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Ambos lados, revisión anterior Revisión previa Próxima revisión | Revisión previa | ||
clase:iabd:pia:documentacion [2021/11/20 19:49] admin [Redes Convolutionales] |
clase:iabd:pia:documentacion [2024/03/31 21:36] (actual) admin [Estadística Bayesana] |
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- | ===== Regresión logística ===== | ||
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* [[https:// | * [[https:// | ||
* [[https:// | * [[https:// | ||
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+ | ===== Lenguaje Natural ===== | ||
+ | * [[https:// | ||
+ | * [[https:// | ||
+ | |||
+ | Word Embedding Castellano: | ||
+ | * [[https:// | ||
+ | * [[https:// | ||
+ | * [[https:// | ||
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* [[https:// | * [[https:// | ||
* [[https:// | * [[https:// | ||
- | * Teorema de Bayes | + | |
- | * [[https:// | + | |
- | * [[https:// | + | ===== Estadística Bayesana ===== |
- | * [[https:// | + | |
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+ | * [[https:// | ||
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+ | * [[https:// | ||
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+ | * [[https:// | ||
+ | * {{ : | ||
+ | |||
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+ | * {{ : | ||
+ | * [[http:// | ||
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tf.config.list_physical_devices() | tf.config.list_physical_devices() | ||
</ | </ | ||
+ | |||
+ | <sxh python> | ||
+ | from tensorflow.python.client import device_lib | ||
+ | device_lib.list_local_devices() | ||
+ | </ | ||
+ | |||
+ | <sxh python> | ||
+ | device=device_lib.list_local_devices()[0] | ||
+ | with tf.device(device.name): | ||
+ | history=model.fit(x, | ||
+ | </ | ||
+ | |||
+ | |||
+ | ===== Natural Language Processing ===== | ||
+ | |||
+ | * [[https:// | ||
+ | |||
===== EDA ===== | ===== EDA ===== | ||
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* [[https:// | * [[https:// | ||
* [[https:// | * [[https:// | ||
+ | * [[https:// | ||
* Solve Machine Learning Problems | * Solve Machine Learning Problems | ||
* [[https:// | * [[https:// | ||
Línea 262: | Línea 301: | ||
* [[https:// | * [[https:// | ||
* [[https:// | * [[https:// | ||
+ | * [[https:// | ||
===== Humor ===== | ===== Humor ===== | ||
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* Poetry | * Poetry | ||
+ | * [[https:// | ||
+ | * [[https:// | ||
+ | * [[https:// | ||
<sxh python> | <sxh python> | ||
Línea 300: | Línea 343: | ||
poetry run python my_script.py | poetry run python my_script.py | ||
</ | </ | ||
+ | |||
+ | === Crear un colormap personalizado === | ||
+ | <sxh python> | ||
+ | from matplotlib.colors import LinearSegmentedColormap, | ||
+ | |||
+ | def crear_colomap_continuo(hex_colors): | ||
+ | all_red = [] | ||
+ | all_green = [] | ||
+ | all_blue = [] | ||
+ | | ||
+ | for hex_color in hex_colors: | ||
+ | all_red.append(to_rgb(hex_color)[0]) | ||
+ | all_green.append(to_rgb(hex_color)[1]) | ||
+ | all_blue.append(to_rgb(hex_color)[2]) | ||
+ | |||
+ | | ||
+ | num_colors = len(hex_colors) - 1 | ||
+ | red = tuple([(1/ | ||
+ | green = tuple([(1/ | ||
+ | blue = tuple([(1/ | ||
+ | | ||
+ | color_dictionary = {' | ||
+ | new_cmap = LinearSegmentedColormap(' | ||
+ | return new_cmap | ||
+ | |||
+ | |||
+ | |||
+ | new_cmap = build_custom_continuous_cmap(["# | ||
+ | |||
+ | </ | ||
+ | |||
+ | ===== Calculo de errores ===== | ||
+ | * {{ : | ||
+ | * {{ : | ||
===== Hardware ===== | ===== Hardware ===== | ||
- | * [[https:// | ||
- | * {{ : | ||
{{: | {{: |