Revenue and Pricing Analytics with Excel & Python.

- Description
- Curriculum
- FAQ
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Course Image by @agent_illustrateur-Christine Roy from unsplash.
Python Crash section included!
in the late seventies, airline ticket prices in the united states were regulated and almost fixed, we as customers did not have the luxury to opt for economy class or business class, only one class!! Back then American airlines were the leaders in the industry. But with deregulation new disruptors as People Express entered the scene with tickets so much cheaper than American Airlines. Customers migrated from American airlines to the economic People Express.
what happened next changed the way we think about prices from merely making a profit to a strategic weapon that boosts business profitability and enhances product availability.
American Airlines introduced segmentation and revenue management techniques on its ticket prices “yield management” to attract People Express Customers back and People Express eventually went out of business. oh, I forgot to mention that American airlines’ profit increased by 47% that year. And the rest was history.
This practice was then adopted by Ford for car rentals, Mariott hotels for room booking, NBC, and ABC for Ads placement to pretty much every business there is nowadays.
this course will take you on this exciting journey of understanding consumer behavior. how to set prices for your products to maximize revenue and enhance product availability. if you are running your own business, managing a product line, or even launching a new product or service, this course will come in handy to set you on the right path for success.
Not only this, Businesses now have hundreds of products and services if not thousands and we simply cannot optimize pricing for all of them with excel for example, that’s why the course introduces you also pricing and revenue management with Python. not to worry if it’s the first time for you with python, I show you how to do it step by step.
the course is full of lectures, concepts, codes, exercises, and spreadsheets. and we don’t present the code, we do the code with you, step by step, by the end of this course, you will be able to :
With excel :
- The perishability of inventory
- The different pricing strategies
- The willingness to pay of customers
- how to fit the demand with the right response function
- Elasticity of products and how can we use them to set prices
- How to differentiate products and pricing to different segments
- The concept of nesting in revenue management and how to apply it
- Applying little wood’s rule and EMSR to set booking limits for different service offering
- Optimizing the prices for different product simultaneously
- Markdowns
With python :
Þ The basics of python, functions, and for loops
Þ Fitting demand with linear and logit functions
Þ Multi-product optimization
Þ Customized pricing.
Course Design
the course is designed as experiential learning Modules, the first couple of modules are for understanding pricing followed by applications using optimization.Don’t worry if you don’t know python, there are is a python fundamental section in the course to get you up and running with python.
Looking forward to seeing you inside and hope you enjoy the class.
Happy Mining!
Haytham
Rescale Analytics
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1IntroductionVideo lesson
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2What is pricing?Video lesson
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3History of Pricing.Video lesson
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4Internal dimensions of price.Video lesson
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5A perfectly Competitive marketVideo lesson
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6The price market DynamicsVideo lesson
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7The early adaptorsVideo lesson
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8Products Vs Services Vs Resources.Video lesson
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9Characteristics of the service industryVideo lesson
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10Game changerVideo lesson
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11ERP systemsVideo lesson
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12The evolution of E-commerceVideo lesson
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13Different pricing strategiesVideo lesson
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14Price DimensionVideo lesson
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15Some ExamplesVideo lesson
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16IntroVideo lesson
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17Linear RegressionVideo lesson
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18Price Response functionVideo lesson
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19Logistic RegressionVideo lesson
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20Logistic Price Response functionVideo lesson
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21Linear Price function estimationVideo lesson
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22CorrectionVideo lesson
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23Logit Price functionVideo lesson
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24Simulating the priceVideo lesson
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25Elasticity introVideo lesson
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26ElasticityVideo lesson
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27Elasticity for logit and linearVideo lesson
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28AssignmentVideo lesson
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29AnswerVideo lesson
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30Some examples of elasticityVideo lesson
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31Response function variants- PolynomialVideo lesson
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32Willingness to payVideo lesson
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33Point of maximum profitVideo lesson
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34SummaryVideo lesson
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35Segmentation IntroVideo lesson
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36Grouping CustomersVideo lesson
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37A practical exampleVideo lesson
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38Realized ProfitVideo lesson
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39Profit with segmentation and without segmentationVideo lesson
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40Segmentation simulation 1Video lesson
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41Segmentation simulation 2Video lesson
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42assignmentVideo lesson
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43Answer 1Video lesson
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44Answer 2Video lesson
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45Group pricingVideo lesson
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46Channel segmentations and CuponsVideo lesson
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47Volume DiscountsVideo lesson
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48Volume discount ExampleVideo lesson
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49Optimizing profit with supply constraintsVideo lesson
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50Variable PricingVideo lesson
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51Non Variable pricing opttimizationVideo lesson
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52Variable pricing optimizationVideo lesson
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53AssignmentVideo lesson
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54Variable pricing answerVideo lesson
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55Revenue Management IntroVideo lesson
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56Revenue managementVideo lesson
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57The rest is History.Video lesson
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58AllotmentVideo lesson
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59NestingVideo lesson
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60Revenue management Components and techniquesVideo lesson
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61Capacity allocationVideo lesson
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62Littlewood exampleVideo lesson
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63AssignmentVideo lesson
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64AnswerVideo lesson
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65Multiple-class Fare EMSR-aVideo lesson
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66EMSR-a exampleVideo lesson
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67AssignmentVideo lesson
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68AnswerVideo lesson
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69Network managementVideo lesson
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70airplane exampleVideo lesson
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71Linear programming 1Video lesson
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72Linear programming 2Video lesson
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73OverbookingVideo lesson
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74Network management assignmentVideo lesson
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75Network management answerVideo lesson
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76Python introVideo lesson

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