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README.md
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base_model:
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- Qwen/Qwen3-4B-Instruct-2507
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pipeline_tag: text-generation
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---
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# Model Card for SurfMine
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### Data
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The dataset for this task was created through a pipline that I programmed in python. The data consists of two functional blocks that were aquired online. The actual NOAA buoy data comes from the [Iowa State University Mesonet](https://mesonet.agron.iastate.edu/wx/afos/list.phtml?by=cccc&source=AKQ&pil=CWF&year=2025&month=9&day=15&drange=yes&year2=2025&month2=9&day2=24&view=grid&order=asc), they have an api that allows for previous days forecasts to read in as a text file. In order to generate human specific sounding forecast from this data I needed examples that could be combined with specific forecast dates. This data was aquired by scraping the forecast from a local surf shop located in Wrightsville Beach, North Carolina. This surf observation is compiled each day by a veteran surfer, and can be seen [here](https://wblivesurf.com/todays-surf/). Essentially I wrote a bot that retrieves these two pieces of information and combines it into a text file.
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base_model:
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- Qwen/Qwen3-4B-Instruct-2507
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pipeline_tag: text-generation
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datasets:
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- pfost-bit/surf_forecaster_dataset
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---
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# Model Card for SurfMine
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### Data
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The dataset for this task was created through a pipline that I programmed in python. The data consists of two functional blocks that were aquired online. The actual NOAA buoy data comes from the [Iowa State University Mesonet](https://mesonet.agron.iastate.edu/wx/afos/list.phtml?by=cccc&source=AKQ&pil=CWF&year=2025&month=9&day=15&drange=yes&year2=2025&month2=9&day2=24&view=grid&order=asc), they have an api that allows for previous days forecasts to read in as a text file. In order to generate human specific sounding forecast from this data I needed examples that could be combined with specific forecast dates. This data was aquired by scraping the forecast from a local surf shop located in Wrightsville Beach, North Carolina. This surf observation is compiled each day by a veteran surfer, and can be seen [here](https://wblivesurf.com/todays-surf/). Essentially I wrote a bot that retrieves these two pieces of information and combines it into a text file.
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