Program Information
Program Main Code Name: AIML-Biz
Program Code: AIML-Biz
Program Length: 28 Weeks (7 Months)
Total Contact Hours: 336 Hours
Total Credit Hours: 13.3 Credits
Delivery Method:
• In-person Live Instructor-Led
• Virtual Live Instructor-Led
Admissions Requirements
- High school diploma or GED
- Minimum age of 18 years (Applicants under 18 require parental consent)
- Basic programming proficiency in Python or R
- Introductory knowledge of statistics and Excel
- Successful NVIT Admissions Interview
Program Description
The Applied AI/ML for Business Solutions and Applications (AIML-Biz) program equips students to leverage AI and machine learning to address real-world business challenges.
Students develop solutions such as predictive models, recommendation engines, generative AI agents, and scalable AI deployments in cloud environments.
Graduates will:
• Analyze business problems and scope AI/ML solutions
• Build predictive, recommendation, and generative AI models
• Implement Responsible AI and Explainable AI (XAI) principles
• Deploy machine learning solutions using cloud-native MLOps pipelines
Occupations for Which Training Will Be Provided
• AI Business Analyst
• Business Intelligence Engineer
• Machine Learning Consultant
• AI Product Manager
• Generative AI Solutions Developer
Work Settings for Program Graduates
• Corporate Innovation Teams
• Data Analytics and Business Intelligence Departments
• AI Consulting Firms
• Startups and Tech Innovation Units
• Industry-specific Sectors: Finance, Retail, Healthcare, Logistics
Instructional Components
| Instructional Component | Hours |
|---|---|
| Live Lectures + Live Proctored Exams | 63 |
| Labs & Projects | 189 |
| On-the-Job Training + Capstone Project | 84 |
| Total Contact Hours | 336 |
| Total Credit Hours | 13.3 |
Course Outline
| Subject Code | Subject Title | Lecture Hrs | Lab/Project Hrs | OJT + Capstone Hrs | Contact Hrs | Credit Hrs |
|---|---|---|---|---|---|---|
| AIML 101 | AI & Business Fundamentals | 6 | 18 | 0 | 24 | 1.0 |
| AIML 102 | Business Analytics & Visualization | 6 | 18 | 0 | 24 | 1.0 |
| AIML 103 | ML for Business Insights | 6 | 18 | 0 | 24 | 1.0 |
| AIML 104 | NLP & Customer Insights | 6 | 18 | 0 | 24 | 1.0 |
| AIML 105 | Recommendation Engines | 6 | 18 | 0 | 24 | 1.0 |
| AIML 106 | Responsible AI & Explainability | 6 | 18 | 0 | 24 | 1.0 |
| AIML 107 | GenAI & AI Agents | 9 | 27 | 0 | 36 | 1.2 |
| AIML 108 | AI Product Development | 9 | 27 | 0 | 36 | 1.2 |
| AIML 109 | MLOps & Cloud Deployment | 9 | 27 | 0 | 36 | 1.2 |
| AIML 110 | Capstone Project and On-the-Job Training | 0 | 0 | 84 | 84 | 3.7 |
Total Contact Hours: 336
Total Credit Hours: 13.3
Subject Descriptions
AIML 101 – AI & Business Fundamentals
(Weeks 1–2 | 24 Total Hrs | 1.0 Credit Hr)
Students will:
• Understand AI/ML concepts for business
• Analyze business needs for AI application
• Build initial predictive models
Tools: Python, Jupyter Notebook
Prerequisite: None
AIML 102 – Business Analytics & Visualization
(Weeks 3–4 | 24 Total Hrs | 1.0 Credit Hr)
Students will:
• Apply business statistics
• Develop dashboards and visualizations
• Build data-driven reports
Tools: Power BI, Tableau
Prerequisite: AIML 101
AIML 103 – ML for Business Insights
(Weeks 5–6 | 24 Total Hrs | 1.0 Credit Hr)
Students will:
• Develop predictive and classification models
• Conduct feature engineering
• Interpret model outputs
Tools: Scikit-learn, Pandas
Prerequisite: AIML 102
AIML 104 – NLP & Customer Insights
(Weeks 7–8 | 24 Total Hrs | 1.0 Credit Hr)
Students will:
• Analyze text data
• Build customer sentiment models
• Extract insights from unstructured data
Tools: NLTK, spaCy
Prerequisite: AIML 103
AIML 105 – Recommendation Engines
(Weeks 9–10 | 24 Total Hrs | 1.0 Credit Hr)
Students will:
• Build collaborative and content-based recommenders
• Evaluate recommendation systems
• Apply recommendation systems to business
Tools: Surprise, TensorFlow Recommenders
Prerequisite: AIML 104
AIML 106 – Responsible AI & Explainability
(Weeks 11–12 | 24 Total Hrs | 1.0 Credit Hr)
Students will:
• Apply ethical frameworks for AI deployment
• Implement bias detection techniques
• Integrate explainability into AI solutions
Tools: SHAP, LIME
Prerequisite: AIML 105
AIML 107 – GenAI & AI Agents
(Weeks 13–15 | 36 Total Hrs | 1.2 Credit Hrs)
Students will:
• Build Generative AI systems (text, image)
• Design AI agent workflows
• Fine-tune GenAI models for business applications
Tools: OpenAI API, Hugging Face
Prerequisite: AIML 106
AIML 108 – AI Product Development
(Weeks 16–18 | 36 Total Hrs | 1.2 Credit Hrs)
Students will:
• Develop AI/ML-powered business products
• Apply agile methodologies to AI product development
• Perform AI product lifecycle management
Tools: JIRA, Figma, GitHub
Prerequisite: AIML 107
AIML 109 – MLOps & Cloud Deployment
(Weeks 19–21 | 36 Total Hrs | 1.2 Credit Hrs)
Students will:
• Deploy AI models on AWS, Azure, or GCP
• Build automated MLOps pipelines
• Monitor and maintain deployed models
Tools: AWS SageMaker, Azure ML, GCP Vertex AI
Prerequisite: AIML 108
AIML 110 – Capstone Project and On-the-Job Training
(Weeks 22–28 | 84 Total Hrs | 3.7 Credit Hrs)
Students will:
• Deliver a full AI/ML business project
• Work on end-to-end AI product development
• Present business outcomes and technical reports
Tools: All tools from prior courses
Prerequisite: AIML 109
Class Schedule
• Day Students: Monday–Wednesday, 9:30 AM – 12:30 PM
• Afternoon Students: Monday–Wednesday, 1:30 PM – 4:30 PM
• Evening Students: Monday–Wednesday, 6:00 PM – 9:00 PM
• Weekend Students: Thursday–Saturday (Morning, Afternoon, or Evening shifts)
• Virtual Mentorship Students: 12–24 flexible hours per week
All classes include 10-minute breaks per instructional hour.
Lunch break for day students: 12:30 PM – 1:30 PM.
Dates School Will Be Closed
New Year’s Day, Martin Luther King Day, Presidents’ Day, Good Friday,
Memorial Day, Independence Day, LBJ’s Birthday, Labor Day, Veteran’s Day,
Thanksgiving Day, Day After Thanksgiving, Christmas Eve, Christmas Day, Day After Christmas.
Class Start Dates
• Classes for all students begin May 26, 2025
• New classes start every eight weeks (in-person)
• Virtual mentorship has rolling admissions
Tuition and Fees
| Fee Type | Cost |
|---|---|
| Registration Fee | $50.00 |
| Books and Supplies (estimated) | $500.00 |
| Background Check (if applicable) | $150.00 |
| Tuition (In-person Live Instruction) | $11,999.00 |
| Tuition (Virtual Live Instruction) | $10,999.00 |
| Tuition (1-on-1 Virtual Mentorship) | $12,999.00 |
Total Program Cost:
• In-person: $12,699.00
• Virtual Live: $11,699.00
• Virtual Mentorship: $13,699.00
Cost per Single Subject
| Subject Code | Subject Title | Contact Hours | In-Person Cost | Virtual Live Cost | Virtual Mentorship Cost |
|---|---|---|---|---|---|
| AIML 101 | AI & Business Fundamentals | 24 | $878.64 | $806.64 | $949.92 |
| AIML 102 | Business Analytics & Visualization | 24 | $878.64 | $806.64 | $949.92 |
| AIML 103 | ML for Business Insights | 24 | $878.64 | $806.64 | $949.92 |
| AIML 104 | NLP & Customer Insights | 24 | $878.64 | $806.64 | $949.92 |
| AIML 105 | Recommendation Engines | 24 | $878.64 | $806.64 | $949.92 |
| AIML 106 | Responsible AI & Explainability | 24 | $878.64 | $806.64 | $949.92 |
| AIML 107 | GenAI & AI Agents | 36 | $1,317.96 | $1,209.96 | $1,424.88 |
| AIML 108 | AI Product Development | 36 | $1,317.96 | $1,209.96 | $1,424.88 |
| AIML 109 | MLOps & Cloud Deployment | 36 | $1,317.96 | $1,209.96 | $1,424.88 |
| AIML 110 | Capstone Project and On-the-Job Training | 84 | $3,076.92 | $2,822.52 | $3,325.92 |
Note: Registration Fee, Books & Supplies, and Background Check are already included in the total program cost but apply separately for students enrolling in single subjects only.
Course Content
AIML 107 GenAI and Agentic AI
About Instructor
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