Senior Applied AI Engineer
Company: Quizlet
Location: San Francisco
Posted on: February 14, 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 (Applied AI): Our mission is to invent
and deploy the next generation of intelligent, personalized, and
adaptive learning experiences. We’re consolidating AI efforts
across the company into a unified portfolio and are accountable for
a disproportionate share of Quizlet’s growth and product
differentiation. You’ll partner closely with Product, Data Science,
and the AI & Data Platform to deliver an AI?driven learning coach
that’s recognized as best?in?class. About the Role: As an Applied
AI Engineer, you will be working at the forefront of our AI
strategy, shaping Quizlet’s AI develop in one of the two
complementary domains: Personalization & Ranking – retrieval and
ranking systems that match learners with the right content,
experiences, and monetization moments across surfaces (search,
feed, notifications, ads). Generative AI & Agentic Systems –
LLM?powered tutoring, content understanding/synthesis, and tools
that boost learner outcomes and creator productivity. You will work
on a variety of models and modeling systems (from Two?Tower
retrieval and multi?task rankers to RAG/LLM pipelines), ensure
robust evaluation and responsible deployment 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: Contribute to the
technical roadmap for applied AI across personalization, ranking,
search, recommendations, and GenAI/LLM systems; help connect
modeling work to business metrics (engaged learners, conversion,
retention, revenue) Build components of end?to?end ML systems:
candidate sourcing, embedding platforms & ANN retrieval,
multi?stage ranking (early/late), and value modeling with
guardrails for fairness and integrity Implement LLM?based features:
build RAG pipelines, apply instruction?/preference?tuning
techniques (e.g., SFT/DPO), optimize prompts, and improve
latency/cost?aware inference; contribute to offline evals
human?in?the?loop and online success metrics Help develop "Learner
360" representations by working with behavior signals, explicit
inputs, and conversational context to create robust embeddings
reused across surfaces Support evaluation infrastructure:
contribute to the eval harness for both ranking and generative
systems (offline metrics like NDCG/AUC/BLEU/BERTScore ;
quality/safety scorecards), and help close the loop with online A/B
experiments Ship reliable systems at scale: ensure training?serving
consistency, implement drift detection, follow canarying/rollback
protocols, participate in on?call rotation for model services, and
maintain strong CI/CD for features & models Collaborate with and
learn from senior ML/SWE teammates; write high?quality code and
follow best practices for experimentation rigor and reproducibility
Work closely with Product, Design, Legal, and Data Science on
objectives, tradeoffs, and responsible AI practices Stay current
with ML research (RecSys, LLMs, multimodal) and propose new methods
that could improve learner outcomes What you bring to the table:
5-8 years of industry experience in applied ML/AI or ML?heavy
software engineering BS/MS in CS, ML, or related quantitative field
(or equivalent experience) Experience building
ranking/personalization or search systems (retrieval,
Two?Tower/dual encoders, multi?task rankers) and contributing to
online metric improvements (e.g., CTR, session depth, retention)
Hands?on experience with LLM/GenAI systems: data curation,
fine?tuning (SFT/PEFT, preference optimization), prompt
engineering, evaluation, and productionization considerations
(latency/cost/safety) Strong skills in Python/PyTorch, data and
feature engineering, distributed training/inference on GPUs, and
familiarity with modern MLOps (model registry, feature stores,
monitoring, drift) Solid experiment design (offline/online),
metrics literacy, and ability to translate product goals into
modeling solutions Strong collaboration skills and eagerness to
learn from senior engineers; some experience mentoring junior
teammates is a plus Bonus points if you have: EdTech or consumer
mobile experience; conversational tutoring or learning
science?informed modeling Publications/open?source with RecSys/LLMs
(e.g., RecSys, KDD, NeurIPS, ICLR, ACL), or contributions to
safety/guardrails tooling Experience building on a modern MLOps
stack (feature mgmt, orchestration, streaming, online inference 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
$162,500 - $240,324, 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, Carmichael , Senior Applied AI Engineer, Engineering , San Francisco, California