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.
To train LLMs, you need data that is:
Large — Sufficiently large LMs require trillions of tokens.
Clean — Noisy data reduces performance.
Diverse — Data should come from different sources and different knowledge bases.
What does clean data look like?
You can de-duplicate data with simple heuristics. The most basic would be removing any exact duplicates... See more
Large — Sufficiently large LMs require trillions of tokens.
Clean — Noisy data reduces performance.
Diverse — Data should come from different sources and different knowledge bases.
What does clean data look like?
You can de-duplicate data with simple heuristics. The most basic would be removing any exact duplicates... See more
Shortwave — rajhesh.panchanadhan@gmail.com [Gmail alternative]
LLM-PowerHouse: A Curated Guide for Large Language Models with Custom Training and Inferencing
Welcome to LLM-PowerHouse, your ultimate resource for unleashing the full potential of Large Language Models (LLMs) with custom training and inferencing. This GitHub repository is a comprehensive and curated guide designed to empower developers,... See more
Welcome to LLM-PowerHouse, your ultimate resource for unleashing the full potential of Large Language Models (LLMs) with custom training and inferencing. This GitHub repository is a comprehensive and curated guide designed to empower developers,... See more
ghimiresunil • GitHub - ghimiresunil/LLM-PowerHouse-A-Curated-Guide-for-Large-Language-Models-with-Custom-Training-and-Inferencing: LLM-PowerHouse: Unleash LLMs' potential through curated tutorials, best practices, and ready-to-use code for custom training and inferencing.
DeepSpeed-FastGen: High-throughput Text Generation for LLMs via MII and DeepSpeed-Inference
Table of Contents
1. Introduction
Large... See more
Table of Contents
- Introduction
- Key LLM Serving Techniques
- Dynamic SplitFuse: A Novel Prompt and Generation Composition Strategy
- Performance Evaluation
- DeepSpeed-FastGen: Implementation and Usage
- Try out DeepSpeed-FastGen
- Acknowledgements
1. Introduction
Large... See more
microsoft • DeepSpeed-FastGen
One thing that is still confusing to me, is that we've been building products with machine learning pretty heavily for a decade now and somehow abandoned all that we have learned about the process now that we're building "AI".
The biggest thing any ML practitioner realizes when they step out of a research setting is that for most tasks accuracy has... See more
The biggest thing any ML practitioner realizes when they step out of a research setting is that for most tasks accuracy has... See more
Ask HN: What are some actual use cases of AI Agents right now? | Hacker News
You are assuming that the probability of failure is independent, which couldn't be further from the truth. If a digit recogniser can recognise one of your "hard" handwritten digits, such as a 4 or a 9, it will likely be able to recognise all of them.
The same happens with AI agents. They are not good at some tasks, but really really food at others.
- Query the RAG anyway and let the LLM itself chose whether to use the the RAG context or its built in knowledge
- Query the RAG but only provide the result to the LLM if it meets some level of relevancy (ie embedding distance) to the question
- Run the LLM both on it's own and with the RAG response, use a heuristic (or another LLM) to pick the best answer
r/LocalLLaMA - Reddit
A new v0.4.0 release of lm-evaluation-harness is available !
New updates and features include:
New updates and features include:
- Internal refactoring
- Config-based task creation and configuration
- Easier import and sharing of externally-defined task config YAMLs
- Support for Jinja2 prompt design, easy modification of prompts + prompt imports from Promptsource
- More advanced configuration
GitHub - sqrkl/lm-evaluation-harness: A framework for few-shot evaluation of language models.
Announcing Together Inference Engine – the fastest inference available
November 13, 2023・By Together
The Together Inference Engine is multiple times faster than any other inference service, with 117 tokens per second on Llama-2-70B-Chat and 171 tokens per second on Llama-2-13B-Chat
Today we are announcing Together Inference Engine, the world’s... See more
November 13, 2023・By Together
The Together Inference Engine is multiple times faster than any other inference service, with 117 tokens per second on Llama-2-70B-Chat and 171 tokens per second on Llama-2-13B-Chat
Today we are announcing Together Inference Engine, the world’s... See more
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