PMI CPMAI Practice tests

Cognitive Project Management for Artificial Intelligence mock exams. Pass your CPMAI exam in the first attempt

PMI CPMAI Practice tests

PMI CPMAI Practice tests udemy course free download

Cognitive Project Management for Artificial Intelligence mock exams. Pass your CPMAI exam in the first attempt

Reach out to me on LinkedIn for a special discounted price. Profile: Sanal Mathew John (smj84)

PMI Cognitive Project Management for AI (CPMAI) is a project management methodology and framework specifically designed for artificial intelligence (AI), machine learning (ML), and cognitive technology projects.

There are 5 sets of practice tests here.

  1. Test 1  - Aimed at improving your core and advanced AI concepts. 

  2. Test 2 has more scenario-based questions  and will help you take practical AI decisions.

  3. Test 3 - Questions are very close to the real exam. You'll thank me later :-). Questions are updated every month based on changing exam trends.

  4. Test 4 - Extremely challenging questions. The complexity level is high. It is very important to clear all advanced concepts.

  5. Test 5 - These are study notes from key topics/areas that you must focus on. This also has master classes that will help you focus on key areas required. Access will be granted once you request the same.


    There are a total of 100 questions that must be answered in 120 minutes for the final CPMAI exam.

Studying the PMI materials and AI guide is essential to passing the exam. These practice exams are to expose you to AI concepts and various scenario-based situations. They can also improve your confidence to pass the final exam. However, it does not guarantee a pass in the final PMI exam, as CPMAI is PMI's copyright, and only PMI has access to the final exam questions.

PMI changes the question sets frequently. Some sets of questions are more direct. Others are more situational. Some are lengthy, and some are short questions. Questions in these tests are also frequently updated accordingly.

Here are the key aspects defining CPMAI:

1.  Methodology and Framework: It is described as a vendor-neutral methodology or a vendor-agnostic framework. It provides a structured approach or guidance for planning, managing, and executing AI initiatives successfully.

2. Purpose: CPMAI was developed to address the high rate of failure often seen in AI projects. It aims to close gaps and reduce failure rates by equipping professionals with the tools and structure needed. The goal is to ensure AI and ML projects deliver meaningful, measurable value and transition from proof-of-concept to scalable, production-ready systems .

3. Characteristics:

◦Vendor-neutral/agnostic: It is not tied to specific AI tools or platforms.

◦Iterative: Projects follow iterative loops of development and refinement. The phases are meant to be mutually iterative .

◦Data-centric: It inherently focuses on data, recognizing that AI projects are driven by data. It emphasizes early-stage data assessments.

◦AI-specific: It extends traditional project management approaches, like agile and data-focused frameworks (such as CRISP-DM), with best practices tailored to the unique needs of AI projects.  It provides AI-specific guardrails .

4. Structure: CPMAI organizes AI projects into six iterative phases: business understanding, data understanding, data preparation, model development, model evaluation, and model operationalization. These phases guide teams through tackling problems, managing data, developing AI responsibly, and meeting real-world needs .

In essence, CPMAI is a specialized, data-focused, and iterative project management approach designed to navigate the complexities and risks specific to AI projects, borrowing from proven methodologies but adding critical AI-specific considerations to improve success rates and ensure trustworthiness. It is the flagship offering for the CPMAI certification now offered by PMI.