Full Stack Developer - Marketing

London
1 month ago
Applications closed

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Co-Founder / CTO Opportunity – AI Tech Recruitment Start-Up

Co-Founder / CTO Opportunity – AI Tech Recruitment Start-Up

Full Stack Developer - Marketing
Salary: Negotiable to £50K Dependent on Experience
Location: Central London - Hybrid working 1 day a week
Ref: J12935

A marketing effectiveness consultancy geared toward the measurement of every element of the marketing mix: from in-store and field sales activity to the more traditional measurement areas of ATL and digital marketing activity. Founded in late 2014, their story has been one of rapid growth with the latest year already looking set to deliver double the turnover of the previous and a strong international client base.

With this success they seek to expand their engineering team with a proactive and skilled Full Stack Developer to contribute to the design, development, and deployment of internal and client-facing applications. The role requires collaboration across technical and product teams, working closely with data scientists and business analysts to deliver robust solutions. The Full Stack Developer will have experience of building web applications, an interest in data analytics, and a desire to contribute to high-impact projects

Key Responsibilities:
·Develop and maintain scalable backend services using Python frameworks (Flask/Django)
·Build responsive and user-friendly frontend interfaces with React or other modern frameworks
·Design and optimize database structures and queries in PostgreSQL
·Ensure the efficient and secure handling of large datasets for analytics purposes
·Collaborate with data scientists to integrate complex statistical models into production applications
·Participate in agile development cycles, ensuring continuous delivery of high-quality features
·Manage cloud-based infrastructure using Azure, ensuring optimal performance and scalability
·Write unit tests and ensure software quality through automated testing frameworks
·Support the deployment and monitoring of applications in production environments
·Contribute to system architecture decisions and process improvements

Essential Skills:
·Backend Development: Python (Flask/Django), SQL (PostgreSQL), SQLAlchemy
·Frontend Development: JavaScript (React or similar frameworks), HTML, CSS
·Data Visualization: Experience with libraries such as matplotlib, seaborn, plotly
·Cloud Infrastructure: Familiarity with Azure and cloud-based deployments
·Version Control: Proficient with GitHub

Desirable Skills:
·Containerization/Orchestration: Docker, Kubernetes
·Message Queuing: RabbitMQ or similar
·Cache Management: Redis
·Data Processing: Experience working with data pipelines and processing large datasets

If this role sounds like the perfect opportunity, why not get in touch to find out more.

Alternatively, you can refer a friend or colleague by taking part in our fantastic referral schemes! If you have a friend or colleague who would be interested in this role, please refer them to us. For each relevant candidate that you introduce to us (there is no limit) and we place, you will be entitled to our general gift/voucher scheme.

Datatech is one of the UK's leading recruitment agencies in the field of analytics and host of the critically acclaimed event, Women in Data. For more information, visit our website: (url removed) <(url removed)

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