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DATA SCIENCE
INDEX
 Machine Learning
 Types of Machine Learning
 Deep Learning
 Artificial Intelligence
 R-Language
 How does Data science relate to AL,ML & DL
MACHINE LEARNING
 Machine learning works by finding a function, or a
relationship, from input X to output Y. The high level
and most commonly accepted.
 machine learning is the ability for computers to learn
and act without being explicitly programmed.
 Machine learning is an application of artificial
intelligence (AI) that provides systems the ability to
automatically learn and improve from experience
without being explicitly programmed.
Types of Machine Learning
 Supervised Machine Learning Algorithms To make predictions we
use this machine learning algorithm. Further, this algorithm
searches for patterns within the value labels. That was assigned to
data points.
 Unsupervised Machine Learning Algorithms No labels are
associated with data points. Also, these Machine Learning
algorithms organize the data into a group of clusters. Moreover, it
needs to describe its structure. Also, to make complex data look
simple and organized for analysis.
 Reinforcement Machine Learning Algorithms We use these
algorithms to choose an action. Also, we can see that it is based on
each data point. Moreover, after some time the algorithm changes
its strategy to learn better. Also, achieve the best reward.Machine
learning focuses on the development of computer programs that can
access data and use it learn for themselves.
DEEP LEARNING
 Deep Learning is a subfield of machine learning
concerned with algorithms inspired by the
structure and function of the brain called
artificial neural networks.
 Machine learning (ML) is a category of algorithm
that allows software applications to become more
accurate in predicting outcomes without being
explicitly programmed.
 The basic premise of machine learning is to build
algorithms that can receive input data and
use statistical analysis to predict an output while
updating outputs as new data becomes available.
 The processes involved in machine learning are
similar to that of data mining and predictive
modeling.
 Machine learning focuses only on solving real-world
problems. Also, it takes a few ideas of artificial intelligence.
Moreover, machine learning does through the neural
networks. That are designed to mimic human decision-
making capabilities.
 Machine Learning tools and techniques are the two key
narrow subsets. That only focuses more on deep learning.
Furthermore, we need to apply it to solve any problem. That
requires thought- human or artificial.
 Any Deep neural network will consist of three types of layers:
 The Input Layer
 The Hidden Layer
 The Output Layer
Artificial intelligence
 Artificial Intelligence is the broader concept of
machines being able to carry out tasks in a way that
we would consider “smart”.
 Machine Learning is a current application of AI
based around the idea that we should really just be
able to give machines access to data and let them
learn for themselves.
 Artificial intelligence refers to the simulation of a human
brain function by machines. This is achieved by creating
an artificial neural network that can show human
intelligence. The primary human functions that an AI
machine performs include logical reasoning, learning
and self-correction.
 Artificial intelligence is a wide field with many
applications but it also one of the most complicated
technology to work on. Machines inherently are not
smart and to make them so, we need a lot of computing
power and data to empower them to simulate human
thinking.
R LANGUAGE
 R Data science includes data analysis. It is an
important component of the skill set required for
many jobs in this area. But it’s not the only necessary
skill. They play active roles in the design and
implementation work of four related areas:
 Data architecture
 In data acquisition
 Data analysis
 In data archiving
Data science relate to AL,ML&DL
 Data science is an interdisciplinary field that has
skills used in various fields such as statistics,
Machine Learning, visualization, etc. It is a general
process and method that analyze and manipulate
data.
 Also, enables to find meaning and appropriate
information from large volumes of data. This makes
it possible for us to use data for making key decisions
in business, science, technology, and even politics.
W W W . S T E R L I N G I T T R A I N I N G S . C O M
7 7 9 9 2 2 5 7 2 9
Thank You

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Data science dec ppt

  • 2. INDEX  Machine Learning  Types of Machine Learning  Deep Learning  Artificial Intelligence  R-Language  How does Data science relate to AL,ML & DL
  • 3. MACHINE LEARNING  Machine learning works by finding a function, or a relationship, from input X to output Y. The high level and most commonly accepted.  machine learning is the ability for computers to learn and act without being explicitly programmed.  Machine learning is an application of artificial intelligence (AI) that provides systems the ability to automatically learn and improve from experience without being explicitly programmed.
  • 4. Types of Machine Learning  Supervised Machine Learning Algorithms To make predictions we use this machine learning algorithm. Further, this algorithm searches for patterns within the value labels. That was assigned to data points.  Unsupervised Machine Learning Algorithms No labels are associated with data points. Also, these Machine Learning algorithms organize the data into a group of clusters. Moreover, it needs to describe its structure. Also, to make complex data look simple and organized for analysis.  Reinforcement Machine Learning Algorithms We use these algorithms to choose an action. Also, we can see that it is based on each data point. Moreover, after some time the algorithm changes its strategy to learn better. Also, achieve the best reward.Machine learning focuses on the development of computer programs that can access data and use it learn for themselves.
  • 5. DEEP LEARNING  Deep Learning is a subfield of machine learning concerned with algorithms inspired by the structure and function of the brain called artificial neural networks.  Machine learning (ML) is a category of algorithm that allows software applications to become more accurate in predicting outcomes without being explicitly programmed.
  • 6.  The basic premise of machine learning is to build algorithms that can receive input data and use statistical analysis to predict an output while updating outputs as new data becomes available.  The processes involved in machine learning are similar to that of data mining and predictive modeling.
  • 7.  Machine learning focuses only on solving real-world problems. Also, it takes a few ideas of artificial intelligence. Moreover, machine learning does through the neural networks. That are designed to mimic human decision- making capabilities.  Machine Learning tools and techniques are the two key narrow subsets. That only focuses more on deep learning. Furthermore, we need to apply it to solve any problem. That requires thought- human or artificial.  Any Deep neural network will consist of three types of layers:  The Input Layer  The Hidden Layer  The Output Layer
  • 8. Artificial intelligence  Artificial Intelligence is the broader concept of machines being able to carry out tasks in a way that we would consider “smart”.  Machine Learning is a current application of AI based around the idea that we should really just be able to give machines access to data and let them learn for themselves.
  • 9.  Artificial intelligence refers to the simulation of a human brain function by machines. This is achieved by creating an artificial neural network that can show human intelligence. The primary human functions that an AI machine performs include logical reasoning, learning and self-correction.  Artificial intelligence is a wide field with many applications but it also one of the most complicated technology to work on. Machines inherently are not smart and to make them so, we need a lot of computing power and data to empower them to simulate human thinking.
  • 10. R LANGUAGE  R Data science includes data analysis. It is an important component of the skill set required for many jobs in this area. But it’s not the only necessary skill. They play active roles in the design and implementation work of four related areas:  Data architecture  In data acquisition  Data analysis  In data archiving
  • 11. Data science relate to AL,ML&DL  Data science is an interdisciplinary field that has skills used in various fields such as statistics, Machine Learning, visualization, etc. It is a general process and method that analyze and manipulate data.  Also, enables to find meaning and appropriate information from large volumes of data. This makes it possible for us to use data for making key decisions in business, science, technology, and even politics.
  • 12. W W W . S T E R L I N G I T T R A I N I N G S . C O M 7 7 9 9 2 2 5 7 2 9 Thank You