热门公司

招聘

职位Netflix

Distributed Systems Engineer 6 - Decisioning & Optimization

Netflix

Distributed Systems Engineer 6 - Decisioning & Optimization

Netflix

New York,New York,United States of America; Seattle,Washington,United States of America; Los Angeles,California,United States of America; Los Gatos,California,United States of America

·

On-site

·

Full-time

·

2d ago

At Netflix, our mission is to entertain the world. Together, we are writing the next episode - pushing the boundaries of storytelling, global fandom and making the unimaginable a reality. We are a dream team obsessed with the uncomfortable excitement of discovering what happens when you merge creativity, intuition and cutting-edge technology. Come be a part of what’s next.

We launched a new ad-supported tier in November 2022 and are building an in-house world-class ad tech ecosystem to offer our members more choices in consuming their content. Our new tier allows us to attract new members at a lower price point while also creating a compelling path for advertisers to reach deeply engaged audiences.

Our Team

The Decisioning & Optimization engineering team sits within the Ad Serving & Decisioning at Netflix Ads. We own the systems that power real-time ad decisioning, delivering relevant, high-quality ads while balancing revenue goals, advertiser outcomes, and member experience. Our work spans ML model serving infrastructure, ranking and scoring, auction mechanics, budget and pacing systems, and goal-based delivery optimization along with podding, traffic shaping models, and more.

We are looking for a senior technical leader to own the technical direction of this pod, set the architectural bar, and drive execution on the hardest problems in ads optimization at Netflix. This is a 60% builder / 40% influencer role: you will write code, ship a proof-of-concept in your first weeks, and earn the trust of an opinionated senior team while simultaneously setting direction across the organization.

What You'll Do

  • Own the technical direction of the Decisioning & Optimization team: architecture reviews, incident leadership, capacity planning, and scaling

  • Architect and evolve the real-time ad decisioning optimization path: multi-stage auction, ranking, scoring, bidding, and pacing under strict latency and throughput constraints

  • Scale our ads model serving infrastructure to support dozens of concurrent hot-path ML models with sub-20ms P99 inference, including config-driven model routing, multi-model lifecycle management, fallback tiers, and calibration serving

  • Work closely with Science and Platform teams, ensuring seamless model productionization and algorithm deployment

  • Build out various simulation and containerized testing frameworks to enable offline validation of marketplace changes before live rollout

  • Design and implement real-time pacing systems that drive budget delivery accuracy across campaign lifetimes

  • Develop and scale goal-based delivery optimization, enabling dynamic allocation of budget and inventory across multiple demand channels to maximize advertiser outcomes

  • Drive modularization and platform-thinking: build reusable components and clean interfaces that let the team move faster

  • Drive operational excellence: reliability, observability, deployment automation, capacity planning, and incident leadership across the optimization and broader ad serving stack

Skills & Experience We're Seeking

  • 10+ years building distributed systems and backend services at large scale; 3+ years in the ads domain

  • Deep experience with ML model serving infrastructure: scaling real-time inference on the hot path at high QPS with sub-20ms P99 latency, including model deployment pipelines, feature hydration, and fallback strategies

  • Built and operated core ad tech systems: ad servers, bidders, pacers, or ranking and scoring components

  • Designed APIs, platform abstractions, and data models that enable seamless interoperability across a multi-team ads platform

  • Strong understanding of ad serving concepts: inventory management, frequency and recency capping, member ad experience quality, and supply-demand dynamics

  • Track record of technical leadership across multiple teams, setting architectural direction and influencing cross-functional roadmaps

  • Comfortable at the intersection of engineering, data science, and product, translating ML research and algorithms into production systems

  • Demonstrated ability to operate in the environment which is a mix of big-tech scale and startup speed, taking projects that normally take years and delivering production-ready results with tight timelines

Nice to Haves

  • Experience with auction mechanics: first-price, second-price, reserve pricing, bid shading, and marketplace competition dynamics

  • Multi-stage ranking systems (retrieval, scoring, reranking), podding and ad break planning

  • Built or improved budget pacing and delivery control systems

  • Yield optimization, inventory forecasting, dynamic pricing, fill rate optimization, and demand/supply allocation strategies

  • Familiar with CTV constraints: server-side ad insertion, live event ad serving at scale

  • Experience with experimentation infrastructure: A/B testing, holdout groups, interference-aware marketplace experiments

  • Built simulation or counterfactual testing platforms for marketplace or auction systems

  • Strong background in resiliency and reliability: ensuring system availability under extreme load (live events, traffic spikes)

Generally, our compensation structure consists solely of an annual salary; we do not have bonuses. You choose each year how much of your compensation you want in salary versus stock options. To determine your personal top of market compensation, we rely on market indicators and consider your specific job family, background, skills, and experience to determine your compensation in the market range. The range for this role is $499,000.00 - $900,000.00.

Netflix provides comprehensive benefits including Health Plans, Mental Health support, a 401(k) Retirement Plan with employer match, Stock Option Program, Disability Programs, Health Savings and Flexible Spending Accounts, Family-forming benefits, and Life and Serious Injury Benefits. We also offer paid leave of absence programs. Full-time hourly employees accrue 35 days annually for paid time off to be used for vacation, holidays, and sick paid time off. Full-time salaried employees are immediately entitled to flexible time off. See more details about our Benefits here.

Netflix is a unique culture and environment. Learn more here.

Inclusion is a Netflix value and we strive to host a meaningful interview experience for all candidates. If you want an accommodation/adjustment for a disability or any other reason during the hiring process, please send a request to your recruiting partner.

We are an equal-opportunity employer and celebrate diversity, recognizing that diversity builds stronger teams. We approach diversity and inclusion seriously and thoughtfully. We do not discriminate on the basis of race, religion, color, ancestry, national origin, caste, sex, sexual orientation, gender, gender identity or expression, age, disability, medical condition, pregnancy, genetic makeup, marital status, or military service.

总浏览量

0

申请点击数

0

模拟申请者数

0

收藏

0

关于Netflix

Netflix

Netflix

Public

An online streaming platform that enables users to watch TV shows and movies.

10,001+

员工数

Los Gatos

总部位置

$280B

企业估值

评价

3.8

10条评价

工作生活平衡

2.8

薪酬

4.2

企业文化

3.9

职业发展

3.8

管理层

3.2

68%

推荐给朋友

优点

Great benefits and compensation

Innovative and diverse culture

Supportive team and management

缺点

Fast-paced and high pressure environment

Work-life balance issues and long hours

High workload and expectations

薪资范围

1,874个数据点

Mid/L4

Mid/L4 · ANALYTICS ENGINEER

7份报告

$211,536

年薪总额

基本工资

$211,536

股票

-

奖金

-

$275,850

$358,605

面试经验

3次面试

难度

3.7

/ 5

体验

正面 0%

中性 67%

负面 33%

面试流程

1

Application Review

2

Recruiter Screen

3

Technical Phone Screen

4

System Design Interview

5

Onsite/Virtual Interviews

6

Final Round

常见问题

Coding/Algorithm

System Design

Behavioral/STAR

Technical Knowledge

Culture Fit