SlideShare a Scribd company logo
1 of 27
Seminar on Machine Learning
Submitted to:
Prof. Manmindar Singh
Submitted by:
Rahul Kumar Gcs-1630043
Aquif Zubair Gcs-1630051
1
Agenda
 Introduction
 Basics
 Advantages
 Applications
 Classification
 Clustering
 Regression
 Use-Cases
2
Quick
Questions….
 How many people have heard about machine
learning.
 How many people know about Machine learning.
Machine Learning
4
About
 Subfield of Artificial Intelligence(AI)
 Name is derived from the concept that it deals with
“construction and study of systems that can learn from
data ” can be seen as building blocks to make computer
learn to behave more intelligently.
The main advantage of ML
 Learning and writing an algorithm
 Its easy for human brain but it is tough for machine.it
takes some time and good amount of training data for
machine to accurately classify objects.
 Implementation and automation
• This is easy for a Machine. Once learnt a machine can
process one million images without any fatigue where as
human brain can’t.
• That’s why ML with big data is a deadly combination.
6
Applications of Machine
Learning
 Banking / Telecom / Retail
 Identify:
 prospective customers
 Dissatisfied customers
 Good customers
 Bad payers
 Obtain:
 More effective advertising
 Less credit risk
 Fewer fraud
7
Applications of Machine
Learning
 Biomedical / Biometrics
 Medicine:
 screening
 Drug discovery
 Security:
 Face recognition
 Signature / iris verification
 fingerprinting
8
Let’s dig deep
into it….
What do you mean by
Apple
Learning
(Training)
Categories
• Supervised Learning
• Unsupervised Learning
• Semi-Supervised Learning
• Reinforcement Learning
Supervised Learning
 The correct classes of the training data are known
12
Unsupervised Learning
 The correct classes of the training data are not Known
13
Semi-Supervised Learning
 A Mix of Supervised and Unsupervised learning
14
Reinforcement Learning
 Allows the machine or software agent to learn its behavior based on
feedback from the environment.
 This behavior can be learnt once and for all, or keep adapting as time
goes by
15
Machine Learning
Techniques
Techniques
Classification: predict class
from observations
Clustering: group observation
into “meaningful” group
Regression(presdiction):predi
ct value from observations.
17
Classification
 Classify a document into a predefined
category.
 Documents can be text, images.
 The main goal of classification is to predict
the target class(yes/no).
 Considering the student profile to predict
whether the student will pass or fail.
18
Similar/ Duplicate Images
19
Clustering
 Clustering is the task of grouping a set of
objects in such a way that objects in the
same group (called a cluster) are more
similar to each other
 Objects are not predefined
 For e.g. these Keywords
--”man’s shoe”
--”Women’s shoe”
--”women’s t-shirt”
--”man’s t-shirt”
--can be cluster into 2 categories “shoe” and
“t-shirt” or “man” and “women”
20
Regression
 Is a measure of the relation between the mean value of
one variable (e.g. output) and corresponding values of
other variables (e.g. time and cost)
 Regression analysis is a statistical process for estimating
the relationship among variables.
 Regression means to predict the output value using
training data.
 Popular one is Logistic regression (binary regression)
21
Classification vs Regression
Classification
 Classification means to
group the output into
class.
 Classification to predict
the type of humor i.e.
harmful or not harmful
using training data.
 If it is
discrete/categorical
variable ,then it is
classification problem
Regression
 Regression means to
predict the output value
using training data.
 Regression to predict
the house price from
training data.
 If it is real
number/continuous then
it is regression problem.
22
Classification vs Regression
23
Let’s see the
usages in real life
Of machine learning
Use- cases
 Spam Email Detection
 Machine Translation(Language Translation)
 Image Search(Similarity)
 Clustering(K Means):Amazon
 Classification : Google News
 Rating a Review
 Face Detection—Facebook’s photo tagging
 Fraud detection :Credit Card Providers
25
Questions ???
26
Thanks!
27

More Related Content

What's hot

Machine Learning presentation.
Machine Learning presentation.Machine Learning presentation.
Machine Learning presentation.
butest
 
Machine Learning: Applications, Process and Techniques
Machine Learning: Applications, Process and TechniquesMachine Learning: Applications, Process and Techniques
Machine Learning: Applications, Process and Techniques
Rui Pedro Paiva
 
2.17Mb ppt
2.17Mb ppt2.17Mb ppt
2.17Mb ppt
butest
 
An introduction to Machine Learning
An introduction to Machine LearningAn introduction to Machine Learning
An introduction to Machine Learning
butest
 

What's hot (20)

Machine learning
Machine learning Machine learning
Machine learning
 
Machine learning
Machine learningMachine learning
Machine learning
 
Lecture1 introduction to machine learning
Lecture1 introduction to machine learningLecture1 introduction to machine learning
Lecture1 introduction to machine learning
 
Machine learning ppt.
Machine learning ppt.Machine learning ppt.
Machine learning ppt.
 
Introduction to ML (Machine Learning)
Introduction to ML (Machine Learning)Introduction to ML (Machine Learning)
Introduction to ML (Machine Learning)
 
Machine Can Think
Machine Can ThinkMachine Can Think
Machine Can Think
 
Machine Learning presentation.
Machine Learning presentation.Machine Learning presentation.
Machine Learning presentation.
 
Intro/Overview on Machine Learning Presentation
Intro/Overview on Machine Learning PresentationIntro/Overview on Machine Learning Presentation
Intro/Overview on Machine Learning Presentation
 
Machine learning ppt
Machine learning ppt Machine learning ppt
Machine learning ppt
 
Machine Learning: Applications, Process and Techniques
Machine Learning: Applications, Process and TechniquesMachine Learning: Applications, Process and Techniques
Machine Learning: Applications, Process and Techniques
 
Machine Learning Algorithms
Machine Learning AlgorithmsMachine Learning Algorithms
Machine Learning Algorithms
 
Machine Learning
Machine LearningMachine Learning
Machine Learning
 
Machine learning
Machine learningMachine learning
Machine learning
 
2.17Mb ppt
2.17Mb ppt2.17Mb ppt
2.17Mb ppt
 
Presentation on supervised learning
Presentation on supervised learningPresentation on supervised learning
Presentation on supervised learning
 
Lecture 1: What is Machine Learning?
Lecture 1: What is Machine Learning?Lecture 1: What is Machine Learning?
Lecture 1: What is Machine Learning?
 
Intro to Machine Learning & AI
Intro to Machine Learning & AIIntro to Machine Learning & AI
Intro to Machine Learning & AI
 
Introduction to Machine Learning
Introduction to Machine LearningIntroduction to Machine Learning
Introduction to Machine Learning
 
An introduction to Machine Learning
An introduction to Machine LearningAn introduction to Machine Learning
An introduction to Machine Learning
 
Machine Learning
Machine LearningMachine Learning
Machine Learning
 

Similar to Machine Learning

Lecture #1: Introduction to machine learning (ML)
Lecture #1: Introduction to machine learning (ML)Lecture #1: Introduction to machine learning (ML)
Lecture #1: Introduction to machine learning (ML)
butest
 

Similar to Machine Learning (20)

Machine Learning
Machine LearningMachine Learning
Machine Learning
 
MITIGATION TECHNIQUES TO OVERCOME DATA HARM IN MODEL BUILDING FOR ML
MITIGATION TECHNIQUES TO OVERCOME DATA HARM IN MODEL BUILDING FOR MLMITIGATION TECHNIQUES TO OVERCOME DATA HARM IN MODEL BUILDING FOR ML
MITIGATION TECHNIQUES TO OVERCOME DATA HARM IN MODEL BUILDING FOR ML
 
ML-Chapter_one.pptx
ML-Chapter_one.pptxML-Chapter_one.pptx
ML-Chapter_one.pptx
 
Machine learning seminar ppt
Machine learning seminar pptMachine learning seminar ppt
Machine learning seminar ppt
 
DSCI 552 machine learning for data science
DSCI 552 machine learning for data scienceDSCI 552 machine learning for data science
DSCI 552 machine learning for data science
 
ML All Chapter PDF.pdf
ML All Chapter PDF.pdfML All Chapter PDF.pdf
ML All Chapter PDF.pdf
 
An Introduction to Machine Learning
An Introduction to Machine LearningAn Introduction to Machine Learning
An Introduction to Machine Learning
 
Introduction to ml
Introduction to mlIntroduction to ml
Introduction to ml
 
ML crash course
ML crash courseML crash course
ML crash course
 
Ml topic1 a
Ml topic1 aMl topic1 a
Ml topic1 a
 
Introduction to Machine Learning
Introduction to Machine LearningIntroduction to Machine Learning
Introduction to Machine Learning
 
(In)convenient truths about applied machine learning
(In)convenient truths about applied machine learning(In)convenient truths about applied machine learning
(In)convenient truths about applied machine learning
 
AI Orange Belt - Session 2
AI Orange Belt - Session 2AI Orange Belt - Session 2
AI Orange Belt - Session 2
 
Lecture #1: Introduction to machine learning (ML)
Lecture #1: Introduction to machine learning (ML)Lecture #1: Introduction to machine learning (ML)
Lecture #1: Introduction to machine learning (ML)
 
Machine learning presentation (razi)
Machine learning presentation (razi)Machine learning presentation (razi)
Machine learning presentation (razi)
 
Chapter01 introductory handbook
Chapter01 introductory handbookChapter01 introductory handbook
Chapter01 introductory handbook
 
Reinforcement Learning, Application and Q-Learning
Reinforcement Learning, Application and Q-LearningReinforcement Learning, Application and Q-Learning
Reinforcement Learning, Application and Q-Learning
 
Training_Report_on_Machine_Learning.docx
Training_Report_on_Machine_Learning.docxTraining_Report_on_Machine_Learning.docx
Training_Report_on_Machine_Learning.docx
 
Machine learning
Machine learningMachine learning
Machine learning
 
Lect 7 intro to M.L..pdf
Lect 7 intro to M.L..pdfLect 7 intro to M.L..pdf
Lect 7 intro to M.L..pdf
 

Recently uploaded

Integrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - NeometrixIntegrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - Neometrix
Neometrix_Engineering_Pvt_Ltd
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
ssuser89054b
 
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
AldoGarca30
 
Hospital management system project report.pdf
Hospital management system project report.pdfHospital management system project report.pdf
Hospital management system project report.pdf
Kamal Acharya
 

Recently uploaded (20)

Max. shear stress theory-Maximum Shear Stress Theory ​ Maximum Distortional ...
Max. shear stress theory-Maximum Shear Stress Theory ​  Maximum Distortional ...Max. shear stress theory-Maximum Shear Stress Theory ​  Maximum Distortional ...
Max. shear stress theory-Maximum Shear Stress Theory ​ Maximum Distortional ...
 
Ghuma $ Russian Call Girls Ahmedabad ₹7.5k Pick Up & Drop With Cash Payment 8...
Ghuma $ Russian Call Girls Ahmedabad ₹7.5k Pick Up & Drop With Cash Payment 8...Ghuma $ Russian Call Girls Ahmedabad ₹7.5k Pick Up & Drop With Cash Payment 8...
Ghuma $ Russian Call Girls Ahmedabad ₹7.5k Pick Up & Drop With Cash Payment 8...
 
Introduction to Serverless with AWS Lambda
Introduction to Serverless with AWS LambdaIntroduction to Serverless with AWS Lambda
Introduction to Serverless with AWS Lambda
 
Tamil Call Girls Bhayandar WhatsApp +91-9930687706, Best Service
Tamil Call Girls Bhayandar WhatsApp +91-9930687706, Best ServiceTamil Call Girls Bhayandar WhatsApp +91-9930687706, Best Service
Tamil Call Girls Bhayandar WhatsApp +91-9930687706, Best Service
 
Computer Networks Basics of Network Devices
Computer Networks  Basics of Network DevicesComputer Networks  Basics of Network Devices
Computer Networks Basics of Network Devices
 
Employee leave management system project.
Employee leave management system project.Employee leave management system project.
Employee leave management system project.
 
Thermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VThermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - V
 
Basic Electronics for diploma students as per technical education Kerala Syll...
Basic Electronics for diploma students as per technical education Kerala Syll...Basic Electronics for diploma students as per technical education Kerala Syll...
Basic Electronics for diploma students as per technical education Kerala Syll...
 
Theory of Time 2024 (Universal Theory for Everything)
Theory of Time 2024 (Universal Theory for Everything)Theory of Time 2024 (Universal Theory for Everything)
Theory of Time 2024 (Universal Theory for Everything)
 
UNIT 4 PTRP final Convergence in probability.pptx
UNIT 4 PTRP final Convergence in probability.pptxUNIT 4 PTRP final Convergence in probability.pptx
UNIT 4 PTRP final Convergence in probability.pptx
 
Integrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - NeometrixIntegrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - Neometrix
 
Hostel management system project report..pdf
Hostel management system project report..pdfHostel management system project report..pdf
Hostel management system project report..pdf
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torque
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
 
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptxS1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
 
Online electricity billing project report..pdf
Online electricity billing project report..pdfOnline electricity billing project report..pdf
Online electricity billing project report..pdf
 
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
 
Hospital management system project report.pdf
Hospital management system project report.pdfHospital management system project report.pdf
Hospital management system project report.pdf
 
Bhubaneswar🌹Call Girls Bhubaneswar ❤Komal 9777949614 💟 Full Trusted CALL GIRL...
Bhubaneswar🌹Call Girls Bhubaneswar ❤Komal 9777949614 💟 Full Trusted CALL GIRL...Bhubaneswar🌹Call Girls Bhubaneswar ❤Komal 9777949614 💟 Full Trusted CALL GIRL...
Bhubaneswar🌹Call Girls Bhubaneswar ❤Komal 9777949614 💟 Full Trusted CALL GIRL...
 

Machine Learning

  • 1. Seminar on Machine Learning Submitted to: Prof. Manmindar Singh Submitted by: Rahul Kumar Gcs-1630043 Aquif Zubair Gcs-1630051 1
  • 2. Agenda  Introduction  Basics  Advantages  Applications  Classification  Clustering  Regression  Use-Cases 2
  • 3. Quick Questions….  How many people have heard about machine learning.  How many people know about Machine learning.
  • 5. About  Subfield of Artificial Intelligence(AI)  Name is derived from the concept that it deals with “construction and study of systems that can learn from data ” can be seen as building blocks to make computer learn to behave more intelligently.
  • 6. The main advantage of ML  Learning and writing an algorithm  Its easy for human brain but it is tough for machine.it takes some time and good amount of training data for machine to accurately classify objects.  Implementation and automation • This is easy for a Machine. Once learnt a machine can process one million images without any fatigue where as human brain can’t. • That’s why ML with big data is a deadly combination. 6
  • 7. Applications of Machine Learning  Banking / Telecom / Retail  Identify:  prospective customers  Dissatisfied customers  Good customers  Bad payers  Obtain:  More effective advertising  Less credit risk  Fewer fraud 7
  • 8. Applications of Machine Learning  Biomedical / Biometrics  Medicine:  screening  Drug discovery  Security:  Face recognition  Signature / iris verification  fingerprinting 8
  • 9. Let’s dig deep into it…. What do you mean by Apple
  • 11. Categories • Supervised Learning • Unsupervised Learning • Semi-Supervised Learning • Reinforcement Learning
  • 12. Supervised Learning  The correct classes of the training data are known 12
  • 13. Unsupervised Learning  The correct classes of the training data are not Known 13
  • 14. Semi-Supervised Learning  A Mix of Supervised and Unsupervised learning 14
  • 15. Reinforcement Learning  Allows the machine or software agent to learn its behavior based on feedback from the environment.  This behavior can be learnt once and for all, or keep adapting as time goes by 15
  • 17. Techniques Classification: predict class from observations Clustering: group observation into “meaningful” group Regression(presdiction):predi ct value from observations. 17
  • 18. Classification  Classify a document into a predefined category.  Documents can be text, images.  The main goal of classification is to predict the target class(yes/no).  Considering the student profile to predict whether the student will pass or fail. 18
  • 20. Clustering  Clustering is the task of grouping a set of objects in such a way that objects in the same group (called a cluster) are more similar to each other  Objects are not predefined  For e.g. these Keywords --”man’s shoe” --”Women’s shoe” --”women’s t-shirt” --”man’s t-shirt” --can be cluster into 2 categories “shoe” and “t-shirt” or “man” and “women” 20
  • 21. Regression  Is a measure of the relation between the mean value of one variable (e.g. output) and corresponding values of other variables (e.g. time and cost)  Regression analysis is a statistical process for estimating the relationship among variables.  Regression means to predict the output value using training data.  Popular one is Logistic regression (binary regression) 21
  • 22. Classification vs Regression Classification  Classification means to group the output into class.  Classification to predict the type of humor i.e. harmful or not harmful using training data.  If it is discrete/categorical variable ,then it is classification problem Regression  Regression means to predict the output value using training data.  Regression to predict the house price from training data.  If it is real number/continuous then it is regression problem. 22
  • 24. Let’s see the usages in real life Of machine learning
  • 25. Use- cases  Spam Email Detection  Machine Translation(Language Translation)  Image Search(Similarity)  Clustering(K Means):Amazon  Classification : Google News  Rating a Review  Face Detection—Facebook’s photo tagging  Fraud detection :Credit Card Providers 25