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<ASSISTANT_TASK:> Python Code: short_freq = (hdulist[0].header['STEPSIZE'] / (60. * 60. * 24.)) med_freq = (10. / (60. * 24.)) long_freq = 1. / 24. max_freq = 10. / 24. from scipy.signal import lombscargle short_periods = np.linspace(short_freq, med_freq, len(times)) med_periods = np.linspace(med_freq, long_freq, len(...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Lomb-Scargle Periodogram via scipy Step2: Lomb-Scargle Periodogram via astroML Step3: Try with more data! Step4: Try with noisy data Step5: ...
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<ASSISTANT_TASK:> Python Code: import numpy as np %matplotlib inline import matplotlib.pyplot as plt import seaborn as sns import antipackage import github.ellisonbg.misc.vizarray as va def checkerboard(size): Return a 2d checkboard of 0.0 and 1.0 as a NumPy array check = np.zeros((size,size),float) check....
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step2: Checkerboard Step3: Use vizarray to visualize a checkerboard of size=20 with a block size of 10px. Step4: Use vizarray to visualize a checkerb...
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<ASSISTANT_TASK:> Python Code: %pylab inline import sys from corner import corner sys.path.append('.') from src.mocklc import MockLC, SimulationSetup from src.blendlpf import MockLPF import src.plotting as pl lc = MockLC(SimulationSetup('M', 0.1, 0.0, 0.0, 'short_transit', cteff=5500, know_orbit=True)) lc.create(wnsi...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Create a mock light curve Step2: Initialize the log posterior function Step3: Optimize Step4: Estimate the posterior Step5: Analysis Step6: ...
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<ASSISTANT_TASK:> Python Code: df1 = pd.read_csv('listings/30042015/30042015.csv', sep = ";") df2 = pd.read_csv('listings/17072015/17072015.csv', sep = ";") df3 = pd.read_csv('listings/02102015/02102015.csv', sep = ";") df4 = pd.read_csv('listings/03012016/03012016.csv', sep = ";") df5 = pd.read_csv('listings/08122016/...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: feim un DataFrame on cada columna conté els host_id de cada scrap i de nom li posam la data de l'scrap Step2: Feim un dataframe amb l'índex del...
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<ASSISTANT_TASK:> Python Code: !conda install -y netcdf4 from netCDF4 import Dataset, num2date, date2num from numpy import * import matplotlib.pyplot as plt %matplotlib inline from ipywidgets import interact, interactive, fixed import ipywidgets as widgets x = linspace(0, 1, 100) # generates a hundred values between...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Add to the function to allow amplitude to be varied and aadd in an additional slider to vary both f and a Step2: Climate data Step3: Plotting ...
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<ASSISTANT_TASK:> Python Code: import numpy as np import numexpr as ne ne.set_num_threads(10); rho = np.empty((512,512,512), dtype=np.float32) rho[:] = np.random.random(rho.shape) rho_mean = rho.mean(dtype=np.float64).astype(np.float32) # Use double precision for intermediate accumulations %%timeit delta = np.exp((rh...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: The NumPy way Step2: The Numexpr way Step3: We were using 10 cores. Did our speedup come from multi-threading or loop-blocking/vectorization?...
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<ASSISTANT_TASK:> Python Code: %matplotlib inline import matplotlib.pyplot as plt plt.rcParams.update({'font.size': 18}) import tqdm import numpy as np import espressomd.observables import espressomd.accumulators espressomd.assert_features( ["ENGINE", "ROTATION", "MASS", "ROTATIONAL_INERTIA", "CUDA"]) ED_PARAMS = {...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Exercise Step2: No more setup needed! We can run the simulation and plot our observables. Step4: The Mean Square Displacement of an active par...
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<ASSISTANT_TASK:> Python Code: import xarray as xr import numpy as np import os, sys import matplotlib.pyplot as plt import cartopy import cartopy.crs as ccrs %matplotlib inline def read_data(file_name): Read netcdf file and return variables: rlat, rlon, var, px and py. # read the dataset ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Allow to display the output of plotting commands in notebook Step3: Function read_data Step5: Function main Step6: Run main
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<ASSISTANT_TASK:> Python Code: df df=pd.read_csv(csv_path) df[(df[u'year'] <= 2016)] print pd.Timestamp.min print pd.Timestamp.max year2=[] for i in df['year']: try: year2.append(int(i[6:10])) except: year2.append(np.nan) df['year']=year2 df[(df[u'year'] <= 2016)] df = df[(df[u'reclat'] != 0.0) & (df[u'rec...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: lassuk lepesekben Step2: ugy nez ki ez a kifejezes a hibas a 2016-al. ez a zert van, mert ez az oszlop nem valos datumkent van ertelmezve. ket ...
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<ASSISTANT_TASK:> Python Code: from sklearn.datasets import make_regression from sklearn.cross_validation import train_test_split X, y, true_coefficient = make_regression(n_samples=80, n_features=30, n_informative=10, noise=100, coef=True, random_state=5) X_train, X_test, y_train, y_test = train_test_split(X, y, random...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Linear Regression Step2: Ridge Regression (L2 penalty) Step3: Lasso (L1 penalty) Step4: Linear models for classification Step5: Multi-Class ...
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<ASSISTANT_TASK:> Python Code: # conda install ipyrad -c bioconda # conda install toytree -c eaton-lab import pandas as pd import toytree # load the tree table from CSV tree_table = pd.read_csv( "./analysis-treeslider/test.tree_table.csv", index_col=0, ) # examine top of table tree_table.head() outfile = open...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Short Tutorial Step2: Write the trees column to a file Step3: Get Astral Step4: Run Astral Step5: Plot astral species tree
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<ASSISTANT_TASK:> Python Code: %pylab inline from sg2lib import * gamma = 1 Sx = 2 Fs = array([[1, gamma], [0, 1]]) Fp = array([[Sx, 0], [0, 1/Sx]]) n = 10 Fsi = array([[1, gamma/n], [0, 1]]) print('Incremental deformation gradient:') print(Fsi) array_equal(matrix_power(Fsi, n), Fs) Fpi = array([[Sx**(1/n), 0], [0, ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Naive concept of simultaneous deformation Step2: To divide simple shear deformation with $\gamma$=1 to n incremental steps Step3: To check tha...
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<ASSISTANT_TASK:> Python Code: import os import mne from mne.preprocessing import (ICA, create_eog_epochs, create_ecg_epochs, corrmap) sample_data_folder = mne.datasets.sample.data_path() sample_data_raw_file = os.path.join(sample_data_folder, 'MEG', 'sample', ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: <div class="alert alert-info"><h4>Note</h4><p>Before applying ICA (or any artifact repair strategy), be sure to observe Step2: We can get a sum...
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<ASSISTANT_TASK:> Python Code: # import variable setting dictionaries from dkrz data ingest tool chain # and remove __doc__ strings from dictionary (would clutter PROV graph visualizations) from provtemplates import workflow_steps from collections import MutableMapping from contextlib import suppress def delete_keys_fr...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Template representation variant 1 Step2: Template representation variant 2 Step3: Template representation variant 3
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<ASSISTANT_TASK:> Python Code: training = sqlContext.read.parquet("s3://zoltanctoth-flights/training.parquet") test = sqlContext.read.parquet("s3://zoltanctoth-flights/training.parquet") test.printSchema() test.first() training.cache() test.cache() from pyspark.sql.types import DoubleType from pyspark.sql.functions im...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Generate label column for the training data Step2: Create and fit Spark ML model Step3: Predict whether the aircraft will be late Step4: Chec...
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<ASSISTANT_TASK:> Python Code: %matplotlib inline import matplotlib matplotlib.rcParams['figure.figsize'] = (10.0, 8.0) import matplotlib.pyplot as plt import numpy as np from scipy.interpolate import interp1d, InterpolatedUnivariateSpline from scipy.optimize import bisect import json from functools import partial clas...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: And some more specialized dependencies Step2: Configuration for this figure. Step3: Open a chest located on a remote globus endpoint and load ...
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<ASSISTANT_TASK:> Python Code: %matplotlib inline from matplotlib import pyplot as plt import seaborn as sns import numpy as np def find_peaks(a): Find the indices of the local maxima in a sequence. # YOUR CODE HERE #raise NotImplementedError() ind=[] #next two if checks end points if a[0]> a[1...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step2: Peak finding Step3: Here is a string with the first 10000 digits of $\pi$ (after the decimal). Write code to perform the following
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<ASSISTANT_TASK:> Python Code: def g(x, alpha, beta): assert alpha >= 0 and beta >= 0 return (alpha*x)/(1 + (beta * x)) def plot_cobg(x, alpha, beta): y = np.linspace(x[0],x[1],300) g_y = g(y, alpha, beta) cobweb(lambda x: g(x, alpha, beta), y, g_y) # configura gráfica interactiva interact(plot_co...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Búsqueda algebráica de puntos fijos Step2: Punto fijo oscilatorio Step3: ¿Qué pasará con infinitas iteraciones?
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<ASSISTANT_TASK:> Python Code: import os import sys root_folder = os.path.dirname(os.getcwd()) sys.path.append(root_folder) import ResoFit from ResoFit.calibration import Calibration from ResoFit.fitresonance import FitResonance from ResoFit.experiment import Experiment from ResoFit._utilities import Layer import numpy...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Global paramters Step2: File locations Step3: Preview data using Experiment() Step4: Data Step5: Spectra Step6: Remove unwanted data points...
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<ASSISTANT_TASK:> Python Code: #Like before, we're going to select the relevant columns from the database: connection = psycopg2.connect('dbname= threeoneone user=threeoneoneadmin password=threeoneoneadmin') cursor = connection.cursor() cursor.execute('''SELECT createddate, closeddate, borough FROM service;''') data = ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Let's extract years and months again Step2: And now, we're going to filter out bad cases again. However, this time, we're going to be a bit mor...
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<ASSISTANT_TASK:> Python Code: %matplotlib inline import matplotlib.pyplot as plt import seaborn as sns; sns.set() # for plot styling import numpy as np import threading import time from sklearn.datasets.samples_generator import make_blobs from sklearn.cluster import KMeans import sys sys.path.append("../") from IoTPy...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Part 1 Step2: Sklearn function to generate random points Step3: Function to compute kmeans and plot clusters. Step4: Function to change the p...
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<ASSISTANT_TASK:> Python Code: # Importando Bibliotecas import csv import matplotlib.pyplot as plt from math import sqrt from random import randrange # Definição da função que transforma um conjunto de dados inteiro em float def str_column_to_float(data): newData = [] for lines in data: aux = [float(x) ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Utilização da Regressão Linear e Avaliação do Algoritmo Step2: Visualização da Regressão Linear
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<ASSISTANT_TASK:> Python Code: !rm -rf hello setup.py && mkdir hello %%file hello/hello.py #pythran export hello() def hello(): Wave hello. print("Hello from Pythran o/") %%file hello/__init__.py Hello package, featuring a Pythran kernel. from hello import hello %%file setup.py from distutils.core ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step2: Project layout Step4: And so is the __init__.py file. Step5: The setup.py file contains the classical metadata, plus a special header. this he...
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<ASSISTANT_TASK:> Python Code: from pylab import * t = arange(0.0, 2.0,0.01) y = sin(2*pi*t) plot(t, y) xlabel('Time (s)') ylabel('Voltage (mV)') title('The simplest one, buddies') grid(True) show() from pylab import * t = arange(0.0, 2.0,0.01) y = sin(2*pi*t) plot(t, y, color='red') xlabel('Time (s)') ylabe...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Custom plot line Step2: A custom 2D plot, based on our first example.
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<ASSISTANT_TASK:> Python Code: #Example conditional statements x = 1 y = 2 x<y #x is less than y #x is greater than y x>y #x is less-than or equal to y x<=y #x is greater-than or equal to y x>=y #Example of and operator (1<2)and(2<3) #Example of or operator (1<2)or(2>3) #Example of not operator not(1>2) x = 1 y = 2 i...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: If you let a and b be conditional statements (like the above statements, e.g. a = x < y), then you can combine the two together using logical op...
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<ASSISTANT_TASK:> Python Code: import numpy as np a = np.array([[ 0, 1, 2, 3, 4, 5], [ 5, 6, 7, 8, 9, 10], [10, 11, 12, 13, 14, 15], [15, 16, 17, 18, 19, 20], [20, 21, 22, 23, 24, 25]]) result = np.diag(np.fliplr(a)) <END_TASK>
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description:
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<ASSISTANT_TASK:> Python Code: # загрузка из файла reviews_test = pd.read_csv('data/reviews_test.csv', header=0, encoding='utf-8') reviews_train = pd.read_csv('data/reviews_train.csv', header=0, encoding='utf-8') reviews_internet = pd.read_csv('data/internet_reviews.csv', header=0, encoding='utf-8') # обучающая выборка...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Загрузка обработчика комментариев Step2: Обработка данных Step3: Обучение модели Step4: Результаты Step5: Классификатор 5 / не 5 Step6: Cни...
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<ASSISTANT_TASK:> Python Code: # Python // JavaScript # No output # Plain text output "Hello world" True False 42 import math math.pi dict(a=1,b=2) list(range(10)) dict(a='string', b=1, c=3.14, d=[1, 2, 3], e=dict(f=1)) # Stream output print("Just a string") # Matplotlib import matplotlib.pyplot as plt import numpy ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: The following code cells illustrate how different types of cell outputs are decoded. Step2: Primitive outputs Step3: Image outputs Step4: HTM...
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<ASSISTANT_TASK:> Python Code: import warnings warnings.filterwarnings('ignore') %matplotlib inline %pylab inline from distutils.version import StrictVersion import sklearn print(sklearn.__version__) assert StrictVersion(sklearn.__version__ ) >= StrictVersion('0.18.1') import tensorflow as tf tf.logging.set_verbosity(t...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: How does Tensorflow Low Level API look like? Step2: Interactive usage of Low Level API Step3: Calling a TensorFlow Model deployed on Google Cl...
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<ASSISTANT_TASK:> Python Code: import matplotlib.pyplot # We have this here to trigger matplotlib's font cache stuff. # This cell is hidden from the output import pandas as pd import numpy as np np.random.seed(24) df = pd.DataFrame({'A': np.linspace(1, 10, 10)}) df = pd.concat([df, pd.DataFrame(np.random.randn(10, 4), ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Here's a boring example of rendering a DataFrame, without any (visible) styles Step2: Note Step4: The row0_col2 is the identifier for that par...
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<ASSISTANT_TASK:> Python Code: # Authors: Alexandre Gramfort <alexandre.gramfort@telecom-paristech.fr> # # License: BSD (3-clause) import numpy as np import matplotlib.pyplot as plt import mne from mne import io from mne.datasets import sample print(__doc__) data_path = sample.data_path() raw_fname = data_path + '/MEG...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Set parameters Step2: Show event related fields images
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<ASSISTANT_TASK:> Python Code: #export from exp.nb_01 import * def get_data(): path = datasets.download_data(MNIST_URL, ext='.gz') with gzip.open(path, 'rb') as f: ((x_train, y_train), (x_valid, y_valid), _) = pickle.load(f, encoding='latin-1') return map(tensor, (x_train,y_train,x_valid,y_valid)) d...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Foundations version Step2: Tinker practice Step3: From pytorch docs Step4: Loss function Step5: We need squeeze() to get rid of that trailin...
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<ASSISTANT_TASK:> Python Code: import os.path as op import numpy as np import matplotlib.pyplot as plt import mne # sphinx_gallery_thumbnail_number = 9 data_path = mne.datasets.sample.data_path() fname = op.join(data_path, 'MEG', 'sample', 'sample_audvis-ave.fif') evoked = mne.read_evokeds(fname, baseline=(None, 0), p...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: First we read the evoked object from a file. Check out Step2: Notice that evoked is a list of Step3: Let's start with a simple one. We plot e...
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<ASSISTANT_TASK:> Python Code: # run this cell first! fruits = {"apple":"red", "banana":"yellow", "grape":"purple"} print fruits["banana"] query = "apple" print fruits[query] print fruits[0] print fruits.keys() print fruits.values() for key in fruits: print fruits[key] del fruits["banana"] print fruits print fruit...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: There's no concept of "first element" in a dictionary, since it's unordered. (Of course, if you happened to have a key in your dictionary that w...
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<ASSISTANT_TASK:> Python Code: # download sample files !wget -P data -nc ftp://ftp.nersc.no/nansat/test_data/obpg_l2/A2015121113500.L2_LAC.NorthNorwegianSeas.hdf !wget -P data -nc ftp://ftp.nersc.no/nansat/test_data/obpg_l2/A2015122122000.L2_LAC.NorthNorwegianSeas.hdf import numpy as np import matplotlib.pyplot as plt ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Open MODIS/Aqua files with chlorophyll in the North Sea and fetch data Step2: Plot chlorophyll-a maps in swath projection Step3: Colocate data...
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<ASSISTANT_TASK:> Python Code: import itertools # heads = True # tails = False # Initialize coins to all heads coins = [True]*100 for factor in range(100): # This will generate N zeros, then a 1. This repeats forever flip_generator = itertools.cycle([0]*factor+[1]) # This will take the first 100 items...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Classic Riddler Step2: If I would not have seen this particular tweet (https
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<ASSISTANT_TASK:> Python Code: import pandas as pd import matplotlib.pyplot as plt %matplotlib inline df= pd.read_excel("NHL 2014-15.xls") !pip install xlrd df.columns.value_counts() df.head() df.columns df['Ctry'].value_counts().head(10) df['Nat'].value_counts().head(10) df['Birth City'].value_counts().head(1...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: Here's all of our data Step2: Here are each of the columns in the data set Step3: Let's count how many players are from each country Step4: L...
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<ASSISTANT_TASK:> Python Code: %matplotlib inline import matplotlib.pyplot as plt plt.style.use('seaborn-whitegrid') import numpy as np x = np.linspace(0, 10, 50) dy = 0.8 y = np.sin(x) + dy * np.random.randn(50) # yerr表示y的误差 plt.errorbar(x, y, yerr=dy, fmt='.k'); plt.errorbar(x, y, yerr=dy, fmt='o', color='black', ...
<SYSTEM_TASK:> Given the following text description, write Python code to implement the functionality described below step by step <END_TASK> <USER_TASK:> Description: Step1: 这里的fmt是控制线和点外观的格式代码,并且具有与plt.plot中使用的简写相同的语法,在Simple Line Plots和Simple Scatter Plots中进行了概述。 Step2: 除了这些选项之外,还可以指定水平误差线(xerr),单面误差线和许多其他变体。有关可用选...
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