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Tips & Tricks for
Software Engineering in
     Bioinformatics
        Presented by:
         Joel Dudley
Who is this guy?
Avg. time spent programming (hours)




                                      10.0

                                       7.5

                                       5.0

                                       2.5

                                        0
                                             5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 25 25 26 27 28 29 30 31 32

                                                                          Age (years)
http://www.megasoftware.net
Kumar S. and Dudley J. “Bioinformatics software for biologists in the genomics era.”
Bioinformatics (2007) vol. 23 (14) pp. 1713-7
Bioinformatics Philosophy
Build Your Toolbox
Learn UNIX!
Be a jack of all trades, but master of one.




    http://oreilly.com/news/graphics/prog_lang_poster.pdf
R
     C/C++ PHP
VB                   PERL


                            Python




                            Ruby
                            Java

                            LISP
Java is not just for Java




                           http://jruby.codehaus.org
http://www.jython.org
Simplified Wrapper and Interface Generator (SWIG)


              Greasy-fast C library




                Doughy-soft
             scripting language

                http://www.swig.org/
Frameworks are Friends




        BioBike
Stand on the slumped, dandruff-covered shoulders of
            millions of computer nerds.
Don’t trust yourself (or your hard disk).
Don’t be afraid to use more than three letters
             to define a variable!

#!/usr/bin/perl
# 472-byte qrpff, Keith Winstein and Marc Horowitz <sipb-iap-dvd@mit.edu>
# MPEG 2 PS VOB file -> descrambled output on stdout.
# usage: perl -I <k1>:<k2>:<k3>:<k4>:<k5> qrpff
# where k1..k5 are the title key bytes in least to most-significant order

s''$/=2048;while(<>){G=29;R=142;if((@a=unqT=quot;C*quot;,_)[20]&48){D=89;_=unqb24,qT,@
b=map{ord qB8,unqb8,qT,_^$a[--D]}@INC;s/...$/1$&/;Q=unqV,qb25,_;H=73;O=$b[4]<<9
|256|$b[3];Q=Q>>8^(P=(E=255)&(Q>>12^Q>>4^Q/8^Q))<<17,O=O>>8^(E&(F=(S=O>>14&7^O)
^S*8^S<<6))<<9,_=(map{U=_%16orE^=R^=110&(S=(unqT,quot;xbntdxbzx14dquot;)[_/16%8]);E
^=(72,@z=(64,72,G^=12*(U-2?0:S&17)),H^=_%64?12:0,@z)[_%8]}(16..271))[_]^((D>>=8
)+=P+(~F&E))for@a[128..$#a]}print+qT,@a}';s/[D-HO-U_]/$$&/g;s/q/pack+/g;eval
Object-Oriented Software Design Decisions



                                 shment
                          compli
                        Ac
       tecture
 Archi
module GraphBuilder
  LINE_TYPES = [:solid,:dashed,:dotted]
  module Nodes
    SHAPE_TYPES =
[:rectangle,:roundrectangle,:ellipse,:parallelogram,:hexagon,:octagon,:diamond,:triangle,:trapezoid,:trapezoid2,:rectangle3d]
    class BaseNode
      attr_accessor :label,:geometry,:fill_colors,:outline,:degree,:data
      def initialize(opts={})
        @opts = {
          :form=>:ellipse,
          :height=>50.0,
          :width=>50.0,
          :label=>quot;GraphNode#{self.object_id}quot;,
          :line_type=>:solid,
          :fill_color => {:R=>255,:G=>204,:B=>0,:A=>255},
          :fill_color2 => nil,
          :data => {},
          :outline_color=>{:R=>0,:G=>0,:B=>0,:A=>255}, # Set to nil or {:R=>0,:G=>0,:B=>0,:A=>0} for no outline
        }.merge(opts)
        @data = @opts[:data] # for storing application-specific data
        @label = Labels::NodeLabel.new(@opts[:label])
        @geometry = {:pos_x=>0.0,:pos_y=>0.0,:width=>1.0,:height=>1.0}
        @fill_colors = [@opts[:fill_color],nil]
        @outline = {:line_type=>@opts[:line_type],:color=>@opts[:outline_color]}
        @degree = {:in=>0,:out=>0}
      end

      def clone_params
        {
          :label=>text,
          :fill_color=>@fill_colors.first,
          :form=>@form,
          :height=>@geometry[:height],
          :width=>@geometry[:width]
        }
      end
    end

    class ShapeNode < BaseNode
      attr_accessor :form
      def initialize(opts={})
        super
        @form = @opts[:form]
        @geometry[:height] = @opts[:height]
        @geometry[:width] = @opts[:width]
      end
To Subclass or not to subclass? Use mixins!
   class Array
     def arithmetic_mean
       self.inject(0.0) { |sum,x| x = x.real if x.is_a?(Complex); sum + x.to_f } / self.length.to_f
     end

     def geometric_mean
       begin
         Math.exp(self.select { |x| x > 0.0 }.collect { |x| Math.log(x) }.arithmetic_mean)
       rescue Errno::ERANGE
         Math.exp(self.select { |x| x > 0.0 }.collect { |x| BigMath.log(x,50) }.arithmetic_mean)
       end
     end

     def median
       if self.length.odd?
         self[self.length / 2]
       else
         upper_median = self[self.length / 2]
         lower_median = self[(self.length / 2) - 1]
         [upper_median,lower_median].arithmetic_mean
       end
     end

     def standard_deviation
       mean = self.arithmetic_mean
       deviations = self.map { |x| x - mean }
       sqr_deviations = deviations.map { |x| x**2 }
       sum_sqr_deviations = sqr_deviations.inject(0.0) { |sum,x| sum + x }
       Math.sqrt(sum_sqr_deviations/(self.length - 1).to_f)
     end
     alias_method :sd, :standard_deviation

     def shuffle
       sort_by { rand }
     end

     def shuffle!
       self.replace shuffle
     end
   end
Documenting code sucks! Automate it.

• Come up with a convention for your
  “headers”
• Use automated documentation generation
  tools
    • JavaDoc
    • Rdoc
    • Pydoc / Epydoc
• Save code snippets in a searchable
  repository
A little performance optimization goes a long way

     • General tools
      • DTrace
      • strace
      • gdb
     • Language specific
      • Ruby-prof
      • Psyco/Pyrex
      • JBoss Profiler/JIT
Working with data
# Copyright © 1996-2007 SRI International, Marine Biological Laboratory, DoubleTwist Inc.,
# The Institute for Genomic Research, J. Craig Venter Institute, University of California at San
Diego, and UNAM. All Rights Reserved.
#
#
# Please see the license agreement regarding the use of and distribution of this file.
# The format of this file is defined at http://bioinformatics.ai.sri.com/ptools/flatfile-
format.html .
#
# Species: E. coli K-12
# Database: EcoCyc
# Version: 11.5
# File Name: dnabindsites.dat
# Date and time generated: August 6, 2007, 17:32:33
#
# Attributes:
#    UNIQUE-ID
#    TYPES
#    COMMON-NAME
#    ABS-CENTER-POS
#    APPEARS-IN-BINDING-REACTIONS
#    CITATIONS
#    COMMENT
#    COMPONENT-OF
#    COMPONENTS
#    CREDITS
#    DATA-SOURCE
#    DBLINKS
#    INSTANCE-NAME-TEMPLATE
#    INVOLVED-IN-REGULATION
#    LEFT-END-POSITION
#    REGULATED-PROMOTER
#    RELATIVE-CENTER-DISTANCE
#    RIGHT-END-POSITION
#    SYNONYMS
#
UNIQUE-ID - BS86
TYPES - DNA-Binding-Sites
ABS-CENTER-POS - 4098761
CITATIONS - 94018613
CITATIONS - 94018613:EV-EXP-IDA-BINDING-OF-CELLULAR-EXTRACTS:3310246267:martin
CITATIONS - 14711822:EV-COMP-AINF-SIMILAR-TO-CONSENSUS:3310246267:martin
COMPONENT-OF - TU00064
INVOLVED-IN-REGULATION - REG0-5521
TYPE-OF-EVIDENCE - :BINDING-OF-CELLULAR-EXTRACTS
//
If you can represent most of your data as key/value
    pairs, then at the very least use a BerkeleyDB




  http://www.oracle.com/technology/products/berkeley-db/index.html
In most cases a relational database is an
    appropriate choice for bioinformatics data
• Clean and consolidated (vs. a rats nest of files and
 folders)
• Improved performance (memory usage and File I/O)
• Data consistency through constraints and transactions
• Easily portable (SQL92 standard)
• Querying (asking questions about data) vs. Parsing
 (reading and loading data)
• Commonly used data processing functions can be
 implemented as stored procedures
“But I’m a scientist, not a DBA! Harrumph!”


                              http://www.sqlite.org
“...SQLite is a software library that implements a self-contained, serverless,
         zero-configuration, transactional SQL database engine...”
But seriously, don’t write any SQL (What?)
               Relational Database
          (MySQL, PostgreSQL, Oracle, etc)




          Object Relational Mapper (ORM)




Model


                                             Instance
Beyond the RDBMS




http://strokedb.com/       http://incubator.apache.org/couchdb




                 http://www.hypertable.org
Thinking in Parallel
Loosely Coupled                Tightly Coupled
•                              •
    Each task is independent       Tasks are interdependent

•                              •
    No synchronous inter-          Synchronous inter-task
    task communication             communication via
                                   messaging interface
•   Example: Computing a
                               •
    Maximum Likelihood             Example: Monte Carlo
    Phylogeny for every gene       simulation of 3D protein
    family in the Panther          interactions in cytoplasm
    Database
                               •   Software: OpenMPI,
•   Software: OpenPBS,             MPICH, PVM
    SGE, Xgrid, PlatformLSF
Use your idle CPU cores!
Start thinking in terms of MapReduce
   (old hat for Lisp programmers!)




Image source: http://code.google.com/edu/parallel/mapreduce-tutorial.html
map(String key, String value):
// key: document name
// value: document contents
for each word w in value:
  EmitIntermediate(w, quot;1quot;);

reduce(String key, Iterator values):
// key: a word
// values: a list of counts
int result = 0;
for each v in values:
  result += ParseInt(v);
Emit(AsString(result));     [1]
map(String key, String value):
// key: Sequence alignment file name
// value: multiple alignment
for each exon w in value:
  EmitIntermediate(w, CpGIndex);

reduce(String key, Iterator values):
// key: an exon
// values: a list of CpG Index Values
int result = 0;
for each i in values:
  result += ParseInt(v);
Emit(AsString(result/length(values));   [1]
http://sourceforge.net/projects/cloudburst-bio/
MapReduce Implementations



http://hadoop.apache.org/core/
                                               http://skynet.rubyforge.org/




   http://discoproject.org/




                                 http://labs.trolltech.com/page/Projects/Threads/QtConcurrent
Embracing Hardware
Single Instruction, Multiple Data (SIMD)
Graphics Processing Unit (GPU):
    Not just fun and games
GPU Programming is Getting Easier




 Compute Unified
                                             OpenCL
Device Architecture
  http://www.nvidia.com/cuda   http://s08.idav.ucdavis.edu/munshi-opencl.pdf
Field Programmable Gate Arrays (FPGA)
Field Programmable Gate Arrays (FPGA)
Playing nice with others
Data Interchange Formats


• JSON
• YAML
• XML
 • Microformats
 • RDF
person = {
       quot;namequot;: quot;Joel Dudleyquot;,
       quot;agequot;: 32,
       quot;heightquot;: 1.83,
       quot;urlsquot;: [
         quot;http://www.joeldudley.com/quot;,
         quot;http://www.linkedin.com/in/joeldudleyquot;
       ]
     }



                        VS.

<person>
  <name>Joel Dudley</name>
  <age>32</age>
  <height>1.83</height>
  <urls>
    <url>http://www.joeldudley.com/</url>
    <url> http://www.linkedin.com/in/joeldudley </url>
  </urls>
</person>
Web Services



• Remote Procedure Call (RPC)
• Representational State Transfer (ReST)
• SOAP
• ActiveResource Pattern
class Video < ActiveYouTube
  self.site = quot;http://gdata.youtube.com/feeds/apiquot;

  ## To search by categories and tags
  def self.search_by_tags (*options)
    from_urls = []
    if options.last.is_a? Hash
      excludes = options.slice!(options.length-1)
      if excludes[:exclude].kind_of? Array
        from_urls << excludes[:exclude].map{|keyword| quot;-quot;+keyword}.join(quot;/quot;)
      else
        from_urls << quot;-quot;+excludes[:exclude]
      end
    end
    from_urls << options.find_all{|keyword| keyword =~ /^[a-z]/}.join(quot;/quot;)
    from_urls << options.find_all{|category| category =~ /^[A-Z]/}.join(quot;%7Cquot;)
    from_urls.delete_if {|x| x.empty?}
    self.find(:all,:from=>quot;/feeds/api/videos/-/quot;+from_urls.reverse.join(quot;/quot;))
  end
end

class User < ActiveYouTube
  self.site = quot;http://gdata.youtube.com/feeds/apiquot;
end

class Standardfeed < ActiveYouTube
  self.site = quot;http://gdata.youtube.com/feeds/apiquot;
end

class Playlist < ActiveYouTube
  self.site = quot;http://gdata.youtube.com/feeds/apiquot;
end
search = Video.find(:first, :params => {:vq => 'ruby', :quot;max-resultsquot; => '5'})
  puts search.entry.length

 ## video information of id = ZTUVgYoeN_o
 vid = Video.find(quot;ZTUVgYoeN_oquot;)
 puts vid.group.content[0].url

 ## video comments
 comments = Video.find_custom(quot;ZTUVgYoeN_oquot;).get(:comments)
 puts comments.entry[0].link[2].href

 ## searching with category/tags
 results = Video.search_by_tags(quot;Comedyquot;)
 puts results[0].entry[0].title
 # more examples:
 # Video.search_by_tags(quot;Comedyquot;, quot;dogquot;)
 # Video.search_by_tags(quot;Newsquot;,quot;Sportsquot;,quot;footballquot;, :exclude=>quot;soccerquot;)
Teamwork
Be Agile
      Manifesto for Agile Software Development

          We are uncovering better ways of developing
          software by doing it and helping others do it.
           Through this work we have come to value:

       • Individuals and interactions over processes and tools
       • Working software over comprehensive documentation
       • Customer collaboration over contract negotiation
       • Responding to change over following a plan
That is, while there is value in the items on the right, we value the
                       items on the left more.
                      http://agilemanifesto.org/
Be Agile

As a [role], I want to [goal], so I can [reason].


                  Storyboard
                      Iterate!

                    Feedback
                             Acceptance
            Unit Testing
                               Testing
Automate Development



http://nant.sourceforge.net/     http://www.scons.org/




  http://www.capify.org/       http://nant.sourceforge.net/
Lightweight Tools for Project Management
Closing Remarks

• Focus on the goal (Biology/Medicine)
• Don’t be clever (you’ll trick yourself)
• Value your time
• Outsource everything but genius
• Use the tools available to you
• Have fun!

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Tips for software engineering in bioinformatics

  • 1. Tips & Tricks for Software Engineering in Bioinformatics Presented by: Joel Dudley
  • 2. Who is this guy?
  • 3. Avg. time spent programming (hours) 10.0 7.5 5.0 2.5 0 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 25 25 26 27 28 29 30 31 32 Age (years)
  • 5. Kumar S. and Dudley J. “Bioinformatics software for biologists in the genomics era.” Bioinformatics (2007) vol. 23 (14) pp. 1713-7
  • 9. Be a jack of all trades, but master of one. http://oreilly.com/news/graphics/prog_lang_poster.pdf
  • 10. R C/C++ PHP VB PERL Python Ruby Java LISP
  • 11. Java is not just for Java http://jruby.codehaus.org http://www.jython.org
  • 12. Simplified Wrapper and Interface Generator (SWIG) Greasy-fast C library Doughy-soft scripting language http://www.swig.org/
  • 14. Stand on the slumped, dandruff-covered shoulders of millions of computer nerds.
  • 15.
  • 16. Don’t trust yourself (or your hard disk).
  • 17. Don’t be afraid to use more than three letters to define a variable! #!/usr/bin/perl # 472-byte qrpff, Keith Winstein and Marc Horowitz <sipb-iap-dvd@mit.edu> # MPEG 2 PS VOB file -> descrambled output on stdout. # usage: perl -I <k1>:<k2>:<k3>:<k4>:<k5> qrpff # where k1..k5 are the title key bytes in least to most-significant order s''$/=2048;while(<>){G=29;R=142;if((@a=unqT=quot;C*quot;,_)[20]&48){D=89;_=unqb24,qT,@ b=map{ord qB8,unqb8,qT,_^$a[--D]}@INC;s/...$/1$&/;Q=unqV,qb25,_;H=73;O=$b[4]<<9 |256|$b[3];Q=Q>>8^(P=(E=255)&(Q>>12^Q>>4^Q/8^Q))<<17,O=O>>8^(E&(F=(S=O>>14&7^O) ^S*8^S<<6))<<9,_=(map{U=_%16orE^=R^=110&(S=(unqT,quot;xbntdxbzx14dquot;)[_/16%8]);E ^=(72,@z=(64,72,G^=12*(U-2?0:S&17)),H^=_%64?12:0,@z)[_%8]}(16..271))[_]^((D>>=8 )+=P+(~F&E))for@a[128..$#a]}print+qT,@a}';s/[D-HO-U_]/$$&/g;s/q/pack+/g;eval
  • 18. Object-Oriented Software Design Decisions shment compli Ac tecture Archi
  • 19. module GraphBuilder LINE_TYPES = [:solid,:dashed,:dotted] module Nodes SHAPE_TYPES = [:rectangle,:roundrectangle,:ellipse,:parallelogram,:hexagon,:octagon,:diamond,:triangle,:trapezoid,:trapezoid2,:rectangle3d] class BaseNode attr_accessor :label,:geometry,:fill_colors,:outline,:degree,:data def initialize(opts={}) @opts = { :form=>:ellipse, :height=>50.0, :width=>50.0, :label=>quot;GraphNode#{self.object_id}quot;, :line_type=>:solid, :fill_color => {:R=>255,:G=>204,:B=>0,:A=>255}, :fill_color2 => nil, :data => {}, :outline_color=>{:R=>0,:G=>0,:B=>0,:A=>255}, # Set to nil or {:R=>0,:G=>0,:B=>0,:A=>0} for no outline }.merge(opts) @data = @opts[:data] # for storing application-specific data @label = Labels::NodeLabel.new(@opts[:label]) @geometry = {:pos_x=>0.0,:pos_y=>0.0,:width=>1.0,:height=>1.0} @fill_colors = [@opts[:fill_color],nil] @outline = {:line_type=>@opts[:line_type],:color=>@opts[:outline_color]} @degree = {:in=>0,:out=>0} end def clone_params { :label=>text, :fill_color=>@fill_colors.first, :form=>@form, :height=>@geometry[:height], :width=>@geometry[:width] } end end class ShapeNode < BaseNode attr_accessor :form def initialize(opts={}) super @form = @opts[:form] @geometry[:height] = @opts[:height] @geometry[:width] = @opts[:width] end
  • 20. To Subclass or not to subclass? Use mixins! class Array def arithmetic_mean self.inject(0.0) { |sum,x| x = x.real if x.is_a?(Complex); sum + x.to_f } / self.length.to_f end def geometric_mean begin Math.exp(self.select { |x| x > 0.0 }.collect { |x| Math.log(x) }.arithmetic_mean) rescue Errno::ERANGE Math.exp(self.select { |x| x > 0.0 }.collect { |x| BigMath.log(x,50) }.arithmetic_mean) end end def median if self.length.odd? self[self.length / 2] else upper_median = self[self.length / 2] lower_median = self[(self.length / 2) - 1] [upper_median,lower_median].arithmetic_mean end end def standard_deviation mean = self.arithmetic_mean deviations = self.map { |x| x - mean } sqr_deviations = deviations.map { |x| x**2 } sum_sqr_deviations = sqr_deviations.inject(0.0) { |sum,x| sum + x } Math.sqrt(sum_sqr_deviations/(self.length - 1).to_f) end alias_method :sd, :standard_deviation def shuffle sort_by { rand } end def shuffle! self.replace shuffle end end
  • 21. Documenting code sucks! Automate it. • Come up with a convention for your “headers” • Use automated documentation generation tools • JavaDoc • Rdoc • Pydoc / Epydoc • Save code snippets in a searchable repository
  • 22. A little performance optimization goes a long way • General tools • DTrace • strace • gdb • Language specific • Ruby-prof • Psyco/Pyrex • JBoss Profiler/JIT
  • 24. # Copyright © 1996-2007 SRI International, Marine Biological Laboratory, DoubleTwist Inc., # The Institute for Genomic Research, J. Craig Venter Institute, University of California at San Diego, and UNAM. All Rights Reserved. # # # Please see the license agreement regarding the use of and distribution of this file. # The format of this file is defined at http://bioinformatics.ai.sri.com/ptools/flatfile- format.html . # # Species: E. coli K-12 # Database: EcoCyc # Version: 11.5 # File Name: dnabindsites.dat # Date and time generated: August 6, 2007, 17:32:33 # # Attributes: # UNIQUE-ID # TYPES # COMMON-NAME # ABS-CENTER-POS # APPEARS-IN-BINDING-REACTIONS # CITATIONS # COMMENT # COMPONENT-OF # COMPONENTS # CREDITS # DATA-SOURCE # DBLINKS # INSTANCE-NAME-TEMPLATE # INVOLVED-IN-REGULATION # LEFT-END-POSITION # REGULATED-PROMOTER # RELATIVE-CENTER-DISTANCE # RIGHT-END-POSITION # SYNONYMS # UNIQUE-ID - BS86 TYPES - DNA-Binding-Sites ABS-CENTER-POS - 4098761 CITATIONS - 94018613 CITATIONS - 94018613:EV-EXP-IDA-BINDING-OF-CELLULAR-EXTRACTS:3310246267:martin CITATIONS - 14711822:EV-COMP-AINF-SIMILAR-TO-CONSENSUS:3310246267:martin COMPONENT-OF - TU00064 INVOLVED-IN-REGULATION - REG0-5521 TYPE-OF-EVIDENCE - :BINDING-OF-CELLULAR-EXTRACTS //
  • 25. If you can represent most of your data as key/value pairs, then at the very least use a BerkeleyDB http://www.oracle.com/technology/products/berkeley-db/index.html
  • 26. In most cases a relational database is an appropriate choice for bioinformatics data • Clean and consolidated (vs. a rats nest of files and folders) • Improved performance (memory usage and File I/O) • Data consistency through constraints and transactions • Easily portable (SQL92 standard) • Querying (asking questions about data) vs. Parsing (reading and loading data) • Commonly used data processing functions can be implemented as stored procedures
  • 27. “But I’m a scientist, not a DBA! Harrumph!” http://www.sqlite.org “...SQLite is a software library that implements a self-contained, serverless, zero-configuration, transactional SQL database engine...”
  • 28. But seriously, don’t write any SQL (What?) Relational Database (MySQL, PostgreSQL, Oracle, etc) Object Relational Mapper (ORM) Model Instance
  • 29. Beyond the RDBMS http://strokedb.com/ http://incubator.apache.org/couchdb http://www.hypertable.org
  • 31. Loosely Coupled Tightly Coupled • • Each task is independent Tasks are interdependent • • No synchronous inter- Synchronous inter-task task communication communication via messaging interface • Example: Computing a • Maximum Likelihood Example: Monte Carlo Phylogeny for every gene simulation of 3D protein family in the Panther interactions in cytoplasm Database • Software: OpenMPI, • Software: OpenPBS, MPICH, PVM SGE, Xgrid, PlatformLSF
  • 32. Use your idle CPU cores!
  • 33. Start thinking in terms of MapReduce (old hat for Lisp programmers!) Image source: http://code.google.com/edu/parallel/mapreduce-tutorial.html
  • 34. map(String key, String value): // key: document name // value: document contents for each word w in value: EmitIntermediate(w, quot;1quot;); reduce(String key, Iterator values): // key: a word // values: a list of counts int result = 0; for each v in values: result += ParseInt(v); Emit(AsString(result)); [1]
  • 35. map(String key, String value): // key: Sequence alignment file name // value: multiple alignment for each exon w in value: EmitIntermediate(w, CpGIndex); reduce(String key, Iterator values): // key: an exon // values: a list of CpG Index Values int result = 0; for each i in values: result += ParseInt(v); Emit(AsString(result/length(values)); [1]
  • 37. MapReduce Implementations http://hadoop.apache.org/core/ http://skynet.rubyforge.org/ http://discoproject.org/ http://labs.trolltech.com/page/Projects/Threads/QtConcurrent
  • 40. Graphics Processing Unit (GPU): Not just fun and games
  • 41.
  • 42. GPU Programming is Getting Easier Compute Unified OpenCL Device Architecture http://www.nvidia.com/cuda http://s08.idav.ucdavis.edu/munshi-opencl.pdf
  • 43.
  • 44. Field Programmable Gate Arrays (FPGA)
  • 45. Field Programmable Gate Arrays (FPGA)
  • 47. Data Interchange Formats • JSON • YAML • XML • Microformats • RDF
  • 48. person = { quot;namequot;: quot;Joel Dudleyquot;, quot;agequot;: 32, quot;heightquot;: 1.83, quot;urlsquot;: [ quot;http://www.joeldudley.com/quot;, quot;http://www.linkedin.com/in/joeldudleyquot; ] } VS. <person> <name>Joel Dudley</name> <age>32</age> <height>1.83</height> <urls> <url>http://www.joeldudley.com/</url> <url> http://www.linkedin.com/in/joeldudley </url> </urls> </person>
  • 49. Web Services • Remote Procedure Call (RPC) • Representational State Transfer (ReST) • SOAP • ActiveResource Pattern
  • 50. class Video < ActiveYouTube self.site = quot;http://gdata.youtube.com/feeds/apiquot; ## To search by categories and tags def self.search_by_tags (*options) from_urls = [] if options.last.is_a? Hash excludes = options.slice!(options.length-1) if excludes[:exclude].kind_of? Array from_urls << excludes[:exclude].map{|keyword| quot;-quot;+keyword}.join(quot;/quot;) else from_urls << quot;-quot;+excludes[:exclude] end end from_urls << options.find_all{|keyword| keyword =~ /^[a-z]/}.join(quot;/quot;) from_urls << options.find_all{|category| category =~ /^[A-Z]/}.join(quot;%7Cquot;) from_urls.delete_if {|x| x.empty?} self.find(:all,:from=>quot;/feeds/api/videos/-/quot;+from_urls.reverse.join(quot;/quot;)) end end class User < ActiveYouTube self.site = quot;http://gdata.youtube.com/feeds/apiquot; end class Standardfeed < ActiveYouTube self.site = quot;http://gdata.youtube.com/feeds/apiquot; end class Playlist < ActiveYouTube self.site = quot;http://gdata.youtube.com/feeds/apiquot; end
  • 51. search = Video.find(:first, :params => {:vq => 'ruby', :quot;max-resultsquot; => '5'}) puts search.entry.length ## video information of id = ZTUVgYoeN_o vid = Video.find(quot;ZTUVgYoeN_oquot;) puts vid.group.content[0].url ## video comments comments = Video.find_custom(quot;ZTUVgYoeN_oquot;).get(:comments) puts comments.entry[0].link[2].href ## searching with category/tags results = Video.search_by_tags(quot;Comedyquot;) puts results[0].entry[0].title # more examples: # Video.search_by_tags(quot;Comedyquot;, quot;dogquot;) # Video.search_by_tags(quot;Newsquot;,quot;Sportsquot;,quot;footballquot;, :exclude=>quot;soccerquot;)
  • 53. Be Agile Manifesto for Agile Software Development We are uncovering better ways of developing software by doing it and helping others do it. Through this work we have come to value: • Individuals and interactions over processes and tools • Working software over comprehensive documentation • Customer collaboration over contract negotiation • Responding to change over following a plan That is, while there is value in the items on the right, we value the items on the left more. http://agilemanifesto.org/
  • 54. Be Agile As a [role], I want to [goal], so I can [reason]. Storyboard Iterate! Feedback Acceptance Unit Testing Testing
  • 55. Automate Development http://nant.sourceforge.net/ http://www.scons.org/ http://www.capify.org/ http://nant.sourceforge.net/
  • 56. Lightweight Tools for Project Management
  • 57. Closing Remarks • Focus on the goal (Biology/Medicine) • Don’t be clever (you’ll trick yourself) • Value your time • Outsource everything but genius • Use the tools available to you • Have fun!