Lead Software Engineer, AI

Comcast

Remote

Quick summary

Work type
Remote
Location
Virginia
Posted
today

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Salary context

How this pay compares to similar roles

Similar $204k
$174k most similar roles pay here $231k

This listing doesn't post a salary. Most similar roles pay $184,900–$223,750.

Based on 240 similar postings.

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About Comcast

Comcast is an American telecommunications and media conglomerate, providing cable TV, internet, and phone services under the Xfinity brand, and owning NBCUniversal.

Comcast currently has 71 open roles on FindRole.

Listed pay typically runs $137,369–$212,776 across 35 roles with salary data.

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At a glance

TL;DR · Lead Software Engineer, AI

As a Lead Software Engineer in AI at Freewheel, you will lead the design and delivery of innovative product capabilities that integrate agentic workflows and intelligent automation into applications. Your daily tasks include creating scalable AI solutions for customer-facing products, establishing reusable patterns for consistent application across teams, and ensuring reliability and maintainability of AI features. You will work with Python (and potentially Go) to build and deploy agents or LLM-based systems in distributed environments, leveraging cloud platforms like AWS, Azure, or GCP. This role requires expertise in NLP, recommendation systems, time series modeling, and model lifecycle practices. Your focus on cross-functional collaboration will drive product innovation and business objectives within a large-scale, modern cloud environment.

What you'll do

  • Leading the design and development of AI-enabled product capabilities for automation and decision support.
  • Ensuring reliability, usefulness, and maintainability of AI features in customer-facing products.
  • Establishing reusable patterns to apply AI consistently across applications and workflows.
  • Designing scalable AI solutions that meet business requirements on cloud platforms.
  • Partnering with teams to translate business problems into end-to-end AI implementations.
  • Improving performance, responsiveness, cost, and scalability for AI-powered features.

What we're looking for

  • 6+ years of experience in software engineering with a focus on AI/ML systems.
  • Strong programming skills in Python and experience with Go (preferred).
  • Expertise in building and deploying Agents or LLM-based applications.
  • Knowledge of distributed systems, real-time inference architectures, and core AI domains.
  • Experience with cloud platforms (AWS, Azure, GCP) and AI tooling ecosystems.
  • Ability to translate business problems into scalable AI solutions end-to-end.
  • Mentoring engineers on practical AI development and production-quality engineering practices.

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