Python Programming for Biological Problems
Python Programming for Biological Problems, available at $54.99, has an average rating of 4.1, with 89 lectures, based on 52 reviews, and has 336 subscribers.
You will learn about Learn the basic syntax of Python language quickly and easily Implement the main Python language operators: mathematical, logical, relational and conditional Create loop structures using for and while commands Implement functions for modularization of programs Implement the main Python language collections: tuples, lists, dictionaries, sets and arrays Manipulate text files Perform error and exception handling Learn the basic intuition and practice about regular expressions Learn the basic intuition and practice of Object Orientation Estimate the rate of recombination between genes Analyze genetic sequences Model bacterial growth Write a code that simulates a biology test, where at the end the grade is calculated Analyze gene sequence files directly from databases in .fasta format Analyze protein structure files in .pdb format Build a basic identification key for plant species This course is ideal for individuals who are Biology students or similar areas, such as biomedicine, pharmacy, forestry engineering, etc. or Biology or related professionals who wish to learn a programming language or Developers or IT professionals who are interested in applying programming knowledge in the field of biology or Undergraduate students taking programming courses or People interested in programming languages It is particularly useful for Biology students or similar areas, such as biomedicine, pharmacy, forestry engineering, etc. or Biology or related professionals who wish to learn a programming language or Developers or IT professionals who are interested in applying programming knowledge in the field of biology or Undergraduate students taking programming courses or People interested in programming languages.
Enroll now: Python Programming for Biological Problems
Summary
Title: Python Programming for Biological Problems
Price: $54.99
Average Rating: 4.1
Number of Lectures: 89
Number of Published Lectures: 89
Number of Curriculum Items: 89
Number of Published Curriculum Objects: 89
Original Price: $19.99
Quality Status: approved
Status: Live
What You Will Learn
- Learn the basic syntax of Python language quickly and easily
- Implement the main Python language operators: mathematical, logical, relational and conditional
- Create loop structures using for and while commands
- Implement functions for modularization of programs
- Implement the main Python language collections: tuples, lists, dictionaries, sets and arrays
- Manipulate text files
- Perform error and exception handling
- Learn the basic intuition and practice about regular expressions
- Learn the basic intuition and practice of Object Orientation
- Estimate the rate of recombination between genes
- Analyze genetic sequences
- Model bacterial growth
- Write a code that simulates a biology test, where at the end the grade is calculated
- Analyze gene sequence files directly from databases in .fasta format
- Analyze protein structure files in .pdb format
- Build a basic identification key for plant species
Who Should Attend
- Biology students or similar areas, such as biomedicine, pharmacy, forestry engineering, etc.
- Biology or related professionals who wish to learn a programming language
- Developers or IT professionals who are interested in applying programming knowledge in the field of biology
- Undergraduate students taking programming courses
- People interested in programming languages
Target Audiences
- Biology students or similar areas, such as biomedicine, pharmacy, forestry engineering, etc.
- Biology or related professionals who wish to learn a programming language
- Developers or IT professionals who are interested in applying programming knowledge in the field of biology
- Undergraduate students taking programming courses
- People interested in programming languages
Biologists, biology students, and professionals in related fields generally have little or no contact with computer programming. However, the growing of data in genomic, protein and organism databases can be used to model the solution for some problems, such as the discovery of medicines and insecticides. It leads biologists to benefit from computer programming knowledge, so that they can develop useful applications in molecular biology, ecology, research on diseases, among others.
This course was developed with the purpose of introducing biologists, students of biology, biomedicine, ecology, pharmacy and professionals in related areas to programming using Python, which is nowadays one of the most used programming languages. It has a clear syntax and is easy to learn especially if you are a professional who are not familiar with technology. Many tools used in the field of biology were written in Python, which makes it a great option for establishing your first contact with computer programming. You will learn the following topics:
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Python installation and main tools (IDEs)
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Variables, constants and strings
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Math operations
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Logical, relational and conditional operators
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Loops (for and while)
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Functions
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Lists, dictionaries, tuples, sets and arrays
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Manipulation of text files
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Error and exception handling
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Regular expressions
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Object oriented
After learning the basic concepts of Python, you will be able to apply the concepts in exercises, challenges and practical projects related to Biology. Below are some of the case studies that we will implement step by step:
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Prediction of the mass of a peptide sequence according to its amino acid composition
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Schedule a biology test that calculates the grade and whether the user got each question right or wrong
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Creating classes related to objects in the biological world
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.fasta gene sequence analysis
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Analysis of gene frequencies according to the Hardy-Weinberg Theorem
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Creating functions for population ecology calculations
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Discover patterns in RNA sequences
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Estimation of gene distances
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Basic species identification
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Troubleshooting gene frequencies
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Creating scripts for parsing .pdb-type protein sequence files
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Transcription of DNA sequences into RNA
There are more than 80 classes, concepts, code demonstration, and exercises with solutions! More than 30 proposed challenges and 4 small projects applying the concepts learned in each section in a biological context, with step-by-step resolution.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Course content – Jones
Lecture 2: Course content – Guilherme
Lecture 3: Introduction to Python
Lecture 4: Installation
Lecture 5: Python IDEs
Lecture 6: COLAB file
Chapter 2: Variables, data types, and user inputs
Lecture 1: Variables and constants
Lecture 2: Mathematical operations
Lecture 3: Exercises
Lecture 4: Exercise 1: Ki calculation
Lecture 5: Exercise 2: Recombination of genotypes
Chapter 3: Logical and relational operators
Lecture 1: Logical and relational operators
Lecture 2: Exercise
Lecture 3: Exercise 1: Comparing weights of proteins
Chapter 4: Strings
Lecture 1: Strings
Lecture 2: Exercises
Lecture 3: Sequences to be used in exercise 2
Lecture 4: Solution: abbreviating scientific names
Lecture 5: Solution: Extracting an exon from a gene
Chapter 5: Conditional operators
Lecture 1: Conditional operators
Lecture 2: Exercises
Lecture 3: Solution: Taxonomic families
Lecture 4: Solution: Codons in a RNA sequence
Chapter 6: Loops
Lecture 1: For loop
Lecture 2: While loop
Lecture 3: Exercises
Lecture 4: Solution: transcription of DNA
Lecture 5: Solution: Bacterial growth
Chapter 7: Collections
Lecture 1: Tuples and lists
Lecture 2: Dictionaries and sets
Lecture 3: Matrices
Lecture 4: Exercises
Lecture 5: Dictionary with the symbols of their aa's and the mass
Lecture 6: Solution: mass of aminoacid sequeces
Lecture 7: Solution: transcription of DNA
Lecture 8: Project 1: Simulating a biology test
Lecture 9: Questions for the test
Lecture 10: Solution: part 1
Lecture 11: Solution: part 2
Lecture 12: Solution: part 3
Chapter 8: Functions
Lecture 1: Functions
Lecture 2: Exercises
Lecture 3: Solution: function of recombination
Lecture 4: Solution: Ki calculation
Lecture 5: Solution: transcription function
Lecture 6: Project 2: calculating gene frequencies
Lecture 7: Chi-square distribution table
Lecture 8: Project 2: part 1
Lecture 9: Project 2: part 2
Chapter 9: Modules
Lecture 1: Math and datetime
Lecture 2: Random and time
Lecture 3: Exercises
Lecture 4: Solution: generation of random DNA sequence
Lecture 5: Solution: function of population growth
Chapter 10: Custom modules
Lecture 1: Creating packages
Lecture 2: Exercises
Lecture 3: Solution: DNA module
Lecture 4: Solution: module for ecology functions
Chapter 11: Errors and exceptions
Lecture 1: Errors and exceptions
Lecture 2: Exercise
Lecture 3: Solution: validation of numerical inputs
Lecture 4: Project 3 – Identification key
Lecture 5: Image of the key
Lecture 6: Solution: part 1
Lecture 7: Solution: part 2
Chapter 12: Text files
Lecture 1: Reading and writing text files
Lecture 2: Genetic databases
Lecture 3: Protein database PDB
Lecture 4: Exercises
Lecture 5: Solution: reading a DNA sequence
Lecture 6: Solution: reading a .pdb sequence
Lecture 7: Project 4 – Reading and processing gene sequences
Lecture 8: Solution: part 1
Lecture 9: Solution: part 2
Lecture 10: Solution: part 3
Chapter 13: Regular expressions
Lecture 1: Introduction
Lecture 2: Search, match and find all
Lecture 3: Regular expressions – main metacharacters and quantifiers
Lecture 4: Exercise
Lecture 5: Solution: Identifying species names in a text
Lecture 6: Sample sequence for exercise 2
Lecture 7: Solution: Analyzing a genetic sequence
Chapter 14: Object oriented
Lecture 1: Introduction
Lecture 2: Practical
Lecture 3: Exercise
Lecture 4: Solution: Class 'Plant'
Instructors
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Jones Granatyr
Professor -
Guilherme Matos Passarini, phD
Professor -
AI Expert Academy
Instructor
Rating Distribution
- 1 stars: 1 votes
- 2 stars: 2 votes
- 3 stars: 14 votes
- 4 stars: 10 votes
- 5 stars: 25 votes
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