UBI MCP server
University Business Incubators MCP server for assessments
UBI-MCP-server-
This MCP Server for University Business Incubators (UBIs) and their clusters aids their performance analyses and assessments( Survivability, Sustainability and Structural rigidity), socio-human structural analysis and dynamic capabilities based on: Mixed Methods Strong Structuration Theory by Ademola Taiwo.
README.md
University Business Incubator Analysis Tool:
A comprehensive MCP (Model Context Protocol) tool for analyzing university business incubators from three complementary theoretical perspectives.
Overview This tool provides sophisticated analysis of university business incubators by integrating:
Business Incubator Performance Analysis:
Quantitative KPI analysis including occupancy rates, graduation rates, job creation, and revenue generation Socio-Structuration Analysis: Based on Giddens’ Structuration Theory, examining the duality of structure and agency Agentic Processes Analysis: Analyzing entrepreneurial agency capabilities including intentionality, forethought, self-reactiveness, and self-reflectiveness.
Features:
Synthetic Data Generation: Generate realistic incubator performance data, structuration contexts, and entrepreneur profiles.
Multi-dimensional Analysis: Analyze incubators from performance, structural, and agency perspectives.
Integrated Reporting: Generate comprehensive reports combining all three analytical perspectives.
Flexible Output: Support for JSON, Markdown, and HTML report formats Temporal Analysis: Track structural evolution and performance trends over time.
Installation
pip install pandas numpy scipy
Quick Start: Open the zip folder, navigate to the University_incubator_analysis file. From university_incubator_analysis import ( generate_incubator_data, analyze_performance, generate_structuration_contexts, analyze_structuration, generate_entrepreneur_profiles, analyze_agency, generate_comprehensive_report )
Generate synthetic data for the number of incubator(s) (e.g. 10 incubators, 12 time periods).
performance_data = generate_incubator_data(num_incubators=10, time_periods=12, seed=42)
Analyze performance
performance_analysis = analyze_performance(performance_data) print(f"Average graduati>{performance_analysis['kpi_analysis']['success_metrics']['average_graduati>:.1%}")
Generate and analyze structuration contexts
incubator_ids = performance_data['incubator_id'].unique().tolist() c>= generate_structurati>=42) structurati>= analyze_structurati>0])
Generate and analyze entrepreneur profiles
profiles = generate_entrepreneur_profiles(50, incubator_ids, seed=42) agency_analysis = analyze_agency(profiles, c>0])
Generate comprehensive report
report = generate_comprehensive_report( performance_data, performance_analysis, contexts, structuration_analysis, profiles, agency_analysis, output_format="json" )
print("Report generated successfully!") print(f"Executive Summary: {report['executive_summary']['overview']}")
Core Components
- Performance Analysis Analyzes incubator KPIs including: - Occupancy and capacity metrics - Startup flow (admissions, graduations, failures) - Success metrics (graduation rate, survival rate) - Economic impact (jobs created, revenue, funding) - Efficiency analysis - Trend analysis - Comparative benchmarking
from university_incubator_analysis import analyze_performance
results = analyze_performance(data) print(results['kpi_analysis']) print(results['trend_analysis']) print(results['insights'])
- Structuration Analysis Based on Giddens’ Structuration Theory, analyzes: - Signification: Meaning-making structures, rules, norms - Domination: Power relations, resource allocation - Legitimation: Normative orders, evaluation criteria - Structure-Agency Duality: How structures enable and constrain agency - Structuration Processes: Reproduction and transformation
from university_incubator_analysis import analyze_structuration
results = analyze_structuration(context) print(results['structural_analysis']) print(results['duality_analysis']) print(results['structuration_processes']) 3. Agency Analysis Analyzes entrepreneurial agency through four dimensions: - Intentionality: Goal clarity, strategic planning, commitment - Forethought: Future orientation, scenario planning, risk assessment - Self-Reactiveness: Adaptability, course correction, resource seeking - Self-Reflectiveness: Metacognition, learning orientation, feedback integration
from university_incubator_analysis import analyze_agency
results = analyze_agency(profiles) print(results['capability_analysis']) print(results['typology']) print(results['success_correlations']) 4. Comprehensive Reporting Generates integrated reports combining all perspectives:
from university_incubator_analysis import generate_comprehensive_report
JSON format (default)
report = generate_comprehensive_report( performance_data, performance_analysis, output_format="json" )
Markdown format
markdown_report = generate_comprehensive_report( performance_data, performance_analysis, structurati>=contexts, structurati>=structuration_analysis, entrepreneur_profiles=profiles, agency_analysis=agency_analysis, output_format="markdown" ) Data Models Incubator Performance Metrics Capacity and occupancy Startup flow metrics Success indicators Economic impact measures Input metrics (resources, services) Output metrics (outcomes, impact) Structuration Context Signification structures (rules, norms, meanings) Domination structures (power, resources) Legitimation structures (norms, sanctions, rewards) Agency manifestations Structuration dynamics Entrepreneur Profile Agentic capabilities (four dimensions) Embedded constraints Agency-structure interactions Success indicators Theoretical Background Giddens’ Structuration Theory The tool operationalizes Giddens’ concept of the duality of structure: - Structure: Rules and resources that enable and constrain action - Agency: Capacity of actors to make independent choices - Duality: Structure is both medium and outcome of agency
Three dimensions of structure: 1. Signification: Communication, meaning-making 2. Domination: Power, resource allocation 3. Legitimation: Normative orders, moral frameworks
Agentic Processes Based on social cognitive theory, analyzes: - Intentionality: Goal-directed behavior - Forethought: Anticipatory capability - Self-Reactiveness: Adaptive monitoring - Self-Reflectiveness: Metacognitive capability
Use Cases Incubator Management: Identify areas for improvement in operations and support services Policy Making: Understand how policies and structures affect entrepreneurial outcomes Research: Analyze structure-agency dynamics in entrepreneurial ecosystems Benchmarking: Compare performance across multiple incubators Program Evaluation: Assess effectiveness of incubator programs Testing Run the test suite:
pytest test_university_incubator_analysis.py -v Advanced Usage Temporal Analysis
Generate data over time
data = generate_incubator_data(num_incubators=5, time_periods=20)
Analyze trends
analysis = analyze_performance(data) trends = analysis['trend_analysis']
Analyze structural evolution
c>= [generate_structurati>'INC_001'])[0] for _ in range(5)] structurati>= analyze_structurati>0], temporal_data=contexts_over_time) print(structurati>'temporal_dynamics']) Custom Analysis from university_incubator_analysis import PerformanceAnalyzer, StructurationAnalyzer, AgencyAnalyzer
Use analyzers directly for custom workflows
perf_analyzer = PerformanceAnalyzer() struct_analyzer = StructurationAnalyzer() agency_analyzer = AgencyAnalyzer()
Perform custom analyses
custom_results = perf_analyzer._analyze_efficiency(data) Data Format Performance Data DataFrame Required columns: - incubator_id: Unique identifier - period: Time period (datetime) - occupancy_rate: Float (0-1) - graduation_rate: Float (0-1) - survival_rate: Float (0-1) - jobs_created: Integer - total_revenue_generated: Float - total_funding_raised: Float
Contributing Contributions welcome! Areas for enhancement: - Additional visualization generation - Machine learning models for prediction - Real-time data integration - Additional theoretical perspectives
License MIT License AdbatomIT Consulting 2025
Citation If you use this tool in research, please cite:
University Incubator Analysis Tool (2025) A comprehensive tool for multi-perspective analysis of business incubators created by Ademola O. TAIWO Contact: [email protected] [email protected] For questions and feedback, please open an issue on the repository.
No file chosenNo file chosen
Máy chủ liên quan
Kone.vc
nhà tài trợMonetize your AI agent with contextual product recommendations
Intelligent Form Collection Server
An intelligent form collection server for conflict mediation, integrating with large model platforms like Cursor and Dify via the MCP protocol.
Minimax MCP Tools
Integrates with the Minimax API for AI-powered image generation and text-to-speech.
ContextPulse
Local-first ambient context for AI agents -- screen capture, OCR, voice transcription (Whisper), keyboard/mouse tracking, clipboard history, and semantic memory.
Spreadsheet MCP Server
An MCP server for Google Spreadsheet integration, connecting via a Google Apps Script Web App.
GoPluto AI MCP
MCP for quick human experts
Spotify
Control your Spotify music playback through conversations using the Spotify API.
After Effects MCP
After Effects MCP is a full-featured automation bridge that connects AI clients (like VS Code, Claude Desktop, and Claude Code) to Adobe After Effects through MCP, enabling scripted control of compositions, layers, effects, keyframes/graph easing, presets, markers, audio levels, waveform analysis, and effect discovery via a live bridge panel.
Feishu/Lark OpenAPI MCP
Connect AI agents with the Feishu/Lark platform for automation, including document processing, conversation management, and calendar scheduling.
Google Sheets (Go)
A Go-based MCP server for integrating Google Sheets with Claude.
Kibela
Integrates with the Kibela API to manage knowledge-based content.