Unlock your true potential by discovering the most suitable career path based on Vedic Astrology and an advanced AI-ML model.
Our premium product, Best Career Prediction, boasts an 85-90% accuracy through deep learning based on 100K+ Kundali researched and validated by the AstroNidan team.
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Our premium product, Best Career Prediction, boasts an 85-90% accuracy through deep learning based on 100K+ Kundali researched and validated by the AstroNidan team.
You will get answers to the following -
It is quite challenging to predict one's ideal career through astrology. At some point in our lives, we all wonder if our current career path is the best fit for us. Receiving early guidance on one's career can be extremely helpful in terms of achieving wealth and recognition. This can help prevent the wastage of valuable time and money.
Classical astrology books such as Brihat Parashara Hora Shastra, Uttara Kaalamrit, Bhavarth Ratnakar, Sarvarth Chintamani, Laghu Parashari, and Madhya Parashari provide various principles for predicting professions. However, using the human mind to apply these principles can lead to a lot of errors. This is because there are now thousands of professions available for people to choose from.
In AstroNidan, we have programmed thousands of logical statements in Python language and trained and validated them through multiple AI/ML models over 100,000 Kundalis for best profession prediction.
Some of the salient features are -
We have a team of Data Scientists, ML Scientists, Data Engineers, Sanskrit Scholars, Astrology Researchers, and Python Programmers engaged from top universities (IIT, IIM, JNU & BHU), who have worked tirelessly to build this product.
We have used semi-supervised learning methods to explore hidden patterns & combinations and evaluated numerous ML models such as Neural networks, SVM, Random Forest, and gradient Boosting algorithms. We shortlisted the best-performing ML models and fine-tuned them further through our robust feature selection process.