Senior Staff Machine Learning Engineer, Personalization & Recommendations
Company: Quizlet
Location: San Francisco
Posted on: February 18, 2026
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Job Description:
Job Description Job Description About Quizlet: At Quizlet, our
mission is to help every learner achieve their outcomes in the most
effective and delightful way. Our $1B learning platform serves tens
of millions of students every month, including two-thirds of U.S.
high schoolers and half of U.S. college students, powering over 2
billion learning interactions monthly. We blend cognitive science
with machine learning to personalize and enhance the learning
experience for students, professionals, and lifelong learners
alike. We’re energized by the potential to power more learners
through multiple approaches and various tools. Let’s Build the
Future of Learning Join us to design and deliver AI-powered
learning tools that scale across the world and unlock human
potential. About the Team: The Personalization & Recommendations ML
Engineering team builds the core intelligence behind how Quizlet
matches learners with content, activities, and experiences that
best fit their goals. We power recommendation and search systems
across multiple surfaces, from home feed and search results to
adaptive study modes. Our team's objective is to make Quizlet feel
uniquely tailored for every learner by combining cutting-edge
machine learning, scalable infrastructure, and insights from
learning science. You’ll collaborate closely with Product Managers,
Data Scientists, Platform Engineers, and fellow ML engineers to
deliver personalized learning pathways that drive engagement,
satisfaction, and measurable learning outcomes. About the Role: As
a senior technical leader on the Personalization & Recommendations
team, you’ll not only architect cutting-edge personalization
systems but also guide the strategic direction of Quizlet’s
AI-driven learner experience, mentoring peers and influencing
decisions across the company. In this role, you’ll architect and
implement large-scale retrieval, ranking and recommendation systems
that directly shape the learner experience. You’ll bring modern
RecSys expertise (from deep learning–based retrieval and embeddings
to multi-task ranking and reinforcement learning) and help evolve
Quizlet’s personalization stack. You’ll help define and deliver
systems that learn from billions of interactions while respecting
learner privacy, fairness and integrity. We’re happy to share that
this is an onsite position in our San Francisco office. To help
foster team collaboration, we require that employees be in the
office a minimum of three days per week : Monday, Wednesday, and
Thursday and as needed by your manager or the company. We believe
that this working environment facilitates increased work
efficiency, team partnership, and supports growth as an employee
and organization. In this role, you will: Work closely with other
senior leaders to define and drive the long-term technical vision
for personalization and recommendations across multiple Quizlet
surfaces, ensuring alignment between modeling strategy, platform
capabilities, and product roadmaps Communicate complex modeling
trade-offs and recommendations to diverse audiences (from senior
leadership to cross-functional partners) influencing decisions
through clear reasoning, data, and empathy Architect and build
large-scale personalization models across candidate retrieval,
ranking, and post-ranking layers, leveraging user embeddings,
contextual signals, and content features to power adaptive learning
experiences Develop scalable retrieval and serving systems using
modern architectures such as Two-Tower, deep ranking, and ANN-based
vector search for real-time personalization at global scale Lead
model training, evaluation, and deployment pipelines for retrieval
and ranking systems, ensuring training-serving consistency,
reliability, and robust monitoring Partner closely with Product and
Data Science to translate learning objectives (e.g., engagement,
retention, and mastery) into measurable modeling goals and
experimentation frameworks Advance evaluation methodologies by
refining offline metrics (e.g., NDCG, CTR, calibration) and online
A/B testing to rigorously measure learner impact and model
performance Collaborate with platform and infrastructure teams to
optimize distributed training, inference latency, and
cost-efficient serving in production environments Stay at the
forefront of personalization and RecSys research, bringing relevant
advances from top conferences (KDD, WSDM, SIGIR, RecSys, NeurIPS)
into applied production systems Mentor and coach engineers and
applied scientists, fostering technical excellence,
reproducibility, and responsible AI practices across the
organization Champion a culture of collaboration, inclusivity, and
experimentation, helping elevate Quizlet’s AI craft and ensuring
personalization systems serve learners equitably and effectively
What you bring to the table: 12 years of experience in applied
machine learning or ML-heavy engineering, with deep expertise in
personalization, ranking, or recommendation systems Proven ability
to shape technical direction across multiple teams or disciplines,
balancing long-term architectural vision with near-term product and
business priorities Exceptional communication and storytelling
skills — able to distill complex technical concepts into clear
narratives for executives, product partners, and non-technical
audiences Demonstrated leadership through influence, guiding teams
through ambiguity, aligning stakeholders around measurable goals,
and ensuring accountability for impact Experience mentoring senior
engineers and applied scientists, leading technical working groups,
and driving cross-team innovation and standardization Track record
of measurable impact, improving key online metrics such as CTR,
retention, and engagement through recommender, ranking, or search
systems in production Deep technical understanding of modern
retrieval and ranking architectures (e.g., Two-Tower, deep cross
networks, GNNs, MMoE, Transformers) and multi-stage RecSys
pipelines. Strong hands-on skills in Python and PyTorch, with
expertise in data and feature engineering, distributed training and
inference on GPUs, and familiarity with modern MLOps practices —
including model registries, feature stores, monitoring, and drift
detection Experience with large-scale embedding models and vector
search systems (FAISS, ScaNN, or similar), including training,
serving, and optimization at scale Expertise in experimentation and
evaluation, connecting offline metrics (AUC, NDCG, calibration)
with online A/B results to drive confident, data-informed decisions
Commitment to collaboration and inclusion, fostering a culture that
values diverse perspectives, constructive debate, and shared
ownership of results Bonus points if you have: Publications or
open-source contributions in RecSys, search, or ranking Familiarity
with reinforcement learning for recommendations or contextual
bandits Experience with hybrid RecSys systems blending
collaborative filtering, content understanding, and LLM-based
reasoning Prior work in consumer or EdTech applications with
personalization at scale Compensation, Benefits & Perks: Quizlet is
an equal opportunity employer. We celebrate diversity and are
committed to creating an inclusive environment for all employees.
Salary transparency helps to mitigate unfair hiring practices when
it comes to discrimination and pay gaps. Total compensation for
this role is market competitive, including a starting base salary
of $247,800 - $346,450, depending on location and experience, as
well as company stock options Collaborate with your manager and
team to create a healthy work-life balance 20 vacation days that we
expect you to take! Competitive health, dental, and vision
insurance (100% employee and 75% dependent PPO, Dental, VSP Choice)
Employer-sponsored 401k plan with company match Access to LinkedIn
Learning and other resources to support professional growth Paid
Family Leave, FSA, HSA, Commuter benefits, and Wellness benefits 40
hours of annual paid time off to participate in volunteer programs
of choice Why Join Quizlet? \uD83C\uDF0E Massive reach: 60M users,
1B interactions per week \uD83E\uDDE0 Cutting-edge tech: Generative
AI, adaptive learning, cognitive science \uD83D\uDCC8 Strong
momentum: Top-tier investors, sustainable business, real traction
\uD83C\uDFAF Mission-first: Work that makes a difference in
people’s lives \uD83E\uDD1D Inclusive culture: Committed to equity,
diversity, and belonging We strive to make everyone feel
comfortable and welcome! We work to create a holistic interview
process, where both Quizlet and candidates have an opportunity to
view what it would be like to work together, in exploring a
mutually beneficial partnership. We provide a transparent setting
that gives a comprehensive view of who we are! In Closing: At
Quizlet, we’re excited about passionate people joining our
team—even if you don’t check every box on the requirements list. We
value unique perspectives and believe everyone has something
meaningful to contribute. Our culture is all about taking
initiative, learning through challenges, and striving for
high-quality work while staying curious and open to new ideas. We
believe in honest, respectful communication, thoughtful
collaboration, and creating a supportive space where everyone can
grow and succeed together.” Quizlet’s success as an online learning
community depends on a strong commitment to diversity, equity, and
inclusion. As an equal opportunity employer and a tech company
committed to societal change, we welcome applicants from all
backgrounds. Women, people of color, members of the LGBTQ
community, individuals with disabilities, and veterans are strongly
encouraged to apply. Come join us! To All Recruiters and Placement
Agencies: At this time, Quizlet does not accept unsolicited agency
resumes and/or profiles. Please do not forward unsolicited agency
resumes to our website or to any Quizlet employee. Quizlet will not
pay fees to any third-party agency or firm nor will it be
responsible for any agency fees associated with unsolicited
resumes. All unsolicited resumes received will be considered the
property of Quizlet. LI-FT We may use artificial intelligence (AI)
tools to support parts of the hiring process, such as reviewing
applications, analyzing resumes, or assessing responses. These
tools assist our recruitment team but do not replace human
judgment. Final hiring decisions are ultimately made by humans. If
you would like more information about how your data is processed,
please contact us.
Keywords: Quizlet, Oakland , Senior Staff Machine Learning Engineer, Personalization & Recommendations, Engineering , San Francisco, California