At a Glance
- Tasks: Develop machine learning models and data pipelines to revolutionise air travel.
- Company: Join Amach, a fast-growing tech company with a focus on innovation.
- Benefits: Flexible working, competitive salaries, and opportunities for career advancement.
- Why this job: Make a real impact in the future of air travel with cutting-edge technology.
- Qualifications: Strong Python skills and knowledge of machine learning techniques required.
- Other info: Dynamic team environment with a commitment to diversity and inclusion.
The predicted salary is between 36000 - 60000 ÂŁ per year.
Build the Future of Air Travel with Amach. Join one of the world's fastest-growing technical teams, where innovation meets impact. We take the time to understand your skills, ambitions, and what truly drives youâbecause your journey matters.
Amach is an industryâleading technologyâdriven company headquartered in Dublin with remote teams in the UK and Europe. Our blended teams of local and nearshore talent deliver high quality and collaborative solutions. Founded in 2013, we specialise in cloud migration, agile software development, DevOps, automation, data and machine learning, and digital transformation.
As a key member of a product squad reporting to the Lead Product Data Scientist, a Data Scientist will develop data pipelines, machine learning models and complex optimisation models in the ODS software product suite. The Data Scientist is in charge of modelling and robust implementation of features contributing to an operations decisionâsupport product. In developing a product's core algorithm, the fullâstack Data Scientist role ensures that features integrate seamlessly into the product's technical stack (data ingestion, user interface, orchestration) as well as the business process and use case.
Required Skills- Strong knowledge of machine learning and optimisation techniques, including supervised (regression, tree methods, etc.), unsupervised (clustering), and operations research (linear, mixed integer programming, heuristics)
- Fluent in Python (required) and other programming languages (preferred) with strong skills in applying DS, ML, and OR packages (scikitâlearn, pandas, numpy, gurobi, etc.) to solve realâlife problems and visualise the outcomes (e.g., seaborn)
- Proficient in working with cloud platforms (AWS preferred), code versioning (Git), experiment tracking (e.g., MLflow)
- Experience with cloudâbased ML tools (e.g., SageMaker), data and model versioning (e.g., DVC), CI/CD (e.g., GitHub Actions), workflow orchestration (e.g., Airflow/Dagster) and containerised solutions (e.g., Docker, ECS) nice to have
- Experience in code testing (unit, integration, endâtoâend tests)
- Strong data engineering skills in SQL and Python
- Proficient in use of Microsoft Office, including advanced Excel and Powerpoint skills
- Advanced analytical skills, including the ability to apply a range of data science and analytic techniques to quickly generate accurate business insights
- Understanding of the tradeâoffs of different data science, machine learning, and optimisation approaches, and ability to intelligently select which are the best candidates to solve a particular business problem
- Able to structure business and technical problems, identify tradeâoffs, and propose solutions
- Communication of advanced technical concepts to audiences with varying levels of technical skills
- Managing priorities and timelines to deliver features in a timely manner that meet business requirements
- Collaborative teamâworking, giving and receiving feedback, and always seeking to improve team processes
- Understand a business problem and its component processes end to end, and identify opportunities to make decisions more optimally leveraging decisionâsupport tooling
- Efficiently conduct analyses and visualisations to identify valuable opportunities for decisionâsupport and to determine tradeâoffs between different potential feature implementations
- Prototype advanced machine learning and optimisation models to prove the value of a useâcase and approach (in Python)
- Deliver features to industrialise machine learning and optimisation models in Python using bestâpractice software principles (e.g., strict typing, classes, testing)
- Build automated, robust data cleaning pipelines that follow software bestâpractices (in Python)
- Implement integrations between the core algorithm (machineâlearning or optimisation) and a workflow orchestration paradigm such as Dagster
- Implement software in a cloudâbased deployment pipeline with Continuous Integration / Continuous Deployment (CI/CD) principles
- Build logging, error handling, and automated tests (e.g., unit tests, regression tests) to ensure the robustness of operationally critical decisionâsupport products
- Deliver features to harden an algorithm against edge cases in the operation and in data
- Conduct analysis to quantify the adoption and valueâcapture from a decisionâsupport product
- Engage with business stakeholders to collect requirements and get feedback
- Contribute to conversations on feature prioritisation and roadmap, with an understanding of the tradeâoff between speed vs. longâterm value
- Understand and integrate the product into existing business processes, and contribute to the development and adoption of new business processes leveraging a decisionâsupport product
- Communicate feature and modelling approach, tradeâoffs, and results with the internal team and business stakeholders
- Using Gitâversioning best practices for version control
- Contributing and reviewing pullârequests and product / technical documentation
- Giving input on prioritisation, team process improvements, optimising technology choices
- Working independently and giving predictability on delivery timelines
- Systems thinking
- Detailâoriented while understanding the big picture
- Curious, selfâmotivated, proactive, and actionâoriented
- Creative and innovative
- Resilient and flexible in light of changing priorities and approaches
- Dataâdriven
- Pragmatic
- A true believer in the power of using data to drive better decision making
- A technologist, interested in keeping up with the latest and greatest in software development, optimisation, and machine learning
- Commitment to delivering business value
- An opportunity to join a fastâgrowing company
- Options for career advancement
- Learning and development opportunities
- Flexible working environment
- Competitive salaries based on experience
Equal Opportunity Employer. Amach is an equal opportunity employer and makes employment decisions on the basis of merit. We celebrate diversity and are committed to creating an inclusive environment for all employees. This job description is intended to convey essential responsibilities and qualifications for this role, but it is not an exhaustive list of tasks that an employee may be required to perform.
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Data Scientists London, England, United Kingdom employer: Amach
Contact Detail:
Amach Recruiting Team
StudySmarter Expert Advice đ¤Ť
We think this is how you could land Data Scientists London, England, United Kingdom
â¨Tip Number 1
Network like a pro! Reach out to current employees at Amach on LinkedIn, ask about their experiences, and get the inside scoop. A personal connection can make all the difference in landing that interview.
â¨Tip Number 2
Show off your skills! Create a portfolio showcasing your data science projects, especially those involving machine learning and optimisation. This will give you a chance to demonstrate your expertise beyond just your CV.
â¨Tip Number 3
Prepare for the technical interview by brushing up on your Python skills and familiarising yourself with the tools mentioned in the job description. Practice coding challenges and be ready to discuss your thought process.
â¨Tip Number 4
Donât forget to apply through our website! Itâs the best way to ensure your application gets seen by the right people. Plus, it shows youâre genuinely interested in joining the team at Amach.
We think you need these skills to ace Data Scientists London, England, United Kingdom
Some tips for your application đŤĄ
Tailor Your CV: Make sure your CV reflects the skills and experiences that match the job description. Highlight your knowledge of machine learning, Python, and any relevant projects you've worked on. 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 tell us why you're passionate about data science and how your background aligns with our mission at Amach. Be genuine and let your personality come through.
Showcase Your Projects: If you've worked on any cool data science projects, make sure to mention them! Whether it's a personal project or something from your previous job, we love seeing practical applications of your skills. Include links if possible!
Apply Through Our Website: We encourage you to apply directly through our website for the best chance of getting noticed. Itâs super easy, and you'll be one step closer to joining our innovative team at Amach!
How to prepare for a job interview at Amach
â¨Know Your Tech Inside Out
Make sure youâre well-versed in the machine learning and optimisation techniques mentioned in the job description. Brush up on your Python skills and be ready to discuss how you've applied libraries like scikit-learn and pandas in real-life projects.
â¨Showcase Your Problem-Solving Skills
Prepare to discuss specific business problems you've tackled using data science. Be ready to explain your thought process, the trade-offs you considered, and how you arrived at your solutions. This will demonstrate your analytical skills and ability to apply theory to practice.
â¨Familiarise Yourself with Cloud Tools
Since cloud platforms like AWS and tools such as SageMaker are key to the role, make sure you can talk about your experience with these technologies. If youâve worked with CI/CD practices or containerised solutions, have examples ready to share.
â¨Communicate Clearly and Confidently
Youâll need to explain complex technical concepts to non-technical stakeholders, so practice simplifying your explanations. Use clear examples and visuals if possible. This will show that you can bridge the gap between technical and business teams effectively.