CHALLENGES IN TRADITIONAL APPROACHES ADDRESSED BY PVP

CHALLENGES IN TRADITIONAL APPROACHES ADDRESSED BY PVP

Complexity

  • Descriptions: Increased complexity due to managing multiple environments separately.
  • Resolutions in PVP: Simplifies management by consolidating all activities with-in one environment, reducing overall complexity like no DevOps, CI/CD, Metadata Management, Data Quality, Data Governance, and Data Lineage etc.

Resource Efficiency

  • Descriptions: Requires separate resources for development, testing, and production, potentially leading to re-source contention and inefficiencies.
  • Resolutions in PVP: Optimizes resource allocation by consolidating all activities within a single environment.

Integration Challenges

  • Descriptions: Challenges in integrating and ensuring compatibility across multiple environments, leading to delays and errors.
  • Resolutions in PVP: Lowers integration costs and risks by simplifying integration efforts within a single environment, reducing complexity and potential errors.

Privacy & Security Vulnerabilities

  • Descriptions: Increased privacy & security vulnerabilities due to the need for separate security measures for each environment.
  • Resolutions in PVP: Enhances privacy & security oversight and reduces vulnerabilities by implementing single security measures within one environment.

Cost Over-runs

  • Descriptions: Higher costs associated with maintaining and managing multiple environments, potentially leading to budget overruns.
  • Resolutions in PVP: Minimizes costs and risks of overruns by consolidating infra-structure, licenses, and resources within a single environment, optimizing cost-effectiveness.

Deployment Complexity

  • Descriptions: Deployment complexity and risks due to the need for careful coordination and management across different environments.
  • Resolutions in PVP: Due to single environment, deployment across environments is not re-quired.

Scalability Challenges

  • Descriptions: Challenges in scaling infrastructure and resources independently across development, testing, and production environments.
  • Resolutions in PVP: Simplifies scalability management by al-lowing for unified scaling across all stages within one environment, reducing complexity and ensuring scalability.

Support and Maintenance Overhead

  • Descriptions: Increased maintenance overhead due to the need for separate management and upkeep for each environment.
  • Resolutions in PVP: Reduces maintenance overhead and risks by centralizing management tasks within one environment, streamlining maintenance efforts and minimizing overhead.

To view or add a comment, sign in

More articles by Mustafa Qizilbash

  • Why There is High Turnover in CDO and CAO Roles in the Current Era!

    Why There is High Turnover in CDO and CAO Roles in the Current Era!

    In the evolving landscape of data and analytics, the roles of Chief Data Officers (CDOs) and Chief Analytics Officers…

    11 Comments
  • Data & AI Cognitive (DAC) Architecture

    Data & AI Cognitive (DAC) Architecture

    I had the pleasure of being a guest on the 𝗗𝗮𝘁𝗮 & 𝗔𝗜 𝗦𝗵𝗼𝘄 podcast hosted by the incredible Mirko Peters…

    3 Comments
  • Quantum Computing

    Quantum Computing

    Quantum Computing is one of the most discussed topics now a days. Let’s decode it….

    4 Comments
  • KNOWLEDGE GRAPH

    KNOWLEDGE GRAPH

    Just like Row is the physical content in a Relational Database, Knowledge Graph (KG) is the physical content in a Graph…

    1 Comment
  • DATA MODELLING WITH GRAPH THEORY

    DATA MODELLING WITH GRAPH THEORY

    Graph Theory offers an effective way to structure data as a graph, allowing efficient representation, querying, and…

    7 Comments
  • GRAPH THEORY

    GRAPH THEORY

    Graph theory offers powerful tools for representing, analyzing, and solving problems that involve properties…

    4 Comments
  • Data Mesh

    Data Mesh

    Data Mesh is normally confused with Data Mashup (explained separately), but both are totally different. Data Mesh is a…

    15 Comments
  • Difference Between MetaGraph, Ontology and Taxonomy

    Difference Between MetaGraph, Ontology and Taxonomy

    MetaGraphs, Taxonomies, and Ontologies are essential tools in knowledge management, data governance, and AI, each…

    22 Comments
  • FUNCTIONAL AND NON-FUNCTIONAL TESTING

    FUNCTIONAL AND NON-FUNCTIONAL TESTING

    At its core, functional testing involves validating all the use cases and requirements outlined in the Functional…

    2 Comments
  • Data Wrapping

    Data Wrapping

    Data Wrapping is the practice of augmenting raw data with additional layers of value — such as tools, metadata, and…

    2 Comments

Insights from the community

Others also viewed

Explore topics