ワンクリックで
frontier-based-explore
For graph exploration: frontier collection with configurable pop order, BFS/DFS/random via strategy change.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
メニュー
For graph exploration: frontier collection with configurable pop order, BFS/DFS/random via strategy change.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
| name | frontier-based-explore |
| description | For graph exploration: frontier collection with configurable pop order, BFS/DFS/random via strategy change. |
Maintain a frontier collection; how you pop determines traversal order.
from collections import deque
def explore(start, neighbors, pop_strategy=deque.pop):
"""Explore graph with configurable traversal order.
pop_strategy:
deque.pop -> DFS (depth-first, LIFO)
deque.popleft -> BFS (breadth-first, FIFO)
lambda d: d.pop(random.randrange(len(d))) -> Random
"""
visited = set()
frontier = deque([start])
while frontier:
current = pop_strategy(frontier)
if current in visited:
continue
visited.add(current)
yield current # Process node
for neighbor in neighbors(current):
if neighbor not in visited:
frontier.append(neighbor)
from collections import deque
import random
def random_tree(nodes, neighbors, pop=deque.pop):
"""Build spanning tree with configurable exploration.
Different pop strategies create different tree shapes:
- deque.pop (DFS): long winding paths
- deque.popleft (BFS): short bushy branches
- random pop: mixed/natural looking
"""
tree = set()
nodes = set(nodes)
root = nodes.pop()
frontier = deque([root])
while nodes:
current = pop(frontier)
unvisited = [n for n in neighbors(current) if n in nodes]
if unvisited:
chosen = random.choice(unvisited)
tree.add((current, chosen))
nodes.remove(chosen)
frontier.append(current)
frontier.append(chosen)
return tree
# Generate different maze styles
def dfs_maze(width, height):
"""Long, winding corridors."""
return random_tree(all_cells(width, height), grid_neighbors, deque.pop)
def bfs_maze(width, height):
"""Short, branching paths."""
return random_tree(all_cells(width, height), grid_neighbors, deque.popleft)
def random_maze(width, height):
"""Natural-looking structure."""
def random_pop(d):
i = random.randrange(len(d))
d[i], d[-1] = d[-1], d[i]
return d.pop()
return random_tree(all_cells(width, height), grid_neighbors, random_pop)
Conducts iterative deep research on any topic using web search, progressive exploration, and structured synthesis. Use when asked for comprehensive research, deep investigation, thorough analysis, or multi-source exploration of any topic. Triggers: research, investigate, deep dive, comprehensive analysis, explore thoroughly, find everything about.
For cross-cutting concerns: add behavior without modifying functions, caching, timing, logging, validation wrappers.
For performance work: measure before changing, profile to find bottlenecks, compare before and after.
For symbolic computation: ASTs, mathematical expressions, code that manipulates code structure, expression transformations.
For ordered processing: A* search, Dijkstra, event simulation, task scheduling. Efficient min/max extraction with heap-based queue.
For dynamic programming: overlapping subproblems, recursive solutions with repeated computations, memoization to avoid redundant work.