Skip to content

Data Science with Python - QLS Endorsed
Imperial Academy

QLS Level 1 Course | 10 FREE CPD Courses & PDF Certificates | CPD Accredited | Installment Payment | Tutor Support

Summary

Price
£100 inc VAT
Or £33.33/mo. for 3 months...
Study method
Online
Course format
Video
Duration
224 hours · Self-paced
Access to content
Lifetime access
Qualification
No formal qualification
CPD
150 CPD hours / points
Achievement
Certificates
  • Certificate of completion - Free
Assessment details
  • Multiple Choice Questions (MCQ)/Assignment (included in price) (included in price)
Additional info
  • Tutor is available to students

Overview

The Python Data Science at QLS Level 1 Bundle offers the perfect gateway into one of the world’s most rapidly growing fields. Data science is driving decision-making across industries, and with the global data analytics market projected to reach £250 billion by 2030 and Python ranking as the most in-demand programming language, now is the ideal time to start building your expertise.

This course is tailored for beginners, aspiring data analysts, business professionals, and anyone looking to future-proof their career with analytical and technical skills. Data scientists in the UK earn between £40,000 and £85,000 per year, making it one of the most rewarding career paths in technology and business today.

Through this comprehensive bundle, learners will gain proficiency in Python programming, SQL, Tableau, and Google Data Studio, while mastering essential data science, analytics, and problem-solving techniques to interpret and visualise complex data confidently.

Enrol now to begin your journey into data science and stand out in the evolving world of analytics and AI.

Learning Outcomes
After completing this course, you will be able to:

  • Write and execute Python code for data analysis and automation.
  • Manage, clean, and transform datasets using Python libraries.
  • Apply SQL commands to query and organise relational databases.
  • Visualise and interpret data using Tableau and Google Data Studio.
  • Understand key principles of business intelligence and data mining.
  • Apply spatial analysis methods using Python for GIS applications.
  • Build and evaluate data-driven solutions for business problems.
  • Strengthen creativity and logical reasoning for analytical challenges.
  • Manage projects efficiently through improved time management skills.
  • Prepare for entry-level roles in data science and analytics confidently.

QLS Endorsed Course:
Course 01: Python Data Science at QLS Level 1

FREE 10 CPD Courses:

  • Course 02: Python Programming: Beginner To Expert
  • Course 03: Higher Order Functions in Python
  • Course 04: Python for Spatial Analysis in ArcGIS
  • Course 05: Easy to Advanced Data Structures
  • Course 06: Google Data Studio
  • Course 07: Diploma in Data Analytics with Tableau
  • Course 08: Business Intelligence and Data Mining
  • Course 09: Mastering SQL Programming
  • Course 10: Creativity and Problem-Solving Skills
  • Course 11: Time Management

Achievement

Certificates

Certificate of completion

Digital certificate - Included

Assessment details

Multiple Choice Questions (MCQ)/Assignment (included in price)

Included in course price

CPD

150 CPD hours / points
Accredited by CPD Quality Standards

Course media

Description

This bundle provides a solid introduction to data science, programming, and analytics. You’ll begin with Python fundamentals and progress to advanced applications, including data manipulation, structures, and spatial analysis. Alongside, you’ll explore SQL for data management, Tableau and Google Data Studio for visualisation, and business intelligence concepts for better decision-making.

You’ll also strengthen essential soft skills such as creativity, critical thinking, and time management, ensuring a balanced professional skill set. By the end of the programme, you’ll be ready to analyse, visualise, and present data insights effectively using industry-standard tools.

Course Curriculum:

Python Data Science at QLS Level 1

  • Module 01: Introduction To Python Data Science
  • Module 02: Environment Setup
  • Module 03: Numpy Package For Calculations
  • Module 04: Panda Package For Data Cleaning
  • Module 05: Matplotlib Data Visualization Part 1
  • Module 06: Matplotlib Data Visualization Part 2

Who is this course for?

  • Beginners aspiring to start a career in data science or analytics.
  • Professionals seeking to upgrade their technical and analytical skills.
  • Entrepreneurs aiming to make data-driven business decisions.
  • Students looking to explore Python programming and data tools.
  • Anyone passionate about using data to solve modern challenges.

Requirements

Anyone can enrol in this Data Science with Python bundle course.

Career path

  • Data Analyst (£35,000–£55,000)
  • Junior Data Scientist (£40,000–£65,000)
  • Business Intelligence Analyst (£38,000–£60,000)
  • Python Developer (£35,000–£70,000)
  • Data Visualisation Specialist (£32,000–£55,000)
  • SQL Data Engineer (£40,000–£65,000)
  • Tableau Developer (£38,000–£60,000)
  • Reporting Analyst (£30,000–£50,000)

Questions and answers

Currently there are no Q&As for this course. Be the first to ask a question.

Reviews

Currently there are no reviews for this course. Be the first to leave a review.

FAQs

Interest free credit agreements provided by Zopa Bank Limited trading as DivideBuy are not regulated by the Financial Conduct Authority and do not fall under the jurisdiction of the Financial Ombudsman Service. Zopa Bank Limited trading as DivideBuy is authorised by the Prudential Regulation Authority and regulated by the Financial Conduct Authority and the Prudential Regulation Authority, and entered on the Financial Services Register (800542). Zopa Bank Limited (10627575) is incorporated in England & Wales and has its registered office at: 1st Floor, Cottons Centre, Tooley Street, London, SE1 2QG. VAT Number 281765280. DivideBuy's trading address is First Floor, Brunswick Court, Brunswick Street, Newcastle-under-Lyme, ST5 1HH. © Zopa Bank Limited 2026. All rights reserved.