Zeta Global
AI

Lead AI Engineer

Zeta Global · · $200k - $215k

Actively hiring Posted 4 months ago

WHO WE ARE

Zeta Global (NYSE: ZETA) is the AI-Powered Marketing Cloud that leverages advanced artificial intelligence (AI) and trillions of consumer signals to make it easier for marketers to acquire, grow, and retain customers more efficiently. Through the Zeta Marketing Platform (ZMP), our vision is to make sophisticated marketing simple by unifying identity, intelligence, and omnichannel activation into a single platform – powered by one of the industry’s largest proprietary databases and AI. Our enterprise customers across multiple verticals are empowered to personalize experiences with consumers at an individual level across every channel, delivering better results for marketing programs. Zeta was founded in 2007 by David A. Steinberg and John Sculley and is headquartered in New York City with offices around the world. To learn more, go to www.zetaglobal.com.

The Role

The Zeta AI R&D team sits at the heart of our technology and delivers on Zeta Global’s core brand promise: state-of-the-art marketing technology innovation.

 

What You Will Do

 

Zeta Global’s technology platform supports a real-time bidding system handling over 100 billion events per day, a reporting system aggregating and analyzing terabytes of data in real time, and a learning system applying machine learning and AI techniques to more than 40 petabytes of data. Together, these systems ensure Zeta serves the right advertisement to the right user at the right time.

 

At the core of this platform is our Artificial Intelligence and Machine Learning team, which builds the models and decision-making systems that power Zeta’s products. This role is focused on 
post-training and alignment of large language models

, with an emphasis on 
Supervised Fine-Tuning (SFT)

, preference optimization, and production operation of agentic LLM systems.

 

As a Lead AI Engineer, you will own the 
end-to-end post-training lifecycle of LLMs

—from SFT data curation and training strategy through evaluation, deployment, monitoring, and iteration—using platforms such as OpenAI and AWS Bedrock.

 

Specifically, you will:

 

  • Lead  Supervised Fine-Tuning (SFT)

 of large language models in production, shaping instruction-following, reasoning quality, tone, and domain-specific behavior

  • Extend SFT pipelines with  instruction tuning and preference-based optimization

 (e.g., RLHF-style approaches or direct preference optimization)

  • Design, curate, and maintain  high-quality SFT and preference datasets

, combining human-labeled and synthetic data tailored to real-world marketing and decisioning use cases

  • Own  model evaluation and benchmarking

, including:

  • Offline behavioral evals (instruction adherence, reasoning depth, hallucination rates)

  • Online experiments and A/B tests

  • Continuous regression detection and performance monitoring

  • Develop and operate 
    agentic LLM systems

, enabling multi-step reasoning, tool use, workflow orchestration, and decision execution

  • Implement and optimize  prompting, retrieval-augmented generation (RAG), memory, and tool-calling strategies

, with a clear understanding of when to solve problems via SFT versus prompting

  • Partner closely with data engineering, platform, and product teams to integrate fine-tuned models into 
    high-throughput, low-latency systems

  • Establish best practices for 
    LLM versioning, experimentation, deployment, rollback, governance, and safety

  • Provide technical leadership and mentorship to engineers working on applied AI and LLM systems

Who You Are

 

You are deeply interested in 
how LLM behavior changes through SFT and post-training

, especially in real production environments. You enjoy improving models through data, evaluation, and iteration—not just prompt engineering. You take ownership of outcomes, from model quality and alignment to reliability, latency, and cost.

 

Required Experience and Skills

 

  • Significant hands-on experience with  Supervised Fine-Tuning (SFT) of LLMs in production

, beyond prompt-only approaches

  • Direct experience using  OpenAI APIs and/or AWS Bedrock

 for SFT, post-training, and deployment

  • Strong understanding of  LLM post-training workflows

, including data preparation, instruction tuning, evaluation methodologies, and common failure modes

  • Experience building and operating  agentic LLM systems

 (tool use, multi-step reasoning, workflow orchestration)

  • Proficiency in  Python

 and modern ML frameworks (e.g., PyTorch)

  • Experience operating 
    ML systems in distributed, production environments

  • Strong intuition for 
    **trade-offs between model quality, latency, cost, safety, and scalability

BENEFITS & PERKS**

  • Unlimited PTO
  • Excellent medical, dental, and vision coverage
  • Employee Equity
  • Employee Discounts, Virtual Wellness Classes, and Pet Insurance And more!!

SALARY RANGE

The salary range for this role is $200,000 - $215,000, depending on location and experience.

PEOPLE & CULTURE AT ZETA

Zeta considers applicants for employment without regard to, and does not discriminate on the basis of an individual’s sex, race, color, religion, age, disability, status as a veteran, or national or ethnic origin; nor does Zeta discriminate on the basis of sexual orientation, gender identity or expression.

We’re committed to building a workplace culture of trust and belonging, so everyone feels invited to bring their whole selves to work. We provide a forum for employees to celebrate, support and advocate for one another. Learn more about our commitment to diversity, equity and inclusion here:  https://zetaglobal.com/blog/a-look-into-zetas-ergs/

ZETA IN THE NEWS!

https://zetaglobal.com/press/?cat=press-releases

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