AI Developer
Indexed description
The successful candidate will design end-to-end AI workflows, implement vector search solutions, optimize retrieval pipelines, and develop machine learning models for anomaly detection. The role also requires a strong understanding of AI governance, model lifecycle management, and Responsible AI practices to ensure scalable, secure, and production-ready solutions.
Key Responsibilities
- Design and develop AI-powered solutions using Large Language Models (LLMs) to support automation, root cause analysis, incident summarization, and intelligent workflow orchestration.
- Build machine learning models that identify anomalies and patterns within operational and infrastructure data.
- Integrate AI capabilities into existing enterprise systems to improve monitoring, reporting, and business process automation.
- Develop and optimize Retrieval-Augmented Generation (RAG) pipelines, including chunking strategies, embedding generation, and semantic retrieval.
- Configure and maintain vector databases to support high-performance similarity search and contextual information retrieval.
- Collaborate with cross-functional stakeholders to gather requirements, validate AI solutions, and continuously improve model performance.
- Ensure AI applications comply with Responsible AI principles, governance standards, and documentation requirements.
- Support the deployment, monitoring, and ongoing optimization of AI and machine learning models in production environments.
- Demonstrated experience developing and deploying AI-powered applications in production environments.
- Hands-on experience building transformer-based workflows, prompt engineering solutions, and LLM-driven automation.
- Experience implementing Retrieval-Augmented Generation (RAG) architectures using modern retrieval and context management techniques.
- Practical experience with vector databases and semantic search technologies, including indexing, metadata filtering, and data partitioning strategies.
- Experience integrating AI solutions with enterprise applications and operational platforms.
- Knowledge of the complete machine learning lifecycle, including model development, evaluation, deployment, and production monitoring.
Core Technical Expertise
- Large Language Models (LLMs) and Generative AI technologies.
- Transformer architectures, embeddings, prompt engineering, and model optimization techniques.
- Retrieval pipelines, vector indexing, and semantic search methodologies.
- Retrieval-Augmented Generation (RAG) architectures and context optimization strategies.
- Vector databases, similarity search, metadata filtering, and indexing techniques.
- Embedding generation, document chunking strategies, and retrieval frameworks such as LangChain, LlamaIndex, or similar technologies.
- Machine learning concepts, including supervised, unsupervised, and deep learning approaches.
- Feature engineering and data preparation using Python-based machine learning libraries.
- Time-series forecasting techniques and predictive modeling.
- Supervised learning algorithms for anomaly detection and predictive analytics.
- Model deployment using containerization, orchestration platforms, and MLOps tools.
- Monitoring model performance, drift detection, observability, and automated AI/ML pipelines.
- Strong analytical and problem-solving skills with the ability to develop practical AI solutions for complex business challenges.
- Proficiency in Python and modern AI/ML development frameworks.
- Ability to design scalable, production-ready AI architectures.
- Experience working collaboratively within cross-functional engineering and product teams.
- Strong communication skills with the ability to explain technical concepts to both technical and non-technical stakeholders.
- Commitment to AI governance, security, and Responsible AI best practices.
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