Getting to Equilibrium: Can We Use Machine Learning to Predict Translation Demand?

Machine learning is a powerful tool and if we, the translation industry, want to wield it wisely and to great effect, we need to get smart.

Author
adam-lamontagne

Adam LaMontagne is a Language Technology Development & Deployment Manager in the Language Technology Group at Moravia. With a background and experience in translation, linguistics, natural language processing, machine learning software development and analytics, Adam is passionate about finding hidden value in unexpected places.

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