Atıf Formatları
On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing
  • IEEE
  • ACM
  • APA
  • Chicago
  • MLA
  • Harvard
  • BibTeX

R. F. Oğuz Et Al. , "On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing," Euro-Par 2021 , Lizbon, Portugal, 2021

Oğuz, R. F. Et Al. 2021. On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing. Euro-Par 2021 , (Lizbon, Portugal).

Oğuz, R. F., Öz, M., Ölmezoğulları, E., & AKTAŞ, M. S., (2021). On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing . Euro-Par 2021, Lizbon, Portugal

Oğuz, Ramazan Et Al. "On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing," Euro-Par 2021, Lizbon, Portugal, 2021

Oğuz, Ramazan F. Et Al. "On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing." Euro-Par 2021 , Lizbon, Portugal, 2021

Oğuz, R. F. Et Al. (2021) . "On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing." Euro-Par 2021 , Lizbon, Portugal.

@conferencepaper{conferencepaper, author={Ramazan Faruk Oğuz Et Al. }, title={On the Use of Deep Learning Approaches for Extracting Information from Large Scale Graph Data: Case Study on Automated UI Testing}, congress name={Euro-Par 2021}, city={Lizbon}, country={Portugal}, year={2021}}