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Software Engineer

GenderGP
Bristol
9 months ago
Applications closed

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Join Our Dynamic Team as a Software Engineer and flex those Generative AI muscles!


Location:Remote UK Hours

Type:Contract (40 hours a week)

Salary:Competitive base salary of approximately £50K per annum (or equivalent)

Experience Level:Mid 3-5 years


This is your opportunity to work at cutting edge more than category defining this is life saving technology for you to help build, craft and bring to the world. We have an amazingly impressive engineering team already so if you like spending time with very humble but incredibly smart people who speak zeros and ones - well my friend this could be your work-oasis!


This is a game changing opportunity that is truly global and at GenderGP you get to:


> Truly impact people across 40 countries!

> Work fully remotely

> Enjoy great remuneration - for this role it is up £50K for the right person.

> Learn from technology entrepreneurs who have scaled multiple businesses


The ideal person will have a proven track record in developing robust backend systems and integrating third-party solutions. This role requires proficiency in Python, API development, GitHub, Docker, and Azure AI/ML Studio. A solid understanding of Object-Oriented Programming (OOP) and software quality assurance is essential. Experience in data engineering and analytics is also desired. You will collaborate closely with our frontend developers, product owners, and data engineers to create engaging, high-performance applications.


So if this is for you READ more about the role BELOW ... then hit APPLY and introduce yourself.


Key Responsibilities:

 

●     Backend Development: Design, develop, and maintain backend services and systems to ensure high performance and responsiveness.

●     GenAI Integration: Develop and integrate Generative AI and Large Language Model (LLM)-based chatbots into various platforms to enhance user experience and interaction.

●     GenAI: Leverage Azure AI/ML Studio for developing, training, and deploying generative AI models.

●     Third-Party Integration: Work with third-party providers to seamlessly integrate their solutions with our systems.

●     API Development: Design and implement robust APIs in Flask, FastAPI or DotNet to support various applications and services.

●     Security: Implement and manage authentication and authorisation mechanisms to ensure secure access and data privacy.

●     Performance Optimisation: Identify bottlenecks and optimise applications for maximum speed and scalability.

●     Production-Ready Systems: Ship production-ready backends, including code optimisation and thorough testing to ensure stability and performance.

●     Collaboration: Work closely with frontend developers, AI engineers, data engineers, and product managers to deliver high-quality solutions.

●     Version Control: Utilise GitHub for version control to ensure smooth collaboration and code management.

●     Code Quality: Write clean, maintainable code, perform code reviews, and adhere to best practices in version control, testing, and continuous integration.

●     Containerisation: Use Docker to containerise applications for consistent and efficient deployment.

●     Documentation: Create documentation and specifications for developers to follow during implementation.

●     OOP Principles: Apply object-oriented programming principles to design and implement scalable and maintainable code.

●     Software Quality Assurance: Ensure the quality and reliability of software through rigorous testing.

●     System Design: Apply knowledge of system design principles and industry best practices.

 

Qualifications:

 

Education:

●     Degree in Computer Science, Statistics, AI, Data Science, Data Analytics, IT, or a related field is mandatory.


Experience:

●     Proven experience in backend development with a focus on GenAI, LLM chatbots, and third-party integrations.

●     Strong knowledge in Object-Oriented Programming and System Design Principles.

●     Experience with Prompt Engineering, Retrieval-Augmented Generation (RAG) pipelines, and model fine-tuning.

●     Proficient in Python and API development.

●     Demonstrated experience in shipping production-ready frontends, including performance optimisation and ensuring high standards of quality.

●     Understanding of RESTful APIs and experience in API integration.

●     Strong experience with GitHub for version control.

●     Proficiency with Docker for containerisation and managing applications within Docker environments.

●     Server-side debugging experience, including logging, audit trails, and application monitoring.

●     Basic knowledge of data engineering and analytics.


Skills:

●     Experience working within budget constraints on cloud platforms like Azure or AWS.

●     Knowledge of additional programming languages such as Java or C#.

●     Strong problem-solving skills and attention to detail.

●     Excellent communication and teamwork skills.

●     Ability to work independently and as part of a team in a fast-paced environment.

●     Familiarity with Agile/Scrum methodologies.


Nice-to-Have:

●     Basic understanding of Cloud Provider Technologies (Azure/GCP).

●     Staying updated with the latest trends in Generative AI.

●     Experience with end-to-end testing frameworks.

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