Principal AI/Machine Learning Engineer (AdTech)
Zeta Global
San Francisco, United States of America
yesterday
Role details
Contract type
Permanent contract Employment type
Full-time (> 32 hours) Working hours
Regular working hours Languages
English Experience level
Intermediate Compensation
$ 300KJob location
Remote
San Francisco, United States of America
Tech stack
Java
Artificial Intelligence
Amazon Web Services (AWS)
Data analysis
Apache HTTP Server
Big Data
Code Review
Data Stores
Distributed Systems
Amazon DynamoDB
Hadoop
Python
PostgreSQL
Machine Learning
MySQL
NoSQL
Redis
TensorFlow
Azure
Software Engineering
SQL Databases
Data Streaming
Enterprise Software Applications
Data Storage Technologies
Data Ingestion
PyTorch
Large Language Models
Spark
Deep Learning
Backend
Event Driven Architecture
Containerization
Data Lake
Kubernetes
Low Latency
Optimization Algorithms
Cassandra
Kafka
Machine Learning Operations
Data Pipelines
Docker
Go
Microservices
Job description
- As a Principal AI/ML Engineer in our AdTech team, you will be a key individual contributor driving the development of advanced machine learning models and AI-driven features for our advertising platform
- You will design, build, and deploy ML solutions for campaign optimization, user personalization, and creative content generation, operating at large scale and low latency to handle billions of ad events per day
- You will work closely with engineering, product, and data science teams to ensure our ML systems are highly performant, scalable, and reliable
- You will also spearhead innovation by leveraging large language models (LLMs) and intelligent agent architectures to create new capabilities that automate and enhance advertising campaigns
- Machine Learning Leadership: Lead the design and implementation of scalable, high-performance, and resilient ML solutions for AdTech use cases. You will set technical direction for integrating AI/ML into our Demand-Side Platform and broader ad tech stack
- ML System Design: Architect and evolve the end-to-end machine learning pipeline - from data ingestion and training to real-time inference, for our real-time bidding, targeting, and optimization algorithms
- Ensure that models seamlessly integrate with our ad serving architecture and handle low-latency, high-throughput requirements
- Technical Strategy: Define the technical roadmap and vision for AI/ML in our platform, evaluating new tools and techniques (including the latest in deep learning and LLMs) and making strategic build-vs-buy decisions
- Continuously assess emerging technologies to keep our AdTech capabilities on the cutting edge
- AI & Agentic Applications: Develop intelligent systems using AI agents and agentic workflows to automate and optimize end-to-end campaign processes
- Leverage LLMs and generative AI to enable autonomous campaign management tasks such as audience segmentation, dynamic bid adjustments, and creative asset generation
- Cross-Functional Collaboration: Partner with engineering, product, and data science teams to translate marketing objectives into ML-driven solutions
- Work closely with stakeholders to deliver innovative features - including those powered by Large Language Models (LLMs), that enhance our advertising products
- Performance & Reliability: Ensure system robustness and stability for ML services in a high-concurrency, low-latency environment
- Optimize algorithms and infrastructure for speed and scalability, and implement monitoring to maintain model performance and uptime in production
- Mentorship & Best Practices: Provide technical guidance and mentorship to other engineers and data scientists, fostering a culture of excellence in engineering and ML best practices. Review code and models, share knowledge, and champion continuous improvement across teams
Requirements
Containerization and orchestration AI and machine learning Communication skills Mentoring Machine learning, * This role requires deep expertise in machine learning techniques and the programmatic advertising ecosystem (e.g. , real-time bidding and digital marketing data)
- Familiarity with containerization and orchestration technologies (Docker, Kubernetes) for deploying and managing services at scale
- Strong experience with big data and streaming frameworks (e.g., Apache Spark, Kafka, Hadoop) for processing and analyzing large datasets
- Expertise with cloud platforms (preferably AWS) and related services for scalable ML model deployment and data storage
- Hands-on experience with machine learning frameworks and libraries, especially PyTorch or TensorFlow, for developing and training models
- Proficiency in programming languages such as Java, Go, and Python for building both data-intensive backend services and ML tools
- Experience with various data stores, including both SQL and NoSQL databases (e.g., MySQL/PostgreSQL, Cassandra, DynamoDB, Redis)
- 10+ years of experience in software engineering or data science, with at least 3-5 years in a principal engineer or lead ML role (preferably in the AdTech/MarTech industry)
- Excellent communication, presentation, and interpersonal skills, with ability to convey complex ML concepts to technical and non-technical stakeholders
- Deep expertise in the programmatic advertising ecosystem, including Demand-Side Platforms (DSPs), real-time bidding (RTB), Supply-Side Platforms (SSPs), and ad exchanges
- Proven experience designing and building high-throughput, low-latency distributed systems or data pipelines for large-scale applications
- Experience with Large Language Models (LLMs) and generative AI applied to advertising, for example, using AI to generate ad copy, optimize creative content, or personalize messaging
- Experience designing and implementing agentic workflows that enable autonomous decision-making and real-time optimization in marketing campaigns
- Experience with machine learning model serving and optimization for real-time inference applications (latency-critical environments)
- Familiarity with modern data lake and table formats (e.g., Apache Iceberg, Apache Hudi) for managing large-scale analytical datasets
- Knowledge of microservices architecture and event-driven design patterns in distributed systems
- A track record of contributions to open-source projects or speaking at industry conferences, demonstrating thought leadership in AI/ML