Zero-shot multilingual neural machine translation, how to engineer natural language models, and why you should use PCA to choose your job are topics covered this week by the fun and brilliant Lauren Zhu.
Lauren:
• Is an ML Engineer at Glean, a Silicon Valley-based natural language understanding company that has raised $55m in venture capital.
• Prior to Glean, she worked as an ML Intern at both Apple and the autonomous vehicle subsidiary of Ford Motor Company; as a software engineering intern at Qualcomm; and as an A.I. Researcher at The University of Edinburgh.
• Holds BS and MS degrees in Computer Science from Stanford
• Served as a teaching assistant for some of Stanford University’s most renowned ML courses such as "Decision Making Under Uncertainty" and "Natural Language Processing with Deep Learning".
In this episode, Lauren details:
• Where to access free lectures from Stanford courses online.
• Her research on Zero-Shot Multilingual Neural Machine Translation.
• Why you should use Principal Component Analysis to choose your job.
• The software tools she uses day-to-day at Glean to engineer natural language processing ML models into massive-scale production systems.
• Her surprisingly pleasant secret to both productivity and success.
There are parts of this episode that will appeal especially to practicing data scientists but much of the conversation will be of interest to anyone who enjoys a laugh-filled conversation on A.I., especially if you’re keen to understand the state-of-the-art in applying ML to natural language problems.
The SuperDataScience show's available on all major podcasting platforms, YouTube, and at SuperDataScience.com.