What you'll get
- 125+ Hours
- 39 Courses
- Mock Tests
- Course Completion Certificates
- Self-paced Courses
- Technical Support
- Case Studies
- Download Curriculum
Synopsis
- In-depth program on Python-driven Data Science and Artificial Intelligence.
- Covers Python-based Data Science, AI, Video Analytics with OpenCV, Pandas, Machine Learning, and Statistics for Data Science.
- Includes hands-on projects for practical experience.
- One-year access to all course content.
- Suitable for anyone committed to a career in data and analytics with basic Python and Data Science knowledge.
- Certificate of Completion provided for each course.
- Verifiable certificates with unique links, ideal for resumes and LinkedIn profiles.
- Delivered as a self-paced video course for flexible learning.
Content
| Courses | No. of Hours | Certificates | Details |
|---|---|---|---|
| Machine Learning with Python Course | 5h 17m | ✔ | View Curriculum |
| Project on Machine Learning - Covid19 Mask Detector | 2h 05m | ✔ | View Curriculum |
| Machine Learning Project - Auto Image Captioning for Social Media | 2h 31m | ✔ | View Curriculum |
| Machine Learning with Scikit Learn | 8h 37m | ✔ | View Curriculum |
| Predictive Modeling with Python | 8h 26m | ✔ | View Curriculum |
| Machine Learning using Python | 3h 26m | ✔ | View Curriculum |
| Data Science with Python Training 2022 | 11h 18m | ✔ | View Curriculum |
| Matplotlib Basic | 4h 2m | ✔ | View Curriculum |
| Matplotlib Intermediate | 2h 53m | ✔ | View Curriculum |
| Matplotlib Advance | 6h 37m | ✔ | View Curriculum |
| Pandas with Python Tutorial | 5h 42m | ✔ | View Curriculum |
| Numpy and Pandas | 5h 9m | ✔ | View Curriculum |
| Pandas Project | 3h 14m | ✔ | View Curriculum |
| Sentiment Analysis with Python | 57m | ✔ | View Curriculum |
| Courses | No. of Hours | Certificates | Details |
|---|---|---|---|
| Seaborn | 2h 28m | ✔ | View Curriculum |
| Seaborn Intermediate | 1h 18m | ✔ | View Curriculum |
| Seaborn Advance | 1h 56m | ✔ | View Curriculum |
| Pyspark Beginner | 2h 16m | ✔ | View Curriculum |
| Pyspark Intermediate | 2h 02m | ✔ | View Curriculum |
| Pyspark Advance | 1h 18m | ✔ | View Curriculum |
| Courses | No. of Hours | Certificates | Details |
|---|---|---|---|
| Data Science with Python | 4h 14m | ✔ | View Curriculum |
| Artificial Intelligence with Python - Beginner Level | 2h 51m | ✔ | View Curriculum |
| Artificial Intelligence with Python - Intermediate Level | 4h 34m | ✔ | View Curriculum |
| Artificial Intelligence with Python | 6h 15m | ✔ | View Curriculum |
| OpenCV for Beginners | 2h 28m | ✔ | View Curriculum |
| Video Analytics Using Opencv and Python Shells | 2h 13m | ✔ | View Curriculum |
| Statistics for Data Science using Python | 3h 23m | ✔ | View Curriculum |
| Tensorflow With Python | 1h 46m | ✔ | View Curriculum |
| Applied Data Analytics Using Python | 5h 7m | ✔ | View Curriculum |
| Random Forest Algorithm in Machine Learning | 1h 27m | ✔ | View Curriculum |
| Courses | No. of Hours | Certificates | Details |
|---|---|---|---|
| Python for Finance | 1h 7m | ✔ | View Curriculum |
| Financial Analytics with Python | 1h 6m | ✔ | View Curriculum |
| Project on Linear Regression in Python | 2h 28m | ✔ | View Curriculum |
| House Price Prediction using Linear Regression | 3h 2m | ✔ | View Curriculum |
| Logistic Regression-Predicting the Survival of Passenger in Titanic | 2h 6m | ✔ | View Curriculum |
| Credit-Default using Logistic Regression | 3h 3m | ✔ | View Curriculum |
| Forecasting the Sales of the Store Using Time Series Analysis | 2h 13m | ✔ | View Curriculum |
| Data Science with Python Project-Predict Diabetes on Diagnostic Measures | 1h 02m | ✔ | View Curriculum |
| Develop Movie Recommendation Engine using Machine Learning | 51m | ✔ | View Curriculum |
| Courses | No. of Hours | Certificates | Details |
|---|---|---|---|
| No courses found in this category. | |||
Description
This course offers an extensive pathway to mastering machine learning using Python, equipping learners with one of the most in-demand skills in today's technology landscape. Structured across multiple sections, the program guides participants from foundational concepts to advanced techniques, ensuring hands-on proficiency in Python-driven machine learning applications.
The first section builds a solid foundation in machine learning fundamentals. Learners explore core concepts such as supervised and unsupervised learning, data preprocessing, model evaluation, and deep learning applications, such as image captioning. Each module is designed to progressively enhance understanding, combining theoretical knowledge with practical Python exercises.
The second section broadens Python expertise by focusing on data visualization and advanced libraries. Participants gain the ability to interpret data with Matplotlib and Seaborn, and to perform sophisticated data manipulation and analysis with Pandas and NumPy. These skills are critical for uncovering insights and making data-driven decisions.
In the third section, learners delve into artificial intelligence and advanced Python applications. Topics include computer vision with OpenCV, deep learning with TensorFlow, and advanced statistical analysis, preparing participants to tackle complex AI challenges with confidence.
The fourth section emphasizes real-world application, guiding learners through projects such as predictive modeling, regression analysis, and recommendation systems. These hands-on exercises reinforce theoretical concepts, enhance problem-solving skills, and provide practical experience in applying machine learning across various domains.
The final section focuses on skill assessment through mock tests and quizzes, enabling learners to evaluate their understanding of machine learning, Python programming, and data analysis. This ensures readiness for certification or real-world implementation.
By the end of this course, participants will possess the knowledge, practical skills, and confidence required to successfully address machine learning challenges and contribute effectively in professional settings.
Sample Certificate

Requirements
- Learners should have a basic understanding of Python, including syntax, data structures like lists, tuples, and dictionaries, control flow with loops and conditionals, functions, and modules; beginners may consider an introductory Python course or online tutorials.
- A solid grasp of mathematics, including algebra, calculus, and statistics, is helpful, with concepts like linear algebra, probability, and derivatives often applied in machine learning and data analysis.
- Familiarity with basic statistical measures such as mean, median, mode, variance, and standard deviation will support understanding of algorithms and evaluation of models.
- Prior experience with data manipulation, visualization, and libraries like Pandas can enhance learning, though these topics are covered in the course for beginners.
- Basic knowledge of machine learning concepts, including supervised and unsupervised learning and model evaluation, is advantageous but not mandatory.
- A curious mindset and persistence are essential, as machine learning and data science are constantly evolving fields that require exploration and consistent effort.
Target Audience
- Individuals looking to start a career in data science with hands-on Python and AI skills.
- Software developers aiming to add data analysis and machine learning to their expertise.
- Students and academics seeking deeper knowledge in data science and machine learning.
- Professionals want to apply data-driven insights for better decision-making.
- Career changers are building a strong foundation in Python and machine learning.
- Entrepreneurs and business owners are leveraging AI and data for business growth.