
Overview
This course equips teams with the skills to design, build, evaluate, deploy, and automate AI solutions that are reliable and safe, technically robust, aligned with business objectives, and ready for real-world production environments—not just experimental notebooks.
Skills Covered
By the end of this course, participants will be able to:
- Perform full data wrangling, EDA, and feature engineering
- Build and compare regression and classification models
- Apply proper evaluation, validation, and reliability techniques
- Implement guardrails and grounding strategies
- Deploy AI models using Streamlit and Gradio
- Expose models via APIs and apply basic monitoring concepts
- Design automated AI workflows ready for scaling
Prerequisites
- Familiarity with data concepts
- Completion of AI Literacy / AI Practitioner (recommended)
Target Audience
- Upskilling Professionals
- Data Analysts
- Engineers
- Technical Teams
- AI Practitioners moving into Builder roles

Module 1: Python with AI: Data Wrangling & Preparation
- AI solution lifecycle overview
- Loading and inspecting real datasets
- Handling missing data, duplicates, outliers
- Data transformation and encoding
- Feature creation and selection
- Using AI copilots for coding efficiency
Lab:
Clean and prepare a business dataset
Module 2: Exploratory Data Analysis (EDA) for Builders
- Statistical summaries and distributions
- Correlation and feature relationships
- Visual diagnostics
- Identifying data leakage and bias early
Lab:
EDA with insight-driven interpretation
Module 3: Machine Learning Fundamentals
- Supervised learning overview
- Regression vs classification
- Common algorithms:
- Linear / Logistic Regression
- Random Forest
- Gradient Boosting
- Bias-variance trade-off
- When simple models outperform complex ones
Lab:
Train baseline regression and classification models
Module 4: Metrics, Validation & Model Comparison
- Train/test splits and cross-validation
- Regression metrics: RMSE, MAE, R²
- Classification metrics: Accuracy, Precision, Recall, F1, ROC-AUC
- Model comparison and selection
- Avoiding overfitting
Lab:
Compare multiple models and select the best
Module 5: Feature Engineering & Performance Improvement
- Feature scaling and encoding
- Interaction features
- Handling imbalanced datasets
- Hyperparameter tuning (conceptual + basic practice)
- Performance vs explainability trade-offs
Lab:
Improve model performance systematically
Module 6: Evaluation, Reliability & Guardrails
- Test sets vs validation sets
- Data drift and model decay
- Grounding AI outputs
- Guardrails for reliability
- Human-in-the-loop design
Case Study:
Model failure and mitigation strategies
Module 7: Deployment Basics: From Notebook to App
- Why deployment matters
- Introduction to Streamlit
- Introduction to Gradio
- Designing user inputs and outputs
- Error handling and validation
Lab:
Deploy a regression model with Streamlit
Module 8: Advanced Deployment: Gradio & Multi-Model Apps
- Multi-tab applications
- Regression and classification in one app
- Sliders, dropdowns, and user controls
- Input validation and safety checks
Lab:
Build a Gradio app with multiple models
Module 9: APIs, Integration & Automation Foundations
- What is an API?
- Exposing models as REST endpoints
- Connecting AI models to:
- Dashboards
- Internal tools
- Automation pipelines
- When to automate vs when not to
Demo:
AI model → API → dashboard workflow
Module 10: Monitoring, Governance & Production Readiness
- Basic monitoring concepts
- Logging and error tracking
- Model performance monitoring
- Security and access control
- Responsible AI in production
Module 11: AI Automation & Workflow Orchestration
- Triggers, actions, and pipelines
- Automating data ingestion
- Scheduling model runs
- Integrating AI into business workflows
- Intro to orchestration tools (conceptual)
Lab:
Design an AI-powered automated workflow
Module 12: Business Alignment & AI Solution Design
- Translating business problems into AI tasks
- Defining success metrics
- Cost vs performance trade-offs
- Communicating results to stakeholders
Exercise:
AI solution design canvas
Module 13: Capstone Project: Build → Deploy → Automate
Participants will:
- Select a business use case
- Prepare data
- Train and evaluate models
- Deploy using Streamlit or Gradio
- Design an automation flow
Outcome:
End-to-end AI solution
Module 14: Capstone Presentation, Review & Next Steps
- Demo deployed solutions
- Peer and instructor feedback
- Reliability and risk review
- Roadmap: Builder → AI Engineer / Automation Architect

Exam & Certification
This course is not associated with any Certification.
Training & Certification Guide
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