Independent vector advisory · Vancouver, BC

Ground your knowledge systems in measured retrieval — not demo hype.

Embedding strategy, RAG pipeline architecture and semantic search programmes for Canadian enterprises — documented assumptions, benchmarked on your corpus.

120+RAG reviews
34Programmes
C$1.8MAvg. scope modelled

BN on file · 675 West Hastings Street · Pacific Time


“Knowledge systems deserve the same rigour as production ML pipelines — measured embedding quality, documented retrieval assumptions and a clear path from raw documents to grounded answers.” CogniVector · Vector Charter

Capability lattice

Four pathways through vector intelligence decisions

Each pathway maps to a distinct stage of your knowledge-system roadmap — from first embedding evaluation through enterprise RAG deployment.

Embedding strategy documents and vector index diagrams

Embedding Strategy

Model comparison, dimensionality trade-offs and chunking policy design for your document corpus and multilingual requirements.

View embedding sprint →
RAG pipeline architecture session

RAG Pipeline Design

Retrieval architecture, reranking layers, grounding policies and evaluation harnesses for production-grade answer generation.

Explore RAG blueprint →
Semantic search hybrid retrieval planning session

Semantic Search

Hybrid retrieval blueprints combining dense vectors, sparse lexical signals and metadata filters.

Launch plan →
Knowledge graph entity linking session

Knowledge Graph

Entity linking, graph-augmented retrieval and structured context for regulated knowledge domains.

Graph integration →
Semantic search workshop

Vendor-neutral from day one

We accept no referral fees from vector database or embedding API vendors. Recommendations follow your benchmark results — not our margin on a licence sale.


Advisory method

Five phases from corpus audit to grounded retrieval

Each phase produces documented deliverables your engineering team can implement or hand to integration partners.

01

Corpus audit

Document taxonomy, access controls and update cadence

02

Embedding bench

Model shortlist with recall@k on held-out queries

03

Index architecture

Vector store selection, sharding and latency targets

04

RAG integration

Prompt templates, grounding rules and guardrails

05

Operations handoff

Monitoring dashboards, reindex playbooks and drift alerts

Who we serve

Vancouver advisory for teams navigating embedding procurement, RAG launch and semantic search migration.

CogniVector helps product teams, data leaders and enterprise architects make defensible vector intelligence decisions. We translate vendor documentation into comparable metrics: chunking strategy, index latency, recall benchmarks and realistic infrastructure expenditure timelines.

From our studio at 675 West Hastings Street, we model retrieval performance using your document corpus, embedding dimension targets and query patterns. Whether you are evaluating a managed vector store or planning an on-premise semantic search deployment, we provide structured comparison frameworks grounded in Canadian privacy expectations and PIPEDA-aligned data handling.

Every engagement begins with a corpus audit — quantifying document types, metadata richness and access-control boundaries before recommending an embedding model family or chunking policy.

CogniVector Hastings Street studio workspace, Vancouver

Track record

Measured advisory across Canadian enterprises

120+
RAG architectures reviewed
34
Vector programmes delivered
C$1.8M
Avg. infrastructure spend modelled

Programmes

Structured engagements with documented outputs

Embedding benchmarks, RAG architecture diagrams or semantic search rollout plans — scoped to your corpus size and compliance requirements.

Embedding Strategy Sprint

Two-week model comparison with chunking experiments and recall benchmarks on your sample corpus.

C$6,500–C$12,000

View programme
Vector audit briefing

RAG Pipeline Blueprint

Full retrieval architecture with reranking design, evaluation harness and grounding policy documentation.

C$14,000–C$28,000

View programme
ML pipeline review

Semantic Search Launch

Hybrid search rollout plan with index sizing, query analytics framework and migration timeline.

C$9,800–C$19,500

View programme
Semantic search launch planning

Common questions

Vector intelligence — quick answers

Is CogniVector a generic AI chatbot vendor, consumer app marketplace or data brokerage?

No. CogniVector is an enterprise vector intelligence advisory studio — we design embedding strategies, RAG pipelines and semantic search architectures from our Vancouver studio. We do not sell consumer chatbot subscriptions, operate an app marketplace or broker personal data.

What embedding models do you evaluate?

We benchmark open-weight and commercial embedding families against your corpus — measuring recall@k, latency and total cost of ownership. Recommendations depend on language mix, document length distribution and deployment constraints.

How do you measure RAG quality?

We establish held-out query sets with human-reviewed ground truth, then track retrieval precision, answer faithfulness and hallucination rates. Metrics are documented in an evaluation harness your team can rerun after model or index updates.

Where is your studio located?

Our vector lab sits at 675 West Hastings Street, Suite 1400, Vancouver, BC — in the downtown financial district. We welcome scheduled visits for architecture reviews and embedding strategy workshops by appointment.

Read all frequently asked questions →

Start here

Ready to benchmark your embedding strategy?

Book a vector audit or walk through our RAG readiness framework with your document corpus and infrastructure budget.

Book a vector audit
Embedding strategy session at CogniVector

Our content covers enterprise vector intelligence advisory for informational purposes. Performance benchmarks and infrastructure estimates reflect illustrative assumptions — individual outcomes vary with corpus quality, query patterns and operating decisions.