2,211 research outputs found
Research Directions in Information Systems for Humanitarian Logistics
This article systematically reviews the literature on using IT (Information Technology) in humanitarian logistics focusing on disaster relief operations. We first discuss problems in humanitarian relief logistics. We then identify the stage and disaster type for each article as well as the article’s research methodology and research contribution. Finally, we identify potential future research directions
Intelligent Personalized Trading Agents that facilitate Real-time Decisionmaking for Auctioneers and Buyers in the Dutch Flower Auctions
In this case the Dutch Flower Auctions (DFA) are discussed. The DFA are part of the supply network in which flowers are produced, stocked, and then sold through either mediation or auctioning. This case focuses on the buyers’ and auctioneers’ positions when flowers are traded through auctions. This case deals with the application of personalized agents as part of a Decision Support System which empowers the decision maker. The decision makers discussed in this case are the auctioneers who control the auction process, and the buyers who bid at the clock auction. Agents are defined as software programs that sense their environment and react autonomously on their environment in order to maximize a certain outcome. The agents, as envisioned in this case, are able to determine users’ preferences and based on these preferences agents can proactively make recommendations. Agents as applied to the auction process could empower the auctioneers in their decisions. Another type of agent could empower the buyer, since buyers have the high-pressure task of buying at the clock auction
AutoGen: Enabling Next-Gen LLM Applications via Multi-Agent Conversation Framework
This technical report presents AutoGen, a new framework that enables
development of LLM applications using multiple agents that can converse with
each other to solve tasks. AutoGen agents are customizable, conversable, and
seamlessly allow human participation. They can operate in various modes that
employ combinations of LLMs, human inputs, and tools. AutoGen's design offers
multiple advantages: a) it gracefully navigates the strong but imperfect
generation and reasoning abilities of these LLMs; b) it leverages human
understanding and intelligence, while providing valuable automation through
conversations between agents; c) it simplifies and unifies the implementation
of complex LLM workflows as automated agent chats. We provide many diverse
examples of how developers can easily use AutoGen to effectively solve tasks or
build applications, ranging from coding, mathematics, operations research,
entertainment, online decision-making, question answering, etc.Comment: 28 page
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