AI Agents From Corporate Productivity to Playful Social Engagement
Manage episode 439185475 series 3552891
Summary
In this episode, Dalton Anderson discusses Google's new release of their Gemini Gems, which is their version of an AI agent. He compares Google Gemini Gems with Meta AI Studio, highlighting the differences in features and potential capabilities. Dalton shares his personal experiences with these AI agents and discusses the implications for the future. He also explores the concept of AI agents in general and the growing popularity of LLM models. In this conversation, Dalton Anderson explores the capabilities of Curio on Meta AI Studio and Google Gemini. He tests Curio's ability to understand the content of the VentureStep podcast and finds that it can accurately provide information about the podcast. He also compares Curio to Google Gemini and appreciates that Gemini includes source information and easy access to the podcast. Dalton demonstrates how to create an AI agent using the VentureStep engine and the prompt refiner. He shows how the refiner can transform unstructured prompts into well-organized outlines, saving time and effort. Dalton also discusses the ease of creating AI agents and encourages listeners to try it out for themselves.
Keywords
Google Gemini Gems, Meta AI Studio, AI agents, features, capabilities, personal experiences, implications, LLM models, Curio, Meta AI Studio, Google Gemini, AI agent, prompt refiner, VentureStep podcast, outline, time-saving
Takeaways
Google Gemini Gems and Meta AI Studio are two platforms for creating AI agents.
Google Gemini Gems is more suited for power users and corporations, while Meta AI Studio has a more social aspect.
The instruction AI agent in Google Gemini Gems helps refine instruction prompts, saving time and improving quality.
Creating AI agents can be daunting, but the use of AI instructor refiners makes it more approachable.
AI agents can be used in various platforms and have different levels of accessibility.
The gravity of a black hole warps the space continuum, causing light to be sucked into it.
AI agents can be customized and restricted based on specific prompts and instructions.
The future of AI agents holds potential for further advancements and applications. Curio on Meta AI Studio can accurately understand the content of the VentureStep podcast.
Google Gemini includes source information and easy access to podcasts.
The prompt refiner in the VentureStep engine can transform unstructured prompts into well-organized outlines.
Creating AI agents is easy and can save time and effort in various tasks.
Sound Bites
"There is a growing popularity of LLM models."
"Meta AI Studio is more social-oriented, while Google Gemini Gems is more focused on management and automation."
"The AI instructor refiner in Google Gemini Gems saves time and improves prompt quality."
"Curio on Meta AI Studio knows what VentureStep podcast is about."
"Gems and I googled Gemma Gems."
"I asked it, do you know how many subs it has on YouTube? And it says, today's fun fact is why VentureStep might be a rising star in the podcast world."
Chapters
00:00 Introduction to Google's Gemini Gems and Meta AI Studios
02:24 The Growing Popularity of AI
06:09 Comparing Features and Approaches
09:45 The Process of Creating AI Agents
13:30 Training and Structuring AI Agents
18:03 Interacting with AI Agents on Different Platforms
25:48 Different Approaches to Structuring AI Agents
28:10 Balancing Structure and Adaptability in AI Agents
29:37 Exploring Curio on Google Gemini Gym and Meta AI Studio
46:07 Creating AI Agents with Structured Prompts
50:26 The Ease and Approachability of Creating AI Agents
52:54 Optimizing Tasks and Saving Time with AI Agents
40 episoder