44 TetraHed Jobs
Generative AI Engineer (7-8 yrs)
TetraHed
posted 3d ago
Key skills for the job
The AI Engineer with GenAI expertise is responsible for developing advanced technical solutions, integrating cutting-edge generative AI technologies. This role requires a deep understanding of modern technical and cloud-native practices, AI, DevOps, and machine learning technologies, particularly in generative models.
You will support a wide range of customers through the "Ideation to MVP" journey, demonstrating proficiency in leading projects and ensuring delivery excellence.
Key Responsibilities :
Technical & Engineering Leadership :
- Develop solutions leveraging GenAI technologies, integrating advanced AI capabilities into cloud-native architectures to enhance system functionality and scalability.
- Lead the design and implementation of GenAI-driven applications, ensuring seamless integration with microservices and container-based environments.
- Create solutions that fully leverage the capabilities of modern microservice and container-based environments running in public, private, and hybrid clouds.
- Contribute to HCL thought leadership across the Cloud Native domain with an expert understanding of open-source technologies (i.e., Kubernetes/CNCF) and partner technologies.
- Collaborate on joint technical projects with partners, including Google, Microsoft, AWS, IBM, Red Hat, Intel, Cisco, and Dell/VMware.
Mandatory Skills & Experience. :
- A passionate developer with 7+ years of experience in Java, Python, and Kubernetes, comfortable working as part of a paired/balanced team.
- Extensive experience in software development, with significant exposure to AI/ML technologies.
- Expertise in GenAI frameworks : Proficient in using GenAI frameworks and libraries such as LangChain, OpenAI API, and Hugging Face Transformers.
- Prompt engineering : Experience in designing and optimizing prompts for various AI models to achieve desired outputs and improve model performance.
- Strong understanding of NLP techniques and tools, including tokenization, embeddings, transformers, and language models.
- Proven experience developing complex solutions that leverage cloud-native technologies-featuring container-based, microservices-based approaches; based on applying 12-factor principles to application engineering.
- Exemplary verbal and written communication skills (English).
- Positive and solution-oriented mindset.
- Solid experience delivering Agile and Scrum projects in a Jira-based project management environment.
- Proven leadership skills and the ability to lead projects to ensure delivery excellence.
Desired Skills & Experience :
- Machine Learning Operations (MLOps) : Experience in deploying, monitoring, and maintaining AI models in production environments using MLOps practices.
- Data engineering for AI : Skilled in data preprocessing, feature engineering, and creating pipelines to feed AI models with high-quality data.
- AI model fine-tuning : Proficiency in fine-tuning pre-trained models on specific datasets to improve performance for specialized tasks.
AI ethics and bias mitigation :
- Knowledgeable about ethical considerations in AI and experienced in implementing strategies to mitigate bias in AI models. Knowledgeable about vector databases, LLMs, and SMLs, and integrating with such models.
- Proficient with Kubernetes and other cloud-native technologies, including experience with commercial Kubernetes distributions (e., Red Hat OpenShift, VMware Tanzu, Google Anthos, Azure AKS, Amazon EKS, Google GKE).
- Deep understanding of core practices including DevOps, SRE, Agile, Scrum, Domain-Driven Design, and familiarity with the CNCF open-source community.
- Recognized with multiple cloud and technical certifications at a professional level, ideally including AI/ML specializations from providers like Google, Microsoft, AWS, Linux Foundation, IBM, or Red Hat.
Verifiable Certification : At least one recognized cloud professional / developer certification (AWS/Google/Microsoft).
Functional Areas: Other
Read full job description