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README.md
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README.md
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@ -85,8 +85,32 @@ Pulsar provides two types of connectivity:
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is not semantically encoded, so the decoder will see wrapped lines as
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is not semantically encoded, so the decoder will see wrapped lines as
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space-separated.
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space-separated.
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- `vector-write-milvus` - Takes vector-entity mappings and records them
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- `vector-write-milvus` - Takes vector-entity mappings and records them
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in the graph.
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in the vector embeddings store.
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## Getting started
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## Getting started
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TBD
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A good starting point is to try to run one of the Docker Compose files.
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This can be run on Linux or a Macbook (maybe Windows - not tested).
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There are 4 docker compose files to get you started with one of the
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following LLM types:
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- VertexAI on Google Cloud
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- Claud Anthropic
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- Azure serverless endpoint
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- An Ollama-hosted LLM for an LLM running on local hardware
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Using the Docker Compose you should be able to...
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- Run enough components to start a Graph RAG indexing pipeline. This includes
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stores, LLM interfaces and processing components.
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- Check the logs to ensure that things started up correctly
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- Load some test data and starting indexing
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- Check the graph to see that some data has started to load
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- Run a query which uses the vector and graph stores to produce a prompt
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which is answered using an LLM.
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If you get a Graph RAG response to the query, everything is working
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### Docker compose
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TBD
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