Multiplying rice

Speaking of genebank multiplication plots, I’m told this is the best time of year to stroll through rice ones, and get an idea of the diversity on display. Here’s the evidence, courtesy of our friends at IRRI.

rice plots

The genebank tries to alternate early- and late-maturing varieties when regenerating accessions, as you can clearly see from this Google Earth shot from March last year, half way through the harvest (the coordinates are 14.15°N 121.26°E, in case you want to check for yourself, and here’s the kmz file).

IRRI multiplication plots

Meanwhile, the Nordic genebank is struggling with its multiplication.

Rebuilding the ICARDA collection

You’ll probably remember this statement four months ago from ICARDA’s Director General, Dr Mahmoud Solh. It was, after all, everywhere:

ICARDA requested some of its stored material in Svalbard in order to reconstitute the active collection in both Morocco and Lebanon in large bulks to meet requests for germplasm from the collections we have to meet the challenges facing dry areas globally. Once we multiply these varieties, ICARDA will return part of it to Svalbard as another duplicated set.

The seeds were duly retrieved by ICARDA genebank staff, and the work of multiplication is now in full swing, in both Morocco and Lebanon. Here’s the evidence, thanks to a picture tweeted by ICARDA durum wheat breeder Dr Filippo Bassi earlier today:

regen

Tweeting crops

Jack Grieve is a computational linguist at Aston University in Birmingham, England. I came across him on Twitter, where he occasionally posts fun maps showing the geographic distributions (usually within the USA) of different words, usually dialectical variants, based on their appearance in geocoded tweets. He very kindly ran a couple of crop names through his magic box for us, and this is what he got. I wanted to know if the distribution of crops could be inferred from where people tweet about it more than the average. I’ve placed his map for each crop side by side with the relevant distribution map from USDA.

crops in USA

Not a perfect match by any means, but not too bad. Except for cotton, that is. Any ideas why people should be tweeting so much about cotton in the northern Great Plains? They’re certainly not growing it.

Jack’s dataset apparently only covers the US and the UK at the moment, which means I can’t check whether Kenyans, say, are tweeting about maize particularly assiduously where they’re growing it, or indeed about maize lethal necrosis where they’re worried about it. Google famously tried to predict flu outbreaks from search patterns, but that seems to have fizzled out. Could tweeting trends help pinpoint crops (or livestock?) and their pests and diseases in space and time? I don’t see much of that kind of thing in the discussion of ICTs in agriculture.