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README.md
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<p>
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Founded in 2008, Yorktown Systems Group (YSG) delivers training, mission support,
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technological enablers, and human capital solutions designed for complex operational environments.
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Software
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</p>
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<ul>
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<li>Training and education services</li>
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<li>Language and cultural services (70+ languages)</li>
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<li>Operational mission support</li>
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<li>Intelligence analysis services</li>
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<li>Mission-critical software innovation through Yorktown Software Labs (YSL),
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</ul>
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</td>
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<td valign="top" width="50%">
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<p>This Hugging Face organization may share:</p>
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<ul>
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<li>Datasets and benchmarks</li>
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<li>Model artifacts and evaluation assets</li>
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<li>Demonstrations and implementation references</li>
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<li>Documentation supporting reproducible usage</li>
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</ul>
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<p>
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Founded in 2008, Yorktown Systems Group (YSG) delivers training, mission support,
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technological enablers, and human capital solutions designed for complex operational environments.
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Software and AI are strategic backbones of this mission, accelerating capability, adaptability, and long-term mission advantage through natural language technologies, machine learning, deep learning, and data-driven decision support.
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</p>
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<ul>
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<li>Training and education services</li>
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<li>Language and cultural services (70+ languages)</li>
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<li>Operational mission support</li>
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<li>Intelligence analysis services</li>
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<li>Mission-critical software and AI innovation through Yorktown Software Labs (YSL), including NLP, machine learning, deep learning, and advanced analytics</li>
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</ul>
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</td>
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<td valign="top" width="50%">
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<p>This Hugging Face organization may share:</p>
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<ul>
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<li>Datasets and benchmarks</li>
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+
<li>Model artifacts and evaluation assets across natural language, machine learning, and deep learning workflows</li>
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<li>Demonstrations and implementation references</li>
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<li>Documentation supporting reproducible usage</li>
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</ul>
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