Data Engineering & Data Science Consultant

Infosys
London
2 months ago
Applications closed

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Data Engineering & Data Science Consultant

Consultant & Senior Consultant level

London

About Us

Do you want to boost your career and collaborate with expert, talented colleagues to solve and deliver against our clients' most important challenges? We are growing and are looking for people to join our team. You will be part of an entrepreneurial, high-growth environment of 300.000 employees. Our dynamic organization allows you to work across functional business pillars, contributing your ideas, experiences, diverse thinking, and a strong mindset. Are you ready?

About Your Role

As a Consultant / Senior Consultant in Data Engineering & Data Science, you work hands-on on the design, build, and operationalisation of modern data and analytics solutions. You contribute across the full lifecycle – from data ingestion and transformation to analytics, machine learning, and production deployment. You collaborate closely with data engineers, architects, data scientists, and business stakeholders to deliver scalable, reliable, and value-driven data solutions in complex client environments.

Your role will include:

Apply data science and machine learning techniques to real-world business problems Work with structured and semi-structured data in data lakes, lakehouses, and data warehouses Develop and optimise data transformations for analytical and machine learning workloads Support the productionisation of data and ML solutions, including monitoring and optimisation

Requirements

What you bring – required

Experience & Background

3–5 years of experience in data engineering, data science, or analytics Hands-on experience delivering data and analytics solutions in project-based or client environments Strong problem-solving skills and a pragmatic, delivery-oriented mindset

Data Engineering Foundations

Experience building end-to-end data pipelines (ingestion, transformation, storage) Solid understanding of data modelling, data transformations, and feature engineering Familiarity with cloud-based data platforms, such as: Azure, AWS, or GCP Databricks, Snowflake, BigQuery, Azure Synapse / Microsoft Fabric Understanding of CI/CD concepts and production-grade deployments

Applied Data Science & Analytics

Experience applying statistical analysis and machine learning techniques Strong programming skills in Python Very good SQL skills and experience working with relational databases Experience deploying or supporting ML models in production environments Ability to translate analytical results into business-relevant insights Bachelor’s or Master’s degree in Computer Science, Engineering, Mathematics, or a related field or equivalent practical experience

Nice to have

Experience with streaming technologies (e.g. Kafka, Azure Event Hubs) Exposure to GenAI, NLP, time series, or advanced analytics use cases Experience with NoSQL databases (e.g. MongoDB, Cosmos DB) Familiarity with Docker and Kubernetes Experience with data visualisation tools (e.g. Power BI, Tableau) Cloud or data-related certifications

Language & Mobility

Very good English skills Willingness to travel for project-related work

Benefits

About your team

Join our growing Data & Analytics practice and make a difference. In this practice you will be utilizing the most innovative technological solutions in modern data ecosystem. In this role you’ll be able to see your own ideas transform into breakthrough results in the areas of Data & Analytics strategy, Data Management & Governance, Data Platforms & Engineering, Analytics & Data Science.

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