The jobs we'll lose to machines -- and the ones we won't | Anthony Goldbloom

The jobs we'll lose to machines -- and the ones we won't | Anthony Goldbloom

The Future of Work: How Automation Will Change Jobs

Introduction to Yahli and Her Parents' Professions

  • The speaker introduces their niece, Yahli, who is nine months old.
  • Yahli's mother is a doctor and her father is a lawyer, highlighting the professional background of her family.

The Impact of Automation on Jobs

  • By the time Yahli reaches college, her parents' jobs will likely be significantly different due to automation.
  • A 2013 study by Oxford University found that nearly half of all jobs are at high risk of being automated.

Understanding Machine Learning

  • Machine learning, a powerful branch of artificial intelligence, enables machines to learn from data and replicate human tasks.
  • Kaggle operates at the forefront of machine learning, bringing together experts to solve critical problems in various fields.

Evolution and Capabilities of Machine Learning

  • Initially applied to simple tasks in the early '90s like credit risk assessment and mail sorting.
  • Recent advancements have allowed machine learning to tackle more complex challenges effectively.

Notable Achievements in Machine Learning

  • In 2012, Kaggle challenged its community to create an algorithm for grading essays; winning algorithms matched human teachers' grades.
  • A subsequent challenge involved diagnosing diabetic retinopathy from eye images; again, machines matched human ophthalmologists' diagnoses.

Limitations of Machines vs. Human Abilities

  • Machines can process vast amounts of data quickly but struggle with novel situations they haven't encountered before.
  • Humans excel at connecting disparate ideas and solving unprecedented problems due to our ability to think creatively.

Creativity as a Unique Human Trait

  • The example of Percy Spencer inventing the microwave oven illustrates how humans can combine knowledge from different domains creatively.
  • This capacity for creativity limits the types of tasks that machines can automate effectively.

Implications for Future Employment

  • The future job landscape will depend on whether roles involve frequent tasks or require innovative problem-solving skills.
  • While machines will increasingly handle routine tasks (e.g., grading essays), complex roles requiring strategic thinking will still need human input.

Conclusion: Embracing Challenges Ahead

  • As automation grows, professionals must adapt by focusing on creative aspects that machines cannot replicate.
Channel: TED
Video description

Machine learning isn't just for simple tasks like assessing credit risk and sorting mail anymore -- today, it's capable of far more complex applications, like grading essays and diagnosing diseases. With these advances comes an uneasy question: Will a robot do your job in the future? TEDTalks is a daily video podcast of the best talks and performances from the TED Conference, where the world's leading thinkers and doers give the talk of their lives in 18 minutes (or less). Look for talks on Technology, Entertainment and Design -- plus science, business, global issues, the arts and much more. Find closed captions and translated subtitles in many languages at http://www.ted.com/translate Follow TED news on Twitter: http://www.twitter.com/tednews Like TED on Facebook: https://www.facebook.com/TED Subscribe to our channel: http://www.youtube.com/user/TEDtalksDirector