Mario Fusco
Agentic AI Systems for Critical Workloads
#1about 2 minutes
Why Java is a strong choice for enterprise AI applications
LangChain4j brings AI capabilities to Java, which is ideal for building enterprise-grade systems that require transactions, observability, and security.
#2about 3 minutes
Understanding the core components of agentic AI systems
Agentic AI systems consist of a core LLM, tools, memory, and orchestration, with the key distinction being between programmatic workflows and autonomous agents.
#3about 3 minutes
Practical challenges when building with local LLMs
Developing with local LLMs involves significant trial and error in model selection and prompt engineering, and requires handling issues like tool hallucination.
#4about 5 minutes
Building predictable AI systems with the workflow pattern
The workflow pattern uses programmatic code to orchestrate specialized agents in sequences, parallel tasks, or a mixture of experts for predictable outcomes.
#5about 6 minutes
Strategies for testing non-deterministic AI applications
Testing LLM-based systems requires new approaches like using sample-based evaluation, custom scoring functions, and strategies such as cosine distance or LLM-as-a-judge.
#6about 7 minutes
Comparing the workflow pattern to the agent pattern
While workflows offer predictability and easier debugging, the agent pattern provides greater flexibility by allowing agents to autonomously decide which tools to use.
#7about 3 minutes
Creating advanced agents that use external tools
Agents can autonomously combine LLM capabilities with external tools like web services or search engines to accomplish complex, multi-step tasks.
#8about 2 minutes
The future of agent orchestration in LangChain4j
Upcoming features include integration with the AITO protocol and a new programmatic API for composing complex agent interactions like sequences and loops.
Related jobs
Jobs that call for the skills explored in this talk.
Featured Partners
Related Videos
Create AI-Infused Java Apps with LangChain4j
Daniel Oh, Kevin Dubois
AI Agents Graph: Your following tool in your Java AI journey
Alex Soto
Beyond Chatbots: How to build Agentic AI systems
Philipp Schmid
On a Secret Mission: Developing AI Agents
Jörg Neumann
Infusing Generative AI in your Java Apps with LangChain4j
Kevin Dubois
Supercharge Agentic AI Apps: A DevEx-Driven Approach to Cloud-Native Scaffolding
Daniel Oh
Agents for the Sake of Happiness
Thomas Dohmke
Agentic AI - From Theory to Practice: Developing Multi-Agent AI Systems on Azure
Ricardo
From learning to earning
Jobs that call for the skills explored in this talk.


Senior Backend Engineer – AI Integration (m/w/x)
chatlyn GmbH
Vienna, Austria
Senior
JavaScript
AI-assisted coding tools
Agentic AI Architect - Python, LLMs & NLP
FRG Technology Consulting
Intermediate
Azure
Python
Machine Learning
Full-Stack Engineer - AI Agentic Systems
autonomous-teaming
Potsdam, Germany
Remote
Linux
Redis
React
Python
+7
AI Multi-Agent Systems Architect (m/w/d)
autonomous-teaming
Potsdam, Germany
Remote
API
Azure
DevOps
Python
+3
Agentic-AI Solutions Designer
Bluecallom
Zürich, Switzerland
Junior
API
Python
Natural Language Processing
AI Engineer (Agentic Systems & Infrastructure)
PDR.cloud GmbH
Berga/Elster, Germany
Remote
€50K
API
Azure
Python
+6
Copy of Full-Stack Engineer - AI Agentic Systems
autonomous-teaming
München, Germany
Remote
Linux
Redis
React
Python
+7




