#23 - How to actually become an AI alignment researcher, according to Dr Jan Leike

80,000 Hours Podcast - Un podcast de The 80000 Hours team

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Want to help steer the 21st century’s most transformative technology? First complete an undergrad degree in computer science and mathematics. Prioritize harder courses over easier ones. Publish at least one paper before you apply for a PhD. Find a supervisor who’ll have a lot of time for you. Go to the top conferences and meet your future colleagues. And finally, get yourself hired. That’s Dr Jan Leike’s advice on how to join him as a Research Scientist at DeepMind, the world’s leading AI team. Jan is also a Research Associate at the Future of Humanity Institute at the University of Oxford, and his research aims to make machine learning robustly beneficial. His current focus is getting AI systems to learn good ‘objective functions’ in cases where we can’t easily specify the outcome we actually want. Full transcript, summary and links to learn more. How might you know you’re a good fit for research? Jan says to check whether you get obsessed with puzzles and problems, and find yourself mulling over questions that nobody knows the answer to. To do research in a team you also have to be good at clearly and concisely explaining your new ideas to other people. We also discuss: * Where Jan's views differ from those expressed by Dario Amodei in episode 3 * Why is AGI safety one of the world’s most pressing problems? * Common misconceptions about AI * What are some of the specific things DeepMind is researching? * The ways in which today’s AI systems can fail * What are the best techniques available today for teaching an AI the right objective function? * What’s it like to have some of the world’s greatest minds as coworkers? * Who should do empirical research and who should do theoretical research * What’s the DeepMind application process like? * The importance of researchers being comfortable with the unknown. *The 80,000 Hours Podcast is produced by Keiran Harris.*

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