At a Glance
- Tasks: Develop machine learning models and optimise data pipelines for decision-support software.
- Company: Join Coforge, a forward-thinking tech company in Waterside, UK.
- Benefits: Enjoy competitive salary, flexible working, and opportunities for professional growth.
- Why this job: Make a real impact by leveraging data to drive better business decisions.
- Qualifications: Master’s degree or 2+ years of relevant experience in data science or ML.
- Other info: Collaborative environment with a focus on innovation and continuous improvement.
The predicted salary is between 30000 - 50000 £ per year.
We at Coforge are looking for a Data Scientist in Waterside, UK.
Role purpose
This role is responsible for developing industrialized optimisation and machine learning models as part of a full-stack product squad that delivers operations decision-support software.
Scope
As a key member of a product squad and reporting to the Lead Product Data Scientist, a Data Scientist will develop data pipelines, machine learning models, and complex optimization models in the ODS software product suite. The Data Scientist oversees modelling and robust implementation of features contributing to an operations decision-support product. In developing a product’s core algorithm, the full-stack Data Scientist role will ensure that their features integrate seamlessly into the product’s technical stack (data ingestion, user interface, orchestration) as well as the business process and use case (e.g., to maximize impact and value realization).
Accountabilities
- The Data Scientist has full-stack accountabilities across the full value chain of building an industrialized data-science software product:
- Understanding a business problem and its component processes end to end, and identifying opportunities to make decisions more optimally leveraging decision-support tooling.
- Efficiently conducting analyses and visualizations to identify valuable opportunities for decision-support and to determine trade-offs between different potential feature implementations.
- Prototyping advanced machine learning and optimization models to prove the value of a use case and approach (in Python).
- Delivering features to industrialize machine learning and optimization models in Python using best-practice software principles (e.g., strict typing, classes, testing).
- Build automated, robust data cleaning pipelines that follow software best-practices (in Python).
- Implementing integrations between the core algorithm (machine-learning or optimization) and a workflow orchestration paradigm such as Dagster.
- Implementing software in a cloud-based deployment pipeline with Continuous Integration / Continuous Deployment (CI/CD) principles.
- Building logging, error handling, and automated tests (e.g., unit tests, regression tests) to ensure the robustness of operationally critical decision-support products.
- Deliver features to harden an algorithm against edge cases in the operation and in data.
- Conduct analysis to quantify the adoption and value-capture from a decision-support product.
- Engage with business stakeholders to collect requirements and get feedback.
- Contribute to conversations on feature prioritisation and roadmap, with an understanding of the trade-off between speed vs. long-term value.
- Understand and integrate the product into existing business processes, and contribute to the development and adoption of new business processes leveraging a decision-support product.
- Communicate feature and modeling approach, trade-offs, and results with the internal team and business stakeholders.
The Data Scientist is also accountable for ways of working fit for an Agile cross-functional development squad, including:
- Using Git-versioning best practices for version control.
- Contributing and reviewing pull-requests and product / technical documentation.
- Giving input on prioritization, team process improvements, optimizing technology choices.
- Working independently and giving predictability on delivery timelines.
Skills/capabilities
- Strong knowledge of either machine learning and optimization techniques, incl. supervised (regression, tree methods, etc.), unsupervised (clustering) learning, 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 (scikit-learn, pandas, numpy, gurobi, etc.) to solve real-life 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 cloud-based 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, end-to-end 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 trade-offs of different data science, machine learning, and optimization 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 trade-offs, 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 team-working, giving and receiving feedback, and always seeking to improve team processes.
Qualifications/experience
- Master’s degree or greater in data science, ML, or operational research, or 2+ years of highly relevant industry experience (required).
- 0-2 years working on production ML or optimization software products at scale (required).
- Experience in developing industrialized software, especially data science or machine learning software products (preferred).
- Experience in relevant business domains (transportation, airlines, operations, network problems) (preferred).
Key interfaces
- Lead Product Data Scientist.
- Other Data Scientists.
- Business stakeholders and users.
- Software engineers (front-end, back-end, DevOps, data engineers).
- Product & change managers.
- BA Digital teams (e.g., architects, application support managers).
- External partners and third parties, as required.
- ODS Leadership (Head of Data & Analytics, Head of iOps & Optimisation, Director of ODS).
Key performance indicators
- Model accuracy, performance, and runtime (precision, recall, accuracy).
- Time to develop and deploy features and models.
- Data ingestion & processing efficiency and robustness.
- Code quality and robustness (e.g., unit test coverage).
- Collaboration and cross-functional teamwork.
Behaviours and attitude
- I’m a role model for all BA brand behaviours and ways of working – I walk the talk.
- I exude a can-do attitude (best of BA).
- I’m flexible and agile, always ready to adapt when things don’t go to plan.
- I’m an ambassador for BA and my team.
- Systems thinking.
- Detail oriented while understanding the big picture.
- Curious, self-motivated, proactive, and action-oriented.
- Creative and innovative.
- Resilient and flexible in light of changing priorities and approaches.
- Data-driven.
- 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, optimization, and machine learning.
Data Scientist employer: Coforge
Contact Detail:
Coforge Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Data Scientist
✨Tip Number 1
Network like a pro! Reach out to people in the industry, attend meetups, and connect with fellow data enthusiasts. You never know who might have the inside scoop on job openings or can refer you directly.
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your projects, especially those involving machine learning and optimisation. This gives potential employers a taste of what you can do and sets you apart from the crowd.
✨Tip Number 3
Prepare for interviews by brushing up on your technical knowledge and problem-solving skills. Practice coding challenges and be ready to discuss your past projects in detail. Confidence is key!
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets noticed. Plus, we love seeing candidates who are proactive about their job search.
We think you need these skills to ace Data Scientist
Some tips for your application 🫡
Tailor Your CV: Make sure your CV is tailored to the Data Scientist role. Highlight your experience with machine learning, Python, and any relevant projects that showcase your skills. 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 aligns with our needs. Be sure to mention specific projects or experiences that relate to the job description.
Showcase Your Technical Skills: Don’t forget to highlight your technical skills in your application. Mention your proficiency in Python, cloud platforms, and any relevant tools like Git or CI/CD practices. We love seeing candidates who are technically savvy!
Apply Through Our Website: We encourage you to apply through our website for a smoother process. It helps us keep track of your application and ensures you’re considered for the role. Plus, it’s super easy to do!
How to prepare for a job interview at Coforge
✨Know Your Algorithms
Make sure you brush up on your machine learning and optimisation techniques. Be ready to discuss specific algorithms you've used in the past, how they worked, and the outcomes they produced. This will show that you not only understand the theory but can also apply it practically.
✨Showcase Your Python Skills
Since Python is a must-have for this role, prepare to demonstrate your coding skills. You might be asked to solve a problem on the spot or explain your previous projects. Bring examples of your work, especially those involving data pipelines and model implementation.
✨Understand the Business Context
Coforge is looking for someone who can integrate technical solutions into business processes. Research the company and its products, and think about how your skills can help solve their specific challenges. Be ready to discuss how you would approach a real-world problem they face.
✨Prepare for Collaboration Questions
As a Data Scientist, you'll be working closely with various teams. Be prepared to talk about your experience in collaborative environments, how you handle feedback, and your approach to prioritising tasks. Highlight any Agile experience you have, as it’s crucial for this role.