Spence Green — Enterprise-scale Machine Translation
Spence shares his experience creating a product around human-in-the-loop machine translation, and explains how machine translation has evolved over the years.
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Spence Green is co-founder and CEO of Lilt, an AI-powered language translation platform. Lilt combines human translators and machine translation in order to produce high-quality translations more efficiently.
Connect with Spence:
📍 LinkedIn: https://www.linkedin.com/in/spencegreen/
📍 Personal Website: http://www.spencegreen.com/
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⏳ Timestamps:
0:00 Sneak peek, intro
0:45 The story behind Lilt
3:08 Statistical MT vs neural …
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Chapters (13)
Sneak peek, intro
0:45
The story behind Lilt
3:08
Statistical MT vs neural MT
6:30
Domain adaptation and personalized models
8:00
The emergence of neural MT and development of Lilt
13:09
What success looks like for Lilt
18:20
Models that self-correct for gender bias
19:39
How Lilt runs its models in production
26:33
How far can MT go?
29:55
Why Lilt cares about human-computer interaction
35:04
Bilingual grammatical error correction
37:18
Human parity in MT
39:41
The unexpected challenges of prototype to production
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