Kenneth Cukier: Big data is better data

Kenneth Cukier: Big data is better data

What is America's Favorite Pie?

The Impact of Data on Consumer Preferences

  • Kenneth Cukier introduces the concept of data-driven insights by discussing America's favorite pie, which is identified as apple based on supermarket sales of larger pies.
  • The preference shifts when considering smaller individual pies; consumers can choose their first choice, revealing that apple may not be the top favorite overall.
  • Cukier emphasizes that big data allows us to see new patterns and insights that were previously hidden with smaller datasets.
  • He argues that effective use of big data is crucial for addressing global challenges such as food supply, healthcare, and climate change.

Evolution of Information Storage

  • Cukier illustrates how information storage has evolved from ancient methods (e.g., a clay disc from 2000 B.C.) to modern digital formats, highlighting increased capacity and accessibility.
  • The transition from static information storage to dynamic data flows enables more efficient searching, sharing, and processing of information.

Datafication in Modern Society

  • The speaker discusses the exponential growth in data collection due to both traditional sources and new forms of datafication (e.g., location tracking via smartphones).
  • He contrasts historical methods of tracking individuals (like Martin Luther in the 1500s) with contemporary capabilities enabled by technology.

Innovative Applications of Data

  • Cukier presents an example where posture recognition could enhance vehicle security systems by identifying authorized drivers through unique sitting positions.
  • He suggests potential applications for aggregated driving data to predict accidents and alert drivers about fatigue.

Machine Learning: A New Frontier

  • The discussion transitions into machine learning as a significant area benefiting from big data; it involves allowing computers to learn from vast amounts of information rather than being explicitly programmed.

The Evolution of Machine Learning and Its Implications

The Beginnings of Machine Learning

  • In the 1950s, Arthur Samuel at IBM developed a checkers program that allowed him to play against a computer, initially winning due to his strategic knowledge.
  • Samuel enhanced the program with a sub-program that evaluated board configurations for potential wins or losses, leading to the computer's ability to learn from its gameplay.

Advancements in AI Capabilities

  • The shift in problem-solving approaches has been crucial; instead of programming explicit rules for driving, data is now provided for machines to learn autonomously.
  • This method allows machines to identify complex scenarios (e.g., recognizing traffic lights and their meanings) without human intervention.

Applications of Machine Learning

  • Machine learning underpins various online services such as search engines, personalized recommendations on Amazon, translation software, and voice recognition systems.
  • Recent research using machine learning algorithms has improved cancer biopsy analysis by identifying additional predictive traits beyond existing medical literature.

Ethical Concerns with Big Data

  • Predictive policing utilizes big data analytics based on historical crime data but raises concerns about individual privacy and accountability before actions are taken.
  • There is potential misuse of personal data (e.g., high school transcripts, credit scores), which could lead to preemptive judgments about individuals' behaviors.

Societal Impact of Big Data

  • The rise of big data threatens job security in professional fields similar to how factory automation affected blue-collar jobs in the past.
  • Professionals like lab technicians may find their roles drastically altered or eliminated due to advancements in algorithmic capabilities.

Navigating the Future with Big Data

  • While technology historically creates new jobs after initial disruptions, some positions may be permanently lost; caution is needed regarding job displacement.
  • Society must adapt big data technologies for human needs rather than becoming subservient to them; we are still learning how best to manage this vast amount of information.

Conclusion: Embracing Change Responsibly

  • As we enter the big data era, it’s essential to recognize both its transformative potential and risks. We must ensure that our approach prioritizes human agency over mere technological advancement.
Channel: TED
Video description

Self-driving cars were just the start. What's the future of big data-driven technology and design? In a thrilling science talk, Kenneth Cukier looks at what's next for machine learning — and human knowledge. 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