Fake feature test: LLM NLP for Querying Neo4j KG using an English->Cypher Translation Layer #775
Labels
new feature
Use this for new functionality, for changes about existing features use 'enhancement'.
UX & UI
User experience and user interface updates
Background
NeoDash has released an update introducing the use of Latent Linguistic Modelling (LLM) Natural Language Processing (NLP) for querying a Neo4j Knowledge Graph (KG) using an English->Cypher translation layer. This innovative feature aligns with Keywan's previous interests and differs from our GPT summary Fake Feature Test (FFT), as it functions as a translation layer rather than a summariser.
You can read more about this feature:
Action Plan
Conduct a Fake Feature Test (FFT), ideally in the KnetMiner 6.0 release. This will involve integrating Google Analytics to assess the success probability. It's important to note that the numbers from this test should serve as a rough guide rather than a definitive result.
After running the FFT, we can observe the outcomes and decide our next steps accordingly. The completion of this step should also provide us with useful insights that can help us advance the implementation of LLM NLP, assuming the FFT was successful.
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