Amazon
Fulfillment Operations Management, Catalog, Retail
CatalogSpecialist
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Catalog Specialist at Amazon. Skills: Machine Learning, Data annotation. Work closely with product, technology, and science teams. Perform data annotation required to train and evaluate”
Industry & Context.
Analytical skills; Deep-dive on complex problems; Problem-solving skills
What They're Looking For.
Must Have
Work closely with product, technology, and science teams to support Machine Learning (ML) models, Perform data annotation required to train and evaluate ML models effectively, Support data scientists in the development of classification algorithms, Collaborate with cross-functional teams to ensure data annotation tasks align with project objectives and timelines, Maintain high-quality standards for annotated data to optimize model performance, Continuously evaluate and improve annotation processes to enhance efficiency and accuracy, Analytical skills, Ability to deep-dive on complex problems, Ability to manage multiple simultaneous projects requiring frequent communication, organization/time management and problem-solving skills
Nice to Have
Bachelor's degree or above in computer science, computer engineering, or related field, Experience in communicating technically, at a level appropriate for the audience, Proven experience in data annotation and labeling for ML model training and evaluation, Demonstrated ability to adapt to evolving technologies and methodologies in the ML domain
What You'll Do.
Work closely with product
Perform data annotation required to train and evaluate
Support data scientists in the development of classification
Collaborate with cross-functional teams to ensure data annotation
Maintain high-quality standards for annotated data to optimize
Continuously evaluate and improve annotation processes to enhance
How You'll Work.
Team & Collaboration
Cross-functional teams
Process & Methodology
Organization/time management, Problem-solving skills
Full Job Description
In the Worldwide Returns, ReCommerce & Sustainability (WW RR&S) group at Amazon, we are dedicated to ‘making zero happen’ – zero cost of returns, zero waste, and zero defects – to benefit our customers, company, and environment. We are an agile and inclusive organization that constantly innovates to create long-term value by investing in our people and our planet, not simply focusing on the bottom line. WW R&R includes business, product, operations, data, and software engineering teams, who together manage the lifecycle of returned and damaged products. In WW R&R, you will partner across these teams to help customers discover great deals on quality used, rentals, and open box items; get the most value out of Amazon’s products; improve the customer returns experience; and reduce defects, waste, and cost in reverse logistics processes. You will be a leader, a builder, and an owner, collaborating cross-functionally with technical, operations, and business teams to design scalable and automated solutions to customer problems. Amazon is Earth’s most customer-centric company and in WW R&R, the Earth is our customer too. Come join us and innovate with the Amazon Worldwide Returns, ReCommerce & Sustainability team! We are hiring an experienced Catalog Specialist to help us grow our business in innovative ways. In this role, you will work closely with our product, technology and science teams to support new Machine Learning (ML) models and data science classification algorithm development – all helping to delight our customers through new experiences throughout their Amazon shopping journey. Need candidates in language proficiency in: Spanish Key job responsibilities • Work closely with our product, technology, and science teams to support Machine Learning (ML) models • Perform data annotation required to train and evaluate ML models effectively • Support data scientists in the development of classification algorithms • Collaborate with cross-functional teams to ensure data
Applying for this Catalog Specialist role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
ANONYMOUS · UNFILTERED
What do employees actually say about Amazon?
Real rants from real employees. Read before you apply.