At a Glance
- Tasks: Lead AI projects, from understanding business needs to deploying models and optimising performance.
- Company: Global recruitment specialist with a focus on innovation and collaboration.
- Benefits: Competitive daily rate, hybrid work model, and opportunities for professional growth.
- Other info: Exciting role with potential for rapid career advancement.
- Why this job: Join a dynamic team and shape the future of AI in a thriving industry.
- Qualifications: 8+ years in data science, expertise in GenAI, Python, and Azure.
The predicted salary is between 100000 - 120000 £ per year.
We are a Global Recruitment specialist that provides support to clients across EMEA, APAC, US and Canada. We have an excellent job opportunity for you.
Location: London (Hybrid – 3 days per week onsite)
Duration: 12 months
Rate range: GBP 454/day
Required Core Skills:
- GenAI
- Python
- Azure
Nice to have skills:
- Insurance industry experience
Minimum years of experience: 8+ years of experience
Responsibilities:
- Business Understanding and Scope Definition: Work with stakeholders to understand the business problem that the AI model aims to solve. Help define the project scope, translating business requirements into technical specifications, identify relevant data sources and determine key performance indicators (KPIs).
- Data Acquisition and Preprocessing: Work with ML engineers in designing pipelines collecting appropriate data from various sources, cleaning and preprocessing the data, and ensuring data quality.
- Model Selection and Training: Design appropriate training strategies (e.g., supervised learning, reinforcement learning) and configure model parameters. Design and select appropriate ML algorithms and architecture (LLM architecture (e.g., BERT, GPT-3) based on project requirements).
- Evaluation and Optimization: Recommend the metrics and design reports used to evaluate the model’s performance using various metrics, such as accuracy, precision, recall, and F1-score. Identify areas for improvement and optimize the model by adjusting parameters, trying different architectures, or incorporating new data.
- Prompt Engineering and Interaction Design: Designing prompts that effectively communicate with the LLM and elicit the desired responses. Phrase prompts to get the best results and avoid unintended consequences. Experiment with different prompts and evaluate their impact on the LLM's performance.
- Deployment and Monitoring: Work with Engineers to deploy the AI model into a production environment. Recommend the metrics and reports to be used to track model performance. Contribute to the setting up of automated monitoring systems and developing strategies for handling unexpected behaviour.
- Collaboration and Communication: Collaborate with other team members, including ML engineers, product managers, and domain experts. Communicate findings and recommendations to stakeholders.
If you are interested in this position and would like to learn more, please send through your CV and we will get in touch with you as soon as possible. Please note, candidates are often shortlisted within 48 hours.
Senior Data Scientist employer: eTeam
Contact Detail:
eTeam Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Senior Data Scientist
✨Tip Number 1
Network like a pro! Reach out to your connections in the data science field, especially those who work in companies you're interested in. A friendly chat can sometimes lead to job opportunities that aren't even advertised.
✨Tip Number 2
Prepare for interviews by practising common data science questions and scenarios. We recommend doing mock interviews with friends or using online platforms to get comfortable discussing your experience with GenAI, Python, and Azure.
✨Tip Number 3
Showcase your projects! Create a portfolio that highlights your best work, especially any relevant projects involving AI models or data pipelines. This gives potential employers a tangible sense of your skills and creativity.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, we often have exclusive roles listed there that you won’t find anywhere else.
We think you need these skills to ace Senior Data Scientist
Some tips for your application 🫡
Tailor Your CV: Make sure your CV is tailored to the Senior Data Scientist role. Highlight your experience with GenAI, Python, and Azure, and don’t forget to mention any relevant projects that showcase your skills in model selection and training.
Showcase Your Experience: With 8+ years of experience required, we want to see how you've tackled business problems in the past. Use specific examples to demonstrate your understanding of data acquisition, preprocessing, and model evaluation.
Be Clear and Concise: When writing your application, clarity is key! Use straightforward language to explain your technical skills and experiences. Avoid jargon unless it’s necessary, and make sure your points are easy to follow.
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 quickly. Plus, we often shortlist candidates within 48 hours!
How to prepare for a job interview at eTeam
✨Know Your Stuff
Make sure you brush up on your GenAI, Python, and Azure skills. Be ready to discuss specific projects where you've applied these technologies, especially in the context of data science. The more concrete examples you can provide, the better!
✨Understand the Business
Since the role involves working closely with stakeholders, it’s crucial to demonstrate your understanding of how data science can solve business problems. Think about how you would approach defining project scopes and translating business needs into technical specs.
✨Showcase Your Collaboration Skills
This position requires a lot of teamwork, so be prepared to talk about your experience collaborating with ML engineers, product managers, and domain experts. Share examples of how you’ve effectively communicated findings and recommendations in past roles.
✨Prepare for Technical Questions
Expect to dive deep into model selection, training strategies, and evaluation metrics. Brush up on your knowledge of LLM architectures like BERT and GPT-3, and be ready to discuss how you would optimise models and handle unexpected behaviours post-deployment.