SlideShare une entreprise Scribd logo
1  sur  25
Télécharger pour lire hors ligne
1© 2014 Pivotal Software, Inc. All rights reserved. 1© 2014 Pivotal Software, Inc. All rights reserved.
Data as the
New Oil
Producing Value for the Oil
& Gas Industry
2© 2014 Pivotal Software, Inc. All rights reserved.
Data: The New Oil
•  Oil and gas exploration and production
activities generate large amounts of data
from sensors, logistics, business operations
and more
•  The rise of cost-effective data collection,
storage and computing devices is giving an
established industry a new boost
•  Producing value from big data is a challenge
and an opportunity in the industry
•  The promise of Data as “the new oil” is
realized when we can tap into its value in a
meaningful, cross-functional way to enhance
decision-making, which provides the
competitive advantage
http://commons.wikimedia.org/wiki/
File:Rig_wind_river.jpg
3© 2014 Pivotal Software, Inc. All rights reserved.
Challenges and Opportunities
Challenges
•  Current data collection and
curation practices are mostly in
silos
•  Different data models for data
from different functions in the
organization
•  Missing or incomplete data for
integrating varied data sources
•  Legacy systems that need to be
taken into consideration
•  Domain expertise in silos – ability
to work across domains needed
for extracting full value from ‘the
new oil’
Opportunities
•  Data Lake concepts and technology
allow data to be stored centrally and
curated in a meaningful way
•  Comprehensive, single view of the
truth:
–  Integration of data assets lead to more
informed, powerful models
–  Many “first-of-its-kind” models become
possible for the business
–  These models enhance decision
making by providing better predictions
•  Real-time application of predictive
models can speed up responses to
events
4© 2014 Pivotal Software, Inc. All rights reserved.
Significant Use Cases
•  Predictive Maintenance
–  Model equipment function and failure
–  Optimize maintenance schedules
–  Real-time alerts based on predictive models
•  Seismic Imaging and Inversion Analysis
•  Reservoir Simulation and Management
•  Production Optimization
•  Supply Chain Optimization
•  Energy Trading
5© 2014 Pivotal Software, Inc. All rights reserved. 5© Copyright 2013 Pivotal. All rights reserved.
Predictive Analytics for Drilling
Operations
Predicting Equipment Function and Failure
6© 2014 Pivotal Software, Inc. All rights reserved.
Predictive Analytics for Drilling Operations
Business Goals
•  Increase efficiency, reduce
costs
•  Take steps towards zero
unplanned downtime
•  Predict equipment function
for maintenance
•  Provide early warning
system for equipment failure
•  Optimize parameters for
drilling operations
•  Improve health, safety and
environmental risks
Big Data Sources
•  Sensor data
–  Surface and down-hole
sensors
–  Measurement While Drilling
(MWD)
–  SCADA data
•  Drill Operator data
–  Operator comments
–  Activity log / codes
–  Incident reports / logs
•  And more …
Introduction Data Integration Feature Building Modeling & Impact
7© 2014 Pivotal Software, Inc. All rights reserved.
Predicting Equipment Function and Failure
•  Business Problem: Predict drilling equipment function and failure –
a step towards early warning systems and zero unplanned downtime
•  Motivation: Drilling wells and equipment failure during the process
are expensive. Example: Drilling motor damage could account for
35% of rig non-productive time (NPT) and can cost $150,000 per
incident1
•  Goals:
–  Predict equipment function and failure à this enables:
•  Optimization of parameters for efficient drilling
•  Reducing non-productive drill time (and costs)
•  Reducing failures
–  Provide insights into prominent features impacting operation and failure
Introduction Data Integration Feature Building Modeling & Impact
1 The American Oil & Gas Reporter, April 2014 Cover Story
8© 2014 Pivotal Software, Inc. All rights reserved.
The Eightfold Path of Data Science
Four Phases and Four Differentiating Factors
Technology Selection
Select the right platform and
the right set of tools for solving
the problem at hand
Iterative Approach
Perform each phase in an
agile manner, team up with
domain experts and SMEs,
and iterate as required
Creativity
Take the opportunity to
innovate at every phase
Building a Narrative
Create a fact-based narrative
that clearly communicates
insights to stakeholders
Phase 1: Problem Formulation
Make sure you formulate a
problem that is relevant to the
goals and pain points of the
stakeholders
Phase 2: Data Step
Build the right feature set
making full use of the volume,
variety and velocity of all
available data
Phase 3: Modeling Step
This is where you move from
answering what, where and
when to answering why and
what if?
Phase 4: Application
Create a framework for
integrating the model with
decision making processes
and taking action using the
Internet of Things
Introduction Data Integration Feature Building Modeling & Impact
9© 2014 Pivotal Software, Inc. All rights reserved.
Technology Selection
•  Platform for all phases of the analytics cycle
•  Support development of complex and extensible predictive models to
predict equipment function and failure
•  Provide framework for integrating data from multiple sources across data
warehouses and rig operators
•  Ability to analyze both structured and unstructured data in a unified manner.
For instance:
–  Support fast computation of hundreds of features over time windows within 100s
of millions (or billions / trillions) of records of time-series data
–  Natural language processing pipeline for analysis of operator comments to
identify failures from unstructured text
Introduction Data Integration Feature Building Modeling & Impact
PL/PythonPL/R
10© 2014 Pivotal Software, Inc. All rights reserved.
Predictive Analytics for Drilling Operations
•  Consider two examples:
–  Predicting drill rate-of-penetration (ROP)
–  Predicting drilling equipment failure
•  Primary data sources for these examples
–  Drill Rig Sensor Data: Depth, Rate of Penetration (ROP), RPM,
Torque, Weight on Bit, etc… ( >billions of records)
–  Operator Data: Drill Bit details, Failure details, Component details etc…
(>100s of thousands of records)
Introduction Data Integration Feature Building Modeling & Impact
Data
Integration
Feature
Building
Modeling
11© 2014 Pivotal Software, Inc. All rights reserved.
Drill Rig
Sensor
data
Comprehensive Data Integration Framework
•  Need a comprehensive framework for data integration
at scale
–  Data cleansing – removing NULLs and outliers, missing value
impuation techniques
–  Standardizing columns that are used to join across multiple data
sources
Sensor and
Operator data
integrated
Introduction Data Integration Feature Building Modeling & Impact
Operator
data
12© 2014 Pivotal Software, Inc. All rights reserved.
Data Integration Challenges
•  Data sources do not use consistent entries in
features / columns that link them (join columns) – e.g.
well names
•  Manually entered data (some operator data) is prone to
entry errors
–  Hitting several keys
–  Key strokes not appearing (e.g. missing a character / digit)
•  Invalid values for sensor measurements
–  Invalid values could be placeholders for sensor malfunction or
non-recording time
–  Duration of invalid values can range from one-off occurrences to
several hours
Introduction Data Integration Feature Building Modeling & Impact
13© 2014 Pivotal Software, Inc. All rights reserved.
Data Integration Challenges
•  Standardization of join column entries across data sources
•  Problem: Data sources do not use consistent entries in join columns
•  Resolution options: Derive a canonical representation for the columns
–  Regular expression transformations
–  String edit distance computations à closest distance matches
–  + Manual correction
•  Include standardized entries in each table
Introduction Data Integration Feature Building Modeling & Impact
Data Source #1 Data Source #2
A B C A-B-C
PARENT-TEACHER PARENT-TEACHERS
GRANDFATHER CLOK GRANDFATHER_CLOCK
KOALA 123 KOALA 122
14© 2014 Pivotal Software, Inc. All rights reserved.
Data Integration Challenges
•  Problem: Manually entered data is prone to operator entry errors
–  Hitting several keys
–  Key strokes not appearing (e.g. missing a digit / character)
•  Resolution options:
–  Ignore rows if depth does not lie between previous and next values
–  Replace value with interpolated result
Timestamp Depth
2014-09-01 00:06:00 13504
2014-09-02 00:05:00 140068
2014-09-03 00:07:00 14754
2014-09-04 00:11:00 15388
2014-09-05 00:16:00 16100
Introduction Data Integration Feature Building Modeling & Impact
15© 2014 Pivotal Software, Inc. All rights reserved.
Understanding Correlations in Data
•  Summary statistics and
Correlations between
variables need to be
computed at-scale for >1000s
of variable combinations
•  Able to leverage MADlib’s
parallel implementation of:
–  ‘summary’ function
–  Pearson’s correlation
Introduction Data Integration Feature Building Modeling & Impact
16© 2014 Pivotal Software, Inc. All rights reserved.
Big Data Machine Learning in SQL
Introduction Data Integration Feature Building Modeling & Impact
Predictive Modeling Library
Linear Systems
•  Sparse and Dense Solvers
Matrix Factorization
•  Single Value Decomposition
(SVD)
•  Low-Rank
Generalized Linear Models
•  Linear Regression
•  Logistic Regression
•  Multinomial Logistic Regression
•  Cox Proportional Hazards
•  Regression
•  Elastic Net Regularization
•  Sandwich Estimators (Huber
white, clustered, marginal
effects)
Machine Learning Algorithms
•  Principal Component Analysis (PCA)
•  Association Rules (Affinity Analysis,
Market Basket)
•  Topic Modeling (Parallel LDA)
•  Decision Trees
•  Ensemble Learners (Random
Forests)
•  Support Vector Machines
•  Conditional Random Field (CRF)
•  Clustering (K-means)
•  Cross Validation
Descriptive Statistics
Sketch-based
Estimators
•  CountMin (Cormode-
Muthukrishnan)
•  FM (Flajolet-Martin)
•  MFV (Most Frequent
Values)
Correlation
Summary
Support Modules
Array Operations
Sparse Vectors
Random Sampling
Probability Functions
PMML Export
http://madlib.net/
17© 2014 Pivotal Software, Inc. All rights reserved.
Complex Feature Set Across Multiple Data
Sources
•  Often useful to create features
from time series variables and
not just use them raw
•  One such class of features are
statistical features created on
moving windows of time series
data
•  Fast computation of features is
possible on Pivotal’s MPP
platform leveraging window
functions on native SQL (and
MADlib or PL/R if needed for
added functionality)
Introduction Data Integration Feature Building Modeling & Impact
Time
window
18© 2014 Pivotal Software, Inc. All rights reserved.
Complex Feature Set Across Multiple Data
Sources
•  Depth
•  Rate of Penetration
•  Torque
•  Weight on Bit
•  RPM
•  …
•  Drill Bit details
•  Component
details etc.
•  Failure events
•  …
Features on
Time
Windows
•  Mean
•  Median
•  Standard Deviation
•  Range
•  Skewness
•  …
Final Set of
Features on
Time
Windows
Introduction Data Integration Feature Building Modeling & Impact
Leverage GPDB / HAWQ (+ MADlib and PL/R if needed) for fast computation of hundreds
of features over time windows within billions of rows of time-series data
Operator
data
Drill Rig
Sensor
data
19© 2014 Pivotal Software, Inc. All rights reserved.
Working with Time Series Data
•  Pivotal GPDB has built in support for dealing with time series data
–  SQL window functions: e.g. lead, lag, custom windows
–  More details in Pivotal’s Time Series Analysis blogs:
http://blog.pivotal.io/tag/time-series-analysis
Aggregations
•  By time slice
•  By custom window
•  Example aggregates: Avg, median,
variance
Mapping
What time slice does an observation at
a particular timestamp map to?
Pattern detection
Introduction Data Integration Feature Building Modeling & Impact
Rolling averages Gap filling and interpolation
Running Accumulations
20© 2014 Pivotal Software, Inc. All rights reserved.
Predictive Analytics for Drilling Operations
Predict function
•  Predict Rate-of-Penetration
–  Linear Regression
–  Elastic Net Regularized
Regression (Gaussian)
–  Support Vector Machines
Predict failure
•  Predict occurrence of
equipment failure in a
chosen future time window
–  Logistic Regression
–  Elastic Net Regularized
Regression (Binomial)
–  Support Vector Machines
•  Predict remaining life of
equipment
–  Cox Proportional Hazards
Regression
Introduction Data Integration Feature Building Modeling & Impact
Elastic Net Regularized Regression
•  Fits problem statements
•  Ease of interpretation, scoring and
operationalization
•  Provides probability of failure in the
binomial case
•  Leveraged MADlib’s in-database parallel
implementation
21© 2014 Pivotal Software, Inc. All rights reserved.
Background on Elastic Net Regularization
•  Elastic Net regularization seeks to find a weight vector that, for any
given training example set, minimizes:
Advantages Limitations
Ordinary Least
Squares
•  Unbiased estimators
•  Significance levels for coefficients
•  Highly affected by multi-collinearity
•  Requires more records than predictors
•  Feature selection
Elastic Net
Regularization
•  Biased towards smaller MSE
•  Less limitations on number of predictors
•  Better at handling multi-collinearity
•  Feature selection
•  Multiple parameters
•  No significance levels for coefficients
where α∈[0,1], λ≥0 and L(w) is the
linear/logistic objective function
•  If α=0 à Ridge regularization
•  If α=1 à LASSO regularization
Available in MADlib: http://doc.madlib.net/latest/group__grp__elasticnet.html
Introduction Data Integration Feature Building Modeling & Impact
22© 2014 Pivotal Software, Inc. All rights reserved.
Predictive Analytics for Drilling Operations
Predict ROP Predict equipment failure
Introduction Data Integration Feature Building Modeling & ImpactIntroduction Data Integration Feature Building Modeling & Impact
Actual
Predicted
Time
0
0.5
1
0 0.5 1
ROC curve
ROP time series
23© 2014 Pivotal Software, Inc. All rights reserved.
Data Science
Platform and Technology Summary
0.5GB
Platform
PL/PythonPL/R
Visualization
Introduction Data Integration Feature Building Modeling & Impact
24© 2014 Pivotal Software, Inc. All rights reserved.
One step closer to zero unplanned downtime …
•  Ability to fully utilize big data – volume, variety and velocity
•  Comprehensive data integration framework for multiple complex
data sources
•  Learn and implement best practices for:
–  Data governance policy
–  Data capture techniques, flow, and curation
–  Platform and toolset for data fabric
•  Build and operationalize complex and extensible predictive
models
•  Improve efficiency, reduce costs and risks
•  Gain competitive advantage by leveraging full big data analytics
pipeline
Business Impacts
Introduction Data Integration Feature Building Modeling & Impact
A NEW PLATFORM FOR A NEW ERA

Contenu connexe

Tendances

Application of machine learning in oil and gas
Application of machine learning in oil and gasApplication of machine learning in oil and gas
Application of machine learning in oil and gasPriyanka Raghavan
 
The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...
The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...
The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...Bernard Marr
 
IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...
IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...
IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...DataWorks Summit
 
Master Data Management - Aligning Data, Process, and Governance
Master Data Management - Aligning Data, Process, and GovernanceMaster Data Management - Aligning Data, Process, and Governance
Master Data Management - Aligning Data, Process, and GovernanceDATAVERSITY
 
Industry 4.0 : Digital Reinvention in Manufacturing Industry
Industry 4.0 : Digital Reinvention in Manufacturing IndustryIndustry 4.0 : Digital Reinvention in Manufacturing Industry
Industry 4.0 : Digital Reinvention in Manufacturing IndustryEthan Chee
 
Process Mining Introduction
Process Mining IntroductionProcess Mining Introduction
Process Mining IntroductionVala Ali Rohani
 
Petroleum Engineering
Petroleum EngineeringPetroleum Engineering
Petroleum EngineeringTarek Saati
 
Final SLB Project
Final SLB ProjectFinal SLB Project
Final SLB ProjectEbuka David
 
Breakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data StoreBreakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data StoreCloudera, Inc.
 
Robotic Process Automation (RPA)
Robotic Process Automation (RPA)Robotic Process Automation (RPA)
Robotic Process Automation (RPA)Mufaddal Nullwala
 
Big data analytics in healthcare industry
Big data analytics in healthcare industryBig data analytics in healthcare industry
Big data analytics in healthcare industryBhagath Gopinath
 
A Head Start in Getting Value from Machine Learning
A Head Start in Getting Value from Machine LearningA Head Start in Getting Value from Machine Learning
A Head Start in Getting Value from Machine LearningCelonis
 
Industry 4.0 and sustainable energy
Industry 4.0 and sustainable energyIndustry 4.0 and sustainable energy
Industry 4.0 and sustainable energyBayu imadul Bilad
 
Industry 4.0 @ Jyothi Nivas
Industry 4.0 @ Jyothi NivasIndustry 4.0 @ Jyothi Nivas
Industry 4.0 @ Jyothi NivasAman Jain
 

Tendances (20)

Application of machine learning in oil and gas
Application of machine learning in oil and gasApplication of machine learning in oil and gas
Application of machine learning in oil and gas
 
The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...
The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...
The Incredible Ways Shell Uses Artificial Intelligence To Help Transform The ...
 
IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...
IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...
IIoT + Predictive Analytics: Solving for Disruption in Oil & Gas and Energy &...
 
Industry 4.0
Industry 4.0Industry 4.0
Industry 4.0
 
Master Data Management - Aligning Data, Process, and Governance
Master Data Management - Aligning Data, Process, and GovernanceMaster Data Management - Aligning Data, Process, and Governance
Master Data Management - Aligning Data, Process, and Governance
 
Industry 4.0 and Smart Factory
Industry 4.0 and Smart FactoryIndustry 4.0 and Smart Factory
Industry 4.0 and Smart Factory
 
Industry 4.0 : Digital Reinvention in Manufacturing Industry
Industry 4.0 : Digital Reinvention in Manufacturing IndustryIndustry 4.0 : Digital Reinvention in Manufacturing Industry
Industry 4.0 : Digital Reinvention in Manufacturing Industry
 
Big data
Big dataBig data
Big data
 
Process Mining Introduction
Process Mining IntroductionProcess Mining Introduction
Process Mining Introduction
 
Petroleum Engineering
Petroleum EngineeringPetroleum Engineering
Petroleum Engineering
 
Final SLB Project
Final SLB ProjectFinal SLB Project
Final SLB Project
 
Breakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data StoreBreakout: Hadoop and the Operational Data Store
Breakout: Hadoop and the Operational Data Store
 
Robotic Process Automation (RPA)
Robotic Process Automation (RPA)Robotic Process Automation (RPA)
Robotic Process Automation (RPA)
 
Big data
Big dataBig data
Big data
 
What is big data?
What is big data?What is big data?
What is big data?
 
Big data analytics in healthcare industry
Big data analytics in healthcare industryBig data analytics in healthcare industry
Big data analytics in healthcare industry
 
A Head Start in Getting Value from Machine Learning
A Head Start in Getting Value from Machine LearningA Head Start in Getting Value from Machine Learning
A Head Start in Getting Value from Machine Learning
 
Industry 4.0 and sustainable energy
Industry 4.0 and sustainable energyIndustry 4.0 and sustainable energy
Industry 4.0 and sustainable energy
 
Industry 4.0 @ Jyothi Nivas
Industry 4.0 @ Jyothi NivasIndustry 4.0 @ Jyothi Nivas
Industry 4.0 @ Jyothi Nivas
 
Reservoir modeling and characterization
Reservoir modeling and characterizationReservoir modeling and characterization
Reservoir modeling and characterization
 

En vedette

Data Science Case Studies: The Internet of Things: Implications for the Enter...
Data Science Case Studies: The Internet of Things: Implications for the Enter...Data Science Case Studies: The Internet of Things: Implications for the Enter...
Data Science Case Studies: The Internet of Things: Implications for the Enter...VMware Tanzu
 
Pipeline analytics concept for posting
Pipeline analytics concept for postingPipeline analytics concept for posting
Pipeline analytics concept for postingMark Peco
 
Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas Helen Fisher
 
Life Cycle of Oil & Gas Wells
Life Cycle of Oil & Gas WellsLife Cycle of Oil & Gas Wells
Life Cycle of Oil & Gas WellsMohamed Elnagar
 
Visual Design with Data
Visual Design with DataVisual Design with Data
Visual Design with DataSeth Familian
 
Data Science At Scale for IoT on the Pivotal Platform
Data Science At Scale for IoT on the Pivotal PlatformData Science At Scale for IoT on the Pivotal Platform
Data Science At Scale for IoT on the Pivotal PlatformGautam S. Muralidhar
 
Improving Marketing ROI with Google Analytics
Improving Marketing ROI with Google AnalyticsImproving Marketing ROI with Google Analytics
Improving Marketing ROI with Google AnalyticsLoves Data
 
10 Tips for using the Google Analytics App
10 Tips for using the Google Analytics App10 Tips for using the Google Analytics App
10 Tips for using the Google Analytics AppLoves Data
 
Stop guessing! Leverage Your Customer Data
Stop guessing! Leverage Your Customer DataStop guessing! Leverage Your Customer Data
Stop guessing! Leverage Your Customer DataLunaMetrics
 
Optimisation with Google Analytics
Optimisation with Google AnalyticsOptimisation with Google Analytics
Optimisation with Google AnalyticsLoves Data
 
Google Analytics Multi-Channel Funnels
Google Analytics Multi-Channel FunnelsGoogle Analytics Multi-Channel Funnels
Google Analytics Multi-Channel FunnelsLoves Data
 
Extract Big Returns from Investments in Big Data and Predictive Analytics in ...
Extract Big Returns from Investments in Big Data and Predictive Analytics in ...Extract Big Returns from Investments in Big Data and Predictive Analytics in ...
Extract Big Returns from Investments in Big Data and Predictive Analytics in ...SAP Analytics
 
Oil and Gas production: from exploration wells to the last stage of production.
Oil and Gas production: from exploration wells to the last stage of production.Oil and Gas production: from exploration wells to the last stage of production.
Oil and Gas production: from exploration wells to the last stage of production.Eric HAGENIMANA
 
Oil 101 - Introduction to Production
Oil 101 - Introduction to ProductionOil 101 - Introduction to Production
Oil 101 - Introduction to ProductionEKT Interactive
 
Drilling and producing well
Drilling and  producing wellDrilling and  producing well
Drilling and producing wellRaja Rosenani
 
Predictive Data Analytics to Help Your Customers
Predictive Data Analytics to Help Your CustomersPredictive Data Analytics to Help Your Customers
Predictive Data Analytics to Help Your CustomersExperian_US
 
Duties & responsibility
Duties & responsibilityDuties & responsibility
Duties & responsibilityZaw Min
 
Google Analytics: Understanding Your Users
Google Analytics: Understanding Your UsersGoogle Analytics: Understanding Your Users
Google Analytics: Understanding Your UsersLunaMetrics
 

En vedette (20)

Data Science Case Studies: The Internet of Things: Implications for the Enter...
Data Science Case Studies: The Internet of Things: Implications for the Enter...Data Science Case Studies: The Internet of Things: Implications for the Enter...
Data Science Case Studies: The Internet of Things: Implications for the Enter...
 
Pipeline analytics concept for posting
Pipeline analytics concept for postingPipeline analytics concept for posting
Pipeline analytics concept for posting
 
Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas
 
Life Cycle of Oil & Gas Wells
Life Cycle of Oil & Gas WellsLife Cycle of Oil & Gas Wells
Life Cycle of Oil & Gas Wells
 
Introduction to Oil and Gas Industry - Upstream Midstream Downstream
Introduction to Oil and Gas Industry - Upstream Midstream DownstreamIntroduction to Oil and Gas Industry - Upstream Midstream Downstream
Introduction to Oil and Gas Industry - Upstream Midstream Downstream
 
Visual Design with Data
Visual Design with DataVisual Design with Data
Visual Design with Data
 
Data Science At Scale for IoT on the Pivotal Platform
Data Science At Scale for IoT on the Pivotal PlatformData Science At Scale for IoT on the Pivotal Platform
Data Science At Scale for IoT on the Pivotal Platform
 
Improving Marketing ROI with Google Analytics
Improving Marketing ROI with Google AnalyticsImproving Marketing ROI with Google Analytics
Improving Marketing ROI with Google Analytics
 
10 Tips for using the Google Analytics App
10 Tips for using the Google Analytics App10 Tips for using the Google Analytics App
10 Tips for using the Google Analytics App
 
Stop guessing! Leverage Your Customer Data
Stop guessing! Leverage Your Customer DataStop guessing! Leverage Your Customer Data
Stop guessing! Leverage Your Customer Data
 
Optimisation with Google Analytics
Optimisation with Google AnalyticsOptimisation with Google Analytics
Optimisation with Google Analytics
 
Google Analytics Multi-Channel Funnels
Google Analytics Multi-Channel FunnelsGoogle Analytics Multi-Channel Funnels
Google Analytics Multi-Channel Funnels
 
Extract Big Returns from Investments in Big Data and Predictive Analytics in ...
Extract Big Returns from Investments in Big Data and Predictive Analytics in ...Extract Big Returns from Investments in Big Data and Predictive Analytics in ...
Extract Big Returns from Investments in Big Data and Predictive Analytics in ...
 
Oil and Gas production: from exploration wells to the last stage of production.
Oil and Gas production: from exploration wells to the last stage of production.Oil and Gas production: from exploration wells to the last stage of production.
Oil and Gas production: from exploration wells to the last stage of production.
 
Oil 101 - Introduction to Production
Oil 101 - Introduction to ProductionOil 101 - Introduction to Production
Oil 101 - Introduction to Production
 
Big Data and Analytics
Big Data and AnalyticsBig Data and Analytics
Big Data and Analytics
 
Drilling and producing well
Drilling and  producing wellDrilling and  producing well
Drilling and producing well
 
Predictive Data Analytics to Help Your Customers
Predictive Data Analytics to Help Your CustomersPredictive Data Analytics to Help Your Customers
Predictive Data Analytics to Help Your Customers
 
Duties & responsibility
Duties & responsibilityDuties & responsibility
Duties & responsibility
 
Google Analytics: Understanding Your Users
Google Analytics: Understanding Your UsersGoogle Analytics: Understanding Your Users
Google Analytics: Understanding Your Users
 

Similaire à Data as the New Oil: Producing Value in the Oil and Gas Industry

Self-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsSelf-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsDenodo
 
MineExcellence Drilling Platform
MineExcellence Drilling Platform MineExcellence Drilling Platform
MineExcellence Drilling Platform MineExcellence
 
20150917Advances in MRO IT_ Wangermann
20150917Advances in MRO IT_ Wangermann20150917Advances in MRO IT_ Wangermann
20150917Advances in MRO IT_ WangermannJohn Wangermann
 
Postgres in Production - Best Practices 2014
Postgres in Production - Best Practices 2014Postgres in Production - Best Practices 2014
Postgres in Production - Best Practices 2014EDB
 
Best Practices for Monitoring Cloud Networks
Best Practices for Monitoring Cloud NetworksBest Practices for Monitoring Cloud Networks
Best Practices for Monitoring Cloud NetworksThousandEyes
 
The Shifting Landscape of Data Integration
The Shifting Landscape of Data IntegrationThe Shifting Landscape of Data Integration
The Shifting Landscape of Data IntegrationDATAVERSITY
 
Challenges of Operationalising Data Science in Production
Challenges of Operationalising Data Science in ProductionChallenges of Operationalising Data Science in Production
Challenges of Operationalising Data Science in Productioniguazio
 
Resume quaish abuzer
Resume quaish abuzerResume quaish abuzer
Resume quaish abuzerquaish abuzer
 
Productionising Machine Learning Models
Productionising Machine Learning ModelsProductionising Machine Learning Models
Productionising Machine Learning ModelsTash Bickley
 
Contexti / Oracle - Big Data : From Pilot to Production
Contexti / Oracle - Big Data : From Pilot to ProductionContexti / Oracle - Big Data : From Pilot to Production
Contexti / Oracle - Big Data : From Pilot to ProductionContexti
 
Akram_Resume_ETL_Informatica
Akram_Resume_ETL_InformaticaAkram_Resume_ETL_Informatica
Akram_Resume_ETL_InformaticaAkram Bhuyan
 
Analytics: The Next Killer App for Optimizing IT? #GartnerIOM
Analytics: The Next Killer App for Optimizing IT? #GartnerIOMAnalytics: The Next Killer App for Optimizing IT? #GartnerIOM
Analytics: The Next Killer App for Optimizing IT? #GartnerIOMTeamQuest Corporation
 
Build and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus Webinar
Build and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus WebinarBuild and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus Webinar
Build and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus WebinarImpetus Technologies
 
Designing for Testability: Differentiator in a Competitive Market
Designing for Testability: Differentiator in a Competitive MarketDesigning for Testability: Differentiator in a Competitive Market
Designing for Testability: Differentiator in a Competitive MarketTechWell
 
Postgres in production.2014
Postgres in production.2014Postgres in production.2014
Postgres in production.2014EDB
 
Suffering from “Franken” Monitoring?
Suffering from “Franken” Monitoring?Suffering from “Franken” Monitoring?
Suffering from “Franken” Monitoring?Riverbed Technology
 
rough-work.pptx
rough-work.pptxrough-work.pptx
rough-work.pptxsharpan
 
First Friday Forum December 5th Featuring Pentaho
First Friday Forum December 5th Featuring PentahoFirst Friday Forum December 5th Featuring Pentaho
First Friday Forum December 5th Featuring PentahoArchipelagoIS
 
Implementing Advanced Analytics Platform
Implementing Advanced Analytics PlatformImplementing Advanced Analytics Platform
Implementing Advanced Analytics PlatformArvind Sathi
 

Similaire à Data as the New Oil: Producing Value in the Oil and Gas Industry (20)

Self-Service Analytics with Guard Rails
Self-Service Analytics with Guard RailsSelf-Service Analytics with Guard Rails
Self-Service Analytics with Guard Rails
 
MineExcellence Drilling Platform
MineExcellence Drilling Platform MineExcellence Drilling Platform
MineExcellence Drilling Platform
 
20150917Advances in MRO IT_ Wangermann
20150917Advances in MRO IT_ Wangermann20150917Advances in MRO IT_ Wangermann
20150917Advances in MRO IT_ Wangermann
 
Postgres in Production - Best Practices 2014
Postgres in Production - Best Practices 2014Postgres in Production - Best Practices 2014
Postgres in Production - Best Practices 2014
 
Best Practices for Monitoring Cloud Networks
Best Practices for Monitoring Cloud NetworksBest Practices for Monitoring Cloud Networks
Best Practices for Monitoring Cloud Networks
 
The Shifting Landscape of Data Integration
The Shifting Landscape of Data IntegrationThe Shifting Landscape of Data Integration
The Shifting Landscape of Data Integration
 
Challenges of Operationalising Data Science in Production
Challenges of Operationalising Data Science in ProductionChallenges of Operationalising Data Science in Production
Challenges of Operationalising Data Science in Production
 
Resume quaish abuzer
Resume quaish abuzerResume quaish abuzer
Resume quaish abuzer
 
Productionising Machine Learning Models
Productionising Machine Learning ModelsProductionising Machine Learning Models
Productionising Machine Learning Models
 
Contexti / Oracle - Big Data : From Pilot to Production
Contexti / Oracle - Big Data : From Pilot to ProductionContexti / Oracle - Big Data : From Pilot to Production
Contexti / Oracle - Big Data : From Pilot to Production
 
Akram_Resume_ETL_Informatica
Akram_Resume_ETL_InformaticaAkram_Resume_ETL_Informatica
Akram_Resume_ETL_Informatica
 
NZS-4555 - IT Analytics Keynote - IT Analytics for the Enterprise
NZS-4555 - IT Analytics Keynote - IT Analytics for the EnterpriseNZS-4555 - IT Analytics Keynote - IT Analytics for the Enterprise
NZS-4555 - IT Analytics Keynote - IT Analytics for the Enterprise
 
Analytics: The Next Killer App for Optimizing IT? #GartnerIOM
Analytics: The Next Killer App for Optimizing IT? #GartnerIOMAnalytics: The Next Killer App for Optimizing IT? #GartnerIOM
Analytics: The Next Killer App for Optimizing IT? #GartnerIOM
 
Build and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus Webinar
Build and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus WebinarBuild and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus Webinar
Build and Manage Hadoop & Oracle NoSQL DB Solutions- Impetus Webinar
 
Designing for Testability: Differentiator in a Competitive Market
Designing for Testability: Differentiator in a Competitive MarketDesigning for Testability: Differentiator in a Competitive Market
Designing for Testability: Differentiator in a Competitive Market
 
Postgres in production.2014
Postgres in production.2014Postgres in production.2014
Postgres in production.2014
 
Suffering from “Franken” Monitoring?
Suffering from “Franken” Monitoring?Suffering from “Franken” Monitoring?
Suffering from “Franken” Monitoring?
 
rough-work.pptx
rough-work.pptxrough-work.pptx
rough-work.pptx
 
First Friday Forum December 5th Featuring Pentaho
First Friday Forum December 5th Featuring PentahoFirst Friday Forum December 5th Featuring Pentaho
First Friday Forum December 5th Featuring Pentaho
 
Implementing Advanced Analytics Platform
Implementing Advanced Analytics PlatformImplementing Advanced Analytics Platform
Implementing Advanced Analytics Platform
 

Plus de VMware Tanzu

What AI Means For Your Product Strategy And What To Do About It
What AI Means For Your Product Strategy And What To Do About ItWhat AI Means For Your Product Strategy And What To Do About It
What AI Means For Your Product Strategy And What To Do About ItVMware Tanzu
 
Make the Right Thing the Obvious Thing at Cardinal Health 2023
Make the Right Thing the Obvious Thing at Cardinal Health 2023Make the Right Thing the Obvious Thing at Cardinal Health 2023
Make the Right Thing the Obvious Thing at Cardinal Health 2023VMware Tanzu
 
Enhancing DevEx and Simplifying Operations at Scale
Enhancing DevEx and Simplifying Operations at ScaleEnhancing DevEx and Simplifying Operations at Scale
Enhancing DevEx and Simplifying Operations at ScaleVMware Tanzu
 
Spring Update | July 2023
Spring Update | July 2023Spring Update | July 2023
Spring Update | July 2023VMware Tanzu
 
Platforms, Platform Engineering, & Platform as a Product
Platforms, Platform Engineering, & Platform as a ProductPlatforms, Platform Engineering, & Platform as a Product
Platforms, Platform Engineering, & Platform as a ProductVMware Tanzu
 
Building Cloud Ready Apps
Building Cloud Ready AppsBuilding Cloud Ready Apps
Building Cloud Ready AppsVMware Tanzu
 
Spring Boot 3 And Beyond
Spring Boot 3 And BeyondSpring Boot 3 And Beyond
Spring Boot 3 And BeyondVMware Tanzu
 
Spring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdf
Spring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdfSpring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdf
Spring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdfVMware Tanzu
 
Simplify and Scale Enterprise Apps in the Cloud | Boston 2023
Simplify and Scale Enterprise Apps in the Cloud | Boston 2023Simplify and Scale Enterprise Apps in the Cloud | Boston 2023
Simplify and Scale Enterprise Apps in the Cloud | Boston 2023VMware Tanzu
 
Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023
Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023
Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023VMware Tanzu
 
tanzu_developer_connect.pptx
tanzu_developer_connect.pptxtanzu_developer_connect.pptx
tanzu_developer_connect.pptxVMware Tanzu
 
Tanzu Virtual Developer Connect Workshop - French
Tanzu Virtual Developer Connect Workshop - FrenchTanzu Virtual Developer Connect Workshop - French
Tanzu Virtual Developer Connect Workshop - FrenchVMware Tanzu
 
Tanzu Developer Connect Workshop - English
Tanzu Developer Connect Workshop - EnglishTanzu Developer Connect Workshop - English
Tanzu Developer Connect Workshop - EnglishVMware Tanzu
 
Virtual Developer Connect Workshop - English
Virtual Developer Connect Workshop - EnglishVirtual Developer Connect Workshop - English
Virtual Developer Connect Workshop - EnglishVMware Tanzu
 
Tanzu Developer Connect - French
Tanzu Developer Connect - FrenchTanzu Developer Connect - French
Tanzu Developer Connect - FrenchVMware Tanzu
 
Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023
Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023
Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023VMware Tanzu
 
SpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring Boot
SpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring BootSpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring Boot
SpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring BootVMware Tanzu
 
SpringOne Tour: The Influential Software Engineer
SpringOne Tour: The Influential Software EngineerSpringOne Tour: The Influential Software Engineer
SpringOne Tour: The Influential Software EngineerVMware Tanzu
 
SpringOne Tour: Domain-Driven Design: Theory vs Practice
SpringOne Tour: Domain-Driven Design: Theory vs PracticeSpringOne Tour: Domain-Driven Design: Theory vs Practice
SpringOne Tour: Domain-Driven Design: Theory vs PracticeVMware Tanzu
 
SpringOne Tour: Spring Recipes: A Collection of Common-Sense Solutions
SpringOne Tour: Spring Recipes: A Collection of Common-Sense SolutionsSpringOne Tour: Spring Recipes: A Collection of Common-Sense Solutions
SpringOne Tour: Spring Recipes: A Collection of Common-Sense SolutionsVMware Tanzu
 

Plus de VMware Tanzu (20)

What AI Means For Your Product Strategy And What To Do About It
What AI Means For Your Product Strategy And What To Do About ItWhat AI Means For Your Product Strategy And What To Do About It
What AI Means For Your Product Strategy And What To Do About It
 
Make the Right Thing the Obvious Thing at Cardinal Health 2023
Make the Right Thing the Obvious Thing at Cardinal Health 2023Make the Right Thing the Obvious Thing at Cardinal Health 2023
Make the Right Thing the Obvious Thing at Cardinal Health 2023
 
Enhancing DevEx and Simplifying Operations at Scale
Enhancing DevEx and Simplifying Operations at ScaleEnhancing DevEx and Simplifying Operations at Scale
Enhancing DevEx and Simplifying Operations at Scale
 
Spring Update | July 2023
Spring Update | July 2023Spring Update | July 2023
Spring Update | July 2023
 
Platforms, Platform Engineering, & Platform as a Product
Platforms, Platform Engineering, & Platform as a ProductPlatforms, Platform Engineering, & Platform as a Product
Platforms, Platform Engineering, & Platform as a Product
 
Building Cloud Ready Apps
Building Cloud Ready AppsBuilding Cloud Ready Apps
Building Cloud Ready Apps
 
Spring Boot 3 And Beyond
Spring Boot 3 And BeyondSpring Boot 3 And Beyond
Spring Boot 3 And Beyond
 
Spring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdf
Spring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdfSpring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdf
Spring Cloud Gateway - SpringOne Tour 2023 Charles Schwab.pdf
 
Simplify and Scale Enterprise Apps in the Cloud | Boston 2023
Simplify and Scale Enterprise Apps in the Cloud | Boston 2023Simplify and Scale Enterprise Apps in the Cloud | Boston 2023
Simplify and Scale Enterprise Apps in the Cloud | Boston 2023
 
Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023
Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023
Simplify and Scale Enterprise Apps in the Cloud | Seattle 2023
 
tanzu_developer_connect.pptx
tanzu_developer_connect.pptxtanzu_developer_connect.pptx
tanzu_developer_connect.pptx
 
Tanzu Virtual Developer Connect Workshop - French
Tanzu Virtual Developer Connect Workshop - FrenchTanzu Virtual Developer Connect Workshop - French
Tanzu Virtual Developer Connect Workshop - French
 
Tanzu Developer Connect Workshop - English
Tanzu Developer Connect Workshop - EnglishTanzu Developer Connect Workshop - English
Tanzu Developer Connect Workshop - English
 
Virtual Developer Connect Workshop - English
Virtual Developer Connect Workshop - EnglishVirtual Developer Connect Workshop - English
Virtual Developer Connect Workshop - English
 
Tanzu Developer Connect - French
Tanzu Developer Connect - FrenchTanzu Developer Connect - French
Tanzu Developer Connect - French
 
Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023
Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023
Simplify and Scale Enterprise Apps in the Cloud | Dallas 2023
 
SpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring Boot
SpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring BootSpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring Boot
SpringOne Tour: Deliver 15-Factor Applications on Kubernetes with Spring Boot
 
SpringOne Tour: The Influential Software Engineer
SpringOne Tour: The Influential Software EngineerSpringOne Tour: The Influential Software Engineer
SpringOne Tour: The Influential Software Engineer
 
SpringOne Tour: Domain-Driven Design: Theory vs Practice
SpringOne Tour: Domain-Driven Design: Theory vs PracticeSpringOne Tour: Domain-Driven Design: Theory vs Practice
SpringOne Tour: Domain-Driven Design: Theory vs Practice
 
SpringOne Tour: Spring Recipes: A Collection of Common-Sense Solutions
SpringOne Tour: Spring Recipes: A Collection of Common-Sense SolutionsSpringOne Tour: Spring Recipes: A Collection of Common-Sense Solutions
SpringOne Tour: Spring Recipes: A Collection of Common-Sense Solutions
 

Dernier

Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data VisualizationKianJazayeri1
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024Susanna-Assunta Sansone
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksdeepakthakur548787
 
IBEF report on the Insurance market in India
IBEF report on the Insurance market in IndiaIBEF report on the Insurance market in India
IBEF report on the Insurance market in IndiaManalVerma4
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxMike Bennett
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxaleedritatuxx
 
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptxThe Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptxTasha Penwell
 
Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxHimangsuNath
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Seán Kennedy
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...Amil Baba Dawood bangali
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Thomas Poetter
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Boston Institute of Analytics
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataTecnoIncentive
 
World Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdf
World Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdfWorld Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdf
World Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdfsimulationsindia
 
Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Seán Kennedy
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxSimranPal17
 
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...Jack Cole
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfblazblazml
 
Rithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfRithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfrahulyadav957181
 

Dernier (20)

Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data Visualization
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing works
 
IBEF report on the Insurance market in India
IBEF report on the Insurance market in IndiaIBEF report on the Insurance market in India
IBEF report on the Insurance market in India
 
Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptx
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
 
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptxThe Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
The Power of Data-Driven Storytelling_ Unveiling the Layers of Insight.pptx
 
Networking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptxNetworking Case Study prepared by teacher.pptx
Networking Case Study prepared by teacher.pptx
 
Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...Student profile product demonstration on grades, ability, well-being and mind...
Student profile product demonstration on grades, ability, well-being and mind...
 
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
NO1 Certified Black Magic Specialist Expert Amil baba in Lahore Islamabad Raw...
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
 
Cyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded dataCyber awareness ppt on the recorded data
Cyber awareness ppt on the recorded data
 
Insurance Churn Prediction Data Analysis Project
Insurance Churn Prediction Data Analysis ProjectInsurance Churn Prediction Data Analysis Project
Insurance Churn Prediction Data Analysis Project
 
World Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdf
World Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdfWorld Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdf
World Economic Forum Metaverse Ecosystem By Utpal Chakraborty.pdf
 
Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...Student Profile Sample report on improving academic performance by uniting gr...
Student Profile Sample report on improving academic performance by uniting gr...
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptx
 
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
why-transparency-and-traceability-are-essential-for-sustainable-supply-chains...
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
 
Rithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdfRithik Kumar Singh codealpha pythohn.pdf
Rithik Kumar Singh codealpha pythohn.pdf
 

Data as the New Oil: Producing Value in the Oil and Gas Industry

  • 1. 1© 2014 Pivotal Software, Inc. All rights reserved. 1© 2014 Pivotal Software, Inc. All rights reserved. Data as the New Oil Producing Value for the Oil & Gas Industry
  • 2. 2© 2014 Pivotal Software, Inc. All rights reserved. Data: The New Oil •  Oil and gas exploration and production activities generate large amounts of data from sensors, logistics, business operations and more •  The rise of cost-effective data collection, storage and computing devices is giving an established industry a new boost •  Producing value from big data is a challenge and an opportunity in the industry •  The promise of Data as “the new oil” is realized when we can tap into its value in a meaningful, cross-functional way to enhance decision-making, which provides the competitive advantage http://commons.wikimedia.org/wiki/ File:Rig_wind_river.jpg
  • 3. 3© 2014 Pivotal Software, Inc. All rights reserved. Challenges and Opportunities Challenges •  Current data collection and curation practices are mostly in silos •  Different data models for data from different functions in the organization •  Missing or incomplete data for integrating varied data sources •  Legacy systems that need to be taken into consideration •  Domain expertise in silos – ability to work across domains needed for extracting full value from ‘the new oil’ Opportunities •  Data Lake concepts and technology allow data to be stored centrally and curated in a meaningful way •  Comprehensive, single view of the truth: –  Integration of data assets lead to more informed, powerful models –  Many “first-of-its-kind” models become possible for the business –  These models enhance decision making by providing better predictions •  Real-time application of predictive models can speed up responses to events
  • 4. 4© 2014 Pivotal Software, Inc. All rights reserved. Significant Use Cases •  Predictive Maintenance –  Model equipment function and failure –  Optimize maintenance schedules –  Real-time alerts based on predictive models •  Seismic Imaging and Inversion Analysis •  Reservoir Simulation and Management •  Production Optimization •  Supply Chain Optimization •  Energy Trading
  • 5. 5© 2014 Pivotal Software, Inc. All rights reserved. 5© Copyright 2013 Pivotal. All rights reserved. Predictive Analytics for Drilling Operations Predicting Equipment Function and Failure
  • 6. 6© 2014 Pivotal Software, Inc. All rights reserved. Predictive Analytics for Drilling Operations Business Goals •  Increase efficiency, reduce costs •  Take steps towards zero unplanned downtime •  Predict equipment function for maintenance •  Provide early warning system for equipment failure •  Optimize parameters for drilling operations •  Improve health, safety and environmental risks Big Data Sources •  Sensor data –  Surface and down-hole sensors –  Measurement While Drilling (MWD) –  SCADA data •  Drill Operator data –  Operator comments –  Activity log / codes –  Incident reports / logs •  And more … Introduction Data Integration Feature Building Modeling & Impact
  • 7. 7© 2014 Pivotal Software, Inc. All rights reserved. Predicting Equipment Function and Failure •  Business Problem: Predict drilling equipment function and failure – a step towards early warning systems and zero unplanned downtime •  Motivation: Drilling wells and equipment failure during the process are expensive. Example: Drilling motor damage could account for 35% of rig non-productive time (NPT) and can cost $150,000 per incident1 •  Goals: –  Predict equipment function and failure à this enables: •  Optimization of parameters for efficient drilling •  Reducing non-productive drill time (and costs) •  Reducing failures –  Provide insights into prominent features impacting operation and failure Introduction Data Integration Feature Building Modeling & Impact 1 The American Oil & Gas Reporter, April 2014 Cover Story
  • 8. 8© 2014 Pivotal Software, Inc. All rights reserved. The Eightfold Path of Data Science Four Phases and Four Differentiating Factors Technology Selection Select the right platform and the right set of tools for solving the problem at hand Iterative Approach Perform each phase in an agile manner, team up with domain experts and SMEs, and iterate as required Creativity Take the opportunity to innovate at every phase Building a Narrative Create a fact-based narrative that clearly communicates insights to stakeholders Phase 1: Problem Formulation Make sure you formulate a problem that is relevant to the goals and pain points of the stakeholders Phase 2: Data Step Build the right feature set making full use of the volume, variety and velocity of all available data Phase 3: Modeling Step This is where you move from answering what, where and when to answering why and what if? Phase 4: Application Create a framework for integrating the model with decision making processes and taking action using the Internet of Things Introduction Data Integration Feature Building Modeling & Impact
  • 9. 9© 2014 Pivotal Software, Inc. All rights reserved. Technology Selection •  Platform for all phases of the analytics cycle •  Support development of complex and extensible predictive models to predict equipment function and failure •  Provide framework for integrating data from multiple sources across data warehouses and rig operators •  Ability to analyze both structured and unstructured data in a unified manner. For instance: –  Support fast computation of hundreds of features over time windows within 100s of millions (or billions / trillions) of records of time-series data –  Natural language processing pipeline for analysis of operator comments to identify failures from unstructured text Introduction Data Integration Feature Building Modeling & Impact PL/PythonPL/R
  • 10. 10© 2014 Pivotal Software, Inc. All rights reserved. Predictive Analytics for Drilling Operations •  Consider two examples: –  Predicting drill rate-of-penetration (ROP) –  Predicting drilling equipment failure •  Primary data sources for these examples –  Drill Rig Sensor Data: Depth, Rate of Penetration (ROP), RPM, Torque, Weight on Bit, etc… ( >billions of records) –  Operator Data: Drill Bit details, Failure details, Component details etc… (>100s of thousands of records) Introduction Data Integration Feature Building Modeling & Impact Data Integration Feature Building Modeling
  • 11. 11© 2014 Pivotal Software, Inc. All rights reserved. Drill Rig Sensor data Comprehensive Data Integration Framework •  Need a comprehensive framework for data integration at scale –  Data cleansing – removing NULLs and outliers, missing value impuation techniques –  Standardizing columns that are used to join across multiple data sources Sensor and Operator data integrated Introduction Data Integration Feature Building Modeling & Impact Operator data
  • 12. 12© 2014 Pivotal Software, Inc. All rights reserved. Data Integration Challenges •  Data sources do not use consistent entries in features / columns that link them (join columns) – e.g. well names •  Manually entered data (some operator data) is prone to entry errors –  Hitting several keys –  Key strokes not appearing (e.g. missing a character / digit) •  Invalid values for sensor measurements –  Invalid values could be placeholders for sensor malfunction or non-recording time –  Duration of invalid values can range from one-off occurrences to several hours Introduction Data Integration Feature Building Modeling & Impact
  • 13. 13© 2014 Pivotal Software, Inc. All rights reserved. Data Integration Challenges •  Standardization of join column entries across data sources •  Problem: Data sources do not use consistent entries in join columns •  Resolution options: Derive a canonical representation for the columns –  Regular expression transformations –  String edit distance computations à closest distance matches –  + Manual correction •  Include standardized entries in each table Introduction Data Integration Feature Building Modeling & Impact Data Source #1 Data Source #2 A B C A-B-C PARENT-TEACHER PARENT-TEACHERS GRANDFATHER CLOK GRANDFATHER_CLOCK KOALA 123 KOALA 122
  • 14. 14© 2014 Pivotal Software, Inc. All rights reserved. Data Integration Challenges •  Problem: Manually entered data is prone to operator entry errors –  Hitting several keys –  Key strokes not appearing (e.g. missing a digit / character) •  Resolution options: –  Ignore rows if depth does not lie between previous and next values –  Replace value with interpolated result Timestamp Depth 2014-09-01 00:06:00 13504 2014-09-02 00:05:00 140068 2014-09-03 00:07:00 14754 2014-09-04 00:11:00 15388 2014-09-05 00:16:00 16100 Introduction Data Integration Feature Building Modeling & Impact
  • 15. 15© 2014 Pivotal Software, Inc. All rights reserved. Understanding Correlations in Data •  Summary statistics and Correlations between variables need to be computed at-scale for >1000s of variable combinations •  Able to leverage MADlib’s parallel implementation of: –  ‘summary’ function –  Pearson’s correlation Introduction Data Integration Feature Building Modeling & Impact
  • 16. 16© 2014 Pivotal Software, Inc. All rights reserved. Big Data Machine Learning in SQL Introduction Data Integration Feature Building Modeling & Impact Predictive Modeling Library Linear Systems •  Sparse and Dense Solvers Matrix Factorization •  Single Value Decomposition (SVD) •  Low-Rank Generalized Linear Models •  Linear Regression •  Logistic Regression •  Multinomial Logistic Regression •  Cox Proportional Hazards •  Regression •  Elastic Net Regularization •  Sandwich Estimators (Huber white, clustered, marginal effects) Machine Learning Algorithms •  Principal Component Analysis (PCA) •  Association Rules (Affinity Analysis, Market Basket) •  Topic Modeling (Parallel LDA) •  Decision Trees •  Ensemble Learners (Random Forests) •  Support Vector Machines •  Conditional Random Field (CRF) •  Clustering (K-means) •  Cross Validation Descriptive Statistics Sketch-based Estimators •  CountMin (Cormode- Muthukrishnan) •  FM (Flajolet-Martin) •  MFV (Most Frequent Values) Correlation Summary Support Modules Array Operations Sparse Vectors Random Sampling Probability Functions PMML Export http://madlib.net/
  • 17. 17© 2014 Pivotal Software, Inc. All rights reserved. Complex Feature Set Across Multiple Data Sources •  Often useful to create features from time series variables and not just use them raw •  One such class of features are statistical features created on moving windows of time series data •  Fast computation of features is possible on Pivotal’s MPP platform leveraging window functions on native SQL (and MADlib or PL/R if needed for added functionality) Introduction Data Integration Feature Building Modeling & Impact Time window
  • 18. 18© 2014 Pivotal Software, Inc. All rights reserved. Complex Feature Set Across Multiple Data Sources •  Depth •  Rate of Penetration •  Torque •  Weight on Bit •  RPM •  … •  Drill Bit details •  Component details etc. •  Failure events •  … Features on Time Windows •  Mean •  Median •  Standard Deviation •  Range •  Skewness •  … Final Set of Features on Time Windows Introduction Data Integration Feature Building Modeling & Impact Leverage GPDB / HAWQ (+ MADlib and PL/R if needed) for fast computation of hundreds of features over time windows within billions of rows of time-series data Operator data Drill Rig Sensor data
  • 19. 19© 2014 Pivotal Software, Inc. All rights reserved. Working with Time Series Data •  Pivotal GPDB has built in support for dealing with time series data –  SQL window functions: e.g. lead, lag, custom windows –  More details in Pivotal’s Time Series Analysis blogs: http://blog.pivotal.io/tag/time-series-analysis Aggregations •  By time slice •  By custom window •  Example aggregates: Avg, median, variance Mapping What time slice does an observation at a particular timestamp map to? Pattern detection Introduction Data Integration Feature Building Modeling & Impact Rolling averages Gap filling and interpolation Running Accumulations
  • 20. 20© 2014 Pivotal Software, Inc. All rights reserved. Predictive Analytics for Drilling Operations Predict function •  Predict Rate-of-Penetration –  Linear Regression –  Elastic Net Regularized Regression (Gaussian) –  Support Vector Machines Predict failure •  Predict occurrence of equipment failure in a chosen future time window –  Logistic Regression –  Elastic Net Regularized Regression (Binomial) –  Support Vector Machines •  Predict remaining life of equipment –  Cox Proportional Hazards Regression Introduction Data Integration Feature Building Modeling & Impact Elastic Net Regularized Regression •  Fits problem statements •  Ease of interpretation, scoring and operationalization •  Provides probability of failure in the binomial case •  Leveraged MADlib’s in-database parallel implementation
  • 21. 21© 2014 Pivotal Software, Inc. All rights reserved. Background on Elastic Net Regularization •  Elastic Net regularization seeks to find a weight vector that, for any given training example set, minimizes: Advantages Limitations Ordinary Least Squares •  Unbiased estimators •  Significance levels for coefficients •  Highly affected by multi-collinearity •  Requires more records than predictors •  Feature selection Elastic Net Regularization •  Biased towards smaller MSE •  Less limitations on number of predictors •  Better at handling multi-collinearity •  Feature selection •  Multiple parameters •  No significance levels for coefficients where α∈[0,1], λ≥0 and L(w) is the linear/logistic objective function •  If α=0 à Ridge regularization •  If α=1 à LASSO regularization Available in MADlib: http://doc.madlib.net/latest/group__grp__elasticnet.html Introduction Data Integration Feature Building Modeling & Impact
  • 22. 22© 2014 Pivotal Software, Inc. All rights reserved. Predictive Analytics for Drilling Operations Predict ROP Predict equipment failure Introduction Data Integration Feature Building Modeling & ImpactIntroduction Data Integration Feature Building Modeling & Impact Actual Predicted Time 0 0.5 1 0 0.5 1 ROC curve ROP time series
  • 23. 23© 2014 Pivotal Software, Inc. All rights reserved. Data Science Platform and Technology Summary 0.5GB Platform PL/PythonPL/R Visualization Introduction Data Integration Feature Building Modeling & Impact
  • 24. 24© 2014 Pivotal Software, Inc. All rights reserved. One step closer to zero unplanned downtime … •  Ability to fully utilize big data – volume, variety and velocity •  Comprehensive data integration framework for multiple complex data sources •  Learn and implement best practices for: –  Data governance policy –  Data capture techniques, flow, and curation –  Platform and toolset for data fabric •  Build and operationalize complex and extensible predictive models •  Improve efficiency, reduce costs and risks •  Gain competitive advantage by leveraging full big data analytics pipeline Business Impacts Introduction Data Integration Feature Building Modeling & Impact
  • 25. A NEW PLATFORM FOR A NEW ERA