DB-GPT
jsonformer
DB-GPT | jsonformer | |
---|---|---|
10 | 25 | |
11,055 | 3,793 | |
5.0% | - | |
9.9 | 5.4 | |
4 days ago | 2 months ago | |
Python | Jupyter Notebook | |
MIT License | MIT License |
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DB-GPT
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(2/2) May 2023
Interact your data and environment using the local GPT (https://github.com/csunny/DB-GPT)
- FLaNK Stack Weekly 29 may 2023
- GitHub - csunny/DB-GPT: Interact your data and environment using the local GPT, no data leaks, 100% privately, 100% security
- DB-GPT - OSS to interact with your local LLM
- Show HN: DB-GPT, an LLM tool for database
jsonformer
- Forcing AI to Follow a Specific Answer Pattern Using GBNF Grammar
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Refact LLM: New 1.6B code model reaches 32% HumanEval and is SOTA for the size
- Tools like jsonformer https://github.com/1rgs/jsonformer are not possible with OpenAIs API.
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Show HN: LLMs can generate valid JSON 100% of the time
How does this compare in terms of latency, cost, and effectiveness to jsonformer? https://github.com/1rgs/jsonformer
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Ask HN: Explain how size of input changes ChatGPT performance
You're correct with interpreting how the model works wrt it returning tokens one at a time. The model returns one token, and the entire context window gets shifted right by one to for account it when generating the next one.
As for model performance at different context sizes, it's seems a bit complicated. From what I understand, even if models are tweaked (for example using the superHOT RoPE hack or sparse attention) to be able to use longer contexts, they still have to be fined tuned on input of this increased context to actually utilize it, but performance seems to degrade regardless as input length increases.
For your question about fine tuning models to respond with only "yes" or "no", I recommend looking into how the jsonformers library works: https://github.com/1rgs/jsonformer . Essentially, you still let the model generate many tokens for the next position, and only accept the ones that satisfy certain criteria (such as the token for "yes" and the token for "no".
You can do this with openAI API too, using tiktoken https://twitter.com/AAAzzam/status/1669753722828730378?t=d_W... . Be careful though as results will be different on different selections of tokens, as "YES", "Yes", "yes", etc are all different tokens to the best of my knowledge
- A framework to securely use LLMs in companies – Part 1: Overview of Risks
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LLMs for Schema Augmentation
From here, we just need to continue generating tokens until we get to a closing quote. This approach was borrowed from Jsonformer which uses a similar approach to induce LLMs to generate structured output. Continuing to do so for each property using Replit's code LLM gives the following output:
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Doesn't a 4090 massively overpower a 3090 for running local LLMs?
https://github.com/1rgs/jsonformer or https://github.com/microsoft/guidance may help get better results, but I ended up with a bit more of a custom solution.
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“Sam altman won't tell you that GPT-4 has 220B parameters and is 16-way mixture model with 8 sets of weights”
I think function calling is just JSONformer idk: https://github.com/1rgs/jsonformer
- Inference Speed vs. Quality Hacks?
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Best bet for parseable output?
jsonformer: https://github.com/1rgs/jsonformer
What are some alternatives?
private-gpt - Interact with your documents using the power of GPT, 100% privately, no data leaks
mlc-llm - Enable everyone to develop, optimize and deploy AI models natively on everyone's devices.
GPTCache - Semantic cache for LLMs. Fully integrated with LangChain and llama_index.
aider - aider is AI pair programming in your terminal
gorilla - Gorilla: An API store for LLMs
clownfish - Constrained Decoding for LLMs against JSON Schema
zamm - Experimental AI chat app
outlines - Structured Text Generation
Propan - Propan is a powerful and easy-to-use Python framework for building event-driven applications that interact with any MQ Broker
gpt-json - Structured and typehinted GPT responses in Python
jj - JSON Stream Editor (command line utility)
jikkou - The Open source Resource as Code framework for Apache Kafka