Expert photo
Alin-Gabriel
$130/hr
Machine Learning Engineer at Deutsche Bank
Consult

Data Flow Enhancement and Efficient Processing through Large Language Models (LLMs)

In the corporate sector, text data flows swiftly, emanating from diverse sources in various formats, destined for multiple endpoints and actions. This continuous stream of data necessitates management through structuring, making it easy to interpret and analyse, and ultimately directing it to the appropriate user or applying the insights obtained. I utilised several large language models (LLMs) streamline and enhance this process:

  • A question-answering LLM, enabling users to inquire about the content of each document within the flow.

  • A summarization LLM, offering a concise overview of each document.

  • An NLP model for sentiment analysis, determining the sentiment of each document.

  • An NLP model that calculates an absolute similarity score among all documents.

  • Clustering, which groups similar documents together and simultaneously identifies outlier documents.

Industry
Banking
Finance
Markets
Global
Product
Data Management System
NLP model
LLM model
Document Processing Tool
Expertise
Natural Language Processing
Machine learning
Data analysis
Artificial Intelligence
Stack
Python
Users
B2B
Position
Machine Learning Engineer

About expert

A Machine Learning Engineer at Deutsche Bank.

Alin-Gabriel applied their knowledge of Natural Language Processing, Machine learning, Data analysis and Artificial Intelligence in Banking and Finance on the following markets: Global.

Alin-Gabriel built products like Data Management System, NLP model, LLM model and Document Processing Tool using the variety of tools.

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