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⚡ Source: ReedRéf: 56994336

Trainee AI Engineer

ITOL Recruit·Peterborough, East of England·Publié il y a 1 mois
💰 30-45k CHF/an
Adapter mon CV à cette offre — Gratuit

Job description

Texte original importé depuis Reed

Trainee AI Engineer – No Experience Needed

Future-proof your career in Artificial Intelligence – starting today.

Looking for a career change? Currently employed but want something better? Or maybe you're between jobs and ready for a fresh start? ITOL Recruit's AI Traineeship is designed to get you into one of the fastest-growing industries with zero experience required.

Train online at your own pace and land your first AI Engineer role in 1-3 months.

Please note this is a training course and fees apply

Job guaranteed - complete the programme and get a job or get your money back.

Our candidates earn £28,000-£45,000.


Why AI?

AI is reshaping every industry you can think of. Healthcare, finance, retail, and manufacturing – they’re all scrambling for skilled professionals.

The demand far outstrips supply, which means excellent salaries, flexible working arrangements, and genuine job security.


How It Works

Step 1 – AI Engineering Fundamentals

Start with the basics of AI, including neural networks and large language models, to build a solid foundation in AI engineering.

Step 2 – Data Fundamentals

Understand the data workflow, from collection to cleaning, and learn how to prepare data for AI applications.

Step 3 – Notebooks & IDEs

Get hands-on with industry-standard tools like Jupyter Notebooks and VS Code to develop AI systems.

Step 4 – Python Programming

Master Python, covering everything from the basics to object-oriented programming (OOP).

Step 5 – Python Streamlit Project

Apply your Python skills by building a car price prediction app using Python and Streamlit.

Step 6 – Python for Data

Learn essential Python libraries like NumPy, Pandas, and Matplotlib for data manipulation and visualisation.

Step 7 – AI Sentiment Analysis Project

Work with Hugging Face to build a sentiment analysis classifier using real-world AI techniques.

Step 8 – AI Prompt Engineering

Master prompt engineering, learning how to craft effective prompts for controlling AI outputs.

Step 9 – Retrieval-Augmented Generation (RAG)

Learn how to integrate external knowledge into AI systems using RAG techniques and vector databases.

Step 10 – AI Specialised Customer Service Chatbot Project

Combine prompt engineering and RAG to build an AI-powered customer service chatbot, delivering intelligent responses using vector databases and knowledge bases.

Step 11 – Machine Learning Fundamentals

Understand machine learning principles and algorithms, and how to train and test models using scikit-learn.

Step 12 – Machine Learning Project

Put your machine learning knowledge into practice with a hands-on project.

Step 13 – AI & Data Ethics

Study the ethical considerations in AI, including issues of bias, fairness, and data privacy.

Step 14 – Oral Exam

Complete a virtual oral exam to assess your understanding and ability to apply your learning.

Step 15 – AWS Certified Cloud Practitioner

Finish with the AWS Certified Cloud Practitioner course and exam to gain essential cloud computing knowledge.


What You Get

· 100% online, self-paced training

· Microsoft AI-900 certification included

· 1-to-1 tutor and recruitment support

· Real-world project experience

· Job guarantee – get a job or your money back

· Starting salary of £28,000–£45,000


We Get You Hired

We're not new to this. ITOL Recruit has 15+ years of experience and has placed over 5,000 people into new roles.

Our job programmes include certified tutors, UK-accredited qualifications, and one-on-one support from a recruitment adviser focused on placing you.

We don't believe in empty promises. Complete our programme, follow the process, and if you don't land a job, you get your money back.

"Five months from complete beginner to AI engineer. Best decision I ever made." – Jamie W., now working as a Junior AI Engineer in London


Ready to Start?

If you’re motivated, curious, and excited about technology, we’ll help you turn that into a career you can be proud of.

Apply now, and one of our expert Career Advisors will be in touch within 4 working hours to guide you through your next steps.


IA SpeedCV

Key skills extracted

Our AI analysed the job to identify the required skills.

Compétences indispensables
Python programmingJupyter NotebooksVS CodeAWS Certified Cloud Practitioner (course completion)scikit-learnHugging Face
Atouts supplémentaires
Streamlit application developmentVector database integrationData visualisation with MatplotlibPrompt engineering
Soft skills
Self-motivationAutonomyAdaptabilityProblem solvingAttention to detail
IA SpeedCV

Our tips for applying

5 recommandations générées par notre IA pour maximiser vos chances.

1

⭐ Lead your CV with a Personal Statement naming 'AI Engineer' and citing Python, RAG, and AWS Cloud Practitioner — the three pillars explicitly assessed in the programme's oral exam and certification.

2

📊 Quantify your project work: e.g. 'Built a RAG-powered customer service chatbot reducing simulated query resolution time by 40% in a 10-step training project'.

3

🌐 List each completed project as a separate CV entry under a 'Projects' section — the car price prediction app, sentiment analysis classifier, and customer service chatbot are concrete deliverables employers can evaluate.

4

🎯 Highlight your AWS Certified Cloud Practitioner certification prominently in a dedicated 'Certifications' section, as it is the programme's final and most externally recognised credential.

5

🤝 Reference AI & Data Ethics knowledge explicitly — bias, fairness, and data privacy awareness is increasingly required by employers in regulated sectors like healthcare and finance, both named in this advert.

NEW
IA SpeedCV

Bullets CV suggérés

3 bullets générés par notre IA pour cette offre, alignés sur ses mots-clés ATS.

Comment adapter votre CV

Ajoutez ces 3 bullets sous votre expérience la plus récente :

  • Built a RAG-powered AI customer service chatbot integrating vector databases and Hugging Face models, achieving accurate query resolution across a 500-entry knowledge base during a 15-step training programme.
  • Developed a Python Streamlit car price prediction application using Pandas and NumPy for data preparation, reducing model input errors by 30% through structured data cleaning pipelines.
  • Completed AWS Certified Cloud Practitioner certification alongside 12 AI and machine learning modules, demonstrating end-to-end capability from neural network fundamentals to cloud deployment within 3 months.

Copier est gratuit — adapter nécessite un upload CV (30s).

NEW
Lettre IA

Votre lettre de motivation est prête

Nous avons rédigé une lettre pour ITOL Recruit. Découvrez l'ouverture, puis débloquez la version complète personnalisée.

Aperçu — adapté à ITOL Recruit

Dear Hiring Manager,

ITOL Recruit's AI Traineeship stands out for its structured, project-led approach — covering Python, Retrieval-Augmented Generation, and AWS Cloud Practitioner certification within a single programme. That combination of practical deliverables and an industry-recognised credential is precisely what drew me to apply for the Trainee AI Engineer role.

My background in self-directed learning and problem solving has prepared me well for the demands of this traineeship. Having worked through technical challenges independently before, I am confident in my ability to progress through the 15-step curriculum, build the required projects — including the RAG-powered customer service chatbot and the scikit-learn machine learning project — and sit the AWS certification exam within the 1-3 month timeframe.

Obtenir ma lettre personnalisée — gratuit

Inscription gratuite, sans carte. L'export PDF/Word nécessite l'essai 1,99 € (14 jours).

MEMBERS ONLY
IA SpeedCV

Likely interview questions

10 questions générées à partir de cette offre.

Technical

  • Explain the difference between a large language model and a traditional machine learning model, and give an example of when you would use each.
  • Walk me through how Retrieval-Augmented Generation works and describe a use case where it outperforms a standard LLM.
  • How would you use scikit-learn to train and evaluate a classification model? What metrics would you use to assess performance?
  • Describe the data preparation steps you would take before feeding a dataset into an AI model, referencing tools like Pandas and NumPy.
  • What is the AWS Certified Cloud Practitioner certification and how does cloud infrastructure support AI application deployment?

Behavioural

  • Tell me about a time you had to learn a completely new technical skill independently — how did you structure your learning?
  • Describe a situation where you identified an ethical concern in a process or dataset. What did you do?
  • Give an example of a project you completed from start to finish with minimal guidance. What challenges did you face?
  • Tell me about a time you had to explain a complex technical concept to a non-technical audience.
  • Describe a moment when you received critical feedback on your work. How did you respond and what changed?
IA SpeedCVNEW

Exemples de réponses STAR

Réponses modèles avec la méthode Situation-Tâche-Action-Résultat. À adapter à votre vécu.

1Question

Tell me about a time you had to learn a completely new technical skill independently — how did you structure your learning?

Situation: In my previous role as an administrator, I needed to automate monthly reporting but had no coding background. Task: I had to learn Excel VBA within 4 weeks to meet a board reporting deadline. Action: I broke the skill into daily 45-minute sessions using free online tutorials, built a small test macro first, then scaled it to the full 12-sheet report. I tracked my progress in a simple checklist and asked a colleague to review my logic after week two. Result: I delivered the automated report on time, cutting the manual process from 6 hours to 25 minutes, and the approach was adopted by two other team members the following quarter.
2Question

Describe a situation where you identified an ethical concern in a process or dataset. What did you do?

Situation: While supporting a customer feedback analysis project at a retail company, I noticed the dataset used to score customer satisfaction excluded responses from non-English speakers entirely. Task: I was responsible for preparing the summary report for senior management. Action: I flagged the gap to my line manager before the report was finalised, quantified the missing segment at roughly 18% of total respondents, and proposed a simple reweighting method. I also recommended that future surveys include multilingual options. Result: The report was revised to include a data limitation caveat, and the survey process was updated for the next cycle, improving representational accuracy across 4 language groups.

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