Manager II, Machine Learning - Ads Retrieval
Company: Pinterest
Location: San Francisco
Posted on: May 20, 2025
Job Description:
About Pinterest:Millions of people around the world come to our
platform to find creative ideas, dream about new possibilities and
plan for memories that will last a lifetime. At Pinterest, we're on
a mission to bring everyone the inspiration to create a life they
love, and that starts with the people behind the product.Discover a
career where you ignite innovation for millions, transform passion
into growth opportunities, celebrate each other's unique
experiences and embrace the to do your best work. Creating a career
you love? It's Possible.Lead and empower a team of talented Machine
Learning Engineers within the Ads Retrieval Team at Pinterest,
driving the innovation and execution of our global Shopping Ads
platform. As a Manager II, Machine Learning, you will be
instrumental in shaping the technical vision and strategy for the
next generation of ads retrieval models and scalable
infrastructure. You will guide your team in pioneering advancements
across cutting-edge technologies vital to our advertising
ecosystem, including Generative Retrieval, User Sequence Modeling,
Learning to Rank, and large-scale Approximate Nearest Neighbor
(ANN) techniques. You will oversee the team's efforts in tackling
challenges at immense scale - managing a 5 billion+ shopping ads
index - and ensure we leverage the most efficient techniques to
deliver exceptional performance. This is a high-impact leadership
opportunity to shape the future of Pinterest Shopping Ads, directly
impacting user experience and advertiser success in a unique
discovery-driven marketplace.What you'll do:
- Lead and mentor a team of Machine Learning Engineers: Provide
technical guidance, mentorship, and career development for a team
focused on designing, implementing, and scaling next-generation
retrieval models for Shopping Ads. Foster a collaborative and
high-performing team culture.
- Define and drive the technical vision and strategy for Ads
Retrieval: Collaborate with Product, Data Science, and Engineering
leadership to establish a clear roadmap for innovation in retrieval
models and infrastructure, aligning with the overall Pinterest
Shopping Ads strategy.
- Oversee the design and implementation of advanced retrieval
models: Guide the team in pioneering advanced architectures beyond
traditional approaches, leading the implementation and optimization
of Generative Retrieval, User Sequence Modeling, and
Learning-to-Rank models to significantly enhance ad relevance,
capture user intent, and improve ranking quality.
- Direct the development and optimization of massively scalable
and efficient Ads Retrieval infrastructure: Lead the evolution of
our next-gen infrastructure, ensuring it can handle a 5 billion+
Shopping Ads index with lightning-fast, cost-effective retrieval
through techniques like efficient ANN algorithms, GPU-accelerated
systems, and embedding quantization.
- Champion innovation in personalized Shopping Ads
recommendations: Steer the team in developing hyper-personalized
retrieval models that incorporate user sequence modeling,
learning-to-rank, and generative retrieval to surface the most
relevant and novel ads, continuously pushing the boundaries of
personalization.
- Foster a holistic approach to retrieval excellence: Evaluate
and advocate for the integration of cutting-edge technologies,
including Large Language Models (LLMs), Generative Retrieval
techniques, advanced Sequence Models, and efficient ANN algorithms,
to continuously revolutionize Shopping Ads retrieval and enhance
relevance, efficiency, and user engagement.
- Collaborate cross-functionally at a leadership level: Partner
closely with Product Management, Data Science, and other
Engineering teams to holistically improve the user journey,
optimize ad performance across all stages of retrieval and ranking,
and drive demand-side growth for Shopping Ads, ensuring a balanced
approach across different modeling and infrastructure
innovations.
- Drive technical decision-making and ensure engineering best
practices: Establish and uphold high standards for code quality,
system design, and operational excellence within the team.What
we're looking for:
- MS or PhD in Computer Science, Statistics, or related field
with a strong foundation in machine learning and information
retrieval, and deep understanding of a range of retrieval modeling
techniques.
- 8+ years of industry experience architecting, building, and
scaling large-scale production recommendation or search systems,
with a significant focus on high-performance retrieval leveraging
diverse modeling approaches, including experience leading technical
teams.
- Deep expertise in recommendation systems, especially
large-scale retrieval algorithms and architectures, encompassing
Generative Retrieval, User Sequence Modeling, Learning-to-Rank, and
efficient ANN techniques.
- Mastery of deep learning techniques and a proven track record
of optimizing model performance for complex retrieval tasks in
large-scale environments, across various model types including
generative, sequence-based, and ranking models.
- Demonstrated ability to lead and grow high-performing
engineering teams, providing technical vision, guidance, and
mentorship. Experience managing complex technical projects across
multiple areas of retrieval innovation and driving balanced
technological advancements.
- Excellent communication and cross-functional collaboration
skills, capable of articulating complex technical visions to both
technical and non-technical audiences, building consensus across
diverse teams, and influencing at a leadership level, representing
a comprehensive understanding of various retrieval
technologies.
- Hands-on experience developing and deploying recommendation
systems utilizing Generative Retrieval, User Sequence Modeling,
and/or Learning-to-Rank techniques, with experience guiding teams
in these areas.
- Expertise in computational advertising, particularly within
Shopping Ads or e-commerce domains, with a broad understanding of
different retrieval modeling paradigms and their impact on business
outcomes.
- Proven track record of optimizing GPU-based systems for
high-throughput, low-latency retrieval and experience in
implementing embedding quantization and other efficiency techniques
at scale, with experience leading teams in these efforts.
- Familiarity with a wide range of retrieval efficiency and
scaling techniques, including efficient ANN algorithms, token-based
retrieval, and embedding quantization, and the ability to guide a
team in leveraging these techniques effectively.In-Office
Requirement StatementWe let the type of work you do guide the
collaboration style. That means we're not always working in an
office, but we continue to gather for key moments of collaboration
and connection.This role will need to be in the office for
in-person collaboration once a month, and therefore needs to be in
a commutable distance from one of the following offices: San
Francisco, Palo Alto, Seattle.This position is not eligible for
relocation assistance.#LI-HYBRID#LI-SM4At Pinterest we believe the
workplace should be equitable, inclusive, and inspiring for every
employee. In an effort to provide greater transparency, we are
sharing the base salary range for this position. The position is
also eligible for equity. Final salary is based on a number of
factors including location, travel, relevant prior experience, or
particular skills and expertise.Information regarding the culture
at Pinterest and benefits available for this position can be found
.US based applicants only$208,145-$364,254 USDOur Commitment to
Inclusion:Pinterest is an equal opportunity employer and makes
employment decisions on the basis of merit. We want to have the
best qualified people in every job. All qualified applicants will
receive consideration for employment without regard to race, color,
ancestry, national origin, religion or religious creed, sex
(including pregnancy, childbirth, or related medical conditions),
sexual orientation, gender, gender identity, gender expression,
age, marital status, status as a protected veteran, physical or
mental disability, medical condition, genetic information or
characteristics (or those of a family member) or any other
consideration made unlawful by applicable federal, state or local
laws. We also consider qualified applicants regardless of criminal
histories, consistent with legal requirements. If you require a
medical or religious accommodation during the job application
process, please complete for support.
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Keywords: Pinterest, Walnut Creek , Manager II, Machine Learning - Ads Retrieval, Executive , San Francisco, California
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