Agentic Engineering Platform

DevAgents OS

An Agentic Engineering Platform for the Software Development Lifecycle

An agentic platform to accelerate the software engineering lifecycle with specialized copilots, metrics, automation, and governance.

AI speed only creates value when connected to the real engineering process: requirements, architecture, code, testing, security, operations, and metrics.

DemandAgentsEngineering FlowMetricsContinuous Improvement

Discover which agents would make sense for your current software lifecycle.

AGENTIC ORCHESTRATION LAYERReqArchCodeQASecDevOpsObsMetrics
∞ DevAgents OS
Core message

Specialized copilots across the SDLC

DevAgents OS is a software engineering platform based on specialized agents. It coordinates copilots across the SDLC to support requirements, architecture, development, testing, security, operations, metrics, and legacy system modernization.

The differentiation is not using an isolated copilot. It is organizing agents by lifecycle stage, preserving context across tools, measuring impact, and creating a continuous improvement flow.

Isolated AI usage

  • Isolated prompt, no lifecycle context
  • Context lost between tools
  • Manual handoff between stages
  • Hard to measure real impact

Agentic engineering

  • Specialized agents per stage
  • Shared lifecycle context
  • Integrated and orchestrated tools
  • Measurable engineering outcomes

Orchestrate Agents

Coordinate specialized agents to transform demands, code, tests, deployments, and metrics into a continuous flow.

Accelerate Engineering

Reduce manual effort in requirements, documentation, code generation, testing, and technical analysis.

Govern with Data

Track efficiency, quality, bottlenecks, risks, and team evolution with clear indicators.

Agentic SDLC Flow

From discovery to operations, orchestrated by agents

01
Discovery
initiativesepicsstoriescriteria
02
Architecture
componentsdecisionsrisksdependencies
03
Development
codereviewdocumentation
04
Quality
testsscenariosevidence
05
Security
vulnerabilitiesthreatscontrols
06
Delivery
pipelinesreleasesautomation
07
Operations
logsincidentsroot cause
08
Metrics
lead timecycle timethroughputquality
Orchestration
Agentic Orchestration Layer
Business impact

Less rework, more traceability, faster decisions, and data-driven improvement.

I want to map my SDLC into agents
Agent Catalog

Specialized Agents

AGENT.01

Requirement Agent

Acts on:meetings, demands, backlog
Generates:initiatives, epics, stories, criteria
Helps answer:What really needs to be built?
  • Meeting transcription
  • Epic and story creation
  • Acceptance criteria
  • Exception criteria
AGENT.02

Architecture Agent

Acts on:technical context, legacy, decisions
Generates:components, risks, dependencies, documentation
Helps answer:Which design reduces risk and improves evolution?
  • Legacy system understanding
  • Component mapping
  • C4 Model support
  • Technical documentation
AGENT.03

Code Agent

Acts on:repositories, standards, technical tasks
Generates:code, review, documentation
Helps answer:How to accelerate without losing technical standards?
  • Code generation
  • Code review
  • Technical documentation
  • Engineering best practices
AGENT.04

Quality Agent

Acts on:criteria, scenarios, expected behavior
Generates:tests, Gherkin, evidence
Helps answer:How to validate earlier and reduce rework?
  • Automated test generation
  • Unit and integration tests
  • Gherkin and BDD
  • Test documentation
AGENT.05

Security Agent

Acts on:code, architecture, dependencies
Generates:risks, threats, controls, recommendations
Helps answer:Where are the risks before going to production?
  • SAST and DAST
  • Threat modeling
  • Vulnerability analysis
  • AppSec controls validation
AGENT.06

DevOps Agent

Acts on:pipelines, releases, environments
Generates:automation, diagnostics, improvement suggestions
Helps answer:Where is delivery getting stuck?
  • CI/CD pipeline development
  • Deployment automation
  • Release management
  • Pipeline failure analysis
AGENT.07

Observability Agent

Acts on:logs, metrics, incidents
Generates:analyses, root cause, operational signals
Helps answer:What is happening in production?
  • Monitoring and logs
  • Operational metrics
  • Root cause analysis
  • Availability insights
AGENT.08

Metrics Agent

Acts on:flow, deliveries, quality, performance
Generates:indicators, trends, bottlenecks
Helps answer:Where is the greatest gain potential?
  • Productivity and quality indicators
  • Lead time, cycle time, and throughput
  • Bottleneck identification
  • Continuous improvement support
AGENT.09

Legacy Modernization Agent

Acts on:legacy code, rules, technical structure
Generates:fragments, extracted rules, new code, traceability
Helps answer:How to modernize without losing business rules?
  • Legacy code reading and fragmentation
  • Business rule extraction
  • Modern code generation
  • Traceability and functional validation
Management Layer

Management and Governance Layer

Strategic, tactical, and operational visibility in a single data layer.

Automation is not enough. You need to measure its impact.

Strategic

Strategic view with OKRs, objectives, progress, speed, and decision-making.

OKRs
12
Velocity
+24%
NPS
82

Coordination

Management of team performance, delivery volume, capacity, predictability, and tactical tracking.

Lead time
4.2d
Throughput
38
WIP
21

Operational

Operational metrics for squads, quality, flow, bottlenecks, tests, deployments, and continuous improvement.

Deploys/d
12
MTTR
28m
Coverage
84%
Decision questions
Q1Where are we saving time?
Q2Where are bottlenecks still present?
Q3Which stage needs the next agent?
Q4Which improvement should be prioritized?
Framework

Continuous Improvement

An iterative cycle to evolve engineering maturity.

Implementation does not start by buying tools. It starts by understanding where engineering loses time, context, and quality.

ContinuousImprovement12345
1

Discover

Map processes, discover bottlenecks, identify opportunities, and understand current maturity.

Output:current flow map
2

Plan

Define metrics, select tools, create a baseline, and establish cycle objectives.

Output:baseline and reference metrics
3

Activate Agent

Activate the right agent, connect tools, configure context, and execute the assisted workflow.

Output:first agent applied to the real flow
4

Measure Impact

Measure gains, compare before and after, confirm impact, and capture lessons learned.

Output:before/after comparison
5

Prioritize

Use metrics and backlog to decide the next improvement opportunity.

Output:next automation backlog
Modernization

Legacy Modernization with Agents

The risk in modernization is not just rewriting code. It is losing business rules hidden inside old systems.

The process starts by understanding the legacy code, then moves through structural fragmentation, business rule extraction, modern code generation, and validation of functional equivalence.

Before

  • Old code, hard to maintain
  • Low documentation of business rules
  • Dependency on legacy specialists
  • High risk with every change

After

  • Documented business rules
  • Modern code generated and validated
  • Tests and end-to-end traceability
  • Human review at every stage
Traceability: Legacy rule → extracted rule → generated code → generated test → human validation
STEP 1
Legacy Code
STEP 2
Structural Fragmentation
STEP 3
Business Rules Extraction
STEP 4
Agentic Code Generation
STEP 5
Functional Validation
01

Legacy Code

Input of legacy code from systems with high complexity and accumulated technical debt.

02

Structural Fragmentation

Splitting code into smaller blocks for contextual analysis.

03

Business Rules Extraction

Identification and documentation of existing business rules.

04

Agentic Code Generation

Modern code generation supported by specialized agents.

05

Functional Validation

Technical and functional validation, testing, traceability, and human review.

I want to modernize my legacy systems with agents
Ecosystem

Tool Ecosystem

DevAgents OS connects categories of tools your engineering already uses. Examples are illustrative and replaceable per enterprise environment.

core
DevAgents OS
ai-models

AI Models and Agent Platforms

OpenAIAzure OpenAIAnthropic ClaudeGoogle GeminiAWS BedrockAmazon Q DeveloperLangGraphSemantic KernelCrewAIAutoGen
copilots

Engineering Copilots and Agentic IDEs

GitHub CopilotCursorWindsurfJetBrains AI AssistantGemini Code AssistAmazon Q Developer
repos

Repositories and Code Platforms

GitHubGitLabBitbucketAzure Repos
pm

Project and Product Management

JiraAzure BoardsLinearConfluenceNotionBackstage
cicd

CI/CD and DevOps

GitHub ActionsGitLab CIAzure PipelinesJenkinsArgo CDTerraformKubernetes
qa

Quality and Test Automation

PlaywrightCypressSeleniumJestJUnitNUnitPostmanPact
security

Security and AppSec

SonarQubeSnykCheckmarxVeracodeOWASP ZAPSemgrepDependabotTrivy
observability

Observability and Operations

GrafanaPrometheusDatadogDynatraceNew RelicOpenTelemetryELK / OpenSearch
architecture

Architecture and Design

C4 ModelStructurizrMiroFigmaMermaidPlantUML
knowledge

Knowledge and RAG

SharePointConfluenceNotionpgvectorPineconeWeaviateElasticsearch / OpenSearch

Illustrative examples. The real composition depends on each company's stack, governance, repositories, security policies, and maturity.

Impact

Impact Metrics

Real market references combined with practical indicators to accelerate engineering, quality, security, delivery, and modernization.

The market already demonstrates relevant gains from AI applied to software engineering. DevAgents OS turns that potential into an operating model: specialized agents connected to the SDLC, stage-based metrics, tool integration, and governance to guide decisions.

84%
AI Adoption in Development

Of respondents use or plan to use AI tools in the development process, per the latest edition of the annual survey.

Market reference:Stack Overflow Developer Survey 2025
View source
90%
Developers Already Using AI at Work

Of developers report using AI tools at work, evidencing accelerated adoption beyond one-off experimentation.

Market reference:DORA Report 2025
View source
42%
Code Currently AI-Generated

Of professional code is already AI-generated. The share is expected to grow to 65% by 2027, per the same survey.

Market reference:SonarSource State of Code 2024
View source
65%
AI Code Projection by 2027

Of code will be AI-generated by 2027, up from 42% already verified. Review and governance will scale alongside.

Market reference:SonarSource State of Code 2024
View source
55.8%
Tasks Completed Faster

In a controlled study with real developers, GitHub Copilot users completed a programming task 55.8% faster than the control group.

Market reference:GitHub Copilot Research — GitHub Blog
View source
20–45%
Software Engineering Potential

Estimated range of GenAI's potential impact on software engineering function productivity, per the McKinsey Global Institute.

Market reference:McKinsey Global Institute — Generative AI
View source
Up to 2×
Acceleration on Specific Tasks

Specific development tasks can be completed up to twice as fast with GenAI, including code generation, testing, and documentation.

Market reference:McKinsey — Developer Productivity with Generative AI
View source
Essential
Governance as a Differentiator

Scaled adoption requires human review, traceability, and operational governance. Teams that structure this reap sustainable productivity benefits.

Market reference:SonarSource — AI Verification Gap
View source
48%
AI Code Verification Gap

Of developers do not review AI-generated code with the same rigor applied to human-written code — a real risk that DevAgents OS helps address.

Market reference:SonarSource — AI Verification Gap
View source

The references above show market maturity. DevAgents OS uses this direction to structure agents, indicators, and improvement flows applicable to each organization's real context.

Model Choice: Context-Based Fit

The choice between OpenAI, Gemini, Claude, or local models should consider stack, data, security, cost, context, and tool integration. DevAgents OS organizes this choice inside the engineering flow, not as an isolated decision.

Model family
OpenAI / Azure OpenAI / Codex
Google Gemini / Google Cloud
Anthropic Claude
Open-source / Local LLMs

The market shows the potential. DevAgents OS turns that potential into flow, agents, metrics, and governance for your engineering organization.

I want to accelerate my engineering with agents
Next step

Ready to accelerate your engineering with agents, metrics, and governance?

We can map a real engineering flow, identify bottlenecks, choose the first agents, and establish metrics to measure impact and guide scale.