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Decoding AI: Exploring it's Everyday Applications
Scott Logan, CMO at Kroologic, and James Gilbert, CMO at Flip, recognize that there is so much AI that surrounds us in our everyday lives. These speakers from the AI Revenue Summit breaks out machine learning tools, differences between ai and generative ai, LLM's and ML's. To stay current on our latest events, follow us on Linkedin. Useful Timestamps: 2:35 - Alexa and Siri are forms of AI4:45 - Alexa sends reminders automatically5:31 - There are more forms of generative AI. Examples given10:01 - LLM is a large language model; ChatGPT13:03 - A lot of new AI tools you have to figure new things out. 18:31 - ChatGPT makes us more efficient 22:30 - Bias: Whatever you train AI on, that is what it's going to learn22:55 - Privacy: use of PII data may be governed a lot more than it has in the past23:41 - Accountability: who’s responsible when AI makes a mistake24:12 - Transparency: ai decision can be understood by humans28:24 - Concluding Remarks