Help | Advanced Search

Computer Science > Software Engineering

Title: ai in software engineering: case studies and prospects.

Abstract: Artificial intelligence (AI) and software engineering (SE) are two important areas in computer science. In recent years, researchers are trying to apply AI techniques in various stages of software development to improve the overall quality of software products. Moreover, there are also some researchers focus on the intersection between SE and AI. In fact, the relationship between SE and AI is very weak; however, methods and techniques in one area have been adopted in another area. More and more software products are capable of performing intelligent behaviour like human beings. In this paper, two cases studies which are IBM Watson and Google AlphaGo that use different AI techniques in solving real world challenging problems have been analysed, evaluated and compared. Based on the analysis of both case studies, using AI techniques such as deep learning and machine learning in software systems contributes to intelligent systems. Watson adopts 'decision making support' strategy to help human make decisions; whereas AlphaGo uses 'self-decision making' to choose operations that contribute to the best outcome. In addition, Watson learns from man-made resources such as paper; AlphaGo, on the other hand, learns from massive online resources such as photos. AlphaGo uses neural networks and reinforcement learning to mimic human brain, which might be very useful in medical research for diagnosis and treatment. However, there is still a long way to go if we want to reproduce human brain in machine and view computers as thinkers, because human brain and machines are intrinsically different. It would be more promising to see whether computers and software systems will become more and more intelligent to help with real world challenging problems that human beings cannot do.

Submission history

Access paper:.

  • Other Formats

References & Citations

  • Google Scholar
  • Semantic Scholar

BibTeX formatted citation

BibSonomy logo

Bibliographic and Citation Tools

Code, data and media associated with this article, recommenders and search tools.

  • Institution

arXivLabs: experimental projects with community collaborators

arXivLabs is a framework that allows collaborators to develop and share new arXiv features directly on our website.

Both individuals and organizations that work with arXivLabs have embraced and accepted our values of openness, community, excellence, and user data privacy. arXiv is committed to these values and only works with partners that adhere to them.

Have an idea for a project that will add value for arXiv's community? Learn more about arXivLabs .

  • Digital Marketing
  • Facebook Marketing
  • Instagram Marketing
  • Ecommerce Marketing
  • Content Marketing
  • Data Science Certification
  • Machine Learning
  • Artificial Intelligence
  • Data Analytics
  • Graphic Design
  • Adobe Illustrator
  • Web Designing
  • UX UI Design
  • Interior Design
  • Front End Development
  • Back End Development Courses
  • Business Analytics
  • Entrepreneurship
  • Supply Chain
  • Financial Modeling
  • Corporate Finance
  • Project Finance
  • Harvard University
  • Stanford University
  • Yale University
  • Princeton University
  • Duke University
  • UC Berkeley
  • Harvard University Executive Programs
  • MIT Executive Programs
  • Stanford University Executive Programs
  • Oxford University Executive Programs
  • Cambridge University Executive Programs
  • Yale University Executive Programs
  • Kellog Executive Programs
  • CMU Executive Programs
  • 45000+ Free Courses
  • Free Certification Courses
  • Free DigitalDefynd Certificate
  • Free Harvard University Courses
  • Free MIT Courses
  • Free Excel Courses
  • Free Google Courses
  • Free Finance Courses
  • Free Coding Courses
  • Free Digital Marketing Courses

20 Detailed Artificial Intelligence Case Studies [2024]

In this dynamic era of technological advancements, Artificial Intelligence (AI) emerges as a pivotal force, reshaping the way industries operate and charting new courses for business innovation. This article presents an in-depth exploration of 20 diverse and compelling AI case studies from across the globe. Each case study offers a deep dive into the challenges faced by companies, the AI-driven solutions implemented, their substantial impacts, and the valuable lessons learned. From healthcare and finance to transportation and retail, these stories highlight AI’s transformative power in solving complex problems, optimizing processes, and driving growth, offering insightful glimpses into the potential and versatility of AI in shaping our world.

Related: How to Become an AI Thought Leader?

1. IBM Watson Health: Revolutionizing Patient Care with AI

Task/Conflict: The healthcare industry faces challenges in handling vast amounts of patient data, accurately diagnosing diseases, and creating effective treatment plans. IBM Watson Health aimed to address these issues by harnessing AI to process and analyze complex medical information, thus improving the accuracy and efficiency of patient care.

Solution: Utilizing the cognitive computing capabilities of IBM Watson, this solution involves analyzing large volumes of medical records, research papers, and clinical trial data. The system uses natural language processing to understand and process medical jargon, making sense of unstructured data to aid medical professionals in diagnosing and treating patients.

Overall Impact:

  • Enhanced accuracy in patient diagnosis and treatment recommendations.
  • Significant improvement in personalized healthcare services.

Key Learnings:

  • AI can complement medical professionals’ expertise, leading to better healthcare outcomes.
  • The integration of AI in healthcare can lead to significant advancements in personalized medicine.

2. Google DeepMind’s AlphaFold: Unraveling the Mysteries of Protein Folding

Task/Conflict: The scientific community has long grappled with the protein folding problem – understanding how a protein’s amino acid sequence determines its 3D structure. Solving this problem is crucial for drug discovery and understanding diseases at a molecular level, yet it remained a formidable challenge due to the complexity of biological structures.

Solution: AlphaFold, developed by Google DeepMind, is an AI model trained on vast datasets of known protein structures. It assesses the distances and angles between amino acids to predict how a protein folds, outperforming existing methods in terms of speed and accuracy. This breakthrough represents a major advancement in computational biology.

  • Significant acceleration in drug discovery and disease understanding.
  • Set a new benchmark for computational methods in biology.
  • AI’s predictive power can solve complex biological problems.
  • The application of AI in scientific research can lead to groundbreaking discoveries.

3. Amazon: Transforming Supply Chain Management through AI

Task/Conflict: Managing a global supply chain involves complex challenges like predicting product demand, optimizing inventory levels, and streamlining logistics. Amazon faced the task of efficiently managing its massive inventory while minimizing costs and meeting customer demands promptly.

Solution: Amazon employs sophisticated AI algorithms for predictive inventory management, which forecast product demand based on various factors like buying trends, seasonality, and market changes. This system allows for real-time adjustments, adapting swiftly to changing market dynamics.

  • Reduced operational costs through efficient inventory management.
  • Improved customer satisfaction with timely deliveries and availability.
  • AI can significantly enhance supply chain efficiency and responsiveness.
  • Predictive analytics in inventory management leads to reduced waste and cost savings.

4. Tesla’s Autonomous Vehicles: Driving the Future of Transportation

Task/Conflict: The development of autonomous vehicles represents a major technological and safety challenge. Tesla aimed to create self-driving cars that are not only reliable and safe but also capable of navigating complex traffic conditions without human intervention.

Solution: Tesla’s solution involves advanced AI and machine learning algorithms that process data from various sensors and cameras to understand and navigate the driving environment. Continuous learning from real-world driving data allows the system to improve over time, making autonomous driving safer and more efficient.

  • Leadership in the autonomous vehicle sector, enhancing road safety.
  • Continuous improvements in self-driving technology through AI-driven data analysis.
  • Continuous data analysis is key to advancing autonomous driving technologies.
  • AI can significantly improve road safety and driving efficiency.

Related: High-Paying AI Career Options

5. Zara: Fashioning the Future with AI in Retail

Task/Conflict: In the fast-paced fashion industry, predicting trends and managing inventory efficiently are critical for success. Zara faced the challenge of quickly adapting to changing fashion trends while avoiding overstock and meeting consumer demand.

Solution: Zara employs AI algorithms to analyze fashion trends, customer preferences, and sales data. The AI system also assists in managing inventory, ensuring that popular items are restocked promptly and that stores are not overburdened with unsold products. This approach optimizes both production and distribution.

  • Increased sales and profitability through optimized inventory.
  • Enhanced customer satisfaction by aligning products with current trends.
  • AI can accurately predict consumer behavior and trends.
  • Effective inventory management through AI can significantly impact business success.

6. Netflix: Personalizing Entertainment with AI

Task/Conflict: In the competitive streaming industry, providing a personalized user experience is key to retaining subscribers. Netflix needed to recommend relevant content to each user from its vast library, ensuring that users remained engaged and satisfied.

Solution: Netflix developed an advanced AI-driven recommendation engine that analyzes individual viewing habits, ratings, and preferences. This personalized approach keeps users engaged, as they are more likely to find content that interests them, enhancing their overall viewing experience.

  • Increased viewer engagement and longer watch times.
  • Higher subscription retention rates due to personalized content.
  • Personalized recommendations significantly enhance user experience.
  • AI-driven content curation is essential for success in digital entertainment.

7. Airbus: Elevating Aircraft Maintenance with AI

Task/Conflict: Aircraft maintenance is crucial for ensuring flight safety and operational efficiency. Airbus faced the challenge of predicting maintenance needs to prevent equipment failures and reduce downtime, which is critical in the aviation industry.

Solution: Airbus implemented AI algorithms for predictive maintenance, analyzing data from aircraft sensors to identify potential issues before they lead to failures. This system assesses the condition of various components, predicting when maintenance is needed. The solution not only enhances safety but also optimizes maintenance schedules, reducing unnecessary inspections and downtime.

  • Decreased maintenance costs and reduced aircraft downtime.
  • Improved safety with proactive maintenance measures.
  • AI can predict and prevent potential equipment failures.
  • Predictive maintenance is essential for operational efficiency and safety in aviation.

8. American Express: Securing Transactions with AI

Task/Conflict: Credit card fraud is a significant issue in the financial sector, leading to substantial losses and undermining customer trust. American Express needed an efficient way to detect and prevent fraudulent transactions in real-time.

Solution: American Express utilizes machine learning models to analyze transaction data. These models identify unusual patterns and behaviors indicative of fraud. By constant learning from refined data, the system becomes increasingly accurate in detecting fraudulent activities, providing real-time alerts and preventing unauthorized transactions.

  • Minimized financial losses due to reduced fraudulent activities.
  • Enhanced customer trust and security in financial transactions.
  • Machine learning is highly effective in fraud detection.
  • Real-time data analysis is crucial for preventing financial fraud.

Related: Is AI a Good Career Option for Women?

9. Stitch Fix: Tailoring the Future of Fashion Retail

Task/Conflict: In the competitive fashion retail industry, providing a personalized shopping experience is key to customer satisfaction and business growth. Stitch Fix aimed to offer customized clothing selections to each customer, based on their unique preferences and style.

Solution: Stitch Fix uses AI and algorithms analyze customer feedback, style preferences, and purchase history to recommend clothing items. This personalized approach is complemented by human stylists, ensuring that each customer receives a tailored selection that aligns with their individual style.

  • Increased customer satisfaction through personalized styling services.
  • Business growth driven by a unique, AI-enhanced shopping experience.
  • AI combined with human judgment can create highly effective personalization.
  • Tailoring customer experiences using AI leads to increased loyalty and business success.

10. Baidu: Breaking Language Barriers with Voice Recognition

Task/Conflict: Voice recognition technology faces the challenge of accurately understanding and processing speech in various languages and accents. Baidu aimed to enhance its voice recognition capabilities to provide more accurate and user-friendly interactions in multiple languages.

Solution: Baidu employs deep learning algorithms for voice and speech recognition, training its system on a diverse range of languages and dialects. This approach allows for more accurate recognition of speech patterns, enabling the technology to understand and respond to voice commands more effectively. The system continuously improves as it processes more voice data, making technology more accessible to users worldwide.

  • Enhanced user interaction with technology in multiple languages.
  • Reduced language barriers in voice-activated services and devices.
  • AI can effectively bridge language gaps in technology.
  • Continuous learning from diverse data sets is key to improving voice recognition.

11. JP Morgan: Revolutionizing Legal Document Analysis with AI

Task/Conflict: Analyzing legal documents, such as contracts, is a time-consuming and error-prone process. JP Morgan sought to streamline this process, reducing the time and effort required while increasing accuracy.

Solution: JP Morgan implemented an AI-powered tool, COIN (Contract Intelligence), to analyze legal documents quickly and accurately. COIN uses NLP to interpret and extract relevant information from contracts, significantly reducing the time required for document review.

  • Dramatic reduction in time required for legal document analysis.
  • Increased accuracy and reduced human error in contract interpretation.
  • AI can efficiently handle large volumes of data, offering speed and accuracy.
  • Automation in legal processes can significantly enhance operational efficiency.

12. Microsoft: AI for Accessibility

Task/Conflict: People with disabilities often face challenges in accessing technology. Microsoft aimed to create AI-driven tools to enhance accessibility, especially for individuals with visual, hearing, or cognitive impairments.

Solution: Microsoft developed a range of AI-powered tools including applications for voice recognition, visual assistance, and cognitive support, making technology more accessible and user-friendly. For instance, Seeing AI, an app developed by Microsoft, helps visually impaired users to understand their surroundings by describing people, texts, and objects.

  • Improved accessibility and independence for people with disabilities.
  • Creation of more inclusive technology solutions.
  • AI can significantly contribute to making technology accessible for all.
  • Developing inclusive technology is essential for societal progress.

Related: How to get an Internship in AI?

13. Alibaba’s City Brain: Revolutionizing Urban Traffic Management

Task/Conflict: Urban traffic congestion is a major challenge in many cities, leading to inefficiencies and environmental concerns. Alibaba’s City Brain project aimed to address this issue by using AI to optimize traffic flow and improve public transportation in urban areas.

Solution: City Brain uses AI to analyze real-time data from traffic cameras, sensors, and GPS systems. It processes this information to predict traffic patterns and optimize traffic light timing, reducing congestion. The system also provides data-driven insights for urban planning and emergency response coordination, enhancing overall city management.

  • Significant reduction in traffic congestion and improved urban transportation.
  • Enhanced efficiency in city management and emergency response.
  • AI can effectively manage complex urban systems.
  • Data-driven solutions are key to improving urban living conditions.

14. Deep 6 AI: Accelerating Clinical Trials with Artificial Intelligence

Task/Conflict: Recruiting suitable patients for clinical trials is often a slow and cumbersome process, hindering medical research. Deep 6 AI sought to accelerate this process by quickly identifying eligible participants from a vast pool of patient data.

Solution: Deep 6 AI employs AI to sift through extensive medical records, identifying potential trial participants based on specific criteria. The system analyzes structured and unstructured data, including doctor’s notes and diagnostic reports, to find matches for clinical trials. This approach significantly speeds up the recruitment process, enabling faster trial completions and advancements in medical research.

  • Quicker recruitment for clinical trials, leading to faster research progress.
  • Enhanced efficiency in medical research and development.
  • AI can streamline the patient selection process for clinical trials.
  • Efficient recruitment is crucial for the advancement of medical research.

15. NVIDIA: Revolutionizing Gaming Graphics with AI

Task/Conflict: Enhancing the realism and performance of gaming graphics is a continuous challenge in the gaming industry. NVIDIA aimed to revolutionize gaming visuals by leveraging AI to create more realistic and immersive gaming experiences.

Solution: NVIDIA’s AI-driven graphic processing technologies, such as ray tracing and deep learning super sampling (DLSS), provide highly realistic and detailed graphics. These technologies use AI to render images more efficiently, improving game performance without compromising on visual quality. This innovation sets new standards in gaming graphics, making games more lifelike and engaging.

  • Elevated gaming experiences with state-of-the-art graphics.
  • Set new industry standards for graphic realism and performance.
  • AI can significantly enhance creative industries, like gaming.
  • Balancing performance and visual quality is key to gaming innovation.

16. Palantir: Mastering Data Integration and Analysis with AI

Task/Conflict: Integrating and analyzing large-scale, diverse datasets is a complex task, essential for informed decision-making in various sectors. Palantir Technologies faced the challenge of making sense of vast amounts of data to provide actionable insights for businesses and governments.

Solution: Palantir developed AI-powered platforms that integrate data from multiple sources, providing a comprehensive view of complex systems. These platforms use machine learning to analyze data, uncover patterns, and predict outcomes, assisting in strategic decision-making. This solution enables users to make informed decisions in real-time, based on a holistic understanding of their data.

  • Enhanced decision-making capabilities in complex environments.
  • Greater insights and efficiency in data analysis across sectors.
  • Effective data integration is crucial for comprehensive analysis.
  • AI-driven insights are essential for strategic decision-making.

Related: Surprising AI Facts & Statistics

17. Blue River Technology: Sowing the Seeds of AI in Agriculture

Task/Conflict: The agriculture industry faces challenges in increasing efficiency and sustainability while minimizing environmental impact. Blue River Technology aimed to enhance agricultural practices by using AI to make farming more precise and efficient.

Solution: Blue River Technology developed AI-driven agricultural robots that perform tasks like precise planting and weed control. These robots use ML to identify plants and make real-time decisions, such as applying herbicides only to weeds. This targeted approach reduces chemical usage and promotes sustainable farming practices, leading to better crop yields and environmental conservation.

  • Significant reduction in chemical usage in farming.
  • Increased crop yields through precision agriculture.
  • AI can contribute significantly to sustainable agricultural practices.
  • Precision farming is key to balancing productivity and environmental conservation.

18. Salesforce: Enhancing Customer Relationship Management with AI

Task/Conflict: In the realm of customer relationship management (CRM), personalizing interactions and gaining insights into customer behavior are crucial for business success. Salesforce aimed to enhance CRM capabilities by integrating AI to provide personalized customer experiences and actionable insights.

Solution: Salesforce incorporates AI-powered tools into its CRM platform, enabling businesses to personalize customer interactions, automate responses, and predict customer needs. These tools analyze customer data, providing insights that help businesses tailor their strategies and communications. The AI integration not only improves customer engagement but also streamlines sales and marketing efforts.

  • Improved customer engagement and satisfaction.
  • Increased business growth through tailored marketing and sales strategies.
  • AI-driven personalization is key to successful customer relationship management.
  • Leveraging AI for data insights can significantly impact business growth.

19. OpenAI: Transforming Natural Language Processing

Task/Conflict: OpenAI aimed to advance NLP by developing models capable of generating coherent and contextually relevant text, opening new possibilities in AI-human interaction.

Solution: OpenAI developed the Generative Pre-trained Transformer (GPT) models, which use deep learning to generate text that closely mimics human language. These models are trained on vast datasets, enabling them to understand context and generate responses in a conversational and coherent manner.

  • Pioneered advancements in natural language understanding and generation.
  • Expanded the possibilities for AI applications in communication.
  • AI’s ability to mimic human language has vast potential applications.
  • Advancements in NLP are crucial for improving AI-human interactions.

20. Siemens: Pioneering Industrial Automation with AI

Task/Conflict: Industrial automation seeks to improve productivity and efficiency in manufacturing processes. Siemens faced the challenge of optimizing these processes using AI to reduce downtime and enhance output quality.

Solution: Siemens employs AI-driven solutions for predictive maintenance and process optimization to reduce downtime in industrial settings. Additionally, AI optimizes manufacturing processes, ensuring quality and efficiency.

  • Increased productivity and reduced downtime in industrial operations.
  • Enhanced quality and efficiency in manufacturing processes.
  • AI is a key driver in the advancement of industrial automation.
  • Predictive analytics are crucial for maintaining efficiency in manufacturing.

Related: Top Books for Learning AI

Closing Thoughts

These 20 case studies illustrate the transformative power of AI across various industries. By addressing specific challenges and leveraging AI solutions, companies have achieved remarkable outcomes, from enhancing customer experiences to solving complex scientific problems. The key learnings from these cases underscore AI’s potential to revolutionize industries, improve efficiencies, and open up new possibilities for innovation and growth.

  • 6 Ways to Pay for an Online Course [2024]
  • How to Choose an Online Course? [An Ultimate Checklist] [2024]

Team DigitalDefynd

We help you find the best courses, certifications, and tutorials online. Hundreds of experts come together to handpick these recommendations based on decades of collective experience. So far we have served 4 Million+ satisfied learners and counting.

case study on artificial intelligence pdf

Generative AI Benefits, Applications, & Challenges [2024]

case study on artificial intelligence pdf

Career in AI vs Cybersecurity: Which is Better? [2024]

case study on artificial intelligence pdf

10 Ways AI can be used in Instagram Marketing [2024]

case study on artificial intelligence pdf

How Can a CFO Use ChatGPT? [2024]

case study on artificial intelligence pdf

AI Investments in Europe [Scope & Growth][2024]

case study on artificial intelligence pdf

How to Become an AI Thought Leader [2024]

Academia.edu no longer supports Internet Explorer.

To browse Academia.edu and the wider internet faster and more securely, please take a few seconds to  upgrade your browser .

Enter the email address you signed up with and we'll email you a reset link.

  • We're Hiring!
  • Help Center

paper cover thumbnail

A Case Study of Artificial Intelligence is being used to Reshape Business

Profile image of IJAERS Journal

AI is one of the emerging technologies with such a long record which is constantly changing and growing in the corporate world. We will explain the modern AI basics and various aspects, applications of AI, and its future in business throughout this paper. Many businesses benefit from AI technology by lowering operational expenses, improving efficiency, and expanding the customer base. AI is made up of a variety of tools that allow computers to process massive amounts of data using smart technologies such as machine learning and natural language processing. Many customers now value AIpowered everyday technologies such as credit card fraud detection, e-mail spam filters, and predictive traffic alerts. The field of artificial intelligence is shifting toward developing intelligent systems that can effectively collaborate with people, including innovative ways to develop interactive and scalable ways for people to teach robots. The Vehicle Integrated Artificial Intelligence System is the focus of this paper.

Related Papers

IJARIIT, volume-5, issue-3

ashish tripathi , Ashish Tripathi , Reeta Thakur

AI is one of the emerging technologies that have a very long history which is constantly changing and growing in the field of business. In this paper, we will explain the modern AI basics and various aspects, applications of AI and its future in business. AI technology helps in many businesses by reducing operational cost, increase efficiency and improve customer experience. AI comprises of multiple tools that are having the ability to process huge amounts of data by computers with the help of smart technologies like machine learning, natural language processing. Nowadays many customers are also appreciating most of the AI-driven everyday technologies like credit card fraud detection, e-mail spam filters and predictive traffic alerts. The field of AI is shifting toward building intelligent systems that can collaborate effectively with people, including creative ways to develop interactive and scalable ways for people to teach robots. This paper is focusing on the Vehicle Integrated Artificial Intelligence System (VIAIS).

case study on artificial intelligence pdf

Dr.Sharif Uddin Ahmed Rana

Artificial Intelligence (AI) has become a critical technology in business. It has the potential to improve business efficiency, reduce costs, and enhance customer experience. However, businesses face various challenges in implementing AI, such as data privacy concerns, lack of skills, and regulatory issues. This research proposal aims to study the benefits, challenges, and future prospects of AI application in business. The research will be conducted using a mixed-methods approach, including a survey questionnaire and interviews. The expected outcomes of the study are a comprehensive understanding of the benefits and challenges of AI application in business, identification of the factors that affect the implementation of AI in business and an analysis of the future prospects of AI application in business. The findings of the study will be beneficial to businesses that are considering implementing AI and policymakers who are responsible for regulating the use of AI.

Journal of Engineering Research and Reports

JASMIN BHARADIYA

The ongoing development of business and the most recent advances in artificial intelligence (AI) allow for the many business practices to be improved by the capacity to establish new forms of collaboration, which is a significant competitive advantage. This rapidly developing technology enables to offer brand services and even some new forms of business interactions with consumers and personnel. The digitalization of AI concurrently emphasized for businesses that they need concentrate on their present strategies while also routinely and early pursuing new chances in the market. Not only in business but also in different industry sectors, Al techniques are being used and revolutionized different industry sectors. This review focuses on the application of AI techniques in business and different industries.

IAEME PUBLICATION

IAEME Publication

Speed and quality are the mantras for today’s business world and Artificial Intelligence has marked as significant game-changer in these in all business organizations. As businesses are becoming global and the future is more of machinebased work than human-based. Irrespective of the business volume, the new culture to adapt to AI machinery is a prominent need than a comfort. The trend is challenging the change itself. AI plays a significant role and becomes mandatory in business sustainability. Many of the businesses have become early adopters of AI and making the transactions esp. the customer service with FAQ at the top most importance. Every department in the business organization tries to implement and become best service providers for their customer questions. In this paper, the effect of AI in the business organizations and how the individual departments benefit from it is discussed and explained

International Journal of Engineering Research and Advanced Technology (IJERAT)

Editor Ijasre , Sarhan M. Musa

Artificial intelligence (AI) is a field of computer science that is dedicated to developing software dealing with intelligent decisions, reasoning, and problem solving. Artificial intelligence is already part of our lives, slowly shaping our society and business. It is everywhere, in on your smartphones, laptops, and cars. AI can increase productivity, gain competitive advantage, compliment human intelligence. and reduce cost of operations. Businesses of all types and sizes are considering artificial intelligence to solve their problems. The scope of AI in business transformation is constantly growing. This paper provides an introduction on the applications of AI in business.

RESEARCH REVIEW International Journal of Multidisciplinary

The development of Artificial Intelligence is speeding up rapidly and combination of Artificial Intelligence with automation has started to change the business landscape. Companies and business are focusing on applying existing Artificial Intelligence with automation processes to gain the new heights of efficiency and quality. The paper depicts about artificial intelligence and automation, and it tries to demonstrate the audience how both Artificial intelligence and automation are related and how they can be more effective when they work together and can give competitive advantage.

International Journal of Computer Trends and Technology (IJCTT)

sikender mohsienuddin mohammad

Artificial intelligence, commonly referred to as AI, has, in recent years, transformed the nature of human life in almost every aspect that is connected to human life. The aspects include economic status, job creation, and employment, communication, war, security, privacy, and healthcare. The long term evolution of AI is yet to be seen if it will lead humanity in making the world a better place for living in or a disastrous place. For every technology to survive in the market, the advantages must outdo the disadvantages since every technology has its advantages and disadvantages. In artificial intelligence, since we have not yet reached the long term evolution, we are, however, to see if it will have an impact on the positive effects than the adverse effects. In the world today, we are surrounded by technology in every aspect of life, and we seem to embrace them starting from the aspect of healthcare, industries, smart homes, and even cars that are autonomous. On the negative side, the technology seems to take away jobs from many individuals who are tot intellect on matters technology hence creating the context of unemployment. As technology is advancing quickly, robots and autonomous systems are developed and born daily, therefore replacing the labor provided by humans. However, this being the current situation generated by technology, the exciting parts are brought by the system's long term results which tend to be very fulfilling to the human life. Throughout this essay, I will address the Artificial Intelligence starting from its development to the current situation, including its significance in human life in both the positive aspects and negative aspects of life.

David George

Written for business leaders and general management the observations and discussion points in the main body of the article are non-technical and provide insights informing the reader about some of the business applications of Applied Artificial Intelligence (AI) and the on-going research into the more ambitious Artificial General Intelligence (AGI). The AI technology space is poised for significant growth as robust and proven solutions emerge from academia and private development laboratories. AI is becoming pervasive as the high-tech industry invests increasingly significant funds to develop and incorporate it as component parts of their consumer and other business offerings as the means of making products and services ‘smarter’. There will be an impact on how individuals, business, and societies operate and interact with each other. How we utilise computers and other increasingly intelligent products and automated online Ecommerce services will change. Our purchasing behaviour will be transformed as a direct result of new methods used to target and influence how we choose and make buying decisions. The longer-term research goals of attaining human-like cognitive abilities are far reaching, complex, complicated, and extremely challenging; indeed some of the goals may never be achieved. There are implications, and some difficult questions will require considered answers. However, given today’s economic circumstances and the corresponding demands on business, AI provides tools to create opportunities supporting increased business process efficacy, product and service level enhancements, differentiation, and can assist business with gaining and maintaining a necessary competitive advantage in a relatively uncertain and dynamic future.

Knowledge Engineering Review

David Gross

In today's rapidly evolving technological landscape, Artificial Intelligence (AI) stands as a formidable force driving innovation and progress across various sectors. This research paper explores the multifaceted role of AI in reshaping industries, enhancing human capabilities, and pushing the boundaries of what is possible. Through an examination of real-world applications, challenges, and future prospects, we uncover the profound impact of AI on our world.

Case Studies

Princeton Dialogues on AI and Ethics Case Studies

The development of artificial intelligence (AI) systems and their deployment in society gives rise to ethical dilemmas and hard questions. By situating ethical considerations in terms of real-world scenarios, case studies facilitate in-depth and multi-faceted explorations of complex philosophical questions about what is right, good and feasible. Case studies provide a useful jumping-off point for considering the various moral and practical trade-offs inherent in the study of practical ethics.

Case Study PDFs : The Princeton Dialogues on AI and Ethics has released six long-format case studies exploring issues at the intersection of AI, ethics and society. Three additional case studies are scheduled for release in spring 2019.

Methodology : The Princeton Dialogues on AI and Ethics case studies are unique in their adherence to five guiding principles: 1) empirical foundations, 2) broad accessibility, 3) interactiveness, 4) multiple viewpoints and 5) depth over brevity.

  • Study Guides
  • Homework Questions

Tutorial Case Analysis 7

  • Information Systems

IMAGES

  1. (PDF) A Case Study of Artificial Intelligence is being used to Reshape

    case study on artificial intelligence pdf

  2. (PDF) A Short Review of Artificial Intelligence

    case study on artificial intelligence pdf

  3. What is Artificial Intelligence: English ESL worksheets pdf & doc

    case study on artificial intelligence pdf

  4. (PDF) The Road to Enterprise Artificial Intelligence: A Case Studies

    case study on artificial intelligence pdf

  5. (PDF) A Study on Artificial Intelligence Technologies and its

    case study on artificial intelligence pdf

  6. (PDF) The role of artificial intelligence in healthcare: a structured

    case study on artificial intelligence pdf

VIDEO

  1. A level Computer Science 9618 Paper 3- ARTIFICIAL INTELLIGENCE

  2. AI Inception 🤯 New Revolutionary AI from Stanford

  3. Study at UTN

  4. Lecture

  5. Part 1: Foundations of Artificial Intelligence (AI)

  6. Why you should study artificial intelligence

COMMENTS

  1. (PDF) AI in Industry: Real-World Applications and Case Studies

    Abstract — Artificial intelligence (AI) has advanced rapidly and is becoming a cornerstone. technology that drives innovation and efficiency in various industries. This paper examines. the real ...

  2. PDF ARTIFICIAL INTELLIGENCE IN THE REAL WORLD

    Case study 1: Algorithms for your evening wear 9 2. Hopes and expectations 10 The shape of returns to come 11 Artificially intelligent decisions 11 Case study 2: Creating a new healthcare market with AI 12 Case study 3: AI in financial markets: Risk agent or risk minimiser? 14 Case study 4: Ocado's "flying swarms of intelligent robots" 15 3.

  3. PDF CASE STUDY 5 ways artificial intelligence is transforming healthcare

    Case study: 5 ways artificial intelligence is transforming healthcare 4 of 5 The first trial of GI Genius™ in the United States demonstrated how the technology is having a profound impact on physicians' ability to find precancerous polyps during a colonoscopy. The study, published in Gastroenterology, the

  4. PDF A Case Study of Artificial Intelligence is being used to Reshape Business

    Artificial intelligence is a field of study that describes the ability of machines to learn like humans and to respond to specific behaviors, also known as (A.I.) The intelligence displayed by machines or software is referred to as artificial intelligence. McCarthy coined the term in 1956.

  5. (PDF) Ethics of Artificial Intelligence: Case Studies and Options for

    PDF | On Jan 1, 2023, Bernd Carsten Stahl and others published Ethics of Artificial Intelligence: Case Studies and Options for Addressing Ethical Challenges | Find, read and cite all the research ...

  6. (PDF) A Case Study Based On Developing Human Artificial Intelligence

    The method is specially designed for the integration of human. aspects and artificial intelligence, so that it leads to the development of human-machine. cooperation. Two case studies are pre ...

  7. Case Studies of Real AI Applications

    The chapter presents several 'Cases of AI Use and Applications in every industry and business functions; putting artificial intelligence to work', evaluating and implementing business applications: Customer service, Consumer: Marketing and sales, Energy, resources and industries, Financial services and FinTech, Government and Public ...

  8. PDF Artificial Intelligence in Action

    Artificial Intelligence in New Zealand: Case Studies Summary . Monica Collier . July 2019 . ... IDC interviewed New Zealand AI vendors and end-user organisations for case studies for the following use cases: July 2019, AI Forum, CASE STUDY SUMMARY | 2 Digital Humans. FaceMe is a digital human platform that uses AI to create a natural humanlike ...

  9. PDF Notes From the Ai Frontier Insights From Hundreds of Use Cases

    experience with artificial intelligence (AI) of McKinsey Analytics, we assess both the practical applications and the economic potential of advanced AI techniques across industries and business functions. We continue to study these AI techniques and additional use cases. For now, here are our key findings:

  10. Research and Practice of AI Ethics: A Case Study Approach ...

    This study investigates the ethical use of Big Data and Artificial Intelligence (AI) technologies (BD + AI)—using an empirical approach. The paper categorises the current literature and presents a multi-case study of 'on-the-ground' ethical issues that uses qualitative tools to analyse findings from ten targeted case-studies from a range of domains. The analysis coalesces identified singular ...

  11. PDF Artificial Intelligence Use Cases and Best Practices for Marketing

    ARTIFICIAL INTLLIGNC US CASS AND BST PRACTICS FR MARKTING 2 Introduction: This Report in Context Data. It's the lifeblood of digital marketing — so it should come as no surprise that artificial intelligence (AI) and machine learning (ML) are an essential part of a modern marketer's toolkit. During the past few years,

  12. Artificial intelligence test: a case study of intelligent vehicles

    Artificial intelligence test: a case study of intelligent. vehicles. Li Li 1·Yi-Lun Lin2,5·Nan-Ning Zheng3·Fei-Yue Wang2,5·Yu e h u Liu3·. Dongpu Cao 4,6·Kunfeng Wang2·Wu-Ling Huang2 ...

  13. AI in Software Engineering: Case Studies and Prospects

    Artificial intelligence (AI) and software engineering (SE) are two important areas in computer science. In recent years, researchers are trying to apply AI techniques in various stages of software development to improve the overall quality of software products. Moreover, there are also some researchers focus on the intersection between SE and AI. In fact, the relationship between SE and AI is ...

  14. 20 Detailed Artificial Intelligence Case Studies [2024]

    20 Detailed Artificial Intelligence Case Studies [2024] Team DigitalDefynd. In this dynamic era of technological advancements, Artificial Intelligence (AI) emerges as a pivotal force, reshaping the way industries operate and charting new courses for business innovation. This article presents an in-depth exploration of 20 diverse and compelling ...

  15. (PDF) A Case Study of Artificial Intelligence is being used to Reshape

    A Case Study of Artificial Intelligence is being used to Reshape Business input and output, respectively. (iii) Expert System (ES)An expert system (ES) is a type of advanced human intelligence and expertise that solves complex problems and issues in a specific domain such as medicine, science, engineering, and so on.

  16. Case Studies

    The development of artificial intelligence (AI) systems and their deployment in society gives rise to ethical dilemmas and hard questions. By situating ethical considerations in terms of real-world scenarios, case studies facilitate in-depth and multi-faceted explorations of complex philosophical questions about what is right, good and feasible ...

  17. (PDF) Integration of Artificial Intelligence in Academia: A Case Study

    This study scrutinizes the role of AI literacy and ChatGPT-3 in enhancing critical reasoning and journalistic writing competencies among 50 third-term journalism students at Tajik National University.

  18. PDF Ethics of Artificial Intelligence

    or emerging topic, an in-depth case study or technical example, a presentation of core concepts that students and practitioners must understand in order to make inde-pendent contributions, best practices or protocols to be followed, a series of short case studies/debates highlighting a specific angle.

  19. Case Study Artificial Intelligence 7

    Case Study Artificial Intelligence 7 - Free download as Word Doc (.doc / .docx), PDF File (.pdf), Text File (.txt) or read online for free. Artificial Intelligence (AI) is the key technology in many of today's novel applications. Federal support of fundamental AI research over the past three decades has made it possible. Federally-funded research points towards even more impressive future ...

  20. An Overview of Artificial Intelligence in Automobile Industry -A Case

    publication in the international journal, newspaper articles and a few other sources. Limitation: This study is limited for case study on tesla cars and use of AI. Solid State Technology. Volume ...

  21. Tutorial Case Analysis 7 (pdf)

    Information Systems. Case Analysis 7 1. What are some of the challenges brought up by too much reliance on Artificial Intelligence? One of the primary concerns is the lack of human decision-making skills. As more tasks are performed by AI, it may reduce critical thinking, nuanced judgments, and problem-solving capacities. Too much reliance on ...

  22. Amazon's Artificial Intelligence in Retail Novelty

    The primary goal of artificial intelligence (AI) is to give computers the ability to do intellectual tasks such as making decisions, solving problems, seeing their surroundings, and understanding ...

  23. (Pdf) the Impact of Artificial Intelligence on Accounting Practices

    This study delves into the integration of Artificial Intelligence (AI) and Machine Learning (ML) in financial forecasting within the United States, aiming to uncover the advancements, challenges ...