Agent skill
senior-coding-interview
Prepare for L6+ coding interviews — in-memory databases, concurrency, state management, iterative follow-ups. Use when practicing real-world system-building problems or preparing communication strategies for live coding. Activate on "coding interview", "staff interview", "codesignal", "live coding", "rate limiter interview". NOT for LeetCode/competitive programming, behavioral interviews, or system design whiteboard.
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npx add-skill https://github.com/curiositech/some_claude_skills/tree/main/.claude/skills/senior-coding-interview
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interview coding python senior-engineer
- gated
- YES
- category
- Career & Interview
- pairs with
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[ { "skill": "interview-loop-strategist", "reason": "Complementary skill" }, { "skill": "ml-system-design-interview", "reason": "Complementary skill" }, { "skill": "interview-simulator", "reason": "Complementary skill" } ]
SKILL.md
Senior Coding Interview
Execute L6+ real-world coding interviews where the problem is building a small system, not solving an algorithm puzzle. The core differentiator at Staff+ level is not whether you can solve it, but how you solve it: clean abstractions, narrated reasoning, graceful iteration, and production sensibility.
When to Use
- Practicing real-world coding problems (in-memory stores, rate limiters, task schedulers)
- Reviewing interview code for senior-level signals
- Preparing communication strategy for live coding sessions
- Working through CodeSignal incremental-style problems
- Mock interview practice with follow-up extensions
NOT for:
- LeetCode/competitive programming (segment trees, suffix arrays, contest optimization)
- Behavioral interviews (use interview-loop-strategist)
- System design whiteboard with no code (use ml-system-design-interview)
- Resume or career strategy
The 4-Stage Approach
flowchart LR
C[1. CLARIFY\n5 min] --> S[2. SKELETON\n20 min]
S --> I[3. ITERATE\n10 min]
I --> O[4. OPTIMIZE\n5 min]
C -.- C1["Ask 3-5 questions\nRestate problem\nConfirm API contract\nIdentify edge cases"]
S -.- S1["Data structures first\nPublic API methods\nCore logic\nManual test 1 case"]
I -.- I1["Edge cases\nError handling\nFollow-up extensions\nRefactor if needed"]
O -.- O1["Complexity analysis\nTrade-off discussion\nConcurrency mention\nScaling path"]
Stage 1: Clarify (5 minutes)
Goal: Demonstrate you think before coding. Ask questions that reveal ambiguity the interviewer planted intentionally.
Mandatory questions for every problem:
- Scale: "How many items/requests are we expecting?" (determines data structure choice)
- API surface: "Should this be a class with methods, or standalone functions?"
- Constraints: "Are keys always strings? Can values be None/null?"
- Concurrency: "Single-threaded for now, or should I consider thread safety?"
- Error handling: "Should invalid input raise exceptions or return error values?"
Restate the problem in your own words before writing any code. This catches misunderstandings early and signals comprehension.
Stage 2: Skeleton (20 minutes)
Goal: Get a working solution for the core case. Not perfect, not optimized -- working.
Order of implementation:
- Define the data model (dataclass or NamedTuple for structured data)
- Write the class/function signatures with type hints
- Implement the happy path
- Manually trace through one example out loud
Senior signal: Start with the public API, not the internal helpers. Show top-down thinking.
Stage 3: Iterate (10 minutes)
Goal: Handle follow-ups. This is where Staff+ candidates differentiate -- each extension should feel like a natural evolution, not a rewrite.
The follow-up ladder (interviewers typically go 2-3 levels deep):
- Working -- Base problem solved
- Edge Cases -- Empty inputs, duplicates, overflow, None values
- Concurrent -- Thread safety, locks, atomic operations
- Distributed -- Multiple nodes, consistency, partitioning
- Fault-tolerant -- Crash recovery, persistence, graceful degradation
Senior signal: When asked "how would you make this distributed?", discuss the trade-offs before changing code. Name specific patterns (consistent hashing, write-ahead logs). You don't need to implement distributed systems in 40 minutes -- you need to show you know the path.
Stage 4: Optimize & Discuss (5 minutes)
Goal: Show you understand what you built and where it breaks.
Cover:
- Time and space complexity for each operation
- What would break at 10x scale
- What you would change given more time
- Testing strategy (what tests would you write first?)
Problem Archetypes
| Archetype | Core Data Structure | Key Follow-ups | Reference |
|---|---|---|---|
| In-Memory Key-Value Store | dict + metadata |
TTL, transactions, snapshots | references/problem-archetypes.md |
| File System Abstraction | Trie or nested dict | Glob patterns, watchers, permissions | references/problem-archetypes.md |
| Rate Limiter | deque or sorted list |
Sliding window, distributed, token bucket | references/problem-archetypes.md |
| LRU Cache | OrderedDict or dict+DLL |
Generics, TTL, size-based eviction | references/problem-archetypes.md |
| Task Scheduler | Heap + dict | Priorities, dependencies, cancellation | references/problem-archetypes.md |
| Event/Pub-Sub System | defaultdict(list) |
Typed events, wildcards, async delivery | references/problem-archetypes.md |
| Log Parser/Analyzer | Generators + Counter | Streaming, time windows, aggregation | references/problem-archetypes.md |
| API Client with Retry | State machine | Backoff, circuit breaker, idempotency | references/problem-archetypes.md |
Communication Protocol
Senior interviews are 50% code and 50% communication. The interviewer is evaluating whether they want to work with you, not just whether you can solve the problem.
What to Narrate
- Before writing: "I'm going to use a dict with timestamps as values because we need O(1) lookup and the TTL check can be lazy."
- At decision points: "I could use a heap here for O(log n) insert, but since we're told the number of items is small, a sorted list with bisect is simpler and good enough."
- When stuck: "I'm not sure about the best way to handle concurrent access here. Let me get the single-threaded version working first, then we can discuss locks."
- After completing: "The core operations are O(1) for get/set. The cleanup sweep is O(n) but only runs periodically."
What NOT to Do
- Don't narrate syntax: "Now I'm writing a for loop..." -- the interviewer can see that.
- Don't go silent for more than 60 seconds. If you're thinking, say so.
- Don't ask "Is this right?" -- instead say "Let me trace through an example to verify."
Senior Signals Checklist
These are the things that make an interviewer write "strong hire" for L6+:
| Signal | How to Demonstrate |
|---|---|
| Clean abstractions | Separate concerns: data model, business logic, I/O |
| Production sensibility | Error handling, input validation, logging mentions |
| Testing awareness | "I'd test the TTL edge case where expiry happens during a get" |
| Extensibility | Design classes that can be extended without rewriting |
| Trade-off fluency | Name multiple approaches, choose one, explain why |
| Complexity awareness | State big-O for each operation without being asked |
| Concurrency knowledge | Mention thread safety even if not implementing it |
| Stdlib mastery | Use dataclasses, defaultdict, deque, generators naturally |
Python Patterns for Senior Interviews
Senior candidates use Python idioms that signal deep experience. See references/python-patterns-senior.md for the complete catalog with examples.
Key patterns to internalize:
@dataclassfor any structured data (not raw dicts)- Context managers for resource cleanup
- Generators for streaming/lazy evaluation
collections.defaultdict,Counter,deque-- know the stdlib- Type hints on public methods (skip on internal helpers in time-pressured interviews)
- Exception hierarchies for domain errors
Anti-Patterns
Anti-Pattern: LeetCode Brain
Novice: Reaches for algorithmically elegant solutions (segment trees, suffix arrays, Fenwick trees) when a hash map or sorted list suffices. Spends 15 minutes on optimal time complexity for a problem where n < 1000.
Expert: Chooses the simplest correct solution first. Uses built-in data structures (dict, list, deque, heapq) unless the problem explicitly demands otherwise. Discusses when algorithmic sophistication matters only if asked about scale. The goal is working, readable, maintainable code -- not a competitive programming submission.
Detection: Solution is asymptotically optimal but unmaintainable. Candidate cannot explain trade-offs between their approach and a simpler one. No working solution exists at the 25-minute mark because they're still optimizing.
Anti-Pattern: Silent Coder
Novice: Writes code for 15+ minutes without speaking. Treats the interview like a solo coding session. When they do speak, they narrate syntax ("Now I'm writing a for loop") rather than intent.
Expert: Narrates intent before writing code ("I'm going to use a dict here because we need O(1) lookup by key"). Asks clarifying questions when ambiguity appears. Signals uncertainty honestly ("I'm not sure if Python's heapq supports decrease-key -- let me use a different approach that I'm confident in"). Treats the interviewer as a collaborator, not an examiner.
Detection: Interviewer has to prompt "what are you thinking?" more than twice. Long silences followed by large code blocks. No questions asked during the clarify phase.
Anti-Pattern: Premature Optimization
Novice: Starts with the distributed/concurrent/fault-tolerant version before solving the single-machine case. Adds caching, sharding, or thread pools before there's a working solution to optimize. Designs for 10 million users when the problem says "a few thousand."
Expert: Gets a working solution first, then optimizes when asked. Separates "what I'd do in production" from "what I'm implementing in this 40-minute interview." When the interviewer asks about scale, discusses the optimization path verbally: "I'd add a write-ahead log for durability, then shard by key hash for horizontal scaling."
Detection: No working solution at the 25-minute mark. Code has Lock, ThreadPoolExecutor, or asyncio imports but no passing test case. Architecture diagram exists but core logic doesn't.
CodeSignal Incremental Format
CodeSignal's pre-recorded incremental format (used by Anthropic and others) differs from live interviews. See references/codesignal-incremental.md for detailed strategy.
Key differences:
- No interviewer to ask questions -- you must self-clarify from the problem statement
- Incremental stages build on your previous code -- design for extension from the start
- Time pressure is real but self-managed -- no one tells you to move on
- You can re-read the problem statement -- do it before each stage
Time Budget Decision Tree
flowchart TD
START[Problem received] --> READ["Read ENTIRE problem\n(2 min)"]
READ --> KNOWN{Recognize\nthe archetype?}
KNOWN -->|Yes| FAST["Fast-track clarify\n(2 min)"]
KNOWN -->|No| DEEP["Deep clarify\n(5 min)"]
FAST --> CODE["Code skeleton\n(18 min)"]
DEEP --> CODE
CODE --> CHECK{Working\nsolution?}
CHECK -->|No, 25 min mark| TRIAGE["Simplify approach\nGet SOMETHING working\n(5 min)"]
CHECK -->|Yes| EXTEND["Handle follow-ups\n(10 min)"]
TRIAGE --> EXTEND
EXTEND --> WRAP["Complexity + trade-offs\n(5 min)"]
References
references/problem-archetypes.md-- Consult for worked examples of 8 problem archetypes with skeletons, clarifying questions, and follow-up extensionsreferences/python-patterns-senior.md-- Consult for senior Python idioms that signal experience: dataclasses, context managers, generators, stdlib mastery, testing hooksreferences/codesignal-incremental.md-- Consult when preparing for CodeSignal's pre-recorded incremental format: time management, extension strategies, self-testing without an interviewer
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