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UiPath-SAIv1 Practice Test

Whether you're a beginner or brushing up on skills, our UiPath-SAIv1 practice exam is your key to success. Our comprehensive question bank covers all key topics, ensuring you’re fully prepared.


Page 3 out of 16 Pages

Which of the following is an indicator that sufficient training has been completed for a model in UiPath Communications Mining?


A. A model rating of 30-40.


B. A model rating of 40-50.


C. A model rating of 50-60.


D. A model rating of 70-90 or better.





D.
  A model rating of 70-90 or better.

Explanation: The model rating is a proprietary score that assesses the overall health and performance of a model in UiPath Communications Mining. It considers four main factors: balance, underperforming labels, coverage, and all labels. The model rating is a score from 0 to 100, which equates to a rating of ‘Poor’ (0-49), ‘Average’ (50-69), ‘Good’ (70-89) or ‘Excellent’ (90-100). A model rating of 70-90 or better indicates that the model has sufficient training and performs well in all of the most important areas. A model rating of 70- 90 or better also means that the model has a balanced and representative training data, a low number of labels with performance issues or warnings, a high coverage of the dataset by informative labels, and a high average precision of all labels.

Which of the below is the correct definition of "recall" in UiPath Communications Mining?


A. For a given concept what % of cases will the model incorrectly predict.


B. For a given concept, what % of cases will the model not detect.


C. For a given concept what % of cases will the model correctly predict.


D. For a given concept, what % of cases will the model detect.





D.
  For a given concept, what % of cases will the model detect.

Explanation: Recall is a metric that measures the proportion of all possible true positives that the model was able to identify for a given concept1. A true positive is a case where the model correctly predicts the presence of a concept in the data. Recall is calculated as the ratio of true positives to the sum of true positives and false negatives, where a false negative is a case where the model fails to predict the presence of a concept in the data. Recall can be interpreted as the sensitivity or completeness of the model for a given concept2. For example, if there are 100 verbatims that should have been labelled as ‘Request for information’, and the model detects 80 of them, then the recall for this concept is 80% (80 / (80 + 20)). A high recall means that the model is good at finding all the relevant cases for a concept, while a low recall means that the model misses many of them.

What does adding missed labels help improve in UiPath Communications Mining?


A. Label bias warnings.


B. Increases data security.


C. Increases the taxonomy coverage.


D. Label precision and recall.





D.
  Label precision and recall.

Explanation: Adding missed labels helps improve the label precision and recall in UiPath Communications Mining. Precision is the percentage of correctly labeled verbatims out of all the verbatims that have the label applied, while recall is the percentage of correctly labeled verbatims out of all the verbatims that should have the label applied. By adding missed labels, you are increasing the recall of the label, as you are reducing the number of false negatives (verbatims that should have the label but do not). This also improves the precision of the label, as you are reducing the noise in the data and making the label more informative and consistent. Adding missed labels is one of the recommended actions that the platform suggests to improve the model rating and performance of the labels.

What is the recommended split of documents for training and evaluation, considering a total of 15 documents per vendor?


A. 7 documents for training the model, and 8 for evaluating the model.


B. 8 documents for training the model, and 7 for evaluating the model.


C. 10 documents for training the model, and 5 for evaluating the model.


D. 12 documents for training the model, and 3 for evaluating the model.





C.
  10 documents for training the model, and 5 for evaluating the model.

Explanation: When you create a training dataset for document classification or data extraction, you need to split your documents into two subsets: one for training the model and one for evaluating the model. The training subset is used to teach the model how to recognize the patterns and features of your document types and fields. The evaluation subset is used to measure the performance and accuracy of the model on unseen data. The evaluation subset should not be used for training, as this would bias the model and overfit it to the data1.
The recommended split of documents for training and evaluation depends on the size and diversity of your data. However, a general guideline is to use a 70/30 or 80/20 ratio, where 70% or 80% of the documents are used for training and 30% or 20% are used for evaluation. This ensures that the model has enough data to learn from and enough data to test on. For example, if you have 15 documents per vendor, you can use 10 documents for training and 5 documents for evaluation. This would give you a 67/33 split, which is close to the 70/30 ratio. You can also use the Data Manager tool to create and manage your training and evaluation datasets2.

Which of the following file types are supported for the DocumentPath property in the Classify Document Scope activity?


A. .bmp, .pdf, .jpe, .psd


B. .png, .gif, .jpe, .tiff


C. .pdf, .jpeg, .raw, tif


D. .jpe, .eps, .jpg, .tiff





B.
  .png, .gif, .jpe, .tiff

Explanation: According to the UiPath documentation portal1, the DocumentPath property in the Classify Document Scope activity accepts the path to the document you want to validate. This field supports only strings and String variables. The supported file types for this property field are .png, .gif, .jpe, .jpg, .jpeg, .tiff, .tif, .bmp, and .pdf. Therefore, option B is the correct answer, as it contains four of the supported file types. Option A is incorrect, as .psd is not a supported file type. Option C is incorrect, as .raw is not a supported file type. Option D is incorrect, as .eps is not a supported file type.


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