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xAI

Member of Technical Staff - Imagine Safety

Palo Alto, CA Engineering USD180k–440k Posted 1d ago

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Role description

What the team is looking for.

As a Product Safety Engineer on the Imagine team, you will build the critical safety systems and infrastructure that ensure Grok's multimodal generation capabilities are powerful, delightful, and responsibly deployed.

You'll design and scale safeguards, detection systems, and evaluation frameworks that prevent harm while preserving creativity and user freedom. Your work will directly shape how millions of users experience generative media , balancing rapid innovation with rigorous safety, trustworthiness, and alignment with xAI's mission.

Responsibilities:

  • Design and implement scalable safety systems for Grok's media generation platform, including real-time content moderation, risk detection, and safeguard enforcement for images, video, and audio.
  • Build infrastructure to measure, monitor, and mitigate safety risks such as harmful content, bias, deepfakes, intellectual property issues, and misuse at global scale.
  • Develop tools, pipelines, and evaluation frameworks that enable rapid iteration on safety policies in collaboration with researchers, product, and policy teams.
  • Architect robust feedback loops between user interactions, model outputs, and training data to continuously improve safety while maintaining high performance and low latency.
  • Own full-cycle development of safety features: from problem definition and prototyping to deployment, monitoring, incident response, and long-term refinement.
  • Partner closely with the Imagine engineering, research, and product teams to embed safety into core features and deliver delightful yet responsible user experiences.

Basic Qualifications:

  • Proficiency in Rust, with a strong track record of writing clean, efficient, maintainable, and scalable code.
  • Experience designing and building production safety, trust & safety, or content moderation systems for consumer-facing products at scale.
  • Hands-on expertise developing real-time detection systems, data pipelines, or evaluation frameworks for high-throughput AI applications.
  • Proven ability to deliver robust, reliable solutions that reach millions of users while maintaining high standards of uptime and performance.
  • Strong problem-solving skills and a passion for turning complex safety challenges into practical, high-impact engineering solutions.
  • Deep enthusiasm for responsible AI development and a commitment to building systems that advance humanity's understanding while protecting users.

Preferred Skills and Experience:

  • Experience with multimodal content safety (images, video, audio) or generative AI safety in production environments.
  • Familiarity with machine learning classifiers, safety evaluation, red-teaming, or adversarial testing for media generation models.
  • Background in distributed systems, real-time inference serving, Kubernetes, observability tools, or large-scale data infrastructure.
  • Track record collaborating across engineering, research, and policy teams to ship safety-critical features quickly and effectively.
  • Previous work on content moderation, anti-abuse, model alignment, or responsible AI at consumer AI products.

Compensation and Benefits:

$180,000 - $440,000 USD

Base salary is just one part of our total rewards package at xAI, which also includes equity, comprehensive medical, vision, and dental coverage, access to a 401(k) retirement plan, short & long-term disability insurance, life insurance, and various other discounts and perks.

Skills mentioned
  • Rust
  • Safety systems
  • Content moderation
  • Risk detection
  • Safeguard enforcement
  • Real-time inference serving
  • Kubernetes
  • Observability tools
  • Large-scale data infrastructure
  • Multimodal content safety
  • Generative AI safety
  • Machine learning classifiers
  • Safety evaluation
  • Red-teaming
  • Adversarial testing
  • Distributed systems
  • Anti-abuse
  • Model alignment