AI Business Models eBook Guide
Ships from
China
Shipping options
Seller handling time is 0 business days Details
This reflects the seller's handling time and may not include time spent in transit.
If you have questions about shipping, please contact the seller.
FREE to United States
Ships from
China
Offer policy
OBO - Seller accepts offers on this item.
Details
You can make your offer during the checkout process as long as you do not live in a state where marketplace facilitator tax laws exist.
Check your state.
Return policy
None: All purchases final
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
This reflects the seller's handling time and may not include time spent in transit.
If you have questions about shipping, please contact the seller.
FREE to United States
Ships from
China
Offer policy
OBO - Seller accepts offers on this item.
Details
You can make your offer during the checkout process as long as you do not live in a state where marketplace facilitator tax laws exist.
Check your state.
Return policy
None: All purchases final
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
|
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