If you want to try out the voice cloning yourself you can do that an this Hugging Face demo: https://huggingface.co/spaces/Qwen/Qwen3-TTS - switch to the "Voice Clone" tab, paste in some example text and use the microphone option to record yourself reading that text - then paste in other text and have it generate a version of that read using your voice.
This is terrifying. With this and z-image-turbo, we've crossed a chasm. And a very deep one. We are currently protected by screens, we can, and should assume everything behind a screen is fake unless rigorously (and systematically, i.e. cryptographically) proven otherwise. We're sleepwalking into this, not enough people know about it.
That was my thought too. You’d have “loved ones” calling with their faces and voices asking for money in some emergency. But you’d also have plausible deniability as anything digital can be brushed off as “that’s not evidence, it could be AI generated”.
Only if you focus on the form instead of the content. For a long time my family has had secret words and phrases we use to identify ourselves to each other over secure, but unauthenticated, channels (i.e. the channel is encrypted, but the source is unknown). The military has had to deal with this for some time, and developed various form of IFF that allies could use to identify themselves. E.g. for returning aircraft, a sequence of wing movements that identified you as friend. I think for a small group (in this case, loved ones), this could be one mitigation of that risk. My parents did this with me as a kid, ostensibly as a defense against some other adult saying "My mom sent me to pick you up...". I never did hear of that happening, though.
For now you could ask them to turn away from the camera while keeping their eyes open. If they are a Z-Image they will instantly snap their head to face you.
> as anything digital can be brushed off as “that’s not evidence, it could be AI generated”.
This won't change anything about Western style courts which have always required an unbroken chain of custody of evidence for evidence to be admissable in court
Yep, this has been the reality now for years. Scammers have already had access to it. I remember an article years ago about a grandma who wired her life savings to a scammer who claimed to have her granddaughter held hostage in a foreign country. Turns out they just cloned her voice from Facebook data and knew her schedule so timed it while she would be unreachable by phone.
Far more terrifying is Big Tech having access to a closed version of the same models, in the hands of powerful people with a history of unethical behavior (i.e. Zuckerberg's "Dumb Fucks" comments). In fact it's a miracle and a bit ironic that the Chinese would be the ones to release a plethora of capable open source models, instead of the scraps like we've seen from Google, Meta, OpenAI, etc.
> Far more terrifying is Big Tech having access to a closed version of the same model
Agreed. The only thing worse than everyone having access to this tech is only governments, mega corps and highly-motivated bad actors having access. They've had it a while and there's no putting the genii back in the bottle. The best thing the rest of us can do is use it widely so everyone can adapt to this being the new normal.
The really terrifying thing is the next logical step from the instinctual reaction. Eschew miracle, eschew the cognitive bias of feeling warm and fuzzy for the guy who gives you it for free.
Socratic version: how can the Chinese companies afford to make them and give them out for free? Cui bono?
n.b. it's not because they're making money on the API, ex. open openrouter and see how Moonshot or DeepSeek's 1st party inference speed compares to literally any other provider. Note also that this disadvantage can't just be limited to LLMs, due to GPU export rules.
>Far more terrifying is Big Tech having access to a closed version of the same models, in the hands of powerful people with a history of unethical behavior (i.e. Zuckerberg's "Dumb Fucks" comments).
Lol what exactly do you think Zuck would do with your voice, drain your bank account??
I'd be a bit more worried with Z-Image Edit/Base is release.
Flux.2 Klein is our and its on par with Zit, and with some fine tuning can just about hit Flux.2.
Adding on top of that is Qwen Image Edit 2511 for additional refinement. Anything is possible. Those folks at r/StableDiffusion and falling over the possible release of Z-Image-Omni-Base, a hold me over until actual base is out. I've heard its equal to Flux.2.
Crazy time.
Admittedly I have not dove into it much but, I wonder if we might finally have a usecase for NFTs and web3? We need some sort of way to denote items are persion generated not AI. Would certainly be easier than trying to determine if something is AI generated
That's the idea behind C2PA[1], your camera and the tools put a signature on the media to prove its provenance. That doesn't make manipulation impossible (e.g. you could photograph an AI image of a screen), but it does give you a trail of where a photo came from and thus an easier way to filter it or lookup the original.
How would NFTs/web3 help differentiate between something created by a human and something that a human created with AI and then tagged with their signature using those tools?
There are far more good and interesting use cases for this technology. Games will let users clone their voices and create virtual avatars and heroes. People will have access to creative tools that let them make movies and shows with their likeness. People that couldn't sing will make music.
Nothing was more scary than the invention of the nuclear weapon. And we're all still here.
Life will go on. And there will be incredible benefits that come out of this.
I'm not denigrating the tech, all I'm saying is that we've crossed to new territory and there will be consequences that we don't understand from this. The same way that social media has been particularly detrimental to young people (especially women) in a way we were not ready for. This __smells__ like it could be worse, alongside with (or regardless of) the benefits of both.
I simply think people don't really know that the new world requires a new set of rules of engagement for anything that exists behind a screen (for now).
We'll be okay eventually, when society adapts to this and becomes fully aware of the capabilities and the use cases for abuse. But, that may take some time. The parent is right to be concerned about the interim, at the very least.
That said, I am likewise looking forward to the cool things to come out of this.
> Nothing was more scary than the invention of the nuclear weapon. And we're all still here.
Except that building a nuclear weapon was not available to everyone, certainly not to dumb people whose brain have been feeded with social media content.
I usually don't correct typos and/or grammar, but you asked for it. Calling random people "dumb" while using an incorrect past tense is pretty funny. It is "fed", not "feeded"...
There are plenty of electronic artists who can't sing. Right now they have to hire someone else to do the singing for them, but I'd wager a lot of them would like to own their music end-to-end. I would.
I'm a filmmaker. I've done it photons-on-glass production for fifteen years. Meisner trained, have performed every role from cast to crew. I'm elated that these tools are going to enable me to do more with a smaller budget. To have more autonomy and creative control.
We've had Yamaha Vocaloid for over two decades now, and Synthesizer V is probably coming up on a decade too now. They're like any other synth: MIDI (plus phonemes) in, sound out. It's a tool of musical expression, like any other instrument.
Hatsune Miku (Fujita Saki) is arguably the most prolific singer in the world, if you consider every Vocaloid user and the millions of songs that have come out of it.
So I don't think there's any uncharted territory...we still have singers, and sampled VST instruments didn't stop instrumentalists from existing; if anything, most of these newcomer generative AI tools are far less flexible or creatively useful than the vast array of synthesis tools musicians already use.
Miku is neat but not a replacement for a human by any stretch of the imagination. In practice most amateur usage of that lands somewhere in a cringey uncanny valley.
No one was going to replace voice actors for TV and movie dubs with Miku whereas the cutting edge TTS tools seem to be nearing that point. Presumably human vocal performances will follow that in short order.
On the other hand, maybe we'll get models capable of removing the lyrics from things without damaging the rest of the audio. Or better yet, replacing the lyrics with a new instrument. So it might yet work out in our favor.
Yes, the flipside of this is that we're eroding the last bit of ability for people to make a living through their art. We are capturing the market for people to live off of making illustrations, to making background music, jingles, promotional videos, photographs, graphic design, and funnelling those earnings to NVIDIA. The question I keep asking is whether we care to value as a society for people to make a living through their art. I think there is a reason to care.
It's not so much of an issue with art for art's sake aided by AI. It's an issue with artistic work becoming unviable work.
This feels like one of those tropes that keeps showing up whenever new tech comes out. At the advent of recorded music, im sure buskers and performers were complaing that live music is dead forever. Stage actors were probably complaining that film killed plays. Heck, I bet someome even complained that video itself killed the radio star. Yet here we are, hundreds of years later, live music is still desirable, plays still happen, and faceless voices are still around, theyre just called v-tubers and podcasters.
> This feels like one of those tropes that keeps showing up whenever new tech comes out.
And this itself is another tired trope. Just because you can pattern match and observe that things repeatedly went a certain way in the past, doesn't mean that all future applications of said pattern will play out the same way. On occasion entire industries have been obliterated without a trace by technological advancement.
We can also see that there must be some upper ceiling on what humans in general are capable of - hit that and no new jobs will be created because humans simply won't be capable of the new tasks. (Unless we fuse with the machines or genetically engineer our brains or etc but I'm choosing to treat those eventualities as out of scope.)
Give me one aspect in which that has actually happened? I'm wracking my brains but can't think of one. We are a weird species in that even if we could replace ourselves our fascination with ourselves means that we don't ever do it.
Cars and bicycles have replaced our ability to travel at great and small distances and yet we still have track events culminating in the olympics.
Sure, things continue to persist as a hobby, a curiosity, a bespoke luxury, or the like. But that's not at all the same thing as an industry. Only the latter is relevant if we're talking about the economy and employment prospects and making a living and such.
It's a bit tricky to come up with concrete examples on the spot, in particular because drawing a line around a given industry or type of work is largely subjective. I could point to blacksmithing and someone could object that we still have metalworkers. But we don't have individual craftsmen hammering out pieces anymore. Someone might still object that an individual babysitting a CNC machine is analogous but somehow it feels materially different to me.
Leather workers are another likely example. To my mind that's materially different from a seamstress, a job that itself has had large parts of the tasks automated.
Horses might be a good example. Buggies and carriages replaced by the engine. Most of the transportation counterparts still exist but I don't think mechanics are really a valid counterpart to horse tenders and all the (historic) economic activity associated with that. Sure a few rich people keep race horses but that's the sort of luxury I was referring to above. The number of related job positions is a tiny fraction of what it was historically and exists almost solely for the purpose of entertaining rich people.
Historically the skill floor only crept up at a fairly slow rate so the vast majority of those displaced found new sectors to work in. But the rate of increase appears to have picked up to an almost unbelievable clip (we're literally in the midst of redefining the roles of software developers of all things, one of the highest skilled "bulk" jobs out there). It should be obvious that if things keep up the way they've been going then we're going to hit a ceiling for humans as a species not so long from now.
Tin Pan Alley is the historical industry from before recording: composers sold sheet music and piano rolls to publishers, who sold them to working musicians. The ASCAP/BMI mafia would shake down venues and make sure they were paying licensing fees.
Recorded music and radio obviously reduced the demand for performers, which reduced demand for sheets.
umm, I don't know if you've seen the current state of trying to make a living with music but It's widely accepted as dire. Touring is a loss leader, putting out music for free doesn't pay, stream counts payouts are abysmally low. No one buys songs.
All that is before the fact that streaming services are stuffing playlists with AI generated music to further reduce the payouts to artists.
> Yet here we are, hundreds of years later, live music is still desirable, plays still happen, and faceless voices are still around...
Yes all those things still happen, but it's increasingly untenable to make a living through it.
Artists were saying this even before streaming, though, much less AI.
I listen pretty exclusively to metal, and a huge chunk of that is bands that are very small. I go to shows where they headliners stick around at the bar and chat with people. Not saying this to be a hipster - I listen to plenty of "mainstream" stuff too - but to show that it's hard to get smaller than this when it comes to people wanting to make a living making music.
None of them made any money off of Spotify or whatever before AI. They probably don't notice a difference, because they never paid attention to the "revenue" there either.
But they do pay attention to Bandcamp. Because Bandcamp has given them more ability to make money off the actual sale of music than they've had in their history - they don't need to rely on a record deal with a big label. They don't need to hope that the small label can somehow get their name out there.
For some genres, some bands, it's more viable than ever before to make a living. For others, yeah, it's getting harder and harder.
Is it though? Think about being a musician 200 years ago. In 1826 you needed to essentially be nobility or nobility-adjacent just to be able to touch an instrument let alone make a living from it. 100 years later, 1926 the barrier to entry was still sky high, nobody could make and distribute recordings without extensive investment. Nowadays it's not uncommon for a 17 year old to download some free composer software, sign up for a few accounts and distribute their music to an audience of millions. It's not easy to do, sure, but there is still opportunity that never existed. If you were to take at random a 20 year old from the general population in 1826, 1923, 1943, 1953, 1973, 83, etc, would you REALLY say that any of them have a BETTER opportunity than today?
The amount of artists that managed to actually earn enough to pay the rent and bills was already very very small before AI emerged. I totally agree with you, its heartbreaking to watch how it got even worse, but, the music industry already shuffled the big money to the big players way before AI.
> With this and z-image-turbo, we've crossed a chasm.
And most of all: they're both local models. The cat is out of the box and it's never going back in. There's no censoring of this. No company that can pull the plug. Anyone with a semi-modern GPU can use these models.
The HF demo space was overloaded, but I got the demo working locally easily enough. The voice cloning of the 1.7B model captures the tone of the speaker very well, but I found it failed at reproducing the variation in intonation, so it sounds like a monotonous reading of a boring text.
I presume this is due to using the base model, and not the one tuned for more expressiveness.
edit: Or more likely, the demo not exposing the expressiveness controls.
The 1.7B model was much better at ignoring slight background noise in the reference audio compared to the 0.6B model though. The 0.6B would inject some of that into the generated audio, whereas the 1.7B model would not.
Also, without FlashAttention it was dog slow on my 5090, running at 0.3X realtime with just 30% GPU usage. Though I guess that's to be expected. No significant difference in generation speed between the two models.
Overall though, I'm quite impressed. I haven't checked out all the recent TTS models, but a fair number, and this one is certainly one of the better ones in terms of voice cloning quality I've heard.
I just followed the Quickstart[1] in the GitHub repo, refreshingly straight forward. Using the pip package worked fine, as did installing the editable version using the git repository. Just install the CUDA version of PyTorch[2] first.
The HF demo is very similar to the GitHub demo, so easy to try out.
That's for CUDA 12.8, change PyTorch install accordingly.
Skipped FlashAttention since I'm on Windows and I haven't gotten FlashAttention 2 to work there yet (I found some precompiled FA3 files[3] but Qwen3-TTS isn't FA3 compatible yet).
Remarkable tech that is now accessible to almost anyone. My cloned voice sounded exactly like me. The uses for this will be from good to bad and everywhere in-between. A deceased grandmother reading "Good Night Moon" to grandkids, scamming people, the ability to create podcasts with your own voices from just prompts.
I got some errors trying to run this on my MBP. Claude was able to one-shot a fix.
```
Loaded speech tokenizer from ~/.cache/huggingface/hub/models--Qwen--Qwen3-TTS-12Hz-1.7B-VoiceDesign/snapshots/0e711a1c0aa5aad30654426
e0d11f67716c1211e/speech_tokenizer
Fetching 11 files: 0%| | 0/11 [00:00<?, ?it/s]Fetching 11 files: 100%|| 11/11 [00:00<00:00, 125033.45it/s]
The tokenizer you are loading from
'!/.cache/huggingface/hub/models--Qwen--Qwen3-TTS-12Hz-1.7B-VoiceDesign/snapshots/0e711a1c0aa5aad30654426e0d11f67716c1211e' with an
incorrect regex pattern: https://huggingface.co/mistralai/Mistral-Small-3.1-24B-Instr.... This will
lead to incorrect tokenization. You should set the `fix_mistral_regex=True` flag when loading this tokenizer to fix this issue.
```
I cloned my voice and had it generate audio for a paragraph from something I wrote. It definitely kind of sounds like me, but I like it much better than listening to my real voice. Some kind of uncanny peak.
You do realize that you don't hear your real voice normally, an individual has to record their voice to hear how others hear their voice. What you hear when you speak includes your skull resonating, which other's do not hear.
i was one-shotting voices years ago that were timbre/tonally identical to the reference voice; however the issue i had was inflection and subtlety. I find that female voices are much easier to clone, or at least it fools my brain into thinking so.
this model, if the results weren't too cherry picked, will be huge improvement!
I shared a recording of audio I generated with that here: https://simonwillison.net/2026/Jan/22/qwen3-tts/