→ Defining business hypotheses for verification, → Discussing the range of data → Discussing data semantics and the business context → Establishing the direction and methods for data analysis
→ Initial data and dependence analysis
→ Building prototype models
→ Model testing
→ Summary of the data potential
→ Report of the data analysis results → Recommendations for future data collection → Discussing business justification and initial decision about launching the stage of production implementation plan → Initial project and offer of the production implementation
→ Using AI/ML commercial services → Component structure of the solution → Implementation technology: Docker/Kubernetes → Production environment: Cloud, customer infrastructure, hybrid infrastructure
→ Collection of learning and test data
→ Creating AI/ML models
→ Model testing and tuning
→ Performance and acceptance tests
→ Integrations and changes in the business processes → Workshops → Production implementation → Monitoring results and periodic AI/ML models optimizations