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\version "2.19.83" | |
\language "espanol" | |
\header { | |
title = "Amazing Grace" | |
composer = "Trad. Scottish" | |
%tagline = "" | |
} |
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[Version] | |
AppVersion=5.7 | |
Version=346 | |
[General] | |
Rank=-1 | |
ColorLabel=0 | |
InTrash=false | |
[Exposure] |
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# Run this to get the example file | |
import tables | |
import numpy as np | |
h5 = tables.open_file('onefile.h5', 'w', filters=tables.Filters(8, 'lzo')) | |
g = h5.create_group(h5.root, 'data') | |
h5.create_carray(g, 'data_array', obj=np.random.random((int(1e6), 20))) | |
h5.close() |
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import numpy as np | |
import matplotlib.pyplot as plt | |
import cartopy.crs as ccrs | |
import cartopy.feature as cfeature | |
lon = 10 + 15 * np.random.random(30) | |
lat = 55 + 15 * np.random.random(30) | |
data = np.random.randn(30) |
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import pandas as pd | |
import pylab as plt | |
df_allcauses = pd.read_excel('datasetfinalcorrected3.xlsx', sheet_name='Table 2', header=4, nrows=38) | |
df_covid = pd.read_excel('datasetfinalcorrected3.xlsx', sheet_name='Table 1', header=4, nrows=38) | |
for k in df_covid.keys(): | |
if k.startswith('Age-st'): | |
df_covid[k] = pd.to_numeric(df_covid[k], errors='coerce').fillna(0) |
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import numpy as np | |
import scipy.optimize as spo | |
import scipy.stats as sps | |
import matplotlib.pyplot as plt | |
x, y = np.array([[3.16275414, 3.79136358], | |
[3.06332232, 3.56686702], | |
[2.71045949, 3.65764056], | |
[3.31620986, 3.9009491 ], | |
[3.0538026 , 3.77374607], |
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import numpy as np | |
import keras_cv | |
model = keras_cv.models.RetinaNet(backbone=keras_cv.models.MobileNetV3Backbone.from_preset('mobilenet_v3_small_imagenet'), | |
num_classes=2, | |
bounding_box_format="xywh", | |
) | |
image= np.random.randint(0, 255, size=(1, 640, 480, 3), dtype=np.uint8) | |
model(image) |
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