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mohdanasMost Helpful
Asked: 21/10/2025In: News, Technology

Are AI video generators tools that automatically produce video content using machine learning experiencing a surge in popularity and search growth?

AI video generators tools that automa ...

ai-video-generatorgenerative-aisearch-trendsvideo-content-creation
  1. mohdanas
    mohdanas Most Helpful
    Added an answer on 21/10/2025 at 4:54 pm

    What Are AI Video Generators? AI video generators are software and platforms utilizing machine learning and generative AI models to produce videos by themselves frequently from a basic text prompt, script, or simple storyboard. Rather than requiring cameras, editing tools, and a production crew, useRead more

    What Are AI Video Generators?

    AI video generators are software and platforms utilizing machine learning and generative AI models to produce videos by themselves frequently from a basic text prompt, script, or simple storyboard.

    Rather than requiring cameras, editing tools, and a production crew, users enter a description of a scene or message (“a short ad for a fitness brand” or “a tutorial explaining blockchain”), and the AI does the rest generating professional-looking imagery, voiceovers, and animations.

    Some prominent instances include:

    • Synthesia, which turns text into videos with AI avatars that look realistic.
    • Runway ML and Pika Labs, which leverage generative diffusion models to animate scenes.
    • HeyGen and Colossyan, video automation learning and business experts.

     Why So Popular All of a Sudden?

    1. Democratization of Video Production

    Years ago, creating a great video required costly cameras, editors, lighting, and post-production equipment. AI video creators break those limits today. One person can produce what would formerly require a whole team all through a web browser.

    2. Blowing Up Video Content Demand

    • Social media sites like Instagram, TikTok, YouTube Shorts, and LinkedIn are all video-first.
    • Today’s marketers require an ongoing supply of engaging, focused video material, and AI provides a scalable means of filling that requirement.

    3. AI Breakthroughs with Text-to-Video Models

    • New AI designs, particularly diffusion and transformer models, can reverse text, sound, and images to produce stable and life-like frames.
    • This technological advancement combined with massive GPU compute resources is getting cheaper while delivering more.

    4. Localization & Personalization

    With AI, businesses are now able to make the same video in any language within seconds with the same face and lip-synchronized movement. This world-scale ability is priceless for training, marketing, and e-learning.

    5. Connection with Marketing & CRM Tools

    The majority of video AI tools used today communicate with HubSpot, Salesforce, Canva, and ChatGPT directly, enabling companies to incorporate video creation into everyday functioning bringing automation to sales, HR, and marketing.

    The Human Touch: Creativity Maximized, Not Replaced

    • Even though there has been concern that AI would replace human creativity, what is really occurring is an increase in creative ability.
    • Writers, designers, teachers, and architects are using these tools as co-creators  accelerating routine tasks such as writing, translation, and editing and keeping more time for imagination and storytelling.

    Consider this:

    • Instead of stealing the director’s chair, AI is the camera crew quick, lean, and waiting in the wings around the clock.

     Real-World Impact

    • Marketing: Brands are producing hundreds of customized video ads aimed at audience segments.
    • Education: Teachers can create multilingual explainer videos or virtual lectures without needing to record themselves.
    • E-commerce: Sellers can introduce products with AI-created models or voiceovers.
    • Corporate Training: HR departments can render compliance training and onboarding compliant through AI avatars.

    Challenges & Ethical Considerations

    Of course, the expansion creates new questions:

    • Authenticity: How do we differentiate AI-created videos from real recordings?
    • Bias: If trained with biased data, representations will be biased.
    • Copyright & Deepfake Risks: Abuse of celebrity likenesses and copyrighted imagery is a new concern.

    Regulations like the EU AI Act and upcoming US content disclosure rules are expected to set clearer boundaries.

     The Future of AI Video Generation

    In the next 2–3 years, we’ll likely see:

    • Text-to-Full-Film systems capable of producing short films with coherent storylines.
    • Interactive video production, in which scenes can be edited using natural language (“make sunset,” “change clothes to formal”).
    • Personalizable digital twins to enable creators to sell their own avatars as a part of branded content.
    • As the technology matures, AI video making will go from novelty to inevitability  just like Canva did for design or WordPress for websites.

    Actually, AI video makers are totally thriving — not only in query volume, but in actual use and creative impact.

    They’re rewriting the book on how to “make a video” and making it an art form that people can craft for themselves.

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daniyasiddiquiEditor’s Choice
Asked: 28/12/2025In: Technology

What is the future of AI models: scaling laws vs. efficiency-driven innovation?

scaling laws vs. efficiency-driven in ...

aiinnovationefficientaifutureofaimachinelearningscalinglawssustainableai
  1. daniyasiddiqui
    daniyasiddiqui Editor’s Choice
    Added an answer on 28/12/2025 at 4:32 pm

    Scaling Laws: A Key Aspect of AI Scaling laws identify a pattern found in current AI models: when you are scaling model size, the size of the training data, and computational capacity, there is smooth convergence. It is this principle that has driven most of the biggest successes in language, visionRead more

    Scaling Laws: A Key Aspect of AI

    Scaling laws identify a pattern found in current AI models:

    when you are scaling model size, the size of the training data, and computational capacity, there is smooth convergence. It is this principle that has driven most of the biggest successes in language, vision, and multi-modal AI.

    Large-scale models have the following advantages:

    • General knowledge of a wider scope
    • Effective reasoning and pattern recognition
    • Improved performance on various tasks

    Its appeal has been that it is simple to understand: “The more data you have and the more computing power you bring to the table, the better your results will be.” Organizations that had access to enormous infrastructure have been able to extend the frontiers of the potential for AI rather quickly.

    The Limits of Pure Scaling

    To better understand what

    1. Cost and Accessibility

    So, training very large-scale language models requires a huge amount of financial investment. Large-scale language models can only be trained with vastly expensive hardware.

    2. Energy and Sustainability

    Such large models are large energy consumers when trained and deployed. There are, thereby, environmental concerns being raised.

    3.Diminishing Returns

    When models become bigger, the benefits per additional computation become smaller, with every new gain costing even more than before.

    4. Deployment Constraints

    Most realistic domains, such as mobile, hospital, government, or edge computing, may not be able to support large models based on latency, cost, or privacy constraints.

    These challenges have encouraged a new vision of what is to come.

    What is Efficiency-Driven Innovation?

    Efficiency innovation aims at doing more with less. Rather than leaning on size, this innovation seeks ways to enhance how models are trained, designed, and deployed for maximum performance with minimal resources.

    Key strategies are:

    • Better architectures with reduced computational waste
    • Model compression, pruning, and quantization

    How knowledge distills from large models to smaller models

    • Models adapted to domains and tasks
    • Improved methods for training that require less data and computation.

    The aim is not only smaller models, but rather more functional, accessible, and deployable AI.

    The Increasing Importance of Efficiency

    1. Real-World

    The value of AI is not created in research settings but by systems that are used in healthcare, government services, businesses, and consumer products. These types of settings call for reliability, efficiency, explainability, and cost optimization.

    2. Democratization of AI

    Efficiency enables start-ups, the government, and smaller entities to develop very efficient AI because they would not require scaled infrastructure.

    3. Regulation and Trust

    Smaller models that are better understood can also be more auditable, explainable, and governable—a consideration that is becoming increasingly important with the rise of AI regulations internationally.

    4. Edge and On-Device AI

    Such applications as smart sensors, autonomous systems, and mobile assistants demand the use of ai models, which should be loowar on power and connectivity.

    Scaling vs. Efficiency: An Apparent Contradiction?

    The truth is, however, that neither scaling nor optimizing is going to be what the future of AI looks like: instead, it will be a combination of both.

    Big models will play an equally important part as:

    • General-purpose foundations
    • Identify Research Drivers for New Capabilities
    • Teachers for smaller models through distillation
    • On the other hand, the efficient models shall:

    Benefit Billions of Users

    • Industry solutions in the power industry
    • Make trusted and sustainable deployments possible

    This is also reflected in other technologies because big, centralized solutions are usually combined with locally optimized ones.

    The Future Looks Like This

    The next wave in the development process involves:

    • Increasingly fewer, but far better, large modelsteenagers
    • Rapid innovation in the area of efficiency, optimization, and specialization
    • Increasing importance given to cost, energy, and governance along with performance
    • Machine Learning Software intended to be incorporated within human activity streams instead of benchmarks

    Rather than focusing on how big, progress will be measured by usefulness, reliability, and impact.

    Conclusion

    Scaling laws enabled the current state of the art in AI, demonstrating the power of larger models to reveal the potential of intelligence. Innovation through efficiency will determine what the future holds, ensuring that this intelligence is meaningful, accessible, and sustainable. The future of AI models will be the integration of the best of both worlds: the ability of scaling to discover what is possible, and the ability of efficiency to make it impactful in the world.

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daniyasiddiquiEditor’s Choice
Asked: 28/12/2025In: Technology

How is prompt engineering different from traditional model training?

prompt engineering different from tra ...

aidevelopmentartificialintelligencegenerativeailargelanguagemodelsmachinelearningmodeltraining
  1. daniyasiddiqui
    daniyasiddiqui Editor’s Choice
    Added an answer on 28/12/2025 at 4:05 pm

    What Is Traditional Model Training Conventional training of models is essentially the development and optimization of an AI system by exposing it to data and optimizing its internal parameters accordingly. Here, the team of developers gathers data from various sources and labels it and then employsRead more

    What Is Traditional Model Training

    Conventional training of models is essentially the development and optimization of an AI system by exposing it to data and optimizing its internal parameters accordingly. Here, the team of developers gathers data from various sources and labels it and then employs algorithms that reduce an error by iterating numerous times.

    While training, the system will learn about the patterns from the data over a period of time. For instance, an email spam filter system will learn to categorize those emails by training thousands to millions of emails. If the system is performing poorly, engineers would require retraining the system using better data and/or algorithms.

    This process usually involves:

    • Huge amounts of quality data
    • High computing power (GPUs/TP
    • Time-consuming experimentation and validation
    • Machine learning knowledge for specialized applications

    After it is trained, it acts in a way that cannot be changed much until it is retrained again.

    What is Prompt Engineering?

    “Prompt Engineering” is basically designing and fine-tuning these input instructions or prompts to provide to a pre-trained model of AI technology, and specifically large language models to this point in our discussion, so as to produce better and more meaningful results from these models. The technique of prompt engineering operates at a purely interaction level and does not necessarily adjust weights.

    In general, the prompt may contain instructions, context, examples, constraints, and/or formatting aids. As an example, the difference between the question “summarize this text” and “summarize this text in simple language for a nonspecialist” influences the response to the question asked.

    Prompt engineering is based on:

    • Clear and well-structured instructions
    • Establishing Background and Defining Roles
    • Examples (few-shot prompting)
    • Iterative refinement by testing

    It doesn’t change the model itself, but the way we communicate with the model will be different.

    Key Points of Contrast between Prompt Engineering and Conventional Training

    1. Comparing Model Modification and Model Usage

    “Traditional training involves modifying the parameters of the model to optimize performance. Prompt engineering involves no modification of the model—only how to better utilize what knowledge already exists within it.”

    2. Data and Resource Requirements

    Model training involves extensive data, human labeling, and costly infrastructure. Contrast this with prompt design, which can be performed at low cost with minimal data and does not require training data.

    3. Speed and Flexibility

    Model training and retraining can take several days or weeks. Prompt engineering enables instant changes to the behavioral pattern through changes to the prompt and thus is highly adaptable and amenable to rapid experimentation.

    4. Skill Sets Involved

    “Traditional training involves special knowledge of statistics, optimization, and machine learning paradigms. Prompt engineering stresses the need for knowledge of the field, clarifying messages, and structuring instructions in a logical manner.”

    5. Scope of Control

    Training the model allows one to have a high, long-term degree of control over the performance of particular tasks. It allows one to have a high, surface-level degree of control over the performance of multiple tasks.

    Why Prompt Engineering has Emerged to be So Crucial

    The emergence of large general-purpose models has changed the dynamics for the application of AI in organizations. Instead of training models for different tasks, a team can utilize a single highly advanced model using the prompt method. The trend has greatly eased the adoption process and accelerated the pace of innovation,

    Additionally, “prompt engineering enables scaling through customization,” and various prompts may be used to customize outputs for “marketing, healthcare writing, educational content, customer service, or policy analysis,” through “the same model.”

    Shortcomings of Prompt Engineering

    Despite its power, there are some boundaries of prompt engineering. For example, neither prompt engineering nor any other method can teach the AI new information, remove deeply set biases, or function correctly all the time. Specialized or governed applications still need traditional or fine-tuning approaches.

    Conclusion

    At a very conceptual level, training a traditional model involves creating intelligence, whereas prompt engineering involves guiding this intelligence. Training modifies what a model knows, whereas prompt engineering modifies how a certain body of knowledge can be utilized. In this way, both of these aspects combine to constitute methodologies that create contrasting trajectories in AI development.

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daniyasiddiquiEditor’s Choice
Asked: 28/12/2025In: Technology

How do multimodal AI models work, and why are they important?

multimodal AI models work

aimodelsartificialintelligencecomputervisiondeeplearningmachinelearningmultimodalai
  1. daniyasiddiqui
    daniyasiddiqui Editor’s Choice
    Added an answer on 28/12/2025 at 3:09 pm

    How Multi-Modal AI Models Function On a higher level, multimodal AI systems function on three integrated levels: 1. Modality-S First, every type of input, whether it is text, image, audio, or video, is passed through a unique encoder: Text is represented in numerical form to convey grammar and meaniRead more

    How Multi-Modal AI Models Function

    On a higher level, multimodal AI systems function on three integrated levels:

    1. Modality-S

    First, every type of input, whether it is text, image, audio, or video, is passed through a unique encoder:

    • Text is represented in numerical form to convey grammar and meaning.
    • Pictures are converted into visual properties like shapes, textures, and spatial arrangements.
    • The audio feature set includes tone, pitch, and timing.

    These are the types of encoders that take unprocessed data and turn it into mathematical representations that the model can process.

    2. Shared

    After encoding, the information from the various modalities is then projected or mapped to a common representation space. The model is able to connect concepts across representations.

    For instance:

    • The word “cat” is associated with pictures of cats.
    • The wail of the siren is closely associated with the picture of an ambulance or fire truck.
    • A medical report corresponds to the X-ray image of the condition.

    Such a shared space is essential to the model, as it allows the model to make connections between the meaning of different data types rather than simply handling them as separate inputs.

    3. Cross-Modal Reasoning and Generation

    The last stage of the process is cross-modal reasoning on the part of the model; hence, it uses multiple inputs to come up with outputs or decisions. It may involve:

    • Image question answering in natural language.
    • Production of video subtitles.
    • Comparing medical images with patient data.
    • The interpretation of oral instructions and generating pictorial or textual information.

    Instead, state-of-the-art multi-modal models utilize sophisticated attention mechanisms that highlight the relevant areas of the inputs during the process of reasoning.

    Importance of Multimodal AI Models

    1. They Reflect Real-World Complexity

    “The real world is multimodal.” This is because health and medical informatics, travel, and even human communication are all multimodal. This makes it easier for AI to handle information in such a way that it is processed in a way that human beings also do.

    2. Increased Accuracy and Contextual Understanding

    A single data source may be restrictive or inaccurate. Multimodal models utilize multiple inputs, making it less ambiguous and accurate than relying on one data source. For example, analyzing images and text information together is more accurate than analyzing only images or text information while diagnosing.

    3. More Natural Human AI Interaction

    Multimodal AIs allow more intuitive ways of communication, like talking while pointing at an object, as well as uploading an image file and then posing questions about it. As a result, AIs become more inclusive, user-friendly, and accessible, even to people who are not technologically savvy.

    4. Wider Industry Applications

    Multimodal models are creating a paradigm shift in the following:

    • Healthcare: Integration of lab results, images, and patient history for decision-making.
    • Learning is more effectively done by computer interaction, such as using text, pictures
    • Smart cities involve video interpretation, sensors, and reports to analyze traffic and security issues.
    • E-Governance: Integration of document processing, scanned inputs, voice recording, and dashboards to provide better services.

    5. Foundation for Advanced AI Capabilities

    Multimodal AI is only a stepping stone towards more complex models, such as autonomous agents, and decision-making systems in real time. Models which possess the ability to see, listen, read, and reason simultaneously are far closer to full-fledged intelligence as opposed to models based on single modalities.

    Issues and Concerns

    Although they promise much, multimodal models of AI remain difficult to develop and resource-heavy. They demand extensive data and alignment of the modalities, and robust protection against problems of bias and trust. Nevertheless, work continues to increase efficiency and trustworthiness.

    Conclusion

    Multimodal AI models are a major milestone in the field of artificial intelligence. Through the incorporation of various forms of knowledge in a single concept, these models bring AI a step closer to human-style perception and cognition. While the relevance of these models mostly revolves around their effectiveness, they play a crucial part in making AI systems more relevant and real-world.

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daniyasiddiquiEditor’s Choice
Asked: 28/12/2025In: Education

How did Prime Minister Narendra Modi highlight India’s global impact and achievements in 2025, particularly in terms of economic, technological, and strategic progress?

economic, technological, and strategi ...

economicgrowthglobalimpactindia2025narendramodistrategicleadershiptechnologicalprogress
  1. daniyasiddiqui
    daniyasiddiqui Editor’s Choice
    Added an answer on 28/12/2025 at 1:58 pm

    Economic Growth and International Confidence In 2025, the Prime Minister highlighted the resilience and changes in the economy of India. It was mentioned that despite global uncertainties, the Indian economy had been growing at a consistent rate. The fact that the economy had become more attractiveRead more

    Economic Growth and International Confidence

    In 2025, the Prime Minister highlighted the resilience and changes in the economy of India. It was mentioned that despite global uncertainties, the Indian economy had been growing at a consistent rate. The fact that the economy had become more attractive to foreign investors with better digital public infrastructure and the ease of doing business was counted as one of the factors responsible for the resilience of the economy. It was stated that the fact that India was developing as a manufacturing nation because of production-linked incentives was an indication of the fact that the economy was transforming from a consumption-driven economy to a production and export nation.

    Technological Advancement and Digital Leadership

    One of the key themes of this messaging has been the technological change taking place in India. The Prime Minister spoke of the role of digital platforms in taking much of India’s governance, finance, healthcare, and education to a population of a billion scale. India’s ability and success in developing digital public goods in areas like identity solutions that can interoperate with each other, digital payment solutions, and data platforms were outlined as a developing country success story that could be replicated in other developing countries. He emphasized India’s success in emerging technologies like AI, space technology, semiconductors, and renewable energy and noted that this clearly showed that innovation in India has stepped beyond services and has spread to deep technologies and research-driven areas.

    Strategic and Geopolitical Rolesbackarrow

    On the strategic horizon, the Prime Minister began to enumerate the increased stature and freedom in Indian external affairs. The Prime Minister referred to the fact that India has remained very active in world organizations, that it has been a “bridge between the advanced and the developing economies in the world, and a vocal voice for the Global South.” The Prime Minister went on to highlight the transformation in Indian defense modernization and indigenization, the rise in the Indian Navy’s “presence in the Indian Ocean and beyond” because “a country which can assure the world that it can safeguard its own interests but also contribute to regional and international stability” is coming into its own. The Prime Minister has referred to strategic partnerships with major world powers as “not alignments but partnerships and cooperation founded on mutual respect and mutual interest.”

    India’s Soft Power and Global Responsibility

    But aside from the hard indicators, he also stressed the soft power influence that India has had and continues to exercise to this day. Yoga, traditional knowledge, humanitarian charity, and leadership on climate change mitigation and adaptation efforts were presented as the expression of the values of the Indian civilizational tradition that the soft power project embodies and upholds. He laid emphasis on the fact that the rise of India is not an assertive, dominance-oriented one but is centered on sustainable development and climate change mitigation efforts.

    A Vision of a Confident India

    Overall, the tone and message of Prime Minister Modi in 2025 were that of a confident and self-reliant country that was making its presence felt in all spheres of economies, technologies, and international platforms for decision-making. Of course, to make India’s achievements significant globally, he linked India’s progress with that of the international world.

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daniyasiddiquiEditor’s Choice
Asked: 28/12/2025In: Education

How can ethical frameworks help mitigate bias in AI learning tools?

frameworks help mitigate bias in AI l ...

aibiasdigitalethicseducationtechnologyethicalaifairnessinairesponsibleai
  1. daniyasiddiqui
    daniyasiddiqui Editor’s Choice
    Added an answer on 28/12/2025 at 1:28 pm

    Comprehending the Source of Bias Biases in AI learning tools are rarely intentional. Biases can come from data that contains historic inequalities, stereotypes, and under-representation in demographics. If an AI system is trained on data from a particular geographic location, language, or socio-econRead more

    Comprehending the Source of Bias

    Biases in AI learning tools are rarely intentional. Biases can come from data that contains historic inequalities, stereotypes, and under-representation in demographics. If an AI system is trained on data from a particular geographic location, language, or socio-economic background, it can underperform elsewhere.

    Ethical guidelines play an important role in making developers and instructors realize that bias is not merely an error on the technical side but also has social undertones in data and design. This is the starting point for bias mitigation.

    Incorporating Fairness as a Design Principle

    A major advantage that can be attributed to the use of ethical frameworks is the consideration and incorporation of fairness as a main requirement rather than an aside. Fairness regarded as a priority allows developers to consider testing an AI system on various students prior to implementation.

    In the educational sector, AI systems should ensure:

    • Do not penalize pupils on the grounds of language, sex, disability, or socio-economic status
    • Provide equal recommendations and feedback
    • Avoid labeling or tracking students in a way that may limit their future opportunities

    By establishing fairness standards upstream, ethical standards diminish the chances of unjust results becoming normalized.

    “Promoting Transparency and Explainability”

    Ethicists consider the role of transparency, stating that students, educators, and parents should be able to see the role that AI plays in educational outcomes. Users ought to be able to query the AI system to gain an understanding of why, for instance, an AI system recommends additional practice, places the student “at risk,” or assigns an educational grade to an assignment.

    Explainable systems help detect bias more easily. Since instructors are capable of interpreting how the decisions are made, they are more likely to observe patterns that impact certain groups in an unjustified manner. Transparency helps create trust, and trust is critical in these learning environments.

    Accountability and Oversight with a Human Touch

    Bias is further compounded if decisions made by AI systems are considered final and absolute. Ethical considerations remind us that no matter what AI systems accomplish, human accountability remains paramount. Teachers and administrators must always retain the discretion to check, override, or qualify AI-based suggestions.

    By using the human-in-the-loop system, the:

    • “Artificial intelligence aids professional judgment rather than supplanting it”
    • The Contextual Factors (Emotional, Cultural, and Personal), namely
    • Incorrect or bias information is addressed before it affects students

    Responsibility changes AI from an invisible power to a responsible assisting tool.

    Protecting Student Data and Privacy

    Biases and ethics are interwoven within the realm of data governance. Ethics emphasize proper data gathering and privacy concerns. If student data is garnered in a transparent and fair manner, control can be maintained over how the AI is fed data.

    Reducing unnecessary data minimizes the chances of sensitive information being misused and inferred, which also leads to biased results. Fair data use acts as a shield that prevents discrimination.

    Incorporating Diverse Perspectives in Development and Policy Approaches

    Ethical considerations promote inclusive engagement in the creation and management of AI learning tools. These tools are viewed as less biased where education stakeholders, such as tutors, students, parents, and experts, are involved from different backgrounds.

    Addition of multiple views is helpful in pointing out blind spots which might not be apparent to technical teams alone. This ensures that AI systems embody views on education and not mere assumptions.

    Continuous Monitoring & Improvement

    Ethical considerations regard bias mitigation as an ongoing task, not simply an event to be checked once. Learning environments shift, populations of learners change, while AI systems evolve with the passage of time. Regular audits, data feedback, and performance reviews identify new biases that could creep into the system from time to time.

    This is because this commitment to improvement ensures that AI aligns with the ever-changing demands of education.

    Conclusion

    Ethical frameworks can also reduce bias in AI-based learning tools because they set the tone on issues such as fairness, transparency, accountability, and inclusivity. Ethical frameworks redirect the attention from technical efficiency to humans because AI must facilitate learning without exacerbating inequalities that already exist. With a solid foundation of ethics, AI will no longer be an invisibly biased source but a means to achieve an equal and responsible education.

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daniyasiddiquiEditor’s Choice
Asked: 28/12/2025In: Education

Why is AI rapidly transforming teaching and learning?

AI rapidly transforming teaching and ...

digitaltransformationedtecheducationalinnovationfutureofeducationpersonalizedlearningteachingandlearning
  1. daniyasiddiqui
    daniyasiddiqui Editor’s Choice
    Added an answer on 28/12/2025 at 1:15 pm

    Creating a Culture that Supports Personalized Learning Personalization of the learning experience is one of the main factors contributing to the widespread adoption of AI in the education sector. In a classroom setting, it is the job of one teacher to support dozens of pupils, each of whom may haveRead more

    Creating a Culture that Supports Personalized Learning

    Personalization of the learning experience is one of the main factors contributing to the widespread adoption of AI in the education sector. In a classroom setting, it is the job of one teacher to support dozens of pupils, each of whom may have distinct skills, rates of learning, and interests.
    Additionally, the use of artificial intelligence makes it easy to scale the delivery of quality education, as it can handle tens of millions of people worldwide.

    What this means is that better-prepared learners get to advance faster while learners who are struggling can be supported, unlike in the former system. By AI platforms, personalization previously only possible in private tutor or top universities is going to be scalable.

    Supporting Teachers Rather Than Replacing Them

    Artificial intelligence is also changing the education sector in the aspect that it reduces the role played by teachers in administrative aspects. activities such as grading test results, recording the attendance level, analyzing performance results, and preparing school reports take time away from the teaching role of a teacher. Software applications that use artificial intelligence make all this relevant to the teaching role automatic.

    Instead of replacing teachers, AI is increasingly becoming a teaching assistant that complements the effectiveness of teachers.

    Instant Feedback and Continuous Assessment

    Traditional assessment methodologies involve a lot of exams at fixed intervals; hence, the results might not be received in time for improvement in the next exam. AI allows students to be assessed instantly and receive feedback at the time of assessment with the possibility of correcting their mistakes while they still have the concept in their heads.

    This feedback cycle promotes active learning and minimizes anxiety associated with high-stakes testing. Students feel more informed about their learning process and develop a greater level of ownership of their learning process.

    Improving Access to Quality Education

    AI educational tools are closing the gaps that exist in educational access. Students who are located in distant and resource-challenged regions are gaining access to intelligent tutoring systems, language translation systems, and adaptive learning that they could not have otherwise.

    In fact, for people with disabilities, assistive technologies such as speech-to-text, text-to-speech, or visual recognition technologies powered through AI are spreading inclusive learning. This is because inclusive learning resources are among those that have propelled AI’s swift integration in education.

    Addressing Shifts in Learner Demand and Expect

    The generation of students today is brought up in a digital context that is interactive and responsive to them. The traditional textbook or lecture may just not be able to capture their interest. This is where technology and artificial intelligence help to develop interactive learning sessions such as simulations and virtual labs.

    Learning that appears more relevant and more interactive increases motivation and hence improves retention and understanding.

    Equipping Students for the AI-Powered World

    The educational institutions are also incorporating AI into their systems because of an awareness of a need to equip pupils with knowledge of how to function within a future where AI is embedded into most of their lines of expertise. AI-enabled learning aids pupils not only in content mastery but also equips them to interact with intelligence.

    Practical familiarity with AI can be accomplished through experiencing it, which is not possible through traditional methods of learning about it.

    Data-Driven Decision Making in Education

    AI allows educational institutions and schools to make informed, data-backed decisions. AI is able to pick up on trends such as the risk of students dropping out of school, subjects or teaching methodologies, and so on, based on large chunks of educational data.

    Partner, Not Savior

    AI is disrupting the teaching and learning space at an unprecedented rate due to the alignment of AI with the actual educational requirements of personalization, efficiency, inclusion, and relevance. However, for the success of AI, there is a need to implement it judiciously, with proper ethics in place, and with robust and sound human intervention.

    Closing Perspective

    AI will transform the education experience, not redefine learning, by providing the means to adapt to the learner, support the teacher, and broaden the educational experience to all, regardless of traditional boundaries. As education advances into the future, the applications of AI are becoming an unprecedented catalyst.

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