SlideShare una empresa de Scribd logo
1 de 29
Descargar para leer sin conexión
Online statistical analysis
using transducers and
sketch algorithms
simon@metabase.com

@sbelak
Metabase ❤

github.com/metabase/metabase
• Open source analytics tool

• Building a “data scientist in a box”

• Hundreds to billions of rows

• Some DBs optimised for analytics, some not
Transducers at a glance
• Transducers decomplect recursion mechanism,
transformation, building the output, and access mechanism











• 3 user-facing “protocols”: xf, transdcucer, and CollReduce
xf and transducer
Composing transducers
1. comp xfs



2. xf and transducer

3. github.com/henrygarner/redux

post-complete fuse











On-line/streaming
analysis
Many batch algorithms can
be turned into online ones
Parallelize independent computations Find a recursive relation
github.com/MastodonC/kixi.stats
• Count

• (Arithmetic) mean

• Geometric mean

• Harmonic mean

• Median

• Variance

• Interquartile range

• Standard deviation

• Standard error

• Skewness
• Kurtosis

• Covariance

• Covariance matrix

• Correlation

• Correlation matrix

• Simple linear regression

• Standard error of the mean

• Standard error of the estimate

• Standard error of the prediction

• …
Single-pass analysis
Using transducers is
worth it for the
composition alone
Annoyances
• Can only transduce one coll at a time

• Always have to pass in an xf

• Having functions that return a transducer or not is error
prone
Sketch algorithms
Idea: summarise your
data with some data
structure and query that
Histograms
Histogram construction
1. Pick a number of buckets K

2. For each incoming value:

1. If a bucket for it exists, increment it

2. else, add a new bucket with count = 1 

3. If there are > K buckets, find the two most adjacent
buckets and merge them
Nice property: merge
Estimating values
• Assume the bin mean in also its median

• Do weighted interpolations

• Often we can be precise up to the two bounding buckets
Nice property II: 

decouples data collection
from computation
github.com/bigmlcom/histogram
Aside: transducers are a
good way to wrap Java/
imperative construction
Having distributions
readily available is great
Sampling trick
Time slices
What about
categorical data?
Count–min sketch
Often approximations
are good enough
github.com/addthis/stream-lib
Takeouts
• Transducers are not only performant but also a good
modularization protocol

• You don’t realise how often you want a distribution until
you have it readily available

• Often approximations are good enough

• You can get surprisingly far on a single machine
Questions
simon@metabase.com

@sbelak

Más contenido relacionado

La actualidad más candente

Collo -01 , en
Collo -01 , enCollo -01 , en
Collo -01 , en지현 이
 
Grafana optimization for Prometheus
Grafana optimization for PrometheusGrafana optimization for Prometheus
Grafana optimization for PrometheusMitsuhiro Tanda
 
Production-Ready BIG ML Workflows - from zero to hero
Production-Ready BIG ML Workflows - from zero to heroProduction-Ready BIG ML Workflows - from zero to hero
Production-Ready BIG ML Workflows - from zero to heroDaniel Marcous
 
An introduction to Workload Modelling for Cloud Applications
An introduction to Workload Modelling for Cloud ApplicationsAn introduction to Workload Modelling for Cloud Applications
An introduction to Workload Modelling for Cloud ApplicationsRavi Yogesh
 
React, Flux, and Realtime RSVPs
React, Flux, and Realtime RSVPsReact, Flux, and Realtime RSVPs
React, Flux, and Realtime RSVPsAlex Klibisz
 
Presto Summit 2018 - 09 - Netflix Iceberg
Presto Summit 2018  - 09 - Netflix IcebergPresto Summit 2018  - 09 - Netflix Iceberg
Presto Summit 2018 - 09 - Netflix Icebergkbajda
 
Data management and pipelines Measure Camp - San Francisco
Data management and pipelines Measure Camp - San FranciscoData management and pipelines Measure Camp - San Francisco
Data management and pipelines Measure Camp - San FranciscoSho Fola Soboyejo
 
Nosql- Introduction for Beginners
Nosql-  Introduction for BeginnersNosql-  Introduction for Beginners
Nosql- Introduction for BeginnersRahul Dhawani
 
Diminuendo! Tactics in Support of FaaS Migrations Slides
Diminuendo! Tactics in Support of FaaS Migrations SlidesDiminuendo! Tactics in Support of FaaS Migrations Slides
Diminuendo! Tactics in Support of FaaS Migrations SlidesSebastian Werner
 
Logging in The World of DevOps
Logging in The World of DevOps Logging in The World of DevOps
Logging in The World of DevOps DevOps Indonesia
 
Slick 3.0 functional programming and db side effects
Slick 3.0   functional programming and db side effectsSlick 3.0   functional programming and db side effects
Slick 3.0 functional programming and db side effectsJoost de Vries
 
RxJS streams handling for Padawan
RxJS streams handling for PadawanRxJS streams handling for Padawan
RxJS streams handling for PadawanSeven Peaks Speaks
 
Monitoring pg with_graphite_grafana
Monitoring pg with_graphite_grafanaMonitoring pg with_graphite_grafana
Monitoring pg with_graphite_grafanaJan Wieck
 
Spark Pitfalls meetup UnderscoreIL
Spark Pitfalls meetup UnderscoreILSpark Pitfalls meetup UnderscoreIL
Spark Pitfalls meetup UnderscoreILlioron22
 
Haystack Live tallison_202010_v2
Haystack Live tallison_202010_v2Haystack Live tallison_202010_v2
Haystack Live tallison_202010_v2Tim Allison
 
IBM Extreme Blue FTP Discovery Week 2 Presentation
IBM Extreme Blue FTP Discovery Week 2 PresentationIBM Extreme Blue FTP Discovery Week 2 Presentation
IBM Extreme Blue FTP Discovery Week 2 PresentationUniversity of St Andrews
 
Overkill Analytics Seattle Spark Meetup
Overkill Analytics Seattle Spark MeetupOverkill Analytics Seattle Spark Meetup
Overkill Analytics Seattle Spark MeetupClaudiu Barbura
 
Stream Reasoning/CEP
Stream Reasoning/CEPStream Reasoning/CEP
Stream Reasoning/CEPcfolie
 
Modeling the Smart and Connected City of the Future with Kafka and Spark
Modeling the Smart and Connected City of the Future with Kafka and SparkModeling the Smart and Connected City of the Future with Kafka and Spark
Modeling the Smart and Connected City of the Future with Kafka and SparkSingleStore
 

La actualidad más candente (20)

Collo -01 , en
Collo -01 , enCollo -01 , en
Collo -01 , en
 
Grafana optimization for Prometheus
Grafana optimization for PrometheusGrafana optimization for Prometheus
Grafana optimization for Prometheus
 
Production-Ready BIG ML Workflows - from zero to hero
Production-Ready BIG ML Workflows - from zero to heroProduction-Ready BIG ML Workflows - from zero to hero
Production-Ready BIG ML Workflows - from zero to hero
 
An introduction to Workload Modelling for Cloud Applications
An introduction to Workload Modelling for Cloud ApplicationsAn introduction to Workload Modelling for Cloud Applications
An introduction to Workload Modelling for Cloud Applications
 
React, Flux, and Realtime RSVPs
React, Flux, and Realtime RSVPsReact, Flux, and Realtime RSVPs
React, Flux, and Realtime RSVPs
 
Jinchao demo v3
Jinchao demo v3Jinchao demo v3
Jinchao demo v3
 
Presto Summit 2018 - 09 - Netflix Iceberg
Presto Summit 2018  - 09 - Netflix IcebergPresto Summit 2018  - 09 - Netflix Iceberg
Presto Summit 2018 - 09 - Netflix Iceberg
 
Data management and pipelines Measure Camp - San Francisco
Data management and pipelines Measure Camp - San FranciscoData management and pipelines Measure Camp - San Francisco
Data management and pipelines Measure Camp - San Francisco
 
Nosql- Introduction for Beginners
Nosql-  Introduction for BeginnersNosql-  Introduction for Beginners
Nosql- Introduction for Beginners
 
Diminuendo! Tactics in Support of FaaS Migrations Slides
Diminuendo! Tactics in Support of FaaS Migrations SlidesDiminuendo! Tactics in Support of FaaS Migrations Slides
Diminuendo! Tactics in Support of FaaS Migrations Slides
 
Logging in The World of DevOps
Logging in The World of DevOps Logging in The World of DevOps
Logging in The World of DevOps
 
Slick 3.0 functional programming and db side effects
Slick 3.0   functional programming and db side effectsSlick 3.0   functional programming and db side effects
Slick 3.0 functional programming and db side effects
 
RxJS streams handling for Padawan
RxJS streams handling for PadawanRxJS streams handling for Padawan
RxJS streams handling for Padawan
 
Monitoring pg with_graphite_grafana
Monitoring pg with_graphite_grafanaMonitoring pg with_graphite_grafana
Monitoring pg with_graphite_grafana
 
Spark Pitfalls meetup UnderscoreIL
Spark Pitfalls meetup UnderscoreILSpark Pitfalls meetup UnderscoreIL
Spark Pitfalls meetup UnderscoreIL
 
Haystack Live tallison_202010_v2
Haystack Live tallison_202010_v2Haystack Live tallison_202010_v2
Haystack Live tallison_202010_v2
 
IBM Extreme Blue FTP Discovery Week 2 Presentation
IBM Extreme Blue FTP Discovery Week 2 PresentationIBM Extreme Blue FTP Discovery Week 2 Presentation
IBM Extreme Blue FTP Discovery Week 2 Presentation
 
Overkill Analytics Seattle Spark Meetup
Overkill Analytics Seattle Spark MeetupOverkill Analytics Seattle Spark Meetup
Overkill Analytics Seattle Spark Meetup
 
Stream Reasoning/CEP
Stream Reasoning/CEPStream Reasoning/CEP
Stream Reasoning/CEP
 
Modeling the Smart and Connected City of the Future with Kafka and Spark
Modeling the Smart and Connected City of the Future with Kafka and SparkModeling the Smart and Connected City of the Future with Kafka and Spark
Modeling the Smart and Connected City of the Future with Kafka and Spark
 

Similar a Online statistical analysis using transducers and sketch algorithms

Sketch algorithms
Sketch algorithmsSketch algorithms
Sketch algorithmsSimon Belak
 
A Production Quality Sketching Library for the Analysis of Big Data
A Production Quality Sketching Library for the Analysis of Big DataA Production Quality Sketching Library for the Analysis of Big Data
A Production Quality Sketching Library for the Analysis of Big DataDatabricks
 
Avoiding big data antipatterns
Avoiding big data antipatternsAvoiding big data antipatterns
Avoiding big data antipatternsgrepalex
 
Histograms at scale - Monitorama 2019
Histograms at scale - Monitorama 2019Histograms at scale - Monitorama 2019
Histograms at scale - Monitorama 2019Evan Chan
 
Probabilistic data structure
Probabilistic data structureProbabilistic data structure
Probabilistic data structureThinh Dang
 
Machine Learning with ML.NET and Azure - Andy Cross
Machine Learning with ML.NET and Azure - Andy CrossMachine Learning with ML.NET and Azure - Andy Cross
Machine Learning with ML.NET and Azure - Andy CrossAndrew Flatters
 
2013 py con awesome big data algorithms
2013 py con awesome big data algorithms2013 py con awesome big data algorithms
2013 py con awesome big data algorithmsc.titus.brown
 
Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)
Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)
Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)Matthew Lease
 
9. Document Oriented Databases
9. Document Oriented Databases9. Document Oriented Databases
9. Document Oriented DatabasesFabio Fumarola
 
Building graphs to discover information by David Martínez at Big Data Spain 2015
Building graphs to discover information by David Martínez at Big Data Spain 2015Building graphs to discover information by David Martínez at Big Data Spain 2015
Building graphs to discover information by David Martínez at Big Data Spain 2015Big Data Spain
 
Data streaming algorithms
Data streaming algorithmsData streaming algorithms
Data streaming algorithmsSandeep Joshi
 
Building Big Data Streaming Architectures
Building Big Data Streaming ArchitecturesBuilding Big Data Streaming Architectures
Building Big Data Streaming ArchitecturesDavid Martínez Rego
 
7. Key-Value Databases: In Depth
7. Key-Value Databases: In Depth7. Key-Value Databases: In Depth
7. Key-Value Databases: In DepthFabio Fumarola
 
RedisConf18 - Implementing a New Data Structure for Redis
RedisConf18 - Implementing a New Data Structure for Redis  RedisConf18 - Implementing a New Data Structure for Redis
RedisConf18 - Implementing a New Data Structure for Redis Redis Labs
 
Sean Kandel - Data profiling: Assessing the overall content and quality of a ...
Sean Kandel - Data profiling: Assessing the overall content and quality of a ...Sean Kandel - Data profiling: Assessing the overall content and quality of a ...
Sean Kandel - Data profiling: Assessing the overall content and quality of a ...huguk
 
Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)
Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)
Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)Kyle Davis
 

Similar a Online statistical analysis using transducers and sketch algorithms (20)

Sketch algorithms
Sketch algorithmsSketch algorithms
Sketch algorithms
 
A Production Quality Sketching Library for the Analysis of Big Data
A Production Quality Sketching Library for the Analysis of Big DataA Production Quality Sketching Library for the Analysis of Big Data
A Production Quality Sketching Library for the Analysis of Big Data
 
04 open source_tools
04 open source_tools04 open source_tools
04 open source_tools
 
Avoiding big data antipatterns
Avoiding big data antipatternsAvoiding big data antipatterns
Avoiding big data antipatterns
 
Histograms at scale - Monitorama 2019
Histograms at scale - Monitorama 2019Histograms at scale - Monitorama 2019
Histograms at scale - Monitorama 2019
 
05 k-means clustering
05 k-means clustering05 k-means clustering
05 k-means clustering
 
Probabilistic data structure
Probabilistic data structureProbabilistic data structure
Probabilistic data structure
 
Machine Learning with ML.NET and Azure - Andy Cross
Machine Learning with ML.NET and Azure - Andy CrossMachine Learning with ML.NET and Azure - Andy Cross
Machine Learning with ML.NET and Azure - Andy Cross
 
No sql Database
No sql DatabaseNo sql Database
No sql Database
 
Quantum programming
Quantum programmingQuantum programming
Quantum programming
 
2013 py con awesome big data algorithms
2013 py con awesome big data algorithms2013 py con awesome big data algorithms
2013 py con awesome big data algorithms
 
Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)
Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)
Lecture 7: Data-Intensive Computing for Text Analysis (Fall 2011)
 
9. Document Oriented Databases
9. Document Oriented Databases9. Document Oriented Databases
9. Document Oriented Databases
 
Building graphs to discover information by David Martínez at Big Data Spain 2015
Building graphs to discover information by David Martínez at Big Data Spain 2015Building graphs to discover information by David Martínez at Big Data Spain 2015
Building graphs to discover information by David Martínez at Big Data Spain 2015
 
Data streaming algorithms
Data streaming algorithmsData streaming algorithms
Data streaming algorithms
 
Building Big Data Streaming Architectures
Building Big Data Streaming ArchitecturesBuilding Big Data Streaming Architectures
Building Big Data Streaming Architectures
 
7. Key-Value Databases: In Depth
7. Key-Value Databases: In Depth7. Key-Value Databases: In Depth
7. Key-Value Databases: In Depth
 
RedisConf18 - Implementing a New Data Structure for Redis
RedisConf18 - Implementing a New Data Structure for Redis  RedisConf18 - Implementing a New Data Structure for Redis
RedisConf18 - Implementing a New Data Structure for Redis
 
Sean Kandel - Data profiling: Assessing the overall content and quality of a ...
Sean Kandel - Data profiling: Assessing the overall content and quality of a ...Sean Kandel - Data profiling: Assessing the overall content and quality of a ...
Sean Kandel - Data profiling: Assessing the overall content and quality of a ...
 
Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)
Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)
Probabilistic Data Structures (Edmonton Data Science Meetup, March 2018)
 

Más de Simon Belak

Tools for building the future
Tools for building the futureTools for building the future
Tools for building the futureSimon Belak
 
Doing data science with clojure
Doing data science with clojureDoing data science with clojure
Doing data science with clojureSimon Belak
 
Exploratory analysis
Exploratory analysisExploratory analysis
Exploratory analysisSimon Belak
 
Levelling up your data infrastructure
Levelling up your data infrastructureLevelling up your data infrastructure
Levelling up your data infrastructureSimon Belak
 
The subtle art of recommendation
The subtle art of recommendationThe subtle art of recommendation
The subtle art of recommendationSimon Belak
 
Metabase Ljubljana Meetup #2
Metabase Ljubljana Meetup #2Metabase Ljubljana Meetup #2
Metabase Ljubljana Meetup #2Simon Belak
 
Your metrics are wrong
Your metrics are wrongYour metrics are wrong
Your metrics are wrongSimon Belak
 
Writing smart contracts the sane way
Writing smart contracts the sane wayWriting smart contracts the sane way
Writing smart contracts the sane waySimon Belak
 
Save the princess
Save the princessSave the princess
Save the princessSimon Belak
 
Data driven going to market strategy
Data driven going to market strategyData driven going to market strategy
Data driven going to market strategySimon Belak
 
Spec: a lisp-flavoured type system
Spec: a lisp-flavoured type systemSpec: a lisp-flavoured type system
Spec: a lisp-flavoured type systemSimon Belak
 
A data layer in clojure
A data layer in clojureA data layer in clojure
A data layer in clojureSimon Belak
 
Odkrivanje segmentov iz podatkov
Odkrivanje segmentov iz podatkovOdkrivanje segmentov iz podatkov
Odkrivanje segmentov iz podatkovSimon Belak
 
Using Onyx in anger
Using Onyx in angerUsing Onyx in anger
Using Onyx in angerSimon Belak
 
Predicting the future with goopti
Predicting the future with gooptiPredicting the future with goopti
Predicting the future with gooptiSimon Belak
 
Living with-spec
Living with-specLiving with-spec
Living with-specSimon Belak
 
Living with-spec
Living with-specLiving with-spec
Living with-specSimon Belak
 
Doing data science with Clojure
Doing data science with ClojureDoing data science with Clojure
Doing data science with ClojureSimon Belak
 

Más de Simon Belak (20)

Tools for building the future
Tools for building the futureTools for building the future
Tools for building the future
 
Doing data science with clojure
Doing data science with clojureDoing data science with clojure
Doing data science with clojure
 
Exploratory analysis
Exploratory analysisExploratory analysis
Exploratory analysis
 
Levelling up your data infrastructure
Levelling up your data infrastructureLevelling up your data infrastructure
Levelling up your data infrastructure
 
The subtle art of recommendation
The subtle art of recommendationThe subtle art of recommendation
The subtle art of recommendation
 
Metabase Ljubljana Meetup #2
Metabase Ljubljana Meetup #2Metabase Ljubljana Meetup #2
Metabase Ljubljana Meetup #2
 
Your metrics are wrong
Your metrics are wrongYour metrics are wrong
Your metrics are wrong
 
Writing smart contracts the sane way
Writing smart contracts the sane wayWriting smart contracts the sane way
Writing smart contracts the sane way
 
Save the princess
Save the princessSave the princess
Save the princess
 
Data driven going to market strategy
Data driven going to market strategyData driven going to market strategy
Data driven going to market strategy
 
Spec: a lisp-flavoured type system
Spec: a lisp-flavoured type systemSpec: a lisp-flavoured type system
Spec: a lisp-flavoured type system
 
A data layer in clojure
A data layer in clojureA data layer in clojure
A data layer in clojure
 
Odkrivanje segmentov iz podatkov
Odkrivanje segmentov iz podatkovOdkrivanje segmentov iz podatkov
Odkrivanje segmentov iz podatkov
 
Using Onyx in anger
Using Onyx in angerUsing Onyx in anger
Using Onyx in anger
 
Spec + onyx
Spec + onyxSpec + onyx
Spec + onyx
 
Dao of lisp
Dao of lispDao of lisp
Dao of lisp
 
Predicting the future with goopti
Predicting the future with gooptiPredicting the future with goopti
Predicting the future with goopti
 
Living with-spec
Living with-specLiving with-spec
Living with-spec
 
Living with-spec
Living with-specLiving with-spec
Living with-spec
 
Doing data science with Clojure
Doing data science with ClojureDoing data science with Clojure
Doing data science with Clojure
 

Último

Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPsWebinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPsCEPTES Software Inc
 
一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理
一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理
一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理pyhepag
 
一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理cyebo
 
Supply chain analytics to combat the effects of Ukraine-Russia-conflict
Supply chain analytics to combat the effects of Ukraine-Russia-conflictSupply chain analytics to combat the effects of Ukraine-Russia-conflict
Supply chain analytics to combat the effects of Ukraine-Russia-conflictJack Cole
 
2024 Q2 Orange County (CA) Tableau User Group Meeting
2024 Q2 Orange County (CA) Tableau User Group Meeting2024 Q2 Orange County (CA) Tableau User Group Meeting
2024 Q2 Orange County (CA) Tableau User Group MeetingAlison Pitt
 
Business update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIBusiness update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIAlejandraGmez176757
 
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptxMALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptxNidaFaviankaNawawi
 
Fuzzy Sets decision making under information of uncertainty
Fuzzy Sets decision making under information of uncertaintyFuzzy Sets decision making under information of uncertainty
Fuzzy Sets decision making under information of uncertaintyRafigAliyev2
 
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...elinavihriala
 
How I opened a fake bank account and didn't go to prison
How I opened a fake bank account and didn't go to prisonHow I opened a fake bank account and didn't go to prison
How I opened a fake bank account and didn't go to prisonPayment Village
 
2024 Q1 Tableau User Group Leader Quarterly Call
2024 Q1 Tableau User Group Leader Quarterly Call2024 Q1 Tableau User Group Leader Quarterly Call
2024 Q1 Tableau User Group Leader Quarterly Calllward7
 
一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理cyebo
 
basics of data science with application areas.pdf
basics of data science with application areas.pdfbasics of data science with application areas.pdf
basics of data science with application areas.pdfvyankatesh1
 
Jpolillo Amazon PPC - Bid Optimization Sample
Jpolillo Amazon PPC - Bid Optimization SampleJpolillo Amazon PPC - Bid Optimization Sample
Jpolillo Amazon PPC - Bid Optimization SampleJames Polillo
 
How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?DOT TECH
 
AI Imagen for data-storytelling Infographics.pdf
AI Imagen for data-storytelling Infographics.pdfAI Imagen for data-storytelling Infographics.pdf
AI Imagen for data-storytelling Infographics.pdfMichaelSenkow
 
Exploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptxExploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptxDilipVasan
 
how can i exchange pi coins for others currency like Bitcoin
how can i exchange pi coins for others currency like Bitcoinhow can i exchange pi coins for others currency like Bitcoin
how can i exchange pi coins for others currency like BitcoinDOT TECH
 

Último (20)

Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPsWebinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
Webinar One View, Multiple Systems No-Code Integration of Salesforce and ERPs
 
一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理
一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理
一比一原版(Monash毕业证书)莫纳什大学毕业证成绩单如何办理
 
一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理一比一原版麦考瑞大学毕业证成绩单如何办理
一比一原版麦考瑞大学毕业证成绩单如何办理
 
Supply chain analytics to combat the effects of Ukraine-Russia-conflict
Supply chain analytics to combat the effects of Ukraine-Russia-conflictSupply chain analytics to combat the effects of Ukraine-Russia-conflict
Supply chain analytics to combat the effects of Ukraine-Russia-conflict
 
2024 Q2 Orange County (CA) Tableau User Group Meeting
2024 Q2 Orange County (CA) Tableau User Group Meeting2024 Q2 Orange County (CA) Tableau User Group Meeting
2024 Q2 Orange County (CA) Tableau User Group Meeting
 
Business update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMIBusiness update Q1 2024 Lar España Real Estate SOCIMI
Business update Q1 2024 Lar España Real Estate SOCIMI
 
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptxMALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
MALL CUSTOMER SEGMENTATION USING K-MEANS CLUSTERING.pptx
 
Fuzzy Sets decision making under information of uncertainty
Fuzzy Sets decision making under information of uncertaintyFuzzy Sets decision making under information of uncertainty
Fuzzy Sets decision making under information of uncertainty
 
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
2024-05-14 - Tableau User Group - TC24 Hot Topics - Tableau Pulse and Einstei...
 
How I opened a fake bank account and didn't go to prison
How I opened a fake bank account and didn't go to prisonHow I opened a fake bank account and didn't go to prison
How I opened a fake bank account and didn't go to prison
 
2024 Q1 Tableau User Group Leader Quarterly Call
2024 Q1 Tableau User Group Leader Quarterly Call2024 Q1 Tableau User Group Leader Quarterly Call
2024 Q1 Tableau User Group Leader Quarterly Call
 
一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理一比一原版纽卡斯尔大学毕业证成绩单如何办理
一比一原版纽卡斯尔大学毕业证成绩单如何办理
 
Slip-and-fall Injuries: Top Workers' Comp Claims
Slip-and-fall Injuries: Top Workers' Comp ClaimsSlip-and-fall Injuries: Top Workers' Comp Claims
Slip-and-fall Injuries: Top Workers' Comp Claims
 
basics of data science with application areas.pdf
basics of data science with application areas.pdfbasics of data science with application areas.pdf
basics of data science with application areas.pdf
 
Jpolillo Amazon PPC - Bid Optimization Sample
Jpolillo Amazon PPC - Bid Optimization SampleJpolillo Amazon PPC - Bid Optimization Sample
Jpolillo Amazon PPC - Bid Optimization Sample
 
Machine Learning for Accident Severity Prediction
Machine Learning for Accident Severity PredictionMachine Learning for Accident Severity Prediction
Machine Learning for Accident Severity Prediction
 
How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?How can I successfully sell my pi coins in Philippines?
How can I successfully sell my pi coins in Philippines?
 
AI Imagen for data-storytelling Infographics.pdf
AI Imagen for data-storytelling Infographics.pdfAI Imagen for data-storytelling Infographics.pdf
AI Imagen for data-storytelling Infographics.pdf
 
Exploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptxExploratory Data Analysis - Dilip S.pptx
Exploratory Data Analysis - Dilip S.pptx
 
how can i exchange pi coins for others currency like Bitcoin
how can i exchange pi coins for others currency like Bitcoinhow can i exchange pi coins for others currency like Bitcoin
how can i exchange pi coins for others currency like Bitcoin
 

Online statistical analysis using transducers and sketch algorithms