Welcome to Bonanza, an online marketplace with the best prices.

With over 25 million items and 40,000 sellers, Bonanza is the place to find the items you need at the prices you want.

Rendered at 15:04:11 05/03/25
Full-size item image
Primary image for AI Business Models eBook Guide

AI Business Models eBook Guide

$4.95
Ships from China Cn

Shipping options

Seller handling time is 0 business days Details
FREE to United States
Ships from China Cn

Offer policy

OBO - Seller accepts offers on this item. Details

Return policy

None: All purchases final

Purchase protection

Payment options

PayPal accepted
PayPal Credit accepted
Venmo accepted
PayPal, MasterCard, Visa, Discover, and American Express accepted
Maestro accepted
Amazon Pay accepted
Nuvei accepted

Shipping options

Seller handling time is 0 business days Details
FREE to United States
Ships from China Cn

Offer policy

OBO - Seller accepts offers on this item. Details

Return policy

None: All purchases final

Purchase protection

Payment options

PayPal accepted
PayPal Credit accepted
Venmo accepted
PayPal, MasterCard, Visa, Discover, and American Express accepted
Maestro accepted
Amazon Pay accepted
Nuvei accepted

Item traits

Category:

Other

Quantity Available:

1000 in stock

Condition:

Unspecified by seller, may be new.

Listing details

Shipping discount:

No combined shipping offered

Posted for sale:

More than a week ago

Item number:

1725161421

Item description

SUPER GUIDE: AI Business Models The Super Guide about AI Business Models is a complete guide on how AI Business Models has transformative potential, guiding you to to strategize, implement, and drive meaningful business outcomes. Table of content Introduction Understanding Ai What Is Artificial Intelligence? The Role Of Business Models In Ai Creating Value With Ai Capturing Value With Ai The Importance Of Business Models In Ai Optimizing Value Creation Guiding Revenue Generation Steering Scalability Aligning With Customer Needs And Business Goals History Of Ai Different Forms Of Ai: Narrow Vs. General Ai Narrow Ai Characteristics Of Narrow Ai Applications Of Narrow Ai Limitations And Future Perspectives General Ai Characteristics Of General Ai Challenges And Progress In General Ai Future Perspectives The Interplay Between Business Models And Narrow Ai The Role Of Business Models In Leveraging Narrow Ai Monetizing Narrow Ai: Revenue Models And Pricing Strategies The Impact On Business Operations And Workforce The Interplay Between Business Models And General Ai General Ai And Business Model Innovation Ethical And Regulatory Considerations Impact On The Workforce And Society Machine Learning And Deep Learning: Basics What Is Machine Learning? Learning From Data Adaptability Machine Learning In Business What Is Deep Learning? Artificial Neural Networks Autonomy And Complexity Deep Learning In Business Interplay Between Machine Learning And Deep Learning Natural Language Processing: Basics What Is Natural Language Processing? Key Aspects Of Nlp The Impact Of Nlp On Business Challenges And The Future Of Nlp Computer Vision: Basics The Concept Of Computer Vision How Does Computer Vision Work? Key Elements Of Computer Vision Computer Vision In Everyday Life Computer Vision And Business Applications Challenges And Future Of Computer Vision Important Ai Technologies And Applications Machine Learning: The Learning Machine Natural Language Processing: Computers That Speak Human Robotic Process Automation: Simulating Human Actions Computer Vision: The Eyes Of Ai Ai In Various Industries: A Revolutionary Touch Ai: The Future Of Our World The Ai Value Chain Data Generation And Collection Data Storage And Management Data Analysis And Insights Ai Model Development Deployment And Monitoring Monitoring: Ensuring Performance And Adaptability Understanding Ai Business Models The Ai As A Service (Aiaas) Model Characteristics Of Ai As A Service The Benefits Of Ai As A Service Challenges And Considerations Of Ai As A Service Real-World Applications Of Ai As A Service The Ai Product Model Characteristics Of The Ai Product Model Ai Product Model Implementation Process Benefits Of The Ai Product Model Challenges Of The Ai Product Model The Ai Solutions Model Characteristics Of The Ai Solutions Model Implementing The Ai Solutions Model Pros And Cons Of The Ai Solutions Model Pros Of The Ai Solutions Model Cons Of The Ai Solutions Model The Ai Licensing Model Key Elements Of The Ai Licensing Model Types Of Ai Licensing Benefits And Considerations Of The Ai Licensing Model Benefits For Ai Developers (The Licensors) Benefits For The Licensees (The Users Of Ai Tech) Important Considerations The Data Monetization Model Unlocking Value From Data Considerations For Data Monetization The Open-Source Ai Model Encouraging Teamwork And Invention Cultivating Innovation Ecosystems Business Models Based On Open-Source Ai Hybrid Ai Business Models Harnessing The Power Of Integration Case Study: The Healthcare Consortium Monetizing Data Through Ai Analysis Of Successful Ai Business Models Google’s Ai-First Approach Integration Of Ai Across Products And Services Emphasis On Data-Driven Decision-Making Focus On Research And Innovation Amazon’s Ai Ecosystem Voice-Enabled Devices: Alexa And Echo Data-Driven Insights: Personalization And Recommendations Ai-Powered Automation: Fulfillment And Logistics Ibm’s Enterprise Ai Solutions Watson: The Cognitive Computing Platform Industry-Specific Solutions And Services Ibm’s Ai Services And Partnerships Openai’s Hybrid Model Commercialization Of Ai Technologies Open-Source Initiatives And Collaboration Policy And Advocacy For Responsible Ai Nvidia’s Hardware-Centric Ai Model Gpus As The Foundation For Ai Acceleration Gpu-Accelerated Data Centers Ai Ecosystem And Partnerships Baidu’s Ai Dominance In China Leveraging Big Data And Search Technology Focus On Ai Research And Development Ai-Powered Products And Services Startups Disrupting Ai Landscape Agile Innovation And Niche Solutions Embracing Open Source And Collaboration Democratizing Ai With Saas And Cloud Platforms Factors Influencing The Success Of Ai Business Models Quality And Quantity Of Data The Importance Of Data In Ai Data Quality And Accuracy Data Diversity And Representativeness Data Volume And Scalability Technological Advancements Computing Power And Infrastructure Data Storage And Management Machine Learning Algorithms And Techniques Ai Talent And Skills Data Scientists And Machine Learning Experts Ai Research And Development Continuous Learning And Upskilling Regulatory Environment Data Privacy And Security Fairness, Bias, And Explainability Compliance And Legal Frameworks Ethical Considerations Privacy And Consent Bias And Fairness Accountability And Transparency Social And Environmental Impact Business And Market Conditions Market Demand And Opportunities Competitive Landscape Partnerships And Ecosystem Collaboration Funding And Investment Landscape Challenges And Risks In Ai Business Models Data Privacy And Security Data Privacy Challenges Data Security Risks Regulatory Compliance Bias In Ai Systems Types Of Bias In Ai Systems Impacts Of Bias On Ai Systems Mitigating Bias In Ai Systems High Cost And Complexity Factors Influencing The High Cost Of Ai Challenges And Complexity In Ai Implementation Strategies To Overcome Cost And Complexity Dependence On Vendors Benefits Of Partnering With Vendors Risks And Challenges Of Vendor Dependence Strategies To Manage Vendor Dependence Regulatory Risks Regulatory Landscape For Ai Risks And Implications Of Non-Compliance Strategies To Mitigate Regulatory Risks Ai Ethics And Public Perception Ethical Considerations In Ai Public Perception Of Ai Strategies For Ethical Ai And Positive Perception The Future Of Ai Business Models Impact Of Advances In Ai Technology Enhanced Decision-Making And Insights Automation And Operational Efficiency Innovation And New Opportunities The Rise Of Ai Startups Driving Technological Breakthroughs Disrupting Traditional Industries Agile And Collaborative Approach Ai In The Era Of Quantum Computing Enhancing Ai Algorithms And Capabilities Challenges And Limitations New Possibilities For Ai Business Models Future Regulatory Scenarios Ethical Guidelines And Standards Sector-Specific Regulations International Cooperation And Standards Evolution Of Ai Business Models Data As A Strategic Asset Ai As A Service Human-Ai Collaboration The Role Of Ethics In Future Ai Businesses Ethical Design And Development Human-Centric Ai Applications Collaborative Governance And Regulation Building Your Own Ai Business Model Defining Your Ai Value Proposition Identifying Customer Needs And Pain Points Articulating Unique Ai Capabilities Demonstrating Value And Roi Building Your Ai Team Identifying Key Roles And Skills Team Composition And Collaboration Attracting And Retaining Ai Talent Acquiring And Managing Data Data Acquisition Strategies Ensuring Data Quality Robust Data Management Practices Developing And Deploying Your Ai System Selecting Ai Algorithms Training And Evaluating Models Deploying Models Into Production Monetization Strategies For Your Ai Business Subscription-Based Models Licensing And White-Labeling Data Monetization Overcoming Challenges And Managing Risks Data Quality And Availability Ethical And Legal Considerations Talent Acquisition And Retention Market Competition And Differentiation Case Studies Ai In Healthcare: Tempus Data-Driven Precision Medicine Real-World Evidence And Clinical Trials Collaborations And Partnerships Ai In Retail: Ocado Technology Warehouse Automation And Optimization Personalized Customer Experiences Predictive Analytics And Supply Chain Optimization Ai In Finance: Upstart Studies Automated Lending Decisions Predictive Underwriting Fraud Detection And Prevention Ai In Agriculture: Blue River Technology Precision Farming With Ai Autonomous Farming Robots Environmental Impact And Sustainability Ai In Manufacturing: Cognex Automated Visual Inspection Intelligent Robotics And Automation Predictive Maintenance And Equipment Optimization Conclusion Key Takeaways Next Steps: Putting Knowledge Into Action Step 1: Figure Out Your Business Needs Step 2: Find The Right Ai Tools Step 3: Get Your Data Ready Step 4: Find Ai Experts Step 5: Make A Plan And Try Small Projects Step 6: Think About Ai Ethics Step 7: Create A Learning Environment Step 8: Check And Improve Further Resources Read an excerpt from this AI Business Models Super Guide: “In a world increasingly shaped by innovative technology, AI — or Artificial Intelligence — stands at the forefront of transformative change. Today, AI isn’t just the realm of science fiction; it’s a reality permeating our everyday lives and driving significant shifts in business operations. This revolution is not confined to any specific sector. From finance to healthcare, transportation to advertising, AI is disrupting traditional business models and necessitating a new paradigm — the AI Business Model.” This is must-have knowledge for entrepreneurs and business model analysts and consultants. If you want to dominate business models this super guide was made especially for you. Product images are for illustrative purposes only