IJCRT Peer-Reviewed (Refereed) Journal as Per New UGC Rules.
ISSN Approved Journal No: 2320-2882 | Impact factor: 7.97 | ESTD Year: 2013
Scholarly open access journals, Peer-reviewed, and Refereed Journals, Impact factor 7.97 (Calculate by google scholar and Semantic Scholar | AI-Powered Research Tool) , Multidisciplinary, Monthly, Indexing in all major database & Metadata, Citation Generator, Digital Object Identifier(CrossRef DOI)
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Paper Title: Green Intelligence: Harnessing Artificial Intelligence for a Sustainable Planet
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02042
Register Paper ID - 298159
Title: GREEN INTELLIGENCE: HARNESSING ARTIFICIAL INTELLIGENCE FOR A SUSTAINABLE PLANET
Author Name(s): Prashanth Vidya Sagar Thalluri, Dr. Bhagya Lakshmi Kodali
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 246-251
Year: December 2025
Downloads: 212
Artificial Intelligence (AI) rising on the horizon, is rapidly reshaping environmental science and sustainability practice by converting increasingly large and heterogeneous environmental datasets into operational knowledge. This paper synthesizes recent bibliometric studies, Earth-observation platform reports, and climate-tech investment analyses from 2019-2024 to (1) characterize current AI applications in remote sensing, biodiversity monitoring, water and waste management, and energy optimization and (2) present a near-term outlook through 2030 based on observed trends. Key findings show accelerating publication and deployment activity in AI-environment research (notable growth since 2019), expanded access to Copernicus/Landsat data and in-cloud compute that lowers barriers for imagery-based AI workflows and a re-shaping of climate-tech funding with a rising share for AI-centered ventures. Representative operational areas now include automated land-cover change detection, camera-trap and acoustic species classification with human-in-the-loop validation and AI-driven demand/supply optimization in energy and water systems. Scenario forecasts (conservative CAGR assumptions) indicate approximately a doubling of AI-applied research outputs and significant growth in AI's share of climate-tech investment by 2030 -- contingent on continued open data access, cloud compute availability and cross-sector governance. The paper mainly highlights three enablers (open EO data and CDSE access, affordable cloud/edge compute and pre-trained model hubs, hybrid human-AI workflows) and three risks (biased ground truth, ecological model mis-specification, governance gaps). Policy and research recommendations include standardized labelled datasets and benchmarks for ecological tasks, investment in interpretability and human-in-the-loop systems and multi-stakeholder governance to secure equitable environmental outcomes.
Licence: creative commons attribution 4.0
Artificial Intelligence, Earth Observation, Biodiversity Monitoring, Climate Tech Investment, Sustainability.
Paper Title: THEME: APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING IN VARIOUS FIELDS
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02041
Register Paper ID - 298160
Title: THEME: APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING IN VARIOUS FIELDS
Author Name(s): A.L.K. KRUPAVARAM
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 241-245
Year: December 2025
Downloads: 155
AI based technologies have immense potential in recent years and have emerged as a highly effective approach in Bio sciences. AI's great achievement is that it recognizes patterns, interprets language, makes predictions from data and carries out actions in response to inputs by using many of the cognitive and perceptual abilities of live systems. An ideal AI can logically solve problems, learn from experience and react with external environment just like human intellect.
Licence: creative commons attribution 4.0
THEME: APPLICATIONS OF ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING IN VARIOUS FIELDS
Paper Title: Transforming Life Sciences with AI and ML: Challenges and Future Directions
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02040
Register Paper ID - 298161
Title: TRANSFORMING LIFE SCIENCES WITH AI AND ML: CHALLENGES AND FUTURE DIRECTIONS
Author Name(s): Dr.M.Anil Kumar, Smt.K.R.Manjula
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 237-240
Year: December 2025
Downloads: 143
Artificial Intelligence (AI) and Machine Learning (ML) are driving transformational change across the life sciences, with major applications in drug discovery, precision medicine, diagnostics, and medical imaging. AI-powered algorithms accelerate drug discovery and development by rapidly analyzing complex datasets--reducing timelines from years to months--and supporting the identification of novel molecular compounds and drug repurposing opportunities. In diagnostics, AI systems can integrate genetic, clinical, and lifestyle data to predict disease progression, personalize treatment plans, and enable early interventions. ML facilitates biomarker identification for cancer and other diseases by leveraging large-scale genomic testing to tailor therapies for individual patients. Medical imaging has seen notable advancement, with AI detecting disease risks and abnormalities with improved accuracy, enhancing clinical outcomes. Furthermore, AI streamlines manufacturing, supply chain management, and clinical trial design through data automation and decision support. Despite these advances, challenges persist--such as data fragmentation, privacy issues, opacity in "black box" models, and limited interdisciplinary expertise. Future directions must emphasize explainable AI (XAI), secure and standardized data-sharing mechanisms, and integration with quantum computing, wearable sensing, and education that bridges technology and biology. In summary, AI and ML hold vast promise to reshape life sciences--accelerating innovation, improving patient care, and enabling personalized health solutions--while demanding security, transparency, and equitable access.
Licence: creative commons attribution 4.0
Transforming Life Sciences with AI and ML: Challenges and Future Directions
Paper Title: Beyond the Barcode: AI-Powered Packaging in the Age of Smart Consumption
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02039
Register Paper ID - 298162
Title: BEYOND THE BARCODE: AI-POWERED PACKAGING IN THE AGE OF SMART CONSUMPTION
Author Name(s): Dr K Anuradha, Dr. Syed Vaziha Tahaseen
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 233-236
Year: December 2025
Downloads: 152
In the era of smart consumption, traditional packaging has evolved from a static medium for branding and protection into an intelligent interface connecting consumers, manufacturers, and the digital ecosystem. This paper explores the transformative role of Artificial Intelligence (AI) in redefining packaging through smart materials, embedded sensors, computer vision, and data-driven personalization. AI-powered packaging enables real-time product authentication, freshness monitoring, adaptive labelling, and interactive consumer engagement bridging the gap between the physical and digital supply chains. The study synthesizes current technological advancements, industry applications, and emerging research trends that highlight how AI enhances sustainability, efficiency, and customer experience. It also addresses challenges related to data privacy, cost scalability, and interoperability among stakeholders. By examining practical implementations across sectors such as food and logistics, this paper provides a forward-looking perspective on how AI-driven packaging systems can reshape consumption patterns and establish a foundation for the intelligent supply chains of the future.
Licence: creative commons attribution 4.0
Artificial Intelligence, Smart Packaging, Consumer Behaviour, Internet of Things (IoT), Sustainability, Supply Chain Intelligence
Paper Title: CRITICAL REVIEW OF SPORTS LAW IN INDIA
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02038
Register Paper ID - 298163
Title: CRITICAL REVIEW OF SPORTS LAW IN INDIA
Author Name(s): Dr P. Srinivasa Rao, Dr Yugandhar Dasari
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 229-232
Year: December 2025
Downloads: 147
Sports and games have a strong bond with human evolution and civilization, since time immemorial. With the passing of time, sports as an entertainment took the stake of a profession. With more and more getting into this so did the unethical activities, creeping in due to the inflow of more money, name and fame, resulted in more disputes. These Sports disputes of any kind come under an amalgam of existing set of laws under various categories. Thus, leading to delay, sometimes false and under mined verdicts. The main cause being the absence of a single or any law related to sports. India the pioneer in social, cultural and sports realm lacks a confirmed Sports Law. Sports is one of the strong pillars of India that is still un finished due to its un organized presentation. Sports in India is still in the hands of autonomous sports bodies, their biased actions have led to unhappy sports personnel, who have nowhere to go, to raise a voice. On the contrary the rise in doping cases, financial frauds, contract breaching many more like this have become un accountable. This paper is trying to evaluate, analyses and embark upon the idea of a stringent legal doctrine for sports - The Sports Law in India. This as an umbrella to bring all sports related issues under itself and to resolve at the earliest under a single roof. The objective of this paper is to generate an awareness on the importance of the sports law in India for better sports, sports persons, with fair, easy and early trials of sports issues. This comparative study is an effort to establish the importance of a specific Sports Law in India.
Licence: creative commons attribution 4.0
Sports-Evolution-Rules-Civilization-Doping-Gambling-Contract Breech-Broadcasting Law-Sports Disputes-Sports Law.
Paper Title: Teachers' Competencies and Attitudes Towards Artificial Intelligence Integration in Commerce Education - Issues and Concerns
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02037
Register Paper ID - 298164
Title: TEACHERS' COMPETENCIES AND ATTITUDES TOWARDS ARTIFICIAL INTELLIGENCE INTEGRATION IN COMMERCE EDUCATION - ISSUES AND CONCERNS
Author Name(s): Dr. D. Ch. Appa Rao, Dr. C. Brahmaiah
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 223-228
Year: December 2025
Downloads: 160
Artificial Intelligence (AI) is rapidly transforming Commerce Education by offering unprecedented opportunities for personalized learning, data-driven assessment, and adaptive curriculum development. This research explores the relationship between teachers' competencies and attitudes towards the integration of AI in commerce education, investigating both the enabling factors and persistent challenges educators face in adapting to this technological paradigm shift. Utilizing a structural equation demonstrating approach and an extensive review of recent literature and empirical data, the study identifies that positive teacher attitudes toward AI strongly predict the development of cognitive, fundamental, and educational management competencies, while digital skills alone are insufficient for the effective implementation of AI technologies in classrooms. Key findings point to the necessity for comprehensive professional development, collaborative learning environments, and institutional support to foster AI literacy among commerce educators. Major barriers identified include limited access to technological infrastructure, ethical concerns over bias and equity, and resistance stemming from gaps in AI awareness and pedagogical adaptation. The paper concludes with strategic recommendations for policymakers and educational leaders, advocating for ongoing teacher training, investment in digital resources, and the establishment of industry partnerships to prepare teachers for the future demands of commerce education in the AI era.
Licence: creative commons attribution 4.0
Artificial Intelligence, Commerce Education, Teacher Competencies, Attitudes, Professional Development, Educational Management, Cognitive Skills.
Paper Title: Challenges and Limitations of Artificial Intelligence and Machine Learning in Life Sciences: A Review
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02036
Register Paper ID - 298165
Title: CHALLENGES AND LIMITATIONS OF ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING IN LIFE SCIENCES: A REVIEW
Author Name(s): Dr. Gadala Swapna, Dr. G.Anita
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 219-222
Year: December 2025
Downloads: 146
Artificial Intelligence (AI) and Machine Learning (ML) play a significant role in the life sciences progress , supporting breakthroughs in diagnostics, drug discovery, genomics, agriculture and personalized healthcare.Implementing Artificial Intelligence and Machine Learning practically faces many hindrances such as regulatory compliance, reproducibility, trust, data quality issues , model interpretability and constraints in computational infrastructure in spite of their significant transformative potential. This review offers a synthesized analysis of findings from recent literature (2023-2025) to study these challenges in detail and proposes strategies to mitigate these challenges. To ensure that AI/ML systems are ethically responsible, robust and suitable for real-world biological and clinical applications, understanding and resolving these challenges is important
Licence: creative commons attribution 4.0
Artificial intelligence, Machine learning, Life sciences, reproducibility, trustworthiness, bias, interpretability, regulation
Paper Title: PRECISION AGRICULTURE: HARNESSING AI AND TECHNOLOGY FOR SUSTAINABLE FARMING
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02035
Register Paper ID - 298166
Title: PRECISION AGRICULTURE: HARNESSING AI AND TECHNOLOGY FOR SUSTAINABLE FARMING
Author Name(s): K. Vasudha, Y. Bindu Madhavi
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 213-218
Year: December 2025
Downloads: 143
In order to increase production, sustainability, and efficiency, modern agriculture depends more and more on autonomous systems that combine AI, robotics, IoT, and GPS. With the least amount of human intervention, these systems maximize production while optimizing inputs like labor, fertilizer, and water. Optimizing resources through precision agriculture, to precisely regulate irrigation, fertilizers, and pesticide application while reducing environmental runoff, artificial intelligence (AI) and machine learning (ML) are used to analyze hyperspectral imagery, soil data, and weather forecasts. Autonomous tractors such as Kubota Agri Robo and John Deere 8R Use GPS guidance, AI navigation, LIDAR, GNSS, and computer vision to autonomously plough, seed, and harvest. Edge computing lowers latency and bandwidth needs by enabling real-time decision-making in the field. Smart farming equipment is powered by specialized AI chips that process sensor data locally. Precision farming is built on data collecting. Soil data, weather forecasts, crop health, nutritional levels, and stress factors may all be thoroughly analyzed through hyperspectral imaging, which records data over a broad range of the electromagnetic spectrum. This enables targeted responses and reduces resource use by assisting farmers in identifying issues like disease or nutritional deficiencies before they become apparent. Real-time insights into crop health, soil health, and environmental conditions are provided by sophisticated sensors and imaging technologies. Agriculture is undergoing a change thanks to autonomous systems that improve precision, sustainability, and efficiency. Modern farms can function more accurately and waste fewer resources because of the integration of AI, robotics, IoT, and machine learning, ushering in a new era of data-driven, intelligent agriculture.
Licence: creative commons attribution 4.0
Precision agriculture, Hyper spectral imagery, Artificial Intelligence (AI), Machine learning (ML), Autonomous tractors
Paper Title: From Molecules to Ecosystems: A Review on Environmental DNA and Metabarcoding in Biodiversity Science
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02034
Register Paper ID - 298167
Title: FROM MOLECULES TO ECOSYSTEMS: A REVIEW ON ENVIRONMENTAL DNA AND METABARCODING IN BIODIVERSITY SCIENCE
Author Name(s): N. Chandra Babu
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 207-212
Year: December 2025
Downloads: 142
Traditional biodiversity monitoring methods often struggle to detect elusive, rare, or cryptic species due to their reliance on direct observation and specimen collection. In an era of accelerating habitat loss and climate change, there is an urgent need for rapid, reliable, and non-invasive tools to assess biodiversity across ecosystems.This review aims to synthesize the emerging field of environmental DNA (eDNA) and metabarcoding, focusing on their principles, methodologies, and transformative applications in ecological monitoring, species detection, and conservation management.We summarize global research developments on eDNA collection from environmental matrices such as soil, water, and air, explain the integration of PCR-based metabarcoding with high-throughput sequencing, and analyze bioinformatics pipelines used for taxonomic identification and community composition assessment. Additionally, we highlight advances in combining eDNA with remote sensing, machine learning, and conservation genomics.The synthesis demonstrates that eDNA metabarcoding provides a cost-effective, scalable, and highly sensitive framework for biodiversity assessment, enabling detection of rare, invasive, and cryptic species. Its integration with ecological and bioinformatics tools bridges molecular data with environmental management, offering a transformative frontier for global biodiversity monitoring and conservation planning under changing climatic and anthropogenic pressures.
Licence: creative commons attribution 4.0
e-DNA, Metabarcoding, Remote sensing, Environment,Community, Species
Paper Title: AI-Powered Solutions for a Sustainable Future: How AI Can Identify Plant Species from Leaf or Flower Images
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02033
Register Paper ID - 298168
Title: AI-POWERED SOLUTIONS FOR A SUSTAINABLE FUTURE: HOW AI CAN IDENTIFY PLANT SPECIES FROM LEAF OR FLOWER IMAGES
Author Name(s): Dr.P.S.S.Sravanthi
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 201-206
Year: December 2025
Downloads: 155
Artificial Intelligence (AI) and Machine Learning (ML) are transforming plant taxonomy and biodiversity monitoring by enabling accurate, rapid, and automated plant species identification from images of leaves and flowers. Accurate, fast, and scalable identification of plant species from images of leaves and flowers is central to biodiversity monitoring, agriculture, conservation and citizen science. This paper reviews recent advancements in AI-driven plant identification, focusing on computer vision techniques and deep learning models such as Convolutional Neural Networks (CNNs) and Vision Transformers (ViTs). These models analyze morphological and color features from large datasets like PlantVillage, Leafsnap, and PlantNet to distinguish species with remarkable precision. Integration of AI tools into mobile applications and cloud-based systems has enhanced field-level biodiversity assessment and agricultural diagnostics. The paper also discusses challenges including dataset bias, environmental variability, and the need for explainable and domain-adaptive models. Through improved data diversity, model transparency, and ethical AI deployment, AI-powered plant identification systems are poised to support sustainable biodiversity management, ecological research, and education. This review emphasizes the potential of AI as a cornerstone for sustainable innovations in plant sciences and precision agriculture. Advances in computer vision and machine learning especially convolutional neural networks (CNNs) and transformer-based models have made automated plant identification viable at large scale. This review synthesizes the literature on image-based plant species identification, describes common datasets and pipelines, compares representative model performances, discusses practical deployment challenges (domain shift, field conditions, interpretability), and outlines research directions for robust, sustainable, and equitable AI tools for plant identification.
Licence: creative commons attribution 4.0
Artificial Intelligence (AI), Plant Species Identification, Machine Learning (ML), Computer Vision in Botany, Leaf and Flower Image Analysis
Paper Title: HOW DOES YOGA AND MEDITATION HELP MENTAL RELAXATION AND SLEEP
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02032
Register Paper ID - 298169
Title: HOW DOES YOGA AND MEDITATION HELP MENTAL RELAXATION AND SLEEP
Author Name(s): Dr. Yugandhar Dasari, Dr. P. Srinivasa Rao
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 197-200
Year: December 2025
Downloads: 90
A healthy body and peaceful mind are essential for a meaningful life. Yoga and meditation are ancient practices that promote balance between the body, mind, and spirit. They help relieve stress, enhance concentration, and improve the quality of sleep. In the modern world, where anxiety and insomnia are increasing, yoga and meditation serve as effective tools for relaxation and mental stability. This paper explains how regular practice of yoga and meditation promotes mental calmness, supports emotional well-being, and enhances sleep quality through both physical and psychological mechanisms.
Licence: creative commons attribution 4.0
Yoga, Meditation, Relaxation, Sleep, Mental Health
Paper Title: The Economic Outcomes of AI Adoption in Rice Farming: A Comparative District-Level Analysis in Tamil Nadu's Cauvery Delta Region
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02031
Register Paper ID - 298170
Title: THE ECONOMIC OUTCOMES OF AI ADOPTION IN RICE FARMING: A COMPARATIVE DISTRICT-LEVEL ANALYSIS IN TAMIL NADU'S CAUVERY DELTA REGION
Author Name(s): Dr. Sudhakara Rao Bezawada
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 187-196
Year: December 2025
Downloads: 90
This paper analyzes the economic associations between artificial intelligence (AI) adoption and agricultural outcomes across six districts in Tamil Nadu's Cauvery Delta region from 2018 to 2023. Using comprehensive secondary data from 12 official sources, including Tamil Nadu Agricultural University reports and NABARD assessments, we estimate significant positive correlations between AI adoption intensity and key performance metrics. Our multivariate regression models, controlling for district and farm characteristics, indicate that districts with higher AI adoption show correlations with a 28% increase in net returns per hectare (95% CI: 24-32%), a 32% reduction in irrigation water requirements (95% CI: 28-36%), and a 24% decrease in fertilizer consumption (95% CI: 20-28%). Economic analysis reveals benefit-cost ratios of 2.0-2.8 across technology packages, with sensitivity analysis confirming robustness. The findings highlight AI's potential contribution to Sustainable Development Goals 2 (Zero Hunger) and 6 (Clean Water) through climate-smart agricultural intensification. Findings suggest policy interventions to scale AI-based precision systems under India's Digital Agriculture Mission.
Licence: creative commons attribution 4.0
Artificial Intelligence, Precision Agriculture, Rice Farming, Economic Outcomes, Sustainability, Secondary Econometric Analysis, Cauvery Delta, Agricultural Policy
Paper Title: Revolutionizing Plant Taxonomy through Integrative Approaches and Artificial Intelligence - A Review
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02030
Register Paper ID - 298171
Title: REVOLUTIONIZING PLANT TAXONOMY THROUGH INTEGRATIVE APPROACHES AND ARTIFICIAL INTELLIGENCE - A REVIEW
Author Name(s): Ch Devi Palaka, Dr.Y.Vijaya kumar
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 182-186
Year: December 2025
Downloads: 94
Plant taxonomy, the foundation of botanical science, is entering a transformative era driven by the integration of artificial intelligence (AI) and multidisciplinary data. Traditional taxonomy has relied heavily on morphological traits, but the complexity of plant diversity and cryptic species often challenges human-based identification. Integrative taxonomy, which combines morphological, molecular, ecological, and geographical data, provides a more holistic framework for species delimitation. However, handling and interpreting such heterogeneous data demand computational methods capable of recognizing complex patterns and relationships. Here, we present an overview of how AI particularly machine learning and deep learning can revolutionize plant taxonomy by automating data analysis, detecting hidden diversity, and accelerating species identification. We highlight the integration of image-based recognition of plant organs, DNA barcoding classification, and ecological niche modelling through AI algorithms. Additionally, we discuss recent advances in multimodal data fusion that enable the synthesis of molecular and phenotypic datasets for more robust taxonomic decisions. The study emphasizes the potential of AI to enhance reproducibility, reduce human bias, and enable rapid biodiversity assessment in the face of global environmental change. We conclude that the synergy between integrative taxonomy and artificial intelligence represents a paradigm shift in plant systematics, paving the way for a new era of automated, data-driven taxonomy and biodiversity discovery.
Licence: creative commons attribution 4.0
Integrative taxonomy, plant systematics, artificial intelligence, machine learning, DNA barcoding, deep learning, biodiversity.
Paper Title: Teaching with AI in the Life Sciences: A Review of Methods, Risks and Responsible Practice
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02029
Register Paper ID - 298172
Title: TEACHING WITH AI IN THE LIFE SCIENCES: A REVIEW OF METHODS, RISKS AND RESPONSIBLE PRACTICE
Author Name(s): Dr.Ch.Chaitanya, Ch Devi Palaka, Dr.Sk.Parveen, Dr.G.Vani
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 179-181
Year: December 2025
Downloads: 100
Artificial Intelligence (AI) is reshaping educational practices in the life sciences through adaptive systems, virtual laboratories, generative content tools, and data-driven feedback mechanisms. This review critically synthesizes literature from 2015-2025 to evaluate how AI is transforming teaching and learning in the life sciences. It identifies key teaching methods, summarizes empirical evidence of learning outcomes, and assesses the ethical, technical, and institutional risks involved. Responsible integration practices centered on ethical literacy, transparency, faculty training, and equitable access are discussed as essential to sustainable adoption. The review concludes with recommendations for aligning AI innovation with pedagogical and ethical standards to ensure that technology enhances rather than replaces the human elements of scientific education.
Licence: creative commons attribution 4.0
Teaching with AI in the Life Sciences: A Review of Methods, Risks and Responsible Practice
Paper Title: Autonomous Networking through AI Routers: Machine Learning Applications for Intelligent and Adaptive Routing
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02028
Register Paper ID - 298173
Title: AUTONOMOUS NETWORKING THROUGH AI ROUTERS: MACHINE LEARNING APPLICATIONS FOR INTELLIGENT AND ADAPTIVE ROUTING
Author Name(s): Dr. J. Sarada Lakshmi, Prof. Kuda Nageswara Rao
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 174-178
Year: December 2025
Downloads: 85
The emergence of Artificial Intelligence (AI) in networking has transformed the design and operation of modern communication infrastructures. AI routers, enhanced with Machine Learning (ML) algorithms, enable intelligent decision-making, predictive analysis, and dynamic optimization of network resources. Unlike conventional routers that rely on static protocols, AI routers continuously learn from network data to predict congestion, reroute traffic, and ensure optimal performance. Machine learning techniques such as supervised learning, reinforcement learning, and deep neural networks have been effectively applied for traffic prediction, congestion control, anomaly detection, and energy-efficient routing. In Software-Defined Networking (SDN), AI-based routing enhances scalability and adaptability by enabling proactive flow control. Similarly, in Internet of Things (IoT) and Wireless Sensor Networks (WSN), ML-powered routers improve energy efficiency and reliability in dense environments. AI routers are also crucial in data centers, UAV-based communication, and 5G/6G systems, where real-time adaptability and low-latency routing are vital. Reinforcement learning models like Deep Q-Networks (DQN) and actor-critic algorithms are used to learn optimal paths dynamically under changing network conditions. Additionally, AI routers enhance network security by detecting malicious traffic patterns through anomaly-based learning models. Despite their advantages, challenges persist in scalability, computational complexity, and explainability of ML models. Future research aims to integrate explainable AI (XAI), federated learning, and edge intelligence to build autonomous, self-healing, and energy-aware routing systems. AI routers thus represent a pivotal step toward the realization of fully intelligent, adaptive, and resilient communication networks for next-generation systems.
Licence: creative commons attribution 4.0
AI routers, Machine learning, Intelligent routing, SDN, IoT, 6G, WSN, Reinforcement learning
Paper Title: Artificial Intelligence in Managerial Decision-Making: Enhancing Efficiency and Strategic Insight
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02027
Register Paper ID - 298174
Title: ARTIFICIAL INTELLIGENCE IN MANAGERIAL DECISION-MAKING: ENHANCING EFFICIENCY AND STRATEGIC INSIGHT
Author Name(s): Dr.K.Sudhakra Rao, Mr. Ramakrishna Bayana
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 169-173
Year: December 2025
Downloads: 96
Artificial Intelligence (AI) has become a transformative tool in managerial decision-making, offering data-driven insights that enhance strategic, operational, and tactical efficiency. Managers today face increasing complexities due to dynamic market conditions, vast data generation, and the need for real-time decisions. AI-driven systems, through predictive analytics, machine learning (ML), and natural language processing (NLP), enable managers to optimize processes, forecast trends, and mitigate risks. This paper explores the integration of AI into managerial decision-making, its impact on efficiency, accuracy, and innovation, along with challenges such as ethical concerns, bias, and data privacy. The study concludes by highlighting future directions and the evolving human-machine collaboration in management.
Licence: creative commons attribution 4.0
Artificial Intelligence, Managerial Decision-Making, Predictive Analytics, Machine Learning, Business Strategy, Data-Driven Management
Paper Title: Artificial Intelligence in Education: Opportunities and Challenges
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02026
Register Paper ID - 298175
Title: ARTIFICIAL INTELLIGENCE IN EDUCATION: OPPORTUNITIES AND CHALLENGES
Author Name(s): Santosh Kumari Maddina
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 164-168
Year: December 2025
Downloads: 97
Artificial Intelligence (AI) has emerged as a transformative force in the education sector, reshaping teaching, learning, and administrative processes. The integration of AI tools such as adaptive learning platforms, intelligent tutoring systems, and automated assessments has significantly improved learning outcomes, accessibility, and engagement. This paper explores the opportunities presented by AI in education, such as personalization, inclusivity, and efficiency, alongside challenges including ethical dilemmas, data privacy concerns, dependence on technology, and inequality in access. It emphasizes the need for responsible AI implementation, digital literacy, and policy frameworks to ensure equitable and effective use of AI in education.
Licence: creative commons attribution 4.0
Artificial Intelligence, Education, Digital Learning, Machine Learning, Ethical Challenges, Personalized Learning
Paper Title: Need for AI and Machine Learning Tools for Smart and Sustainable Farming
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02025
Register Paper ID - 298176
Title: NEED FOR AI AND MACHINE LEARNING TOOLS FOR SMART AND SUSTAINABLE FARMING
Author Name(s): Dr.P. Aravind Swamy, Dr.B.Narayana Rao
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 154-163
Year: December 2025
Downloads: 123
The increasing complexity of global agricultural systems, coupled with the challenges of population expansion, climate variability, and diminishing natural resources, necessitates the adoption of advanced technological interventions. Artificial Intelligence (AI) and Machine Learning (ML) have emerged as transformative tools in fostering smart and sustainable agricultural practices. This paper critically examines the role of AI and ML in optimizing various dimensions of farming, including soil fertility assessment, precision irrigation, crop health monitoring, pest and disease detection, and yield forecasting. Through the integration of IoT-enabled sensors, unmanned aerial vehicles (UAVs), and remote sensing data, AI-driven analytics facilitate real-time decision-making and automation, thereby enhancing both efficiency and productivity. The study further explores how intelligent systems contribute to environmental sustainability by minimizing excessive input usage, mitigating greenhouse gas emissions, and promoting adaptive responses to climatic fluctuations. Economic implications such as cost reduction, risk mitigation, and improved value-chain management are also addressed. Despite their potential, the diffusion of AI and ML technologies remains constrained by factors including data scarcity, inadequate digital infrastructure, high deployment costs, and limited technical literacy among smallholders--particularly in developing economies such as India. The paper concludes that the successful realization of AI-enabled sustainable agriculture requires a multi-stakeholder framework encompassing policy support, capacity building, open-data ecosystems, and context-specific algorithmic design. Future research should emphasize the development of explainable, inclusive, and resource-efficient AI systems that align technological innovation with the imperatives of ecological balance and food security.
Licence: creative commons attribution 4.0
Artificial Intelligence (AI); Machine Learning (ML); Precision Agriculture; Smart Farming; Sustainable Agriculture; IoT; Data Analytics; Crop Monitoring; Climate Adaptation
Paper Title: "Artificial Intelligence and Machine Learning: Transforming the Future of Life Sciences"
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02024
Register Paper ID - 298177
Title: "ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING: TRANSFORMING THE FUTURE OF LIFE SCIENCES"
Author Name(s): Dr. P. Srinivasa Rao, VBVS Rama Krishna, D. Raja Sekhar
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 150-153
Year: December 2025
Downloads: 97
Artificial Intelligence (AI) and Machine Learning (ML) are transforming the life sciences sector by revolutionizing research, diagnostics, drug discovery, and personalized medicine. Their ability to analyse vast datasets and recognize complex patterns enables innovations that were previously unimaginable. From accelerating genomic sequencing to optimizing clinical trials, AI and ML are now integral components of modern biological research and healthcare. This paper explores the applications, benefits, challenges, and future directions of AI and ML in the life sciences, highlighting real-world advancements from 2023 to 2025 that demonstrate their growing impact.
Licence: creative commons attribution 4.0
Artificial intelligence, Machine learning, Drug Discovery and Development Genomics and Precision Medicine Medical Imaging and Diagnostics
Paper Title: A Functional Evaluation of Plantix: An AI-Based Mobile Application for Crop Disease Management
Publisher Journal Name: IJCRT
Published Paper ID: - IJCRTBJ02023
Register Paper ID - 298178
Title: A FUNCTIONAL EVALUATION OF PLANTIX: AN AI-BASED MOBILE APPLICATION FOR CROP DISEASE MANAGEMENT
Author Name(s): Dr M PRAMOD KUMAR, LAVANYA AL
Publisher Journal name: IJCRT
Volume: 13
Issue: 12
Pages: 145-149
Year: December 2025
Downloads: 86
Classification of plant disease is important in reducing losses of yields, but the traditional diagnosis method is inaccessible to a large number of farmers. This paper assesses Plantix, which is a smart mobile application that employs image recognition using deep learning to detect diseases and pests in plants, nutrient deficiencies, etc. The backend is trained on huge annotated datasets, which allows it to classify 30+ crops and 400+ disorders using CNN-based models. Inference outputs are a disease classification, severity estimation, and the cause of the disease after image acquisition. The app also gives the treatment plans, chemical, biological, and cultural plans, as well as nutrient control, weather forecast, and crop calendar by season. Plantix has a diagnostic accuracy of over 90% but is affected by light, image sharpness, type of crop, and position of the symptoms. Although it has such merits as quick inference, multilinguality support, and sharing of the community, there are also obstacles, such as rare-disease coverage, the reliance on connection, and not being much integrated with local soil or sensor data. Altogether, Plantix has strong potential with regard to the applicability as an AI-powered and scalable crop-advisory system.
Licence: creative commons attribution 4.0
Plantix, deep learning, convolutional neural networks, computer vision, precision agriculture.
The International Journal of Creative Research Thoughts (IJCRT) aims to explore advances in research pertaining to applied, theoretical and experimental Technological studies. The goal is to promote scientific information interchange between researchers, developers, engineers, students, and practitioners working in and around the world.
Indexing In Google Scholar, ResearcherID Thomson Reuters, Mendeley : reference manager, Academia.edu, arXiv.org, Research Gate, CiteSeerX, DocStoc, ISSUU, Scribd, and many more International Journal of Creative Research Thoughts (IJCRT) ISSN: 2320-2882 | Impact Factor: 7.97 | 7.97 impact factor and ISSN Approved. Provide DOI and Hard copy of Certificate. Low Open Access Processing Charges. 1500 INR for Indian author & 55$ for foreign International author. Call For Paper (Volume 14 | Issue 2 | Month- February 2026)

