Snowflake Consulting and Implementation Services
Kanerika empowers enterprises to unlock the full potential of Snowflake’s AI Data Cloud platform with expert consulting and implementation. Our certified specialists design, deploy, and optimize Snowflake environments that deliver unmatched performance, scalability, and intelligence for modern data ecosystems

Delivering Speed, Scale, and Savings
70%
Reduction in data warehouse costs
4x
Faster query performance
65%
Shorter time-to-market for analytics
85%
Improvement in data governance
55%
Faster deployment cycles
Full-Spectrum Snowflake Services
Kanerika provides comprehensive Snowflake consulting, implementation, and optimization services. From initial strategy through AI enablement and continuous support, we help you maximize value at every phase of your cloud data journey.
Strategy & Advisory
- Evaluate your existing data infrastructure and cloud readiness.
- Create a Snowflake migration roadmap aligned with business objectives.
- Design multi-cloud architecture leveraging AWS, Azure, and Google Cloud.
Setup & Configuration
- Configure Snowflake accounts, warehouses, and virtual compute clusters.
- Establish role-based access controls and security policies.
- Connect Snowflake with existing data lakes, warehouses, and analytics platforms.

Data Engineering & Architecture
- Build automated data pipelines using Snowpipe and dynamic tables.
- Implement efficient data loading with continuous ingestion workflows.
- Design scalable architectures using Snowflake’s separation of storage and compute.
AI & Machine Learning Solutions
- Deploy Snowflake Cortex AI for enterprise-grade LLM applications.
- Build intelligent agents using Cortex Analyst and Cortex Search.
- Create custom ML models with Snowpark and feature engineering workflows.

Security & Compliance Management
- Deploy Snowflake Horizon Catalog for unified data governance.
- Configure sensitive data classification and privacy controls.
- Ensure compliance with SOC 2, HIPAA, GDPR, and industry regulations.
Managed Services & Optimization
- Monitor platform performance with 24×7 support coverage.
- Optimize compute resources and storage for cost efficiency.
- Manage platform upgrades, patches, and configuration updates.

Our Success Stories
How Enterprises Transform with Kanerika and Snowflake
Modernizing Analytics with a Seamless Migration to Snowflake
Impact:
- 28% Annual Cost Savings
- 45% Faster Refresh Cycles
- 50% Fewer Outages
Databricks: Transforming Sales Intelligence for Faster Decision-Making
Impact:
- 80% Faster Document Processing
- 95% Improved Metadata Accuracy
- 45% Accelerated Time-to-Insight
Why Partner with Kanerika for Snowflake Solutions

Deep Snowflake Platform Expertise
Extensive knowledge in Snowflake architecture, performance tuning, cost optimization, and features

Complete Implementation Services
End-to-end support from strategic planning through deployment, training, and ongoing platform management.

AI & ML Innovation Leadership
Specialized expertise in Snowflake Cortex AI, intelligent agents, and machine learning workflows.

Enterprise-Grade Security & Governance
Certified operations adhering to ISO 27701, ISO 27001, SOC II, and stringent compliance frameworks.

Cost & Performance Optimization
Continuous monitoring and tuning to minimize compute costs while maximizing query performance.

Lasting Business Value
Focused on accelerated insights, reduced total cost of ownership, and data-driven decision-making capabilities.
Getting Started
Step 1
Free Assessment
Discuss your data challenges with our specialists. We evaluate your current infrastructure and identify opportunities.

Step 2
Proof of Value
We create a limited pilot to showcase tangible results. Experience the benefits before committing to full deployment.

Step 3
Complete Deployment
We implement the comprehensive solution with structured change management and minimal business disruption.

Kanerika's Custom Data Governance Solutions

Enterprise-grade frameworks that transform fragmented data into trusted, compliant, and actionable assets across your entire organization.
KANGovern: Intelligent Data Governance Framework
Auto discovery and classification across multicloud and hybrid data estates.
Business terms and catalogs that support self-service data access.
Strong visibility and quality checks for better decision making and data trust.
KANGuard: Advanced Data Protection Layer
Smart protection based on user actions, device type, and location signals.
Zero trust controls with fast threat response for cloud and enterprise data.
Smooth link with SIEM tools for clearer security insights and unified operations.
KANComply: Automated Compliance Management
Support for GDPR, HIPAA, PCI-DSS, SOC 2, ISO and other major standards.
Automated control checks and risk-based tasks to reduce manual work.
Simple dashboards that show compliance scores and audit readiness.
Get Started Today
Boost Your Digital Transformation With Our Expert Guidance

Thanks for your interest!
We will get in touch with you shortly
Let’s connect!
Frequently Asked Questions (FAQs)
01What is Snowflake and how does it differ from traditional data warehouses?
Snowflake is a cloud-native data platform that separates compute from storage, enabling independent scaling of resources. Unlike traditional data warehouses requiring physical infrastructure management, Snowflake operates as a fully managed service across AWS, Azure, and Google Cloud with automatic performance optimization, near-unlimited concurrency, and consumption-based pricing that eliminates capacity planning challenges.
02How does Snowflake Cortex AI enhance data analytics capabilities?
Snowflake Cortex AI provides serverless AI and machine learning features directly within your data environment. It includes pre-built LLMs from OpenAI, Anthropic, Meta, and Mistral for tasks like text analysis, sentiment detection, and document processing. Cortex enables building intelligent agents, RAG applications, and custom ML models without moving data outside Snowflake’s secure governance perimeter.
03What migration sources does Snowflake support for legacy modernization?
Snowflake supports migrations from Oracle, Teradata, SQL Server, Netezza, Amazon Redshift, Azure Synapse, Google BigQuery, PostgreSQL, and Hadoop-based systems. The platform’s SnowConvert AI tool automates code conversion with 96% automation rates, translating stored procedures, views, and complex queries while preserving business logic. This dramatically reduces migration timelines and manual effort.
04Can Snowflake handle both structured and unstructured data types?
Yes, Snowflake processes structured data like relational tables, semi-structured formats including JSON, Avro, Parquet, and XML, plus unstructured content like PDFs, images, audio, and video files. Snowpark enables storing and querying unstructured data within Snowflake’s environment. The platform also supports Apache Iceberg and Delta Lake open table formats for flexible lakehouse architectures.
05What is Snowpark and how does it support data engineering?
Snowpark is Snowflake’s developer framework for building data pipelines and applications using Python, Java, or Scala instead of SQL. It enables data engineers to write transformations, create user-defined functions, and deploy ML models directly within Snowflake. Snowpark supports libraries like pandas, NumPy, and scikit-learn, bringing code to data rather than extracting data for processing.
06How does Snowflake ensure data security and compliance?
Snowflake provides multi-layered security including automatic encryption for data at rest and in transit, role-based access controls, and network policies. Snowflake Horizon Catalog delivers unified governance with data classification, lineage tracking, and privacy controls. The platform maintains SOC 2 Type II, PCI DSS, HIPAA, GDPR, and FedRAMP certifications with continuous security monitoring.
07What is Snowflake's pricing model and how can costs be optimized?
Snowflake uses consumption-based pricing charging separately for compute (virtual warehouse usage) and storage (data volume). Costs accrue only when warehouses actively process queries. Optimization strategies include right-sizing warehouses, implementing auto-suspend policies, using clustering keys for large tables, materialized views for repeated queries, and resource monitors to track spending patterns.
08How does Snowflake support multi-cloud deployment strategies?
Snowflake operates natively on AWS, Azure, and Google Cloud Platform without vendor lock-in. Organizations can deploy across multiple cloud providers and regions, replicating data seamlessly between clouds using Snowgrid technology. This multi-cloud architecture supports disaster recovery, geographic data residency requirements, and cloud arbitrage opportunities while maintaining unified governance and access controls.
09 What is the difference between Snowflake and Databricks?
Snowflake focuses on SQL-based data warehousing and analytics with strong governance, while Databricks emphasizes data engineering and machine learning using Apache Spark. Snowflake excels at concurrent query performance and multi-cloud portability. Databricks offers superior big data processing and notebook-based development. Many enterprises use both platforms together, with Snowflake for structured analytics and Databricks for ML workloads.
10How does Snowflake Horizon Catalog improve data governance?
Snowflake Horizon Catalog provides centralized governance including automated sensitive data discovery, column-level security policies, and complete data lineage tracking. It enables tag-based classification, dynamic data masking, and external tokenization for PII protection. Administrators can enforce fine-grained access controls, monitor compliance across all data assets, and audit usage patterns from a single interface.