
Letting Data Speak!
Case Study
Enhanced Jira Data Analysis for Strategic Insights

About the Client
A company specializing in code assessment to improve outcomes for users, companies, and developers. They partner with technologists to uncover legal and regulatory risks in software while boosting productivity and collaborate with investors to evaluate the health of software in investment opportunities.

Challenge
The client needed to assess project management practices, evaluate workflows and processes, identify potential risks and bottlenecks, and measure the quality and efficiency of development across a wide range of software projects. This analysis was crucial for supporting companies in the value creation phase post-due diligence, focusing on optimization, strategic alignment, and identifying quick wins. The challenge was compounded by the need to handle varying Jira export file structures with different column configurations and custom fields specific to individual projects.

Key Results
Developed a flexible framework capable of analyzing any Jira project data
Implemented an adaptable system to handle varying Jira export file structures
Identified key productivity trends across diverse software projects
Provided actionable insights for management
Solution
The team developed a comprehensive solution to address the challenges:
Created a flexible data ingestion and processing system capable of adapting to varying column configurations within Jira CSV exports
Utilized a Language Learning Model (LLM) to generate code for filtering data based on required insights:
For deterministic insights: Generated code to obtain final results
For subjective insights: Employed a two-stage process to filter data and extract insights based on specific tasks
Implemented a robust feedback loop to the LLM for error correction in the generated code, ensuring compatibility with diverse data structures
Developed a persona-based evaluation system for Jira data, applicable across different software development contexts
Integrated GenAI to enhance data interpretation, utilize natural language processing for easier data interaction, and automate reporting and analytics
The solution provided comprehensive insights into project dynamics and team performance, regardless of the specific Jira project structure or custom fields used.

Technologies Used
Language Learning Model (LLM)
GenAI
Natural Language Processing (NLP)
Machine Learning
Data Visualization Libraries (e.g., Matplotlib, Seaborn)
Python
Jira API
CSV Processing Libraries
Other Case Study Items
AI Model for Retail Shelf Monitoring
JashDS revolutionized retail shelf management for a major grocery chain by developing an AI-powered real-time monitoring system. The solution utilized advanced computer vision techniques and deep learning models to detect out-of-stock and misplaced products, significantly improving inventory accuracy and enhancing the customer shopping experience while reducing manual labor costs.
AI-Driven Candidate Screening Revolution
JashDS revolutionized a company's hiring process by developing a GenAI-powered candidate screener that reduced time-to-hire by 50% and improved hiring outcomes. The solution leverages advanced language models to conduct dynamic, role-specific interviews, automatically generating and adapting questions based on job descriptions and candidate responses.
AI-Powered Resume-Job Matching Engine
JashDS developed an AI-powered resume-job matching engine for a leading Indian job portal, processing over 1M resumes and 50k job descriptions. The solution employed BERT embeddings and HNSW algorithms to create personalized job recommendations for candidates and streamline resume screening for recruiters, significantly enhancing the job search and recruitment processes.