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AAKANKSHA	
  AGNANI	
  
500	
  Beale	
  St	
  	
   	
  aakankshaagnani@gmail.com,	
  (614)	
  843-­‐3684	
  
San	
  Francisco,	
  CA,	
  94107	
   	
  www.linkedin.com/in/aakankshaagnani	
  
	
  
Professional	
  Summary	
  
	
  
• Strong	
  industry	
  experience	
  in	
  developing	
  multi-­‐tier	
  applications	
  using	
  agile	
  methodology	
  
• Experience	
  delivering	
  end-­‐to	
  end	
  products,	
  complete	
  with	
  design	
  documents,	
  unit	
  tests	
  and	
  well-­‐documented	
  code	
  	
  
• Solid	
  understanding	
  and	
  industry	
  experience	
  with	
  Object	
  Oriented	
  Programming	
  Principles	
  (OOPS)	
  	
  
• Experience	
  with	
  multiple	
  databases	
  including	
  Oracle,	
  PostgreSQL,	
  MySQL	
  
• Excellent	
  communication,	
  research,	
  analysis,	
  organizational	
  and	
  leadership	
  skills.	
  
• Oracle	
  certified	
  professional,	
  Java	
  SE	
  6	
  Programmer	
  
	
  
Technical	
  Skills	
  
• Languages	
   :	
   JAVA,	
  Python,	
  C#,	
  SQL,	
  PL/SQL	
  
• Operating	
  Systems	
   :	
   Unix/Linux,	
  Windows,	
  Mac	
  
• Web	
  Design	
   :	
   HTML,	
  JavaScript,	
  CSS,	
  XML	
  
• Database	
   :	
   Oracle,	
  MySQL,	
  SQL	
  Server,	
  PostgreSQL	
  
• IDE/Tools	
   :	
   Eclipse,	
  Net	
  Beans,	
  SQL	
  Developer,	
  IntelliJ,	
  TOAD	
  
• Servers	
   :	
   JBoss,	
  Weblogic,	
  Tomcat	
  
• Version	
  Controls	
   :	
   git,	
  Subversion	
  (SVN),	
  Win	
  CVS	
  
	
  
	
  
Education	
  
• The	
  Ohio	
  State	
  University,	
  Columbus,	
  Ohio	
   May	
  2015	
  
Masters	
  of	
  Science	
  in	
  Computer	
  Science	
   GPA	
  –	
  3.5/4	
  
• University	
  of	
  Mumbai,	
  Mumbai,	
  India	
   June	
  2011	
  
Bachelors	
  of	
  Engineering	
  in	
  Computer	
  Science	
   GPA	
  –	
  3.7/4	
  
	
  
Work	
  Experience	
  
Gap	
  Inc.	
   Software	
  Engineer	
  	
   	
  	
  	
  July	
  2015	
  –	
  Present	
  
• Automated	
  flow	
  of	
  data	
  by	
  improving	
  end-­‐to-­‐end	
  information	
  flow	
  between	
  internal	
  application	
  like	
  design,	
  
negotiated	
  cost,	
  assortment	
  and	
  planning	
  
• Resolved	
  data	
  integrity	
  issues	
  by	
  adding	
  additional	
  validations	
  on	
  core	
  application	
  components	
  
• Implemented	
  purging	
  functionality	
  for	
  unused	
  style	
  numbers	
  in	
  order	
  to	
  reuse	
  styles	
  in	
  GAP	
  systems	
  
• Refactored	
  code	
  to	
  improve	
  efficiency	
  and	
  maintainability	
  	
  
• Fine	
  tuned	
  and	
  automated	
  test	
  scripts	
  
Technologies:	
  Java,	
  Mongo	
  DB,	
  Oracle	
  10g/11g,	
  Gradle,	
  Groovy	
  
	
  
Gap	
  Inc.	
   Software	
  Developer	
  Intern	
   	
  	
  June	
  2014	
  –	
  Aug	
  2014	
  
• Created	
  a	
  new	
  modern,	
  responsive	
  design	
  for	
  GAP	
  Inc.’s	
  brand	
  of	
  websites	
  to	
  improve	
  user	
  experience	
  on	
  
smaller	
  devices	
  like	
  phones	
  and	
  tablets	
  
• Developed	
   internal	
   web	
   application	
   to	
   maintain	
   information	
   about	
   employees,	
   their	
   technical	
   skills	
   and	
  
proficiencies	
  
• Supported	
  feature	
  to	
  request	
  SMEs	
  to	
  review	
  proficiencies	
  as	
  well	
  as	
  deletion	
  and	
  in	
  place	
  modification	
  of	
  
skills	
  and	
  email	
  notifications	
  for	
  changes	
  
• Migrated	
  code	
  from	
  Oracle	
  db	
  to	
  PostgreSQL	
  
Technologies:	
  Java,	
  Oracle	
  10g/11g,	
  PostgreSQL	
  
Accenture	
  Services	
  Pvt.	
  Ltd	
   Software	
  Engineer	
   	
  Oct	
  2011	
  –	
  July	
  2013	
  
• Worked	
  on	
  customization	
  for	
  Vodafone	
  inventory	
  systems	
  using	
  PL/SQL	
  and	
  Cramer	
  modules	
  
• Developed	
   PL/SQL	
   procedures,	
   triggers	
   &	
   packages,	
   modeled	
   system	
   component	
   and	
   prepared	
   test	
  
cases	
  for	
  device	
  and	
  circuit	
  modeling	
  
• Implemented	
   change	
   requests	
   for	
   handling	
   new	
   devices	
   and	
   connections	
   for	
   Vodafone.	
   Estimated	
   and	
  
analyzed	
  impact	
  of	
  change	
  requests.	
  
• Individually	
  handled	
  a	
  migration	
  module	
  to	
  a	
  newer	
  version	
  of	
  Cramer	
  
Technologies:	
  PL/SQL,	
  Oracle	
  10g/11g,	
  AMDOCS	
  OSS	
  Cramer	
  
	
  
	
  
Selected	
  Academic	
  Projects	
  
Product	
  recommendations	
  on	
  Twitter	
  based	
  on	
  user	
  reviews	
  
• Implemented	
   a	
   model	
   to	
   provide	
   game	
   recommendations	
   for	
   users	
   based	
   on	
   sentiment	
   analysis	
   of	
  
tweets	
  related	
  to	
  the	
  underlying	
  features	
  and	
  specifications	
  of	
  a	
  game	
  
• Provided	
   recommendations	
   based	
   on	
   products	
   with	
   similar	
   appreciated	
   features	
   in	
   tweets	
   using	
  
clustering	
  techniques	
  
• Worked	
   with	
   Alchemy	
   API	
   for	
   natural	
   language	
   processing	
   and	
   machine	
   learning	
   techniques	
   to	
   find	
  
information	
  about	
  sentiments	
  in	
  tweets	
  
• Used	
  Metacritic	
  game	
  reviews	
  as	
  truth	
  data	
  to	
  compare	
  tweets	
  and	
  game	
  reviews	
  to	
  make	
  recommendations	
  
	
  Technologies:	
  Python,	
  Java,	
  Alchemy	
  API,	
  Metacritic	
  Mashap	
  API,	
  NLTK	
  clustering	
  
	
  
Implementation	
  of	
  crowdsourcing	
  to	
  reduce	
  cube	
  computation	
  
• Worked	
  on	
  reducing	
  cost	
  computation	
  of	
  finding	
  interesting	
  groups	
  in	
  data	
  cubes	
  based	
  on	
  holistic	
  measures	
  
by	
  using	
  crowdsourcing	
  (Amazon	
  Mechanical	
  Turk)	
  along	
  with	
  implementation	
  of	
  Bottom	
  Up	
  Cubing	
   (BUC)	
  
algorithm	
  for	
  n-­‐dimension	
  cube	
  
	
  Technologies:	
  Python,	
  BOTO	
  (python	
  interface	
  to	
  AWS),	
  Amazon	
  mechanical	
  Turk	
  
	
  
Psychographic/demographic	
  data	
  analysis	
  –	
  Astute	
  solutions	
  
• Built	
  an	
  estimation	
  model/service	
  in	
  python	
  using	
  open	
  datasets	
  that	
  analyzes	
  basic	
  attributes	
  such	
  as	
  name	
  
and	
  location	
  and	
  estimate	
  a	
  set	
  of	
  more	
  advanced	
  attributes	
  like	
  income	
  range.	
  
Technologies:	
  Python,	
  NLTK	
  library	
  
	
  
Customer	
  shopping	
  recommendation	
  systems	
  
• Developed	
  a	
  shopping	
  recommendation	
  system.	
  Recommendation	
  list	
  was	
  given	
  to	
  user	
  based	
  on	
  the	
  past	
  
transactions	
  in	
  a	
  grocery	
  store.	
  
• Provided	
  recommendations	
  based	
  on	
  similar	
  customers	
  purchases	
  to	
  enhance	
  the	
  list.	
  
• Customers	
  were	
  also	
  recommended	
  a	
  list	
  of	
  most	
  popular	
  items	
  of	
  the	
  store	
  
	
  	
  Technologies:	
  C#,	
  SQL	
  Server	
  2005,	
  Association	
  Mining,	
  Collaborative	
  Filtering	
  
	
  
Research	
  
• Published	
  and	
  presented	
  a	
  technical	
  paper	
  entitled	
  “SHOPPING	
  LIST	
  RECOMMENDER”	
  in	
  the	
  proceedings	
  of	
  
the	
  International	
  Conference	
  and	
  Workshop	
  on	
  Emerging	
  Trends	
  

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Aakanksha_Agnani_j2016

  • 1. AAKANKSHA  AGNANI   500  Beale  St      aakankshaagnani@gmail.com,  (614)  843-­‐3684   San  Francisco,  CA,  94107    www.linkedin.com/in/aakankshaagnani     Professional  Summary     • Strong  industry  experience  in  developing  multi-­‐tier  applications  using  agile  methodology   • Experience  delivering  end-­‐to  end  products,  complete  with  design  documents,  unit  tests  and  well-­‐documented  code     • Solid  understanding  and  industry  experience  with  Object  Oriented  Programming  Principles  (OOPS)     • Experience  with  multiple  databases  including  Oracle,  PostgreSQL,  MySQL   • Excellent  communication,  research,  analysis,  organizational  and  leadership  skills.   • Oracle  certified  professional,  Java  SE  6  Programmer     Technical  Skills   • Languages   :   JAVA,  Python,  C#,  SQL,  PL/SQL   • Operating  Systems   :   Unix/Linux,  Windows,  Mac   • Web  Design   :   HTML,  JavaScript,  CSS,  XML   • Database   :   Oracle,  MySQL,  SQL  Server,  PostgreSQL   • IDE/Tools   :   Eclipse,  Net  Beans,  SQL  Developer,  IntelliJ,  TOAD   • Servers   :   JBoss,  Weblogic,  Tomcat   • Version  Controls   :   git,  Subversion  (SVN),  Win  CVS       Education   • The  Ohio  State  University,  Columbus,  Ohio   May  2015   Masters  of  Science  in  Computer  Science   GPA  –  3.5/4   • University  of  Mumbai,  Mumbai,  India   June  2011   Bachelors  of  Engineering  in  Computer  Science   GPA  –  3.7/4     Work  Experience   Gap  Inc.   Software  Engineer          July  2015  –  Present   • Automated  flow  of  data  by  improving  end-­‐to-­‐end  information  flow  between  internal  application  like  design,   negotiated  cost,  assortment  and  planning   • Resolved  data  integrity  issues  by  adding  additional  validations  on  core  application  components   • Implemented  purging  functionality  for  unused  style  numbers  in  order  to  reuse  styles  in  GAP  systems   • Refactored  code  to  improve  efficiency  and  maintainability     • Fine  tuned  and  automated  test  scripts   Technologies:  Java,  Mongo  DB,  Oracle  10g/11g,  Gradle,  Groovy     Gap  Inc.   Software  Developer  Intern      June  2014  –  Aug  2014   • Created  a  new  modern,  responsive  design  for  GAP  Inc.’s  brand  of  websites  to  improve  user  experience  on   smaller  devices  like  phones  and  tablets   • Developed   internal   web   application   to   maintain   information   about   employees,   their   technical   skills   and   proficiencies   • Supported  feature  to  request  SMEs  to  review  proficiencies  as  well  as  deletion  and  in  place  modification  of   skills  and  email  notifications  for  changes   • Migrated  code  from  Oracle  db  to  PostgreSQL   Technologies:  Java,  Oracle  10g/11g,  PostgreSQL  
  • 2. Accenture  Services  Pvt.  Ltd   Software  Engineer    Oct  2011  –  July  2013   • Worked  on  customization  for  Vodafone  inventory  systems  using  PL/SQL  and  Cramer  modules   • Developed   PL/SQL   procedures,   triggers   &   packages,   modeled   system   component   and   prepared   test   cases  for  device  and  circuit  modeling   • Implemented   change   requests   for   handling   new   devices   and   connections   for   Vodafone.   Estimated   and   analyzed  impact  of  change  requests.   • Individually  handled  a  migration  module  to  a  newer  version  of  Cramer   Technologies:  PL/SQL,  Oracle  10g/11g,  AMDOCS  OSS  Cramer       Selected  Academic  Projects   Product  recommendations  on  Twitter  based  on  user  reviews   • Implemented   a   model   to   provide   game   recommendations   for   users   based   on   sentiment   analysis   of   tweets  related  to  the  underlying  features  and  specifications  of  a  game   • Provided   recommendations   based   on   products   with   similar   appreciated   features   in   tweets   using   clustering  techniques   • Worked   with   Alchemy   API   for   natural   language   processing   and   machine   learning   techniques   to   find   information  about  sentiments  in  tweets   • Used  Metacritic  game  reviews  as  truth  data  to  compare  tweets  and  game  reviews  to  make  recommendations    Technologies:  Python,  Java,  Alchemy  API,  Metacritic  Mashap  API,  NLTK  clustering     Implementation  of  crowdsourcing  to  reduce  cube  computation   • Worked  on  reducing  cost  computation  of  finding  interesting  groups  in  data  cubes  based  on  holistic  measures   by  using  crowdsourcing  (Amazon  Mechanical  Turk)  along  with  implementation  of  Bottom  Up  Cubing   (BUC)   algorithm  for  n-­‐dimension  cube    Technologies:  Python,  BOTO  (python  interface  to  AWS),  Amazon  mechanical  Turk     Psychographic/demographic  data  analysis  –  Astute  solutions   • Built  an  estimation  model/service  in  python  using  open  datasets  that  analyzes  basic  attributes  such  as  name   and  location  and  estimate  a  set  of  more  advanced  attributes  like  income  range.   Technologies:  Python,  NLTK  library     Customer  shopping  recommendation  systems   • Developed  a  shopping  recommendation  system.  Recommendation  list  was  given  to  user  based  on  the  past   transactions  in  a  grocery  store.   • Provided  recommendations  based  on  similar  customers  purchases  to  enhance  the  list.   • Customers  were  also  recommended  a  list  of  most  popular  items  of  the  store      Technologies:  C#,  SQL  Server  2005,  Association  Mining,  Collaborative  Filtering     Research   • Published  and  presented  a  technical  paper  entitled  “SHOPPING  LIST  RECOMMENDER”  in  the  proceedings  of   the  International  Conference  and  Workshop  on  Emerging  Trends