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reliability. This position requires advanced analytical capabilities in energy systems modeling, load forecasting, and utility resource planning. The analyst reports to the Executive Director to design and
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. This position seeks an experienced and recognized energy expert who can strategize and grow demand forecasting research at NLR. This is a recent example of one of the tools NLR has developed: https://tinyurl.com
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range is from $68,932 to $77,000 per year. Research Associate, Clean Energy Transformation About UBC The Department of Chemical and Biological Engineering at the University of British Columbia, Vancouver
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machine learning (ML), hydrologic and energy systems simulations, and scenario forecasting-to evaluate dynamic energy-water futures and resilience strategies for diverse Idaho communities. Job Summary/Basic
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and the latest operational subseasonal forecast model output (i/e forecasts out to 40-60+ days) to quantify the sensitivity of block events to precursors originating from the Arctic, mid-latitude, and
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. Research Associate, Clean Energy Transformation About UBC The Department of Chemical and Biological Engineering at the University of British Columbia, Vancouver invites applications for a full time Research
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Analysis & Forecasting (40%): Conducts financial analysis and strategic planning in support of business groups. Works on monthly close process working closely with accounting to ensure the validity
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) for validating the NOSHAKE concept for forecasting induced seismicity as a result of fluid injection/extraction related to geothermal energy, geologic carbon storage and hydrogen storage. The position is related
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, storage, and local electricity grids. A key goal is to translate methodological innovations in deep learning into practical tools for sustainable urban energy systems, supporting applications in forecasting
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forecasting, representation learning, and scenario generation under safety and reliability constraints. The results will support safer automation, fewer failure modes, more efficient testing, and lower energy