this post was submitted on 29 Nov 2023
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LocalLLaMA
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Community to discuss about Llama, the family of large language models created by Meta AI.
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Great work! Would you mind sharing the datasets you used and/or how you augmented the data for training?
I'll give you some better examples, just didn't have time right then. Give me a few.
It was trained on a whole bunch of prompts asking for each task, so it's not reliant on the exact wording from one of them in training to work. Set the task in the meta section as "kg", and the model will respond with a knowledge graph if you ask for one (and sometimes if you don't).
Here are a few of them:
I haven't noticed a huge difference in the outcome at inference time depending on prompt used, but sprinkling in some more detailed instructions helped lower loss when training.
As far as dataset, I used a little bit of the Dolphin dataset, to not lose the usual conversational ability. A little bit of the SponsorBlock dataset as a seed, and then I improved it, and the rest is custom...I spent ~$1k or so on API calls creating it. I plan on releasing it at some point, but I want to improve some aspects of it first.
Total dataset size I used for training is ~85mb.
Alright, here are two full logs, Inkbot generated everything below the <#bot#> response.
Simple prompt: https://gist.github.com/Tostino/c3541f3a01d420e771f66c62014e6a24
Complex prompt: https://gist.github.com/Tostino/44bbc6a6321df5df23ba5b400a01e37d
So in this case, the complex prompt did perform better.
Great work, this is impressive, especially for a 13B model!
It was not an insignificant amount of work to get it working as well as it is tbh.
For example, one of the tweaks I did that had the most impact...you'll notice the node IDs are all greek letters. They were originally contextually-relevant IDs, like the name of the entity in the graph.
```
- id: Eta
event: Construction of the Eiffel Tower
date: 1889
```
would have been
```
- id: eiffel
event: Construction of the Eiffel Tower
date: 1889
```
But that lead to the model relying on context clues from that piece of text, rather than being forced to actually look up the data in the knowledge graph during training. So switching that out to use a symbol approach worked much better for relying on data in the graph, rather than model built-in knowledge.
I was planning on testing that out on my own, but then I ran into this paper: https://arxiv.org/abs/2305.08298, which made me pull the trigger and convert my whole dataset and creation process to support symbolic identifiers.