๐ฐ Frugal GPT is a three-step process introduced in a paper that helps reduce the cost of LLM APIs by up to 98% while maintaining performance.
๐ The three steps of Frugal GPT are prompt adoption, LLM approximation, and LLM cascade, which collectively reduce the inference cost associated with LLM APIs while improving accuracy.
๐ Implementing Frugal GPT not only saves money but also promotes sustainability and improves response latency in applications that use LLM APIs.
FrugalGPT is introducing a new approach to reduce GPT-4 API costs.
The approach includes three steps: prompt adaption, llm approximation, and llm Cascade.
FrugalGPT allows for using a combination of multiple models instead of relying solely on gpt4.
๐ Frugal GPT aims to balance performance and cost by combining open source models with GPT-4.
๐ The architecture of Frugal GPT consists of prompt selection, query concatenation, completion cache, model fine-tuning, and LLM cascade.
โ๏ธ Prompt adaption and LLM approximation are key steps in Frugal GPT's architecture.
โ The FrugalGPT prompt selector is important for reducing API costs while maintaining accuracy.
๐ Using a query concatenator can help decrease the number of API calls and improve response time.
๐ Prompt adaption techniques such as prompt selector and query concatenator can help optimize the GPT API usage.
๐ Creating a cache of previously asked questions can reduce GPT-4 API costs
๐ฏ Model fine-tuning allows for using a smaller and cheaper language model like gptj
๐ Using an LLM Cascade approach reduces the need for querying the GPT-4 API
๐ก Reducing GPT-4 API costs can be achieved by implementing three effective steps: prompt adoption, LLM approximation, and LLM Cascade.
โ Prompt adoption involves using simple if-else rules to stop the search once an accepted answer is found.
๐ LLM approximation includes strategies like query concatenation, completion cache, and model fine-tuning to minimize the use of expensive APIs.
โ๏ธ In LLM Cascade, the query is sent through multiple models, stopping at the most accurate one if the result meets expectations.
๐ Implementing these steps not only reduces costs but also improves accuracy, as Frugal GPT has outperformed GPT-4 in certain instances.
๐ฐ FrugalGPT offers cost savings of up to 98% for using large language models.
๐ก This paper provides practical and common-sense strategies for reducing API costs.
๐ The paper shares research on cost reduction and performance improvement with large language models.
Five Nights At Freddy's | Official Trailer
El Zatoona - ุงูุฒุชููุฉ - 11- Why men marry Bitches - ูู ุงุฐุง ูุชุฒูุฌ ุงูุฑุฌุงู ู ู ุงูุนุงู***
Create a Telegram Bot in python and connect it to MongoDB Atlas Cloud Database (pymongo)
Estensione di Chrome "Google Traduttore" come mai si utilizza!
Most Uncomfortable Products Ever Designed
Are you ready for a $70 Diablo IV expansion?