ML Ops Engineer, Machine Learning & AI
Company: The New York Times
Location: New York City
Posted on: April 1, 2026
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Job Description:
The mission of The New York Times is to seek the truth and help
people understand the world. That means independent journalism is
at the heart of all we do as a company. It’s why we have a
world-renowned newsroom that sends journalists to report on the
ground from nearly 160 countries. It’s why we focus deeply on how
our readers will experience our journalism, from print to audio to
a world-class digital and app destination. And it’s why our
business strategy centers on making journalism so good that it’s
worth paying for. About the Role: Machine Learning (ML) at the New
York Times enhances the experience of our 150 million digital
readers from around the globe and grows our subscriber base through
content recommendations and personalizations. The Machine Learning
& AI team builds and maintains the infrastructure that hosts all of
The New York Times real-time ML inference models, including both
data and compute. Our partners are Data Scientists that build and
deploy their ML models on the ML platform. On the other end, our
partners are engineering systems that call these hosted models at
scale with low-latency and Service Level Agreements guaranteed by
our platform. As an MLOps Engineer you will partner with product,
data science and ML platform engineers to build and maintain the
infrastructure that powers the machine learning lifecycle. You will
automate and refine the training, deployment, monitoring, and
management of our ML models. This role reports to the Senior
Engineering Manager of Data Management Infrastructure.
Responsibilities: Build and Automate ML Pipelines: by owning robust
CI/CD pipelines for automated model training, validation,
deployment, and retraining. Productionalize Models: Build the
process for packaging, containerizing, and deploying ML models as
scalable, low-latency, and highly-available services. Monitoring
and Operations: Implement and manage comprehensive monitoring for
production models, tracking system health, data drift, and model
performance degradation. Tooling and Infrastructure: Manage and
evolve our MLOps toolchain, including model registries, feature
stores, experiment tracking systems, and model serving platforms.
Collaboration and Support: Partner with data scientists to
understand model requirements and optimize them for production.
Support software engineers in integrating with ML services. Best
Practices and Governance: Champion and enforce MLOps best practices
for reproducibility, versioning (data, code, model), testing, and
governance. Demonstrate support and understanding of our value of
journalistic independence and a strong commitment to our mission to
seek the truth and help people understand the world. Basic
Qualifications: 2 years of software engineering or DevOps
experience with a focus on MLOps, automation, and infrastructure 2
years of experience programming in Python or Go Experience building
and managing CI/CD pipelines (e.g., Github Actions, Jenkins, GitLab
CI) Hands-on experience with containerization and orchestration
(e.g., Docker, Kubernetes) Cloud platform experience (AWS, GCP) and
familiarity with infrastructure-as-code (e.g., Terraform,
CloudFormation) Preferred Qualifications: Experience with MLOps
tools (e.g., MLflow, Kubeflow) Experience with the machine learning
model lifecycle, from experimentation to production Experience with
data processing frameworks (e.g., Spark, Dask, or Ray) Experience
with low-latency no-sql datastores (BigTable, Dynamo, etc)
Familiarity with monitoring and observability stacks (e.g.,
Prometheus, Grafana, Datadog, or ELK) Knowledge of data engineering
pipelines and orchestration tools (e.g., Airflow, Prefect)
REQ-019522 LI-hybrid The annual base pay range for this role is
between: $110,000 - $130,000 USD For roles in the U.S., dependent
on your role, you may be eligible for variable pay, such as an
annual bonus and restricted stock. Benefits may include medical,
dental and vision benefits, Flexible Spending Accounts (F.S.A.s), a
company-matching 401(k) plan, paid vacation, paid sick days, paid
parental leave, tuition reimbursement and professional development
programs. For roles outside of the U.S., information on benefits
will be provided during the interview process. The New York Times
Company is committed to being the world’s best source of
independent, reliable and quality journalism. To do so, we embrace
a diverse workforce that has a broad range of backgrounds and
experiences across our ranks, at all levels of the organization. We
encourage people from all backgrounds to apply. We are an Equal
Opportunity Employer and do not discriminate on the basis of an
individual's sex, age, race, color, creed, national origin,
alienage, religion, marital status, pregnancy, sexual orientation
or affectional preference, gender identity and expression,
disability, genetic trait or predisposition, carrier status,
citizenship, veteran or military status and other personal
characteristics protected by law. All applications will receive
consideration for employment without regard to legally protected
characteristics. The U.S. Equal Employment Opportunity Commission
(EEOC)’s Know Your Rights Poster is available here . The New York
Times Company will provide reasonable accommodations as required by
applicable federal, state, and/or local laws. Individuals seeking
an accommodation for the application or interview process should
email reasonable.accommodations@nytimes.com. Emails sent for
unrelated issues, such as following up on an application, will not
receive a response. The Company encourages those with criminal
histories to apply, and will consider their applications in a
manner consistent with applicable "Fair Chance" laws, including but
not limited to the NYC Fair Chance Act, the Los Angeles Fair Chance
Initiative for Hiring Ordinance, the San Francisco Fair Chance
Ordinance, the Los Angeles County Fair Chance Ordinance for
Employers, and the California Fair Chance Act. For information
about The New York Times' privacy practices for job applicants
click here . Please beware of fraudulent job postings. Scammers may
post fraudulent job opportunities, and they may even make
fraudulent employment offers. This is done by bad actors to collect
personal information and money from victims. All legitimate job
opportunities from The New York Times will be accessible through
The New York Times careers site . The New York Times will not ask
job applicants for financial information or for payment, and will
not refer you to a third party to do so. You should never send
money to anyone who suggests they can provide employment with The
New York Times. If you see a fake or fraudulent job posting, or if
you suspect you have received a fraudulent offer, you can report it
to The New York Times at NYTapplicants@nytimes.com. You can also
file a report with the Federal Trade Commission or your state
attorney general .
Keywords: The New York Times, Fairfield , ML Ops Engineer, Machine Learning & AI, IT / Software / Systems , New York City, Connecticut