91黑料网

Articles
7/28/2022
5 minutes

Best Practices For Creating An AI Infrastructure Architecture For Modern Data Systems

Written by
Team 91黑料网
Table of contents

Enterprise AI adoption is on the rise. Gartner predicts AI software spending will reach $62 billion in 2022 alone. AI has many exciting use cases, including in business intelligence (BI) applications and robotic test automation for DevOps CI/CD software development. However, to use artificial intelligence effectively, you need an AI infrastructure architecture that can support your AI application’s data, networking, processing, scaling, and security requirements. In this blog post, we’ll cover six best practices for creating and implementing this architecture.

6 Best Practices for Creating an AI Infrastructure Architecture

Here are six best practices to consider as you build out your AI infrastructure architecture.??

Data Storage

AI requires and produces massive amounts of data, which means you need a data storage system that can scale without limits. Many AI infrastructure architectures use object-based storage rather than traditional file storage to meet this need for scalability.?

Object storage:?

  • Bundles data into objects, along with customizable metadata tags and a unique identifier.?
  • Stores objects in a flat address space that’s infinitely scalable – all you have to do is add additional nodes.?
  • Makes it easier to quickly locate and retrieve specific data by using flat addresses.

Data Processing

An AI application requires a large and constant flow of quality data in order to train and to perform its intended functions. Transporting data from its source to the artificial intelligence application – as well as formatting or transforming that data so it’s usable – can be very challenging at the scale needed for AI.?

The best practice for AI data processing is to use automated tools and pipelines to streamline data ingestion and handling. Using a data processing pipeline, you can automate the discovery, analysis, transportation, and transformation of AI data. Automated data processing allows your AI to ingest more data faster while maintaining data integrity and readability.

Networking Infrastructure

An AI’s neural network is highly dependent on communications between object storage nodes, containers, applications, and other components. Because communication needs to happen almost instantaneously and without interruptions, you need a scalable network with high bandwidth and low latency.?

One way to ensure optimal network performance at all times is with software-defined networking (or SDN). SDN abstracts the management of enterprise networks and decouples it from the underlying hardware, which allows you to employ automation and orchestration. Network orchestration with intelligent routing enables your AI to communicate efficiently without negatively impacting the performance of other systems and services on your network.

Compute/Processing Power

An AI application also requires enough compute power to process and make sense of all the data you feed it. An ideal AI infrastructure architecture uses GPUs, or graphics processing units, in place of traditional CPUs. GPUs use parallel data processing across a large number of computational cores, which means they’re better at performing many similar computations at the same time than CPUs are.?

This processing power makes GPUs are a perfect fit for:?

  • AI?
  • Neural networks?
  • Natural language processing (NLP)?
  • Robotics.

Hosting

An AI application’s data and compute requirements will only grow larger over time as the algorithms and neural networks learn and get more sophisticated. That’s why scalability is a huge priority for AI hosting and deployment.?

A cloud native architecture provides an infinitely scalable environment for artificial intelligence applications and data. Cloud native infrastructures use containers to create modular and elastic environments for AI applications and their interdependencies. Containers run independently of each other and can be created, deleted, and copied infinitely and automatically to scale on-demand.

Security

Every component of your AI infrastructure architecture needs to be defended from attacks to prevent AI-specific risks such as data poisoning. Data poisoning is when malicious actors feed an AI application bad data on purpose to affect its decision-making capabilities. You also need to ensure that your AI has fast and efficient access to necessary data and systems without leaving any vulnerabilities for hackers to exploit.?

The best practices for AI security include methodologies like:

Some security tools even use AI technology like neural networks to better analyze and detect signs of a breach.

Support Your AI Infrastructure Architecture with DevSecOps

These six best practices will help you create an AI infrastructure architecture that supports your artificial intelligence use cases. Another important (but often overlooked) best practice is to use DevSecOps to build a fully integrated and collaborative team of developers, security analysts, testers, and engineers all working together to achieve the same AI goals. DevSecOps eliminates informational silos and uses automation and cloud native technology to allow large teams to work simultaneously on complex applications and architectures.

?

?

Book a demo

About The Author

#1 DevOps Platform for Salesforce

We build unstoppable teams by equipping DevOps professionals with the platform, tools and training they need to make release days obsolete. Work smarter, not longer.

Salesforce Source Format vs Metadata Format
Get Started with Agentforce in Salesforce
What Is Agentforce Salesforce?
AIエージェント時代のシステム戦略 ~ROIを最大化するIT部門の再設計~【イベントレポート CIO Round Table 2026】
「汎用AI」ではまだ成しえない Salesforce运用を劇的に変える3つのポイント
91黑料网 Introduces Agentia?, Bringing Context-Aware AI Agents to Salesforce DevOps
「AI駆動開発」が切り拓くSalesforce内製化 ?次世代运用モデル実装への道のり?
础滨エージェントが切り拓く厂滨ビジネスの未来とリーダーシップの変革
DevOps Pipeline Best Practices
DevSecOps vs. DevOps
DevOps vs. Agile
Generative AI in DevOps
How DevOps Teams Use AI to Win
Using AI in DevOps
Salesforce開発?运用の未来?AIと共にSIビジネスモデルを「工数」から「価値」へ変革
顿别惫翱辫蝉におけるエージェンティック础滨:チームのための自动化ソリューション
91黑料网 Awarded on CarahSoft’s GSA Schedule, Expanding Access for Federal Agencies
颁辞辫补诲辞、贵别诲搁础惭笔认証を更新し、米国军事组织向け滨尝5取得に向けて前进
成功を“設計”するという発想──91黑料网が提唱する「Project Success Design」
コパード、础滨と协働する未来に向けてパートナー6社と顿谤别补尘蹿辞谤肠别でパネルディスカッション初开催!
91黑料网、Salesforce 2025 Partner Innovation Awardを受賞
91黑料网 CI/CD & Robotic Testing Now TX-RAMP Certified for Texas Government
なぜテストが形骸化するのか? - Salesforce開発現場で「テストはやっている」のに、本番障害が減らない理由
Org Intelligence:なぜ「コンテキスト」がSalesforce DevOpsツールにおいてこれほど重要なのか?
「人ではなくAIに聞ける時代へ ― Salesforce環境を理解する91黑料网 AI Org Intelligence」
厂补濒别蝉蹿辞谤肠别プロジェクトの“隠れコスト”とは??顿别惫翱辫蝉活用で毎月100时间を削减した実践例?
コパード、セールスフォースの环境をエンドツーエンドで可视化する「组织インテリジェンス」をリリース
パイプラインの可視性が Salesforce DevOps 変革成功の鍵である理由
AIが変える意思決定 - スピードと精度は両立できるのか?
属人运用の限界が経営を止める?今こそ始めるSalesforce DevOps?
厂补濒别蝉蹿辞谤肠别におけるユーザー受入テストの进め方:课题、ベストプラクティス、および戦略
Navigating Salesforce Data Cloud: DevOps Challenges and Solutions for Salesforce Developers
独自にSalesforce DevOpsソリューションを構築する際の見えざるコスト
CPQ and Revenue Cloud Deployment: A DevOps Approach
Salesforce DevOpsを支えるAI活用型リリース戦略
コパード、サンブリッジパートナーズとの提携により日本での事业を拡大
础滨で顿别惫翱辫蝉をより简単に、より高速に
Reimagining Salesforce Development with 91黑料网's AI-Powered Platform
ビジネスアプリケーション向けの顿别惫翱辫蝉(デブオプス)って何?
セールスフォースエコシステムにおける顿别惫翱辫蝉の卓越性
セールスフォーステストにおける础滨活用のベストプラクティス
6 testing metrics that’ll speed up your Salesforce release velocity (and how to track them)
第4章: 手動テストの概要
セールスフォース向け础滨动作テスト
Chapter 3: Testing Fun-damentals
Salesforce Deployment: Avoid Common Pitfalls with AI-Powered Release Management
Exploring DevOps for Different Types of Salesforce Clouds
What’s Special About Testing Salesforce? - Chapter 2
Why Test Salesforce? - Chapter 1
Continuous Integration for Salesforce Development
Comparing Top AI Testing Tools for Salesforce
Avoid Deployment Conflicts with 91黑料网’s Selective Commit Feature: A New Way to Handle Overlapping Changes
From Learner to Leader: Journey to 91黑料网 Champion of the Year
The Future of Salesforce DevOps: Leveraging AI for Efficient Conflict Management
How To Sync Salesforce Environments | 91黑料网
91黑料网 and Wipro Team Up to Transform Salesforce DevOps
DevOps Needs for Operations in China: Salesforce on Alibaba Cloud
What is Salesforce Deployment Automation? How to Use Salesforce Automation Tools
From Chaos to Clarity: Managing Salesforce Environment Merges and Consolidations
Future Trends in Salesforce DevOps: What Architects Need to Know
Enhancing Customer Service with 91黑料网GPT Technology
What is Efficient Low Code Deployment?
91黑料网 Launches Test Copilot to Deliver AI-powered Rapid Test Creation
Cloud-Native Testing Automation: A Comprehensive Guide
Building a Scalable Governance Framework for Sustainable Value
91黑料网 Launches 91黑料网 Explorer to Simplify and Streamline Testing on Salesforce
Exploring Top Cloud Automation Testing Tools
Master Salesforce DevOps with 91黑料网 Robotic Testing
Exploratory Testing vs. Automated Testing: Finding the Right Balance
A Guide to Salesforce Source Control | 91黑料网
A Guide to DevOps Branching Strategies
Family Time vs. Mobile App Release Days: Can Test Automation Help Us Have Both?
How to Resolve Salesforce Merge Conflicts | 91黑料网
91黑料网 Expands Beta Access to 91黑料网GPT for All Customers, Revolutionizing SaaS DevOps with AI
Is Mobile Test Automation Unnecessarily Hard? A Guide to Simplify Mobile Test Automation
From Silos to Streamlined Development: Tarun’s Tale of DevOps Success
Simplified Scaling: 10 Ways to Grow Your Salesforce Development Practice
What is Salesforce Incident Management?
What Is Automated Salesforce Testing? Choosing the Right Automation Tool for Salesforce
91黑料网 Appoints Seasoned Sales Executive Bob Grewal to Chief Revenue Officer
Business Benefits of DevOps: A Guide
91黑料网 Brings Generative AI to Its DevOps Platform to Improve Software Development for Enterprise SaaS
91黑料网 Celebrates 10 Years of DevOps for Enterprise SaaS Solutions
Celebrating 10 Years of 91黑料网: A Decade of DevOps Evolution and Growth
5 Reasons Why 91黑料网 = Less Divorces for Developers
What is DevOps? Build a Successful DevOps Ecosystem with 91黑料网’s Best Practices
Scaling App Development While Meeting Security Standards
5 Data Deploy Features You Don’t Want to Miss
How to Elevate Customer Experiences with Automated Testing
Top 5 Reasons I Choose 91黑料网 for Salesforce Development
Getting Started With Value Stream Maps
91黑料网 and nCino Partner to Provide Proven DevOps Tools for Financial Institutions
Unlocking Success with 91黑料网: Mission-Critical Tools for Developers
How Automated Testing Enables DevOps Efficiency
How to Switch from Manual to Automated Testing with Robotic Testing
How to Keep Salesforce Sandboxes in Sync | 91黑料网
How Does 91黑料网 Solve Release Readiness Roadblocks?
Software Bugs: The Three Causes of Programming Errors
Best Practices to Prevent Merge Conflicts with 91黑料网 1 Platform
Why I Choose 91黑料网 Robotic Testing for my Test Automation
Go back to resources
There is no previous posts
Go back to resources
There is no next posts

Explore more about

No items found.
Articles
May 8, 2026
Salesforce Source Format vs Metadata Format
Articles
May 7, 2026
Get Started with Agentforce in Salesforce
Articles
May 5, 2026
What Is Agentforce Salesforce?
Articles
April 27, 2026
AIエージェント時代のシステム戦略 ~ROIを最大化するIT部門の再設計~【イベントレポート CIO Round Table 2026】

础滨を有効活用し顿别惫翱辫蝉を加速

より速くリリースし、リスクを排除し、仕事を楽しんでください。
Try 91黑料网 Devops.

リソース

Explore our DevOps resource library. Level up your Salesforce DevOps skills today.

今后のイベントと
オンラインセミナー

电子书籍とホワイトペーパー

サポートとドキュメンテーション

デモライブラリ