AI Infrastructure Engineer

Google Google · Big Tech · London, United Kingdom

Google Cloud Consulting Professional Services team seeks an AI Infrastructure Engineer to design and implement machine learning solutions for customer use cases, leveraging Google Cloud products like TensorFlow, DataFlow, and Vertex AI. The role involves working with customers to identify ML opportunities, deploy solutions, deliver workshops, and provide technical guidance on ML systems, feature engineering, data validation, monitoring, and model management. The engineer will act as a trusted technical advisor, coach customers on practical ML challenges, and collaborate with product teams to deliver tailored solutions into production. Responsibilities include creating best practices, tutorials, and sample code, with up to 30% travel.

What you'd actually do

  1. Be a trusted technical advisor to customers and solve complex machine learning challenges.
  2. Coach customers on the practical challenges in machine learning systems feature extraction and feature definition, data validation, monitoring, and management of features and models.
  3. Work with customers, partners, and Google Product teams to deliver tailored solutions into production.
  4. Create and deliver best practice recommendations, tutorials, blog articles, and sample code.
  5. Travel up to 30% for in-region for meetings, technical reviews, and onsite delivery activities.

Skills

Required

  • Computer Science degree or equivalent practical experience
  • 3 years of experience building machine learning solutions
  • Experience working with technical customers
  • Experience designing cloud enterprise solutions
  • Experience supporting customer projects to completion
  • Experience coding in Python, Java, Go, C or C++
  • Data structures
  • Algorithms
  • Software design

Nice to have

  • Experience with recommendation engines
  • Experience with data pipelines
  • Experience with distributed machine learning
  • Experience with deep learning frameworks (e.g., TensorFlow, XGBoost)
  • Understanding of production machine learning systems
  • Knowledge of data warehousing concepts
  • Apache Beam
  • Hadoop
  • Spark
  • Pig
  • Hive
  • MapReduce

What the JD emphasized

  • building machine learning solutions
  • working with technical customers
  • designing cloud enterprise solutions
  • supporting customer projects to completion
  • coding in one or more general purpose languages

Other signals

  • customer-facing
  • production deployments
  • ML solutions