An Enovate Wiki
Attachments
History
Blame
View Source
Changelog
Documentation
About An Otter Wiki
Toggle dark mode
Login
Home
A - Z
Page Index
CMMI
Governance
Template
Statement Of Work
Guidelines
Coding Standard
Android Coding Standards
Core Java
Front-End Styling (CSS)
Golang
iOS Coding Standard (Swift)
Java EE
Javascript
Python
Request structure guidelines
Scala
TypeScript
Product Integration
Practical Training PPT
Procedure
Configuration Management (CM)
Estimating (EST)
Managing Performance and Measurement (MPM)
Monitoring and Control (MC)
Peer Review (PR)
Planning (PLAN)
Process Management (PCM)
Process Quality Assurance (PQA)
Product Integration (PI)
Requirement Development Management(RDM)
Risk and Opportunity Management
Technical Solution (TS)
Verification and Validation (VV)
Process Areas
Process Areas - Documents & Evidences
Standard
Document Creation
Naming Convention Standard
Templates
Audit Plan
LLD
Enovate Tools
EnovateIT
Company Profile & Website Portfolio
Home
Local AI
Projects
Audit-matic
HLD
CommNet
Face Recognation
Document
Flowcast
Enovate IT-QMS-PL01-Project Plan-[FlowCast]-V10
HireGenius
SRS
Technical Document (LLD+HLD))
OptiQA
Sentify
SkillShift
HLD
LLD
Social Media Manager
Teams
Team Apex
Team Catalyst
Team Fusion
Team Nova
Team Orbit
Team Pulse
Team Quantum
Team Spark
Team Vision
Templates
Project Template
Team Template
Teams
Team Fusion
e7e818
Commit
e7e818
2025-12-02 08:03:29
Shilpa
: Updated team document
Teams/Team Fusion.md
..
@@ 40,14 40,13 @@
> ### **Our Hackathon Journey**
**1. Phase 0: Ideation and Problem Identification.
-
**
+
- The Spark: Recognized the critical, high-effort pain point of manual CMMI compliance auditing.
- The Goal: Define the objective: leverage AI to automate compliance auditing.
**2. Phase 1: Foundation and Proof of Concept (The Existence Check)
-
**
-
- Focus: Establishing the basic architecture and proving the concept of automation.
+
- Focus: Establishing the basic architecture and proving the concept of automation.
- What We Did:
1. Setup the core architecture: React App (Frontend) and Express.js (Node.js) Backend.
@@ 57,9 56,8 @@
**3. Phase 2: AI Pivot and Content Validation (Current Focus)
-
- Focus: Implementing the RAG pipeline to achieve deep content intelligence.
-
-
-
- What We Did:
+
- Focus: Implementing the RAG pipeline to achieve deep content intelligence.
+
- What We Did:
1. Implemented the RAG pipeline (LangChain, pgvector) for semantic search and content validation.
2. Integrated the Gemini and OpenAI LLM APIs to act as the core validation engine.
0 1 2 3 4 5 6 7 8 9 0 1 2 3 4 5 6 7 8 9 0 1 2 3 4 5 6 7 8 9 0 1 2 3 4 5 6 7 8 9