SlideShare a Scribd company logo
AI and Data Science
Revolutionizing Industries and Shaping the Future
Mohammad Ansari
https://www.linkedin.com/in/mcubea/
Historical advancements in AI
Alan Turing publishes
"Computing Machinery and
Intelligence," which
proposes the Turing Test.
1950
Allen Newell and Herbert A.
Simon develop Logic
Theorist, the first AI
program to prove
mathematical theorems.
1955
Joseph Weizenbaum
develops ELIZA, the first AI
program to simulate a
Rogerian therapist.
1966
Shakey, the first mobile
robot that could reason
about its environment and
make plans, is developed.
1969
The first expert system,
MYCIN, is developed.
1985
IBM's Deep Blue defeats
chess grandmaster Garry
Kasparov.
1997
Google's DeepMind
program defeats Go
champion Lee Sedol.
2011
OpenAI's Dactyl robot learns
to manipulate objects with
2022
Generative AI is a type of artificial
intelligence (AI) that can create
new content, such as text, images,
or music.
Content creation
New text, images,
or music to
generate new
product
descriptions,
create marketing
materials, or even
write music.
Data
augmentation
Augment existing
datasets. Increase
the size of a
dataset, or to add
new data points
that are similar to
the existing data.
Data analysis
Analyse data and
identify patterns
that would be
difficult to see
with traditional
methods. This
could be used to
identify trends in
customer
behaviour, or to
detect fraud.
Artificial creativity
New forms of art,
such as paintings,
sculptures, or
music. This could
lead to new forms
of expression and
new ways of
interacting with
the world around
us.
Generative AI - The Game Changer
Success Now
Increased Computational
Power
•GPUs (Graphics Processing Units)
and TPUs (Tensor Processing Units
Big Data and Data
Availability
•The abundance of data in various
domains
Advancements in Deep
Learning
•Generative Adversarial Networks
(GANs) and Variational
Autoencoders (VAEs),
Transfer Learning and
Pre-trained Models
•The development and dissemination
of pre-trained models
Research Community and
Open Source Initiatives
•Fostered collaboration and
knowledge sharing..
Industry Applications and
Commercial Success
•Demonstrated success and real-
world applications of generative AI
in various industries.
Generative AI
Competitions and
Challenges
•Public competitions and challenges,
like the ImageNet Large Scale Visual
Recognition Challenge (ILSVRC
Investments in AI
Research
•Governments, tech companies, and
research institutions have made
substantial investments.
Availability of AI Tools
and Frameworks
•The availability of user-friendly AI
tools and frameworks, such as
TensorFlow, PyTorch, and Keras,
Demand for
Personalization and
Creativity
•The increasing demand for
personalized experiences and
creative content in various industries
Research Papers
Generative
Adversarial Nets"
(GANs):
Unique approach for
training generative
models using two neural
networks: a generator
that produces data
samples and a
discriminator that
distinguishes real data
from fake data
Improving Language
Understanding by
Generative Pre-
Training" (GPT):
Transformer-based
language model pre-
trained on a vast amount
of text using unsupervised
learning, resulting in
enhanced language
understanding and better
performance on various
tasks
Attention is All You
Need" (Transformer)
Transformer model, a
neural network
architecture that relies
solely on self-attention
mechanisms, achieving
state-of-the-art
performance in natural
language processing tasks
A Style-Based
Generator
Architecture for
Generative
Adversarial
Networks" (StyleGAN)
Introduces a novel
generator architecture for
GANs called StyleGAN,
allowing better control
and manipulation of
image generation by
separating the model's
latent space into different
style and content
representations
ClipGPT: Connecting
Text and Images using
Contrastive Learning
Leverages contrastive
learning to establish a
connection between text
and images, enabling
improved performance on
various vision-language
tasks
DALL·E: Creating
Images from Text
A powerful generative
model capable of creating
images from textual
descriptions, generating
diverse and creative visual
content
Foundation
Models
•This generative AI model can create images from text
descriptions. For example, you could ask it to create
an image of a cat wearing a hat, or a painting of a
beach scene at sunset.
DALL-E 2
•This generative AI model can generate text that is
indistinguishable from human-written text. For
example, you could ask it to write a poem, or a news
article.
GPT-3
•This generative AI model can create music that is
similar to the work of specific artists. For example, you
could ask it to create a song that sounds like a Beatles
song, or a symphony that sounds like Beethoven.
MuSig
Adoption
Cost-Effective Product Development
Simplifying Life in the Community
Solving Previously Unsolvable Problems
Enhancing Creativity and Innovation
Personalization and Customer Engagement
Faster Time-to-Market
Optimal Resource Allocation
Addressing Skill Gaps
Environmental Impact
Age of Co-Pilots
GitHub Copilot
Code completion
Boilerplate code
Entire functions
Natural language prompts
Code review
Office Copilot
Real-time Assistance
Task Automation
Collaboration and Knowledge
sharing
Personalized Assistance
Sales Copilot
Identify relevant information from
CRM
Summarizes cases and
conversations
Draft chat responses
Manufacturi
ng and
Supply Chain
•Unplanned downtime and equipment failures
•AI solution: Predictive maintenance models using
sensor data for proactive maintenance, reducing
downtime and costs
Predictive
Maintenance
•Complex supply chain networks and inventory
management challenges
•AI solution: AI algorithms for demand forecasting,
optimizing inventory levels, and improving logistics
efficiency
Supply Chain
Optimization
•Manual inspection and high error rates
•AI solution: Computer vision systems for automated
quality control, ensuring consistent product quality
and reducing defects
Quality
Control
Finance and
Banking
•Rising complexity and sophistication of financial
fraud
•AI solution: AI models for real-time fraud detection,
pattern recognition, and anomaly detection
Fraud
Detection and
Prevention
•Managing complex financial risks
•AI solution: AI algorithms for risk assessment and
mitigation, optimizing portfolio management
Risk
Management
•Long wait times and inefficient customer service
processes
•AI solution: AI-powered chatbots for instant
customer support and personalized assistance
Customer
Service
Efficiency
Retail and E-
commerce
•Difficulty in understanding customer preferences
and delivering personalized experiences
•AI solution: AI algorithms for customer
segmentation and recommendation systems,
enhancing customer satisfaction and engagement
Segmentation and
Personalized
Recommendations
•Inventory stockouts or excess inventory,
suboptimal pricing strategies
•AI solution: AI-powered algorithms for inventory
management and dynamic pricing, optimizing
stock levels and pricing strategies
Inventory
Management and
Pricing
Optimization
•Limitations of traditional shopping experiences
•AI solution: Virtual try-on and augmented reality
technologies for enhanced shopping experiences,
increasing customer engagement and sales
Virtual Try-On and
Augmented Reality
in Shopping
Health Care
•Limited availability of expert radiologists
•AI solution: AI algorithms for automated image
analysis, improving accuracy and efficiency
Medical
Imaging
Analysis
•Human error and misdiagnosis rates
•AI solution: Machine Learning models for accurate
disease diagnosis and prediction based on patient
data
Disease
Diagnosis and
Prediction
•One-size-fits-all treatment approaches
•AI solution: AI-powered algorithms for precision
medicine, considering individual patient
characteristics for tailored treatment plans
Personalized
Medicine
AI is here to stay and make a big impact
Percentage budget spent on AI in each segment, according to
IDC:
• Manufacturing: 18.8%
• Healthcare: 17.1%
• Financial services: 15.1%
• Retail: 12.9%
• Telecom: 11.2%
• Logistics: 10.3%
• Others: 14.6%
These percentages are based on the global spending on AI in
2023, which is estimated to be $154 billion
Challenges
Job Displacement
Bias and Fairness Issues
Privacy and Security Concerns.
Lack of Accountability
Ethical Dilemmas
Social Isolation
Economic Inequality
Reliance on AI Accuracy
Disinformation and Manipulation
Unemployment and Skills Gap
What’s next ?
• Quantum
Computation and AI
•Integer factorization, which is the process of finding
the prime factors of a large composite number for RSA
Factorization
•Salesman problem and portfolio optimization.
Optimization
•Quantum computers can naturally model quantum
systems
Simulation of
quantum systems
•Quantum support vector machines and quantum
neural networks.
Machine learning
•Quantum cryptography, such as quantum key
distribution, can offer enhanced security solutions.
Cryptography
•Quantum algorithms like Grover's algorithm can
significantly speed up searching in unsorted databases
Database search
Summary
AI Revolution Rapid advancements in Artificial Intelligence (AI) are disrupting
industries across the globe
Automation
and Job
Transformation
AI-driven automation is streamlining tasks, leading to increased
efficiency, cost savings, and enhanced productivity.
Personalization
and Customer
Experience
AI enables personalized experiences, tailored
recommendations, and improved customer service
Healthcare
Revolution
AI is poised to revolutionize healthcare with improved
diagnostics, drug discovery, and personalized treatment plans
Ethical and
Regulatory
Challenges
As AI becomes more pervasive, concerns about data privacy,
bias, and ethical implications emerge.
Limitless
Possibilities
The future holds immense potential for AI to transform
transportation, education, energy, and environmental sectors,
with autonomous vehicles
Questions

More Related Content

What's hot

[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...
[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...
[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...
DataScienceConferenc1
 
History of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective TrajectoriesHistory of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective Trajectories
Giovanni Sileno
 
Generative AI and law.pptx
Generative AI and law.pptxGenerative AI and law.pptx
Generative AI and law.pptx
Chris Marsden
 
Artificial intelligence
Artificial intelligenceArtificial intelligence
Artificial intelligence
gayathrysatheesan1
 
Generative AI at the edge.pdf
Generative AI at the edge.pdfGenerative AI at the edge.pdf
Generative AI at the edge.pdf
Qualcomm Research
 
Machine Learning and Artificial Intelligence
Machine Learning and Artificial IntelligenceMachine Learning and Artificial Intelligence
Machine Learning and Artificial Intelligence
Extentia Information Technology
 
Big Data
Big DataBig Data
Big Data
Seminar Links
 
Generative AI
Generative AIGenerative AI
Generative AI
Carlos J. Costa
 
Harry Surden - Artificial Intelligence and Law Overview
Harry Surden - Artificial Intelligence and Law OverviewHarry Surden - Artificial Intelligence and Law Overview
Harry Surden - Artificial Intelligence and Law Overview
Harry Surden
 
Deep Learning - The Past, Present and Future of Artificial Intelligence
Deep Learning - The Past, Present and Future of Artificial IntelligenceDeep Learning - The Past, Present and Future of Artificial Intelligence
Deep Learning - The Past, Present and Future of Artificial Intelligence
Lukas Masuch
 
Introduction to AI & ML
Introduction to AI & MLIntroduction to AI & ML
Introduction to AI & ML
Mandy Sidana
 
Ethics and AI
Ethics and AIEthics and AI
Unlocking the Power of Generative AI An Executive's Guide.pdf
Unlocking the Power of Generative AI An Executive's Guide.pdfUnlocking the Power of Generative AI An Executive's Guide.pdf
Unlocking the Power of Generative AI An Executive's Guide.pdf
PremNaraindas1
 
AI 2023.pdf
AI 2023.pdfAI 2023.pdf
AI 2023.pdf
DavidCieslak4
 
Introduction to AI with Business Use Cases
Introduction to AI with Business Use CasesIntroduction to AI with Business Use Cases
Introduction to AI with Business Use Cases
Jack C Crawford
 
Artificial Intelligence Introduction & Business usecases
Artificial Intelligence Introduction & Business usecasesArtificial Intelligence Introduction & Business usecases
Artificial Intelligence Introduction & Business usecases
Vikas Jain
 
The Top Trends in Artificial Intelligence
The Top Trends in Artificial IntelligenceThe Top Trends in Artificial Intelligence
The Top Trends in Artificial Intelligence
Erling Hesselberg
 
What is Big Data?
What is Big Data?What is Big Data?
What is Big Data?
Bernard Marr
 
Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...
Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...
Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...
SlideTeam
 
Artificial intelligence in practice- part-1
Artificial intelligence in practice- part-1Artificial intelligence in practice- part-1
Artificial intelligence in practice- part-1
GMR Group
 

What's hot (20)

[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...
[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...
[DSC DACH 23] ChatGPT and Beyond: How generative AI is Changing the way peopl...
 
History of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective TrajectoriesHistory of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective Trajectories
 
Generative AI and law.pptx
Generative AI and law.pptxGenerative AI and law.pptx
Generative AI and law.pptx
 
Artificial intelligence
Artificial intelligenceArtificial intelligence
Artificial intelligence
 
Generative AI at the edge.pdf
Generative AI at the edge.pdfGenerative AI at the edge.pdf
Generative AI at the edge.pdf
 
Machine Learning and Artificial Intelligence
Machine Learning and Artificial IntelligenceMachine Learning and Artificial Intelligence
Machine Learning and Artificial Intelligence
 
Big Data
Big DataBig Data
Big Data
 
Generative AI
Generative AIGenerative AI
Generative AI
 
Harry Surden - Artificial Intelligence and Law Overview
Harry Surden - Artificial Intelligence and Law OverviewHarry Surden - Artificial Intelligence and Law Overview
Harry Surden - Artificial Intelligence and Law Overview
 
Deep Learning - The Past, Present and Future of Artificial Intelligence
Deep Learning - The Past, Present and Future of Artificial IntelligenceDeep Learning - The Past, Present and Future of Artificial Intelligence
Deep Learning - The Past, Present and Future of Artificial Intelligence
 
Introduction to AI & ML
Introduction to AI & MLIntroduction to AI & ML
Introduction to AI & ML
 
Ethics and AI
Ethics and AIEthics and AI
Ethics and AI
 
Unlocking the Power of Generative AI An Executive's Guide.pdf
Unlocking the Power of Generative AI An Executive's Guide.pdfUnlocking the Power of Generative AI An Executive's Guide.pdf
Unlocking the Power of Generative AI An Executive's Guide.pdf
 
AI 2023.pdf
AI 2023.pdfAI 2023.pdf
AI 2023.pdf
 
Introduction to AI with Business Use Cases
Introduction to AI with Business Use CasesIntroduction to AI with Business Use Cases
Introduction to AI with Business Use Cases
 
Artificial Intelligence Introduction & Business usecases
Artificial Intelligence Introduction & Business usecasesArtificial Intelligence Introduction & Business usecases
Artificial Intelligence Introduction & Business usecases
 
The Top Trends in Artificial Intelligence
The Top Trends in Artificial IntelligenceThe Top Trends in Artificial Intelligence
The Top Trends in Artificial Intelligence
 
What is Big Data?
What is Big Data?What is Big Data?
What is Big Data?
 
Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...
Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...
Artificial Intelligence Machine Learning Deep Learning PPT PowerPoint Present...
 
Artificial intelligence in practice- part-1
Artificial intelligence in practice- part-1Artificial intelligence in practice- part-1
Artificial intelligence in practice- part-1
 

Similar to AI and Data Science.pdf

An Elementary Introduction to Artificial Intelligence, Data Science and Machi...
An Elementary Introduction to Artificial Intelligence, Data Science and Machi...An Elementary Introduction to Artificial Intelligence, Data Science and Machi...
An Elementary Introduction to Artificial Intelligence, Data Science and Machi...
Dozie Agbo
 
Workshop_Presentation.pptx
Workshop_Presentation.pptxWorkshop_Presentation.pptx
Workshop_Presentation.pptx
RUDRAPRASADSABAR
 
The AI Powered Organization-Intro to AI-LAN.pdf
The AI Powered Organization-Intro to AI-LAN.pdfThe AI Powered Organization-Intro to AI-LAN.pdf
The AI Powered Organization-Intro to AI-LAN.pdf
SiskaFitrianingrum
 
Functionalities in AI Applications and Use Cases (OECD)
Functionalities in AI Applications and Use Cases (OECD)Functionalities in AI Applications and Use Cases (OECD)
Functionalities in AI Applications and Use Cases (OECD)
AnandSRao1962
 
[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...
[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...
[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...
DataScienceConferenc1
 
Artificial intelligence
Artificial intelligenceArtificial intelligence
Artificial intelligence
Med Yassine Hachami
 
Cognitive technologies with David Schatsky at Blocks + Bots
Cognitive technologies with David Schatsky at Blocks + BotsCognitive technologies with David Schatsky at Blocks + Bots
Cognitive technologies with David Schatsky at Blocks + Bots
Adrienne Debigare
 
The UAE AI Strategy: Building Intelligent Enterprises
The UAE AI Strategy: Building Intelligent EnterprisesThe UAE AI Strategy: Building Intelligent Enterprises
The UAE AI Strategy: Building Intelligent Enterprises
Saeed Al Dhaheri
 
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
NUS-ISS
 
Artificial Intelligence Primer
Artificial Intelligence PrimerArtificial Intelligence Primer
Artificial Intelligence Primer
Imam Hoque
 
Career options in Artificial Intelligence : 2020
Career options in Artificial Intelligence : 2020Career options in Artificial Intelligence : 2020
Career options in Artificial Intelligence : 2020
Venkatarangan Thirumalai
 
Artificial Intelligence (2016) - AMP New Ventures
Artificial Intelligence (2016) - AMP New VenturesArtificial Intelligence (2016) - AMP New Ventures
Artificial Intelligence (2016) - AMP New Ventures
AMP New Ventures
 
inte
inteinte
Presentation v3
Presentation v3Presentation v3
Presentation v3
Muhammad AL-Qurishi
 
The A_Z of Artificial Intelligence Types and Principles_1687569150.pdf
The  A_Z of Artificial Intelligence Types and Principles_1687569150.pdfThe  A_Z of Artificial Intelligence Types and Principles_1687569150.pdf
The A_Z of Artificial Intelligence Types and Principles_1687569150.pdf
ssuseredfe14
 
Semantic AI
Semantic AISemantic AI
Algorithm Marketplace and the new "Algorithm Economy"
Algorithm Marketplace and the new "Algorithm Economy"Algorithm Marketplace and the new "Algorithm Economy"
Algorithm Marketplace and the new "Algorithm Economy"
Diego Oppenheimer
 
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
StampedeCon
 
Gen AI_Object Automation_TechnologyWorkshop
Gen AI_Object Automation_TechnologyWorkshopGen AI_Object Automation_TechnologyWorkshop
Gen AI_Object Automation_TechnologyWorkshop
Object Automation
 
Intro to machine learning
Intro to machine learningIntro to machine learning
Intro to machine learning
Tamir Taha
 

Similar to AI and Data Science.pdf (20)

An Elementary Introduction to Artificial Intelligence, Data Science and Machi...
An Elementary Introduction to Artificial Intelligence, Data Science and Machi...An Elementary Introduction to Artificial Intelligence, Data Science and Machi...
An Elementary Introduction to Artificial Intelligence, Data Science and Machi...
 
Workshop_Presentation.pptx
Workshop_Presentation.pptxWorkshop_Presentation.pptx
Workshop_Presentation.pptx
 
The AI Powered Organization-Intro to AI-LAN.pdf
The AI Powered Organization-Intro to AI-LAN.pdfThe AI Powered Organization-Intro to AI-LAN.pdf
The AI Powered Organization-Intro to AI-LAN.pdf
 
Functionalities in AI Applications and Use Cases (OECD)
Functionalities in AI Applications and Use Cases (OECD)Functionalities in AI Applications and Use Cases (OECD)
Functionalities in AI Applications and Use Cases (OECD)
 
[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...
[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...
[DSC Europe 22] On the Aspects of Artificial Intelligence and Robotic Autonom...
 
Artificial intelligence
Artificial intelligenceArtificial intelligence
Artificial intelligence
 
Cognitive technologies with David Schatsky at Blocks + Bots
Cognitive technologies with David Schatsky at Blocks + BotsCognitive technologies with David Schatsky at Blocks + Bots
Cognitive technologies with David Schatsky at Blocks + Bots
 
The UAE AI Strategy: Building Intelligent Enterprises
The UAE AI Strategy: Building Intelligent EnterprisesThe UAE AI Strategy: Building Intelligent Enterprises
The UAE AI Strategy: Building Intelligent Enterprises
 
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
SkillsFuture Festival at NUS 2019- Artificial Intelligence for Everyone - A P...
 
Artificial Intelligence Primer
Artificial Intelligence PrimerArtificial Intelligence Primer
Artificial Intelligence Primer
 
Career options in Artificial Intelligence : 2020
Career options in Artificial Intelligence : 2020Career options in Artificial Intelligence : 2020
Career options in Artificial Intelligence : 2020
 
Artificial Intelligence (2016) - AMP New Ventures
Artificial Intelligence (2016) - AMP New VenturesArtificial Intelligence (2016) - AMP New Ventures
Artificial Intelligence (2016) - AMP New Ventures
 
inte
inteinte
inte
 
Presentation v3
Presentation v3Presentation v3
Presentation v3
 
The A_Z of Artificial Intelligence Types and Principles_1687569150.pdf
The  A_Z of Artificial Intelligence Types and Principles_1687569150.pdfThe  A_Z of Artificial Intelligence Types and Principles_1687569150.pdf
The A_Z of Artificial Intelligence Types and Principles_1687569150.pdf
 
Semantic AI
Semantic AISemantic AI
Semantic AI
 
Algorithm Marketplace and the new "Algorithm Economy"
Algorithm Marketplace and the new "Algorithm Economy"Algorithm Marketplace and the new "Algorithm Economy"
Algorithm Marketplace and the new "Algorithm Economy"
 
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017AI in the Enterprise: Past,  Present &  Future - StampedeCon AI Summit 2017
AI in the Enterprise: Past, Present & Future - StampedeCon AI Summit 2017
 
Gen AI_Object Automation_TechnologyWorkshop
Gen AI_Object Automation_TechnologyWorkshopGen AI_Object Automation_TechnologyWorkshop
Gen AI_Object Automation_TechnologyWorkshop
 
Intro to machine learning
Intro to machine learningIntro to machine learning
Intro to machine learning
 

Recently uploaded

132/33KV substation case study Presentation
132/33KV substation case study Presentation132/33KV substation case study Presentation
132/33KV substation case study Presentation
kandramariana6
 
A SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMS
A SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMSA SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMS
A SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMS
IJNSA Journal
 
Manufacturing Process of molasses based distillery ppt.pptx
Manufacturing Process of molasses based distillery ppt.pptxManufacturing Process of molasses based distillery ppt.pptx
Manufacturing Process of molasses based distillery ppt.pptx
Madan Karki
 
ML Based Model for NIDS MSc Updated Presentation.v2.pptx
ML Based Model for NIDS MSc Updated Presentation.v2.pptxML Based Model for NIDS MSc Updated Presentation.v2.pptx
ML Based Model for NIDS MSc Updated Presentation.v2.pptx
JamalHussainArman
 
14 Template Contractual Notice - EOT Application
14 Template Contractual Notice - EOT Application14 Template Contractual Notice - EOT Application
14 Template Contractual Notice - EOT Application
SyedAbiiAzazi1
 
DEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODEL
DEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODELDEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODEL
DEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODEL
gerogepatton
 
ACEP Magazine edition 4th launched on 05.06.2024
ACEP Magazine edition 4th launched on 05.06.2024ACEP Magazine edition 4th launched on 05.06.2024
ACEP Magazine edition 4th launched on 05.06.2024
Rahul
 
哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样
哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样
哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样
insn4465
 
5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...
5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...
5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...
ihlasbinance2003
 
DfMAy 2024 - key insights and contributions
DfMAy 2024 - key insights and contributionsDfMAy 2024 - key insights and contributions
DfMAy 2024 - key insights and contributions
gestioneergodomus
 
KuberTENes Birthday Bash Guadalajara - K8sGPT first impressions
KuberTENes Birthday Bash Guadalajara - K8sGPT first impressionsKuberTENes Birthday Bash Guadalajara - K8sGPT first impressions
KuberTENes Birthday Bash Guadalajara - K8sGPT first impressions
Victor Morales
 
New techniques for characterising damage in rock slopes.pdf
New techniques for characterising damage in rock slopes.pdfNew techniques for characterising damage in rock slopes.pdf
New techniques for characterising damage in rock slopes.pdf
wisnuprabawa3
 
Recycled Concrete Aggregate in Construction Part III
Recycled Concrete Aggregate in Construction Part IIIRecycled Concrete Aggregate in Construction Part III
Recycled Concrete Aggregate in Construction Part III
Aditya Rajan Patra
 
spirit beverages ppt without graphics.pptx
spirit beverages ppt without graphics.pptxspirit beverages ppt without graphics.pptx
spirit beverages ppt without graphics.pptx
Madan Karki
 
Heat Resistant Concrete Presentation ppt
Heat Resistant Concrete Presentation pptHeat Resistant Concrete Presentation ppt
Heat Resistant Concrete Presentation ppt
mamunhossenbd75
 
RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...
RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...
RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...
thanhdowork
 
Modelagem de um CSTR com reação endotermica.pdf
Modelagem de um CSTR com reação endotermica.pdfModelagem de um CSTR com reação endotermica.pdf
Modelagem de um CSTR com reação endotermica.pdf
camseq
 
Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...
Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...
Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...
University of Maribor
 
IEEE Aerospace and Electronic Systems Society as a Graduate Student Member
IEEE Aerospace and Electronic Systems Society as a Graduate Student MemberIEEE Aerospace and Electronic Systems Society as a Graduate Student Member
IEEE Aerospace and Electronic Systems Society as a Graduate Student Member
VICTOR MAESTRE RAMIREZ
 
bank management system in java and mysql report1.pdf
bank management system in java and mysql report1.pdfbank management system in java and mysql report1.pdf
bank management system in java and mysql report1.pdf
Divyam548318
 

Recently uploaded (20)

132/33KV substation case study Presentation
132/33KV substation case study Presentation132/33KV substation case study Presentation
132/33KV substation case study Presentation
 
A SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMS
A SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMSA SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMS
A SYSTEMATIC RISK ASSESSMENT APPROACH FOR SECURING THE SMART IRRIGATION SYSTEMS
 
Manufacturing Process of molasses based distillery ppt.pptx
Manufacturing Process of molasses based distillery ppt.pptxManufacturing Process of molasses based distillery ppt.pptx
Manufacturing Process of molasses based distillery ppt.pptx
 
ML Based Model for NIDS MSc Updated Presentation.v2.pptx
ML Based Model for NIDS MSc Updated Presentation.v2.pptxML Based Model for NIDS MSc Updated Presentation.v2.pptx
ML Based Model for NIDS MSc Updated Presentation.v2.pptx
 
14 Template Contractual Notice - EOT Application
14 Template Contractual Notice - EOT Application14 Template Contractual Notice - EOT Application
14 Template Contractual Notice - EOT Application
 
DEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODEL
DEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODELDEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODEL
DEEP LEARNING FOR SMART GRID INTRUSION DETECTION: A HYBRID CNN-LSTM-BASED MODEL
 
ACEP Magazine edition 4th launched on 05.06.2024
ACEP Magazine edition 4th launched on 05.06.2024ACEP Magazine edition 4th launched on 05.06.2024
ACEP Magazine edition 4th launched on 05.06.2024
 
哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样
哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样
哪里办理(csu毕业证书)查尔斯特大学毕业证硕士学历原版一模一样
 
5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...
5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...
5214-1693458878915-Unit 6 2023 to 2024 academic year assignment (AutoRecovere...
 
DfMAy 2024 - key insights and contributions
DfMAy 2024 - key insights and contributionsDfMAy 2024 - key insights and contributions
DfMAy 2024 - key insights and contributions
 
KuberTENes Birthday Bash Guadalajara - K8sGPT first impressions
KuberTENes Birthday Bash Guadalajara - K8sGPT first impressionsKuberTENes Birthday Bash Guadalajara - K8sGPT first impressions
KuberTENes Birthday Bash Guadalajara - K8sGPT first impressions
 
New techniques for characterising damage in rock slopes.pdf
New techniques for characterising damage in rock slopes.pdfNew techniques for characterising damage in rock slopes.pdf
New techniques for characterising damage in rock slopes.pdf
 
Recycled Concrete Aggregate in Construction Part III
Recycled Concrete Aggregate in Construction Part IIIRecycled Concrete Aggregate in Construction Part III
Recycled Concrete Aggregate in Construction Part III
 
spirit beverages ppt without graphics.pptx
spirit beverages ppt without graphics.pptxspirit beverages ppt without graphics.pptx
spirit beverages ppt without graphics.pptx
 
Heat Resistant Concrete Presentation ppt
Heat Resistant Concrete Presentation pptHeat Resistant Concrete Presentation ppt
Heat Resistant Concrete Presentation ppt
 
RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...
RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...
RAT: Retrieval Augmented Thoughts Elicit Context-Aware Reasoning in Long-Hori...
 
Modelagem de um CSTR com reação endotermica.pdf
Modelagem de um CSTR com reação endotermica.pdfModelagem de um CSTR com reação endotermica.pdf
Modelagem de um CSTR com reação endotermica.pdf
 
Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...
Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...
Presentation of IEEE Slovenia CIS (Computational Intelligence Society) Chapte...
 
IEEE Aerospace and Electronic Systems Society as a Graduate Student Member
IEEE Aerospace and Electronic Systems Society as a Graduate Student MemberIEEE Aerospace and Electronic Systems Society as a Graduate Student Member
IEEE Aerospace and Electronic Systems Society as a Graduate Student Member
 
bank management system in java and mysql report1.pdf
bank management system in java and mysql report1.pdfbank management system in java and mysql report1.pdf
bank management system in java and mysql report1.pdf
 

AI and Data Science.pdf

  • 1. AI and Data Science Revolutionizing Industries and Shaping the Future Mohammad Ansari https://www.linkedin.com/in/mcubea/
  • 2. Historical advancements in AI Alan Turing publishes "Computing Machinery and Intelligence," which proposes the Turing Test. 1950 Allen Newell and Herbert A. Simon develop Logic Theorist, the first AI program to prove mathematical theorems. 1955 Joseph Weizenbaum develops ELIZA, the first AI program to simulate a Rogerian therapist. 1966 Shakey, the first mobile robot that could reason about its environment and make plans, is developed. 1969 The first expert system, MYCIN, is developed. 1985 IBM's Deep Blue defeats chess grandmaster Garry Kasparov. 1997 Google's DeepMind program defeats Go champion Lee Sedol. 2011 OpenAI's Dactyl robot learns to manipulate objects with 2022
  • 3. Generative AI is a type of artificial intelligence (AI) that can create new content, such as text, images, or music. Content creation New text, images, or music to generate new product descriptions, create marketing materials, or even write music. Data augmentation Augment existing datasets. Increase the size of a dataset, or to add new data points that are similar to the existing data. Data analysis Analyse data and identify patterns that would be difficult to see with traditional methods. This could be used to identify trends in customer behaviour, or to detect fraud. Artificial creativity New forms of art, such as paintings, sculptures, or music. This could lead to new forms of expression and new ways of interacting with the world around us. Generative AI - The Game Changer
  • 4. Success Now Increased Computational Power •GPUs (Graphics Processing Units) and TPUs (Tensor Processing Units Big Data and Data Availability •The abundance of data in various domains Advancements in Deep Learning •Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs), Transfer Learning and Pre-trained Models •The development and dissemination of pre-trained models Research Community and Open Source Initiatives •Fostered collaboration and knowledge sharing.. Industry Applications and Commercial Success •Demonstrated success and real- world applications of generative AI in various industries. Generative AI Competitions and Challenges •Public competitions and challenges, like the ImageNet Large Scale Visual Recognition Challenge (ILSVRC Investments in AI Research •Governments, tech companies, and research institutions have made substantial investments. Availability of AI Tools and Frameworks •The availability of user-friendly AI tools and frameworks, such as TensorFlow, PyTorch, and Keras, Demand for Personalization and Creativity •The increasing demand for personalized experiences and creative content in various industries
  • 5. Research Papers Generative Adversarial Nets" (GANs): Unique approach for training generative models using two neural networks: a generator that produces data samples and a discriminator that distinguishes real data from fake data Improving Language Understanding by Generative Pre- Training" (GPT): Transformer-based language model pre- trained on a vast amount of text using unsupervised learning, resulting in enhanced language understanding and better performance on various tasks Attention is All You Need" (Transformer) Transformer model, a neural network architecture that relies solely on self-attention mechanisms, achieving state-of-the-art performance in natural language processing tasks A Style-Based Generator Architecture for Generative Adversarial Networks" (StyleGAN) Introduces a novel generator architecture for GANs called StyleGAN, allowing better control and manipulation of image generation by separating the model's latent space into different style and content representations ClipGPT: Connecting Text and Images using Contrastive Learning Leverages contrastive learning to establish a connection between text and images, enabling improved performance on various vision-language tasks DALL·E: Creating Images from Text A powerful generative model capable of creating images from textual descriptions, generating diverse and creative visual content
  • 6. Foundation Models •This generative AI model can create images from text descriptions. For example, you could ask it to create an image of a cat wearing a hat, or a painting of a beach scene at sunset. DALL-E 2 •This generative AI model can generate text that is indistinguishable from human-written text. For example, you could ask it to write a poem, or a news article. GPT-3 •This generative AI model can create music that is similar to the work of specific artists. For example, you could ask it to create a song that sounds like a Beatles song, or a symphony that sounds like Beethoven. MuSig
  • 7. Adoption Cost-Effective Product Development Simplifying Life in the Community Solving Previously Unsolvable Problems Enhancing Creativity and Innovation Personalization and Customer Engagement Faster Time-to-Market Optimal Resource Allocation Addressing Skill Gaps Environmental Impact
  • 8. Age of Co-Pilots GitHub Copilot Code completion Boilerplate code Entire functions Natural language prompts Code review Office Copilot Real-time Assistance Task Automation Collaboration and Knowledge sharing Personalized Assistance Sales Copilot Identify relevant information from CRM Summarizes cases and conversations Draft chat responses
  • 9. Manufacturi ng and Supply Chain •Unplanned downtime and equipment failures •AI solution: Predictive maintenance models using sensor data for proactive maintenance, reducing downtime and costs Predictive Maintenance •Complex supply chain networks and inventory management challenges •AI solution: AI algorithms for demand forecasting, optimizing inventory levels, and improving logistics efficiency Supply Chain Optimization •Manual inspection and high error rates •AI solution: Computer vision systems for automated quality control, ensuring consistent product quality and reducing defects Quality Control
  • 10. Finance and Banking •Rising complexity and sophistication of financial fraud •AI solution: AI models for real-time fraud detection, pattern recognition, and anomaly detection Fraud Detection and Prevention •Managing complex financial risks •AI solution: AI algorithms for risk assessment and mitigation, optimizing portfolio management Risk Management •Long wait times and inefficient customer service processes •AI solution: AI-powered chatbots for instant customer support and personalized assistance Customer Service Efficiency
  • 11. Retail and E- commerce •Difficulty in understanding customer preferences and delivering personalized experiences •AI solution: AI algorithms for customer segmentation and recommendation systems, enhancing customer satisfaction and engagement Segmentation and Personalized Recommendations •Inventory stockouts or excess inventory, suboptimal pricing strategies •AI solution: AI-powered algorithms for inventory management and dynamic pricing, optimizing stock levels and pricing strategies Inventory Management and Pricing Optimization •Limitations of traditional shopping experiences •AI solution: Virtual try-on and augmented reality technologies for enhanced shopping experiences, increasing customer engagement and sales Virtual Try-On and Augmented Reality in Shopping
  • 12. Health Care •Limited availability of expert radiologists •AI solution: AI algorithms for automated image analysis, improving accuracy and efficiency Medical Imaging Analysis •Human error and misdiagnosis rates •AI solution: Machine Learning models for accurate disease diagnosis and prediction based on patient data Disease Diagnosis and Prediction •One-size-fits-all treatment approaches •AI solution: AI-powered algorithms for precision medicine, considering individual patient characteristics for tailored treatment plans Personalized Medicine
  • 13. AI is here to stay and make a big impact Percentage budget spent on AI in each segment, according to IDC: • Manufacturing: 18.8% • Healthcare: 17.1% • Financial services: 15.1% • Retail: 12.9% • Telecom: 11.2% • Logistics: 10.3% • Others: 14.6% These percentages are based on the global spending on AI in 2023, which is estimated to be $154 billion
  • 14. Challenges Job Displacement Bias and Fairness Issues Privacy and Security Concerns. Lack of Accountability Ethical Dilemmas Social Isolation Economic Inequality Reliance on AI Accuracy Disinformation and Manipulation Unemployment and Skills Gap
  • 15. What’s next ? • Quantum Computation and AI •Integer factorization, which is the process of finding the prime factors of a large composite number for RSA Factorization •Salesman problem and portfolio optimization. Optimization •Quantum computers can naturally model quantum systems Simulation of quantum systems •Quantum support vector machines and quantum neural networks. Machine learning •Quantum cryptography, such as quantum key distribution, can offer enhanced security solutions. Cryptography •Quantum algorithms like Grover's algorithm can significantly speed up searching in unsorted databases Database search
  • 16. Summary AI Revolution Rapid advancements in Artificial Intelligence (AI) are disrupting industries across the globe Automation and Job Transformation AI-driven automation is streamlining tasks, leading to increased efficiency, cost savings, and enhanced productivity. Personalization and Customer Experience AI enables personalized experiences, tailored recommendations, and improved customer service Healthcare Revolution AI is poised to revolutionize healthcare with improved diagnostics, drug discovery, and personalized treatment plans Ethical and Regulatory Challenges As AI becomes more pervasive, concerns about data privacy, bias, and ethical implications emerge. Limitless Possibilities The future holds immense potential for AI to transform transportation, education, energy, and environmental sectors, with autonomous vehicles