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ABEJA Provides AI Platform
Faster circulation of
high-volume data using
the ABEJA Platform
Data Collection Data Storage
Training
Deploying
Infering &
Retraining
AI-Ops for your business
ML
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190412 Annotation Survey@関東CV勉強会

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  • 6. ABEJA Provides AI Platform Faster circulation of high-volume data using the ABEJA Platform Data Collection Data Storage Training Deploying Infering & Retraining
  • 7. AI-Ops for your business
  • 8. ML
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  • 84. - DMCHV • S 3 H DMF MC 7H 1DH"1DH .P C SP HMF MM R RH M E P TH S K AID R CDRD RH M PJ G R RGD DMRW" HVRG ---4 . MEDPDM D M -PRHEH H K 4MRDKKHFDM D • C SK HL DR K Y D C M R MDDC M A SMCHMF"A VD , P HMHMF AID R K CDRD R P S HMF MKW GSL M TDPHEH RH M P DDCHMF E RGD 4000 MEDPDM D M L SRDP TH H M MC RRDPM PD FMHRH M • C SK HL DR K P HMHMF AID R K CDRD R P HRG KH J S DPTH H M P DDCHMF E RGD 4000 . MEDPDM D M . L SRDP H H M MC RRDPM :D FMHRH M * • C SK HL DR K 0VRPDLD KH JHMF E P DEEH HDMR AID R MM R RH M P DDCHMF E RGD 4000 4MRDPM RH M K . MEDPDM D M . L SRDP H H M * • 6 MWS GJ T 6 DMH DR K 7D PMHMF HMRDKKHFDMR CH K F E P A SMCHMF A V MM R RH M P DDCHMF E RGD 4000 . MEDPDM D M . L SRDP H H M MC RRDPM :D FMHRH M • SRR HM SW F MC 6PH RDM 2P SL M PDCH RHMF SEEH HDMR MM R RH M RPDMFRG E P HMRDP RHTD E PDFP SMC DFLDMR RH M P DDCHMF E RGD 4000 4MRDPM RH M K . MEDPDM D M . L SRDP H H M • 7HM SMF" H DR K 8H P ER , . LL M AID R HM MRDVR 0SP D M MEDPDM D M L SRDP TH H M PHMFDP .G L
  • 85. 0PPFNE W • 1FB BN 0 X FS BL IBS R SIF PO NS F BNS D RFH FNSBS ON V SI PO NS R PF R ON 4 OPFBN DONGF FNDF ON DO P SF R ON P NHF 2IB ( + • 2BRS F ON 9L R FS BL 0NNOSBS NH OC FDS NRSBNDFR V SI B POLXHON NN ODFFE NHR OG SIF 8444 2ONGF FNDF ON 2O P SF R ON BNE BSSF N FDOHN S ON ( , • 0D NB 3B E FS BL 4GG D FNS NSF BDS F BNNOSBS ON OG RFH FNSBS ON EBSBRFSR V SI POLXHON NN"" ODFFE NHR OG SIF 8444 2ONGF FNDF ON 2O P SF R ON BNE BSSF N FDOHN S ON ( - • 9 NH 7 BN FS BL BRS 8NSF BDS F C FDS 0NNOSBS ON V SI 2 F 62: B A P FP NS B A . ) +-, ( .