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Confluent Coding Interview Questions

25 Confluent coding interview problems with full optimal solutions — 8 easy, 12 medium, 5 hard. Every problem ships with multiple approaches (brute-force first, then the optimal), complexity tables for each, company-specific tips on what an Confluent interviewer values, and a FAQ section.

Showing 12 problems of 25

  • #9mediumfoundational

    9. LRU Cache

    Design an O(1) get/put cache with least-recently-used eviction — Confluent uses it because the same doubly-linked-list + map idea powers consumer-side caches sitting in front of partition reads.

  • #10mediumfoundational

    10. Number of Islands

    Count connected components of '1' cells in a grid — Confluent uses it because the BFS/DFS flood is the same shape as discovering live partitions across a Kafka cluster.

  • #11mediumfoundational

    11. Course Schedule

    Decide if all courses can be finished given prerequisite edges — Confluent uses it because cycle detection in a DAG maps directly onto detecting circular dependencies in Kafka Connect pipelines.

  • #12mediumfoundational

    12. Kth Largest Element in an Array

    Find the kth-largest value in an unsorted array — Confluent uses it to probe heap intuition, which lines up with top-K streaming aggregates over a Kafka topic.

  • #13mediumfoundational

    13. Product of Array Except Self

    Return the array of products of all elements except self without using division — Confluent uses it to test prefix/suffix passes, the same pattern used for partition-aware running aggregates.

  • #14mediumfoundational

    14. Find the Duplicate Number

    Find the repeated number in an n+1 array of values [1..n] using O(1) space — Confluent uses it because cycle-detection on an implicit graph mirrors offset duplication checks in a Kafka log.

  • #15mediumfoundational

    15. Longest Increasing Subsequence

    Return the length of the longest strictly increasing subsequence — Confluent uses it to probe DP/binary-search hybrid thinking, which connects to ordered-offset analysis over a Kafka log.

  • #16mediumfoundational

    16. Coin Change

    Find the fewest coins summing to a target — Confluent uses it as the canonical unbounded knapsack to check that you reason about state transitions before extending to streaming DP over a Kafka topic.

  • #17mediumfoundational

    17. Top K Frequent Elements

    Return the k most frequent elements — Confluent uses it because top-K aggregation is one of the bread-and-butter ksqlDB queries running over a Kafka topic.

  • #18mediumfoundational

    18. Insert Delete GetRandom O(1)

    Design a set with O(1) insert, remove, and random selection — Confluent uses it because the dense-array + map trick is the same one that lets a consumer group pick a partition uniformly during sampling.

  • #19mediumfoundational

    19. Subarray Sum Equals K

    Count contiguous subarrays summing to k — Confluent uses it because the prefix-sum hash trick is the same shape as counting offset windows that hit a target inside a Kafka log.

  • #20mediumfoundational

    20. Top K Frequent Words

    Return the k most frequent words ordered by frequency then lexicographically — Confluent uses it because word-frequency aggregations are the canonical KStream demo over a Kafka topic.

Confluent Coding Interview Questions — Full Solutions — InterviewChamp.AI