Learnstone logo
Scientific Computing and Data Analysis (Astrophysics) banner
University of Durham logo

Scientific Computing and Data Analysis (Astrophysics)

Mathematical Sciences

Taught

MSc

  • Overview
  • Application Timeline
  • Tuition
  • Requirements
  • Modules
  • About
  • Subject Area Information
  • Career
  • Similar courses

Overview

The MISCADA program equips students with computational skills in computer science, mathematics, and specialized applications in fields like Astrophysics. It prepares graduates for research and industry careers, focusing on data analysis, machine learning, and high-performance computing. The Astrophysics specialization addresses key research questions in fundamental science.

Application Timeline

  1. September 1, 2025
    Start date
  2. April 6, 2026
    Today

Tuition

Year 1
Student categories Study
Full-time Part-time
England£14,500N/A
Northern Ireland£14,500N/A
Scotland£14,500N/A
Wales£14,500N/A
Channel Islands£14,500N/A
EU£34,000N/A
International£34,000N/A

Requirements

Entry Requirements:
Language Requirements

Language requirements information is currently unavailable.

Modules

  • Advanced Statistical and Machine Learning: Foundations and Unsupervised Learning

    Optional
  • Advanced Statistics and Machine Learning: Regression and Classification

    Optional
  • Data Acquisition and Image Processing

    Optional

About

Overview

The MISCADA program is designed to equip students with essential computational skills necessary for advancements in science and engineering. It focuses on three main strands:

  • Computer Science: Algorithms, data structures, implementation techniques, and computer tool usage.
  • Mathematics: Data analysis and simulation of mathematical models.
  • Specialization: Application of techniques in areas such as Astrophysics, Computer Vision, Robotics, Earth Sciences, and Financial Technology.

Specialization in Astrophysics

The Astrophysics specialization aims to prepare students to tackle significant research questions in fundamental science,...

Subject Area Information

Computational mathematics is an interdisciplinary field that combines mathematics, computer science, and numerical analysis to solve complex problems through computational methods. This discipline is essential for students who wish to apply mathematical theories and techniques to real-world problems using computational tools.

Typical Course Structure
  • 1. Introduction to Computational Mathematics

  • 2. Numerical Linear Algebra

  • 3. Numerical Methods for Differential Equations

  • 4. Optimization Techniques

  • 5. Scientific Computing

  • 6. Computational Geometry

Typical Skills Acquired
  • Algorithm Development
  • Programming Proficiency
  • Numerical Analysis
  • Problem-Solving
  • Software Utilization

Career

Computational mathematics equips students with the skills and knowledge to tackle complex problems using mathematical and computational techniques. The interdisciplinary nature of the field opens up a wide range of career opportunities in academia, industry, and research.

Potential Professions
  • Data Scientist

    Utilizing computational techniques to analyze and interpret complex data.

  • Software Developer

    Developing software solutions that require advanced mathematical algorithms.

  • Quantitative Analyst

    Applying mathematical models to financial markets.

  • Research Scientist

    Conducting research in scientific computing and numerical analysis.

  • Operations Research Analyst

    Using optimization techniques to improve organizational efficiency.

  • Computational Engineer

    Solving engineering problems using computational methods.

Similar courses

Contact

Loading map...
Palatine Centre, Stockton Road, Durham, DH1 3LE
Get expert guidance

Enhance your academic journey with the help from our experts.

Contact

Loading map...
Palatine Centre, Stockton Road, Durham, DH1 3LE
Get expert guidance

Enhance your academic journey with the help from our experts.

© 2022-2026 Learnstone