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README.md
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@@ -12,13 +12,13 @@ The model predicts the punctuation and upper-casing of plain, lower-cased text.
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This model is intended for direct use as a punctuation restoration model for the general English language. Alternatively, you can use this for further fine-tuning on domain-specific texts for punctuation restoration tasks.
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Model restores the following punctuations -- [
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## π Usage
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Below is a quick way to get up and running with the model
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1. First, install the package.
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```bash
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pip install rpunct
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from rpunct import RestorePuncts
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# The default language is 'english'
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rpunct = RestorePuncts()
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rpunct.punctuate("""in 2018 cornell researchers built a high-powered detector that in combination with an algorithm-driven process called ptychography set a world record
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# Outputs the following:
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# In 2018, Cornell researchers built a high-powered detector that, in combination with an algorithm-driven process called Ptychography, set a world record by tripling the
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```
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## π‘ Training data
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Here is the number of product reviews we used for finetuning the model:
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| Language | Number of
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| -------- | ----------------- |
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| English | 560,000 |
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We found the best convergence around
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## π― Accuracy
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| **Upper** | 0.84 | 0.82 | 0.83 | 5442
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## β Contact
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Contact [Daulet Nurmanbetov](daulet.nurmanbetov@gmail.com) for questions, feedback and/or requests for similar models.
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This model is intended for direct use as a punctuation restoration model for the general English language. Alternatively, you can use this for further fine-tuning on domain-specific texts for punctuation restoration tasks.
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Model restores the following punctuations -- **[! ? . , - : ; ' ]**
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The model also restores the upper-casing of words.
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-----------------------------------------------
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## π Usage
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**Below is a quick way to get up and running with the model.**
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1. First, install the package.
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```bash
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pip install rpunct
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from rpunct import RestorePuncts
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# The default language is 'english'
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rpunct = RestorePuncts()
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rpunct.punctuate("""in 2018 cornell researchers built a high-powered detector that in combination with an algorithm-driven process called ptychography set a world record
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by tripling the resolution of a state-of-the-art electron microscope as successful as it was that approach had a weakness it only worked with ultrathin samples that were
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a few atoms thick anything thicker would cause the electrons to scatter in ways that could not be disentangled now a team again led by david muller the samuel b eckert
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professor of engineering has bested its own record by a factor of two with an electron microscope pixel array detector empad that incorporates even more sophisticated
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3d reconstruction algorithms the resolution is so fine-tuned the only blurring that remains is the thermal jiggling of the atoms themselves""")
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# Outputs the following:
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# In 2018, Cornell researchers built a high-powered detector that, in combination with an algorithm-driven process called Ptychography, set a world record by tripling the
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# resolution of a state-of-the-art electron microscope. As successful as it was, that approach had a weakness. It only worked with ultrathin samples that were a few atoms
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# thick. Anything thicker would cause the electrons to scatter in ways that could not be disentangled. Now, a team again led by David Muller, the Samuel B.
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# Eckert Professor of Engineering, has bested its own record by a factor of two with an Electron microscope pixel array detector empad that incorporates even more
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# sophisticated 3d reconstruction algorithms. The resolution is so fine-tuned the only blurring that remains is the thermal jiggling of the atoms themselves.
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```
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**This model works on arbitrarily large text in English language and uses GPU if available.**
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## π‘ Training data
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Here is the number of product reviews we used for finetuning the model:
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| Language | Number of text samples|
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| -------- | ----------------- |
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| English | 560,000 |
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We found the best convergence around _**3 epochs**_, which is what presented here and available via a download.
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## π― Accuracy
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| **Upper** | 0.84 | 0.82 | 0.83 | 5442
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-----------------------------------------------
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## β Contact
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Contact [Daulet Nurmanbetov](daulet.nurmanbetov@gmail.com) for questions, feedback and/or requests for similar models.
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