Custom.MT
  • Home
    • For Localization Teams
    • For LSP
    • For Product Managers
  • Services
    • Translation Memory (TMX) Cleaning
    • On-Premise Machine Translation
    • Language Data Anonymization
    • Terminology Compliance
    • Data Acquisition
    • Open-Source Machine Translation
  • About Us
  • Blog
    • case studies
    • infographics
    • Webinars

Search

Day: June 28, 2021
Methods to Optimize Localization Spend with MT
Konstantin Dranch June 28, 2021 No Comment

In this webinar, Sathish Chander, the Data Product Director at Booking.com, talks about the story of how his team trained Booking.com’s engines using open-source data sets and toolkits. Katerina Gasova, Linguistic Services Director at RWS, presentes how RWS, the largest translation company in the world, determines the cost for expert editing of machine translation, and how the production teams […]

Read More

Recent Posts

  • No Human in the Loop?
  • How Anonymization Works in Machine Translation
  • Interview with Arul Menezes, Microsoft Translator Founder
  • Top 5 Ideas for MT & Localization in 2022
  • Machine Translation Market Size

Recent Comments

  1. Globalese: Partner Spotlight - Blog Post - Custom.MT on MT engine from Globalese gains 115% after training
  • +421 917 785 569
  • kd@custom.mt
  • Home
    • For Localization Teams
    • For LSP
    • For Product Managers
  • Services
    • Translation Memory (TMX) Cleaning
    • On-Premise Machine Translation
    • Language Data Anonymization
    • Terminology Compliance
    • Data Acquisition
    • Open-Source Machine Translation
  • About Us
  • Blog
    • case studies
    • infographics
    • Webinars
Menu
  • Home
    • For Localization Teams
    • For LSP
    • For Product Managers
  • Services
    • Translation Memory (TMX) Cleaning
    • On-Premise Machine Translation
    • Language Data Anonymization
    • Terminology Compliance
    • Data Acquisition
    • Open-Source Machine Translation
  • About Us
  • Blog
    • case studies
    • infographics
    • Webinars