Applied AI Daily: Machine Learning & Business Applications

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Applied AI Daily: Machine Learning & Business Applications is your go-to podcast for daily insights on the latest trends and advancements in artificial intelligence. Explore how AI is transforming industries, enhancing business processes, and driving innovation. Tune in for expert interviews, case studies, and practical applications, making complex AI concepts accessible and actionable for decision-makers and enthusiasts alike. Stay ahead in the fast-paced world of AI with Applied AI Daily. For more info go to https://www.quietplease.ai Check out these deals https://amzn.to/48MZPjs

  1. 8 小時前

    AI's Takeover: Juicy Secrets of Big Business Revealed!

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. Welcome to Applied AI Daily, your trusted guide to the latest in machine learning and business. The global machine learning market has soared to an expected one hundred ninety-two billion dollars in 2025, with seventy-two percent of US enterprises now making AI a core part of their operations, no longer a side project. Real-world application is everywhere—eighty-one percent of Fortune five hundred companies now use machine learning for customer service, supply chain, and cybersecurity, while in retail, spending on ML-powered solutions reached nearly nineteen billion dollars, fueling innovations in customer modeling and logistics automation. Industry case studies reveal the power of practical AI. Amazon leverages predictive analytics to manage its massive supply chain, using advanced models to forecast demand and dynamically adjust inventory, which has led to enhanced sales, leaner operations, and better customer satisfaction. Walmart has integrated machine learning across stores, deploying robotics for stock management and AI tools to anticipate customer needs, making their operations more efficient and competitive. Sales organizations in particular are seeing dramatic results from intelligent automation. AI-powered analytics now deliver up to ninety-six percent forecast accuracy in pipeline sales, while dynamic customer journey platforms have boosted conversion by more than thirty percent compared to traditional methods. IBM has reported that companies using machine learning for customer journey design see double-digit reductions in churn and improved net promoter scores. For action, consider adopting AI behavioral mapping for digital sales, where digital signals can pinpoint bottlenecks and optimize interactions in real time. Integration, however, brings its own challenges. Most enterprises are now moving machine learning workloads to the cloud for flexibility and scale, with Amazon Web Services, Azure, and Google Cloud accounting for nearly seventy percent of these deployments. Over forty percent of large organizations now use hybrid approaches, balancing the speed of cloud with the security of on-premise systems. Technical teams must manage larger training datasets—now averaging two point three terabytes per model—and robust tracking in continuous integration pipelines to ensure compliance and reproducibility. Looking ahead, generative AI and natural language processing are racing forward. Cross-lingual models now deliver translation accuracy over ninety-one percent in more than eighty languages, while reinforcement learning is accelerating adoption in robotics and logistics. As investment and adoption grow, organizations will need strong governance, clear performance metrics, and strategies for integrating legacy systems into their AI future. Thank you for tuning in to Applied AI Daily. Be sure to join us next week for more insights and breakthroughs in machine learning and business applications. This has been a Quiet Please production. For more on me, check out Quiet Please Dot A I. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    3 分鐘
  2. 2 天前

    AI Gossip: ML Titans Spill Secrets! Walmart, Roche, & IBMs Juicy AI Journeys

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. Machine learning has advanced beyond experimental technology and become a strategic driver of business growth in 2025. The global machine learning market has soared to nearly one hundred ninety two billion dollars this year, with seventy two percent of United States enterprises now considering it a standard, not just a research initiative. Industry leaders such as Walmart and Roche have deployed artificial intelligence to optimize inventory, personalize customer experience, and streamline drug discovery, enabling significant reductions in costs and time while enhancing service and innovation. For example, IBM Watson Health is using natural language processing and predictive analytics to transform patient care, improving diagnostic accuracy and tailoring treatment plans. In manufacturing, companies like Toyota leverage computer vision and machine learning to empower factory workers with tools for building and deploying models that prevent failures and fine-tune supply chain management on the fly. The transformative effect is quantifiable. A recent report highlighted that eighty one percent of Fortune five hundred companies rely on machine learning for customer service, supply chain efficiency, and cybersecurity, while fifty five percent of all enterprise customer relationship management systems now feature machine learning sentiment analysis and churn prediction tools. In retail, machine learning powered inventory optimization has led to an average reduction in stockouts by twenty three percent for large organizations. Financial firms find additional value with seventy five percent of real-time transactions monitored by machine learning fraud detection, shrinking risk and boosting consumer confidence. On the technical front, integration with existing systems highlights the importance of robust data infrastructures and continual model retraining. Edge artificial intelligence and federated learning have surged as a practical solution for privacy and latency; processing is moving closer to the data source, improving real-time decision making and keeping sensitive information secure. Generative artificial intelligence is helping firms create synthetic data, removing bottlenecks when real-world data is scarce or privacy restricted. The business impact is substantial, with margin increases between ten and fifteen percent, faster decision cycles, and more adaptive operations. Furthermore, ninety two percent of corporations report tangible return on investment, reflecting improved efficiency and competitive advantages. As organizations mature in artificial intelligence adoption, building cross-functional expertise and establishing artificial intelligence centers of excellence becomes critical for sustaining momentum. Looking to the future, autonomous business agents and energy-aware artificial intelligence models will redefine how companies measure operational performance and sustainability. Generative artificial intelligence and advanced natural language capabilities are anticipated to open new possibilities in customer engagement, product development, and analytics. As listeners consider their own artificial intelligence strategies, prioritizing data readiness, upskilling talent, and fostering cross-discipline collaboration are the keys to successful implementation. Thanks for tuning in. Come back next week for another deep dive into applied artificial intelligence trends and case studies. This has been a Quiet Please production. For more, check out Quiet Please Dot A I. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    4 分鐘
  3. 3 天前

    AI Gossip: Walmart's Secret Sauce, PayPal's Fraud Squasher, and Amazon's Supply Chain Sorcery!

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. Today, applied artificial intelligence and machine learning are at the heart of business transformation, unlocking both operational efficiencies and competitive advantage at scale. Market data from Itransition projects the global machine learning market will reach 113 billion dollars in 2025, with key segments such as natural language processing and computer vision also expanding rapidly. Roughly half of all companies now integrate artificial intelligence or machine learning into at least one part of their operations, and more than ninety percent report tangible returns from these investments, according to Sci-Tech Today and Planable research. For real-world impact, look no further than Toyota, which leverages AI platforms on Google Cloud to empower factory teams to design and deploy their own predictive models, marking a shift toward democratized, practical solutions. In digital marketing, Sojern uses Vertex AI to process billions of travel signals daily, boosting customer acquisition metrics by up to fifty percent while slashing analysis time from weeks to days. Meanwhile, Wisesight in Thailand applies generative artificial intelligence to analyze social data, delivering client-ready insights in as little as thirty minutes. Workday is making complex business data understandable for everyone using natural language processing on Vertex AI, blurring the line between technical and non-technical employees. AI-powered predictive analytics are reshaping healthcare, finance, retail, and logistics. For example, IBM Watson Health enhances diagnostic accuracy by processing unstructured patient information, while Roche speeds up drug discovery by simulating the effects of new compounds. Retail giants like Walmart deploy machine learning for demand forecasting and inventory optimization, minimizing shortages and overstock. PayPal leverages anomaly detection for fraud mitigation, and Amazon refines inventory management and delivery operations using sophisticated prediction algorithms. Integrating machine learning with existing systems is not without challenges. One key issue is the shortage of skilled data scientists, with demand projected to outpace supply by 85 million jobs by 2030, according to the World Economic Forum. Successful implementation also requires robust data pipelines, scalable cloud infrastructure—Amazon Web Services is the platform of choice for over half of practitioners—and, increasingly, industry-specific pre-trained models that can be tailored quickly to new business cases. For organizations, measuring the return on investment means looking at faster decision cycles, cost savings, improved customer satisfaction, and direct revenue growth. Looking ahead, listeners should expect to see increased adoption of conversational agents, more automation in supply chains, and greater emphasis on ethical frameworks to guide artificial intelligence deployment. As machine learning expands, organizations are urged to invest in internal training, partner with expert agencies, and pilot iterative solutions before full-scale rollout. For those considering action, focus on upskilling teams, starting with pilot projects in predictive analytics, and evaluating providers that offer both technical expertise and industry know-how for integration. Always benchmark performance using clear metrics and foster a culture of continuous improvement. Thanks for tuning in to Applied AI Daily: Machine Learning and Business Applications. Come back next week for more insights at the intersection of technology and business. This has been a Quiet Please production, and for more, check out Quiet Please Dot A I. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    4 分鐘
  4. 4 天前

    Walmart's AI Secrets: Robots, Chatbots, and Streamlined Shoppers

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. Applied AI Daily listeners, as businesses charge into 2025, machine learning is at the heart of real-world transformation. The global machine learning market is projected to hit over one hundred thirteen billion dollars this year, with uptake surging across sectors. In fact, more than half of companies worldwide have already woven artificial intelligence and machine learning into some aspect of their operations, according to Demand Sage and Sci-Tech Today, and over ninety percent report tangible returns on investment when deploying deep learning solutions in their business models. Retail giants like Walmart illustrate these gains, as artificial intelligence-driven systems streamline inventory management and customer experience. Walmart’s predictive analytics help balance stock to avoid costly overstock and shortages, while robots and artificial intelligence-chatbots now guide shoppers and handle customer queries, making interactions seamless and saving precious time. In healthcare, IBM Watson Health leverages natural language processing to decipher complex patient records and medical research, empowering doctors to make better diagnoses and fueling advances in personalized medicine. Roche, a global leader in pharmaceuticals, speeds drug discovery by combining artificial intelligence-driven simulations with traditional testing, cutting time and costs substantially—and accelerating vital treatments to market. For companies ready to adopt artificial intelligence, successful implementation begins with a clear problem statement and a thorough review of existing data infrastructure. Lloyds Banking Group, the UK’s largest digital bank, uses Google’s Vertex AI to standardize experimentation across hundreds of data scientists, underpinning their scalable machine learning projects. Sojern, a digital travel marketing platform, leverages predictive analytics to process billions of traveler intent signals for audience targeting, reducing campaign generation times and boosting cost-per-acquisition metrics by up to fifty percent. Integration often demands cloud computing power, robust data pipelines, and attention to ethics and compliance especially in sensitive sectors like finance or healthcare. Practical takeaways include starting with scalable pilot projects, investing in cross-team collaboration—combining technical and business expertise—and tracking key performance indicators such as model accuracy and operational cost savings. According to the McKinsey Global Survey, reducing costs and automating processes are top external drivers for increased adoption, so focus on these outcomes when pitching artificial intelligence upgrades to leadership. Looking ahead, shortages of artificial intelligence talent may slow down expansion, but enterprises can counter by upskilling internal teams and partnering with expert consultants. Trends in conversational agents, ethical oversight, and advanced predictive tools will drive further transformation. Thank you for tuning in to Applied AI Daily. Join us next week for more insights on machine learning and business innovation. This has been a Quiet Please production; for more, check out Quiet Please Dot A I. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    3 分鐘
  5. 5 天前

    The AI Invasion: Machines Taking Over Business World!

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. Applied artificial intelligence is now a foundational force in business, with machine learning accelerating operational efficiency, decision making, and innovation across every industry. The global machine learning market is projected to reach 113 billion dollars in 2025, according to Statista and Itransition, and 97 percent of companies using machine learning report direct business benefits. Natural language processing alone is set for meteoric growth, expanding from 42 billion dollars in 2025 to more than 790 billion by 2034, while the computer vision market will exceed 58 billion dollars by the end of the decade. These numbers underscore not only investment, but clear returns on implementation. Recent news highlights how real-world adoption is driving measurable value. Google DeepMind’s machine learning system for data center cooling continues to realize up to 40 percent energy savings, dramatically reducing costs and environmental impact. Uber’s predictive analytics platform now enables more accurate rider demand forecasting and dynamic driver allocation, cutting average wait times by 15 percent and boosting driver earnings 22 percent in key markets. Vertex AI-powered solutions are making possible real-time marketing optimizations—Sojern now delivers over 500 million daily travel predictions and helps clients improve customer acquisition costs by up to 50 percent. Integration of machine learning with existing business systems is no longer a luxury, but a necessity for those seeking competitive differentiation. Industry leaders embed predictive models into their operations, whether it’s Airbus compressing aircraft design cycles using simulation-driven optimization or Bayer supporting agriculture with precision insights from satellite imagery and weather data—solutions that have increased farm yields by nearly 20 percent while reducing environmental footprints. The challenges remain substantial: complex data infrastructure, shortage of skilled AI professionals, and the need for scalable ethical guidelines. Yet, the solutions are multiplying. Cloud platforms like Google and Amazon provide accessible APIs and pre-built models to expedite deployment, and consulting agencies are filling expertise gaps for businesses hoping to accelerate AI integration. For organizations looking to act, three practical takeaways emerge. First, start with high-impact use cases in predictive analytics, customer service, or visual inspection—areas with well-demonstrated returns. Second, prioritize seamless integration with current workflows to minimize disruption. Third, invest in upskilling existing staff or partner with expert agencies as talent tightens. Looking ahead, the impact of applied AI will broaden, with more industries leveraging conversational agents, precision automation in supply chains, and ethical frameworks for responsible deployment. Expect greater collaboration between humans and AI, increasing efficiency without sacrificing judgment. Thanks for tuning in. This has been a Quiet Please production. For me, check out Quiet Please Dot AI. Come back next week for more insights into machine learning and business applications. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    3 分鐘
  6. 11月5日

    Machine Learning Explosion: AI Dominates Business, Sparks Regulatory Showdown

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. As listeners shift into November 6, 2025, the applied artificial intelligence landscape is not just evolving—it is accelerating across industries that matter most. This year, according to SQ Magazine, the global machine learning market is expected to hit a remarkable one hundred ninety-two billion dollars, with nearly three quarters of United States enterprises reporting machine learning as a standard part of everyday IT operations, not just a research experiment. Recent Stanford research affirms this surge, showing seventy-eight percent of organizations now run business-critical workloads on AI and machine learning, up sharply from just fifty-five percent the year before. Real-world case studies reveal machine learning moving from theory to action in logistics, healthcare, retail, and financial services. In Kansas City, logistics teams replaced manual scheduling with auto-scheduling models that cut staffing costs and slashed inefficiencies. In retail, Walmart’s stores use predictive analytics to manage inventory and boost customer satisfaction by reducing overstock and stockouts. Healthcare systems, driven by IBM Watson and Roche, have deployed natural language processing and computer vision for better diagnostics and accelerated drug discovery. DeepMind’s AlphaFold is revolutionizing biotech by predicting protein structures, fast-tracking drug development in ways that were unimaginable just a few years ago. Integration challenges loom large, but cloud platforms are smoothing the path. According to recent Itransition statistics, sixty-nine percent of machine learning workloads now run on cloud infrastructure, with hybrid setups balancing agility and regulatory needs. Technical requirements lean heavily on scalable GPU clusters and end-to-end platforms like Databricks and SageMaker. Auto-scaling clusters have reduced idle compute time by more than thirty percent, directly boosting performance and return on investment for mid-market companies. For leaders planning implementation, key strategies include starting with pilot projects in high-impact, data-rich areas, investing in explainability and fairness audits, and ensuring seamless integration with existing enterprise resource planning and customer relationship management systems. New developments this week include New York, California, and Illinois mandating that machine learning used in hiring undergoes published impact assessments, while the European Union’s AI Act rolls out stricter risk-level classifications for models in public-facing applications. Meanwhile, leading travel and marketing platforms like Sojern are using Google’s Vertex AI and Gemini to process billions of traveler signals, achieving speed and ROI improvements of up to fifty percent in client acquisition efforts. What should business leaders do next? Focus on real-time inferencing, where over a third of new implementations are happening. Prioritize ethical reviews—forty-seven percent of United States firms now audit bias regularly—and integrate model registry tools with continuous integration pipelines. Industry experts at PwC suggest measuring ROI not only by cost reduction but also by improvements in speed, accuracy, and customer experience. Looking toward the future, machine learning is set to advance further with generative models, enhanced vision systems, and broader regulatory frameworks, shifting from back-office tools to front-line operations that shape customer experiences and business outcomes. As always, thanks for tuning in to Applied AI Daily: Machine Learning and Business Applications—this has been a Quiet Please production. Come back next week for more, and for me check out Quiet Please Dot A I. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    4 分鐘
  7. 11月3日

    Shhh! AI's Taking Over: Big Money, Big Changes, Big Drama!

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. Applied AI is now a central force in the global business landscape, with the machine learning market poised to reach one hundred ninety-two billion dollars in twenty twenty-five, and seventy-two percent of U.S. enterprises considering machine learning a standard part of their IT operations as reported by SQ Magazine and Itransition. In the past year, machine learning has shifted from proof-of-concept trials to the backbone of real-time logistics, fraud detection, advanced diagnostics, and beyond. For instance, a logistics team in Kansas City saw manual scheduling replaced by predictive models that reduced bottlenecks and fuel costs. This mirrors a larger trend: seventy-five percent of real-time financial transactions are monitored by machine learning fraud systems, while healthcare applications in the U.S. have grown thirty-four percent in diagnostics and personalized care. Case studies prove the impact is tangible. Sojern, a digital marketing company, now generates over five hundred million daily traveler predictions using Google Vertex AI and Gemini, slashing audience generation time by ninety percent. Wisesight in Thailand uses computer vision and natural language processing to analyze millions of social media signals, delivering actionable insights in minutes instead of days. In banking, NatWest Markets automated data-quality management, shifting from monthly to daily insights and accelerating compliance. Meanwhile, Oper Credits in Belgium leverages AI to automate document processing for mortgage applications, aiming for ninety percent first-pass compliance instead of the previous thirty to forty percent. Integration with existing systems often hinges on cloud platforms, with sixty-nine percent of workloads now running on providers like AWS, Azure, and Google Cloud. Hybrid infrastructure helps large enterprises balance control and scalability, while auto-scaling clusters and serverless training have cut idle compute costs by over thirty percent. Technical requirements center on robust pipelines, GPU resources, and built-in compliance tracking to minimize risk and maintain reproducibility. Performance metrics show steady improvements: image recognition accuracy reached ninety-eight point one percent this year, closing the gap with human analysts. ROI is reflected in twenty-three percent fewer retail stockouts, fifty-five percent of CRMs automating sentiment analysis, and AI-powered chatbots resolving sixty percent of customer service queries autonomously. Ethical challenges and regulatory pressure are growing; nine countries and twenty-one U.S. states now mandate AI transparency in public-facing models, enforce bias audits, and require open reporting on hiring algorithm impacts. Public trust in AI technology has reached sixty-one percent, largely due to these transparency initiatives. Three major news items underscore ongoing change: the final implementation of the European Union AI Act is set to classify ML systems by risk level for over twelve thousand companies, GPU hour costs dropped fifteen percent this quarter enabling wider mid-market experimentation, and IBM Watson Health expanded its natural language processing platform for faster, more accurate patient diagnostics. For listeners considering AI adoption, the practical takeaways are clear. Focus on use cases with measurable operational benefits like predictive analytics for forecasts, computer vision for streamlined processes, and natural language tools to democratize data access. Prioritize platforms with built-in ethics toolkits and comply with emerging transparency laws to safeguard reputation and trust. Budget for hybrid cloud environments and invest in talent experienced with end-to-end ML workflow orchestration. Looking ahead, the proliferation of explainable AI, real-time inference, and industry-specific solutions will reshape how businesses compete and innovate. Emerging trends point toward greater autonomy in financial and healthcare workflows, deeper personalization in retail, and stronger security postures across sectors. Thank you for tuning in to Applied AI Daily. Join us next week to stay ahead in machine learning and business applications. This has been a Quiet Please production, and for more, check out Quiet Please Dot A I. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    5 分鐘
  8. 11月2日

    AI Gossip: Shhh! ML's Juicy Secrets Exposed! Accuracy Skyrockets, ROI Soars, and Bias Battles Rage On

    This is you Applied AI Daily: Machine Learning & Business Applications podcast. Applied artificial intelligence is no longer hype—it’s the engine powering practical value in global business. As of 2025, machine learning is a core driver of operational excellence, embedded in daily decision-making across industries. According to SQ Magazine, the global market for machine learning will hit 192 billion dollars this year, with seventy-two percent of US enterprises reporting that machine learning is now a standard part of their operations, not just an experimental research and development initiative. Eighty-one percent of Fortune five hundred companies are using machine learning for everything from customer service to supply chain management and cybersecurity, with more than half of enterprise customer relationship management systems now deploying models for sentiment analysis and churn prediction. Real-world case studies illustrate the breadth of applied artificial intelligence. IBM Watson Health uses natural language processing to comb through millions of medical records and research papers to deliver personalized treatment recommendations, resulting in more accurate diagnoses and more efficient healthcare. At Walmart, machine learning optimizes inventory, reducing stockouts by twenty-three percent and improving customer satisfaction through AI-powered robots that guide shoppers and handle routine queries. In the pharmaceutical space, Roche leverages predictive models for drug discovery, dramatically accelerating timelines and slashing costs compared to traditional approaches. Implementation, while transformative, introduces new challenges and requirements. Integrating machine learning with existing enterprise resource planning and cloud platforms demands robust data infrastructure and ongoing investment in model monitoring and ethical compliance. Gartner research highlights increased adoption of cloud-based machine learning, with sixty-nine percent of workloads now running on cloud platforms like AWS SageMaker, Azure ML, and Google Vertex AI, which have all ramped up offerings around model registry, inferencing, and workflow orchestration. Serverless training and auto-scaling clusters further improve return on investment and accessibility for mid-market businesses. Current news offers compelling updates. Sojern, a leader in travel marketing, uses Vertex AI and Gemini to process billions of traveler signals, generating over five hundred million daily predictions and achieving up to a fifty percent improvement in client acquisition costs. Workday’s deployment of natural language search and conversation tools makes business insights instantly available to technical and non-technical users alike. Ethical oversight is also rising in prominence, with nine countries passing transparency laws and twenty-one US states mandating model auditing in sensitive sectors. Performance metrics focus on accuracy, cost savings, and return on investment. The average precision of top image recognition models now exceeds ninety-eight percent, narrowing the gap between machine and human capabilities. Ninety-two percent of organizations report tangible returns from artificial intelligence partnerships, with data-driven decision-making leading to measurable efficiency gains. For listeners exploring practical adoption, key action items include: invest in robust cloud infrastructure and data pipelines, select domain-specific models for predictive analytics, natural language tasks, and computer vision, enable continuous model monitoring for bias and fairness, and engage with regulatory developments to ensure compliance. Industry-specific strategies should prioritize measurable objectives, stakeholder education, and cross-functional partnership for seamless integration. Looking ahead, the trajectory for applied artificial intelligence points toward greater automation, more transparent and fair models, and ever-higher performance benchmarks. Expect to see deeper personalization, expanded use in real-time inference, and stronger regulatory oversight as artificial intelligence shapes the future of work and value creation. Thanks for tuning in to Applied AI Daily. Come back next week for more insights on machine learning and business applications. This has been a Quiet Please production—learn more at Quiet Please Dot AI. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    5 分鐘

簡介

Applied AI Daily: Machine Learning & Business Applications is your go-to podcast for daily insights on the latest trends and advancements in artificial intelligence. Explore how AI is transforming industries, enhancing business processes, and driving innovation. Tune in for expert interviews, case studies, and practical applications, making complex AI concepts accessible and actionable for decision-makers and enthusiasts alike. Stay ahead in the fast-paced world of AI with Applied AI Daily. For more info go to https://www.quietplease.ai Check out these deals https://amzn.to/48MZPjs