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 BIOINFORMATICS

Course Name & Code            : Bioinformatics& 17IT92 (Add-on course III)

L-T-P Structure                        : 3-0-0                                                                          Credits : 3

Program/Sem/Sec                    : B.Tech., I.T., VII-Sem.                                            A.Y     : 2020-21

 

PRE-REQUISITE: AI, Data Mining, Biology concepts like Cell, DNA, RNA etc.

 

COURSE EDUCATIONAL OBJECTIVES (CEOs): To explain the fundamental concepts of Bioinformatics, to make the students familiar to information resources. Expertise the students to analyses DNA Sequence. To make students to be explore in the concepts of searching and pairwise techniques. To motivate students to do projects using micro array data.

 

COURSE OUTCOMES (COs): At the end of the course, students can

CO 1

Identify basic concepts of Bioinformatics.

CO 2

Analyze DNA Sequence by using information resources

CO 3

Summarize concepts of pair wise techniques and searching techniques

CO 4

Analyze multiple sequence alignment & Phylogenetic Analysis.

CO5

Apply analysis packages on micro array data.

 

COURSE ARTICULATION MATRIX (Correlation between COs, POs & PSOs):

COs

PO1

PO2

PO3

PO4

PO5

PO6

PO7

PO8

PO9

PO10

PO11

PO12

PSO1

PSO2

PSO3

CO1

3

3

1

-

-

-

-

-

-

-

-

-

3

1

1

CO2

2

3

3

1

3

-

-

-

-

-

-

-

3

2

1

CO3

2

3

3

 

3

-

-

-

-

-

-

-

2

3

1

CO4

2

3

3

1

3

-

-

-

-

-

-

-

3

2

2

CO5

2

3

3

1

3

-

-

-

2

-

2

2

1

3

3

 

Note: Enter Correlation Levels 1 or 2 or 3. If there is no correlation, put ‘-’

         1- Slight (Low), 2 – Moderate (Medium), 3 - Substantial (High).

TEXT BOOKS: 

T1

Introduction to Bioinformatics T K Attwood And D.J. Parry-Smith, Pearson 

T2

Bioinformatics methods and applications S.C. Rastogi, N. Mendiratta And P.Rastogi., PHI


REFERENCE BOOKS: 

R1

Introduction to Bioinformatics Arthur M. Lesk OXFORD Publishers (Indian Edition)

R2

Elementary Bioinformatics, ImtiyazAlam Khan, Pharma Book Syndicate

 

EVALUATION PROCESS (R17 Regulations):

Evaluation Task

Marks

Assignment-I (Unit-I)

A1=5

Assignment-II (Unit-II)

A2=5

I-Mid Examination (Units-I & II)

M1=20

I-Quiz Examination (Units-I & II)

Q1=10

Assignment-III (Unit-III)

A3=5

Assignment-IV (Unit-IV)

A4=5

Assignment-V (Unit-V)

A5=5

II-Mid Examination (Units-III, IV & V)

M2=20

II-Quiz Examination (Units-III, IV & V)

Q2=10

Attendance

B=5

Assignment Marks = Best Four Average of A1, A2, A3, A4, A5

A=5

Mid Marks =75% of Max(M1,M2)+25% of Min(M1,M2)

M=20

Quiz Marks =75% of Max(Q1,Q2)+25% of Min(Q1,Q2)

B=10

Cumulative Internal Examination (CIE) : A+B+M+Q

40

Semester End Examination (SEE)

60

Total Marks = CIE + SEE

100

 

UNIT-I Notes: Click Here 
UNIT-I Presentation: Click Here
UNIT-II Presentation: Click Here
UNIT-III Presentation: Click Here
UNIT-IV Presentation: Click Here
UNIT-V Presentation: Click Here

 

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