Engineer to design, develop, and deploy advanced machine learning, predictive, and forecasting models within the AriAPLT™ platform. You will work on real-world industrial data to enable predictive maintenance, prescriptive manufacturing, anomaly detection, and intelligent decision support.

Key Responsibilities

  • Design, train, and deploy ML models for prediction, forecasting, and anomaly detection.
  • Develop time-series, multivariate, and probabilistic models for industrial data.
  • Managing the whole model lifecycle from R&D to deployment and monitoring.
  • Collaborate with platform engineers to integrate models into production systems.
  • Optimize model performance, scalability, and resource efficiency for enterprise-grade.
  • Work with highly fast, decision-support, decision-action systems.
  • Perform model tuning and evaluation against KPIs and continuous feedback loops.

Requirements

  • Strong background in Machine Learning, AI, Data Science.
  • Knowledge of generative AI frameworks, such as Langchain and llamaindex.
  • Experience with libraries like PyTorch, Scikit-learn, TensorFlow, and pandas/numpy.
  • Solid knowledge of linear algebra, methods, forecasting, and anomaly detection.
  • Familiarity with data Engineering & NLP, models for alignment, human-ai interaction.
  • Experience with classic time-series and state-space models.
  • Ability to translate complex industrial issues into scalable insights & KPIs.

Nice to Have (Not Mandatory)

  • Experience in industrial manufacturing or automation domains.
  • Knowledge of computer vision or digital twin modeling.
  • Familiarity with cloud-ML infrastructures (PyLing, Kubernetes, MLFlow).

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AI Engineer Application

Please fill out the form below to apply for this position.

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