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Doctor of Business Administration in Artificial Intelligence and Machine Learning

Doctor of Business Administration in Artificial Intelligence and Machine Learning

Application closes 4th Apr 2026

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Program Outcomes

Driving business growth with AI

Drive business transformation as a strategic AI leader

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    Gain strategic insights to manage and execute AI projects effectively

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    Build innovative AI-powered products and services to drive growth

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    Boost your career with a globally recognized credentials

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    Demonstrate mastery and earn the title of 'Dr.'

Key program highlights

Why choose the DBA in AI & ML program

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    Top ranked DBA by Forbes

    Ranked among top 10 online DBA degrees of 2024 by Forbes for academic quality and industry relevance

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    Hands-on projects

    Work on numerous real world projects followed by capstone projects and a final dissertation with dedicated guidance from top faculty and industry experts

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    WES recognized and HLC accredited

    Ensures global acceptance and enhances career and academic opportunities

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    Alumni status from Walsh College

    Earn alumni status from Walsh College upon program completion

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    Expert mentorship and support

    Interact with AI experts for guidance, receive 1:1 personalized assistance, and get dedicated support from a program manager for any queries

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    Advanced Standing Benefit

    Deakin Master’s graduates receive Advanced Standing for 30 credits and complete the remaining 30 credits at Walsh College to earn the DBA in AI & ML

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    A cohort of experienced leaders

    87% of participants are senior professionals, 45% in leadership roles—bringing diverse expertise from sectors like tech, finance, healthcare, and more

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    Powerful Global Network

    Connect with peers from Amazon, Microsoft, JPMorgan, and others. Unlock top-tier career opportunities beyond the classroom

Skills you will learn

Generative AI

Prompt Engineering

Machine Learning

Research Methodology

Academic Writing & Publication

Deep Learning

Neural Networks

Business Intelligence Using AI

AGENTIC AI

AI Strategy & Ethics

Generative AI

Prompt Engineering

Machine Learning

Research Methodology

Academic Writing & Publication

Deep Learning

Neural Networks

Business Intelligence Using AI

AGENTIC AI

AI Strategy & Ethics

view more

  • Overview
  • Learning Journey
  • Curriculum
  • Faculty
  • Fees
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This program is ideal for

The DBA in AI & ML empowers leaders to drive innovation, lead transformation, and create research-led impact

  • Senior professionals

    Elevate your career with advanced leadership skills, applied research capabilities, and AI-driven business strategies

  • Domain experts and functional Leaders

    Integrate AI/ML into functional areas like marketing, finance, operations, and HR to solve complex business problems

  • CXOs and business heads

    Strengthen your strategic edge and guide your organization’s AI transformation with global insights and doctoral-level expertise

  • Technology leaders

    Lead AI initiatives and innovation teams with a deep understanding of technical architectures and their business impact

Experience a unique learning journey

Our pedagogy is designed to ensure career growth and transformation

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    Learn with self-paced videos

    Learn critical concepts from video lectures by faculty & AI experts

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    Engage with your mentors

    Clarify your doubts and gain practical skills during the weekend mentorship sessions

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    Work on hands-on projects

    Work on projects to apply the concepts & tools learnt in the module

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    Get personalized assistance

    Our dedicated program managers will support you whenever you need

Curriculum

This DBA in AI & ML syllabus, developed by esteemed experts from Walsh College, offers comprehensive insights into AI and Machine Learning. A unique research-led curriculum which allows you to work with dedicated guidance from top faculty and industry experts to help you master the AI & ML domain.

Term 1

IT 720 : APPLIED RESEARCH IN NATURAL LANGUAGE PROCESSING:

This course is designed to provide students with advanced knowledge and practical skills in natural language processing (NLP) research and applications. Students will delve into cutting-edge techniques, methodologies, and tools used in NLP, with a focus on applied research and real-world use cases. Through a combination of lectures, hands-on projects, and literature review assignments, students will explore topics such as text classification, sentiment analysis, named entity recognition, machine translation, question answering, and more. Emphasis will be placed on understanding the underlying algorithms, evaluating model performance, and conducting empirical studies to address real-world NLP challenges. Upon successful completion of this course, students will be able to: 1) Evaluate and apply advanced natural language processing models and architectures to solve domain-specific language tasks. 2) Design, implement, and optimize NLP models using state-of-the-art algorithms, evaluation metrics, and experimental design principles. 3) Critically analyze the ethical, societal, and fairness implications of NLP technologies, and propose responsible solutions. 4) Develop NLP systems that extract, generate, and interpret structured and unstructured data for diverse real-world applications. 5) Conduct applied NLP research by formulating hypotheses, implementing models, and interpreting results to advance the field.

Term 2

RES 712 : QUALITATIVE AND EXPLORATORY RESEARCH METHODS

This course explores non-statistical forecasting and other qualitative research methods. Qualitative research methodologies have become more prevalent in research as a viable and valid form of inquiry, especially as they pertain to human behavior in organizations. Qualitative research techniques examined include ethno methodology; grounded theory; and phenomenological research. Nonparametric statistical analysis will also be examined. By the conclusion of this class, you will gain a solid foundation regarding the qualitative research approach and its various traditions along with their theoretical and applied constructs. This will allow you to prepare a qualitative problem for research as well as structure a valid qualitative research design for conducting the actual research itself (i.e., your doctoral dissertation or future research problems in your area of interest or specialization).

RES 713 : QUANTITATIVE RESEARCH METHODS I

RES 713 : QUANTITATIVE RESEARCH METHODS I DATA MANAGEMENT AND NON-EXPERIMENTAL: This course is a combination of quantitative research methods, multivariate statistics, and forecasting. The course assumes the doctoral student has had a graduate level statistics/quantitative methods course covering parametric statistics and hypothesis testing.

DOCTORAL RESIDENCY I

This course is the first of three residencies. The residencies occur simultaneously with coursework throughout the student's doctoral journey. The intent of a residency experience is to provide students with a chance to connect directly with faculty/mentor and fellow students within the doctoral program. Students will attend information sessions, meet with faculty/mentors regarding subject matter and research methodology experts, and present their problem/purpose statement to a review board for feedback and direction. Outcome: Finalisation of project problem and purpose statements.

Term 3

RES 714 : QUANTITATIVE RESEARCH METHOD II

This course is designed to build an advanced body of knowledge (BOK) that will allow students to utilize an extensive array of complex statistical models, tools, and software applications in the analysis of numerical data. Additionally, students will be able to use these advanced techniques to perform predictive analytics. This course is designed to build upon the non-experimental methods and techniques explored in RES 713. The comparative method will be explored along with the issue of ecological inference, aggregate vs. group assessment, and data reduction. Students will then assess the three main traditions associated with the experimental approach-pre-experiment, quasi-experiment, and the "true" experiment. 1) Advanced Non-experimental and Experimental Quantitative Research Methods 2) Quasi-experimental Design and Analysis 3) True Experimental Design and Analysis 4) Research across Time and Space 5) Explanation, Prediction and Simulation 6) Big Data, AI, ML and other inductive Methods and Approaches

DOCTORAL RESIDENCY II

Learners will master the art of writing. With the courses previously learned, the learners are bound to connect their PPS to management related concepts. This will help them prepare for the comprehensive examination. Comprehensive exams (commonly called “comps”) are an evaluation that measures a doctoral student’s competency and mastery of concepts after completing coursework.Walsh doctoral students are required to take their comprehensive exam upon completion of all their coursework except DIS courses.Passing a comprehensive exam indicates that you are prepared to move into the dissertation phase of the degree

DISSERTATION COURSES

This dissertation program provides the structure and resources to complete your doctoral research and successfully defend your thesis. *Prerequisite for Dissertation Course: Passing comprehensive exam* 1) Dissertation I - DIS 796 - Chapter 1: Develop a strong foundation for your dissertation. Learn to write a compelling introduction, craft a clear research question, and define your methodology. 2) Dissertation II - DIS 797- Chapter 2: Understand the literature review. Explore relevant research, identify theoretical frameworks, and demonstrate your understanding of the existing scholarship. 3) Dissertation III- DIS 798- Chapter 3: Focus on your research methodology. Refine your data collection plan, discuss data analysis techniques, and ensure ethical research practices. *Prerequisite to move on to Chapter 4 and Chapter 5: Approval from Dissertation Committee, ARB, and IRB* 4) Dissertation IV-DIS 799- Chapter 4: Results: Analyze your research data. Interpret findings, draw conclusions, and identify potential limitations. 5) Dissertation V-DIS 800 - Chapter 5: Write your discussion and conclusion. Integrate your findings with existing literature, discuss the study's significance, and outline future research directions.

DOCTORAL RESIDENCY III

Advance your dissertation research and writing. Analyze your data, draft your dissertation chapters, and receive ongoing feedback from your dissertation committee. Residency III will help you prepare for the final oral defence. Dissertation Defense 1) All dissertation committee members must attend 2) Learner will formally present and defend their dissertation findings 3) Dissertation Committee will adjourn to a private session and respond with: a) Pass – No Notations b) Pass – Notations for correction must be corrected before pass status granted c) Hold – Significant notations and issues must be resolved After successful completion of the defense: The Doctoral Program Director and Chief Academic Officer will review all documents and formally sign off on the dissertation.

Meet your faculty

  • Abbas Raftari  - Faculty Director

    Abbas Raftari

    Adjunct Instructor

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  • Kurt Godden  - Faculty Director

    Kurt Godden

    Senior Analytics Scientist - Ford Motor

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  • Javed Katibai - Faculty Director

    Javed Katibai

    Chassis System Architect - General Motors

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  • Dr. Dave Schippers - Faculty Director

    Dr. Dave Schippers

    VP and Academic Dean

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  • Michael Rinkus  - Faculty Director

    Michael Rinkus

    DBA, Lawrence Technological University

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  • Drew Smith - Faculty Director

    Drew Smith

    PhD, Pacifica Graduate Institute

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  • James Gerrity - Faculty Director

    James Gerrity

    PhD, Adjunct Associate Professor

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  • Thomas Petz - Faculty Director

    Thomas Petz

    CIO/COO, Assistant Professor of IT

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  • Christopher Heiden - Faculty Director

    Christopher Heiden

    Program Lead at IT, Associate Professor of Business Information Technology

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Course Fees

Invest in your career

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    Gain global recognition with HLC accreditation and WES recognition

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    Earn alumni status from Walsh College upon program completion

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    Master AI & ML to solve complex, data-driven business problems

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    Earn a ‘Dr.’ title and be recognized as a specialist in your field

Take the next step

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Application Closes: 4th Apr 2026

Application Closes: 4th Apr 2026

Talk to our advisor for offers & course details

Admission Process

Admissions close once the required number of participants enroll. Apply early to secure your spot.

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    Application

    Interested candidates can apply by filling a simple online application form

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    Interview Process

    Go through a mandatory screening call with the registration office

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    Offer of Registration

    Selected candidates will receive and offer letter

Eligibility

  • Applicants must hold a 3 or 4-year bachelor’s degree or equivalent in any discipline, with a minimum of 60% marks from a UGC-recognized university or institution. The medium of instruction must be in English
  • Applicants must have successfully completed Deakin University’s Master of Data Science (Global), meeting the prescribed academic requirements
  • No GRE/GMAT or any English proficiency test scores are required

Got more questions? Talk to us

Connect with our advisors and get your queries resolved

Speak with our expert +918046801340 or email to dba-walsh-pathway@greatlearning.in

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