Data Science With Python PLUS Deep Learning & PostgreSQL
Data Science With Python PLUS Deep Learning & PostgreSQL, available at $54.99, has an average rating of 4.2, with 296 lectures, based on 10 reviews, and has 332 subscribers.
You will learn about Data Science and Its Types Top 10 Jobs in Data Science Tools of Data Science Variables and Data in Python Introduction to Python Probability and Statistics Functions in Python Operator in Python DataFrame with Excel Dictionaries in Python Tuples and loops Conditional Statement in Python Sequences in Python Iterations in Python Multiple Regression in Python Linear Regression Libraries in Python Numpy and SK Learn Pandas in Python K-Means Clustering Clustering of Data Data Visualization with Matplotlib Data Preprocessing in Python Mathematics in Python Data Visualization with Plotly What is Deep Learning? Deep Learning Neural Network Tensor Flow PostgreSQL Machine Learning and Data Science Machine Learning Models Data Science Projects: Real World Problems This course is ideal for individuals who are Those who want to have career in data science. or Those who have interest in data science and want to apply their knowledge in their field or profession. or Those who want to learn the application of data science using python. It is particularly useful for Those who want to have career in data science. or Those who have interest in data science and want to apply their knowledge in their field or profession. or Those who want to learn the application of data science using python.
Enroll now: Data Science With Python PLUS Deep Learning & PostgreSQL
Summary
Title: Data Science With Python PLUS Deep Learning & PostgreSQL
Price: $54.99
Average Rating: 4.2
Number of Lectures: 296
Number of Published Lectures: 296
Number of Curriculum Items: 296
Number of Published Curriculum Objects: 296
Original Price: $34.99
Quality Status: approved
Status: Live
What You Will Learn
- Data Science and Its Types
- Top 10 Jobs in Data Science
- Tools of Data Science
- Variables and Data in Python
- Introduction to Python
- Probability and Statistics
- Functions in Python
- Operator in Python
- DataFrame with Excel
- Dictionaries in Python
- Tuples and loops
- Conditional Statement in Python
- Sequences in Python
- Iterations in Python
- Multiple Regression in Python
- Linear Regression
- Libraries in Python
- Numpy and SK Learn
- Pandas in Python
- K-Means Clustering
- Clustering of Data
- Data Visualization with Matplotlib
- Data Preprocessing in Python
- Mathematics in Python
- Data Visualization with Plotly
- What is Deep Learning?
- Deep Learning
- Neural Network
- Tensor Flow
- PostgreSQL
- Machine Learning and Data Science
- Machine Learning Models
- Data Science Projects: Real World Problems
Who Should Attend
- Those who want to have career in data science.
- Those who have interest in data science and want to apply their knowledge in their field or profession.
- Those who want to learn the application of data science using python.
Target Audiences
- Those who want to have career in data science.
- Those who have interest in data science and want to apply their knowledge in their field or profession.
- Those who want to learn the application of data science using python.
Get instant access to a workbook on Data Science, follow along, and keep for reference
Introduce yourself to our community of students in this course and tell us your goals with data science
Encouragement and celebration of your progress every step of the way: 25% > 50% > 75% & 100%
30 hours of clear and concise step-by-step instructions, lessons, and engagement
This data science course provides participants with the knowledge, skills, and experience associated with Data Science. Students will explore a range of data science tools, algorithms, Machine Learning, and statistical techniques, with the aim of discovering hidden insights and patterns from raw data in order to inform scientific business decision-making.
What you will learn:
-
Data Science and Its Types
-
Top 10 Jobs in Data Science
-
Tools of Data Science
-
Variables and Data in Python
-
Introduction to Python
-
Probability and Statistics
-
Functions in Python
-
Operator in Python
-
DataFrame with Excel
-
Dictionaries in Python
-
Tuples and loops
-
Conditional Statement in Python
-
Sequences in Python
-
Iterations in Python
-
Multiple Regression in Python
-
Linear Regression
-
Libraries in Python
-
Numpy and SK Learn
-
Pandas in Python
-
K-Means Clustering
-
Clustering of Data
-
Data Visualization with Matplotlib
-
Data Preprocessing in Python
-
Mathematics in Python
-
Data Visualization with Plotly
-
What is Deep Learning?
-
Deep Learning
-
Neural Network
-
Tensor Flow
-
PostgreSQL
-
Machine Learning and Data Science
-
Machine Learning Models
-
Data Science Projects: Real World Problems
-
…and more!
Contents and Overview
You’ll start with What is Data Science?; Application of Data Science; Types of Data Science; Cloud Computing; Cyber Security; Data Engineering; Data Mining; Data Visualization; Data Warehousing; Machine Learning; Math and Stats in Data Science; Database Programming; Database Programming 2; Business Understanding; Data Science Companies; Data Science Companies 2; Top 10 Jobs and Skills in Data Science; Top 10 Jobs and Skills in Data Science 2; Tools and Techniques in Data Science; Tools and Techniques in Data Science; Interview 1; Interview 2; Statistics Coding File; Median in Statistics; Finding Mean in Python; fMean in Statistics Low and High Mean in Statistics; Mode in Statistics; pVariance in Statistics; Variance and Co-variance in Statistics; Quantiles and Normal Distribution in Statistics; Statistics 9; Coding File; Excel: Creating a Row; Creating and Copying Path of an Excel Sheet; Creating and Copying Path of an Excel Sheet 2; Importing Data Set in Python from Excel; Coding File; Linear Regression; Linear Regression Assignment Code; Linear Regression Assignment Code; NumPy and SK Learn Coding File; Numpy: Printing an Array; Numpy: Printing Multiple Array; Numpy: dtypes Parameters; Numpy: Creating Variables; Numpy: Boolean Using Numpy; Numpy: Item Size Using Bit Integers; Shape and Dimension Using Numpy; Numpy for 2D and 3D Shapes; Arrangement of Numbers Using NumPy; Types of Numbers Using NumPy; Arrangement of Random Numbers Using NumPy; NumPy and SciPy; Strings in Using NumPy; Numpy: dtype bit integers; Inverse and Determinant Using SciPy; Spec and Noise; Interpolation Using SciPy; Optimization Using SciPy; Defining Trigonometric Function; NumPy Array.
We will also cover Pandas Coding File; What is Pandas?; Printing Selected Series Using Pandas; Printing Pandas Series; Pandas Selected Series; DataFrame in Pandas; Pandas Data Series 2; Pandas Data Series 3; Pandas Data Series 0 and 1; Pandas for Sets; Pandas for Lists and Items; Pandas Series; Pandas Dictionaries and Indexing; Pandas for Boolean; Pandas iloc; Random State Series in Pandas; DataFrame Columns in Pandas; Size and Fill in Pandas; Loading Data Set in Pandas; Google Searching csv File; Visualization of Excel Data in Pandas; Visualization of Excel Data in Pandas 2; Excel csv File in Pandas; Loading and Visualization of Excel Data in Pandas 3; Histogram Using Pandas; Percentile in Pandas; What is Clustering and K-Mean Clustering?; Python Coding File; Simple Plotting; Simple Plotting 2; Scatter Plotting; Marker Point Plotting; Assignment Code; Error bar Plotting; Error bar Color Plotting; Gaussian Process Code; Error in Gaussian Process Code; Histo Plotting; Histo Plotting 2; Color bar Plotting; Legend Subplots; Trigonometry Plotting; Color bar Plotting 2; Trigonometry Plotting 2; Subplots with Font Size; Subplots with Font Size 2; Plotting Points of Subplots; Grid Plotting; Formatter Plotting Coding; Grid and Legend Code Plotting; Color Code Coding;Histogram Color Code Coding; Histo and Line Plotting; Color Scheme for Histo; 3D Plotting; 3D Trigonometry Plotting; 3D Color Scheme; Neural Network Coding File; Neural Network Model for Supervised Learning; MLPClassifier Neural Network; Neural Prediction and Shape.
This course will also tackle Coding File; Addition in Tensor; Multiplication in Tensor; Tensor of Rank 1; Tensor for Boolean and String; Print 2 by 2 Matrix; Tensor Shape; Square root Using Tensor; Variable in Tensor; Assignment; What is PostgreSQL?; Coding File; Naive Bayes Model of Machine Learning; Scatter Plotting of Naive Bayes Model; Model Prediction; Fetching Targeting Data; Extracting Text Using Naive Bayes Model; Ifidvectorizer for Multinomial; Defining Predict Category; Coding File; Iris Seaborn; Linear Regression Model; Adding and Subtraction in Python; Adding and Subtraction 2; Variable Intersection in Python; Finding len in Python; Basic Math in Python; Basic Math in Python 2; Basic Math in Python 3; Basic Math in Python 4; Trigonometry in Python; Degree and Radian in Python; Finding Difference Using Variables; Intersection of Sets in Python; Difference of Sets in Python; issuperset Code in Python; issuperset Code 2; Boolean Disjoint in Python; Variables in Python; Coding File; Current Date Time in Python; dir Date Time; Time Stamp in Python; Printing Day, Month and Year; Printing Minutes and Seconds; Time Stamp of Date and minutes; Microsecond in Python; Date Time Template; Time Stamp 2; Time Stamp 3; Time difference in Python; Time Difference in Python 2; Time Delta; Time Delta 2; Union of Sets; Time Delta 3; Assignment Code for Date and Time 1; Assignment Code for Date and Time 2; Assignment Code for Date and Time 3; Symmetric Difference in Python; Bitwise operator in Python; Logical Reasoning in Python; Bin Operator; Bin Coding; Binary Coding 2; Boolean Coding; Del Operator; Hello World; Boolean Algebra; Printing Array; Printing Array 2; Append Array; Insertion in an Array; Extension in an Array; Remove an Array; Indexing an Array in Python; Reverse and Buffering an Array in Python; Array into String; char Array in Python; Formatting an Array; Printing List; Printing Tuples in Python; Easy Coding; Printing a String; Printing Selected Strings; Printing New Line; Assigning Code; Open a File in Python; Finding a Path in Python File; Printing a String in Python 2; Printing Multiple String in Python; Addition and Multiplying String in Python; Boolean in String; Selection of Alphabets in String; Choosing Specific Words from Code; Choosing Words 2; Combining Integers and Strings; Assigning Values to String; String and Float; ord and chr Coding in Python; Binary Operation Code in Python; Binary Operation Code 2; int into Decimal in Python; Decimal to Binary; Adding Lists in Python; Empty List; Matrix Operation in Python; Dictionaries and Lists; Del Operator in Python; Printing Date Time in Python; Dictionaries Items; Pop Coding in Python; Lists and Dictionaries; Matrix Coding; mel Coding; mel Coding; Dictionaries Key; Finding Square of Lists; Dictionary Coding; Print Selected Lists; Tuples in Python; Tuples Coding; Print Tuples in Python; Sorted Tuples in Python; Add List in Tuples; Index in Tuples; List and Tuples in Python; Open My File; Scan Text File; Assignment; Lists and Dictionaries; Read Lines in Python.
Then, Linear Functions; Inner Product in Python; Taylor’s Approximation in Python; Regression Model; Norm Using Python; Cheb Bound in Python; Zeroes and One in NumPy; Linear Combination of Vectors; Vectors and Scalars in Python; Inner Product of Vectors; Difference and Product in Python; Finding Angle in Python; Product of Two Vector in Python; Convolution in Python; Finding Norm in Python; Sum and Absolute in Python; Vstack and Hstack in Python; Derivatives Using SymPy; Difference Using SymPy; Partial Derivatives Using SymPy; Integration Using SymPy; Integration Using SymPy; Limit Using SymPy; Series in Python; Printing Leap Year in Python; Year Format in Python; Pyaudio in Python; Pyaudio in Python 2; Pyaudio in Python 3; Pyaudio in Python 4; Read Frame in Python; Shelve Library in Python; Assignment Code; Pandas Data Frame; Assignment Code.
We can’t wait to see you on the course!
Enrol now, and we’ll help you improve your data science skills!
Peter
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduce Yourself To Your Fellow Students And Tell Everyone What Are Your Goals
Lecture 2: Let's Celebrate Your Progress In This Course: 25% > 50% > 75% > 100%!!
Lecture 3: What is Data Science?
Lecture 4: Application of Data Science
Lecture 5: Types of Data Science
Lecture 6: Cloud Computing
Lecture 7: Cyber Security
Lecture 8: Data Engineering
Lecture 9: Data Mining
Lecture 10: Data Visualization
Lecture 11: Data Warehousing
Lecture 12: Machine Learning
Lecture 13: Math and Stats in Data Science
Lecture 14: Database Programming
Lecture 15: Database Programming 2
Lecture 16: Business Understanding
Chapter 2: Data Science Companies
Lecture 1: Data Science Companies
Lecture 2: Data Science Companies 2
Chapter 3: Top 10 Jobs in Data Science
Lecture 1: Top 10 Jobs and Skills in Data Science
Lecture 2: Top 10 Jobs and Skills in Data Science 2
Chapter 4: Tools and Techniques of Data Science
Lecture 1: Tools and Techniques in Data Science
Lecture 2: Tools and Techniques in Data Science
Chapter 5: Interview Asked Question in Data Science
Lecture 1: Interview 1
Lecture 2: Interview 2
Chapter 6: Introduction to Probability and Statistics
Lecture 1: Statistics Coding File
Lecture 2: Median in Statistics
Lecture 3: Finding Mean in Python
Lecture 4: fMean in Statistics
Lecture 5: Low and High Mean in Statistics
Lecture 6: Mode in Statistics
Lecture 7: pVariance in Statistics
Lecture 8: Variance and Co-variance in Statistics
Lecture 9: Quantiles and Normal Distribution in Statistics
Lecture 10: Statistics 9
Chapter 7: DataFrame with Excel
Lecture 1: Coding File
Lecture 2: Excel: Creating a Row
Lecture 3: Creating and Copying Path of an Excel Sheet
Lecture 4: Creating and Copying Path of an Excel Sheet 2
Lecture 5: Importing Data Set in Python from Excel
Chapter 8: Linear and Multiple Regression in Python
Lecture 1: Coding File
Lecture 2: Linear Regression
Lecture 3: Linear Regression Assignment Code
Lecture 4: Linear Regression Assignment Code
Chapter 9: Numpy and SK Learn
Lecture 1: NumPy and SK Learn Coding File
Lecture 2: Numpy: Printing an Array
Lecture 3: Numpy: Printing Multiple Array
Lecture 4: Numpy: dtypes Parameters
Lecture 5: Numpy: Creating Variables
Lecture 6: Numpy: Boolean Using Numpy
Lecture 7: Numpy: Item Size Using Bit Integers
Lecture 8: Shape and Dimension Using Numpy
Lecture 9: Numpy for 2D and 3D Shapes
Lecture 10: Arrangement of Numbers Using NumPy
Lecture 11: Types of Numbers Using NumPy
Lecture 12: Arrangement of Random Numbers Using NumPy
Lecture 13: NumPy and SciPy
Lecture 14: Strings in Using NumPy
Lecture 15: Numpy: dtype bit integers
Lecture 16: Inverse and Determinant Using SciPy
Lecture 17: Spec and Noise
Lecture 18: Interpolation Using SciPy
Lecture 19: Optimization Using SciPy
Lecture 20: Defining Trigonometric Function
Lecture 21: NumPy Array
Lecture 22: You've Achieved 25% >> Let's Celebrate Your Progress And Keep Going To 50% >>
Chapter 10: Pandas: DataFrame with Python
Lecture 1: Pandas Coding File
Lecture 2: What is Pandas?
Lecture 3: Printing Selected Series Using Pandas
Lecture 4: Printing Pandas Series
Lecture 5: Pandas Selected Series
Lecture 6: DataFrame in Pandas
Lecture 7: Pandas Data Series 2
Lecture 8: Pandas Data Series 3
Lecture 9: Pandas Data Series 0 and 1
Lecture 10: Pandas for Sets
Lecture 11: Pandas for Lists and Items
Lecture 12: Pandas Series
Lecture 13: Pandas Dictionaries and Indexing
Lecture 14: Pandas for Boolean
Lecture 15: Pandas iloc
Lecture 16: Random State Series in Pandas
Lecture 17: DataFrame Columns in Pandas
Lecture 18: Size and Fill in Pandas
Lecture 19: Loading Data Set in Pandas
Lecture 20: Google Searching csv File
Lecture 21: Visualization of Excel Data in Pandas
Lecture 22: Visualization of Excel Data in Pandas 2
Lecture 23: Excel csv File in Pandas
Lecture 24: Loading and Visualization of Excel Data in Pandas 3
Lecture 25: Histogram Using Pandas
Instructors
-
Peter Alkema
Business | Technology | Self Development
Rating Distribution
- 1 stars: 2 votes
- 2 stars: 0 votes
- 3 stars: 0 votes
- 4 stars: 1 votes
- 5 stars: 7 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
You may also like
- Top 10 Video Editing Courses to Learn in November 2024
- Top 10 Music Production Courses to Learn in November 2024
- Top 10 Animation Courses to Learn in November 2024
- Top 10 Digital Illustration Courses to Learn in November 2024
- Top 10 Renewable Energy Courses to Learn in November 2024
- Top 10 Sustainable Living Courses to Learn in November 2024
- Top 10 Ethical AI Courses to Learn in November 2024
- Top 10 Cybersecurity Fundamentals Courses to Learn in November 2024
- Top 10 Smart Home Technology Courses to Learn in November 2024
- Top 10 Holistic Health Courses to Learn in November 2024
- Top 10 Nutrition And Diet Planning Courses to Learn in November 2024
- Top 10 Yoga Instruction Courses to Learn in November 2024
- Top 10 Stress Management Courses to Learn in November 2024
- Top 10 Mindfulness Meditation Courses to Learn in November 2024
- Top 10 Life Coaching Courses to Learn in November 2024
- Top 10 Career Development Courses to Learn in November 2024
- Top 10 Relationship Building Courses to Learn in November 2024
- Top 10 Parenting Skills Courses to Learn in November 2024
- Top 10 Home Improvement Courses to Learn in November 2024
- Top 10 Gardening Courses to Learn in November 2024