🆕 Coupons inserted today: 309

📆 Coupons Expired today and Deleted: 502

📈 Total Coupons available: 7056

📦 Total removed coupons from our Site until now : 502

Free Engineering ★ 0.0 6 students 1.5 hours

Numerical Methods with Python for Engineering

Learn Numerical Methods with Python: Roots, Linear Algebra, Integration, and Differential Equations

Description


Numerical methods form the backbone of modern engineering and scientific problem-solving, enabling us to tackle problems that cannot be solved analytically. This course, Numerical Methods with Python for Engineering, is designed to give learners a solid foundation in both the theory and practical application of numerical techniques using Python and its scientific libraries.

The course begins with an introduction to the scientific Python ecosystem, including Jupyter, NumPy, SciPy, and Matplotlib. Even if learners have prior programming experience, this module ensures they are comfortable working with Python’s core tools for scientific computing.

Next, students explore the fundamental concepts of approximations and errors, gaining an understanding of accuracy, precision, and error propagation in numerical computations. From there, the course progresses to numerical differentiation and integration, where students learn finite difference methods, trapezoidal and Simpson’s rules, adaptive quadrature, and SciPy’s built-in integration routines.

The course then covers systems of linear equations, introducing both direct methods (Gaussian elimination, LU decomposition) and iterative methods (Jacobi, Gauss-Seidel). Students also learn root-finding techniques such as bisection, Newton-Raphson, and fixed-point iteration, with practical implementation in Python.

Further modules include curve fitting and interpolation using regression and splines, followed by solving ordinary differential equations (ODEs) with Euler and Runge-Kutta methods, as well as SciPy’s advanced solvers for stiff and non-stiff systems.

By the end of the course, learners will be able to formulate, implement, and analyze numerical solutions to engineering problems using Python, bridging the gap between mathematical theory and computational practice.


Total Students 6
Duration 1.5 hours
Language English (US)
Number of lectures 5
Number of quizzes 0
Total Reviews 0
Global Rating 0
Instructor Name Dr.A. Gnanaprakasam

Course Insights (for Students)

Actionable, non-generic pointers before you enroll

👍

Student Satisfaction

78% positive recent sentiment

📈

Momentum

Steady interest

⏱️

Time & Value

  • Est. time: 1.5 hours
  • Practical value: 5/10

🧭

Roadmap Fit

  • Beginner → → Advanced

Key Takeaways for Learners

  • Hands-on practice
  • Real-world examples
  • Project-based learning

Course Review Summary

Signals distilled from the latest Udemy reviews

What learners praise

Clear explanations and helpful examples.

Watch-outs

No consistent issues reported.

🎯

Difficulty

👥

Best suited for

Reminder – Rate this 100% off Udemy Course on Udemy that you got for FREEE!!

Do not forget to Rate the Course on Udemy!!