PushGen: Push Notifications Generation with LLM
By: Shifu Bie , Jiangxia Cao , Zixiao Luo and more
We present PushGen, an automated framework for generating high-quality push notifications comparable to human-crafted content. With the rise of generative models, there is growing interest in leveraging LLMs for push content generation. Although LLMs make content generation straightforward and cost-effective, maintaining stylistic control and reliable quality assessment remains challenging, as both directly impact user engagement. To address these issues, PushGen combines two key components: (1) a controllable category prompt technique to guide LLM outputs toward desired styles, and (2) a reward model that ranks and selects generated candidates. Extensive offline and online experiments demonstrate its effectiveness, which has been deployed in large-scale industrial applications, serving hundreds of millions of users daily.
Similar Papers
Attributes as Textual Genes: Leveraging LLMs as Genetic Algorithm Simulators for Conditional Synthetic Data Generation
Computation and Language
Makes computer-made text more like real text.
Amplifying Your Social Media Presence: Personalized Influential Content Generation with LLMs
Social and Information Networks
Makes social media posts more popular and seen.
LLM-Generated Ads: From Personalization Parity to Persuasion Superiority
Computers and Society
AI ads persuade people better than human ads.