Responsible for developing and deploying machine learning systems for product recommendations, search, and catalog intelligence. This position requires a Master's degree or equivalent in Data Science, Statistics, or Computer Science and 1 year of experience working in data science and machine learning.
Must also have 6 months of experience with each of the following: (1) using both established and cutting edge deep learning and statistical models to build data science products that power personalized and differentiated customer experiences; (2) implementing statistical models and machine learning algorithms to optimize for customer and business outcomes at scale; (3) building statistical measurement capabilities to measure the incremental impact of new experiences on a wide variety of outcomes; (4) utilizing data visualization tools, knowledge and application of cloud computing services, including machine learning operations and orchestration; and (5) working with the following tools: Python, R, Kafka, Airflow, GCP, Redis as well as the following deep learning stacks: pytorch, tensorflow, and huggingface. Will accept experience gained before, during or after Master's program. Employer will accept experience gained concurrently.
Please go to our website for benefits information and to apply: https://www.shipt.com/careers/ or apply by email at careers@shipt.com.
JOBS.NOW Note: To tap into these hidden job opportunities, it's crucial to adhere strictly to the application process outlined in each job ad. At JOBS.NOW, we ensure that every listing includes detailed employer instructions. Follow them precisely to be considered for these unique positions!
The "Log Application" button simply allows you to log the application for your records - JOBS.NOW does not submit any applications to employers directly. Remember to still apply through the method indicated in the job ad (mail, email, or via link).
Please note that JOBS.NOW is an independent website and does not post this listings on behalf of any employers nor do we receive any compensation for these listings. All listings are sourced via media or internet channels required by the PERM process.