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week06 [2021/07/19 06:29] suhawweek06 [2021/07/22 06:29] (current) – [Ghorra Paul] suhaw
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 +===== Thursday 22 July 2021 =====
 +
 +
 +
 +==== elearning - Introduction to Business Analytics ====
 +
 +==== John David Ariansen and Madecraft ====
 +
 +
 +Data sources:
 +  * Internal
 +    * Sales
 +      * Breakdown to: demographics, geographic, time, product category, average sale
 +    * Cost
 +      * Fixed
 +      * Variable
 +    * Marketing
 +    * Psychometric
 +  * External
 +    * Market Reports
 +      * Market players
 +      * Size of market
 +      * High-level data points
 +    * Market Research
 +      * Behavourial patterns
 +      * Buyer personas
 +
 +
 +Data governance: ensure quality of data assets
 +
 +Causes of data quality issues:
 +  * Data collection: Manual, lack of index field
 +  * System integration (different data format across systems)
 +  * Missing data
 +
 +Tools/Applications:
 +    * Sales: Square, Stripe, Clover
 +    * Cost: Quickbooks
 +    * Marketing: Google Analytics, Salesforce
 +    * Psychometric: Google Forms, Qualtrics, Social Media data, focus groups
 +
 +Data Management tools:
 +  * MS Excel
 +  * Tableau
 +  * PowerBI
 +  * MS SQL Server
 +
 +
 +
 +==== Ghorra Paul ====
 +
 +BCG Report "Putting AI to Work", Sept 2017 https://www.bcg.com/publications/2017/technology-digital-strategy-putting-artificial-intelligence-work
 +
 +Shipping container routing: https://youtu.be/QQmZiQfeVNw
 +
 +Key takeaways:
 +  * Gathering relevant data and preparing it for analysis is often the longest step of analysis
 +  * Make it visible - Just visualising existing data can already unlock tremendous value
 +  * Simulation: A digital twin can expedite learning with risk free experimentation
 +  * ML: Input data determines strength of the algorithm - it cannot predict outcomes it hasn't seen
 +  * 3 step framework - Decision variables, Objective, Constraint, help to frame optimisation problem
 +
 +
 +===== Wednesday 21 July 2021 =====
 +
 +
 +==== e-learning - Digital Enablers - AI, IoT, Cybersecurity, DDP, Cloud ====
 +
 +=== AI ===
 +
 +  * Symbolic Reasoning/Planned AI
 +    * Abstract problems, but know steps
 +  * Machine Learning
 +    * Look for patterns
 +  * Artificial neural networks
 +
 +== Approaches ==
 +
 +  * Match patterns
 +  * Data vs reasoning
 +  * Unsupervised learning
 +    * Machines creates categories based on similarities it detects, may be different from human categories
 +  * Deep learning
 +  * Clustering
 +  * Backpropagation
 +    * Allows later feedback to go back and adjust earlier rules/algorithms, error corrections
 +  * Regression
 +
 +
 +=== IoT ===
 +
 +
 +== Business View ==
 +
 +  * Software-defined product
 +  * Hardware-defined product
 +  * Network fabric
 +  * External system interface
 +
 +
 +== Software-defined product ==
 +
 +  * Cyber Model
 +    * digital simulation of the product's functionalities
 +    * represented by statistics
 +  * Application
 +    * Functionality
 +    * Human interface
 +    * Data interface
 +
 +  * IoT value modeling
 +
 +
 +== Hardware-defined product ==
 +  * Connected sensors and actuators
 +    * sensor gathers data
 +      * transducer
 +    * actuators makes physical changes
 +  * Embedded system
 +    * gathers data
 +    * packages data
 +    * sends data (over the OT Network) to application
 +    * may also process application, analytics, security
 +
 +  * Mist computing vs cloud computing
 +
 +== Network fabric ==
 +
 +  * OT (Operational technology) network
 +  * IT network
 +  * Backhaul
 +  * Internet (public cloud)
 +  * Product cloud (private)
 +
 +  * IoT protocol
 +    * Payload: data from sensors
 +    * Application protocol: provides info context to payload
 +    * Network protocol: data info to move it along its path
 +    * Media protocol: allows it to be sent over the air
 +
 +== External system interface ==
 +
 +  * Analytics
 +  * Data services
 +  * Business systems
 +  * Other IoT products
 +
 +
 +
 +=== Cybersecurity ===
 +
 +  * Many different types of cybersecurity breaches
 +    * Phishing
 +    * Malware
 +    * DDoS
 +    * Brute force attack
 +    * Physical breach
 +  * Financial and reputation harm
 +  * Cybersecurity spending growths 10x slower than number of attacks
 +  * Getting the people part is critical
 +    * People account for 72% of breaches
 +
 +
 +=== DDP: Data & Digital Platform ===
 +
 +  * Company's Vision
 +  * Identify concrete and profitable use cases to fund the long-term and incremental transformation
 +  * Build data driven organisation to enable use cases
 +  * NG architecture to migrate legacy business logic and data incrementally onto new digital and data platform 
 +  * Master key technologies such as datalake, fueled by legacy and new data sources
 +  * Governance, Organisation, Training
 +
 +=== Cloud ===
 +
 +Shift to the cloud driven by changes in technology economics
 +  * Changes are here to stay
 +
 +Different possibilities to leverage cloud services: choose wisely
 +  * Infrastructure
 +  * Platform
 +  * Software
 +  * Business Processes
 +
 +Potential to reduce TCO
 +  * Don't forget Maintenance, upgrades, re-migrations
 +
 +Hyperscalability for the future
 +  * Reduces upfront costs for uncertain initiatives
 +  * Allows scalability for wildly successful ones
 +  * Can scale back if the fad has passed
  
  
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-==== Grantly ====+==== Grantly Mailes ====
  
 +=== Data and Digital Disruption ===
 +
 +Technological Ages
 +  * Desktop: MS
 +  * Internet: Amazon, Google
 +  * Mobile
 +  * Data
 +
 +  * Artificial Intelligence: handle uncertainty
 +  * Internet of Things (IoT)
 +  * Blockchain
 +    * https://youtu.be/xfXzvoW_rcI
 +  * Data and Digital platform
 +    * Data Lakes is next-gen Data Warehouses
 +    * (frm Google) A data lake is a vast pool of raw data, the purpose for which is not yet defined. A data warehouse is a repository for structured, filtered data that has already been processed for a specific purpose.
 +  * Cloud Computing
 +  * Cybersecurity
 +
 +
 +
 +
 +=== Digital Transformation: The Bionic Company ===
 +
 +Strategy and Purpose
 +  * Purpose
 +    * Human potential
 +    * Organisation
 +    * Ecosystem
 +    * Societal
 +  * Customer centric
 +
 +Outcomes
 +  * Customer
 +  * Operational
 +  * New offers/innovations
 +
 +
 +
 +Human
 +
 +
 +
 +Technology: Data and Digital Platform
 +
 +
 +BCG-KLM Partnership: https://youtu.be/Ad31TwLJCPA
  
  
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   * Identify outgrowths   * Identify outgrowths
   * Refresh plans frequently   * Refresh plans frequently
 +
 +
week06.1626676185.txt.gz · Last modified: 2021/07/19 06:29 by suhaw

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