InterviewStack.io LogoInterviewStack.io
đź’»

Programming Languages & Core Development Topics

Programming languages, development fundamentals, coding concepts, and core data structures. Includes syntax, algorithms, memory management at a programming level, asynchronous patterns, and concurrency primitives. Also covers core data manipulation concepts like hashing, collections, error handling, and DOM manipulation for web development. Excludes tool-specific proficiency (see 'Tools, Frameworks & Implementation Proficiency').

Error Handling and Code Quality

Focuses on writing production quality code and scripts that are defensive, maintainable, and fail gracefully. Covers anticipating and handling failures such as exceptions, missing files, network errors, and process exit codes; using language specific constructs for error control for example try except blocks in Python or set minus e patterns in shell scripts; validating inputs; producing clear error messages and logs; and avoiding common pitfalls that lead to silent failures. Also includes code quality best practices such as readable naming and code structure, using standard libraries instead of reinventing functionality, writing testable code and unit tests, and designing for maintainability and observability.

0 questions

Algorithm Selection and Justification

Evaluates the ability to choose and justify algorithms and approaches for solving computational problems. Topics include analyzing time and space complexity, selecting data structures, comparing exact versus approximate or heuristic solutions, considering parallelization and streaming approaches, caching and memoization strategies, and balancing correctness versus performance and maintainability. Interviewers expect candidates to define constraints clearly, compare alternatives, and explain why the chosen algorithm best fits latency, throughput, memory, and operational requirements.

0 questions

Maintainability and Legacy Code

Covers strategies and principles for evolving codebases safely and keeping them easy to understand and change over time. Topics include design principles such as Single Responsibility, Open Closed, Liskov Substitution, Interface Segregation, and Dependency Inversion, removing duplication, establishing appropriate abstraction boundaries, separation of concerns, identifying and remediating code smells, incremental refactoring approaches, regression risk mitigation via tests and feature toggles, backward compatibility and migration strategies, and prioritizing technical debt reduction. Interviewers assess the candidate ability to plan pragmatic refactors, minimize risk during change, and improve long term health of a codebase.

0 questions