

The Daily AI Show
The Daily AI Show Crew - Brian, Beth, Jyunmi, Andy, Karl, and Eran
The Daily AI Show is a panel discussion hosted LIVE each weekday at 10am Eastern. We cover all the AI topics and use cases that are important to today's busy professional.
No fluff.
Just 45+ minutes to cover the AI news, stories, and knowledge you need to know as a business professional.
About the crew:
We are a group of professionals who work in various industries and have either deployed AI in our own environments or are actively coaching, consulting, and teaching AI best practices.
Your hosts are:
Brian Maucere
Beth Lyons
Andy Halliday
Eran Malloch
Jyunmi Hatcher
Karl Yeh
No fluff.
Just 45+ minutes to cover the AI news, stories, and knowledge you need to know as a business professional.
About the crew:
We are a group of professionals who work in various industries and have either deployed AI in our own environments or are actively coaching, consulting, and teaching AI best practices.
Your hosts are:
Brian Maucere
Beth Lyons
Andy Halliday
Eran Malloch
Jyunmi Hatcher
Karl Yeh
Episodes
Mentioned books

Aug 15, 2024 • 43min
The New AI Business Plan for SME's
In today's episode of the Daily AI Show, Brian, Beth, Karl, Andy, and Jyunmi discussed how AI is reshaping business strategies for small and medium-sized enterprises (SMEs). They emphasized the importance of understanding AI's role in improving efficiency, particularly in industries traditionally slow to adopt new technologies like manufacturing, real estate, and construction. The conversation highlighted both the internal and external applications of AI, with a focus on how SMEs can strategically implement AI to address their unique challenges.
Key Points Discussed:
The Importance of AI for SMEs: The team discussed why AI is crucial for SMEs, particularly those with 1,000 or fewer employees. They explained how AI can help these businesses improve efficiency, reduce costs, and gain a competitive edge by automating repetitive tasks and enhancing decision-making processes.
Real and Tangible Benefits of AI: Karl shared insights from his work with zero to 60.ai, explaining how AI can deliver significant improvements in productivity for SMEs. He provided examples of AI applications, such as digital assistants that handle customer inquiries, which can free up valuable time for employees to focus on more critical tasks.
Internal vs. External AI Applications: The discussion explored the differences between AI applications that face customers and those designed to support internal operations. The team highlighted the value of creating an internal AI co-pilot to serve as a knowledge base for employees, helping to streamline operations and preserve institutional knowledge.
Challenges and Solutions for AI Adoption: Jyunmi outlined practical steps for SMEs considering AI adoption, including the need for a readiness assessment and prioritization of AI initiatives. The team stressed the importance of having clean, organized data as a foundation for successful AI implementation.
AI's Role in Onboarding and Retention: The conversation touched on how AI can revolutionize onboarding processes by providing new employees with instant access to critical company information, thus reducing the time it takes for them to become productive. They also discussed how AI can help retain knowledge from outgoing employees, ensuring that valuable expertise is not lost.
Tailoring AI Solutions to Specific Business Needs: The hosts emphasized that AI solutions must be customized to fit the unique needs of each business. Even companies in the same industry may require different AI applications depending on their specific processes and challenges.
Future-Proofing with AI: The team discussed the importance of preparing for future AI advancements, suggesting that SMEs establish a strong AI foundation now to take advantage of upcoming innovations, such as higher-level reasoning and AI agents.

Aug 14, 2024 • 49min
Crazy AI News: August 14, 2024
In today's episode of the Daily AI Show, Brian, Beth, Andy, Jyunmi, and Karl gathered to discuss the most intriguing AI news of the past week. The conversation spanned a variety of topics, from AI companionship and personalized chocolate to advancements in AI science and the evolving capabilities of AI models like Grok and Flux.
Key Points Discussed:
AI Companionship: The team explored the growing trend of developing emotional connections with AI, particularly in light of recent statements from the CEO of Replica, an AI chatbot company. This discussion highlighted societal implications and the inevitable rise of AI relationships.
Personalized Chocolate: Beth brought up the fascinating use of AI in the chocolate industry, where AI is helping to create highly personalized chocolate experiences. The conversation veered into how AI is transforming various industries, including agriculture and manufacturing, with a humorous nod to AI's role in crafting perfect chocolates.
Sakana AI Scientist: Andy introduced Sakana AI's groundbreaking "AI Scientist," capable of handling the entire research lifecycle—from idea generation to publishing scientific papers. This innovation sparked a broader discussion on the future of education and the role of AI in research and development.
Google's AI Advancements: Karl shared updates on Google's recent AI releases, including a new voice mode and the integration of AI features into their latest Pixel 9 phones. These developments signify Google's continued push to compete with other leading AI models.
Grok's Rapid Progress: The discussion also covered Grok's rapid advancements in AI, with the model quickly rising to challenge the dominance of GPT-4 and other established AI systems. The pace of Grok's development was noted as particularly impressive.
Flux and LoRa in Image Generation: The team talked about Flux, a new open-source image generator, and the use of LoRa filters to create hyper-realistic images. The conversation highlighted the speed at which open-source AI tools are evolving and becoming more accessible to users.
Data Privacy and Legal Challenges: Jyunmi brought up significant developments in data privacy, including Samsung’s investment in Sahara AI, which combines AI with blockchain for decentralized data ownership and protection. The team also discussed legal challenges facing AI companies, particularly in the realm of copyright infringement, and the potential implications for the industry.

Aug 13, 2024 • 45min
Is The Cost of Using LLMs Racing to Zero?
In today's episode of the Daily AI Show, Brian, Beth, Karl, Andy, and Jyunmi discussed the rapidly decreasing costs of using large language models (LLMs) and the implications for businesses. The conversation was sparked by Rachel Woods of the AI Exchange, who highlighted the trend of these costs "racing to zero" and how it could fundamentally change how businesses deploy AI technologies.
Key Points Discussed:
Factors Driving Down Costs:
The panel discussed the various factors contributing to the reduction in LLM costs, such as model optimization, pruning, quantization, fine-tuning, and the emergence of smaller, more efficient models. These advancements make it cheaper for businesses to use AI without sacrificing performance.
Impact on Businesses:
As the cost of running AI models decreases, businesses can afford to experiment more with AI applications. This opens up opportunities for companies to innovate, streamline processes, and enhance productivity with minimal financial risk. The conversation touched on how businesses might soon run AI systems continuously due to the low costs and high efficiency.
The Role of Open Source and Market Competition:
The rise of open-source models and fierce market competition are also driving prices down. Companies can now leverage these models to build cost-effective AI solutions, further lowering the barrier to entry for businesses looking to incorporate AI into their operations.
Long-term Implications for Workforce and ROI:
The hosts speculated on the potential long-term effects, such as a reduced need for human labor in certain roles due to AI efficiency and the continuous operation of AI systems. They also discussed the concept of AI as a "business co-pilot," helping companies make data-driven decisions and reducing operational costs.
AI as a Knowledge Preserver:
An interesting idea was the potential for AI to capture and preserve institutional knowledge, particularly from retiring employees. This would allow businesses to retain valuable expertise and potentially deploy it through AI avatars or digital assistants, ensuring that critical knowledge isn't lost over time.

Aug 13, 2024 • 46min
Open AI Strawberry: Is It Coming This Week?
The co-hosts dive into the elusive OpenAI 'Strawberry' update, questioning if it's a new innovation or just an evolution of Q-Star. They discuss how large language models differ from human reasoning, emphasizing the potential for self-taught algorithms. The panel debates the role of mathematical reasoning as a measure of AI progress. There's a buzz around the upcoming tech developments and speculation on Sam Altman's hints, amidst the excitement and tension in the AI community.

Aug 9, 2024 • 38min
Is Training Your Own LLM Worth The Risk?
In today's episode of the Daily AI Show, Andy, Jyunmi, and Karl explored the complexities and risks associated with training your own Large Language Model (LLM) from scratch versus fine-tuning an existing model. They highlighted the challenges that companies face in making these decisions, especially considering the advancements in frontier models like GPT-4.
Key Points Discussed:
The Bloomberg GPT Example
The discussion began with Bloomberg's attempt to create its own AI model from scratch using an enormous dataset of 350 billion financial parameters. While this approach provided them with a highly specialized model, the advent of GPT-4, which surpassed their model in capability, led Bloomberg to pivot towards fine-tuning existing models rather than continuing with their proprietary development.
Cost and Complexity of Building LLMs
Karl emphasized the significant costs involved in training LLMs, citing Bloomberg's expenditure, and the growing need for enterprises to consider whether these investments yield sufficient returns. They discussed how companies that have created their own LLMs often face challenges in keeping these models up-to-date and competitive against rapidly evolving frontier models.
Security and Control Considerations
The co-hosts debated the trade-offs between using third-party models and developing proprietary ones. While third-party models like ChatGPT for Enterprise offer robust features with strong security measures, some enterprises prefer developing their own models to maintain greater control over their data and the LLM’s functionality.
Emergence of AI Agents
Karl and Andy touched on the future role of AI agents, which could further disrupt the need for bespoke LLMs. These agents, with the ability to autonomously perform complex tasks, could reduce the reliance on custom-trained LLMs by offering high levels of functionality out of the box, further questioning the value of training models from scratch.
Data Curation and Quality
Andy highlighted the importance of high-quality, curated datasets in training LLMs. The hosts discussed ongoing initiatives like MIT's Data Providence Initiative, which aims to improve the quality of data used in training AI models, ensuring better performance and reducing biases.
Looking Forward
The episode concluded with reflections on the rapidly evolving AI landscape, suggesting that while custom LLMs may have niche applications, the broader trend is moving towards leveraging existing models and augmenting them with fine-tuning and specialized data curation.

Aug 8, 2024 • 41min
Big News, Little News, Good News, and More
In today's episode of the Daily AI Show, Brian, Beth, Karl, Andy, and Jyunmi talked about recent AI news and developments, highlighting various topics from Sam Altman's cryptic strawberry post to significant investments in AI startups and innovations in disease prediction models. The discussion also included insights on the impact of AI on different industries and the evolving landscape of AI applications.
Key Points Discussed:
Sam Altman's Strawberry Post:
Sam Altman’s mysterious post featuring strawberries has sparked speculations and conspiracy theories within the AI community. Theories range from it being a hint about new AI developments to it being a troll. The connection to the term "strawberry" and the advanced reasoning capabilities of OpenAI's new models were explored.
Significant Investments in AI Startups:
Mechanical Orchard: Received a $50 million Series B investment led by Google Ventures. The company focuses on using AI to reverse engineer complex legacy enterprise systems into modern cloud-based applications.
Anduril: Secured a $1.5 billion Series F investment to advance its autonomous systems for defense, including its AI-driven situational awareness platform and Ghost4 surveillance drones.
OpenAI's Investment in Webcam Technology:
OpenAI's $60 million investment in webcam technology was discussed, speculating its potential integration with AI models to enhance vision capabilities. This move could pave the way for AI-powered hardware solutions.
Mistral's New Developments:
Mistral announced updates for model customization and an alpha release of agents, enabling advanced workflows and custom behaviors. The term "agents" was examined, noting its varying definitions across different AI companies.
AI in Disease Prediction:
A new research paper introduced a model achieving 95% accuracy in disease prediction using electronic health records (EHR). This breakthrough highlights AI's potential in early disease detection and personalized healthcare, emphasizing the importance of accessibility and data collection for broader impact.
Figure's Robotics Advancements:
Figure AI's release of Figure 02, a humanoid robot being tested in a BMW plant, represents a significant leap in robotics. The potential applications and advancements in manufacturing were discussed.
Applied AI in Consumer Products:
Kayla Systems' AI-driven water heaters, designed to improve energy efficiency by 30%, were highlighted as a practical example of AI enhancing everyday products.

Aug 7, 2024 • 46min
Celebrating Our 1 Year Anniversary: 365 Days of AI
In today's episode of the Daily AI Show, Brian, Beth, Andy, Jyunmi, Karl, and Eran celebrated their one-year anniversary by reminiscing about the past year's highlights and discussing future directions for the show. They reflected on key moments, memorable episodes, and the evolution of AI during the last 365 days.
Key Points Discussed:
Year in Review Highlights:
Chat GPT Vision and Multimodal AI: The introduction of Chat GPT Vision in October added significant capabilities, such as uploading files and images, which greatly fascinated the hosts.
Sam Altman Saga: The OpenAI CEO’s dismissal and reinstatement caught global attention and sparked discussions on AI ethics and alignment.
Custom GPTs: The launch of custom GPTs was highlighted as a major milestone, enabling personalized and shareable AI assistants.
Technological Advancements:
Wearable AI Devices: CES 2024 showcased promising, yet ultimately underwhelming, wearable AI devices like Rabbit and Humane Pin.
AI Agents: The concept of fire-and-forget goal-seeking agents and the ability to create expert systems within large language models was explored.
Evolutionary Model Merging: Sakana AI's process of merging models to create superior versions was discussed as a groundbreaking development.
Memorable Episodes:
Episode 52: Discussed AI avatars of historical figures and loved ones, exploring the potential and ethical considerations of such technology.
Episode 169: Focused on evolutionary model merging with Sakana AI, considered a key stepping stone towards advanced AI capabilities.
Episode 200+: Analyzed Leopold Aschenbrenner’s situational awareness paper, delving into the implications of explosive AI growth.
Community and Personal Reflections:
Audience Engagement: The hosts expressed gratitude towards their audience for their consistent support and engagement.
Behind-the-Scenes Conversations: They highlighted the value of off-air discussions, which have strengthened their camaraderie and enriched the show’s content.
Looking Forward:
New Ventures: Announced the launch of the Sci-Fi AI Show, a new series exploring the intersection of science fiction and AI reality.
Future Episodes: Plans to continue dynamic and engaging discussions, tackling emerging AI trends and technologies.

Aug 6, 2024 • 42min
Why is Denmark Winning at AI Adoption?
Why is Denmark Winning at AI Adoption?
In today's episode of The Daily AI Show, Beth, Andy, Jyunmi, and Karl discussed how Denmark has become a leader in AI adoption within the EU. They examined Denmark's strategies, cultural attributes, and government policies that have facilitated rapid AI integration, comparing it to approaches in other countries, particularly the United States.
Key Points Discussed:
Early and Strategic AI Adoption:
Denmark has been proactive in AI adoption since 2019, supported by government initiatives and infrastructure investments. A McKinsey study highlighted Denmark's potential for significant GDP growth through AI, which has been realized through consistent policy support and sector-specific initiatives.
High Adoption Rates:
Denmark's AI adoption rate is nearly double the EU average, at 15.2% compared to 8%. This success is attributed to initiatives like the AI Matters Initiative, which drives innovation in manufacturing, and the establishment of a regulatory sandbox for data protection and digital governance.
Cultural and Educational Factors:
Denmark's education system emphasizes lifelong learning, project-based work, and critical thinking, which support AI adoption. The country’s culture of work-life balance, collaboration, and knowledge sharing also contributes to a conducive environment for AI development and integration.
Government and Business Synergy:
Denmark's government balances social welfare with a pro-business stance, creating an environment where 72% of businesses use AI, higher than the global average. The welfare state model, including the concept of flexicurity, ensures job security and continuous learning, easing the transition to AI-driven work.
Comparative Perspectives:
The discussion highlighted differences between Denmark's approach and that of the U.S., where AI development is often driven by the private sector and military. The U.S. faces challenges in implementing similar strategies due to its larger population, geopolitical concerns, and different cultural attitudes towards welfare and business.
Data Privacy and Regulation:
Denmark, in line with the EU, prioritizes data privacy through regulations like the GDPR. This focus on data protection has helped create a secure foundation for AI adoption, leading to higher trust and faster implementation compared to more reactive approaches in other regions.
Future Outlook and Global Implications:
The hosts speculated on whether other countries could emulate Denmark's success by bypassing intermediate technologies and fully embracing AI. They also discussed the potential for small countries to leverage AI for significant economic and social advancements.

Aug 6, 2024 • 40min
The MVP Prompt: If It's Worth Doing It's Worth Doing Badly
In today's episode of the Daily AI Show, Beth, Andy, and Jyunmi discussed the concept of an MVP (Minimum Viable Prompt) in AI prompting. The discussion revolved around how to start with basic prompts and iterate on them to improve AI interactions, emphasizing that even imperfect prompts can yield valuable outputs. The hosts shared insights and personal experiences on refining prompts through conversational dialogue and practical tips for achieving effective AI-generated results.
Key Points Discussed
Empathy and AI Support
The episode began with a reflection on how AI can provide empathetic support during challenging times by engaging in meaningful conversations and performing tasks to assist users.
Minimum Viable Prompt (MVP)
The MVP prompt concept encourages starting with simple, incomplete prompts to get initial outputs from AI, which can then be refined through iterative dialogue. The idea is that it's better to start imperfectly than not to start at all, and through continuous interaction, the AI can progressively improve its responses.
Conversational Model for Prompting
The hosts discussed the significance of using a conversational approach when working with AI. By engaging in a back-and-forth dialogue, users can refine their prompts and achieve more accurate and useful results. This method leverages the AI's ability to remember and build on previous interactions, allowing for a more natural and effective refining process.
Practical Prompting Techniques
Beth highlighted the importance of having the AI elicit necessary information through questions, which helps in crafting more precise prompts. Andy and Jyunmi shared their experiences with starting from basic prompts like "write me a LinkedIn post" and gradually refining them by providing feedback and examples.
Structured vs. Conversational Prompting
The episode explored the difference between structured prompting, using specific formats and constraints, and conversational prompting, which is more fluid and adaptive. Both methods have their place, with structured prompting being more suitable for automation and reusable prompts, while conversational prompting is ideal for exploratory tasks.
Tools and Resources
The hosts mentioned various tools like custom GPTs, AI studios, and consoles that assist in building and refining prompts. They also discussed the benefits of using frameworks, XML tags, and markdowns to provide clear instructions to the AI.
Examples and Templates
Providing examples and templates within prompts was emphasized as a key technique for achieving consistent and desired outputs. The use of few-shot prompting, where multiple examples are given, helps the AI understand the desired format and style better.
Prompt Drift
The phenomenon of prompt drift, where prompts become less effective over time, was addressed. Using examples and continuous testing in different environments and models were suggested as ways to counteract this issue.

Aug 2, 2024 • 43min
What Did They Just Say About AI?
In today's episode of the Daily AI Show, Beth, Andy, and Jyunmi provided a biweekly recap of the various topics discussed over the past two weeks. They covered a wide array of subjects, including advancements in AI technology, its applications in different industries, and significant AI-related news.
Key Points Discussed:
AI for Learning and Education:
The hosts discussed their use of AI for learning purposes and the different AI technologies they are utilizing.
Levels of AGI and Google AI Studio:
The team reviewed OpenAI's five levels of AGI and the capabilities of Google AI Studio, highlighting its potential impact on the AI landscape.
AI as a Service:
They examined businesses offering AI as a service, such as Get Floor Plans, and the implications of such services.
Prompting with GPT-40 Mini and Avatar Ownership:
The show touched on the practical applications and challenges of using GPT-40 Mini for prompting and the legal complexities surrounding AI-generated avatars.
Empathic AI:
A significant discussion point was the development of empathic AI, exploring its benefits and challenges in enhancing human-computer interactions.
Bacteria-Based Batteries and Environmental Monitoring:
Jyunmi shared an intriguing story about Birmingham University's development of self-powered robotic bugs using bacteria-based batteries to monitor environmental data, emphasizing the role of AI in optimizing these technologies.
AI and Nanotechnology:
The conversation extended to the futuristic possibilities of AI-driven nanotechnology, including the potential for nanobots to revolutionize healthcare by replacing human blood with more efficient mediums.
AI's Role in Science and Efficiency:
The hosts discussed how AI and machine learning are accelerating scientific research and improving efficiency in various domains.
Model Merging and Efficiency in AI:
They explored the concept of model merging, where combining different AI models can lead to more efficient and capable systems without extensive computational requirements.
Enterprise AI Adoption:
The discussion included the slow but steady adoption of AI in enterprises, particularly in knowledge work sectors like legal, healthcare, and education.
AI Regulation and Copyright:
Jyunmi provided updates on the No Fakes Act and the Copyright Office's initiative to address AI-generated content and likeness rights, highlighting the evolving legal landscape around AI.
Future Topics:
The hosts teased upcoming discussions, including Denmark's advancements in AI and their correlation with the country's high happiness index.