senior Data Engineer ic 5+ yrs · Posted Jul 8, 2026
$156,000 – $227,000
USD per year

About this role

Google is hiring a senior-level Data Engineer based in Mountain View, CA | Chicago, IL | Irvine, CA | New York City, NY. The posting calls out experience with Python, SQL, TensorFlow, LLMs and roughly 5+ years of relevant work. Compensation is listed at $156,000–$227,000 per year.

Role
Data Engineer
Function
data engineering
Level
senior
Track
Individual contributor
Employment
Full-time
Location
Mountain View, CA | Chicago, IL | Irvine, CA | New York City, NY
Experience
5+ years
Posted
Jul 8, 2026
AI Summary
Design and maintain data pipelines to ingest, clean, and process massive volumes of unstructured customer feedback and sales transcripts. Own foundational infrastructure transforming conversational data into strategic insights for product teams. Architect scalable, automated solutions integrating BI systems with text processing and embedding pipelines.

Job description

from Google careers

gTech’s Product and Tools Operations team (gPTO) leverages deep user, operational, and technical insights to innovate Google's Ads products into customer experiences that are so intuitive (or automated) that they require no support at all. gPTO partners closely with gTech’s Support, Professional Services, Product Management, and Engineering teams to innovate and simplify our Ads products and build the productivity tools ecosystem for gTech users.

As a part of the Go-to-Market (GTM), you will serve as the intelligence partner for product teams, transforming massive volumes of unstructured conversational data into quantified, trusted insights that bridge the gap between customer feedback and product decisions, as this is a high-visibility initiative critical for accelerating the Ads product adoption flywheel and shaping Go-to-Market (GTM) strategy for priority products.

As a Senior Data Engineer, you will own and architect the foundational infrastructure that transforms unstructured customer feedback into quantified strategic assets. You will help us move towards scalable, automated pipelines that integrate sales transcripts with critical Business Intelligence (BI). You will pioneer our transition towards more flexible workflows, developing the core infrastructure and platforms that multiply our data science team's capacity, agility, and impact through end-to-end delivery of production-ready solutions.

Individual pay is determined by factors including job-related skills, experience, and relevant education or training.

US: $156000 - $227000 (USD) + 15% bonus target + equity + benefits

Learn more about benefits at Google.

Responsibilities

  • Design and maintain pipelines to ingest, clean, and process massive volumes of unstructured data, including business transcripts and support cases, into reliable investigative datasets.
  • Architect and deploy advanced platforms and tooling that empower the team to leverage autonomous AI agents and Large Language Models (LLMs) for intelligent routing and automated insights.
  • Develop internal libraries and self-serve frameworks that streamline Natural Language Processing (NLP) and causal analysis, significantly reducing operational friction and enhancing team productivity.
  • Manage and optimize embedding workflows using TensorFlow and Tensor Processing Units (TPUs), ensuring efficient processing that bypasses standard API constraints for high-volume data.
  • Implement automated monitoring, alerting, and rigorous data quality checks to guarantee the security, reliability, and governance of high-stakes investigative assets.

Minimum qualifications:

  • Bachelor's degree or equivalent practical experience.
  • 5 years of experience coding in Python and SQL.
  • 5 years of experience working with machine learning operations (MLOps) and large language model operations (LLMOps) principles and data infrastructure, including deploying text processing and embedding pipelines.
  • 5 years of experience designing and deploying data pipelines, including managing data schemas and processing unstructured text data for machine learning (ML) workflows.

Preferred qualifications:

  • Experience with data schemas.
  • Experience with google colaboratory (Colab), TensorFlow, Tensor Processing Units (TPUs), and agentic tools and platforms for processing unstructured text data.
  • Experience with LLM orchestration and agentic infrastructure.
  • Proficiency in SQL and Python.
  • Understanding of MLOps/LLMOps principles to ensure the scalable and reliable deployment of text processing and embedding pipelines.

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