How Rakuten AI for Business AI Builds Production-Ready Agents with LangGraph
See how Rakuten AI for Business built their internal generative AI platforms serving 70+ businesses across Japan. Learn their approach to democratizing AI development, enabling teams to create and share agents with minimal coding using LangGraph's flexible architecture.
Key highlights:
- Launched an AI platform that supports 70+ businesses across Rakuten
- Enabled non-technical teams to create AI agents with minimal coding
- Achieved faster time-to-market than competing internal initiatives
- Replaced intuition-driven decisions with structured agent evaluations
- Maintained model flexibility to avoid vendor lock-in
🔗 Discover more agent engineer stories: langchain.com/customers
Watch on YouTube ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
Playlist
Uploads from LangChain · LangChain · 0 of 60
← Previous
Next →
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
Chat With Your Documents Using LangChain + JavaScript
LangChain
LangChain SQL Webinar
LangChain
LangChain "OpenAI functions" Webinar
LangChain
LangSmith Launch
LangChain
LangChain x Pinecone: Supercharging Llama-2 with RAG
LangChain
LangChain Expression Language
LangChain
Building LLM applications with LangChain with Lance
LangChain
Benchmarking Question/Answering Over CSV Data
LangChain
LangChain "RAG Evaluation" Webinar
LangChain
Fine-tuning in Your Voice Webinar
LangChain
Tabular Data Retrieval
LangChain
Building an LLM Application with Audio by AssemblyAI
LangChain
Superagent Deepdive Webinar
LangChain
Lessons from Deploying LLMs with LangSmith
LangChain
Shortwave Assistant Deepdive Webinar
LangChain
Cognitive Architectures for Language Agents
LangChain
Effectively Building with LLMs in the Browser with Jacob
LangChain
Data Privacy for LLMs
LangChain
"Theory of Mind" Webinar with Plastic Labs
LangChain
LangChain Templates
LangChain
Using Natural Language to Query Postgres with Jacob
LangChain
Building a Research Assistant from Scratch
LangChain
Benchmarking RAG over LangChain Docs
LangChain
Skeleton-of-Thought: Building a New Template from Scratch
LangChain
Benchmarking Methods for Semi-Structured RAG
LangChain
LangSmith Highlights: Getting Started
LangChain
LangSmith Highlights: Debugging
LangChain
LangSmith Highlights: Datasets
LangChain
LangSmith Highlights: Evaluation
LangChain
LangSmith Highlights: Human Annotation
LangChain
LangSmith Highlights: Monitoring
LangChain
LangSmith Highlights: Hub
LangChain
SQL Research Assistant
LangChain
Getting Started with Multi-Modal LLMs
LangChain
Build a Full Stack RAG App With TypeScript
LangChain
Auto-Prompt Builder (with Hosted LangServe)
LangChain
LangChain v0.1.0 Launch: Introduction
LangChain
LangChain v0.1.0 Launch: Observability
LangChain
LangChain v0.1.0 Launch: Integrations
LangChain
LangChain v0.1.0 Launch: Composability
LangChain
LangChain v0.1.0 Launch: Streaming
LangChain
LangChain v0.1.0 Launch: Output Parsing
LangChain
LangChain v0.1.0 Launch: Retrieval
LangChain
LangChain v0.1.0 Launch: Agents
LangChain
Build and Deploy a RAG app with Pinecone Serverless
LangChain
Hosted LangServe + LangChain Templates
LangChain
LangGraph: Intro
LangChain
LangGraph: Agent Executor
LangChain
LangGraph: Chat Agent Executor
LangChain
LangGraph: Human-in-the-Loop
LangChain
LangGraph: Dynamically Returning a Tool Output Directly
LangChain
LangGraph: Respond in a Specific Format
LangChain
LangGraph: Managing Agent Steps
LangChain
LangGraph: Force-Calling a Tool
LangChain
LangGraph: Multi-Agent Workflows
LangChain
Streaming Events: Introducing a new `stream_events` method
LangChain
Building a web RAG chatbot: using LangChain, Exa (prev. Metaphor), LangSmith, and Hosted Langserve
LangChain
OpenGPTs
LangChain
Open Source RAG with Nomic's New Embedding Model (and ChromaDB and Ollama)
LangChain
LangGraph: Persistence
LangChain
More on: Agent Foundations
View skill →Related AI Lessons
⚡
⚡
⚡
⚡
The Future of Human Creativity in the Age of AI
Medium · AI
The Boring “Multi-Agent” Loop That Quietly Earns $2,000/Month (With Zero Maintenance)
Medium · Machine Learning
Building OMEGA — A Cinematic Multi-Agent IPL Strategy Engine Powered by Google Gemini
Dev.to · Omkar Rane
🏏 Captain Cool — Orchestrating a Google Gemini Multi-Agent Debate Loop for Live IPL Strategy
Dev.to · siddhi bhosale
🎓
Tutor Explanation
DeepCamp AI