Getting the most out of this book – get to know your free benefitsDefinitions – what AI is and is notIntroducing ML and DLThe old – exploring MLA brief history of DLThe new – exploring DLInvisible influencesML versus DL – understanding the differenceMLDLLearning paradigms in MLSupervised learningUnsupervised learningSemi-supervised learningReinforcement learningLLMs, NLP, GANs, and generative AISucceeding in AI – how well-managed AI companies do infrastructure rightThe order – what is the optimal flow and where does every part of the process live?Step 1 – DefinitionStep 2 – Data availability and centralizationStep 3 – Choose and train the model Step 4 – Feedback Step 5 – Deployment Step 6 – Continuous maintenanceStoring and managing dataDatabaseData warehouseData lake (and lakehouse)Data pipelinesManaging projects – IaaSDeployment strategies – what do we do with these outputs?Shadow deployment strategyA/B testing model deployment strategyCanary deployment strategyExampleThe promise of AI – where is AI taking us?SummaryAdditional resourcesReferencesJoin us on Discord