Sales listings on Amazon written by generative AI

Sales listings on Amazon written by generative AI

Amazon has launched a new generative AI tool that creates copy listings for users selling items on the ​company’s e-commerce platform.

Designed to simplify the selling process, the ⁣new tool reduces the need for sellers to enter many pieces of specific‍ product data ⁣when generating product descriptions.⁣ Instead, users⁣ can now enter a brief description of the product they are listing for sale – Amazon said this can be a few words or sentences – and ‌the tool will generate the necessary copy, which sellers can then review and refine ⁣before uploading their item to the Amazon catalog.

“These new capabilities will​ help‌ sellers create high-quality listings with less effort⁢ and present customers with more complete, consistent, and ⁢engaging product information”, Amazon said in a blog ‍post announcing the tool.

The new generative AI tool⁤ is fueled by a large language model (LLM) that Amazon has been developing internally, as ‍revealed by CEO ⁤Andy Jassy during the ​company’s first-quarter earnings call in April. Originally built to support‍ its smart assistant, Alexa, Jassy told analysts on the call that Amazon’s LLM model contained “a couple of⁣ hundred million endpoints” that were being used across ‌entertainment, shopping, and⁤ smart homes.

That same month, Amazon’s cloud computing division, AWS, launched Bedrock, a foundation‍ model API service that allows small companies ⁤who lack the necessary people power to develop their own LLMs to access pre-trained models, including those built ⁤by AI21 Labs, Anthropic, and Stability‍ AI.

“With our new generative AI models, we can infer, improve, and enrich product knowledge ‍at an unprecedented scale and with dramatic improvement in quality, ⁣performance, and efficiency,” said Robert Tekiela, vice president of Amazon selection and catalog systems,⁣ in comments posted alongside⁣ the announcement.

“Our models ⁤learn to infer product information through⁤ the diverse sources of⁤ information,⁢ latent knowledge, and logical ⁣reasoning ‌that they learn. For example, they can infer a table is round if specifications list a diameter or​ infer the ⁢collar‌ style of a shirt from its image,” he said.

2023-09-18 04:24:02
Post from www.computerworld.com rnrn

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