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UiPath-SAIv1 Practice Test

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Page 4 out of 16 Pages

What happens when multiple users try to label the same document concurrently?


A. The changes made by one user override the changes made by others.


B. The changes made by all users are saved successfully.


C. Concurrent labeling is not allowed.


D. A warning message is displayed to the other user(s) indicating unsuccessful changes.





C.
  Concurrent labeling is not allowed.

Explanation: According to the UiPath documentation, data labeling is a process that involves uploading raw data, annotating text data in the labeling tool, and using the labeled data to train ML models1. Data labeling is performed by human labelers, who can be either internal or external to the organization2. However, concurrent labeling is not supported by the UiPath Data Labeling tool, which means that only one user can label a document at a time3. If multiple users try to label the same document concurrently, they will encounter an error message that says “The document is locked by another user. Please try again later.”. Therefore, the correct answer is C.

What is the Document Object Model (DOM) in the context of Document Understanding?


A. The DOM is a JSON object containing information such as name, content type, text length, number of pages, page rotation, detected language, content, and coordinates for the words identified in the file.


B. The DOM is a built-in artificial intelligence system that automatically understands and interprets the content and the type of documents, eliminating the need for manual data extraction.


C. The DOM is a feature that allows you to convert physical documents into virtual objects that can be manipulated using programming code.


D. The DOM is a graphical user interface (GUI) tool in UiPath Document Understanding that provides visual representations of documents, making it easier for users to navigate and interact with the content.





A.
  The DOM is a JSON object containing information such as name, content type, text length, number of pages, page rotation, detected language, content, and coordinates for the words identified in the file.

Explanation: The Document Object Model (DOM) is a data representation of the objects that comprise the structure and content of a document on the web1. In the context of Document Understanding, the DOM is a JSON object that is generated by the Digitize Document activity, which uses the UiPath Document OCR engine to extract the text and layout information from the input document2. The DOM contains the following properties for each document3:
name: The name of the document file.
contentType: The MIME type of the document file, such as application/pdf or image/jpeg.
textLength: The number of characters in the document text.
pages: An array of objects, each representing a page in the document. Each page object has the following properties:
The DOM can be used as an input for other activities in the Document Understanding framework, such as Classify Document Scope, Data Extraction Scope, or Export Extraction Results. The DOM can also be manipulated using programming code, such as JavaScript or Python, to perform custom operations on the document data.

What is one best practice when designing a UiPath Communications Mining label taxonomy?


A. Each label should be identifiable from the text of the individual verbatim (not thread) to which it will be applied.


B. Each label should include customer experience/sentiment analysis in its coverage.


C. Each parent label should have at least 3 children labels to ensure specificity.


D. Each label should overlap sliqhtlv with a few distinct others so we ensure 100% coveraqe.





A.
  Each label should be identifiable from the text of the individual verbatim (not thread) to which it will be applied.

Explanation: A label taxonomy is a hierarchical structure of concepts that you want to capture from your communications data, such as emails, chats, or calls. Each label represents a specific concept that serves a business purpose and is aligned to your objectives. A label taxonomy can have multiple levels of hierarchy, where each child label is a subset of its parent label. For example, a parent label could be “Product Feedback” and a child label could be “Product Feature Request” or “Product Bug Report”. A label taxonomy is used to train a machine learning model that can automatically classify your communications data according to the labels you defined1.
One of the best practices for designing a label taxonomy is to ensure that each label is clearly identifiable from the text of the individual verbatim (not thread) to which it will be applied. A verbatim is a single unit of communication, such as an email message, a chat message, or a call transcript segment. A thread is a collection of related verbatims, such as an email conversation, a chat session, or a call recording. When you train your model, you will apply labels to verbatims, not threads, so it is important that each label can be recognized from the verbatim text alone, without relying on the context of the thread. This will help the model to learn the patterns and features of each label and to generalize to new data. It will also help you to maintain consistency and accuracy when labelling your data2.

Which UiPath Communications Mining model performance factor assesses the proportion of the entire dataset that has informative label predictions?


A. Average label performance.


B. Coverage.


C. Balance.


D. Underperforming labels.





B.
  Coverage.

Explanation: According to the UiPath Communications Mining documentation, coverage is one of the four main factors that contribute to the model rating, which is a holistic measure of the model’s performance and health. Coverage assesses the proportion of the entire dataset that has informative label predictions, meaning that the predicted labels are not generic or irrelevant. Coverage is calculated as the percentage of verbatims (communication units) that have at least one informative label out of the total number of verbatims in the dataset. A high coverage indicates that the model is able to capture the main topics and intents of the communications, while a low coverage suggests that the model is missing important information or producing noisy predictions.

What information should be filled in when adding an entity label for the OOB (Out Of the Box) labeling template?


A. Name. Data Type. Attribute name, and Color.


B. Name, Data Type. Attribute name. Shortcut, and Color.


C. Name, Shortcut, and Color.


D. Name. Input to be labeled. Attribute name. Shortcut, and Color.





D.
  Name. Input to be labeled. Attribute name. Shortcut, and Color.

Explanation: The OOB labeling template is a predefined template that you can use to label your text data for entity recognition models. The template comes with some preset labels and text components, but you can also add your own labels using the General UI or the Advanced Editor. When you add an entity label, you need to fill in the following information:
Name: the name of the new label. This is how the label will appear in the labeling tool and in the exported data.
Input to be labeled: the text component that you want to label. You can choose from the existing text components in the template, such as Date, From, To, CC, and Text, or you can add your own text components using the Advanced Editor. The text component determines the scope of the text that can be labeled with the entity label.
Attribute name: the name of the attribute that you want to extract from the text. You can use this to create attributes such as customer name, city name, telephone number, and so on. You can add more than one attribute for the same label by clicking on + Add new.
Shortcut: the hotkey that you want to assign to the label. You can use this to label the text faster by using the keyboard. Only single letters or digits are supported. Color: the color that you want to assign to the label. You can use this to distinguish the label from the others visually.


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