Staff Software Engineer, Machine Learning
Company: Match Group
Location: Palo Alto
Posted on: February 21, 2026
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Job Description:
Job Description Job Description Our Mission Launched in 2012,
Tinder® revolutionized how people meet, growing from 1 match to one
billion matches in just two years. This rapid growth demonstrates
its ability to fulfill a fundamental human need: real connection.
Today, the app has been downloaded over 630 million times, leading
to over 97 billion matches, serving approximately 50 million users
per month in 190 countries and 45 languages - a scale unmatched by
any other app in the category. In 2024, Tinder won four Effie
Awards for its first-ever global brand campaign, “It Starts with a
Swipe”™" Our Values One Team, One Dream We work hand-in-hand,
building Tinder for our members. We succeed together when we work
collaboratively across functions, teams, and time zones, and think
outside the box to achieve our company vision and mission. Own It
We take accountability and strive to make a positive impact in all
aspects of our business, through ownership, innovation, and a
commitment to excellence. Never Stop Learning We cultivate a
culture where it’s safe to take risks. We seek out input, share
honest feedback, celebrate our wins, and learn from our mistakes in
order to continue improving. Spark Solutions We’re problem solvers,
focusing on how to best move forward when faced with obstacles. We
don’t dwell on the past or on the issues at hand, but instead look
at how to stay agile and overcome hurdles to achieve our goals.
Embrace Our Differences We are intentional about building a
workplace that reflects the rich diversity of our members. By
leveraging different perspectives and other ways of thinking, we
build better experiences for our members and our team. Team
Introduction The Tinder ML team drives impact across nearly every
core domain of the product — Recommendations, Trust & Safety,
Profile, Chat, Growth, and Revenue optimization. Our mission is to
apply machine learning to enhance user experiences, foster trust,
and accelerate business growth across Tinder’s ecosystem. About the
Role In this position, we are looking for a highly motivated and
experienced Staff-level Machine Learning Engineer who operates at
the boundary of multiple domains and partners closely with the
Director of Engineering. This is a senior individual contributor
role for someone who thrives in ambiguity, can step into complex or
struggling initiatives across domains, and help drive them back on
track through hands-on technical leadership. While most ML
engineers are embedded within a single pod, this role is
intentionally cross-cutting. You will work across domains (for
example, Trust & Safety and Profile, or Recommendations and
Growth), identifying gaps, unblocking execution, and setting
technical direction where ownership is unclear, or problems span
multiple teams. In this role, you will operate in multiple modes
depending on the needs of the organization. At times, you will act
as a hands-on technical leader, driving complex initiatives that
span multiple teams. At other times, you will embed with a single
pod to provide deep technical support and help unblock execution.
You will also act as a strategic thought partner to engineering
managers—helping shape direction and identify gaps, risks, and
opportunities across ML systems that cut across domains. In
addition, you will work closely with domain tech leads as a
cross-domain advisor, helping bridge architectures, data, and
decisions across teams. This role offers a unique opportunity to
gain deep, end-to-end understanding of how machine learning
operates across every corner of Tinder’s product and bring
strategic view into the team together with engineering manager,
while having a direct hands-on impact as IC. Where you'll work This
is a hybrid role and requires in-office collaboration three days
per week. This position is located in Palo Alto, CA What You'll Do:
Lead and execute cross-cutting machine learning initiatives that
span multiple ML domains, especially where ownership is unclear or
problems cut across teams. Partner closely with the Director of
Engineering to identify the opportunities and set the technical
direction of ML team. Step into complex or struggling projects,
diagnose issues quickly, and help bring them back on track through
hands-on technical leadership and execution. Embed with individual
pods as needed to provide deep technical support, unblock delivery,
and raise the quality bar for ML systems and implementations. Act
as a strategic thought partner to engineering managers, helping
shape technical strategy and identify gaps, risks, and
opportunities across ML platforms and systems. Collaborate with
domain tech leads as a cross-domain advisor, aligning
architectures, data pipelines, and modeling approaches across
teams. Influence technical direction and best practices across the
ML organization through design reviews, code reviews, and
architectural guidance. Mentor senior engineers and help develop
technical leadership across the team, without direct people
management responsibility. Required Qualifications: BS/MS in
Computer Science or an equivalent field with 8 years of experience
designing, building, and shipping production machine learning
systems at scale At least two peer-reviewed publications in
top-tier conferences or journals (e.g., NeurIPS, ICML, ICLR, KDD,
WWW, ACL, CVPR, or equivalent), demonstrating strong ML
fundamentals and technical depth Strong communication skills, with
the ability to explain complex technical concepts clearly to both
technical and non-technical audiences Professional work experience
in Recommendation Systems or Causal Inference (Revenue or Growth)
Strong hands-on engineering skills, with the ability to write,
review, and debug production-quality code and ML pipelines Proven
track record as a senior individual contributor (Staff or Principal
level) of translating complex, ambiguous business problems into
Machine Learning problems Deep understanding of end-to-end ML
systems, including data pipelines, modeling, evaluation,
deployment, and monitoring Experience of partnering closely with
engineering managers and senior stakeholders to lead cross-team
initiatives, shape technical direction and execution Hands-on
experience with the following (or equivalent/similar) tools in
production environments: Kubernetes, Triton Inference Server, Ray
Serve, Airflow, Flink, or Spark (Databricks) Factors such as scope
and responsibilities of the position, candidate's work experience,
education/training, job-related skills, internal peer equity, as
well as market and business considerations may influence base pay
offered. This salary will be subject to a geographic adjustment
(according to a specific city and state), if an authorization is
granted to work outside of the location listed in this posting.
Commitment to Inclusion At Tinder, we don’t just accept difference,
we celebrate it. We strive to build a workplace that reflects the
rich diversity of our members around the world, and we value unique
perspectives and backgrounds. Even if you don’t meet all the listed
qualifications, we invite you to apply and show us how your skills
could transfer. Tinder is proud to be an equal opportunity
workplace where we welcome people of all sexes, gender identities,
races, ethnicities, disabilities, and other lived experiences.
Learn more here: https://www.lifeattinder.com/dei If you require
reasonable accommodation to complete a job application,
pre-employment testing, or a job interview or to otherwise
participate in the hiring process, please speak to your Talent
Acquisition Partner directly. Tinder
Keywords: Match Group, Watsonville , Staff Software Engineer, Machine Learning, IT / Software / Systems , Palo Alto, California