natural-language-processing
Natural language processing (NLP) is a field of computer science that studies how computers and humans interact. In the 1950s, Alan Turing published an article that proposed a measure of intelligence, now called the Turing test. More modern techniques, such as deep learning, have produced results in the fields of language modeling, parsing, and natural-language tasks.
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Jun 12, 2017
Change tensor.data
to tensor.detach()
due to
pytorch/pytorch#6990 (comment)
tensor.detach()
is more robust than tensor.data
.
Not a high-priority at all, but it'd be more sensible for such a tutorial/testing utility corpus to be implemented elsewhere - maybe under /test/
or some other data- or doc- related module – rather than in gensim.models.word2vec
.
Originally posted by @gojomo in RaRe-Technologies/gensim#2939 (comment)
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We could utilize https://github.com/googleapis/python-storage to make this robust.
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Hello spoooopyyy hackers
This is a Hacktoberfest only issue!
This is also data-sciency!
The Problem
Our English dictionary contains words that aren't English, and does not contain common English words.
Examples of non-common words in the dictionary:
"hlithskjalf",
"hlorrithi",
"hlqn",
"hm",
"hny",
"ho",
"hoactzin",
"hoactzine
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Created by Alan Turing
- Wikipedia
- Wikipedia
Hello I was thinking it would be of great help if I can get the time offsets of start and end of each word .
Motivation
I was going through Google Speech to text documentation and found this feature and thought will be really amazing if i can have something similar here.