Watch full webinar here: https://buff.ly/3tCksyw
Watch this webinar for a recap of the highlights from DataFest 2023 North America, including an exploration of the latest innovations in logical data management with Denodo.
During this one-hour session, Mark Miller, Vice President of Global SI, Partners, and Channel Sales North of America, and Inessa Gerber, Director of Product Marketing, will guide us through a discussion of the most recent product information and critical updates you can’t afford to miss.
Maximize your knowledge of the Denodo Platform, increase ROI on Denodo data and analytics tools, and elevate your success in the Denodo Partner Program.
10. Unleashing the Power of Denodo Platform:
Product Highlights
Director of Product Management (NA)
Inessa Gerber
11. Agenda
11
1. Deployment Strategies for Hybrid/Multi-Cloud
▪ Denodo as part of Cloud Migration Journey
▪ Denodo Hybrid/Multi-Cloud Deployment
▪ FinOps and data adoption/utilization
2. Data Management Collaboration (e.g., Data Lakes)
▪ Complementary Technology with ETL/ELT
▪ Optimized Access with Embedded MPP based on Presto
3. Data Governance ecosystem
▪ Inventory & Consumer Data Catalogs
▪ Data Governance and Data Security
24. 24
Key Features: Automated Deployment
Centralized Management and
Monitoring with Denodo Solution
Manager. Automated Deployment
for AWS/Azure, CI/CD capabilities,
and streamlined deployment.
25. 25
Key Features: FinOps - Visibility is Key
Data sources can be assigned to an CSP/on-
prem and a region. This allows Denodo to
calculate and aggregate egress traffic in bytes
Log information on Traffic between locations (egress costs),
execution times and scanned bytes at data sources
26. 26
Key Features: FinOps - Visibility is Key
New dashboards allow for analysis
of those metrics, slicing and dicing
by source, consumer, ISV and
region, to understand evolution of
critical cost metrics
30. 30
Looking at Snowflake and alike…
▪
▪
▪
▪
▪
▪
▪
▪
https://www.denodo.com/en/document/whitepaper/modern-data-strategy-denodo-and-snowflake
31. 31
Key Features: Denodo Embedded MPP Engine
▪ Denodo has embedded its own MPP engine, based on Presto
▪ Scalable performance for big data volumes
▪ Easy and efficient access to data lake content
▪ Out-of-the-box MPP options for caching and query
acceleration
▪ Native autoscaling
▪ Graphical browsing and introspection of object storage
▪ S3, ADLS, HDFS, etc.
▪ Integrated data lake management
▪ Security, data ingestion, ELT flows, curation, etc.
32. 32
Key Features: Denodo Architecture with MPP
▪ Denodo’s embedded MPP is
included in Enterprise Plus
▪ The maximum size of the cluster,
measured as Presto CPUs, is 128 x
the cores of the VDP server
▪ 8 cores in VDP = (8 x 128)
1024 cores in Presto
▪ 16 cores in VDP = (16 x 128)
2048 cores in Presto
33. 33
Key Features: Support for ETL/ELT
▪ Flexible option to replicate any Denodo view or table to
any target location
▪ ETL when source and target are in different locations.
(e.g. replicate mongoDB data into Data Lake)
▪ ELT execution (SELECT INTO commands) when source
and target the same (e.g. zones in a Data Lake)
35. 35
Denodo Data Catalog
Bridges the Gap between IT and Business
▪ Marketplace for Data Products and streamlined data shopping experience
minimizes data discovery time allowing for faster business insights, while
making relevant data accessible on demand.
▪ Guided Data Discovery
▪ AI-driven recommendations for critical and related data sets
▪ Business metadata for organizing and contextualizing data assets
across the organization
▪ Collaboration and governance features fostering teamwork
▪ Trusted Data with Data Lineage, Usage Statistics, and Profiling
▪ Fully Integrated with Delivery Layer
▪ Always in synch with underlying Denodo Platform
▪ Integrated governance, data access, and data masking
▪ Collaboration between Business using DC and Developers using
Design Studio
Denodo Proprietary and Confidential
37. 37
Data Cataloging and Data Governance
▪ Denodo is a Data Virtualization and Delivery Layer
▪ Focus on Data Delivery, Data Access, and Data Management across the enterprise
▪ Targeting Self-Service initiatives for BI Analysts, Data Scientists, Data Citizens who need data access
▪ Key Focus on Security, Semantic Modeling, Performance and Centralized Access Controls
▪ Enterprise Data Governance Tools (e.g., Collibra, IGC, etc…)
▪ Focus on data inventory, stewardship, trustworthiness and quality, etc.
▪ Targeting Data Stewards and CDOs who need to manage the data
▪ Collaboration and Complementary approach
▪ Other tools can ingest Denodo tables, views, lineage, etc.. Using Denodo Governance bridge or scanners
▪ Denodo can also ingest tags (data classification) from external DG tools
38. 38
Tags Metadata
Denodo + Collibra: Collaboration
Denodo Views (Semantic Models)
can be consumed directly by users
& can be shared with DG/DC tools
After Synchronization, Denodo
Metadata is available in Collibra
Lineage gathered from Denodo
Derived Views and Relationships
Import data classification (tags)
from Collibra into Denodo
39. 39
Key Features: Global Security Policies
▪ Tags are available on column and view level to easily identify and classify data
▪ Tags can be imported from external tools, such as Collibra and others
▪ Allows for implementation of semantic-driven access controls across the data landscape
40. 40
Key Features: Global Security Policies
▪ Global Policies are based on the Semantics using the
tags instead of data artifacts
▪ Completely abstracted from specific tables
▪ Easier to manage and less error prone
▪ E.g mask the contact information such as #email
or #sensitive with *** for Data Scientist
▪ E.g. mask #SSN tagged data for non-HR
▪ E.g. mask #sensitive data for users coming in from
external IP addresses (ABAC)
▪ Supports RBAC and ABAC ensuring extended flexibility
for diverse use-cases
▪ Extended masking based on data types and support
for customizations