Yajna and Mantra Science Bringing Health and Comfort to Indo-Asian Public: A Healthcare 4.0 Approach and Computational Study

  • Rohit RastogiEmail author
  • Mamta Saxena
  • Muskan Maheshwari
  • Priyanshi Garg
  • Muskan Gupta
  • Rajat Shrivastava
  • Mukund Rastogi
  • Harshit Gupta
Part of the Learning and Analytics in Intelligent Systems book series (LAIS, volume 13)


Improving comfort, stress and pollution levels among the fascinating achievements of modern science and technology has become a major challenge for our well-being. The world recognizes that the convenience provided by modern technology does not necessarily make life happy. In fact, apart from stress, fears arise from an increasing number of unknown illnesses, verbal anxiety, and highly polluted environments and environmental imbalances. This created a warning to rethink and change lifestyle and health care. Yajna seems to be a gift from ancient Indian science for this purpose. From the above study and various graphs used we conclude that they benefits through fog company that can be used to used to improve the health of patient through various technical methods like Pattern Classification in the study which proposed schemes GA with nearest neighbor techniques and GA with PNN are the efficient techniques and Expert Design which concludes that it is undeniably reliable in terms of providing reasonable and highly valuable decisions. Knowledge and experiences from a human expert can lead to the critical decision-making in achieving success. Mental health is happiness. This can disrupt the balance of behavior. Mantra therapy can control stress, depression, anxiety, fear, and promote mental health and well-being. Yanjna and Mantra therapy can be the best, powerful, non-violent choice for the future. Mantras are an important tool for Mental Illness in today’s society. The word Mantra is a powerful mind, sound, or vibration tool that can be used to enter a deep state of meditation. Treatment of the Vedic mantra began with the Vedic. This is parallel science with Aveda, also called an alternative medical system. Vedic mantra therapy is based on mantra and evokes the body’s natural healing mechanism. This chapter proposes the expert system and methodological framework to control patients with chronic diseases, so that data can be collected and processed effectively. “Yagya and Mantra therapy” is the treatment method which can revolutionize the era of medical science and the way disease are cured will also change significantly by the use of this therapy. It also has the power of curing deadly disease like cancer which now require doing Kemo therapy which is very painful and costly. Thus “Yagya and Matra Therapy” can also be called as treatment of the future.


Fog computing Healthcare 4.0 Big data and IoT Computational intelligence Yajna and Mantra science Mantra therapies Yajna therapy Gayatri mantra (GM) OM chanting OM symbol Rudrakash Elaeocarpus Yagyopathy Big data and computational analysis Swarm intelligence techniques AI and ML Ambient computing Symbolic machine learning Hybrid intelligent systems Quantum inspired soft computing Internet of medical things Telemedicine Disease management e-Health Remote health monitoring Pervasive healthcare 


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Copyright information

© Springer Nature Switzerland AG 2020

Authors and Affiliations

  • Rohit Rastogi
    • 1
    Email author
  • Mamta Saxena
    • 2
  • Muskan Maheshwari
    • 1
  • Priyanshi Garg
    • 1
  • Muskan Gupta
    • 1
  • Rajat Shrivastava
    • 1
  • Mukund Rastogi
    • 1
  • Harshit Gupta
    • 1
  1. 1.Department of CSEABESECGhaziabadIndia
  2. 2.Ministry of Statistics, Govt. of IndiaNew DelhiIndia

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