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Who is francis emralino? 


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Francis Emralino is not mentioned in any of the provided abstracts.

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The provided paper does not mention anything about Francis Emralino. The paper is about the manufacture of a Francis type runner and improving the strength of the runner blade.
The paper does not mention anything about Francis Emralino.
The paper does not mention anything about Francis Emralino.
Patent
Karen A. K. Moldenhauer, F. N. Lee 
28 Feb 2003
9 Citations
The provided paper does not mention anything about Francis Emralino. The paper is about a novel rice cultivar called 'Francis' and its seeds, plants, and methods of production.
The paper does not mention anything about Francis Emralino.

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