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4 result(s) for "Selenium (Software framework)"
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Testing Java microservices : using Arquillian, Hoverfly, AssertJ, JUnit, Selenium, and Mockito
With traditional software unit tests, there's never a guarantee that an application will actually function correctly in the production environment. When you add microservices, testing becomes even more tricky. 'Testing Java Microservices' teaches readers how to write tests like unit, component, integration, container, contract, chaos, and more.
Automating Software Tests Using Selenium
Automating Software Tests Using Selenium is a practical manual aimed at all professionals and companies in the systems area and who aim to improve the quality of their services and / or products in a simple, efficient and low cost.
One-shot synthesis of heavy-atom-modified carbazole-fused multi-resonance thermally activated delayed fluorescence materials
Efficient multi-resonance thermally activated delayed fluorescence (MR-TADF) materials hold significant potential for applications in organic light-emitting diodes (OLEDs) and ultra-high-definition displays. However, the stringent synthesis conditions and low yields typically associated with these materials pose substantial challenges for their practical applications. In this study, we introduce an innovative strategy that involves peripheral modification with sulfur and selenium atoms for two materials, CFDBNS and CFDBNSe. This approach enables a directed one-shot borylation process, achieving synthesis yields of 66% and 25%, respectively, while also enhancing reverse intersystem crossing rates. Both emitters exhibit ultra-narrowband sky-blue emissions centered around 474 nm, with full width at half maximum (FWHM) values as narrow as 19 nm in dilute toluene solutions, along with high photoluminescence quantum yields of 98% and 99% in doped films, respectively. The OLEDs based on CFDBNS and CFDBNSe display sky-blue emissions with peaks at 476 and 477 nm and exceptionally slender FWHM values of 23 nm. Furthermore, the devices demonstrate remarkable performances, achieving maximum external quantum efficiencies of 24.1% and 27.2%. This work presents a novel and straightforward approach for the incorporation of heavy atoms, facilitating the rapid construction of efficient MR-TADF materials for OLEDs.
A Reference Paper Collection System Using Web Scraping
Collecting reference papers from the Internet is one of the most important activities for progressing research and writing papers about their results. Unfortunately, the current process using Google Scholar may not be efficient, since a lot of paper files cannot be accessed directly by the user. Even if they are accessible, their effectiveness needs to be checked manually. In this paper, we propose a reference paper collection system using web scraping to automate paper collections from websites. This system can collect or monitor data from the Internet, which is considered as the environment, using Selenium, a popular web scraping software, as the sensor; this examines the similarity against the search target by comparing the keywords using the Bert model. The Bert model is a deep learning model for natural language processing (NLP) that can understand context by analyzing the relationships between words in a sentence bidirectionally. The Python Flask is adopted at the web application server, where Angular is used for data presentations. For the evaluation, we measured the performance, investigated the accuracy, and asked members of our laboratory to use the proposed method and provide their feedback. Their results confirm the method’s effectiveness.