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EN_B00062_S03166_W000028 | Uhm, passport, what amounts to their license to do business. That means that they get a license effectively in one | en | [
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EN_B00062_S03166_W000029 | Yes, I think they probably are. I don't necessarily think that uhm, enlightened uhm, should be | en | [
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EN_B00062_S03166_W000030 | Uhm, an endless supply of orange jumpsuits and some very wide, uhm, legislation, wide reaching. | en | [
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EN_B00062_S03166_W000031 | You know, for the full limit of their, uh, their losses, uhm, we shall, you know, these are early days, but | en | [
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EN_B00062_S03166_W000032 | And, uh, they've been researching this for a couple of years now. Uhm, it's fair to say the Fed in the States and the European Central Bank have been doing similar work. | en | [
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EN_B00062_S03176_W000000 | The next stage is after the public engagement stage two, we are going to try to get funds for detailed, uh, studies for all these five sites. And also the artificial islands we have, uh, we have, uh, tried to propose in the central waters. | en | [
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EN_B00062_S03176_W000001 | That is, uhm, we try to think of some, uh, possible means to try to, uh, have, uh, uh, modeled recommendation in that area to see how | en | [
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EN_B00062_S03176_W000002 | Although, uhm, the skeptics would say that, oh, the, the, the figures are always wrong. But that is the main point. Uh, it's difficult to forecast population. But reclamation, uh, or a land reserve can actually address this problem. | en | [
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EN_B00062_S03176_W000003 | So, the next stage is to get money for detailed, uh, study including environmental impact assessment and so on and so forth. | en | [
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EN_B00062_S03176_W000004 | This is only the study area where we can put, uhm, uh, artificial ions. The reason why we choose the central waters, we have looked at three waters. The eastern waters, we have a large area there, but, uhm, those areas are | en | [
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EN_B00062_S03176_W000005 | I must make a clarification here. So the area that's shown in the, the, the project, uh, digest is only the study area. We are talking about- Oh, you're not necessarily suggesting it be that piece. | en | [
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EN_B00062_S03176_W000006 | The Tongchong reclamation project is ongoing, it's something else because it is already in the, in the consultation stage about the project itself. Uh, the best, from the best of my knowledge, it did avoid any sensitive shoreline in that area. | en | [
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EN_B00062_S03176_W000007 | That's why we think that selection of sites, uh, is very important. And that's why we selected these sites which we do think that they are less ecologically sensitive. They are mainly, uh, man-made shorelines. | en | [
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EN_B00062_S03176_W000008 | Uh, as in the stage two public engagement which we just kicked off yesterday, we want to share with the public the beauty of the land reserve. In Hong Kong, for future development, for the next generation, we do need adequate and stable supply of land. And reclamation is the most suitable, uhm, mode of land development... | en | [
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EN_B00062_S03186_W000000 | When thought of through the lens of an application, as opposed to like, what's our policy for patching the patient care system? | en | [
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EN_B00062_S03186_W000001 | Those are all things that have to do with reducing attack surface as opposed to finding the attack of the day. The stuff at the top, you know, antivirus running for a server inside the data center behind all these walls is marginal residual risk. So the focus of VMware in the security realm has been | en | [
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EN_B00062_S03186_W000002 | I can place controls on the boundaries of an application and that boundary may not exist in the physical world, but it does in the virtual world. | en | [
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EN_B00062_S03186_W000003 | Uh, they'll much faster time to actually go in. It's simpler and, uh, and it's a much more accurate representation of the application. You lock things down both from lateral and direct attacks, so it's a big deal. | en | [
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EN_B00062_S03186_W000004 | Your, your security strategy can't be predicated on, uh, my, anything inside my data center is just fundamentally secure. I think we live in a state of compromise. Deal with it. | en | [
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EN_B00062_S03186_W000005 | No, look, you can't patch humans, so that is almost in a week, and the only really thing that we can really advance there is to move increasingly to automation and do things that, candidly or not, humans probably aren't the best at doing that, but you can't just automate old, | en | [
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EN_B00062_S03186_W000006 | And uh, we were just using AppDefense to say, alright, let's assume you didn't patch it. | en | [
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EN_B00062_S03186_W000007 | You know the, we've never used it for this before, but the hypervisor kernel does a bunch of pretty amazing things. We just, it can see what's running, it can see what you provisioned in the first place, it can do that without adding an agent, it can do that in a way that can't be turned off, without a lot of overhead. | en | [
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EN_B00062_S03186_W000008 | Yeah, so uhm, again, the central theme, I suppose, is summed up as we're trying to say, here's your applications and data. What is intended on the network with NSX on the compute stack with the app defense workspace one is trying to address that from a user in a device perspective and the questions one asks. | en | [
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EN_B00062_S03186_W000009 | Uh, unreliable processes, that just makes them faster, it doesn't necessarily make them better. And I think, uhm, | en | [
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EN_B00062_S03186_W000010 | I think the key to a lot of this is- Automating a bad process still makes it a bad process. Yea, it's just faster. It's more efficient. An efficiently bad process. Exactly, exactly right. Uh, so, uh, you know, I, I think a lot of the automation and the ability to compartmentalize things and, and candidly a lot of the p... | en | [
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EN_B00062_S03186_W000011 | Pretty straight forward. Okay, now take the employees and spread them out into parts of floors of different buildings all over the city. Fill the building that you had with employees from lots of different companies. Now there's a bank, a TGI Fridays, a bowling alley, and an FBI. No, now tell those guards what looks we... | en | [
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EN_B00062_S03196_W000000 | After the Civil War, the taste for peanuts spread north, where they were incorporated into the culture of baseball games and vaudeville theaters, along with popcorn | en | [
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EN_B00062_S03196_W000001 | Found that a consumption of a confectionery snack in the afternoon improved spatial memory in the study's sample group, but in the area of attention performance it had a mixed effect | en | [
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EN_B00062_S03196_W000002 | The middle class etiquette of the Victorian era – 1837–1901 – categorized any food that did not require proper usage of utensils as lower class.Pretzels were introduced to North America by the Dutch via New Amsterdam in the 17th century. | en | [
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EN_B00062_S03196_W000003 | A Tufts University Department of Psychology empirical study titled, "'Effect of an afternoon confectionery snack on cognitive processes critical to learning'". | en | [
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EN_B00062_S03196_W000004 | Snack foods are typically designed to be portable, quick, and satisfying | en | [
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End of preview. Expand in Data Studio
emilia-en-mimi-q8-s4096-dynamic-20260329a-public
Frozen pretokenized Emilia-English model-ready dataset for TinyAya + Mimi training.
Layout
train/lang=en/*.parquet- optional
validation/lang=en/*.parquet - optional
test/lang=en/*.parquet dataset_manifest.json
Selection
- source dataset:
amphion/Emilia-Dataset - data files:
Emilia/EN/*.tar - source split:
train - quantizers:
8 - train samples:
18136270 - validation samples:
0 - test samples:
0 - min seconds:
1.0 - max seconds:
30.0
Audio Codec
- backend:
mimi - source:
hf_pretrained - model:
kyutai/mimi - sample rate:
24000
Notes
This repo stores pretokenized training artifacts, not raw audio. Use dataset_manifest.json
as the immutable split fingerprint for ablation reproducibility.
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