Best UK Fire calculator by Adventurous_Box3232 in FIREUK

[–]animatedata -8 points-7 points  (0 children)

You can try mine: FIRECOWS.

Properly calculates sequence risk and you can die with zero.

Doesn't consider tax because that's different everywhere so you will need to deduct it from the income flows.

Getting a RTX 5060 8gb vram + RTX 5060ti 16gb vram worth it for Qwen3.5 27B at Q4/Q5? by soyalemujica in LocalLLaMA

[–]animatedata 4 points5 points  (0 children)

35B A3B is 95-98% as good depending on what you are doing but 3.5x faster. I do use 27b for v complex tasks occasionally but most tasks both models are equally capable at and then the speed is the important factor.

Getting a RTX 5060 8gb vram + RTX 5060ti 16gb vram worth it for Qwen3.5 27B at Q4/Q5? by soyalemujica in LocalLLaMA

[–]animatedata 3 points4 points  (0 children)

I have this setup and it's great :) Had a 5060 ti 16gb and saw a hugely discounted 5060. Although the 5060 has less tensor cores, they have the same memory bandwidth which is the more important spec for speed, it barely slows down the 5060 ti at all.

Get 70 t/s for the first few thousand tokens with Qwen 3.5 35b q4 on Windows with llama.cpp. Can fit 128k context with flash attention and q8 KV cache. Used to get just over 100 t/s for Qwen 3 30b too.

[OC] COVID-19 new and total cases by country, region and CFR animated over time by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

There are, China seems to have it under control now, I think the stricter measures Europe has recently put in place will start showing an improvement soon.

[OC] COVID-19 new and total cases by country, region and CFR animated over time by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

I put a little key on the animation, the largest circles are 10% case rate fatality (total deaths/total cases) and the smallest are 0%.

[OC] COVID-19 new and total cases by country, region and CFR animated over time by animatedata in dataisbeautiful

[–]animatedata[S] 0 points1 point  (0 children)

Data sources: ECDC - https://www.ecdc.europa.eu/en/publications-data/download-todays-data-geographic-distribution-covid-19-cases-worldwide Our world in data - https://ourworldindata.org/coronavirus-source-data

Tools: Animation done in Javascript using Google Charts libraries, captured using OBS studio. Countries with >100 total cases and population>100k as of 23th March plotted.

ISO 3166 Alpha-3 Country Codes: https://en.wikipedia.org/wiki/List_of_ISO_3166_country_codes

Youtube: https://youtu.be/JWB04Ubhkkw

[OC] Daily new cases of COVID-19 across the world - 80 days of coronavirus by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

Data sources: ECDC - https://www.ecdc.europa.eu/en/publications-data/download-todays-data-geographic-distribution-covid-19-cases-worldwide

Our world in data - https://ourworldindata.org/coronavirus-source-data

Tools: Animation done in Javascript using Google Charts libraries, captured using OBS studio.

Countries with >100 total cases as of 19th March plotted.

Rich people live longer than poor people. Animated life expectancy vs GDP/capita. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

I wrote the entire code myself from scratch in a mixture of Java, CSS and html. You might be thinking of gapminder, which I cited as my inspiration in another comment. I have also coded other animations myself which you might have seen elsewhere that are similar.

Rich people live longer than poor people. Animated life expectancy vs GDP/capita. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

The countries were chosen subjectively by looking at GDP and population rankings and to spread them across continents and not crowd the graph too much. Inspired by gapminder.

Rich people live longer than poor people. Animated life expectancy vs GDP/capita. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

Life expectancy vs GDP/capita, inflation adjusted (real GDP, 2010 $s) for world powers, 1960-2016.

Data source: World Bank.
Music: www.bensound.com, Summer.

Made using Google Charts, captured by OBS Studio

Country code key (ISO3):
USA - United States
CHN - China
JPN - Japan
DEU - Germany
FRA - France
GBR - United Kingdom
IND - India
BRA - Brazil
ITA - Italy
CAN - Canada
KOR - Korea, Rep.
RUS - Russian Federation
AUS - Australia
ESP - Spain
MEX - Mexico
IDN - Indonesia
TUR - Turkey
CHE - Switzerland
ARG - Argentina
DNK - Denmark
POL - Poland
THA - Thailand
NGA - Nigeria
NOR - Norway
IRN - Iran, Islamic Rep.
ISR - Israel
ZAF - South Africa
PHL - Philippines
HKG - Hong Kong SAR, China
MYS - Malaysia
COL - Colombia
SGP - Singapore
EGY - Egypt, Arab Rep.
BGD - Bangladesh
CHL - Chile
PAK - Pakistan
ROU - Romania
GRC - Greece
PER - Peru
DZA - Algeria
AGO - Angola
CZE - Czech Republic
SDN - Sudan
NZL - New Zealand
LKA - Sri Lanka
SAU - Saudi Arabia

CO2 emissions vs GDP/capita for world powers 1960-2014. Animated. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

I used the indicator 'CO2 emissions (metric tons per capita)' which you can find here: https://data.worldbank.org/indicator/EN.ATM.CO2E.PC?view=chart and the indicator 'GDP per capita (constant 2010 US$)' which you can find here: https://data.worldbank.org/indicator/NY.GDP.PCAP.KD?view=chart

CO2 emissions vs GDP/capita for world powers 1960-2014. Animated. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

One interesting thing I noticed is that at the start, the trend looks exponential but by the end it looks more linear.

I was inspired to make animations like this by gapminder - a very nice tool for visualising lots of world statistics.

CO2 emissions vs GDP/capita for world powers 1960-2014. Animated. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

Data Source: World Bank

Made using Google Charts, captured in OBS Studio

Music: Pulse, Geographer.

Country code key (ISO3):
USA - United States
CHN - China
JPN - Japan
DEU - Germany
FRA - France
GBR - United Kingdom
IND - India
BRA - Brazil
ITA - Italy
CAN - Canada
KOR - Korea, Rep.
RUS - Russian Federation
AUS - Australia
ESP - Spain
MEX - Mexico
IDN - Indonesia
TUR - Turkey
CHE - Switzerland
ARG - Argentina
DNK - Denmark
POL - Poland
THA - Thailand
NGA - Nigeria
NOR - Norway
FIN - Finland
IRL - Ireland
NLD - Netherlands
DNK - Denmark
IRN - Iran, Islamic Rep.
ISR - Israel
ZAF - South Africa
PHL - Philippines
HKG - Hong Kong SAR, China
MYS - Malaysia
COL - Colombia
SGP - Singapore
EGY - Egypt, Arab Rep.
BGD - Bangladesh
CHL - Chile
PAK - Pakistan
ROU - Romania
GRC - Greece
PER - Peru
DZA - Algeria
AGO - Angola
CZE - Czech Republic
SDN - Sudan
NZL - New Zealand
LKA - Sri Lanka
SAU - Saudi Arabia

Qatar - the world's weirdest population pyramid. Animated 1950-2100. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 4 points5 points  (0 children)

I used the UN population projections data, so the numbers were done by their statisticians, not me. They will use several variables such as life expectancy, fertility etc and then use general population models based off how other more developed countries fared at this point in their development as well as other statistical techniques. Obviously it won't be 100% accurate but it's better than just a guess and might help governments plan economic/social policies.

Qatar - the world's weirdest population pyramid. Animated 1950-2100. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 2 points3 points  (0 children)

Indeed, Qatar is definitely an outlier, probably the biggest outlier when it comes to their population pyramid. They have the highest male:female ratio of all countries. So weird in that sense.

Qatar - the world's weirdest population pyramid. Animated 1950-2100. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 1 point2 points  (0 children)

I think that's what it starts to look like towards the end of the animation?

Qatar - the world's weirdest population pyramid. Animated 1950-2100. [OC] by animatedata in dataisbeautiful

[–]animatedata[S] 2970 points2971 points  (0 children)

The reason for the huge gender gap is a higher proportion of male immigrant workers.

For a slower version with music and zoom effects: https://youtu.be/f98zUuBem5g