As an Agentic AI Engineer, you
will sit at the intersection of applied AI research and production engineering.
You will architect agent systems that use LLMs as reasoning engines, integrate
external tools and APIs, and operate reliably in dynamic, open-ended
environments.
• Architect
multi-agent systems using frameworks such as LangGraph, AutoGen, CrewAI, or
custom orchestration layers, with a focus on reliability and observability.
• Design and implement
tool-use pipelines — including function calling, MCP integrations, browser
agents, and code interpreters — that enable models to interact with real-world
systems.
• Build memory systems
(short-term, episodic, and semantic) and context management strategies to
support long-horizon task completion.
• Define and run
evaluation frameworks for agentic performance: task completion rates, error
propagation, cost-efficiency, and latency benchmarks.
• Collaborate with
product, research, and data teams to translate business goals into concrete
agent specifications and acceptance criteria.
• Establish
guardrails, safety checks, and human-in-the-loop escalation paths to ensure
agents behave predictably in edge cases.
• Monitor deployed
agents in production using tracing tools (LangSmith, Weights & Biases,
custom observability stacks) and iterate based on failure analysis.
• Stay current with
the rapidly evolving agentic AI landscape and advocate for adoption of relevant
advances internally.
Core
Required
Python (advanced)
LLM APIs
Agent frameworks
RAG & vector stores
Tool / function calling
Prompt engineering
REST & async APIs
Docker / cloud
Evaluation design
Git & CI/CD
Skills Required
- Strong Python (OOP, data structures)
- Django/Flask/FastAPI
- REST APIs, async programming
- PostgreSQL/MySQL/MongoDB
- Git, CI/CD
What We Do
AlgoLeap specializes in AI-powered software solutions, digital product engineering, and IT consulting services, focusing on digital transformation and AI-driven innovation.









