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to automatically identify harmful language patterns based on large language models (LLMs) and sentiment analysis using GPT-4 as a reference model; (ii) Fact-checking mechanisms based on state-of-the-art solutions
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analysis using GPT-4 as a reference model; (ii) Fact-checking mechanisms based on state-of-the-art solutions such as Google Fact Check Tools and guardrail systems based on GuardRails AI. The project is
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interfaces (HMI), and industrial-grade communication protocols for automation in electric power systems.; • Develop and adapt a test network — a simulation model or a replica of a real network — for DIgSILENT
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industrial-grade communication protocols for automation in electric power systems.; Implement the interface between OPAL-RT and HMI/SCADA software: connecting the real-time model or digital twin with the SCADA
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Agreement No. 101081661, under the following conditions: Scientific Area: Physics and Energy Systems, Earth Sciences, Climate change and Environmental modelling, or similar areas. Admission requirements
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, energy consumption, and accuracy.; ; Training deep learning models, especially in LLMs, faces critical challenges that compromise the optimal use of GPUs. These bottlenecks result in poor computational
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learning models for generating artificial data using generative models. The result will be high-fidelity medical data. 3. BRIEF PRESENTATION OF THE WORK PROGRAMME AND TRAINING: - extend the knowledge
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Education Institutions. Preference factors: - Knowledge of fundamental concepts related to energy management and gas networks; - Knowledge of optimization and forecasting models; - Knowledge of Python
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designs and results 3. BRIEF PRESENTATION OF THE WORK PROGRAMME AND TRAINING: -Modelling electricity markets ; -Modeling energy resources planning ; -Integration of resources for self-consumption
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; Motivation Letter. Preferential requirements Research experience using qualitative and/or quantitative methodologies for data collection, processing, and analysis, namely univariate and multivariate models and