Date: Fri, 29 Mar 2024 22:28:58 +0700 (NOVT)
Message-ID: <1527294857.89518.1711726138758@ugene.net>
Subject: Exported From Confluence
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You can build an index to optimiz=
e short reads alignment using UGENE Genome Aligner. To open the Build Index dialog, select the item in the main menu. Se=
t value of the Map short reads method para=
meter to UGENE Genome Aligner.
The dialog looks as follows:
=20
=20
=
=20
=20
The parameters are the following:
Ref=
erence sequence =E2=80=94 DNA sequence to which short reads would=
be aligned to. This parameter is required.
Ind=
ex file name =E2=80=94 file to save index to. This parameter is r=
equired.
Ref=
erence fragmentation =E2=80=94 this parameter influences the amou=
nt of parts the reference will be divided. It is better to make it bigger, =
but it influences the amount of memory used during the alignment.
Tot=
al memory usage =E2=80=94 shows the total memory usage.
Sys=
tem memory size =E2=80=94 shows the total system memory size.
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