clientX / app.py
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import gradio as gr
# from langchain.vectorstores import Chroma
'''
https://huggingface.co/spaces/kevinhug/clientX
'''
'''
SIMILAR VECTOR DB SEARCH
'''
import chromadb
client = chromadb.PersistentClient(path="chroma.db")
db = client.get_collection(name="banks")
def similar(issue):
global db
docs = db.query(query_texts=issue, n_results=5)
return docs
'''
FINE TUNE LLM LIKE SCORE
'''
from fastai.text.all import *
import pathlib
p=pathlib.Path('./banks_txt_like.pkl').resolve()
'''
NotImplementedError: cannot instantiate ‘WindowsPath’ on your system
'''
import platform
plt = platform.system()
if plt == 'Windows':
pathlib.PosixPath = pathlib.WindowsPath
else:
pathlib.WindowsPath = pathlib.PosixPath
learn = load_learner(p)
def like(issue):
pred,idx,probs = learn.predict(issue)
return pred
'''
https://www.gradio.app/docs/interface
'''
with gr.Blocks() as demo:
'''
https://dash.elfsight.com
'''
counter="""
<script src="https://static.elfsight.com/platform/platform.js" data-use-service-core defer></script>
<div class="elfsight-app-5f3e8eb9-9103-490e-9999-e20aa4157dc7" data-elfsight-app-lazy></div>
"""
gr.HTML(counter)
gr.Markdown("""Enhancing Customer Engagement and Operational Efficiency with NLP
=========
1) Semantic Similarity Document Search (SSDS)
2) Fine Tune LLM
#### Data Scientist: Kevin Wong, [email protected], 416-903-7937
##### Open source ml bank dataset
https://www.kaggle.com/datasets/trainingdatapro/20000-customers-reviews-on-banks/?select=Banks.csv
""")
with gr.Tab("Semantic Similarity Document Search (SSDS)"):
in_similar = gr.Textbox(placeholder="having credit card problem",
label="Issue",
info="issue you want to explore about"
)
out_similar = gr.JSON(label="Similar Verbatim")
btn_similar = gr.Button("Find Similar Verbatim")
btn_similar.click(fn=similar, inputs=in_similar, outputs=out_similar)
gr.Markdown("""
Description:
=======
In today's dynamic financial landscape, the Semantic Similarity Document Search (SSDS) capability is a practical innovation to improve client experience, marketing leads, and sentiment analysis. As a Data Scientist with a decades in the financial industry, I see the value of SSDS in action.
Client Experience:
------
When a client faces a bad experience, SSDS helps us swiftly locate relevant documents to understand and address their concerns, be it credit card issues, late payment fees, or credit score drops.
### issue:
- having bad client experience
- having credit card problem
- late payment fee
- credit score dropping
Marketing Leads:
------
To enhance marketing strategies, SSDS identifies market trends and consumer preferences, such as the demand for low-interest credit cards. It's a treasure trove for refining our product offerings.
### issue:
- low interest credit card
Sentiments:
------
SSDS tracks customer sentiment, empowering us to swiftly respond to upset customers. It ensures we address their issues promptly, enhancing trust and loyalty.
With no need for jargon, SSDS delivers tangible value to our fintech operations. It's about staying agile, informed, and customer-centric in a rapidly changing financial world.
### issue:
- upset customer
Using Sentence Embedding to inject Public ML Banks Text Dataset @ https://github.com/kevinwkc/analytics/blob/master/ai/vectorDB.py
""")
with gr.Accordion("Future Improvement"):
gr.Markdown("""
tuning the distance for use case
""")
with gr.Tab("Fine Tune LLM"):
in_like = gr.Textbox(placeholder="having credit card problem" , label="Issue",
info="issue you want to explore about")
out_like = gr.Textbox(placeholder="like score in range [2 to 248] from fine tuning data",
label="like score",
info="like score")
btn_like = gr.Button("Classify Like Score")
btn_like.click(fn=like, inputs=in_like, outputs=out_like)
gr.Markdown("""
Smart Insights: Elevating Customer Engagement Through Sentiment Analysis
=========
As a Data Scientist with a decades of financial industry experience, I recognize the paramount importance of staying closely tuned to our customer's needs and opinions. In this app, Fine Tune LLM, we have shown how fine-tuning a Language Model (LLM) on a custom dataset can provide valuable insights into customer sentiment across crucial areas such as service, sales, point of failure, product, and emerging trends.
Objective:
---------
Our aim is to extract meaningful insights from customer interactions to improve our services, products, and overall customer experience. This analysis will help us understand what our customers are discussing and how they feel about different aspects of our business.
""")
demo.launch()