Agent skill

engineering-nba-data

Extracts, transforms, and analyzes NBA statistics using the nba_api Python library. Use when working with NBA player stats, team data, game logs, shot charts, league statistics, or any NBA-related data engineering tasks. Supports both stats.nba.com endpoints and static player/team lookups.

Stars 232
Forks 15

Install this agent skill to your Project

npx add-skill https://github.com/aiskillstore/marketplace/tree/main/skills/emz1998/engineering-nba-data

SKILL.md

Goal: Extract and process NBA statistical data efficiently using the nba_api library for data analysis, reporting, and application development.

IMPORTANT: The nba_api library accesses stats.nba.com endpoints. All data requests return structured datasets that can be output as JSON, dictionaries, or pandas DataFrames.

Workflow

Phase 1: Setup and Installation

  • Install nba_api: pip install nba_api if not yet installed
  • Import required modules based on task:
    • from nba_api.stats.endpoints import [endpoint_name] for stats.nba.com data
    • from nba_api.stats.static import players, teams for static lookups
    • from nba_api.stats.library.parameters import [parameter_classes] for valid parameter values

Phase 2: Data Retrieval

For Player/Team Lookups (No API Calls):

  • Use players.find_players_by_full_name('player_name') for player searches
  • Use teams.find_teams_by_full_name('team_name') for team searches
  • Both return dictionaries with id, full_name, and other metadata
  • No HTTP requests are sent; data is embedded in the package

For Stats Endpoints (API Calls):

  • Identify the correct endpoint from table of contents
  • Initialize endpoint with required parameters: endpoint_class(param1=value1, param2=value2)
  • Access datasets using dot notation: response_object.dataset_name
  • Retrieve data in desired format:
    • .get_json() for JSON string
    • .get_dict() for dictionary
    • .get_data_frame() for pandas DataFrame

Custom Request Configuration:

  • Set custom headers: endpoint_class(player_id=123, headers=custom_headers)
  • Set proxy: endpoint_class(player_id=123, proxy='127.0.0.1:80')
  • Set timeout: endpoint_class(player_id=123, timeout=100) (in seconds)

Phase 3: Data Processing

  • Extract specific datasets from endpoint responses
  • Transform data using pandas for aggregations, filtering, joins
  • Normalize nested data structures as needed
  • Handle multiple datasets returned by single endpoint

Phase 4: Output and Storage

  • Export to CSV: df.to_csv('output.csv', index=False)
  • Export to JSON: Use .get_json() or df.to_json()
  • Store in database using pandas .to_sql() method
  • Cache responses to minimize API calls

Rules

  • Required packages: nba_api must be installed before use
  • Static first: Always use static lookups (players/teams) for ID retrieval before making API calls
  • Parameter validation: Reference parameters.md for valid parameter values
  • Endpoint selection: Check table of contents to find the correct endpoint
  • Rate limiting: Be mindful of API rate limits; cache data when possible
  • Error handling: Wrap API calls in try-except blocks to handle network failures
  • Data formats: Know when to use JSON, dict, or DataFrame based on downstream requirements
  • Season format: Seasons use format YYYY-YY (e.g., 2019-20)
  • League IDs: NBA=00, ABA=01, WNBA=10, G-League=20

Acceptance Criteria

  • Data retrieved successfully from appropriate endpoint or static source
  • Correct parameters used based on documentation
  • Data formatted appropriately for intended use case
  • Error handling implemented for API failures
  • Code follows Python best practices
  • Results validated against expected structure
  • Documentation references included where relevant

Reference Documentation

Quick access to common resources:

  • Table of Contents - Full documentation index
  • Examples - Usage examples for endpoints and static data
  • Parameters - Valid parameter values and patterns
  • Endpoints Data Structure - Response format and methods
  • Players - Static player lookup functions
  • Teams - Static team lookup functions
  • HTTP Library - HTTP request details

Endpoint-specific documentation:

Refer to docs/nba_api/stats/endpoints/[endpoint_name].md for detailed parameter and dataset information for each endpoint.

Expand your agent's capabilities with these related and highly-rated skills.

aiskillstore/marketplace

perigon-backend

Perigon ASP.NET Core + EF Core + Aspire conventions

232 15
Explore
aiskillstore/marketplace

perigon-agent

Pointers for Copilot/agents to apply Perigon conventions

232 15
Explore
aiskillstore/marketplace

perigon-angular

Angular 21+ standalone/Material/signal conventions for Perigon WebApp

232 15
Explore
aiskillstore/marketplace

fastapi-mastery

Comprehensive FastAPI development skill covering REST API creation, routing, request/response handling, validation, authentication, database integration, middleware, and deployment. Use when working with FastAPI projects, building APIs, implementing CRUD operations, setting up authentication/authorization, integrating databases (SQL/NoSQL), adding middleware, handling WebSockets, or deploying FastAPI applications. Triggered by requests involving .py files with FastAPI code, API endpoint creation, Pydantic models, or FastAPI-specific features.

232 15
Explore
aiskillstore/marketplace

context7-efficient

Token-efficient library documentation fetcher using Context7 MCP with 86.8% token savings through intelligent shell pipeline filtering. Fetches code examples, API references, and best practices for JavaScript, Python, Go, Rust, and other libraries. Use when users ask about library documentation, need code examples, want API usage patterns, are learning a new framework, need syntax reference, or troubleshooting with library-specific information. Triggers include questions like "Show me React hooks", "How do I use Prisma", "What's the Next.js routing syntax", or any request for library/framework documentation.

232 15
Explore
aiskillstore/marketplace

browser-use

Browser automation using Playwright MCP. Navigate websites, fill forms, click elements, take screenshots, and extract data. Use when tasks require web browsing, form submission, web scraping, UI testing, or any browser interaction.

232 15
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results