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Forward Deployed Data Engineer

Planhat
On-site
Los Angeles, California, United States
  • Applications are considered on a rolling basis
  • Los Angeles
  • Remote

Job Description

Background

Planhat is a global leader in Customer Management solutions and we’ve been building toward our AI Platform (AIP) for some time and now, as part of this journey, we’ve recently launched a new initiative that goes with it: the AI Deployment Program (ADP) - a dedicated services team with deep expertise in deploying the AI capabilities around CX that the Planhat Platform powers. Read more about it [LINK]

The Mission

AI is only as powerful as the data it’s trained on. At Planhat, our platform powers some of the most valuable customer data in the world — but unlocking its full potential requires strong engineering.

We’re looking for AI Data Engineers to design, build, and optimize the data pipelines that power our AI-workflows, AI-automations, and customer workflows. 

This isn’t a backroom ETL role — you’ll work directly with our Forward Deployed Solutions team and strategic customers to transform messy, complex datasets into clean, structured, and reliable fuel for AI models.

You’ll own the process from end to end: embedding with customers to understand their systems, engineering pipelines that deliver at scale, and working closely with our commercial teams to build workflows and solutions that our customers are asking for.

What You’ll Do

  • Architect and implement high-performance data pipelines for AI applications.
  • Design and optimize and transform raw customer data into structured, reliable datasets.
  • Build AI workflows and data mapping in the Planhat platform
  • Work with SQL, Python, and APIs to integrate multiple, messy, distributed systems.
  • Partner with AI engineers to ensure models have the clean, context-rich data they need.
  • Build monitoring and validation systems to ensure data quality and trust.
  • Collaborate with customers and internal teams to solve complex, domain-specific data challenges.