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from decimal import Decimal, getcontext | |
import matplotlib.pyplot as plt | |
# Set the desired precision | |
getcontext().prec = 28 | |
# Define the tent map function using Decimal for high precision | |
def tent_map(x, r): | |
half = Decimal('0.5') | |
return r*x if x < half else r*(1-x) |
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#!/usr/bin/env python3 | |
import pandas as pd | |
import numpy as np | |
import matplotlib.pyplot as plt | |
from tabulate import tabulate | |
def amort(principal, rate, n): | |
return principal * (rate * ((1 + rate) ** n)) / ((1 + rate) ** n - 1) |
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#!/usr/bin/env python3 | |
import pandas as pd | |
import numpy as np | |
import matplotlib.pyplot as plt | |
import textwrap | |
from tabulate import tabulate | |
def amort(principal, rate, n): | |
return principal * (rate * ((1 + rate) ** n)) / ((1 + rate) ** n - 1) |
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#!/usr/bin/env python3 | |
import pandas as pd | |
import numpy as np | |
import matplotlib.pyplot as plt | |
def amort(principal, rate, n): | |
return principal * (rate * ((1 + rate) ** n)) / ((1 + rate) ** n - 1) | |
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structure(list(y = c(-428.846931773699, 2814.14354795795, 1041.57062019406, | |
413.053552770623, -2800.67011782234, -2198.16050963969, 801.924652033519, | |
732.090097673507, -18875.6488077687, -2832.38372468581, 173.46142036292, | |
-3786.71578136507, -1997.72041336496, 1592.56310472052, -486.657881249919, | |
593.68112891115, -21.9813204920439, 864.966591019571, -5237.93696303717, | |
-9202.40040067778, 425.320418694913, 797.650940028017, -123.700827591037, | |
-216.376695426808, 305.222605237999, 3.28251012543717, 991.586724694986, | |
1433.13448159131, 4629.28834528504, 643.801261103721, -1171.77757782828, | |
3346.60023414888, 2039.8742756452, 1695.36368497713, 1100.78951900258, | |
-284.355910530996, 1033.8900351293, 1000.68508364355, 202.456374187071, |
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import matplotlib.pyplot as plt | |
import seaborn as sns | |
import pandas as pd | |
import numpy as np | |
url = 'https://python-graph-gallery.com/wp-content/uploads/gapminderData.csv' | |
def add_cols(grp): | |
grp['popl'] = grp['pop'].apply(lambda x: x/10**5) | |
grp['gdp_wt'] = np.average(grp['gdpPercap'], weights = grp['pop']) |
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library(tidyverse) | |
library(hrbrthemes) | |
library(patchwork) | |
r_tweets <- read_rds(here::here("data/data_2019/week01_rstats_tweets.rds")) | |
tt_tweets <- read_rds(here::here("data/data_2019/week01_tidy_tuesday_tweets.rds")) | |
(top_users <- tt_tweets %>% | |
count(screen_name) %>% | |
top_n(10, n) %>% |
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library(tidyverse) | |
read_lines(here::here("input_data/data04a.txt")) %>% | |
str_match("\\[(\\d+)-(\\d+-\\d+) (\\d+):(\\d+)\\] (.*$)") %>% | |
as_tibble() %>% | |
set_names(c("raw_data", "year", "date", "hour", "min", "comment")) %>% | |
mutate(id = str_extract_all(comment, "(\\d+)", simplify = T) %>% | |
ifelse(. == "", NA, .)) %>% | |
arrange(year, date, hour, min) %>% | |
fill(id) %>% |
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library(blscrapeR) | |
library(tidyverse) | |
library(albersusa) | |
library(ggalt) | |
library(wesanderson) | |
library(cowplot) | |
library(tidycensus) | |
# The original blscrapeR::qcew_api() is not really suited to take multiple years | |
# or niac codes at once. Here is a function that grabs it all! |
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library(tidyverse) | |
library(rio) | |
library(rvest) | |
library(janitor) | |
# Rcode to go and fetch country codes | |
country_codes <- read_html("http://web.stanford.edu/~chadj/countrycodes6.3") %>% | |
html_text() %>% | |
str_extract_all("[A-Z]{3}") %>% |
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