1) Describe advanced blood circulatory system in Annelida. Parasitic adaptations in Platyhelminthes.
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1 (DZOO 01 (NR)) ASSIGNMENT - 1, MAY PAPER-I : SYSTEMATICS AND ANATODECEMBER OF INVERTEBRATES 1) Describe advanced blood circulatory system in Annelida. 2) Write short notes on: i) Development in sponges. Parasitic adaptations in Platyhelminthes. 3) Write an account of classifications of phylum Arthropoda up to orders. 4) Write short notes on: i) Evolutionary significance of Trochophore larva. General organization of Protozoa. 5) Give an account on general organization of Rotifera.
2 (DZOO 01 (NR)) ASSIGNMENT - 2, MAY PAPER-I : SYSTEMATICS AND ANATODECEMBER OF INVERTEBRATES 1) Write short notes on: i) General organization of Echinoderms. Sipuncula. 2) Give detailed notes on classification of the phylum Porifera up to orders. 3) Write short notes on: i) General organization of Coelenterata. Chaetognatha. 4) Describe classification of phylum Mollusca up to orders. 5) Write short notes on: i) Sea urchin. General organization of Nematehelminthes phylum.
3 (DZOO 02 (NR)) ASSIGNMENT - 1, MAY PAPER- II SYSTEMATICS AND ANATOMY OF CHORDATES AND GAMETE BIOLOGY 1) Give detailed notes on Oogenesis. 2) Write short notes on: i) South Indian mammals. General characters of the phylum Chordata. 3) Describe classification of Birds up to class. 4) Write short notes on: i) Cephalochordata. Flightless birds. 5) Give detailed notes specialized characters of Hemichordata and Urochordata.
4 (DZOO 02 (NR)) ASSIGNMENT - 2, MAY PAPER- II SYSTEMATICS AND ANATOMY OF CHORDATES AND GAMETE BIOLOGY 1) Write short notes on: i) General characters of poisonous snakes. Common birds of India. 2) Give an account of classification of Amphiba. 3) Write short notes on: i) Aquatic adaptations in mammals. Oesterous cycle. 4) Give an account of general characters of mammals. 5) Write short notes on: i) Classification of fishes. Patterns of Cleavage.
5 (DZOO 03 (NR)) ASSIGNMENT - 1, MAY PAPER- III CELL BIOLOGY, GENETICS AND EVOLUTION 1) Describe the power house of cell. 2) Write short notes on: i) Unit membrane structure. Golgi complex. 3) How does protein synthesis happens in a cell? Explain. 4) Write short notes on: i) messenger RNA. transfer RNA. 5) Describe the chromosome structure.
6 (DZOO 03 (NR)) ASSIGNMENT - 2, MAY PAPER- III CELL BIOLOGY, GENETICS AND EVOLUTION 1) Write short notes on: i) Mitosis. giant chromosomes. 2) Give an account on interaction of genes. 3) Write short notes on: i) Multiple alleles. Sex determination. 4) Explain the theories of evolution. 5) Write short notes on: i) Modern synthetic theory. Species concept.
7 (DZOO 04 (NR)) ASSIGNMENT - 1, MAY PAPER- IV ANIMAL ECOLOGY AND WILDLIFE 1) Give notes on classification of ecosystems with suitable examples. 2) Write short notes on: i) Feed-back loop. Ecosystem functions. 3) Describe Biogeochemical cycle of nitrogen. 4) Write short notes on: i) Concept of Productivity. Food chain. 5) Write detailed notes on concept of habitat and ecological niche.
8 (DZOO 04 (NR)) ASSIGNMENT - 2, MAY PAPER- IV ANIMAL ECOLOGY AND WILDLIFE 1) Write short notes on: i) Mutualism. Interspecific competition and Coexistence. 2) Give an account on density dependent action in population control. 3) Write short notes on: i) Basic concept rates. r and k selection. 4) Give an account on National wild life action plan. 5) Write short notes on: i) Hot spots. Biosphere reserves and wildlife projects in India.
1) Give detailed notes on classification of the Phylum Protozoa up to orders.
(DZOO 01 (NR)) ASSIGNMENT - 1, DEC - 2018. PAPER-I : SYSTEMATICS AND ANATODECEMBER OF INVERTEBRATES 1) Give detailed notes on classification of the Phylum Protozoa up to orders. 2) Write short notes on:
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