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Library for performing trends analysis via LLMs.

Project description

Trend Analyzer

Problem statement

It's time consuming to understand the changes happening in competitive / audience / creative landscapes without relying on heave pre-processing and data analysis techniques.

Solution

trend-analyzer uses power of large language models to analyze trends documents loaded to vector store and make the available for querying with a simple chat bot interface.

Deliverable (implementation)

trend-analyzer is implemented as a:

  • library - Use it in your projects with a help of TrendsAnalyzer class.
  • CLI tool - trend-analyzer tool is available to be used in the terminal.
  • HTTP endpoint - trend-analyzer can be easily exposed as HTTP endpoint.
  • Langchain tool - integrated trend-analyzer into your Langchain applications.

Deployment

Prerequisites

  • Python 3.11+

  • A GCP project with billing account attached

  • Service account created and service account key downloaded in order to write data to BigQuery.

    • Once you downloaded service account key export it as an environmental variable

      export GOOGLE_APPLICATION_CREDENTIALS=path/to/service_account.json
      
    • If authenticating via service account is not possible you can authenticate with the following command:

      gcloud auth application-default login
      
  • API key to access to access Google Gemini.
    • Once you created API key export it as an environmental variable

      export GOOGLE_API_KEY=<YOUR_API_KEY_HERE>
      

Installation

Install trend-analyzer with pip install trend-analyzer command.

Usage

This section is focused on using trend-analyzer as a CLI tool. Check library, http endpoint, langchain tool sections to learn more.

Once trend-analyzer is installed you can call it:

trend-analyzer 'YOUR_QUESTION_HERE' \
  --llm gemini \
  --llm.model=gemini-1.5-flash \
  --output-type csv \
  --output-destination sample_results

where:

  • YOUR_QUESTION_HERE - trends related question you want to ask,
  • --llm gemini - type of large language model (currently only Google Gemini is supported)
  • --llm.model=gemini-1.5-flash - any parameters to initialize selected LLM
  • --output-type csv - type of output
  • --output-destination sample_results - name of output table or file.

Disclaimer

This is not an officially supported Google product.

Project details


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trend-analyzer-0.1.1.dev2.tar.gz (9.4 kB view hashes)

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