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Aligned Automation - Artificial Intelligence Engineer

ALIGNED AUTOMATION SERVICES PRIVATE LIMITED
Multiple Locations
3 - 7 Years
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4.6white-divider12+ Reviews

Posted on: 13/11/2025

Job Description

Description :


Job Description - AI Engineer


We are seeking an experienced AI Engineer with expertise in Python and prompt engineering. The ideal candidate will have a minimum of 2+ years of relevant experience, a good understanding of LLMs, LangGraph, LangChain, and AutoGen is a professional who designs, develops, and deploys intelligent systems utilizing large language models (LLMs) and advanced AI frameworks.


Python Proficiency :


- Strong programming skills in Python are fundamental for developing and implementing AI solutions.


Prompt Engineering :


- Expertise in crafting effective prompts to guide LLMs towards generating desired and accurate responses, often involving techniques like prompt chaining and optimization.


LLM Application Development :


- Hands-on experience in building applications powered by various LLMs (e.g., GPT, LLaMA, Mistral). This includes understanding LLM architecture, memory management, and function/tool calling.


Agentic AI Frameworks :


- Proficiency with frameworks designed for building AI agents and multi-agent systems, such as :


- LangChain : A framework for developing applications powered by language models, enabling chaining of components and integration with various tools and data sources.


- LangGraph : An extension of LangChain specifically designed for building stateful, multi-actor applications using LLMs, often visualized as a graph of interconnected nodes representing agents or logical steps.


- AutoGen : A Microsoft framework that facilitates multi-agent collaboration, allowing specialized agents to work together to solve complex problems through task decomposition and recursive feedback loops.


Retrieval-Augmented Generation (RAG) :


- Experience in implementing and optimizing RAG pipelines, which combine LLMs with external knowledge bases (e.g., vector databases) to enhance generation with retrieved information.


Deployment and MLOps :


- Practical knowledge of deploying AI models and agents into production environments, including containerization (Docker), orchestration (Kubernetes), cloud platforms (AWS, Azure, GCP), and CI/CD pipelines.


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