Essays about: "time and learning language"
Showing result 1 - 5 of 357 essays containing the words time and learning language.
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1. Towards Automated Log Message Embeddings for Anomaly Detection
University essay from Lunds universitet/Institutionen för reglerteknikAbstract : Log messages are implemented by developers to record important runtime information about a system. For that reason, system logs can provide insight into the state and health of a system and potentially be used to anticipate and discover errors. READ MORE
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2. Teaching pronunciation effectively in an EFL classroom; a literature review
University essay from Malmö universitet/Institutionen för kultur, språk och medier (KSM)Abstract : This study provides a literature review of the most effective ways to teach pronunciation to EFL secondary school students in Sweden. There is limited time allocated to pronunciation leading to a scarcity of available effective methods. This impacts the important role which intelligibility holds in pronunciation. READ MORE
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3. Efficiency by design : A way to meet expert users' needs
University essay from Umeå universitet/Institutionen för tillämpad fysik och elektronikAbstract : The administration software is a crucial component of any successful company. It is often overlooked, but it plays an essential role in ensuring the smooth operation of the business. It is the backbone of the company's operations, and it must be able to meet the evolving needs of its users. READ MORE
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4. An In-Depth study on the Utilization of Large Language Models for Test Case Generation
University essay from Umeå universitet/Institutionen för datavetenskapAbstract : This study investigates the utilization of Large Language Models for Test Case Generation. The study uses the Large Language model and Embedding model provided by Llama, specifically Llama2 of size 7B, to generate test cases given a defined input. READ MORE
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5. Self-Supervised Learning for Tabular Data: Analysing VIME and introducing Mix Encoder
University essay from Lunds universitet/Fysiska institutionenAbstract : We introduce Mix Encoder, a novel self-supervised learning framework for deep tabular data models based on Mixup [1]. Mix Encoder uses linear interpolations of samples with associated pretext tasks to form useful pre-trained representations. READ MORE