LLMs
When we deliver a model we make sure we don't reach X seconds of latency in our API. Before even going into performance of LLMs for classification, I can tell you that with the current available tech they are just infeasible.
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LinuxSpinach
•
5h ago
^ this. And especially classification as a task, because businesses don’t want to pay llm... See more
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LinuxSpinach
•
5h ago
^ this. And especially classification as a task, because businesses don’t want to pay llm... See more
r/MachineLearning - Reddit
We're doing NER on hundreds of millions of documents in a specialised niche. LLMs are terrible for this. Slow, expensive and horrifyingly inaccurate. Even with agents, pydantic parsing and the like. Supervised methods are the way to go. Hell, I'd take an old school rule based approach over LLMs for this.
The exact metrics we use depend on the application — our main goal is to understand how users use the feature and quickly make improvements to better meet their needs. For internal applications, this might mean measuring efficiency and sentiment. For consumer-facing applications, we similarly focus on measures of user satisfaction - direct user... See more
Developing Rapidly with Generative AI
For the deployment side of things, we found that the performance of our training process was quite slow, especially when it gets into these large language models and when you train from scratch. MosaicML offers what's called programmatic optimization, which is not so much on the hardware side of things, but rather on the algorithmic side. Can you... See more
CB Insights • 2024 Tech Trends
Source: CB Insights Report
Easily chunk complex documents the same way a human would.
Chunking documents is a challenging task that underpins any RAG system. High quality results are critical to a sucessful AI application, yet most open-source libraries are limited in their ability to handle complex documents.
Open Parse is designed to fill this gap by providing a flexible,... See more
Chunking documents is a challenging task that underpins any RAG system. High quality results are critical to a sucessful AI application, yet most open-source libraries are limited in their ability to handle complex documents.
Open Parse is designed to fill this gap by providing a flexible,... See more
Filimoa • GitHub - Filimoa/open-parse: Improved file parsing for LLM’s
GPT-4 Turbo can accept images as inputs in the Chat Completions API, enabling use cases such as generating captions, analyzing real world images in detail, and reading documents with figures. For example, BeMyEyes uses this technology to help people who are blind or have low vision with daily tasks like identifying a product or navigating a store.... See more
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