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matthewolfe

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Submissions

Timeline of Computer History

computerhistory.org
3 points·by matthewolfe·2 months ago·1 comments

Hammock Driven Development – Rich Hickey [video]

youtube.com
3 points·by matthewolfe·10 months ago·0 comments

LLM-Generated Rules Engines for LLM Explainability

brain.co
2 points·by matthewolfe·10 months ago·0 comments

Wormhole for Perplexity Comet

blog.gingerbeardman.com
3 points·by matthewolfe·11 months ago·1 comments

Assign Tickets to Claude Code

twitter.com
1 points·by matthewolfe·11 months ago·0 comments

Richard Feynman: What I cannot create, I do not understand

freshspectrum.com
1 points·by matthewolfe·12 months ago·0 comments

The Factorio Mindset

thediff.co
2 points·by matthewolfe·12 months ago·0 comments

Show HN: TokenDagger – A tokenizer faster than OpenAI's Tiktoken

github.com
281 points·by matthewolfe·last year·73 comments

From Punched Cards to Flat Screens – A Technical Autobiography

drive.google.com
1 points·by matthewolfe·last year·0 comments

Idea to Revenue in 4 Days

sigurg.com
1 points·by matthewolfe·last year·0 comments

Apache Flink 2.0.0

flink.apache.org
2 points·by matthewolfe·last year·0 comments

The Turing Completeness of PowerPoint [video]

youtube.com
3 points·by matthewolfe·last year·0 comments

comments

matthewolfe
·10 months ago·discuss
What exactly doesn't "just work" anymore?
matthewolfe
·12 months ago·discuss
I believe SchemeFlow [0] is working on solving some of these problem, particularly with the insane reporting requirements. But of course, that still leaves the unions...

[0] https://www.schemeflow.com/
matthewolfe
·last year·discuss
For argument's sake, suppose we live in a world where many high-quality models can be run on-device. Is there any concern from companies/model developers about exposing their proprietary weights to the end user? It's generally not difficult to intercept traffic (weights) sent to and app, or just reverse the app itself.
matthewolfe
·last year·discuss
To echo the other replies, the tokenizer is definitely not the bottleneck. It just happens to be the first step in inference, so it's what I did first.
matthewolfe
·last year·discuss
haha, I thought about it.
matthewolfe
·last year·discuss
Fair chance I'm remembering it wrong :D
matthewolfe
·last year·discuss
Alright, 0.1.1 should now be a true drop-in replacement. I'll write up some examples soon.
matthewolfe
·last year·discuss
Should be the same. Both use Byte-Pair Encoding (BPE) as underlying algo.
matthewolfe
·last year·discuss
Ah good catch. Updating this right now.
matthewolfe
·last year·discuss
Modal's GPU glossary is a good overview about how GPUs work [0]. Karpathy's LLM overview is a good high level overview on LLMs [1]. 3b1b's video (and subsequent videos) on transformers was excellent at helping me understand the math at a high level [2]. This matrix multiplication optimization worklog helped me understand writing better CUDA (not for beginner intro though) [3].

During this process I also asked ChatGPT a lot of questions.

I'm definitely open to suggestions about "how to learn" with all the new tools we have. I felt this has not been straightforward to figure out.

[0] https://modal.com/gpu-glossary

[1] https://www.youtube.com/watch?v=7xTGNNLPyMI

[2] https://www.youtube.com/watch?v=wjZofJX0v4M

[3] https://siboehm.com/articles/22/CUDA-MMM
matthewolfe
·last year·discuss
I'm working on incremental re-tokenizing next. Then I'll run some benchmarks against this crate too.
matthewolfe
·last year·discuss
Agreed. A former mentor of mine told me a nice way of viewing software development:

1. Make it work. 2. Make it fast. 3. Make it pretty.

Transformers & LLMs have been developed to a point where they work quite well. I feel as though we're at a stage where most substantial progress is being made on the performance side.
matthewolfe
·last year·discuss
Cool!

I've reached out to the guy who maintains Tiktoken to talk about this.
matthewolfe
·last year·discuss
A lot of model-specific tokenizers have reference implementations ([0], [1]). Underlying them is a core algorithm like SentencePiece or Byte-pair encoding (BPE). Tiktoken and TokenDagger are BPE implementations. The wrapping "tokenizer" mostly deals with the quirks of the vocabulary and handling special tokens.

For this project, I think there is value in building some of these model-specific quirks into the library. Could see some minor performance gains and generally make it easier to integrate with. It's probably not too much work to keep up with newer models. Tokenizers change much less frequently.

[0] https://github.com/meta-llama/llama-models/blob/01dc8ce46fec...

[1] https://github.com/mistralai/mistral-common/tree/main/src/mi...
matthewolfe
·last year·discuss
I probably will. Was hesitant initially, because adding PCRE2 as a dependency might cause issues to existing projects. I believe this was discussed briefly in a closed PR with other performance improvements.
matthewolfe
·last year·discuss
The output should be identical, assuming no bugs.

The Tiktoken implementation takes a collection of all special tokens upon initialization and compiles them into a regex by joining them with `|` [0]. Then the actual encoding process checks for matches on this expression.

Models like Llama 4 define a list of 1,135 special tokens. Notably, 1,115 of those are "reserved" special tokens! So this yields a huge regexp of special tokens that shouldn't be considered at all.

TokenDagger does not do this. Instead, simple string matching is used. This works because we don't need to consider the entire special vocabulary every time. The caller of `encode` must explicitly define which special tokens should be considered [1]. So it's faster to check against the much smaller list we _know_ is being used.

[0] https://github.com/openai/tiktoken/blob/main/src/lib.rs#L476

[1] https://github.com/openai/tiktoken/blob/main/tiktoken/core.p...
matthewolfe
·last year·discuss
Thanks, I clarified it.
matthewolfe
·last year·discuss
Agreed. I figured nobody would use it otherwise.
matthewolfe
·last year·discuss
I'm working on TokenDagger [0] a high performance implementation of OpenAI's Tiktoken. My benchmarks are showing 2-3x higher throughput, as well as ~4x faster tokenization for code samples on a single thread.

[0] https://github.com/M4THYOU/TokenDagger
matthewolfe
·2 years ago·discuss
I do this a lot for my work. A tool like this that can help get me to a nice starting point is huge. Instead of developing a mental model of the API in my head by manually looking through API requests/responses in ProxyMan, this can start me off much more quickly. From there, the edge cases can be worked out.