Skip to content

Commit 273df92

Browse files
committed
I updated the AI Dev Hub index page with the following changes:
- Added additional resources and links for AI learning materials - Added brief descriptions for each section and guide to the page - Add 2 image files used in the AI Dev Hub page - Fixed broken links that went to Colab notebooks I worked to follow Michelle’s previous layout while adding new content. Please let me know any feedback on my submitted changes. Thanks. JAWS
1 parent 373337b commit 273df92

File tree

3 files changed

+65
-22
lines changed

3 files changed

+65
-22
lines changed

content/develop/ai/index.md

Lines changed: 65 additions & 22 deletions
Original file line numberDiff line numberDiff line change
@@ -16,7 +16,18 @@ Redis stores and indexes vector embeddings that semantically represent unstructu
1616
| :-- | :-- | :-- |
1717
| {{<image filename="images/ai-cube.png" alt="AI Redis icon.">}}[Redis vector database quick start guide]({{< relref "/develop/get-started/vector-database" >}}) |{{<image filename="images/ai-brain.png" alt="AI Redis icon.">}} [Retrieval-Augmented Generation quick start guide]({{< relref "/develop/get-started/rag" >}}) | {{<image filename="images/ai-lib.png" alt="AI Redis icon.">}}[Redis vector Python client library documentation]({{< relref "/integrate/redisvl/overview/" >}}) |
1818

19-
#### Overview
19+
## Overview
20+
21+
This page organized into a few sections depending on what you’re trying to do:
22+
* **Docs** - The comprehensive reference section for every feature, API, and setting. It’s your source for detailed, technical information to support any level of development.
23+
* **Concepts** - Explanations of foundational ideas and core principles to help you understand the "why" behind the product’s features and design.
24+
* **Quickstarts** - Short, focused guides to get you up and running with key features or workflows in minutes.
25+
* **Tutorials** - In-depth walkthroughs that dive deeper into specific use cases or processes. These step-by-step guides help you master essential tasks and workflows.
26+
* **Integrations** - Guides and resources to help you connect and use the product with popular tools, frameworks, or platforms.
27+
* **Benchmarks** - Performance comparisons and metrics to demonstrate how the product performs under various scenarios. This helps you understand its efficiency and capabilities.
28+
* **Best practices** - Recommendations and guidelines for maximizing effectiveness and avoiding common pitfalls. This section equips you to use the product effectively and efficiently.
29+
30+
## Docs
2031

2132
1. [**Create a vector index**]({{< baseurl >}}/develop/interact/search-and-query/advanced-concepts/vectors#create-a-vector-index): Redis maintains a secondary index over your data with a defined schema (including vector fields and metadata). Redis supports [`FLAT`]({{< baseurl >}}/develop/interact/search-and-query/advanced-concepts/vectors#flat-index) and [`HNSW`]({{< baseurl >}}/develop/interact/search-and-query/advanced-concepts/vectors#hnsw-index) vector index types.
2233
1. [**Store and update vectors**]({{< baseurl >}}/develop/interact/search-and-query/advanced-concepts/vectors#store-and-update-vectors): Redis stores vectors and metadata in hashes or JSON objects.
@@ -27,56 +38,88 @@ Redis stores and indexes vector embeddings that semantically represent unstructu
2738

2839
Learn to perform vector search and use gateways and semantic caching in your AI/ML projects.
2940

30-
| Search | AI Gateways | Semantic Caching |
41+
| Search | LLM memory | Semantic caching | Semantic routing | AI Gateways |
3142
| :-- | :-- | :-- |
32-
| {{<image filename="images/ai-search.png" alt="AI Redis icon.">}}[Vector search guide]({{< relref "/develop/interact/search-and-query/query/vector-search" >}}) | {{<image filename="images/ai-model.png" alt="AI Redis icon.">}}[Deploy an enhanced gateway with Redis](https://redis.io/blog/ai-gateways-what-are-they-how-can-you-deploy-an-enhanced-gateway-with-redis/) | {{<image filename="images/ai-brain-2.png" alt="AI Redis icon.">}}[Semantic caching for faster, smarter LLM apps](https://redis.io/blog/what-is-semantic-caching) |
33-
34-
## Ecosystem integrations
35-
36-
* [Amazon Bedrock setup guide]({{< relref "/integrate/amazon-bedrock/set-up-redis" >}})
37-
* [LangChain Redis Package: Smarter AI apps with advanced vector storage and faster caching](https://redis.io/blog/langchain-redis-partner-package/))
38-
* [Redis Cloud available on Vercel](https://redis.io/blog/redis-cloud-now-available-on-vercel-marketplace/)
39-
* [Create a Redis Cloud database with the Vercel integration]({{< relref "/operate/rc/cloud-integrations/vercel" >}})
40-
* [Building a RAG application with Redis and Spring AI](https://redis.io/blog/building-a-rag-application-with-redis-and-spring-ai/)
41-
* [Deploy GenAI apps faster with Redis and NVIDIA NIM](https://redis.io/blog/use-redis-with-nvidia-nim-to-deploy-genai-apps-faster/)
42-
* [Building LLM Applications with Kernel Memory and Redis](https://redis.io/blog/building-llm-applications-with-kernel-memory-and-redis/)
43+
| {{<image filename="images/ai-search.png" alt="AI Redis icon.">}}[Vector search guide]({{< relref "/develop/interact/search-and-query/query/vector-search" >}}) | {{<image filename="images/ai-LLM-memory.png" alt="LLM memory icon.">}}[Store memory for LLMs](https://redis.io/blog/level-up-rag-apps-with-redis-vector-library/) | {{<image filename="images/ai-brain-2.png" alt="AI Redis icon.">}}[Semantic caching for faster, smarter LLM apps](https://redis.io/blog/what-is-semantic-caching) | {{<image filename="images/ai-semantic-routing.png" alt="Semantic routing icon.">}}[Semantic routing chooses the best tool](https://redis.io/blog/level-up-rag-apps-with-redis-vector-library/) | {{<image filename="images/ai-model.png" alt="AI Redis icon.">}}[Deploy an enhanced gateway with Redis](https://redis.io/blog/ai-gateways-what-are-they-how-can-you-deploy-an-enhanced-gateway-with-redis/) | {{<image filename="images/ai-brain-2.png" alt="AI Redis icon.">}}[Semantic caching for faster, smarter LLM apps](https://redis.io/blog/what-is-semantic-caching) |
4344

45+
## Quickstarts
4446

45-
## Examples
46-
47-
Get started with the following Redis Python notebooks.
47+
Quickstarts or recipes are for when you are trying to build specific functionality. For example, you might want to do RAG with LangChain or set up LLM memory for you AI agent. Get started with the following Redis Python notebooks.
4848

4949
* [The place to start if you are brand new to Redis](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/redis-intro/00_redis_intro.ipynb)
5050

5151
#### Hybrid and vector search
52+
Vector search retrieves results based on the similarity of high-dimensional numerical embeddings, while hybrid search combines this with traditional keyword or metadata-based filtering for more comprehensive results.
5253
* [Implementing hybrid search with Redis](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/vector-search/02_hybrid_search.ipynb)
5354
* [Vector search with Redis Python client](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/vector-search/00_redispy.ipynb)
5455
* [Vector search with Redis Vector Library](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/vector-search/01_redisvl.ipynb)
5556

5657
#### RAG
58+
Retrieval Augmented Generation (aka RAG) is a technique to enhance the ability of an LLM to respond to user queries. The retrieval part of RAG is supported by a vector database, which can return semantically relevant results to a user’s query, serving as contextual information to augment the generative capabilities of an LLM.
5759
* [RAG from scratch with the Redis Vector Library](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/01_redisvl.ipynb)
5860
* [RAG using Redis and LangChain](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/02_langchain.ipynb)
5961
* [RAG using Redis and LlamaIndex](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/03_llamaindex.ipynb)
6062
* [Advanced RAG with redisvl](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/04_advanced_redisvl.ipynb)
6163
* [RAG using Redis and Nvidia](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/05_nvidia_ai_rag_redis.ipynb)
6264
* [Utilize RAGAS framework to evaluate RAG performance](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/06_ragas_evaluation.ipynb)
65+
* [Vector search with Azure](https://techcommunity.microsoft.com/blog/azuredevcommunityblog/vector-similarity-search-with-azure-cache-for-redis-enterprise/3822059)
66+
* [RAG with Spring AI](https://redis.io/blog/building-a-rag-application-with-redis-and-spring-ai/)
67+
* [RAG with Vertex AI](https://github.com/redis-developer/gcp-redis-llm-stack/tree/main)
6368
* [Notebook for additional tips and techniques to improve RAG quality](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/04_advanced_redisvl.ipynb)
6469

65-
#### LLM session management
70+
#### Agents
71+
AI agents can act autonomously to plan and execute tasks for the user.
72+
* [Notebook to get started with lang-graph and agents](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/agents/00_langgraph_redis_agentic_rag.ipynb)
73+
* [Build a collaborative movie recommendation system using Redis for data storage, CrewAI for agent-based task execution, and LangGraph for workflow management.](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/agents/01_crewai_langgraph_redis.ipynb)
74+
75+
#### LLM memory
76+
LLMs are stateless. To maintain context within a conversation chat sessions must be stored and resent to the LLM. Redis manages the storage and retrieval of chat sessions to maintain context and conversational relevance.
6677
* [LLM session manager with semantic similarity](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/llm-session-manager/00_llm_session_manager.ipynb)
6778
* [Handle multiple simultaneous chats with one instance](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/llm-session-manager/01_multiple_sessions.ipynb)
6879

6980
#### Semantic caching
81+
An estimated 31% of LLM queries are potentially redundant. Redis enables semantic caching to help cut down on LLM costs quickly.
7082
* [Build a semantic cache using the Doc2Cache framework and Llama3.1](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/semantic-cache/doc2cache_llama3_1.ipynb)
7183
* [Build a semantic cache with Redis and Google Gemini](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/semantic-cache/semantic_caching_gemini.ipynb)
7284

73-
#### Agents
74-
* [Notebook to get started with lang-graph and agents](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/agents/00_langgraph_redis_agentic_rag.ipynb)
75-
* [Notebook to get started with lang-graph and agents](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/agents/01_crewai_langgraph_redis.ipynb)
85+
#### Computer vision
86+
Build a facial recognition system using the Facenet embedding model and RedisVL.
87+
* [Facial recognition](https://github.com/redis-developer/redis-ai-resources/blob/main/python-recipes/computer-vision/00_facial_recognition_facenet.ipynb)
7688

7789
#### Recommendation systems
78-
* [Intro content filtering example with redisvl](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/recommendation-systems/content_filtering.ipynb)
79-
* [Intro collaborative filtering example with redisvl](https://colab.research.google.com/github/redis-developer/redis-ai-resources/blob/main/python-recipes/recommendation-systems/collaborative_filtering.ipynb)
90+
* [Intro content filtering example with redisvl](https://github.com/redis-developer/redis-ai-resources/blob/main/python-recipes/recommendation-systems/00_content_filtering.ipynb)
91+
* [Intro collaborative filtering example with redisvl](https://github.com/redis-developer/redis-ai-resources/blob/main/python-recipes/recommendation-systems/01_collaborative_filtering.ipynb)
92+
93+
## Tutorials
94+
Need a deeper-dive through different use cases and topics?
95+
96+
#### RAG
97+
* [Agentic RAG](https://github.com/redis-developer/agentic-rag) - A tutorial focused on agentic RAG with LlamaIndex and Amazon Bedrock
98+
* [RAG on Vertex AI](https://github.com/redis-developer/gcp-redis-llm-stack/tree/main) - A RAG tutorial featuring Redis with Vertex AI
99+
* [RAG workbench](https://github.com/redis-developer/redis-rag-workbench) - A development playground for exploring RAG techniques with Redis.
100+
101+
#### Recommendation system
102+
* [Recommendation systems w/ NVIDIA Merlin & Redis](https://github.com/redis-developer/redis-nvidia-recsys) - Three examples, each escalating in complexity, showcasing the process of building a realtime recsys with NVIDIA and Redis
103+
* [Redis product search](https://github.com/redis-developer/redis-product-search) - Build a real-time product search engine using features like full-text search, vector similarity, and real-time data updates.
104+
105+
## Ecosystem integrations
80106

107+
* [Amazon Bedrock setup guide]({{< relref "/integrate/amazon-bedrock/set-up-redis" >}})
108+
* [LangChain Redis Package: Smarter AI apps with advanced vector storage and faster caching](https://redis.io/blog/langchain-redis-partner-package/)
109+
* [LlamaIndex integration for Redis as a vector store](https://gpt-index.readthedocs.io/en/latest/examples/vector_stores/RedisIndexDemo.html)
110+
* [Redis Cloud available on Vercel](https://redis.io/blog/redis-cloud-now-available-on-vercel-marketplace/)
111+
* [Create a Redis Cloud database with the Vercel integration]({{< relref "/operate/rc/cloud-integrations/vercel" >}})
112+
* [Building a RAG application with Redis and Spring AI](https://redis.io/blog/building-a-rag-application-with-redis-and-spring-ai/)
113+
* [Deploy GenAI apps faster with Redis and NVIDIA NIM](https://redis.io/blog/use-redis-with-nvidia-nim-to-deploy-genai-apps-faster/)
114+
* [Building LLM Applications with Kernel Memory and Redis](https://redis.io/blog/building-llm-applications-with-kernel-memory-and-redis/)
115+
* [DocArray integration of Redis as a vector database by Jina AI](https://docs.docarray.org/user_guide/storing/index_redis/)
81116

117+
## Benchmarks
118+
See how we stack up against the competition.
119+
* [Benchmarking results for vector databases](https://redis.io/blog/benchmarking-results-for-vector-databases/)
120+
* [1 billion vectors](https://redis.io/blog/redis-8-0-m02-the-fastest-redis-ever/)
82121

122+
## Best practices
123+
See how leaders in the industry are building their RAG apps.
124+
* [Advanced RAG example](https://github.com/redis-developer/redis-ai-resources/blob/main/python-recipes/RAG/04_advanced_redisvl.ipynb)
125+
* [get better RAG responses with Ragas](https://redis.io/blog/get-better-rag-responses-with-ragas/)

static/images/ai-LLM-memory.png

1.13 KB
Loading

static/images/ai-semantic-routing.png

1.68 KB
Loading

0 commit comments

Comments
 (0)