Be at the heart of actionFly remote-controlled drones into enemy territory to gather vital information.

Apply Now

Amazon AI Jobs: Pioneering the Next Wave of Intelligent Solutions

11 min read

Artificial intelligence (AI) has fundamentally changed how businesses operate and how we interact with technology. From refining search engines and optimising logistics to enhancing customer experiences through voice assistants, AI pervades nearly every aspect of modern digital life. Few companies have leveraged AI at a global scale as extensively as Amazon—a tech giant that started with online retail and grew into a world leader in cloud computing, e-commerce, digital entertainment, and more.

For those pursuing AI careers in the UK, Amazon stands out as a prime choice (no pun intended). With multiple research centres, offices, and data hubs across the country, Amazon offers a broad landscape for AI roles—encompassing natural language processing (NLP), machine learning (ML) at scale, computer vision, robotics, recommendation systems, and beyond. Whether you’re a seasoned data scientist, a machine learning engineer, or a student newly venturing into AI, Amazon’s multi-faceted environment provides countless ways to help shape the future of technology.

This article delves into Amazon’s AI footprint, the variety of jobs available, expected salaries, the outlook for AI professionals, and tips on how to land a coveted position at one of the world’s leading innovators.

1. Why AI at Amazon is a Game-Changer

Before diving into the specifics of Amazon AI jobs, it’s worth understanding why Amazon is at the forefront of AI globally. The company’s evolution from an online bookseller into a tech conglomerate is intrinsically linked to how it harnesses vast amounts of data with advanced analytics and machine learning.

  1. Data-Driven CultureAmazon has access to massive datasets spanning its e-commerce platforms, Amazon Web Services (AWS), digital media (Prime Video, Music), and more. This rich data environment fuels complex AI models that power recommendations, personalisation, fraud detection, and dynamic pricing.

  2. AI-Powered Products and ServicesFrom Alexa, the voice assistant behind Echo devices, to AWS solutions like Amazon SageMaker and Rekognition, Amazon’s product lineup is a testament to the company’s deep commitment to AI. These AI-driven services enable not only Amazon’s own operations but also those of millions of businesses worldwide.

  3. Scalability and InnovationAWS underpins the cloud-based infrastructure required for large-scale AI. Amazon invests heavily in advanced hardware, GPU/TPU clusters, and distributed systems, allowing AI teams to train sophisticated models quickly and efficiently.

  4. Cutting-Edge ResearchAmazon invests in fundamental AI research, employing scientists who contribute to top-tier conferences like NeurIPS, ICML, and CVPR. It also has research collaborations with universities and institutes, pushing the boundaries of NLP, computer vision, and reinforcement learning.

  5. Customer-Obsessed MentalityEvery AI project at Amazon is anchored in a relentless focus on improving the end-user experience—whether that’s a recommendation that helps you discover your next favourite film or an Alexa upgrade making daily life more convenient.

2. Amazon’s AI Presence in the UK

Although Amazon operates globally, the UK is a significant hub for AI research, development, and deployment:

  • London: Home to Amazon’s UK headquarters and a growing cluster of AWS teams, data scientists, and ML engineers. London-based AI staff often collaborate with international teams on high-profile projects (e.g., personalisation algorithms, AWS AI services).

  • Cambridge: A major innovation centre for Alexa and related voice technologies. Researchers and engineers here work on NLP, speech recognition, and advanced ML to improve Alexa’s conversational abilities, accent recognition, and language comprehension.

  • Edinburgh: Historically linked to Amazon’s development of recommendation systems and analytics. Scotland’s talent pool in machine learning, combined with local universities, has made Edinburgh a key site for data science and AI roles at Amazon.

Given these well-established footprints, job seekers can find numerous AI opportunities in the UK—spanning voice technology (Alexa), AWS analytics platforms, e-commerce recommendations, robotics, and more.

3. Types of Amazon AI Jobs

Amazon’s multi-domain reach creates a wide spectrum of AI-related positions. Below is a snapshot of some main job categories and responsibilities:

3.1 Machine Learning Scientist / Research Scientist

  • Role: Develops and refines ML models tackling tasks like recommendation engines, demand forecasting, speech recognition, or computer vision.

  • Core Skills: Strong background in statistics, deep learning frameworks (PyTorch, TensorFlow), and mastery of languages like Python or Scala.

  • Example Projects: Improving Alexa’s intent detection, building advanced image classification solutions for Amazon Rekognition, or refining item-to-item collaborative filtering for personalised user experiences.

3.2 Data Scientist

  • Role: Interprets large datasets to extract insights, build predictive models, and guide strategic decisions. May also create dashboards and visualisations that transform raw data into business intelligence.

  • Core Skills: Proficiency in data manipulation (SQL, Spark), data analytics, model evaluation, and experience with tools like Jupyter Notebook or Amazon QuickSight.

  • Example Projects: Analysing user interactions to optimise site layout, personalising marketing campaigns, or detecting anomalies in transaction logs to preempt fraud.

3.3 Machine Learning Engineer

  • Role: Bridges the gap between data science and production software. Designs and deploys ML pipelines, ensuring reliability, scalability, and performance in real-world usage.

  • Core Skills: Strong coding background, microservices architecture knowledge, experience with containerisation (Docker) and continuous integration/continuous delivery (CI/CD).

  • Example Projects: Deploying a recommendation model at scale for Amazon’s retail site, building robust data pipelines for real-time analytics in AWS, or integrating computer vision solutions for automated warehouse item tracking.

3.4 Natural Language Processing (NLP) Engineer

  • Role: Specialises in text analysis, language modelling, and conversation design for Alexa and other NLP-driven applications.

  • Core Skills: Familiarity with language modelling, text preprocessing, large language models (BERT, GPT), and speech processing pipelines.

  • Example Projects: Improving Alexa’s speech-to-text accuracy, building sentiment analysis frameworks for customer reviews, or refining chatbots for internal Amazon processes.

3.5 Computer Vision Engineer

  • Role: Develops algorithms that enable machines to interpret and understand visual content—be it product images or real-time video from Amazon’s robotics systems.

  • Core Skills: Familiar with CNNs, object detection frameworks (YOLO, Faster R-CNN), and large-scale image datasets.

  • Example Projects: Enhancing Amazon Go’s cashierless store vision system, improving product tagging through image classification, or developing advanced face recognition APIs for AWS Rekognition.

3.6 Robotics and Autonomous Systems Specialist

  • Role: Focuses on the synergy between ML, sensors, and robotic hardware—streamlining Amazon’s warehouse automation, or building prototypes for last-mile delivery drones.

  • Core Skills: Knowledge of ROS (Robot Operating System), sensor fusion, path planning algorithms, and real-time data processing.

  • Example Projects: Designing warehouse robots that handle inventory, enabling drones with computer vision to navigate safely, or scaling up the entire robotics ecosystem for faster, more efficient order fulfilment.

3.7 AI Product Manager / Technical Program Manager

  • Role: Works at the intersection of technology and business, scoping AI projects, aligning cross-functional teams, and guiding products from ideation to launch.

  • Core Skills: Technical understanding of ML workflows, strong communication, stakeholder management, roadmapping, budgeting, and resource coordination.

  • Example Projects: Overseeing the development of a new Alexa feature, launching an AWS ML service, or orchestrating an enterprise-level data analytics solution for large clients.

4. Essential Skills for Amazon AI Roles

While each job position has unique requirements, certain core competencies and traits often stand out when applying for Amazon’s AI roles:

  1. Technical Fundamentals

    • Proficiency in Python, Java, C++, or other relevant programming languages.

    • Strong grasp of data structures, algorithms, and design patterns—particularly if you’re leaning towards engineering roles.

  2. AI/ML Expertise

    • Thorough understanding of machine learning algorithms (e.g., regression, classification, clustering), deep learning frameworks, and MLOps best practices.

    • Experience with big data technologies (Spark, Hadoop, AWS Glue) for large-scale analytics is often beneficial.

  3. Cloud and AWS Knowledge

    • Familiarity with AWS services (S3, EC2, Lambda, SageMaker, etc.) can be a major differentiator.

    • Understanding how to build, deploy, and monitor AI applications in the cloud often ranks high on job requirements.

  4. Problem-Solving and Business Acumen

    • Amazon prides itself on a “customer-obsessed” culture. Demonstrating how your AI solutions can positively impact user experience or business metrics is crucial.

    • Familiarity with product cycles and data-driven decision-making stands out.

  5. Communication and Collaboration

    • AI projects at Amazon typically involve cross-functional teams. Strong communication skills and the ability to translate complex technical details into accessible insights for non-technical stakeholders are vital.

  6. Continuous Learning

    • The pace of AI research is rapid. Showing that you actively keep up with the latest ML papers, attend conferences, or contribute to open-source projects can bolster your profile.

5. Potential Salaries for Amazon AI Jobs in the UK

Compensation at Amazon often includes a base salary, performance-based bonuses, and restricted stock units (RSUs). While exact salaries vary by role, location, and seniority, below is a ballpark guide for AI-focused roles in the UK:

  1. Entry-Level (Graduate / Junior)

    • Data Scientist / ML Engineer (Entry): £40,000–£60,000

    • NLP / Computer Vision Research Intern: £30,000–£40,000 (short-term, pro-rated)

  2. Mid-Level

    • ML Scientist / Data Scientist (2–5 years’ experience): £60,000–£80,000 base

    • AI Product Manager / Technical Program Manager: £70,000–£90,000 base

  3. Senior / Principal

    • Senior ML Scientist / Senior Data Scientist: £80,000–£110,000 base, plus stock awards

    • Principal Machine Learning Engineer / Solutions Architect: £100,000–£130,000 base, significant RSUs and bonuses

  4. Leadership / Executive

    • Director of AI / Head of Data Science: Typically £130,000+ base, with higher stock compensation and performance incentives

    • Senior Manager / Director: Could exceed £150,000 total compensation, depending on Amazon’s leadership level (L7, L8, etc.)

Remember that Amazon’s compensation packages often weigh heavily on stock units. Over time, RSUs can substantially increase overall earnings, particularly if the company’s share price performs well.

6. Future Outlook for AI at Amazon

With AI permeating almost every Amazon division, the demand for AI professionals shows no sign of slowing:

  1. Alexa Growth

    • Voice technology continues to expand beyond smart speakers into headphones, automobiles, and third-party devices. This fuels ongoing need for NLP engineers, conversation designers, and speech scientists.

  2. AWS AI Services

    • AWS remains a leader in cloud-based ML solutions (SageMaker, Polly, Lex), providing robust infrastructure for large-scale deployments. As more enterprises adopt cloud AI, Amazon invests in advanced features like automated hyperparameter tuning, deep learning containers, and MLOps pipelines.

  3. E-Commerce and Logistics

    • Amazon’s e-commerce and logistics operations rely on AI for inventory forecasting, route optimisation, robotics in fulfilment centres, and enhanced user recommendations. These areas foster continuous expansions in predictive modelling and real-time analytics roles.

  4. Healthcare and Pharma

    • Amazon’s increasing interest in healthcare, through services like Amazon Pharmacy and partnerships for medical data analytics, may boost roles in medical AI—covering disease forecasting, patient record analysis, or advanced telemedicine solutions.

  5. Sustainability and Climate Pledge

    • Amazon’s Climate Pledge commits the company to net-zero carbon by 2040. AI can optimise energy usage, supply chain efficiency, and carbon offset strategies. Expect more roles focusing on environmental data modelling and sustainable operations.

7. How to Apply for Amazon AI Jobs in the UK

If Amazon’s AI ecosystem intrigues you, consider these steps:

  1. Visit Amazon’s Official Careers Site

    • Filter by “Machine Learning” or “Data Science,” specifying locations (London, Cambridge, Edinburgh, etc.). You can also check category filters like “Alexa AI” or “AWS AI.”

  2. LinkedIn and Professional Networks

    • Follow Amazon’s LinkedIn page, set job alerts, and engage with employees. Amazon recruiters frequently source candidates via LinkedIn, especially for mid-level and senior positions.

  3. University Partnerships

    • If you’re an academic or student, keep an eye out for Amazon’s internships, hackathons, or university collaboration programs—particularly with institutions known for AI and ML.

  4. Recruitment Events

    • Amazon often hosts or participates in conferences, tech meetups, and job fairs. Attending these events can yield direct access to hiring managers and AI team leads.

  5. Employee Referrals

    • Knowing someone at Amazon can significantly speed up the screening process. A referral from an internal employee can provide your application additional visibility.

8. Tips for Standing Out as a Candidate

Given the competitive nature of Amazon roles, here’s how to make your application shine:

  1. Highlight Real-World Impact

    • Show how your AI/ML projects led to tangible outcomes: cost savings, improved performance metrics, or user engagement. Be data-specific: e.g., “Increased recommendation accuracy by 15%.”

  2. Cite Publications or Conferences

    • Presenting or publishing at AI conferences (NeurIPS, ICML, etc.) or in reputable journals demonstrates domain authority and a commitment to pushing boundaries in ML research.

  3. Open-Source Contributions

    • GitHub repositories or contributions to major ML frameworks can stand out, showcasing your collaborative spirit and practical experience.

  4. Refine Behavioural Interviews

    • Amazon is known for its Leadership Principles (e.g., “Customer Obsession,” “Dive Deep,” “Ownership”). Prepare examples illustrating how you embody these principles in day-to-day projects.

  5. Demonstrate AWS Familiarity

    • Even if you’re new to AWS, completing certifications (like AWS Certified Machine Learning – Specialty or AWS Certified Solutions Architect) can boost your credibility.

  6. Practise Whiteboard / Coding Exercises

    • Technical interviews often involve coding tasks (data structures, algorithms) or scenario-based ML queries. Review the fundamentals and practise under timed conditions.

9. Inside Amazon’s AI Culture

Amazon is known for its high-performance environment, emphasising:

  1. Ownership and Autonomy

    • Teams are often small and empowered to make decisions. AI professionals can quickly see the impact of their work deployed at scale.

  2. Customer Centricity

    • Every ML model, platform, or service is tied to customer outcomes. Understanding and advocating for user experience is paramount.

  3. Experimentation and Data-Driven Decision Making

    • From A/B testing new features in Alexa to adjusting e-commerce algorithms in real time, employees rely heavily on analytics and experimentation.

  4. Cross-Team Collaboration

    • Large-scale AI solutions often require cooperation between multiple AWS teams, Alexa groups, or e-commerce divisions. Effective communication fosters synergy.

  5. Embrace Challenge

    • “Work Hard. Have Fun. Make History.” is often cited as an Amazon motto. AI employees tackle complex problems daily—making the environment both challenging and deeply rewarding.

10. Conclusion: Forge a Cutting-Edge AI Career at Amazon

Amazon has come a long way since its humble beginnings, evolving into a data-driven enterprise that integrates AI solutions into nearly every layer of its business. From building advanced ML models for e-commerce recommendations to pioneering voice interfaces through Alexa, Amazon’s AI teams solve real-world challenges on a massive scale. For UK-based AI professionals, Amazon offers an abundance of opportunities to grow your skill set, collaborate with globally distributed experts, and witness your creations reach millions—if not billions—of people.

By honing your technical foundations, aligning your achievements with Amazon’s leadership principles, and showcasing how your machine learning ideas can translate into user-centric gains, you stand a solid chance of launching a fruitful career at one of the world’s most influential companies.

Ready to Explore Amazon AI Jobs?

Visit www.artificialintelligencejobs.co.uk to discover Amazon’s latest AI openings in the UK, whether it’s in Alexa voice technology, AWS cloud ML services, or robotics-driven logistics. Filter by your expertise—be it data science, NLP, computer vision, or AI product management—and take your next step in revolutionising how people interact with technology through the power of Amazon’s AI.

Related Jobs

Applied Scientist II (Machine Learning), ITA - Automated Performance Evaluation

Applied Scientist II (Machine Learning), ITA - Automated Performance Evaluation Amazon Edinburgh, Scotland, United Kingdom Join or sign in to find your next job Join to apply for the Applied Scientist II (Machine Learning), ITA - Automated Performance Evaluation role at AmazonApplied Scientist II (Machine Learning), ITA - Automated Performance Evaluation Amazon Edinburgh, Scotland, United Kingdom 1 day ago Be...

Amazon
Edinburgh

Senior Delivery Consultant - Data Scientist AI/ML, AWS Professional Services

Senior Delivery Consultant - Data Scientist AI/ML, AWS Professional Services Job ID: 3039292 | AWS EMEA SARL (Spain Branch) The Amazon Web Services Professional Services (ProServe) team is seeking a skilled Delivery Consultant to join our team at Amazon Web Services (AWS). In this role, you'll work closely with customers to design, implement, and manage AWS solutions that meet their...

Amazon
London

Sr. Data Scientist

大量のデータを使って機械学習(ML)モデルや深層学習(DL)モデルを開発することにやりがいを感じますか?大手のグローバル企業が進めるデータ利活用による新しいビジネスの創生��関わりたいと思いませんか?多様な業種の企業でのAWS ML、DLのプロジェクトへの参画を通じて様々なリアルケースに触れることでスキルを深めたいと思っていますか?Amazonではこれまで長年にわたって機械学習に投資しており、引き続きML/DL/AIの領域でリードしていただける方を募集しています。AWS Professional Servicesは、AWSのお客様がビジネスや運用上の課題を解決するために機械学習の利用を加速し、組織内のイノベーションを促進できるよう支援しています。私たちは、Customer Obsessionにフォーカスし、お客様の成功に共に歩んでいけることを誇りに思っています。MLモデルやDLモデルの構築といったご経験をお持ちの方には、ぜひご参加いただきたいと思います。常にイノベーションを追求するAWSで、素晴らしいチームメイトと一緒に仕事をし、共にお���様を支援できることを楽しみにしています。Data Scientistは、データを深く掘り下げ、分析を行い、根本原因を発見し、最適な分析手法やモデルの検討、設計、実装に関するアドバイス、PoCの実施を通じて、お客様のデータ利活用によるビジネス目標の達成をご支援します。私たちはビジネス上の問題に対する技術的な解決策をお客様に提供することに熱意を持っており、お客様が意欲的な目標を設定し、それを超えることができるように支援しています。また、様々な技術を積極的に取り入れて、AIを活用して世界にイノベーションを起こしたいと考えています#aws-jp-proserv-ap#AWSJapanKey job responsibilities- お客様のビジネスニーズを理解し、AWSの機械学習、深層学習、AIに関わるサービス、プラットフォーム、フレームワークおよびEC2インスタンスを活用したソリューションをご案内します- 営業活動の支援、ニーズの検証、アプローチの定義、データの集計、探索的データ分析、予測モデルの構築と検証、検証済みモデルの展開、およびその結果を使って組織にビジネスインパクトをもたらすためのトレーニングの提供などの活動を通じてML/DLプロジェクトの最初から最後に渡ってお客様を支援します- TensorFlow、Keras、PyTorch、MXNetなどの深層学習フレームワークを使用して、お客様のDLモデル構築を支援します- SparkとAmazon SageMakerを使用して、お客様が機械学習モデルを構築するのを支援します- AI/ML Consultant, ML Engineer と協力して、関連データの分析、抽出、正規化、ラベリングなどを行います。また、お客様がモデルを構築した後にビジネスでの結果が出せるように支援します- 上記支援のために、AWSサービスを始めとして、GitやDocker、SQLコマンドなど、幅広いITツールを活用した作業を行います - コンピュータサイエンス、機械学習、オペレーションズ・リサーチ、統計学、数学などの分野で大学を卒業された方、またはそれと同等のご経験をお持ちの方- 機械学習エンジニアまたはデータサイエンティストとしての経験があり、MLモデルまたはDLモデルの構築実績がある方- データを分析し、そこから隠れたパターンなど知識発見に貢献した実績- 様々な役割のお客様や関係チームと共同で仕事を進められる高いコミュニケーションスキル- PythonやRなどのプログラミング言語を利用したデータ分析やモデル構築の経験 - コンピュータサイエンス、機械学習、オペレーションズ・リサーチ、統計学、数学などで修士または博士号を取得された方、またはそれと同等のご経験をお持ちの方- お客様の経営層から技術者まで幅広い方と連携が可能な、深い技術的スキルとビジネスに精通した方- 様々なお客様課題やニーズに対して取り組み、多様な環境で結果を出してきたご経験- データモデリングプロセスのための実験計画と分析計画を作成するスキル、ベースラインを活用して、原因と結果の関係を正確に決定するスキル- 機械学習、深層学習、データマイニングの専門誌・学会での発表経験- 複雑な技術概念や先進的なトピックスについて、お客様への講義、セミナーでの講演や記事を作成したことがある方- Amazon SageMakerやGlue、Step FunctionsなどのAWSテクノロジーに精通しており、AWS認定資格を取得されている方- お客様(ユーザー部門含む)のAIニーズへのコンサルティング経験- テラバイトサイズのデータセットの取り扱い経験- SQLのコーディングやチューニングの知識と経験- AWSもしくはそれに類するクラウド技術やコンピューティング/ネットワーク技術Our inclusive culture empowers Amazonians to deliver the best results for our customers. If you have a disability and need a workplace...

Amazon
London

Delivery Consultant - Data Scientist AI/ML, AWS Professional Services

Delivery Consultant - Data Scientist AI/ML, AWS Professional Services Job ID: 3010597 | AWS EMEA SARL (Spain Branch) The Amazon Web Services Professional Services (ProServe) team is seeking a skilled Delivery Consultant to join our team at Amazon Web Services (AWS). In this role, you'll work closely with customers to design, implement, and manage AWS solutions that meet their technical...

Amazon
London

Scientifique en apprentissage automatique sénior.e / Senior Machine Learning Scientist, Amazon [...]

OverviewAmazon Games recherche un.e scientifique en apprentissage automatique sénior.e pour développer et intégrer de nouvelles approches d'apprentissage automatique (ML), d'apprentissage par renforcement (RL) et d'IA générative (Gen AI) dans nos processus de développement de jeux et dans nos expériences de jeux. Dans ce rôle, vous travaillerez en étroite collaboration avec nos studios de développement de jeux et nos équipes opérationnelles...

Amazon
London

Sr. Machine Learning Compiler Engineer, Annapurna Labs

The Product:AWS Machine Learning accelerators are at the forefront of cloud innovation and power some of the most advanced Generative AI applications on AWS. Our custom silicon – including the Inferentia chip for ML inference and the Trainium chip for ML training – delivers industry-leading performance and cost efficiency at scale. These are powered by the AWS Neuron Software Development...

Amazon
London

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Hiring?
Discover world class talent.