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Introspective Diffusion Language Models

If I’m reading this right, this is pretty wild. They turned a Qwen autoregressor into a diffuser by using a bunch of really clever techniques, and they vastly outperform any “native diffuser,” actually being competitive with the base model they were trained from. The obvious upside here is the massive speedup in generation.

And then through a LoRA adapter, you can ground the diffuser on the base model’s distribution (essentially have it “compare” its proposals against what the base model would’ve generated), which effectively means: exact same byte-for-byte output for the same seed, just roughly twice as fast (which should improve even more for batched tasks).

I’m not an expert, more of a “practicing enthusiast,” so I might be missing something, but at first glance, this reads super exciting to me.

2 hours agothepasch

I don't understand how you can compare against the base model output without generating with the base model, in which case what's the point?

27 minutes agoawestroke

Is anyone here experimenting seriously with Diffusion for text generation? I’d love to learn about your experiences!

3 hours agoandsoitis

https://www.inceptionlabs.ai/

This startup seems to have been at it a while.

From our look into it - amazing speed, but challenges remain around time-to-first-token user experience and overall answer quality.

Can absolutely see this working if we can get the speed and accuracy up to that “good enough” position for cheaper models - or non-user facing async work.

One other question I’ve had is wondering if it’s possible to actually set a huge amount of text to diffuse as the output - using a larger body to mechanically force greater levels of reasoning. I’m sure there’s some incredibly interesting research taking place in the big labs on this.

3 hours agorecsv-heredoc

The overall speed rather than TTFT might start to be more relevant as the caller moves from being a human to another model.

However quality is really important. I tried that site and clicked one of their examples, "create a javascript animation". Fast response, but while it starts like this

``` Below is a self‑contained HTML + CSS + JavaScript example that creates a simple, smooth animation: a colorful ball bounces around the browser window while leaving a fading trail behind it.

<!DOCTYPE html> <html lang="en"> <head> <meta charset="UTF-8"> <title>JavaScript Bounce Animation</title> <style> body, html { margin: 0; padding: 0;

```

the answer then degrades to

``` radius: BALL_RADIUS, color: BALL_COLOR, traivD O] // array of previous {x,y} positions }; ```

Then more things start creeping in

``` // 3⃣ Bounce off walls if (ball.G 0 ball.radius < 0 || ball.x + ball.radius > _7{nas.width) { ball.vx *= -1; ibSl.x = Math.max(ball.radius, Math.min(ball.x, canvbbF4idth - ball.radius)); } if

```

and the more it goes on the worse it gets

``` Ho7 J3 Works 0 Atep | Description | ```

and

``` • prwrZ8}E6on 5 jdF wVuJg Ar touc> 2ysteners ,2 Ppawn \?) balls w>SFu the 8b$] cliM#]9 ```

This is for the demo on the front page, so I expect this is a pretty good outcome compared to what else you might ask.

2 hours agoIanCal

Weird; I clicked through out of curiosity and didn't get any corruption of the sort in the end result.

I also asked it some technical details about how diffusion LLMs could work and it provided grammatically-correct plausible answers in a very short time (I don't know the tech to say if it's correct or not).

2 hours agocataflutter

I have. It requires a distinct intuition compared to a normal language model. Very well suited to certain problems.

3 hours agomoostee

Can you tell us more?

2 hours agoandsoitis

I've been playing with a Swift implementation of a diffusion language model (WeDLM), but performance is not yet acceptable and it still generates roughly from left-to-right like a language model (just within a sliding window rather than strictly token-by-token... but that doesn't matter when the sliding window is only like 16 tokens.)

2 hours agoLoganDark

Can diffusion models have reasoning steps where they generate a block, introspect and then generate another until the output is satisfactory?

an hour agosimianwords

Well, you can take the output of a first pass and pass it back through the model like AR “reasoning” models do at inference time.

42 minutes agomoeadham

Yes and has this been tried?

32 minutes agosimianwords

[dead]

an hour agoakcd

> 2025-04-12: Initial code release with training and inference support.

> 2025-04-12: Released I-DLM-8B, I-DLM-32B, and I-DLM-8B-LoRA on HuggingFace.

Is this old already? Not saying that's a bad thing, since it seems very sophisticated. Just curious if there's an update

an hour agoramon156

It's clearly a typo on the year, April 12 was two days ago, a quick check in HuggingFace shows that they were uploaded 5 days ago.