Shopping Companion: A Memory-Augmented LLM Agent for Real-World E-Commerce Tasks
arXiv cs.CL / 3/17/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper introduces a long-term memory benchmark for shopping tasks spanning 1.2 million real-world products to evaluate memory-aware LLM agents.
- It proposes Shopping Companion, a unified framework that jointly handles memory retrieval and shopping assistance while supporting user intervention.
- A dual-reward reinforcement learning strategy with tool-wise rewards is developed to address sparse and discontinuous rewards in multi-turn interactions, enabling effective training.
- Experimental results show that even strong models like GPT-5 achieve under 70% success on the benchmark, highlighting significant challenges and the value of memory-augmented, end-to-end designs in e-commerce.
Related Articles
Automating the Chase: AI for Festival Vendor Compliance
Dev.to
MCP Skills vs MCP Tools: The Right Way to Configure Your Server
Dev.to
500 AI Prompts Every Content Creator Needs in 2026 (20 Free Samples)
Dev.to
Building a Game for My Daughter with AI — Part 1: What If She Could Build It Too?
Dev.to

Math needs thinking time, everyday knowledge needs memory, and a new Transformer architecture aims to deliver both
THE DECODER