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Hello there! Infrrd here — it's pronounced In-fur-d.
We're an Enterprise AI company that uses AI and Machine Learning to help global
organisations automate data extraction from complex documents — invoices, contracts,
insurance claims, and more. Our customers are some of the world's leading enterprises in
mortgage, insurance, and manufacturing, and we've been profitable and independent since
2016.
Job Purpose:
To build the automated systems that measure, diagnose, and improve document extraction and classification accuracy at scale. This role eliminates the manual bottleneck in the accuracy improvement cycle — replacing brute-force prompt iteration with agentic evaluation pipelines, automated feedback loops, and intelligent internal tooling. The engineer in this role makes the entire team faster without proportionally increasing headcount, and enables systematic accuracy improvement as a repeatable engineering capability rather than an ad-hoc effort.
Job Duties and Responsibilities:
Required Qualifications:
BE / MTech in Computer Science, AI/ML, Computational Data Science (CDS), Computer Science & Automation (CSA), or related discipline.
Experience Range:
8-10 years total; minimum 4-6 years building production LLM or AI systems; minimum 4-6 years in evaluation, quality measurement, or accuracy improvement work.
Must-have Skills:
Would-be-nice Skills:
Working Knowledge (Tools):
Python, FastAPI / Flask, MongoDB, Git, GitHub Actions / Jenkins, LLM APIs (OpenAI / Anthropic / Gemini or equivalent), LangChain / LlamaIndex, Pandas / Numpy, Pytest, Docker
General Knowledge:
NLP concepts, LLM prompt engineering patterns, REST APIs, RAG pipelines, vector databases, JSON data structures
Thorough Knowledge:
Agentic workflow design and orchestration, LLM evaluation metrics (F1 / Precision / Recall, per-class analysis, confusion matrices), production Python systems (error handling, retries, logging, monitoring), NoSQL aggregations, systematic A/B testing for model changes, prompt optimization methodology
Interview Process:
By submitting your application, you agree that your personal information and resume may be collected, processed, and stored by us for recruitment purposes, including consideration for future roles.
Job ID: 147491623
Skills:
bedrock , containerization , Ml, Git, Kubernetes, Python, AWS, LLM Orchestration frameworks, Langchain, embedding models, AI technologies, Llm, LangGraph, RAGs, Agentic frameworks, Generative AI models
Skills:
FastAPI or Flask, MongoDB or equivalent NoSQL, Git code reviews, Agentic pipeline design, LLM API experience, Evaluation framework design for LLM systems, Production-grade Python
Skills:
FastAPI, Python, ML Data Concepts, AI Agentic Frameworks, Cloud Tooling
Skills:
Github, Datadog, New Relic, Azure Functions, Docker, FastAPI, Python, Azure DevOps, LangChain, AWS Bedrock, Pinecone, Azure OpenAI, Semantic Kernel, OpenAI API, AutoGen, OpenTelemetry, FAISS, Google Vertex AI, Azure AI Studio, Azure AI Search, Application Insights, Weaviate, Azure Monitor
Skills:
Tensorflow, Django, Rest Apis, AWS, Pytorch, MySQL, FastAPI, Python, Azure, Gcp, Git, Flask, PostgreSQL, MongoDB, LangChain, OpenAI, AI tools and technologies, Hugging Face, microservices architecture
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