SlideShare ist ein Scribd-Unternehmen logo
1 von 11
Downloaden Sie, um offline zu lesen
MK99 – Big Data 1
Big data
&
cross-platform analytics
MOOC lectures Pr. Clement Levallois
MK99 – Big Data 2
Note
• You will find terms squared like this in the slides.
• These terms are part of your quizz assignment for
the week, to be found on the online platform.
• Often technical terms, it is vital that you know
their meaning, as they are the basic vocabulary of
data science.
MK99 – Big Data 3
What you we learn here:
• The definition of data
• The many ways to speak about data.
MK99 – Big Data 4
What is data?
• Definition:
– Originally, data is plural for “datum”, a Latin word
– a “datum” is a single factual, a single entity, a single point of matter.
– Datums are most often called “data points”.
– Data represents a collection of data points.
• We speak also of datasets instead of data (so a dataset is a collection of data points).
– Today, “data” is used in a singular or plural form.
-> “My data is…”, but we sometimes still hear “My data are…”
MK99 – Big Data 5
Examples!
• A date
• A color
• A grade
• An address
• A price
• A number of friends
• A longitude
• An index of poverty
• An item in a catalogue
• A sound frequency
• A list of favorite
movies
• A movie
• A number of clicks on
a web page
• A duration
• A book
• An author of a book
• A vote at an election
• A still image
• A measurement of
CO2
• A response to a
consumer survey
• A purchase ticket
• A curriculum vitae
• Your blood pressure
MK99 – Big Data 6
Data or Metadata?
• Metadata: this is some data describing some other data.
• Example:
– The bibliographical reference describing a book.
– Key takeaway: data without metadata can be worthless
-> What would you do with a pile of 10,000 books without any indication on their title,
authors, or date of publication?
– The difference between data and metadata is not always relevant
-> In the alumni network dataset, what is data and what is metadata?
The metadata The data
MK99 – Big Data 7
Data: how to talk about it
• Example of some data point -> “Four more years. http://t.co/bAJE6Vom”
This textual data is in digital form
(because it is stored in bits on a computer, not by hand writing on a piece of paper)
(as opposed to analog).
The tweet is textual
(as opposed to numerical. In programming, text can also be called a String)
this is the type (or format) of the data
The tweet appears plain text
“plain text” is one sort of format for text.
Others formats are JSON, XML or CSV
this is the format of the data
The text of the tweet is encoded in UTF-8 this is the encoding of the data
The tweet is part of a list of tweets I collected this is the data structure
The tweet is stored in a Word file on my laptop this is the format of the data
Notice the
ambiguity in the
terminology!
MK99 – Big Data 8
Data stored in tables: vocabulary
Rows, or lines.
Each represents
a data point
Columns. Each represents an
attribute of the data.
Header: these are the
names of the attributes.
A value.
(can be
empty).
A spreadsheet, or a table.
This is still the most common
way to represent a dataset.
MK99 – Big Data 9
Data and size.
• The size of data gives an idea of what can be done with it and the
challenges it might pose.
• The size of a dataset can be expressed in number of datapoints.
– Often called lines because we store them as lines in a spreadsheet
• Or the size can be expressed in terms of the storage space the data
takes on a computer drive (see next slide).
– A dataset with 23,000 lines and 16 columns takes ~ 2.6Mb when
presented as an Excel file.
MK99 – Big Data 10
Bytes!
1 bit Can store a yes / no value
8 bits 1 byte (or octet) Can store a single letter
~ 1,000 bytes 1 kilobyte (kb) Can store a paragraph
~ 1 million bytes 1 megabyte (Mb) Can store a low res picture.
~ 1 billion bytes 1 gigabyte (Gb) Can store a movie
~ 1 trillion bytes 1 terabyte (Tb) Can store 1,000 movies. Size of
commercial hard drives in 2014.
~ 1,000 trillion bytes 1 petabyte (Pb) 20 Pb = Google Maps in 2013
Most
firms
today
MK99 – Big Data 11
Much more…
• Make the readings for Week 1.
• Watch the video on big data, also in Week 1.
• Start following #bigdata and #dataanalytics on
Twitter.

Weitere ähnliche Inhalte

Was ist angesagt?

Exploratory data analysis data visualization
Exploratory data analysis data visualizationExploratory data analysis data visualization
Exploratory data analysis data visualizationDr. Hamdan Al-Sabri
 
Introduction to Data Management
Introduction to Data ManagementIntroduction to Data Management
Introduction to Data ManagementAmanda Whitmire
 
Data Processing-Presentation
Data Processing-PresentationData Processing-Presentation
Data Processing-Presentationnibraspk
 
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...Stats Statswork
 
Lecture1 introduction to big data
Lecture1 introduction to big dataLecture1 introduction to big data
Lecture1 introduction to big datahktripathy
 
Data Preparation and Processing
Data Preparation and ProcessingData Preparation and Processing
Data Preparation and ProcessingMehul Gondaliya
 
1. Data Analytics-introduction
1. Data Analytics-introduction1. Data Analytics-introduction
1. Data Analytics-introductionkrishna singh
 
Data Exploration and Visualization with R
Data Exploration and Visualization with RData Exploration and Visualization with R
Data Exploration and Visualization with RYanchang Zhao
 

Was ist angesagt? (20)

Data and Information
Data and InformationData and Information
Data and Information
 
Data Quality Presentation
Data Quality PresentationData Quality Presentation
Data Quality Presentation
 
Exploratory data analysis data visualization
Exploratory data analysis data visualizationExploratory data analysis data visualization
Exploratory data analysis data visualization
 
Introduction to Data Management
Introduction to Data ManagementIntroduction to Data Management
Introduction to Data Management
 
Data, knowledge and information
Data, knowledge and informationData, knowledge and information
Data, knowledge and information
 
Data warehousing
Data warehousingData warehousing
Data warehousing
 
DATA WAREHOUSING
DATA WAREHOUSINGDATA WAREHOUSING
DATA WAREHOUSING
 
Data visualization
Data visualizationData visualization
Data visualization
 
Data analysis
Data analysisData analysis
Data analysis
 
Data Preparation.pptx
Data Preparation.pptxData Preparation.pptx
Data Preparation.pptx
 
Data Processing-Presentation
Data Processing-PresentationData Processing-Presentation
Data Processing-Presentation
 
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
 
Lecture1 introduction to big data
Lecture1 introduction to big dataLecture1 introduction to big data
Lecture1 introduction to big data
 
Data Preparation and Processing
Data Preparation and ProcessingData Preparation and Processing
Data Preparation and Processing
 
Data mining
Data mining Data mining
Data mining
 
Digital data
Digital dataDigital data
Digital data
 
1. Data Analytics-introduction
1. Data Analytics-introduction1. Data Analytics-introduction
1. Data Analytics-introduction
 
Data Exploration and Visualization with R
Data Exploration and Visualization with RData Exploration and Visualization with R
Data Exploration and Visualization with R
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
1.2 types of data
1.2 types of data1.2 types of data
1.2 types of data
 

Andere mochten auch

PrePARe: What is 'data'?
PrePARe: What is 'data'?PrePARe: What is 'data'?
PrePARe: What is 'data'?dspace_cam
 
Présentation FrenchWeb: Qu'est-ce que la visualisation des données?
Présentation FrenchWeb: Qu'est-ce que la visualisation des données?Présentation FrenchWeb: Qu'est-ce que la visualisation des données?
Présentation FrenchWeb: Qu'est-ce que la visualisation des données?Clement Levallois
 
Research Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutionsResearch Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutionsArhiv družboslovnih podatkov
 
Data Management for Librarians: An Introduction
Data Management for Librarians: An IntroductionData Management for Librarians: An Introduction
Data Management for Librarians: An IntroductionGarethKnight
 
Data, information & its attributes uwsb
Data, information & its attributes   uwsbData, information & its attributes   uwsb
Data, information & its attributes uwsbArnab Roy Chowdhury
 
DATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGEDATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGENeeraj Goswami
 

Andere mochten auch (10)

PrePARe: What is 'data'?
PrePARe: What is 'data'?PrePARe: What is 'data'?
PrePARe: What is 'data'?
 
Présentation FrenchWeb: Qu'est-ce que la visualisation des données?
Présentation FrenchWeb: Qu'est-ce que la visualisation des données?Présentation FrenchWeb: Qu'est-ce que la visualisation des données?
Présentation FrenchWeb: Qu'est-ce que la visualisation des données?
 
Research Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutionsResearch Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutions
 
Reserve bank of india
Reserve bank of india Reserve bank of india
Reserve bank of india
 
What is big data?
What is big data?What is big data?
What is big data?
 
Data Management for Librarians: An Introduction
Data Management for Librarians: An IntroductionData Management for Librarians: An Introduction
Data Management for Librarians: An Introduction
 
Data, information & its attributes uwsb
Data, information & its attributes   uwsbData, information & its attributes   uwsb
Data, information & its attributes uwsb
 
DATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGEDATA MINING TOOL- ORANGE
DATA MINING TOOL- ORANGE
 
Introduction to computers by abdul rahaman
Introduction to computers by abdul rahamanIntroduction to computers by abdul rahaman
Introduction to computers by abdul rahaman
 
Data Strategy
Data StrategyData Strategy
Data Strategy
 

Ähnlich wie Big Data Fundamentals

Bioinformatics&Databases.ppt
Bioinformatics&Databases.pptBioinformatics&Databases.ppt
Bioinformatics&Databases.pptBlackHunt1
 
Info systems databases
Info systems databasesInfo systems databases
Info systems databasesMR Z
 
Introduction to database
Introduction to databaseIntroduction to database
Introduction to databaseSuleman Memon
 
Multi-Model Data Query Languages and Processing Paradigms
Multi-Model Data Query Languages and Processing ParadigmsMulti-Model Data Query Languages and Processing Paradigms
Multi-Model Data Query Languages and Processing ParadigmsJiaheng Lu
 
Chapter 2 - Introduction to Data Science.pptx
Chapter 2 - Introduction to Data Science.pptxChapter 2 - Introduction to Data Science.pptx
Chapter 2 - Introduction to Data Science.pptxWollo UNiversity
 
Semi-automated Exploration and Extraction of Data in Scientific Tables
Semi-automated Exploration and Extraction of Data in Scientific TablesSemi-automated Exploration and Extraction of Data in Scientific Tables
Semi-automated Exploration and Extraction of Data in Scientific TablesElsevier
 
Kskv kutch university DBMS unit 1 basic concepts, data,information,database,...
Kskv kutch university DBMS unit 1  basic concepts, data,information,database,...Kskv kutch university DBMS unit 1  basic concepts, data,information,database,...
Kskv kutch university DBMS unit 1 basic concepts, data,information,database,...Dipen Parmar
 
Lecture-8-The-GIS-Database-Part-1.ppt
Lecture-8-The-GIS-Database-Part-1.pptLecture-8-The-GIS-Database-Part-1.ppt
Lecture-8-The-GIS-Database-Part-1.pptPrabin Pandit
 
Database Systems - Lecture Week 1
Database Systems - Lecture Week 1Database Systems - Lecture Week 1
Database Systems - Lecture Week 1Dios Kurniawan
 
L2 identifying photos
L2   identifying photosL2   identifying photos
L2 identifying photosMrJRogers
 
Database Management Systems 1
Database Management Systems 1Database Management Systems 1
Database Management Systems 1Nickkisha Farrell
 
Hector Guerrero- Road to Business Analytics
Hector Guerrero- Road to Business AnalyticsHector Guerrero- Road to Business Analytics
Hector Guerrero- Road to Business AnalyticsErika Marr
 
MS Sql Server: Introduction To Database Concepts
MS Sql Server: Introduction To Database ConceptsMS Sql Server: Introduction To Database Concepts
MS Sql Server: Introduction To Database ConceptsDataminingTools Inc
 

Ähnlich wie Big Data Fundamentals (20)

Bioinformatics&Databases.ppt
Bioinformatics&Databases.pptBioinformatics&Databases.ppt
Bioinformatics&Databases.ppt
 
Database
DatabaseDatabase
Database
 
Text Mining
Text MiningText Mining
Text Mining
 
Info systems databases
Info systems databasesInfo systems databases
Info systems databases
 
nosql.pptx
nosql.pptxnosql.pptx
nosql.pptx
 
Database_Introduction.pdf
Database_Introduction.pdfDatabase_Introduction.pdf
Database_Introduction.pdf
 
unit 1.pptx
unit 1.pptxunit 1.pptx
unit 1.pptx
 
Introduction to database
Introduction to databaseIntroduction to database
Introduction to database
 
Multi-Model Data Query Languages and Processing Paradigms
Multi-Model Data Query Languages and Processing ParadigmsMulti-Model Data Query Languages and Processing Paradigms
Multi-Model Data Query Languages and Processing Paradigms
 
Chapter 2 - Introduction to Data Science.pptx
Chapter 2 - Introduction to Data Science.pptxChapter 2 - Introduction to Data Science.pptx
Chapter 2 - Introduction to Data Science.pptx
 
Dma unit 1
Dma unit   1Dma unit   1
Dma unit 1
 
Semi-automated Exploration and Extraction of Data in Scientific Tables
Semi-automated Exploration and Extraction of Data in Scientific TablesSemi-automated Exploration and Extraction of Data in Scientific Tables
Semi-automated Exploration and Extraction of Data in Scientific Tables
 
Kskv kutch university DBMS unit 1 basic concepts, data,information,database,...
Kskv kutch university DBMS unit 1  basic concepts, data,information,database,...Kskv kutch university DBMS unit 1  basic concepts, data,information,database,...
Kskv kutch university DBMS unit 1 basic concepts, data,information,database,...
 
Lecture-8-The-GIS-Database-Part-1.ppt
Lecture-8-The-GIS-Database-Part-1.pptLecture-8-The-GIS-Database-Part-1.ppt
Lecture-8-The-GIS-Database-Part-1.ppt
 
Database Systems - Lecture Week 1
Database Systems - Lecture Week 1Database Systems - Lecture Week 1
Database Systems - Lecture Week 1
 
L2 identifying photos
L2   identifying photosL2   identifying photos
L2 identifying photos
 
Database Management Systems 1
Database Management Systems 1Database Management Systems 1
Database Management Systems 1
 
Hector Guerrero- Road to Business Analytics
Hector Guerrero- Road to Business AnalyticsHector Guerrero- Road to Business Analytics
Hector Guerrero- Road to Business Analytics
 
RDMS AND SQL
RDMS AND SQLRDMS AND SQL
RDMS AND SQL
 
MS Sql Server: Introduction To Database Concepts
MS Sql Server: Introduction To Database ConceptsMS Sql Server: Introduction To Database Concepts
MS Sql Server: Introduction To Database Concepts
 

Mehr von Clement Levallois

Part 2: covid-19 on Twitter, with a focus on 3 new seed accounts
Part 2: covid-19 on Twitter, with a focus on 3 new seed accountsPart 2: covid-19 on Twitter, with a focus on 3 new seed accounts
Part 2: covid-19 on Twitter, with a focus on 3 new seed accountsClement Levallois
 
Education et intelligence artificielle
Education et intelligence artificielleEducation et intelligence artificielle
Education et intelligence artificielleClement Levallois
 
3 familles d'intelligence artificielle et leurs applications business
3 familles d'intelligence artificielle et leurs applications business3 familles d'intelligence artificielle et leurs applications business
3 familles d'intelligence artificielle et leurs applications businessClement Levallois
 
Presentation of programming languages for beginners
Presentation of programming languages for beginnersPresentation of programming languages for beginners
Presentation of programming languages for beginnersClement Levallois
 
Umigon: crowdsourcing in the classroom
Umigon: crowdsourcing in the classroomUmigon: crowdsourcing in the classroom
Umigon: crowdsourcing in the classroomClement Levallois
 
Data visualization: enjeux pour le business
Data visualization: enjeux pour le businessData visualization: enjeux pour le business
Data visualization: enjeux pour le businessClement Levallois
 
An explanation of machine learning for business
An explanation of machine learning for businessAn explanation of machine learning for business
An explanation of machine learning for businessClement Levallois
 
A Primer on Text Mining for Business
A Primer on Text Mining for BusinessA Primer on Text Mining for Business
A Primer on Text Mining for BusinessClement Levallois
 
The business stakes of data integration
The business stakes of data integrationThe business stakes of data integration
The business stakes of data integrationClement Levallois
 

Mehr von Clement Levallois (11)

Part 2: covid-19 on Twitter, with a focus on 3 new seed accounts
Part 2: covid-19 on Twitter, with a focus on 3 new seed accountsPart 2: covid-19 on Twitter, with a focus on 3 new seed accounts
Part 2: covid-19 on Twitter, with a focus on 3 new seed accounts
 
Education et intelligence artificielle
Education et intelligence artificielleEducation et intelligence artificielle
Education et intelligence artificielle
 
3 familles d'intelligence artificielle et leurs applications business
3 familles d'intelligence artificielle et leurs applications business3 familles d'intelligence artificielle et leurs applications business
3 familles d'intelligence artificielle et leurs applications business
 
Presentation of programming languages for beginners
Presentation of programming languages for beginnersPresentation of programming languages for beginners
Presentation of programming languages for beginners
 
Umigon: crowdsourcing in the classroom
Umigon: crowdsourcing in the classroomUmigon: crowdsourcing in the classroom
Umigon: crowdsourcing in the classroom
 
Data visualization: enjeux pour le business
Data visualization: enjeux pour le businessData visualization: enjeux pour le business
Data visualization: enjeux pour le business
 
Twitter for beginners
Twitter for beginnersTwitter for beginners
Twitter for beginners
 
An explanation of machine learning for business
An explanation of machine learning for businessAn explanation of machine learning for business
An explanation of machine learning for business
 
Data and personalization
Data and personalizationData and personalization
Data and personalization
 
A Primer on Text Mining for Business
A Primer on Text Mining for BusinessA Primer on Text Mining for Business
A Primer on Text Mining for Business
 
The business stakes of data integration
The business stakes of data integrationThe business stakes of data integration
The business stakes of data integration
 

Kürzlich hochgeladen

Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpinRaunakKeshri1
 
Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991
Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991
Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991RKavithamani
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesFatimaKhan178732
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphThiyagu K
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxiammrhaywood
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxRoyAbrique
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Celine George
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introductionMaksud Ahmed
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxGaneshChakor2
 
Hybridoma Technology ( Production , Purification , and Application )
Hybridoma Technology  ( Production , Purification , and Application  ) Hybridoma Technology  ( Production , Purification , and Application  )
Hybridoma Technology ( Production , Purification , and Application ) Sakshi Ghasle
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationnomboosow
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingTechSoup
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3JemimahLaneBuaron
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptxVS Mahajan Coaching Centre
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxSayali Powar
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...Marc Dusseiller Dusjagr
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppCeline George
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxNirmalaLoungPoorunde1
 

Kürzlich hochgeladen (20)

Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991
Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991
Industrial Policy - 1948, 1956, 1973, 1977, 1980, 1991
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and Actinides
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptx
 
Hybridoma Technology ( Production , Purification , and Application )
Hybridoma Technology  ( Production , Purification , and Application  ) Hybridoma Technology  ( Production , Purification , and Application  )
Hybridoma Technology ( Production , Purification , and Application )
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communication
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions  for the students and aspirants of Chemistry12th.pptxOrganic Name Reactions  for the students and aspirants of Chemistry12th.pptx
Organic Name Reactions for the students and aspirants of Chemistry12th.pptx
 
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptxPOINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
POINT- BIOCHEMISTRY SEM 2 ENZYMES UNIT 5.pptx
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
 
URLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website AppURLs and Routing in the Odoo 17 Website App
URLs and Routing in the Odoo 17 Website App
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptx
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 

Big Data Fundamentals

  • 1. MK99 – Big Data 1 Big data & cross-platform analytics MOOC lectures Pr. Clement Levallois
  • 2. MK99 – Big Data 2 Note • You will find terms squared like this in the slides. • These terms are part of your quizz assignment for the week, to be found on the online platform. • Often technical terms, it is vital that you know their meaning, as they are the basic vocabulary of data science.
  • 3. MK99 – Big Data 3 What you we learn here: • The definition of data • The many ways to speak about data.
  • 4. MK99 – Big Data 4 What is data? • Definition: – Originally, data is plural for “datum”, a Latin word – a “datum” is a single factual, a single entity, a single point of matter. – Datums are most often called “data points”. – Data represents a collection of data points. • We speak also of datasets instead of data (so a dataset is a collection of data points). – Today, “data” is used in a singular or plural form. -> “My data is…”, but we sometimes still hear “My data are…”
  • 5. MK99 – Big Data 5 Examples! • A date • A color • A grade • An address • A price • A number of friends • A longitude • An index of poverty • An item in a catalogue • A sound frequency • A list of favorite movies • A movie • A number of clicks on a web page • A duration • A book • An author of a book • A vote at an election • A still image • A measurement of CO2 • A response to a consumer survey • A purchase ticket • A curriculum vitae • Your blood pressure
  • 6. MK99 – Big Data 6 Data or Metadata? • Metadata: this is some data describing some other data. • Example: – The bibliographical reference describing a book. – Key takeaway: data without metadata can be worthless -> What would you do with a pile of 10,000 books without any indication on their title, authors, or date of publication? – The difference between data and metadata is not always relevant -> In the alumni network dataset, what is data and what is metadata? The metadata The data
  • 7. MK99 – Big Data 7 Data: how to talk about it • Example of some data point -> “Four more years. http://t.co/bAJE6Vom” This textual data is in digital form (because it is stored in bits on a computer, not by hand writing on a piece of paper) (as opposed to analog). The tweet is textual (as opposed to numerical. In programming, text can also be called a String) this is the type (or format) of the data The tweet appears plain text “plain text” is one sort of format for text. Others formats are JSON, XML or CSV this is the format of the data The text of the tweet is encoded in UTF-8 this is the encoding of the data The tweet is part of a list of tweets I collected this is the data structure The tweet is stored in a Word file on my laptop this is the format of the data Notice the ambiguity in the terminology!
  • 8. MK99 – Big Data 8 Data stored in tables: vocabulary Rows, or lines. Each represents a data point Columns. Each represents an attribute of the data. Header: these are the names of the attributes. A value. (can be empty). A spreadsheet, or a table. This is still the most common way to represent a dataset.
  • 9. MK99 – Big Data 9 Data and size. • The size of data gives an idea of what can be done with it and the challenges it might pose. • The size of a dataset can be expressed in number of datapoints. – Often called lines because we store them as lines in a spreadsheet • Or the size can be expressed in terms of the storage space the data takes on a computer drive (see next slide). – A dataset with 23,000 lines and 16 columns takes ~ 2.6Mb when presented as an Excel file.
  • 10. MK99 – Big Data 10 Bytes! 1 bit Can store a yes / no value 8 bits 1 byte (or octet) Can store a single letter ~ 1,000 bytes 1 kilobyte (kb) Can store a paragraph ~ 1 million bytes 1 megabyte (Mb) Can store a low res picture. ~ 1 billion bytes 1 gigabyte (Gb) Can store a movie ~ 1 trillion bytes 1 terabyte (Tb) Can store 1,000 movies. Size of commercial hard drives in 2014. ~ 1,000 trillion bytes 1 petabyte (Pb) 20 Pb = Google Maps in 2013 Most firms today
  • 11. MK99 – Big Data 11 Much more… • Make the readings for Week 1. • Watch the video on big data, also in Week 1. • Start following #bigdata and #dataanalytics on Twitter.