- Introduction to Statistics
- Measures of central tendencies
- Measures of variance
- Measures of frequency
- Measures of Rank
- Basics of Probability, distributions
- Conditional Probability (Bayes Theorem)
Data Science with Python Course
Gain the skills and knowledge associated with data science and Python programming language with the data science with ...Read more
Online
320 Hours
₹ 35000
Quick Facts
particular | details | |||||
---|---|---|---|---|---|---|
Medium of instructions
English
|
Mode of learning
Self study, Virtual Classroom
+1 more
|
Mode of Delivery
Video and Text Based
|
Frequency of Classes
Weekdays, Weekends
|
Learning efforts
8-10 Hours Per Week
|
Course overview
The data science with Python course is developed and offered by the online education provider platform Analytixlab in partnership with the International Business Machines Corporation(IBM) for dual certification for the candidates. This online program consists of 320 hours of course study and eight to ten hours of self-study required by the students every week.
The course curriculum is focussed on the methods of using the Python programming language for data analysis and enables the candidates to acquire the data science skills which can be referred to as descriptive and predictive analytics done with the help of data manipulation techniques and sources from statistical libraries.
The Python programming language drives the application of web analytics along with the techniques of machine learning and artificial intelligence in the field of data science and this significance of Python is studied by the candidates during the course.
The experimental projects and course exercises enhance the practical learning experience of the candidates in data science with Python course training.
The highlights
- Online course
- Live virtual sessions
- Independent learning
- Student loan
- Installment payment option
- Demo session
- Dual certification
- Placement support
Program offerings
- Course videos
- Lectures
- Recordings
- Doubt resolution
- Technical support
- Capstone projects
- Assignments
- Exercises
- Case studies
- Testimonials
- Student loan
- Extendable deadlines
- Course completion certificate
- Dual certification.
Course and certificate fees
Fees information
The data science with Python course training is available online in three different versions with specific fee amounts. The learners are provided with a student loan to pay the course fee and are allowed to pay the fees in three installments.
Data science with Python course fee structure
Heads | Amount in INR |
Classroom & Bootcamp | Rs 60000 + taxes |
Fully Interactive Live Online | Rs 60000 + taxes |
Blended eLearning | Rs 35000 + taxes |
certificate availability
Yes
certificate providing authority
Analytixlabs
Who it is for
The data science with Python course is aimed at individuals who have a background qualification in fields like engineering, mathematics, statistics, finance, and business management. The course helps those who aspire for a career as data scientists and professionals who work with machine learning technologies.
Eligibility criteria
The data science with Python course requires the students to have preliminary knowledge of the fundamentals of data analytics, Microsoft Excel, SQL, and Tableau software.
Certificate qualifying details
- The candidates after completion of the data science with Python course classes ought to submit the completed projects and assignments without plagiarism within 1 year of course commencement and will receive the certificate from Analytixlab.
- The dual certification with IBM is issued to the students who have completed their projects and assignments and cleared the MCQ tests in the two attempts within six months.
What you will learn
The data science with Python course syllabus is framed for the candidates to equip them with the knowledge of data science, Python and data visualization. The candidates will learn about the strategies of data handling, visualization, statistical analysis, and predictive modeling techniques. This data science with Python online training improves the knowledge of data analytics.
The syllabus
Building blocks
Introduction to basic statistics
Introduction to analytics and data science
- What is analytics & Data Science?
- Business Analytics vs. Data Analytics vs. Data Science
- Common Terms in Analytics
- Analytics vs. Data warehousing, OLAP, MIS Reporting
- Types of data (Structured vs. Unstructured vs. Semi Structured)
- Relevance of Analytics in industry and need of the hour
- Critical success drivers
- Overview of analytics tools & their popularity
- Analytics Methodology & problem solving framework
- Stages of Analytics
Introduction to mathematical foundations
- Introduction to Linear Algebra
- Matrices Operations
- Introduction to Calculus
- Derivatives & Integration
- Maxima, minima
- Area under the curve
- Theory of optimization
Python for data science
Visualizing geospatial data
- Introduction to Folium
- Maps with Markers
- Choropleth Maps
Operations with NumPy(Numerical Python)
- What is NumPy?
- Overview of functions & methods in NumPy
- Data structures in NumPy
- Creating arrays and initializing
- Reading arrays from files
- Special initializing functions
- Slicing and indexing
- Reshaping arrays
- Combining arrays
- NumPy Maths
Python essentials
- Overview of Python- Starting with Python
- Why Python for data science?
- Anaconda vs. python
- Introduction to installation of Python
- Introduction to Python IDE's(Jupyter,/Ipython)
- Concept of Packages - Important packages
- NumPy, SciPy, scikit-learn, Pandas, Matplotlib, etc
- Installing & loading Packages & Name Spaces
- Data Types & Data objects/structures (strings, Tuples, Lists, Dictionaries)
- List and Dictionary Comprehensions
- Variable & Value Labels – Date & Time Values
- Basic Operations – Mathematical/string/date
- Control flow & conditional statements
- Debugging & Code profiling
- Python Built-in Functions (Text, numeric, date, utility functions)
- User defined functions – Lambda functions
- Concept of apply functions
- Python – Objects – OOPs concepts
- How to create & call class and modules?
Overview of Pandas
- What is pandas, its functions & methods
- Pandas Data Structures (Series & Data Frames)
- Creating Data Structures (Data import – reading into pandas)
Cleansing data with Python
- Understand the data
- Sub Setting / Filtering / Slicing Data
- Using [] brackets
- Using indexing or referring with column names/rows
- Using functions
- Dropping rows & columns
- Mutation of table (Adding/deleting columns)
- Binning data (Binning numerical variables in to categorical variables)
- Renaming columns or rows
- Sorting (by data/values, index) -By one column or multiple columns - Ascending or Descending
- Type conversions
- Setting index
- Handling duplicates /missing/Outliers
- Creating dummies from categorical data (using get_dummies())
- Applying functions to all the variables in a data frame (broadcasting)
- Data manipulation tools(Operators, Functions, Packages, control structures, Loops, arrays etc.)
Data analysis with Python
- Exploratory data analysis
- Descriptive statistics, Frequency Tables and summarization
- Uni-variate Analysis (Distribution of data & Graphical Analysis)
- Bi-Variate Analysis(Cross Tabs, Distributions & Relationships, Graphical Analysis)
Data visualization with Python
- Introduction to Data Visualization
- Introduction to Matplotlib
- Basic Plotting with Matplotlib
- Line Plots
Visualization tools
- Basic Visualization Tools
- Area Plots
- Histograms
- Bar Charts
- Pie Charts
- Box Plots
- Scatter Plots
- Bubble Plots
- Advanced Visualization Tools
- Waffle Charts
- Word Clouds
- Seaborn and Regression Plots
Statistical methods and hypothesis testing
- Descriptive vs. Inferential Statistics
- What is probability distribution?
- Important distributions (discrete & continuous distributions)
- Deep dive of normal distributions and properties
- Concept of sampling & types of sampling
- Concept of standard error and central limit theorem
- Concept of Hypothesis Testing
- Statistical Methods - Z/t-tests (One sample, independent, paired), ANOVA, Correlation and Chi- square
Predictive modeling with Python
Introduction to predictive modeling
- Concept of model in analytics and how it is used
- Common terminology used in modeling process
- Types of Business problems - Mapping of Algorithms
- Different Phases of Predictive Modeling
- Data Exploration for modeling
- Exploring the data and identifying any problems with the data (Data Audit Report)
- Identify missing/Outliers in the data
- Visualize the data trends and patterns
Supervised learning: regression problems
- Linear Regression
- Non-linear Regression
- K-Nearest Neighbor
- Decision Trees
- Ensemble Learning - Bagging, Random Forest, Adaboost, Gradient Boost, XGBoost
- Support Vector Regressor
Supervised learning: classification problems
- Logistic Regression
- K-Nearest Neighbor
- Naïve Bayes Classifier
- Decision Trees
- Ensemble Learning - Bagging, Random Forest, Adaboost, Gradient Boost, XGBoost
- Support Vector Classifier
Placement Readiness Program
- CV preparation and expert sessions
- Profile creation on Kaggle and GitHub
- Mock interviews
- Personal interviews focusing on effective communication and behavioral fit
- Technical interviews on applications of data science concepts and techniques
- Placement days - Actual & Practice Runs
- Technical tests - MCQs and Hiring Projects/ Case Studies
- Case Study Presentations
- Interviews with Industry Experts
- General Analytics and Problem Solving
- Profile optimization on job portals (like LinkedIn, Naukri, Indeed, IIMJobs, etc.)
- Continual feedback sessions pre and post interviews
Admission details
The course admission for the data science with Python course training is done online through the Analytixlab website
Step 1: Go to the data science with Python course page on the official website using the following link, https://www.analytixlabs.co.in/data-science-using-python
Step 2: Choose among the preferred versions of the course study.
Step 3: Click on the respective ‘enroll now’ link present below them.
Step 4: Fill in the required information for the course registration.
Filling the form
The candidates who wish to apply for the data science with Python course classes will have to enter their name, phone number, email address, course name, and phone number for enrolling in the course.
How it helps
The data science with Python course certification qualifies the students with technical skills such as Data Visualization, techniques for Data Mining & Analysis, the process of Data Blending & Manipulation, Statistical Analysis & Modelling in data science, Predictive Modelling, Python programming for Data Analysis.
FAQs
Which online provider platform offers the data science with Python course?
Analytixlab has developed the online course on ‘data science with Python’ and provides for the candidates interested in data science.
What is the dual certification program?
Analytixlab offers a dual certification in partnership with IBM to the candidates who finish the submission of projects and assignments along with clearing the MCQ tests within six months.
Is there a facility provided for loan applications for the students?
Yes, The candidates can apply for a student loan.
Can I pay the data science with Python course fee in installments?
Yes, you can pay the course fee in three installments.
How many projects and classes do the data science with Python course training include?
The course curriculum consists of ten projects and assignments along with twenty classes.