Shipt

retail tech

StaffMachineLearningEngineer

San Francisco, California, United States FULL TIME Remote Friendly
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Senior candidates.

The Brief

“Staff Machine Learning Engineer at Shipt. Skills: Machine Learning, AI Engineering, backend software engineering. Drive key AI initiatives. Design and deploy intelligent, personalized recommendation models”

What You'll Achieve.

Drive user engagement; Deliver high quality AI driven solutions

Industry & Context.

retail tech

What They're Looking For.

Must Have

5 + years of experience in machine learning, backend software engineering, Proficiency in at least one backend programming language (e. g. , Go, Java) and Python, Deep understanding of user modeling, embeddings, similarity search, ranking models, Strong experience with serving architectures (e. g. , REST/gRPC APIs, model servers), Experience with ML pipeline tools (e. g. , MLflow, Kubeflow, Airflow), Strong grasp of distributed systems, microservices, system design, Experience with SQL and NoSQL databases, working with large-scale datasets, Exposure to experimentation platforms, online A testing

Nice to Have

Kubernetes

What You'll Do.

Drive key AI initiatives

Design and deploy intelligent

personalized recommendation models

Drive user engagement

Contribution to architecture

Deliver high quality AI driven solutions

build and maintain scalable ML infrastructure

Architect data pipelines for serving and training ML models

and fault-tolerant systems

Serve real-time recommendations at scale

Develop robust APIs and services

Deliver real-time or batch recommendations

How You'll Work.

Team & Collaboration

Collaborate with Data Scientists; cross-functional role

Full Job Description

# **Impact** As a Staff Machine Learning Engineer on Shipt's Personalization Platform team you will drive key AI initiatives. In this role, you’ll collaborate with Data Scientists to design and deploy intelligent, personalized recommendation models to drive user engagement across Shipt. You will be a hands-on senior technical contributor in the Membership organization and your work will consist of contribution to architecture, design, and implementation to deliver high quality AI driven solutions in a rapidly evolving marketplace environment. In this role you will design, build and maintain scalable ML infrastructure and production systems as well as closely collaborate with Data Scientists to architect data pipelines for serving and training ML models for Shipt's Personalization Platform. You will also be responsible for leading the team to build scalable, low-latency, and fault-tolerant systems to serve real-time recommendations at scale and developing robust APIs and services to deliver real-time or batch recommendations (using Python, Go). This is a hands-on, cross-functional role ideal for someone who thrives at the intersection of Machine Learning, AI Engineering, and Business Impact. # ****What You’ll Need to Be Successful**** * **5 + years of experience in machine learning and backend software engineering** * **Proficiency in at least one backend programming language (e.g., Go, Java) and Python** * **Deep understanding of user modeling, embeddings, similarity search and ranking models** * **Strong experience with serving architectures (e.g., REST/gRPC APIs, model servers)** * **Experience with ML pipeline tools (e.g., MLflow, Kubeflow, Airflow)** * **Strong grasp of distributed systems, microservices, and system design** * **Experience with SQL and NoSQL databases and working with large-scale datasets** * **Exposure to experimentation platforms and online A/B testing.** # **Skills & Education ** This list includes key skills used in this job but is not inclu

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