Tag: ai

Translation

hmm

GT now gets 55% accuracy on English to Arabic. Human agreement on human translations is 60%. After this point they have no standard by which to measure their progress

2016-09-27: Getting amazingly close to human level performance. it’s interesting that for all languages, the gap between human and perfect translation is much much larger than between human and machine.

Neural Machine Translation: Much better translation quality
Full technical report (23 exciting pages of bedtime reading)

Research blog post

I’m very excited to announce that our new neural machine translation system closes the quality gap between the existing Google Translate production system and human quality translations by 58% to 87% for a variety of different language pairs (see table below, from the technical report we published today). This work has been a close collaboration between the Google Brain team and the Google Translate team.

Thanks to lots of hard engineering work and the computational efficiency of our Tensor Processing Units (see report), we are also rolling these benefits out to users of Google Translate, starting today with Mandarin to English as the first language pair live in production that uses this new system. We’ll be rolling out many more language pairs over the coming weeks.

This highlights the success of neural models at more accurately capturing the complexities of real human language, and is a powerful demonstration of the research our group has been doing on language understanding.

2016-11-15: Nice behind the scenes article on the recent translation breakthrough.

With this update, Google Translate is improving more in a single leap than we’ve seen in the last 10 years combined.

3 overlapping stories converge in Google Translate’s successful metamorphosis to A.I. — a technical story, an institutional story and a story about the evolution of ideas. The technical story is about 1 team on 1 product at 1 company, and the process by which they refined, tested and introduced a brand-new version of an old product in only about a quarter of the time anyone, themselves included, might reasonably have expected. The institutional story is about the employees of a small but influential artificial-intelligence group within that company, and the process by which their intuitive faith in some old, unproven and broadly unpalatable notions about computing upended every other company within a large radius. The story of ideas is about the cognitive scientists, psychologists and wayward engineers who long toiled in obscurity, and the process by which their ostensibly irrational convictions ultimately inspired a paradigm shift in our understanding not only of technology but also, in theory, of consciousness itself.

2023-07-08: Akkadian translation, with modest BLEU scores.

In its transliteration to English test, the AI model scored 37.47. In its cuneiform to English test, it scored 36.52. Both scores were above their target baseline and in the range of a high-quality translation. The model was able to reproduce the nuances of each test sentence’s genre. The AI model works best when it is translating short- to medium-length sentences. It also does better with more formulaic genres, like royal decrees and administrative records, than literary genres such as myths, hymns, and prophecies. With more training on a larger dataset, they aim to improve its accuracy. “100s of 100s of clay tablets inscribed in the cuneiform script document the political, social, economic, and scientific history of ancient Mesopotamia. Yet, most of these documents remain untranslated and inaccessible due to their sheer number and limited quantity of experts able to read them”

State of NLP

the problems of NLP are highly interconnected are need to be solved as a whole, yet very few efforts have been made to attack several frontiers at once. most research is very academic and niche-oriented. assertion is that CPU power and amounts of data, such as wikipedia, will create breakthroughs in NLP.

Munchhausen

We are the ants building an ant hill. We are neurons building a mind. We are unwittingly constructing something that we can’t even see or understand because we see it too zoomed in. Our descendants are reaching back from the future and pulling themselves up by their bootstraps. Their influence can be felt even now, but will only get stronger.

Love for the artificial

i believe machines will .. reach human levels of intelligence, including the ability to understand and respond appropriately to human emotion, including to be able to give and receive love, within 30 years

AI struck me as a rather good movie that asks the right questions. as we go more cyborg, will we respect machines? what will guide our body enhancement choices? gigolo joe, another mecha remarks to david:

you are being loved for what you do to them, they don’t love you

at some point, we will have to face this question too. maybe we already do.

Brainpower

So a computer with the processing capacity of a human brain is to be put to work by the government? Does the US government have any actual experience in managing something as powerful as a human brain? How long before the computer realizes it could do much better in the private sector?

Creating friendly AI

Success in Friendly AI can have positive consequences that are arbitrarily large, depending on how powerful a Friendly AI is. Failure in Friendly AI has negative consequences that are also arbitrarily large. The farther into the future you look, the larger the consequences (both positive and negative) become. What is at stake in Friendly AI is, simply, the future of humanity.

With such high stakes, taking a cautious approach has an entirely new meaning. For instance the slightest error might result in the emergence of unfriendly ai. Knowing that human design capabilities are limited and error prone, how do you design such a system?

Thus, Creating Friendly AI uses “volition-based Friendliness” as the assumed model for Friendliness content. Volition-based Friendliness has both a negative aspect – don’t cause involuntary pain, death, alteration, et cetera; try to do something about those things if you see them happening – and a positive aspect: to try and fulfill the requests of sentient entities.

In other words, the only way out is to make sure the AI has an active interest in being friendly.