Application of Reinforcement Learning in Robot
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چکیده
DECLARATION I certify that a. the work contained in this report is original and has been done by me under the guidance of my supervisor(s). b. the work has not been submitted to any other Institute for any degree or diploma. c. I have followed the guidelines provided by the Institute in preparing the report. d. I have conformed to the norms and guidelines given in the Ethical Code of Conduct of the Institute. e. whenever I have used materials (data, theoretical analysis, figures, and text) from other sources, I have given due credit to them by citing them in the text of the report and giving their details in the references. Further, I have taken permission from the copyright owners of the sources, whenever necessary. is a record of bonafide Project work carried out by him under our supervision and guidance and is worthy of consideration for the award of the degree of Master of Technology in Electrical Engineering with Specialization in " Control Systems Engineering " of the Institute. Ǥ BLOCKINǡ
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