Most Repeated 100 General Knowledge Mcqs for Assam Government Exam

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Most Repeated 100 General Knowledge Mcqs for Assam Government Exam Most Repeated 100 General Knowledge MCQs for Assam Government exam Q1. Which of the following country is not a member of G8? a) USA b) UK c) Germany d) Russia Ans: d) Russia Q2. What does section 124A of Indian Penal Code deal with? a) Atrocity against Women b) Sedition c) Crime for demanding Dowry d) Atrocity against ST/SC. Ans: b) Sedition Q3. Who was the first Election Commissioner of India from Assam? a) Ranjit Das b) Ranjan Gogoi c) Dipak Mishra d) Harishankar Brahma Ans: d) Harishankar Brahma Q4. Which one district is declared as the first Carbon free district of India? a) North Sikkim www.facebook.com/apsctutorials Page 1 b) Majuli c) Jorhat d) West Sikkim Ans: b) Majuli Q5. Which language is spoken by the people of Lakshadweep? a) Malayalam b) Tamil c) Hindi d) English Ans: a) Malayalam Q6. Which monument is known as the National Monument of India? a) Gateway of India b) India Gate c) Red Fort d) Raj Ghat Ans: b) India Gate Q7. Steel is more elastic than rubber because a) Its density is high b) It is a metal c) Ratio of stress to strain is more d) Ratio of stress to strain is less Ans: c) ratio of stress to strain is more Q8. Veliconda Hills, which is a part of Eastern Ghats is situated in? a) Odisha b) Tamilnadu www.facebook.com/apsctutorials Page 2 c) Karnataka d) Arunachal Pradesh Ans: d) Arunachal Pradesh Q9. In the 4th century which dynasty marked the beginning of Ancient Assam? a) Pala b) Barman c) Danava d) Mlechcha Ans: b) Braman Q10. Name the two medieval texts compiled in the Assam region? a) Veda and Puran b) Kalika Puran and Yogini Tantra c) Kaunji khel and Yogini tantra d) Namanjali and kirtana Ans: b) kalika Puran and Yogini Tantra Q11. Bhaskar Barman attended the great religious council at a) Taxila b) Sanchi c) Kanauj d) Lahore Ans: c) kanauj Q12. During Bhaskar Barman’s reign the major Industry in Kamrupa was a) Boat Building b) Arrow making www.facebook.com/apsctutorials Page 3 c) Furniture d) None of above Ans: a) boat building Q13. Who was the first King of Assam to perform ‘Aswamedha Yagna’? a) Pushya Barman b) Bhaskar Barman c) Mahendra Barman d) Sukafa Ans: c) Mahendra Barman Q14. After the fall of Barman Dynasty which of the following dynasty began their rule? a) Sutiya Dynasty b) Koch Dynasty c) Ahom Dynasty d) Mlechcha Dynasty Ans: d) Mlechcha Dynasty Q15. Who established the Mlechcha dynasty in Kamrupa? a) Birpala b) Pushya Barman c) Salasthamba d) None of them Ans: c) Salashthamba Q16. Between whom the treaty of Majuli was Signed? a) Koch and Bhuyans b) Koch and Satras www.facebook.com/apsctutorials Page 4 c) Koch and Mughalas d) Koch and Ahoms Ans: d) Koch and Ahoms Q17. Prahlad Charita was written by whom? a) Hema Saraswati b) Madhab Kandali c) Ram Saraswati d) Sankardeva Ans: a) Hema Saraswati Q18. By what popular name is Syed Shah Milan known in Assam? a) Nasiruddin b) Chand Ali c) Ajan Fakir d) Chandsai Ans: c) Ajan Fakir Q19. Which Sutiya King Built Sadiya? a) Ratnadhwaj Pal b) Garudadhiraj c) Vijayadhiraj d) Vikramdhiraj Ans: a) Ratnadhwaj Pal Q20. How the name Guwahati has been derived? a) Place was famous for coconut groves b) Place was famous for betel nut groves c) Place was famous for sugar cane fields d) Place was famous for tea garden www.facebook.com/apsctutorials Page 5 e) Ans: b) Place was famous for betel nut groves Q21. The ‘Posa system’ referred ti a) Confronting policy b) Reparation policy c) Policy of non-payment of taxes d) Tribal appeasement policy Ans: d) Tribal appeasement policy Q22. Assamese poet Harihar Bipra was patronized by King a) Naranarayana b) Durlabh Narayan c) Dharma Narayana d) Indra Nrayana Ans: b) Durlabh Narayan Q23. By what name was the Ahom Marriage known? a) Chaklang b) Gandhrva c) Homa d) Svayambar Ans: a) Chaklang Q24. Who was the first Ahom king to formally accept Hinduism? a) Sukapha b) Surampha c) Sutamla d) Suhungmung Ans: c) Sutamla Q25. Who introduced the coins at first in Ahom Kingdom? www.facebook.com/apsctutorials Page 6 a) Surampha b) Suhungmung c) Suklengmung d) Rudra Singha Ans: c) Suklengmung Q26. Who among the following Assamese attended the first roundtable conference of 1930? a) Gopinath Bordoloi b) Hem Chandra Boruah c) Nabin Chandra Bordoloi d) Chandradhar Boruah Ans: d) Chandradhar Boruah Q27. Who was the president of Swaraj Party in Assam during the freedom movement? a) Gopinath Bordoloi b) Maniram Dewan c) Tarunram Phukan d) None of them Ans: c) Tarunram Phukan Q28. Who was the founder of ‘Posa System’? a) Rudra singha b) Pratap singha c) Suhungmung d) None of them Ans: b) Pratap Singha Q29. Black soil is most suitable for growing www.facebook.com/apsctutorials Page 7 a) Apples b) Grapes c) Cotton d) Coconuts Ans: c) cotton Q30. Nubra Valley is located in which state/UT? a) Punjab b) Ladakh c) Uttarakhand d) Assam Ans: b) Ladakh Q31. Tiawen-1 is the Mars mission of which country? a) China b) South Korea c) Japan d) North Korea Ans: a) China Q32. Hornbill festival is celebrated in which State? a) Manipur b) Nagaland c) Meghalaya d) None of these Ans: b) Nagaland Q33. First organic state of India is a) Assam b) Madhya Pradesh www.facebook.com/apsctutorials Page 8 c) Sikkim d) None of these Ans: c) Sikkim Q34. Rabi crop is sown in a) October-November b) April-May c) January- February d) August- September Ans: a) October- November Q35. The Konkan Coast Stretches a) Chennai and Kanyakumari b) Kolkata and Vishakhaptaman c) Goa and Kochi d) Maharashtra and Goa Ans: d) Maharashtra and Goa Q36. Which of the following latitude passes through India? a) Equator b) Arctic Circle c) Tropic of cancer d) Tropic of Capricorn Ans: c) Tropic of Cancer Q37. The river Cauvery Flows from a) Karnataka to Kerala b) Karnataka to Tamil Nadu c) Karnataka to Andhra Pradesh d) Karnataka to Telangana www.facebook.com/apsctutorials Page 9 Ans: b) Karnataka to Tamil Nadu Q38. Perennial river of South India is a) Cauvery b) Krishna c) Godavari d) None of these Ans: a) Cauvery Q39. The Indus Valley civilization can be said to belong to the a) Paleolithic age b) Primitive age c) Neolithic age d) Bronze age Ans: d) Bronze age Q40. When was the first Anglo-Mysore fought? a) 1855 b) 1820 c) 1716 d) 1767 Ans: d) 1767 Q41. In which year the Koch Kingdom was divided? a) 1570 b) 1571 c) 1580 d) 1581 Ans: d) 1581 Q42. The historic Gohain Kamal Ali extends from www.facebook.com/apsctutorials Page 10 a) Kalibar to Rangpur b) Northeast Darrang to North Guwahati c) Kamargaon to Narayanpur d) Kochbihar to Narayanpur Ans: d) Kochbihar to Narayanpur Q43. The Namdang stone Bridge was built by the King a) Pratap Singha b) Rudra Singha c) Gadadhar Singha d) None of them Ans: b) Rudra Singha Q44. Who was the founder of Koch Hajo? a) Raghudev b) Malladev c) Shukladhwaj d) Indra Narayan Ans: a) Raghudev Q45. Ruins of historic Da-Parbatia Temple of Assam is located near the city a) Nagaon b) Tezpur c) Guwahati d) Hajo Ans: b) Tezpur Q46. State motto of Assam is a) Jai Aai Axom www.facebook.com/apsctutorials Page 11 b) Vande Mataram c) Axom mur janambhumi d) Satyamev jayte Ans: a) Jai Aai Axom Q47. Which of the following is a bird sanctuary? a) Shalmara beel b) Deepor beel c) Dibru saikhoa d) Chachoni merbil Ans: b) Deepor Beel Q48. UNESCO declared Kaziranga as a world Heritage site? a) 1985 b) 1989 c) 1965 d) 1991 Ans: a) 1985 Q49. Which place of Assam is Famous for cement? a) Bokajan b) Guwahati c) Duliajan d) Nunmati Ans: a) Bokajan Q50. Which is the largest Coal Mine of Assam? a) Jaipur- Makum b) Ledo- Tirap c) Lakua- Geleki www.facebook.com/apsctutorials Page 12 d) Lakua- Makum Ans: a) Jaipur-Makum Q51. Which refinery was established due to Assam Accord? a) Guwahati b) Numaligarh c) Digboi d) Bangaigaon Ans: b) Numaligarh Q52. By which name Brahmaputra Enters India? a) Siang b) Dihang c) Lydong d) Huagsu Ans: a) Siang Q53. Which city of Assam has the largest dry fish market of Asia? a) Guwahati b) Tangla c) Jagiroad d) Tinsukia Ans: c) Jagiroad Q54. Sadiya khoa Gohain was a a) Jamindar b) King c) Frontier Officer d) Naval Commander Ans: d) Naval Commander www.facebook.com/apsctutorials Page 13 Q55. The rank of Assam in literacy among the states of India is a) 9th b) 12th c) 5th d) 16th Ans: c) 5th Q56. The area of Kaziranga National Park is approximately a) 430 km2 b) 500km2 c) 390 km2 d) 720 km2 Ans: a) 430 km2 Q57. Which Assamese film Bagged the National Film Award for 2014? a) Basundhara b) Othello c) Bandhon d) Ajeyo Ans: d) Ajeyo Q58. When Bhupen Hazarika had been awarded with Dada Saheb Phalke Award? a) 1990 b) 1991 c) 1992 d) 1997 Ans: c) 1992 Q59. Gibon Wildlife sanctuary is located at www.facebook.com/apsctutorials Page 14 a) Chirang b) Jorhat c) Dibrugarh d) Kokrajhar Ans: b) Jorhat Q60. The Hayagriva Madhava Temple of Hajo is located in which Hill? a) Agnigarh b) Nilachal c) Mikir d) Monikut Ans: d) Manikut Q61. The silver coins issued by the Guptas are called a) Rupaka b) Karshapana c) Dinara d) Pana Ans: a) Rupaka Q62.
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