AI Engineer
Location
Poland
Posted
84 days ago
Salary
0
Seniority
Lead
Job Description
AI Engineer
InPost Group
• Integrate LLMs and other GenAI models into web applications through efficient API design and implementation. • Build and optimize API endpoints to allow seamless, real-time interaction between front-end applications and back-end AI models. • Design and develop secure, scalable, and high-performing microservices for AI model deployment. • Develop robust back-end systems in Python to support the deployment, scalability, and maintenance of GenAI models. • Build and maintain data pipelines, including preprocessing data and post-processing AI model outputs for consumption by applications. • Use Kubernetes and Docker for containerization and orchestration to ensure scalable deployment and management of AI applications. • Implement continuous integration and continuous deployment (CI/CD) pipelines for automated testing and deployment of code changes. • Maintain a scalable and secure cloud infrastructure, leveraging platforms such as Google Cloud Platform, or Azure for model training, storage, and deployment. • Utilize vector databases (e.g., Pinecone, Weaviate, or Faiss) to manage and retrieve embeddings for efficient similarity search and recommendation systems. • Optimize and fine-tune LLMs to improve performance based on application needs.
Job Requirements
- Min Bachelor's degree in Computer Science, Engineering, or a related field.
- 7+ years of experience as a full-stack developer, ideally with a focus on AI model integration.
- Proficiency in Python.
- Strong knowledge of GenAI models and LLMs, including experience with model selection, tuning, and embedding strategies.
- Experience with API development and integration to facilitate communication between front-end applications and AI models.
- Working knowledge of containerization technologies like Docker and container orchestration with Kubernetes.
- Familiarity with cloud platforms (AWS, GCP, or Azure) for AI model deployment and scalability.
- Proficient in vector databases and their integration with LLM models for enhanced application functionality.
- Familiarity with database management (SQL, NoSQL) and caching solutions (e.g., Redis).
- Experience in CI/CD pipelines, code versioning (Git), and DevOps practices.
- Excellent knowledge of English AND Polish.
Benefits
- The option to work from the office or 100% remotely
- Opportunity to work in a diverse, international and cross-functional environment, along with leading experts.
- Fulfilling careers with a range of benefits for employees and invests in providing training opportunities for their development.
- Involvement in technology monitoring and choices.
- Your impact will be visible instantly and you will be making a difference in our users' lives.
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