Jump to content

Connect SuperML | Leeroopedia MCP: Equip your AI agents with best practices, code verification, and debugging knowledge. Powered by Leeroo — building Organizational Superintelligence. Contact us at founders@leeroo.com.

Implementation:LMCache LMCache Bypass Lookup Client

From Leeroopedia
Revision as of 15:23, 16 February 2026 by Admin (talk | contribs) (Auto-imported from implementations/LMCache_LMCache_Bypass_Lookup_Client.md)
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)


Knowledge Sources
Domains KV Cache, Distributed Inference
Last Updated 2026-02-09 00:00 GMT

Overview

LMCacheBypassLookupClient is a lookup client that directly invokes the LMCacheEngine lookup method in-process, bypassing ZMQ-based inter-process communication.

Description

The bypass lookup client implements the LookupClientInterface and is designed for scenarios such as MLA (Multi-head Latent Attention), where only rank 0 needs to perform lookups and there is no need for cross-process messaging overhead. It processes token IDs through a token database to compute chunk hashes and offsets, then delegates the actual lookup to the provided LMCacheEngine instance. In blending mode, tokens are passed directly to the engine without prior hash computation. All exceptions are caught and logged, returning 0 to indicate no cache match.

Usage

Use this client when the lookup can be performed within the same process as the cache engine, particularly in MLA configurations where only the first rank participates in lookups. This avoids the latency and complexity of ZMQ-based RPC communication.

Code Reference

Source Location

Signature

class LMCacheBypassLookupClient(LookupClientInterface):
    def __init__(
        self,
        config: LMCacheEngineConfig,
        metadata: LMCacheMetadata,
        lmcache_engine: LMCacheEngine,
    ): ...

    def lookup(
        self,
        token_ids: Union[torch.Tensor, list[int]],
        lookup_id: str,
        request_configs: Optional[dict] = None,
    ) -> Optional[int]: ...

    def supports_producer_reuse(self) -> bool: ...

    def close(self): ...

Import

from lmcache.v1.lookup_client.lmcache_lookup_client_bypass import LMCacheBypassLookupClient

I/O Contract

Inputs

Name Type Required Description
config LMCacheEngineConfig Yes The LMCache engine configuration object
metadata LMCacheMetadata Yes Metadata extracted from the serving engine
lmcache_engine LMCacheEngine Yes The engine instance used for direct lookup calls
token_ids Union[torch.Tensor, list[int]] Yes Token IDs to look up in the cache
lookup_id str Yes Unique identifier for this lookup request
request_configs Optional[dict] No Additional per-request configuration options

Outputs

Name Type Description
lookup result Optional[int] Number of tokens matched in cache, or 0 if no match or an error occurred
supports_producer_reuse bool Always returns True, indicating support for producer KV cache reuse

Usage Examples

from lmcache.v1.lookup_client.lmcache_lookup_client_bypass import LMCacheBypassLookupClient

# Initialize with an existing engine
client = LMCacheBypassLookupClient(config, metadata, lmcache_engine)

# Perform a lookup
matched_tokens = client.lookup(token_ids=[1, 2, 3, 4], lookup_id="req-001")

# Clean up
client.close()

Page Connections

Double-click a node to navigate. Hold to expand connections.
Principle
Implementation
Heuristic
Environment