Supply chain data science: Unleashing AI in the business domain - - PowerPoint PPT Presentation

supply chain data science unleashing ai in the business
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Supply chain data science: Unleashing AI in the business domain - - PowerPoint PPT Presentation

Supply chain data science: Unleashing AI in the business domain Jacomine Grobler Department of Industrial Engineering jacominegrobler@sun.ac.za Data science Descriptive analytics Predictive analytics Prescriptive analytics Prescriptive


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Supply chain data science: Unleashing AI in the business domain

Jacomine Grobler Department of Industrial Engineering jacominegrobler@sun.ac.za

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Data science

Descriptive analytics Predictive analytics Prescriptive analytics

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Prescriptive analytics projects

Auxilliary Resource Set for O21 Primary Resource Set for O21

O31 O32 O33 O21 O22 O23 O11 O12 O13

Minimize

  • Makespan
  • Queue time

Maximize

  • Customer service
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Preliminary Results

Acknowledgements: Tsietsi Moremi

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Data Science

Descriptive analytics Predictive analytics Prescriptive analytics

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Acknowledgements: Yolandi Le Roux; University of Pretoria

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A Predictive Model from the Agricultural Industry

Plant type Water Fertilizer Location History Soil type

Acknowledgements: Yolandi Le Roux; University of Pretoria

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Acknowledgements: Yolandi Le Roux; University of Pretoria

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Results

94% accuracy obtained with a random forest algorithm

Acknowledgements: Yolandi Le Roux; University of Pretoria

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A job shop scheduling problem with due dates: Which rule should we use?

Operation 3 Operation 4 Time (days) Time (days) Time (days) Resources

May 2008 12 13 14 15 16 17 18 19 20 21 22 23 24 25

1 2 3 4 Operation 1 Operation 1 Operation 2 Operation 4 Time (Days) Operation 7 Operation 6 Operation 5

  • FIFO
  • EDD
  • SPT

Acknowledgements: M Agigi; University of Pretoria

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The training data

  • Five data sets of different sizes
  • 56, 100, 146, 200, 256-operations
  • Three algorithms
  • FIFO, SPT & EDD

At each “scheduling decision” the Work in Process (WIP) and Average Remaining Processing time (ARP) was calculated and the best performing algorithm (wrt makespan) was recorded

Acknowledgements: M Agigi; University of Pretoria

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Results

Acknowledgements: M Agigi; University of Pretoria

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  • Based on problem size, APT & WIP, the correct

rule could be selected with an accuracy of 94%.

  • Future work can include incorporating more

attributes, utilizing a larger dataset and investigating more complex scheduling algorithms.

Results

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Collaborative Filter Type Recommender for Incentive Programmes

Acknowledgements: Ridhaa Beneveld; University of Pretoria

Classify customers into incentive categories KNN clustering to identify similar users Identify recommendations based on all point contributing activities 69% of users ascended in the programme

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Customer Segmentation by means of Data Science

Order qty Location Credit history $ contribution

Payment type

Products Complaints Socio- demographics Industry Cost 2 serve Unique product service agreements

Resource planning Business rules

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Predicting Delivery Times

Location Driver Traffic Weather Residence type Order $ Socio- demographics Distance

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Predicting Manufacturing Performance

Acknowledgements: Sibusiso Khoza

Clustering of production processes Classification of processes wrt quality Training & comparison with SPC charts

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Other Projects

  • Predicting port delays from

wind, wave and other data

  • Predicting energy

requirements in the hospitality industry

  • Greenhouse gas prediction
  • Supply chain performance

prediction

  • Predicting diabetes through

medication purchasing data

Acknowledgements: Andries Engelbrecht; Cecil Musisinyani; Philip du Plooy; Lumi Dreyer; University of Pretoria

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Supply chain data science: Unleashing AI in the business domain

Jacomine Grobler Department of Industrial Engineering jacominegrobler@sun.ac.za