At a Glance
- Tasks: Lead the design and deployment of scalable ML solutions for diverse industries.
- Company: Join a global leader in digital transformation, expanding its Data Practice across Europe.
- Benefits: Enjoy perks like remote work options, private medical insurance, and free lunches.
- Why this job: Be at the forefront of ML innovation, solving real-world challenges with cutting-edge technology.
- Qualifications: Bachelor's or Master's in relevant fields; Ph.D. is a plus; extensive ML experience required.
- Other info: Participate in a dynamic team with opportunities for professional growth and development.
The predicted salary is between 43200 - 72000 £ per year.
As a global leader in digital transformation, we are expanding our Data Practice across Europe to address growing client demand for advanced Data Science and Machine Learning (ML) engineering services. We are seeking a talented and experienced Principal Data Science & ML Engineering Consultant to join our dynamic team. This role emphasizes building scalable, production-ready ML solutions, optimizing model performance and driving technical innovation across diverse industries.
In this position, you will bridge the gap between data science and software engineering, delivering robust data-driven solutions that empower clients to solve real-world challenges and unlock measurable value.
#LI-DNI
Responsibilities
- Collaborate with clients to define their data science and ML strategies, ensuring alignment with business objectives and technical feasibility
- Lead the design, development, deployment and maintenance of ML models, emphasizing MLOps best practices for scalability and reliability
- Design and implement data pipelines to process, transform and prepare data for ML workflows
- Monitor, evaluate and improve model performance, addressing issues like data drift, model drift and latency in production environments
- Build CI/CD pipelines for seamless integration of ML models into production systems
- Work with cross-functional teams, including data engineers, software developers and business stakeholders, to ensure the successful implementation of ML solutions
- Implement AI governance frameworks, ensuring compliance with ethical practices and industry regulations
- Stay at the forefront of industry trends, emerging ML technologies and innovative tools to continually enhance service offerings
- Translate complex ML concepts into actionable insights and technical roadmaps for stakeholders at various levels
- Contribute to client-facing activities, including presentations, workshops and responses to RFPs/RFIs
Requirements
- Bachelors or Masters degree in Data Science, Statistics, Computer Science, Software Engineering or related fields. A Ph.D. is an advantage
- Extensive experience in data science, ML engineering or related roles. Experience in leading teams on projects in not required but would be valued
- Deep understanding of ML lifecycle management, including feature engineering, model selection, hyperparameter tuning, model validation, model evaluation and deployment for inference
- Hands-on expertise in deploying ML models at scale in production environments (via platforms such as AWS SageMaker or Azure ML), and optimising models for efficient inference using formats like ONNX and TensorRT
- Proficiency in Python and ML/engineering frameworks such as PyTorch, TensorFlow (including Keras), Hugging Face (Transformers, Datasets) and scikit-learn, etc
- Experience with MLOps tools, including MLFlow, workflow orchestrators (Airflow, Metaflow, Perfect or similar), and containerisation (Docker)
- Strong knowledge of cloud platforms like Azure, AWS or GCP for deploying and managing ML models
- Familiarity with data engineering tools and practices, e.g., distributed computing (e.g., Spark, Ray), cloud-based data platforms (e.g., Databricks) and database management (e.g., SQL)
- Strong communication skills, capability to present technical concepts to technical and non-technical stakeholders
- Experience in developing AI applications using large language models (LLMs) and Retrieval-Augmented Generation (RAG) systems (via LangChain, LlamaIndex or custom API-driven approaches)
We offer
- EPAM Employee Stock Purchase Plan (ESPP)
- Protection benefits including life assurance, income protection and critical illness cover
- Private medical insurance and dental care
- Employee Assistance Program
- Competitive group pension plan
- Cyclescheme, Techscheme and season ticket loans
- Various perks such as free Wednesday lunch in-office, on-site massages and regular social events
- Learning and development opportunities including in-house training and coaching, professional certifications, over 22,000 courses on LinkedIn Learning Solutions and much more
- If otherwise eligible, participation in the discretionary annual bonus program
- If otherwise eligible and hired into a qualifying level, participation in the discretionary Long-Term Incentive (LTI) Program
- *All benefits and perks are subject to certain eligibility requirements
#J-18808-Ljbffr
Principal Data Science & ML Engineering Consultant employer: EPAM
Contact Detail:
EPAM Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Principal Data Science & ML Engineering Consultant
✨Tip Number 1
Familiarise yourself with the latest trends in machine learning and data science. Follow industry leaders on platforms like LinkedIn and engage with their content to stay updated. This knowledge will not only help you during interviews but also demonstrate your passion for the field.
✨Tip Number 2
Network with professionals in the data science and ML engineering community. Attend meetups, webinars, or conferences to connect with potential colleagues and learn about the challenges they face. This can provide valuable insights that you can bring up during your application process.
✨Tip Number 3
Showcase your hands-on experience with ML tools and frameworks by contributing to open-source projects or building your own portfolio. Having tangible examples of your work can set you apart from other candidates and give you concrete talking points in interviews.
✨Tip Number 4
Prepare to discuss how you've implemented MLOps best practices in previous roles. Be ready to share specific examples of how you've optimised model performance and ensured scalability. This will highlight your practical experience and align with the responsibilities of the role.
We think you need these skills to ace Principal Data Science & ML Engineering Consultant
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights relevant experience in data science and ML engineering. Focus on specific projects where you've built scalable ML solutions or optimised model performance, as these are key aspects of the role.
Craft a Compelling Cover Letter: In your cover letter, emphasise your understanding of the ML lifecycle management and your hands-on expertise with tools like AWS SageMaker or Azure ML. Mention how your skills align with the company's goals and how you can contribute to their data practice.
Showcase Technical Skills: Clearly list your proficiency in programming languages and frameworks such as Python, PyTorch, and TensorFlow. Provide examples of how you've used these technologies in past roles to solve real-world challenges.
Demonstrate Communication Skills: Since the role requires translating complex ML concepts to various stakeholders, include examples in your application that showcase your ability to communicate technical information effectively to both technical and non-technical audiences.
How to prepare for a job interview at EPAM
✨Showcase Your Technical Expertise
Be prepared to discuss your hands-on experience with ML frameworks like TensorFlow and PyTorch. Highlight specific projects where you've deployed models at scale, and be ready to explain the challenges you faced and how you overcame them.
✨Understand MLOps Best Practices
Since this role emphasises MLOps, make sure you can articulate the importance of CI/CD pipelines and how they contribute to model reliability. Discuss any tools you've used, such as MLFlow or Docker, and how they fit into your workflow.
✨Communicate Complex Concepts Simply
You’ll need to bridge the gap between technical and non-technical stakeholders. Practice explaining complex ML concepts in simple terms, perhaps using analogies or real-world examples to demonstrate your understanding.
✨Stay Updated on Industry Trends
Demonstrate your passion for the field by discussing recent advancements in ML technologies or methodologies. Mention any relevant courses or certifications you've completed, and how they have influenced your approach to data science and ML engineering.