AI Engineer
Manila - Philippines
Job Summary
The AI Engineer requires hands-on expertise in developing and deploying Large Language Models
Retrieval Augmented Generation pipelines and Machine Learning models that support automation
incident analysis and operational efficiency. The AI Engineer must demonstrate the ability to design
end-to-end AI workflows configure vector databases implement chunking strategies for retrieval and
build ML models that detect anomalies in logs and system events. The capability includes strong
proficiency in Python model lifecycle management prompt engineering responsible AI practices and
integrating AI components into production environments.
Job Description:
Build LLM modules for RCA Incident Summaries correlation logic and remediation workflows
using operational data sources such as SOPs ELK logs and ServiceNow tickets.
Develop machine learning models to detect anomalies in system and infrastructure logs.
Integrate AI solutions with existing platforms to enhance monitoring reporting and
automation capabilities.
Ensure that AI models follow responsible AI practices governance requirements and
documentation standards.
Collaborate with cross functional teams to refine AI requirements support testing and improve
model outputs.
Requirements:
Relevant Work Experience: The role requires practical experience in developing and deploying
AI systems including:
Hands-on experience designing transformer based workflows dynamic prompts and
LLM driven automation for operational use cases such as incident analysis and RCA.
Experience building tokenization pipelines embeddings prompt engineering and fine
tuning using frameworks such as Hugging Face LangChain and OpenAI libraries.
Experience deploying and configuring vector databases for semantic search including
HNSW indexing metadata filtering and sharding using platforms such as Milvus
Pinecone or Azure AI Search.
Experience implementing Retrieval Augmented Generation pipelines with chunking
strategies such as semantic chunking sliding window or hierarchical chunking.
Experience integrating LLM workflows with enterprise systems such as ELK Stack SOP
repositories and ServiceNow tickets.
Experience with ML model lifecycle management including training evaluation
Required Skills:
Relevant Work Experience: The role requires practical experience in developing and deploying AI systems including: Hands-on experience designing transformer based workflows dynamic prompts and LLM driven automation for operational use cases such as incident analysis and RCA.
Required Education:
Relevant Work Experience: The role requires practical experience in developing and deployingAI systems including:Hands-on experience designing transformer based workflows dynamic prompts andLLM driven automation for operational use cases such as incident analysis and RCA.