Is Your Organisation
AI-Ready?

Leverage the power of Artificial Intelligence strategically. Evaluate your organisation’s AI awareness, skills, adaptability, and ethical preparedness to drive innovation and maintain a competitive edge.

Trusted by the world’s most ambitious teams.

Why Assess Your Organisation's AI Readiness?

AI presents transformative opportunities but requires careful integration.

Understanding your organisation’s collective readiness – from workforce skills and strategic alignment to ethical considerations – is vital for successful AI adoption.

An assessment provides the baseline needed to build effective strategies, mitigate risks, and harness AI’s full potential.

Simple Steps to Insight

1

Start the Test

Click the button to begin the organisational assessment

2

Answer Strategically

Complete the survey in approximately 10-15 minutes. It evaluates key areas like awareness, skills, adaptability, and ethics across your organisation.

3

Receive Your Insights

Get a report identifying organisational strengths and areas needing development for successful AI integration.

Empower Your Organisation

Benchmark Readiness

Gain a clear picture of your organisation's current AI capabilities and preparedness level.

Identify Skill Gaps

Understand the collective AI strengths and weaknesses within your workforce.

Inform Strategy

Align AI adoption plans and investments with your actual readiness.

Guide Training Initiatives

Develop targeted upskilling programs to build necessary AI competencies.

Assess Ethical Preparedness

Ensure your organisation is ready to deploy AI responsibly.

Drive Competitive Advantage

Build a solid foundation for leveraging AI for innovation and efficiency.

Future-Proof Your Organisation

Gain the critical insights needed to navigate the AI revolution successfully. Understand your readiness and build your roadmap for AI integration.

Your AI Journey Starts Here

Don’t get left behind. Take the AI Readiness Test today and step into the future with confidence.

AI Readiness Assessment Form - Organisational/Institutional Assessment

1 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

Surname

2 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

First Name

3 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

Email Addresses (Private and Official)

4 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

Mobile number

5 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

Name of your organisation

6 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

Role / Title in your organisation

7 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

Number of years you have spent your current organisation

8 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

What is the nature of organisation in which you work

9 / 72

Category: Demographic Information

This section collects basic demographic information to help us analyse AI adoption trends across different roles, industries, and organisational levels.

What is your current role or level of responsibility within your organisation?

10 / 72

Category: Strategy

Strategy forms the backbone of AI readiness, emphasizing a well-defined approach, clear ownership, and sustainable financial planning. It's not just about having a strategy but ensuring its clarity, measurable outcomes, and long-term viability.

Do you have a strategy for using AI in your organisation?

11 / 72

Category: Strategy

Strategy forms the backbone of AI readiness, emphasizing a well-defined approach, clear ownership, and sustainable financial planning. It's not just about having a strategy but ensuring its clarity, measurable outcomes, and long-term viability.

How is your organisation's AI strategy managed? Is there a specific team or individual responsible for leading it, or is it handled in a more organic and decentralized manner.

12 / 72

Category: Strategy

Strategy forms the backbone of AI readiness, emphasizing a well-defined approach, clear ownership, and sustainable financial planning. It's not just about having a strategy but ensuring its clarity, measurable outcomes, and long-term viability.

Do you have a process in place to measure the impact of the deployment of AI-powered solutions?

13 / 72

Category: Strategy

Strategy forms the backbone of AI readiness, emphasizing a well-defined approach, clear ownership, and sustainable financial planning. It's not just about having a strategy but ensuring its clarity, measurable outcomes, and long-term viability.

How does your organisation prioritize budget allocation between AI deployment and other technological initiatives?

14 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How would you rate your organisation's current IT infrastructure in terms of scalability and flexibility to accommodate the evolving computational needs of AI projects?

15 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

Does your organisation have dedicated GPU resources available and integrated for processing of AI workloads?

16 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How efficiently does your organisation allocate compute resources for AI tasks based on their demand?

17 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How would you assess your current data center's network performance in terms of latency and throughput, especially for AI workloads?

18 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

As your AI projects grow in complexity and data volume, how prepared is your network to adapt to these accordingly?

19 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How seamlessly is your network infrastructure integrated with your AI systems to facilitate efficient data flow and processing?

20 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How would you assess your organisation's awareness and understanding of cybersecurity threats specific to AI and machine learning systems?

21 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How does your organisation ensure the protection of data utilized in AI models, especially during transit and at rest?

22 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How equipped is your organisation to detect and prevent unauthorized tampering or adversarial attacks on your AI models?

23 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How does your organisation manage access control to AI systems and datasets?

24 / 72

Category: Infrastructure

AI readiness heavily depends on a solid infrastructure, which includes powerful computing resources and networks that can scale. A strong security foundation is also essential, as is ensuring the sustainability of the entire AI implementation. Each of these components is crucial for the success of AI.

How ready is your company to deploy AI from a power consumption perspective?

25 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How centralized is your organisation's in-house data, facilitating easy access for AI initiatives?

26 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

To what extent is your in-house data preprocessed, cleaned, and ready for AI projects?

27 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How would you describe the procedures and protocols in place for AI teams to access and use in-house data?

28 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How well integrated are your analytics tools with the data sources and AI platforms used within your organisation?

29 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How would you rate the sophistication of your analytics tools in terms of handling complex AI-elated data sets?

30 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How adaptable and scalable are your analytics tools to cater to evolving AI project needs?

31 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How would you describe the proficiency level of your staff in leveraging these analytics tools for AI projects?

32 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

What level of quality checks and processes do you have in place to check the quality and reliability of the external data used for AI training?

33 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How effectively does your organisation track the origins and lineage of data used in your AI models?

34 / 72

Category: Data

Quality data is the cornerstone of AI, with an emphasis on centralized, cleaned-in-house datasets and reliable external sources. Empowering staff proficiency further ensures the seamless integration and effective utilization of this data.

How does your organisation ensure and verify the accuracy of the data being used in AI models?

35 / 72

Category: Talent

Talent in AI readiness hinges on the depth and proficiency of in-house expertise, complemented by ongoing training investments. Inclusivity remains key, with policies ensuring AI technologies are accessible to all, irrespective of abilities.

How well resourced is your company with the right level of in-house talent necessary for successful AI deployment?

36 / 72

Category: Talent

Talent in AI readiness hinges on the depth and proficiency of in-house expertise, complemented by ongoing training investments. Inclusivity remains key, with policies ensuring AI technologies are accessible to all, irrespective of abilities.

How would you describe the proficiency level of your staff in adopting and fully leveraging the AI technologies that you are deploying?

37 / 72

Category: Talent

Talent in AI readiness hinges on the depth and proficiency of in-house expertise, complemented by ongoing training investments. Inclusivity remains key, with policies ensuring AI technologies are accessible to all, irrespective of abilities.

Has your company invested in training programs to upskill existing employees in AI-related competencies?

38 / 72

Category: Talent

Talent in AI readiness hinges on the depth and proficiency of in-house expertise, complemented by ongoing training investments. Inclusivity remains key, with policies ensuring AI technologies are accessible to all, irrespective of abilities.

When it comes to talent management, has your company started to think about the ‘accessibility’ of AI technologies for employees who are differently abled?

39 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Does your organisation have an AI governance framework or policy in place?

40 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Who is responsible for overseeing AI strategy and governance in your organisation?

41 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Who is responsible for overseeing AI strategy and governance in your organisation?

42 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How aligned is your AI strategy with your organisation’s overall business strategy?

43 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Does your organisation have defined ethical principles for the development and use of AI?

44 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Is there clear accountability for decisions made by AI systems in your organisation?

45 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Does your organisation have data governance policies that address data quality, security, and ethical use for AI applications?

46 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

What is the level of awareness across your organisation regarding potential biases and fairness in data sets used for AI?

47 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Does your organisation have mechanisms to actively detect biases and lack of fairness in data used for AI?

48 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How does your organisation handle and rectify identified biases and lack of fairness in data?

49 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How transparent are the algorithms used in your AI systems in terms of their decision-making processes?

50 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

Does your organisation have mechanisms to detect biases and ensure fairness in AI algorithms?

51 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

What is the level of understanding across your organisation about global data privacy standards (like GDPR, CCPA, NDPR etc.) and ensuring adherence to these in AI projects?

52 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How does your organisation handle data anonymisation to protect user privacy in AI datasets?

53 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

In case of a data breach or privacy violation, how prepared is your organisation to address and rectify the situation?

54 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How well-versed is your organisation in data sovereignty laws and regulations across different regions/countries?

55 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How does your organisation ensure that data storage and processing align with local data sovereignty requirements?

56 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How does your organisation handle cross-border data transfers, ensuring they adhere to data sovereignty laws?

57 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

How comprehensive are the AI policies and protocols in your organisation overall?

58 / 72

Category: Governance

Governance in AI demands a rigorous commitment to data privacy, sovereignty, and fairness. Ensuring transparency in algorithms, adherence to global privacy standards, and safeguarding data sovereignty are paramount to fostering trust and ethical AI practices.

What challenges does your organisation face in implementing effective AI governance?

59 / 72

Category: Culture

AI-driven cultural transformation emphasizes urgency, adaptability across all organsational tiers, and robust change management. Embracing AI requires not just technological readiness but a cultural shift supported by deep and qualitative planning.

How urgently is your organisation looking to embrace AI?

60 / 72

Category: Culture

AI-driven cultural transformation emphasizes urgency, adaptability across all organsational tiers, and robust change management. Embracing AI requires not just technological readiness but a cultural shift supported by deep and qualitative planning.

How receptive is your Board to embracing the changes brought about by AI?

61 / 72

Category: Culture

AI-driven cultural transformation emphasizes urgency, adaptability across all organsational tiers, and robust change management. Embracing AI requires not just technological readiness but a cultural shift supported by deep and qualitative planning.

How receptive is your leadership team to embracing the changes brought about by AI?

62 / 72

Category: Culture

AI-driven cultural transformation emphasizes urgency, adaptability across all organsational tiers, and robust change management. Embracing AI requires not just technological readiness but a cultural shift supported by deep and qualitative planning.

How receptive is your middle management to embracing the changes brought about by AI?

63 / 72

Category: Culture

AI-driven cultural transformation emphasizes urgency, adaptability across all organsational tiers, and robust change management. Embracing AI requires not just technological readiness but a cultural shift supported by deep and qualitative planning.

How receptive are your employees to embracing the changes brought about by AI?

64 / 72

Category: Culture

AI-driven cultural transformation emphasizes urgency, adaptability across all organsational tiers, and robust change management. Embracing AI requires not just technological readiness but a cultural shift supported by deep and qualitative planning.

Do you have a change management plan in place to address the changes brought about by deploying AI technologies?

65 / 72

Category: Culture

AI-driven cultural transformation emphasizes urgency, adaptability across all organsational tiers, and robust change management. Embracing AI requires not just technological readiness but a cultural shift supported by deep and qualitative planning.

How would you assess the quality and depth of the change management plan?

66 / 72

Category: AI Use Cases

This section aims to assess the current state of AI adoption within your organisation, explore existing use cases, and identify opportunities for future AI applications. Your insights will help uncover key trends, challenges, and areas where AI can deliver the most value.

Is your organisation currently using any AI technologies or solutions? (tick all that apply)

67 / 72

Category: AI Use Cases

This section aims to assess the current state of AI adoption within your organisation, explore existing use cases, and identify opportunities for future AI applications. Your insights will help uncover key trends, challenges, and areas where AI can deliver the most value.

If yes, in which departments or functions is AI being used?

68 / 72

Category: AI Use Cases

This section aims to assess the current state of AI adoption within your organisation, explore existing use cases, and identify opportunities for future AI applications. Your insights will help uncover key trends, challenges, and areas where AI can deliver the most value.

How would you rate the impact of AI on your organisation’s operations so far?

69 / 72

Category: AI Use Cases

This section aims to assess the current state of AI adoption within your organisation, explore existing use cases, and identify opportunities for future AI applications. Your insights will help uncover key trends, challenges, and areas where AI can deliver the most value.

Are there business processes or areas where you believe AI could add value but has not yet been implemented?

70 / 72

Category: AI Use Cases

This section aims to assess the current state of AI adoption within your organisation, explore existing use cases, and identify opportunities for future AI applications. Your insights will help uncover key trends, challenges, and areas where AI can deliver the most value.

What are the key challenges your organisation faces when identifying new AI use cases?

71 / 72

Category: AI Use Cases

This section aims to assess the current state of AI adoption within your organisation, explore existing use cases, and identify opportunities for future AI applications. Your insights will help uncover key trends, challenges, and areas where AI can deliver the most value.

How does your organisation identify potential AI use cases?

72 / 72

Category: AI Use Cases

This section aims to assess the current state of AI adoption within your organisation, explore existing use cases, and identify opportunities for future AI applications. Your insights will help uncover key trends, challenges, and areas where AI can deliver the most value.

What factors are critical for scaling AI initiatives in your organisation?

Your score is

About AIQTest.io

AIQtest.io is your gateway to understanding your AI literacy, problem-solving abilities, and overall readiness for an AI-driven future. As artificial intelligence continues to transform industries, workplaces, and daily life, having a solid grasp of its principles, applications, and impact is more important than ever.

Our comprehensive assessment is designed to evaluate key competencies across multiple dimensions, including critical thinking, data interpretation, ethical reasoning, and adaptability in AI-powered environments. By taking this test, you’ll gain valuable insights into your strengths, uncover areas where you can improve, and receive personalized feedback to help you stay ahead in an increasingly AI-centric world.

Whether you’re a student, professional, entrepreneur, or lifelong learner, AIQtest.io empowers you with the knowledge and awareness needed to navigate the future with confidence. Stay competitive, enhance your skill set, and prepare for the opportunities AI will bring.

Take the test today and take control of your AI future! 

Framework

At the core of AIQtest.io is our AI Readiness Framework, designed to measure five key dimensions of AI competency:

  1. AI Literacy – Understanding AI fundamentals, machine learning, and key technologies.
  2. Data Reasoning – Ability to interpret AI-generated insights and make data-driven decisions.
  3. Ethical AI Awareness – Recognizing AI bias, privacy concerns, and responsible AI use.
  4. Problem-Solving with AI – Applying AI tools effectively in professional and real-world scenarios.
  5. AI Adaptability – Learning to integrate AI seamlessly into daily work and business strategies.

 

By assessing these areas, we provide actionable insights that help individuals and businesses build AI confidence, enhance skills, and stay ahead in the AI-driven future.

Are you a researcher?

FAQ

What is AIQtest.io?

AIQtest.io are platforms designed to assess AI literacy, problem-solving skills, and AI readiness for individuals and businesses.

The test evaluates your AI knowledge across multiple dimensions through multiple-choice questions, scenario-based assessments, and practical AI challenges.

Anyone looking to understand their AI proficiency, including professionals, students, educators, and organizations assessing workforce AI capabilities.

The test typically takes 30-60 minutes, depending on the level of assessment.

Your results place you in one of four categories: Novice, Aware, Proficient, or Expert, helping you understand your AI readiness level.

Yes! You can retake the test to track your progress and improve your AI readiness over time.

Yes, upon successful completion, you receive a certification that validates your AI proficiency.

We offer both free and premium versions. The premium version provides a more detailed analysis and certification.

We offer both free and premium versions. The premium version provides a more detailed analysis and certification.

The test includes multiple-choice questions, real-world AI scenarios, and interactive challenges to gauge AI application skills.

Are you a researcher?

Submit feedback