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chore(nlp-scraper): improve grammar and readibility

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nprimo 10 months ago committed by Niccolò Primo
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  1. 14
      subjects/ai/nlp-scraper/audit/README.md

14
subjects/ai/nlp-scraper/audit/README.md

@ -22,15 +22,15 @@ project
###### Does the structure of the project look like the above?
###### Does the readme file give an introduction of the project, show the username, describe the feature engineering and show the best score on the leaderboard?
###### Does the README file give an introduction of the project, show the username, describe the feature engineering and show the best score on the leaderboard?
###### Does the environment contain all libraries used and their versions that are necessary to run the code?
##### Scrapper
##### Scraper
##### There are at least 300 news articles stored in the file system or the database.
###### Run the scrapper with `python scrapper_news.py` and fetch 3 documents. The scrapper is not expected to fetch 3 documents and stop by itself, you can stop it manually. does it run without any error and store the 3 files as expected?
###### Run the scraper with `python scraper_news.py` and fetch 3 documents. The scraper is not expected to fetch 3 documents and stop by itself, you can stop it manually. Does it run without any error and store the 3 files as expected?
##### Topic classifier
@ -57,7 +57,7 @@ project
###### Are the columns of the DataFrame as expected?
```
Date scrapped (date)
Date scraped (date)
Title (str)
URL (str)
Body (str)
@ -69,13 +69,13 @@ Top_10 (bool)
```
##### Analyse the DataFrame with 300 articles: relevance of the topics matched, relevance of the sentiment, relevance of the scandal detected and relevance of the companies matched. The algorithms are not 100% accurate so you should expect a few issues in the results.
##### Analyse the DataFrame with 300 articles: relevance of the topics matched, relevance of the sentiment, relevance of the scandal detected and relevance of the companies matched. The algorithms are not 100% accurate, so you should expect a few issues in the results.
##### NLP engine on 3 articles
###### Can you run `python nlp_enriched_news.py` without any error?
###### Does the output of the nlp engine correspond to the output below?
###### Does the output of the NLP engine correspond to the output below?
```prompt
python nlp_enriched_news.py
@ -107,4 +107,4 @@ Computing embeddings and distance ...
Environmental scandal detected for <entity>
```
##### Analyse the output: relevance of the topic(s) matched, relevance of the sentiment, relevance of the scandal detected (if detected on the three articles) and relevance of the companie(s) matched.
##### Analyse the output: relevance of the topic(s) matched, relevance of the sentiment, relevance of the scandal detected (if detected on the three articles) and relevance of the company(ies) matched.

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