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Copyright of Shell International B.V.
INTELLIGENT PIPELINING OF
DATA
Bryce Bartmann
Principal AI Engineer
May 21 1
Copyright of Shell International B.V.
Copyright of Shell International B.V.
The companies in which Royal Dutch Shell plc directly and indirectly owns investments are separate legal entities. In this presentation “Shell”, “Shell Group” and “Royal Dutch Shell” are sometimes used for
convenience where references are made to Royal Dutch Shell plc and its subsidiaries in general. Likewise, the words “we”, “us” and “our” are also used to refer to Royal Dutch Shell plc and its subsidiaries in
general or to those who work for them. These terms are also used where no useful purpose is served by identifying the particular entity or entities. ‘‘Subsidiaries’’, “Shell subsidiaries” and “Shell companies” as
used in this presentation refer to entities over which Royal Dutch Shell plc either directly or indirectly has control. Entities and unincorporated arrangements over which Shell has joint control are generally
referred to as “joint ventures” and “joint operations”, respectively. Entities over which Shell has significant influence but neither control nor joint control are referred to as “associates”. The term “Shell interest”
is used for convenience to indicate the direct and/or indirect ownership interest held by Shell in an entity or unincorporated joint arrangement, after exclusion of all third-party interest.
This presentation contains forward-looking statements (within the meaning of the U.S. Private Securities Litigation Reform Act of 1995) concerning the financial condition, results of operations and businesses of
Royal Dutch Shell. All statements other than statements of historical fact are, or may be deemed to be, forward-looking statements. Forward-looking statements are statements of future expectations that are
based on management’s current expectations and assumptions and involve known and unknown risks and uncertainties that could cause actual results, performance or events to differ materially from those
expressed or implied in these statements. Forward-looking statements include, among other things, statements concerning the potential exposure of Royal Dutch Shell to market risks and statements expressing
management’s expectations, beliefs, estimates, forecasts, projections and assumptions. These forward-looking statements are identified by their use of terms and phrases such as “aim”, “ambition”,
‘‘anticipate’’, ‘‘believe’’, ‘‘could’’, ‘‘estimate’’, ‘‘expect’’, ‘‘goals’’, ‘‘intend’’, ‘‘may’’, ‘‘objectives’’, ‘‘outlook’’, ‘‘plan’’, ‘‘probably’’, ‘‘project’’, ‘‘risks’’, “schedule”, ‘‘seek’’, ‘‘should’’, ‘‘target’’, ‘‘will’’ and similar
terms and phrases. There are a number of factors that could affect the future operations of Royal Dutch Shell and could cause those results to differ materially from those expressed in the forward-looking
statements included in this presentation, including (without limitation): (a) price fluctuations in crude oil and natural gas; (b) changes in demand for Shell’s products; (c) currency fluctuations; (d) drilling and
production results; (e) reserves estimates; (f) loss of market share and industry competition; (g) environmental and physical risks; (h) risks associated with the identification of suitable potential acquisition
properties and targets, and successful negotiation and completion of such transactions; (i) the risk of doing business in developing countries and countries subject to international sanctions; (j) legislative, fiscal
and regulatory developments including regulatory measures addressing climate change; (k) economic and financial market conditions in various countries and regions; (l) political risks, including the risks of
expropriation and renegotiation of the terms of contracts with governmental entities, delays or advancements in the approval of projects and delays in the reimbursement for shared costs; and (m) changes in
trading conditions. No assurance is provided that future dividend payments will match or exceed previous dividend payments. All forward-looking statements contained in this presentation are expressly
qualified in their entirety by the cautionary statements contained or referred to in this section. Readers should not place undue reliance on forward-looking statements. Additional risk factors that may affect
future results are contained in Royal Dutch Shell’s Form 20-F for the year ended December 31, 2020 (available at www.shell.com/investor and www.sec.gov). These risk factors also expressly qualify all
forward-looking statements contained in this presentation and should be considered by the reader. Each forward-looking statement speaks only as of the date of this presentation, 28th November 2020.
Neither Royal Dutch Shell plc nor any of its subsidiaries undertake any obligation to publicly update or revise any forward-looking statement as a result of new information, future events or other information. In
light of these risks, results could differ materially from those stated, implied or inferred from the forward-looking statements contained in this presentation.
We may have used certain terms, such as resources, in this presentation that the United States Securities and Exchange Commission (SEC) strictly prohibits us from including in our filings with the SEC. U.S.
investors are urged to consider closely the disclosure in our Form 20-F, File No 1-32575, available on the SEC website www.sec.gov.
2
Cautionary note
Copyright of Shell International B.V.
Pace of digital adoption is accelerating at an almost exponential rate
Digitalisation and AI to drive efficiency in our existing businesses
3
6000
Pieces of equipment
monitored by
machine learning
1200+
Drone missions and
robots conducted
100+ cleaning and
inspection jobs
63
AI powered
applications
deployed in 2020
1.6 trn
Rows of sensor data
in data lake
~350
Team in Digital
Centre of Excellence
800
Citizen data
scientists
10x
Increase in use of
virtual rooms
powered by
augmented reality
1.5 mln
Registered users of AI
powered loyalty
program with 26 mln
rewards issued
Copyright of Shell International B.V.
Digitalisation and AI
Driving effciency in our existing businesses
4
Maximising availability
Real time production optimisation
Digital twin
n Proactive technical monitoring already delivers
~$130 mln per annum, now enhanced with AI
n Identifies unusual patterns for early intervention
or to extend equipment lifetime
n Aggregated 1.6 trillion data points through
machine learning to detect anomalies.
n Advanced data analytics technology for real
time optimisation
n Deployed at LNG asset resulting in 1-2%
production increase
n A Digital Twin is a virtual representation of the
physical elements and dynamic behaviour of
an asset over its lifecycle
n Drives efficiency by enabling remote
operations, automation and significantly
improved collaboration
n Live in Nyhamna Gas Plant, Norway and
deployment underway in 5 other assets.
Copyright of Shell International B.V. 5
AI optimising electric vehicle charging Hydrogen Windfarm layout optimisation
n Optimise the vehicle charging process to save
customers money and protect the grid
Enabling the next generation of clean energy technology
n Data-driven simulation combined with physics-
based models to optimise traditional
experimentation
n AI to support selection of variables such as
location of turbines, where to place battery
storage and subsea cables and optimise
construction logistics
Copyright of Shell International B.V.
Data Pipeline Key Requirements
Connectors Transformation and
AI
Quality
6
Recovery Scale Monitoring
Copyright of Shell International B.V.
Delta Live Tables
7
Delta
Live
Tables
Innovation
Code
Driven
Spark
Delta
Centric
UI
Monitoring
Lakehouse
Eco System
Copyright of Shell International B.V.
Delta Live Tables Benefits
8
”New gold standard for data pipelines”
”Delta maintenance tasks are no longer an
after thought for developers”
”Delta Live Tables makes it easier for us to build
Intelligence into our data ingestion processes”
”Expectations allows us to trust the data”
Introducing Delta Live Tables: Make Reliable ETL Easy on Delta Lake

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Introducing Delta Live Tables: Make Reliable ETL Easy on Delta Lake

  • 1. Copyright of Shell International B.V. INTELLIGENT PIPELINING OF DATA Bryce Bartmann Principal AI Engineer May 21 1 Copyright of Shell International B.V.
  • 2. Copyright of Shell International B.V. The companies in which Royal Dutch Shell plc directly and indirectly owns investments are separate legal entities. In this presentation “Shell”, “Shell Group” and “Royal Dutch Shell” are sometimes used for convenience where references are made to Royal Dutch Shell plc and its subsidiaries in general. Likewise, the words “we”, “us” and “our” are also used to refer to Royal Dutch Shell plc and its subsidiaries in general or to those who work for them. These terms are also used where no useful purpose is served by identifying the particular entity or entities. ‘‘Subsidiaries’’, “Shell subsidiaries” and “Shell companies” as used in this presentation refer to entities over which Royal Dutch Shell plc either directly or indirectly has control. Entities and unincorporated arrangements over which Shell has joint control are generally referred to as “joint ventures” and “joint operations”, respectively. Entities over which Shell has significant influence but neither control nor joint control are referred to as “associates”. The term “Shell interest” is used for convenience to indicate the direct and/or indirect ownership interest held by Shell in an entity or unincorporated joint arrangement, after exclusion of all third-party interest. This presentation contains forward-looking statements (within the meaning of the U.S. Private Securities Litigation Reform Act of 1995) concerning the financial condition, results of operations and businesses of Royal Dutch Shell. All statements other than statements of historical fact are, or may be deemed to be, forward-looking statements. Forward-looking statements are statements of future expectations that are based on management’s current expectations and assumptions and involve known and unknown risks and uncertainties that could cause actual results, performance or events to differ materially from those expressed or implied in these statements. Forward-looking statements include, among other things, statements concerning the potential exposure of Royal Dutch Shell to market risks and statements expressing management’s expectations, beliefs, estimates, forecasts, projections and assumptions. These forward-looking statements are identified by their use of terms and phrases such as “aim”, “ambition”, ‘‘anticipate’’, ‘‘believe’’, ‘‘could’’, ‘‘estimate’’, ‘‘expect’’, ‘‘goals’’, ‘‘intend’’, ‘‘may’’, ‘‘objectives’’, ‘‘outlook’’, ‘‘plan’’, ‘‘probably’’, ‘‘project’’, ‘‘risks’’, “schedule”, ‘‘seek’’, ‘‘should’’, ‘‘target’’, ‘‘will’’ and similar terms and phrases. There are a number of factors that could affect the future operations of Royal Dutch Shell and could cause those results to differ materially from those expressed in the forward-looking statements included in this presentation, including (without limitation): (a) price fluctuations in crude oil and natural gas; (b) changes in demand for Shell’s products; (c) currency fluctuations; (d) drilling and production results; (e) reserves estimates; (f) loss of market share and industry competition; (g) environmental and physical risks; (h) risks associated with the identification of suitable potential acquisition properties and targets, and successful negotiation and completion of such transactions; (i) the risk of doing business in developing countries and countries subject to international sanctions; (j) legislative, fiscal and regulatory developments including regulatory measures addressing climate change; (k) economic and financial market conditions in various countries and regions; (l) political risks, including the risks of expropriation and renegotiation of the terms of contracts with governmental entities, delays or advancements in the approval of projects and delays in the reimbursement for shared costs; and (m) changes in trading conditions. No assurance is provided that future dividend payments will match or exceed previous dividend payments. All forward-looking statements contained in this presentation are expressly qualified in their entirety by the cautionary statements contained or referred to in this section. Readers should not place undue reliance on forward-looking statements. Additional risk factors that may affect future results are contained in Royal Dutch Shell’s Form 20-F for the year ended December 31, 2020 (available at www.shell.com/investor and www.sec.gov). These risk factors also expressly qualify all forward-looking statements contained in this presentation and should be considered by the reader. Each forward-looking statement speaks only as of the date of this presentation, 28th November 2020. Neither Royal Dutch Shell plc nor any of its subsidiaries undertake any obligation to publicly update or revise any forward-looking statement as a result of new information, future events or other information. In light of these risks, results could differ materially from those stated, implied or inferred from the forward-looking statements contained in this presentation. We may have used certain terms, such as resources, in this presentation that the United States Securities and Exchange Commission (SEC) strictly prohibits us from including in our filings with the SEC. U.S. investors are urged to consider closely the disclosure in our Form 20-F, File No 1-32575, available on the SEC website www.sec.gov. 2 Cautionary note
  • 3. Copyright of Shell International B.V. Pace of digital adoption is accelerating at an almost exponential rate Digitalisation and AI to drive efficiency in our existing businesses 3 6000 Pieces of equipment monitored by machine learning 1200+ Drone missions and robots conducted 100+ cleaning and inspection jobs 63 AI powered applications deployed in 2020 1.6 trn Rows of sensor data in data lake ~350 Team in Digital Centre of Excellence 800 Citizen data scientists 10x Increase in use of virtual rooms powered by augmented reality 1.5 mln Registered users of AI powered loyalty program with 26 mln rewards issued
  • 4. Copyright of Shell International B.V. Digitalisation and AI Driving effciency in our existing businesses 4 Maximising availability Real time production optimisation Digital twin n Proactive technical monitoring already delivers ~$130 mln per annum, now enhanced with AI n Identifies unusual patterns for early intervention or to extend equipment lifetime n Aggregated 1.6 trillion data points through machine learning to detect anomalies. n Advanced data analytics technology for real time optimisation n Deployed at LNG asset resulting in 1-2% production increase n A Digital Twin is a virtual representation of the physical elements and dynamic behaviour of an asset over its lifecycle n Drives efficiency by enabling remote operations, automation and significantly improved collaboration n Live in Nyhamna Gas Plant, Norway and deployment underway in 5 other assets.
  • 5. Copyright of Shell International B.V. 5 AI optimising electric vehicle charging Hydrogen Windfarm layout optimisation n Optimise the vehicle charging process to save customers money and protect the grid Enabling the next generation of clean energy technology n Data-driven simulation combined with physics- based models to optimise traditional experimentation n AI to support selection of variables such as location of turbines, where to place battery storage and subsea cables and optimise construction logistics
  • 6. Copyright of Shell International B.V. Data Pipeline Key Requirements Connectors Transformation and AI Quality 6 Recovery Scale Monitoring
  • 7. Copyright of Shell International B.V. Delta Live Tables 7 Delta Live Tables Innovation Code Driven Spark Delta Centric UI Monitoring Lakehouse Eco System
  • 8. Copyright of Shell International B.V. Delta Live Tables Benefits 8 ”New gold standard for data pipelines” ”Delta maintenance tasks are no longer an after thought for developers” ”Delta Live Tables makes it easier for us to build Intelligence into our data ingestion processes” ”Expectations allows us to trust the data”