From Teradata to Snowflake using Azure Datalake Gen2
Configure your LakeXpress data pipeline with the selected components
LakeXpress Orchestrator
- Manages end-to-end pipelines
- Orchestrates FastBCP extracts with retries & logging
- Handles incremental sync and schema-aware metadata

./LakeXpress config create \
-a data/ds_credentials.json \
--log_db_auth_id log_db_ms \
--source_db_auth_id datasource_teradata_01 \
--source_db_name sales \
--source_schema_name "sales,dim" \
--fastbcp_dir_path ./FastBCP_linux-x64/latest/ \
--fastbcp_p 2 \
--n_jobs 4 \
--target_storage_id adls_lake_prd \
--generate_metadata \
--sub_path /ingest/bronze \
--incremental_table "sales.orders:o_orderdate:date" \
--incremental_table "sales.lineitem:l_shipdate:date" \
--publish_method internal \
--publish_target snowflake_tgt
# First sync - full load
./LakeXpress sync
# Subsequent syncs - incremental updates (much faster!)
./LakeXpress syncSource - Teradata
Teradata is an enterprise-class data warehousing and analytics platform. LakeXpress uses FastBCP with optimized Teradata connectors for efficient data extraction to Parquet format.
Features:
- •Native Teradata .NET driver via FastBCP
- •Full support for Teradata-specific types
- •Parallel extraction to Parquet files
- •Optimized for large-scale data warehouses
Format - Apache Parquet
Parquet is the industry-standard columnar file format for analytics. LakeXpress uses FastBCP to extract data from source databases and convert it to Parquet format, ensuring optimal compression, query performance, and compatibility with all modern data platforms.
Advantages:
- •Columnar format optimized for analytics
- •Efficient compression (typically 3-10x)
- •Schema evolution support
- •Predicate pushdown for fast queries
- •Universal compatibility with cloud platforms
- •Preserves data types and precision
Cloud Stage - Azure Data Lake Storage Gen2
ADLS Gen2 combines Azure Blob Storage with a hierarchical namespace. LakeXpress leverages ADLS for enterprise-grade data lake storage with optimized analytics performance.
Features:
- •Hierarchical namespace for big data analytics
- •Fine-grained access control with ACLs
- •Optimized for Databricks and Fabric
- •High-performance parallel access
- •Native integration with Azure analytics services
Destination - Snowflake
Snowflake is a cloud data platform built for analytics. LakeXpress publishes Parquet files from cloud storage directly into Snowflake using COPY INTO commands for optimal performance.
Publishing method:
COPY INTO with MATCH_BY_COLUMN_NAME
Features:
- •Direct COPY FROM stage (S3, Azure, GCS)
- •Automatic schema detection from Parquet
- •Zero-copy cloning capabilities
- •Automatic clustering and optimization
- •Support for semi-structured data

