Supply.AI - Deborah Weinswig

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Aug 1, 2016 - management and reverse supply chain management are becoming ... information and uses its deep-‐learning
  AUGUST  1,  2016  

Supply.AI: Solving the Problem of Returns

• Supply.AI   is   an   applied   artificial   intelligence   (AI)   platform  that  helps  retailers  derive  maximum  cost   efficiencies   from   their   order-­‐to-­‐cash   cycle   by   minimizing   returns   of   online   purchases.   In   2015,   returns   represented   a   $260   billion   problem   for   retailers.   The   average   in-­‐store   return   rate   has   increased   from   8%   in   2015   according   to   the   National  Retail  Federation’s  Annual  Return  Fraud   Survey   to   over   20%   in   2016,   according   to   Supply.AI’s  analysis.     • Supply.AI   uses   AI   deep   learning   to   correlate   consumers’  individual  online  shopping  trends  with   their   shipping   patterns  and  return   history  in   order   to   determine   how   likely   they   are   to   return   an   item.   • Supply.AI   helped   one   large   omni-­‐channel   retailer   identify  and  prevent  an  estimated  $61.2   million  in   returns.    

DEBORAH  WEINSWIG,  MANAGING  DIRECTOR,  FUNG  GLOBAL  RETAIL  &  T ECHNOLOGY   [email protected]    US:  917.655.6790    H K:  852.6119.1779    CN:  86.186.1420.3016     Copyright  ©  2016  The  Fung  Group.  All  rights  reserved.    

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  AUGUST  1,  2016   Returns:  Predicting  and  Preventing   According   to   the   NRF’s   2015   Return   Fraud   Survey,   returns   cost   retailers   approximately   $260   billion   in   2015.   The   number   of   returns   has   been   growing   and   the   problem   is   complex   for   retailers.   In-­‐store   returns   have   increased   from   an   average   of   8%   in   2015   according   to   the   National   Retail   Federation’s  Annual  Return  Fraud  Survey  to  over  20%  in  2016,  according  to   Supply.AI’s   analysis.   The   increase   in   returns   is   attributed   to   omni-­‐channel   operations.  During  the  holiday  season,  return  rates  can  be  as  high  as  30%– 40%,  and  one  NRF  consumer  survey  found  that  more  than  one  out  of  every   three   gift   recipients   polled   had   returned   at   least   one   item   during   the   last   holiday  season.   Returns  wreak  havoc  on  retail  operations.  They  impact  warehousing,  supply   chain   and   merchandising,   and   they   are   highly   unpredictable.   Thus,   returns   management   and   reverse   supply   chain   management   are   becoming   increasingly   important.   Supply.AI   is   tackling   the   returns   problem   on   the   front  end  via  its  AI  platform,  and  trying  to  prevent  returns  from  happening   at  all.   Based  in  Silicon  Valley,  Supply.AI  was  founded  in  September  2015  by  Karthik   Sridhar   and   Gurudatt   Bhobe,   who   heads   the   company’s   Technology   and   Data   Science   division.   Supply.AI   is   currently   a   member   of   a   six-­‐month   Alchemist   Accelerator   program   run   by   Ravi   Belani   for   enterprise   startups.   The   program   admits   only   companies   at   a   time,   and   these   startups   must   have   technical   teams   and   be   able   to   monetize   from   within   the   enterprise.   Supply.AI   will   graduate   from   the   Alchemist   Accelerator   program   in   September   2016,   and   the   company   is   already   working   with   three   omni-­‐ channel  retailers.   Supply.AI:  AI  Returns  Solution   Supply.AI  is  changing  the  industry  by  helping  retailers  predict  and,  to  some   degree,   prevent   returns.   The   company’s   AI   deep-­‐learning   solution   correlates   patterns   of   consumer   behavior   at   the   online   point   of   sale   and   then   executes   intervention   strategies   to   try   to   prevent   a   return   from   occurring.   Supply.AI   is   currently   working   with   three   retailers,   and   has   helped  one  of  them  reduce  its  returns  by  1.8%.  Projecting  for  the  year,  this   would  increase  the  retailer’s  top-­‐line  revenue  by  $61.2  million.   There   are   multiple   contributors   to   returns,   not   just   one   single   cause.   The   Supply.AI   platform   takes   these   varying   factors   into   account   in   order   to   predict   and   prevent   returns,   analyzing   two   major   categories   of   information:   customer   behavior   and   systems   behavior.   The   platform   analyzes   a   customer’s  buying  behaviors  and  online  purchase  patterns  to  estimate  how,   why   and   when   that   customer   buys   and   returns   products.   This   customer   behavior   category   includes   fraud   and   product   attributes.   The   platform   analyzes   the   systems   behavior   information   in   order   to   determine   how   the   retailer   services   the   customer.   This   analysis   includes   data   on   shipping   timeliness,   order   dispatch   information   and   whether   the   shipment   was   lost   or   damaged—all   of   which   is   linked   to   shipping   carrier   performance.   Supply.AI   algorithms   then   build   data   models   from   historic   shipping   performance  to  accurately  identify  which  shippers  provide  a  higher  quality   of   service   in   customer   locations,   Supply.AI   found   that   more   than   20%   of   returns  occur  as  a  result  of  these  systems  failing.)   DEBORAH  WEINSWIG,  MANAGING  DIRECTOR,  FUNG  GLOBAL  RETAIL  &  T ECHNOLOGY   [email protected]    US:  917.655.6790    H K:  852.6119.1779    CN:  86.186.1420.3016     Copyright  ©  2016  The  Fung  Group.  All  rights  reserved.    

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  AUGUST  1,  2016   Supply.AI   then   combines   all   of   the   customer’s   shopping   and   shipping   information   and   uses   its   deep-­‐learning   predictive   analytics   to   predict   whether   the   customer   will   return   an   item.   There   is   a   small   window   of   opportunity  between  the  time  a  customer  makes  a  purchase  and  the  time   Supply.AI  can  apply  one  of  its  four  intervention  strategies  to  help  prevent  a   return,  which  means  that  Supply.AI  systems  run  on  a  real-­‐time  basis.    

  Source:  Angel.co  

According   to   Supply.AI’s   analysis,   in   55%   of   all   online   apparel   purchases,   there  is  an  issue  of  validation,  such  as  of  size  or  fit.  For  example,  a  customer   may   order   a   size   M   shirt   online,   but   have   a   history   of   ordering   size   XXL   shirts.  In  this  case,  Supply.AI’s  auto-­‐confirmation  email  system  would  send   the   customer   a   message,   asking   him   to   validate   that   he   wanted   a   size   M,   based  on  his  order  history.   Supply.AI   found   that   another   20%   or   so   of   all   returns   are   made   by   customers  who  order  many  items  online.  Retailers  have  the  opportunity  to   reach  out  and  get  to  know  these  customers,  and  to  offer  them  promotions   that   encourage   them   to   keep   the   items   they   have   purchased.   Carrier   and   logistics  issues  account  for  another  22%  of  all  order  returns.  These  types  of   returns  may  occur  when  there  is  a  change  in  the  shipping  address,  carrier  or   shipping   time.   Lastly,   3%   of   returns   are   due   to   “friendly   fraud”   like   chargebacks.   Supply.AI’s   solution   can   not   only   detect   the   probability   of   a   return   occurring,   but   also   execute   intervention   strategies   at   the   point   of   sale   for   each  of  the  four  types  of  returns  to  try  to  prevent  a  return  from  happening.     An  Outsized  Impact  on  the  Bottom  Line   Seemingly   small   changes   can   have   a   big   impact   on   the   bottom   line.   Most   retailers  have  a  mandate  to  reduce  their  returns,  and  Supply.AI  is  currently   working   with   one   large   retailer   charged   with   reducing   its   returns   by   0.3%,   a  

DEBORAH  WEINSWIG,  MANAGING  DIRECTOR,  FUNG  GLOBAL  RETAIL  &  T ECHNOLOGY   [email protected]    US:  917.655.6790    H K:  852.6119.1779    CN:  86.186.1420.3016     Copyright  ©  2016  The  Fung  Group.  All  rights  reserved.    

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  AUGUST  1,  2016   typical   target.   Supply.AI   has   helped   the   retailer   improve   its   return   rate   to   approximately   1.8%,   adding   $61.2   million   to   the   retailer’s   top   line.   This   is   improvement   was   six   times   greater   than   what   any   process   change   the   retailer  instituted  might  have  returned.     Retailers   that   look   at   returns   as   an   element   of   risk   avoid   becoming   prisoner   to  their  own  processes.  The  three  retail  categories  the  Supply.AI  app  is  most   useful   for   are   apparel   and   accessories,   electronics   and   devices,   and   food   and  beverage.   Managing  Returns:  Costs  and  Benefits   Omni-­‐channel  retailers  are  confronting  how  to  manage  growing  numbers  of   returns.  Returns  are  unpredictable,  and  each  one  costs  a  retailer  in  terms  of   processing   time   and   storage   space   and   in   other   ways.   According   to   industry   experts,   on   average,   one   dollar   of   returned   goods   translates   to   only   20   cents  of  value  after  factoring  in  credit  card  fees,  labor  costs  to  prepare  the   goods   for   resale   and   shipping   costs.   According   to   Jonathan   Byrnes,   Senior   Lecturer   at   MIT’s   Center   for   Transportation   &   Logistics,   retailers   generally   lose  10%–20%  of  their  profits  to  returns.    

  Source:  Angel.co  

Reducing  returns  on  the  front  end  allows  retailers  to  save  time  and  money   on  the  back  end.  Supply.AI’s  automated,  intelligent  solution  helps  retailers   predict   and   prevent   returns,   thereby   saving   on   costs.   Additionally,   the   platform   provides   transparency   into   customer   behavior   throughout   the   ordering   process,   a   valuable   benefit   for   retailers   that   can   lead   to   further,   actionable  insights.        

DEBORAH  WEINSWIG,  MANAGING  DIRECTOR,  FUNG  GLOBAL  RETAIL  &  T ECHNOLOGY   [email protected]    US:  917.655.6790    H K:  852.6119.1779    CN:  86.186.1420.3016     Copyright  ©  2016  The  Fung  Group.  All  rights  reserved.    

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  AUGUST  1,  2016     Deborah  Weinswig,  CPA  

Managing  Director   Fung  Global  Retail  &  Technology   New  York:  917.655.6790     Hong  Kong:  852.6119.1779   China:  86.186.1420.3016   [email protected]    

Erin  Schmidt   Research  Associate    

 

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DEBORAH  WEINSWIG,  MANAGING  DIRECTOR,  FUNG  GLOBAL  RETAIL  &  T ECHNOLOGY   [email protected]    US:  917.655.6790    H K:  852.6119.1779    CN:  86.186.1420.3016     Copyright  ©  2016  The  Fung  Group.  All  rights  reserved.    

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