At a Glance
- Tasks: Work on exciting data projects, applying machine learning and AI techniques.
- Company: Join QinetiQ, a diverse and inclusive tech company.
- Benefits: Enjoy competitive salary, flexible working, and extensive learning opportunities.
- Other info: Collaborative environment with excellent career growth and mentoring.
- Why this job: Gain hands-on experience in data science and make a real impact.
- Qualifications: GCSE Maths and English, programming experience, and a passion for data.
The predicted salary is between 27150 - 27150 £ per year.
Location: Malvern
Type: Permanent, Fulltime
Salary: £27,150
At QinetiQ we are creating a workplace that is inclusive; where our differences are not only embraced but make us stronger. A place where we can connect with each other and benefit from the experiences and thinking from people with varied backgrounds, and at different stages in their careers.
About the team
Data Science & Engineering:
Our role is to ensure our customers gain the maximum advantage from their data. We are involved at all stages of the data lifecycle from the initial gathering & processing stage, through the analysis phase, leading to actionable outputs & advice.
The Data Science and Engineering teams within Software Engineering, Communication Networks & Data Science (SECNDS) discipline consist of a mix of data scientists (exploring data sets and algorithms) and data engineers (building the infrastructure to capture and process the data). The team's skills however are varied and cover a wide range of disciplines. Our daily work involves applying both conventional and novel machine learning techniques to customer problems as appropriate to advise on and or demonstrate the opportunities created through exploiting their data.
What will I be doing?
The team works across all data types, everything from numerical data to natural language processing and signals analysis through to imagery interpretation. Where necessary, we also collect or simulate data using mathematical models.
A typical day will see our apprentice working as part of small project teams. You will attend project meetings, be involved in data preparation, and applying the relevant Machine Learning or Artificial Intelligence techniques. Over time you will be expected to code up solutions to support this work, and to integrate with the team's coding best practices. You may occasionally be involved in stakeholder engagements or presentations, and you will often help with the report writing process. Your days can have a mixture of on site and home working, depending on the specific project's data requirements.
We frequently collaborate with colleagues and subject experts across the business to gain cross-domain insight to support our work.
In this role you will gain practical experience in the full end to end data pipeline from data collection, data wrangling and modelling through to generating conclusions and results. You will gain knowledge of statistical techniques such as supervised and unsupervised machine learning algorithms, develop programming skills in Python and for the Cloud, as well as general data analysis techniques. You will also gain soft skills such as planning, technical report writing, and presenting.
Apprenticeship details:
- Title: Level 6 Data Scientist Apprenticeship
- Qualification: BSc (Hons) Data Science
- Course provider: Cranfield
- Provider Link: https://www.cranfield.ac.uk/mku/mku-data-scientist
Academic requirements:
- Grade 5 in GCSE Mathematics or equivalent
- Grade 4 in GCSE English Language or equivalent (prior to admission) with GCSE at A-Level to include Maths. We will not accept A-Levels Citizenship Skills, General Studies, and Critical Thinking.
- Or Level 4 Data Analyst apprenticeship at Merit or Distinction.
Additional requirements:
- You must be able to travel to the training provider for the academic elements of the Level 6 Apprenticeship. Expenses for travel will be reimbursed in line with our expenses policy.
- Some understanding of statistics (statistical analysis) and/or mathematical modelling.
- Some experience of programming in at least one coding language e.g. Python, R, C++.
- Some familiarity or experience with basic coding best practices e.g. version control and code quality.
Beneficial:
- Experience with any cloud computing platform.
- Machine learning or data analysis project experience (through academia or personal projects).
- Evidence of soft skills, including examples of working in a team, technical communication (written or oral).
Benefits:
- On demand learning, access to courses, modules, and lectures via multiple digital learning platforms
- Coaching and Mentoring
- 25 days annual holiday excluding bank holiday
- Matched contribution pension scheme, with life assurance
- Flexible Benefits package
- Employee discount portal
- Employee Assistance Programme
- Employee-led networks
Data Scientist Apprentice in Great Malvern employer: QinetiQ
Contact Detail:
QinetiQ Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Data Scientist Apprentice in Great Malvern
✨Tip Number 1
Network like a pro! Reach out to current or former employees at QinetiQ on LinkedIn. Ask them about their experiences and any tips they might have for landing the Data Scientist Apprenticeship. Personal connections can make a huge difference!
✨Tip Number 2
Prepare for interviews by brushing up on your technical skills. Make sure you can talk confidently about machine learning techniques and your programming experience in Python. We want to see your passion for data science shine through!
✨Tip Number 3
Showcase your projects! If you've worked on any data analysis or machine learning projects, be ready to discuss them in detail. We love seeing practical applications of your skills, so bring your A-game to the conversation.
✨Tip Number 4
Don't forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, it shows you're serious about joining our team at QinetiQ. Let's get you started on this exciting journey!
We think you need these skills to ace Data Scientist Apprentice in Great Malvern
Some tips for your application 🫡
Tailor Your CV: Make sure your CV is tailored to the Data Scientist Apprentice role. Highlight any relevant experience, skills, and projects that align with the job description. We want to see how you can contribute to our team!
Craft a Compelling Cover Letter: Your cover letter is your chance to shine! Use it to explain why you're passionate about data science and how your background makes you a great fit for us. Be genuine and let your personality come through.
Showcase Your Skills: Don’t forget to mention your programming skills and any experience with machine learning or data analysis projects. We love seeing examples of your work, so if you have a portfolio or GitHub, include that too!
Apply Through Our Website: We encourage you to apply directly through our website. It’s the best way to ensure your application gets to us quickly and efficiently. Plus, you’ll find all the details you need about the role there!
How to prepare for a job interview at QinetiQ
✨Know Your Data
Make sure you brush up on your understanding of data science concepts, especially around machine learning and statistical techniques. Be ready to discuss any relevant projects you've worked on, whether in academia or personally, as this will show your practical experience.
✨Show Off Your Coding Skills
Since programming is a key part of the role, be prepared to talk about your experience with coding languages like Python or R. You might even want to practice some coding challenges beforehand to demonstrate your problem-solving skills during the interview.
✨Communicate Clearly
As you'll be involved in stakeholder engagements and report writing, it's crucial to showcase your communication skills. Practice explaining complex data concepts in simple terms, and be ready to provide examples of how you've effectively communicated in team settings.
✨Ask Insightful Questions
Interviews are a two-way street, so come prepared with questions that show your interest in the company and the role. Ask about the team's current projects, the tools they use, or how they approach collaboration across different disciplines. This will demonstrate your enthusiasm and eagerness to learn.