Case studies

85% accuracy boost Codvo's NLP & AWS transform lease-to-own retail

About the client

The client, a leading Fintech company, provides Open-To-Buy (OTB) credit services for Lease-To-Own (LTO) Software-as-a-Service (SaaS) offerings.

They approached codvo.ai with a business challenge of developing an NLP model that accurately classifies retail products for Lease-To-Own services during checkout on Amazon.

Overview

The client's main goal was to improve their decision-making capabilities by enabling end-users to accurately identify leasable products during checkout on Amazon. This would help the client to provide better OTB credit services to their customers and ensure a seamless and hassle-free shopping experience.

Business Challenge

The client's main business challenge was the inability to accurately identify leasable products during checkout on Amazon, which resulted in delays in decision-making and increased the risk of offering credit on non-leasable products. This impacted the client's ability to provide an optimal customer experience and affected their bottom line. Additionally, the absence of a mechanism for product classification led to sub-optimal utilization of their Open-To-Buy credit services. The client needed a solution that would enable them to accurately identify leasable products and provide a seamless shopping experience to their customers.

Our Approach and Solution

Our approach to the client's challenge involved developing an NLP model based on the LSTM algorithm to accurately classify retail products as leasable or non-leasable during checkout on Amazon. We utilized Python Scikit Learn and Jupyter Notebook for model development and Docker for containerization, ensuring that the model was portable and could be easily deployed.

We used AWS services such as S3 for data storage, Lambda for serverless computing, and SageMaker for model training and deployment. We also created a scalable API using AWS API Gateway to enable seamless integration with the client's LTO partner platforms. The API enabled easy management and deployment of the NLP model, ensuring that the solution was reliable and scalable.

Our approach focused on building a robust and accurate NLP model that could reliably identify leasable products during checkout on Amazon. We integrated the model with the client's LTO partner platforms, enabling end-users to accurately identify leasable products during the checkout process. This integration ensured a seamless and hassle-free shopping experience for customers and enabled the client to provide better OTB credit services to their customers.

Tech Stack

The tech stack for this project included Python ScikitLearn, Jupyter Notebook, Docker, GitHub, AWS S3, AWS Lambda, and AWS SageMaker.

Highlights

Business Impact

The project was a huge success, with the NLP model achieving an accuracy of 85%,ensuring reliable classification results for real-world applications.
The integration of the model with the client's LTO partner platforms enabled the end-users to identify leasable products during checkout on Amazon, resulting in a seamless and hassle-free shopping experience.
The client was able to make better decisions, avoid offering credit on non-leasable products, and provide a better OTB credit service to their customers.
The deployment of the model through a scalable API ensured that the solution was easy to manage and maintain, providing the client with a reliable and effective solution for their business challenge.