Skip to main content
Book a Call
New Refer a client → earn 10% of first engagement — no cap, no expiry. Partner Program →
Trusted by 40+ Companies Worldwide

We Build Scalable Software, AI Solutions & Cloud Platforms

From web apps to DevOps automation and AI-enabled workflows — CodeToday helps growing businesses move faster

Custom software development  ·  AI & GenAI agents  ·  Cloud & DevOps  ·  Data engineering  ·  Technology training

codetoday.io ~ deploy
$ kubectl apply -f ml-pipeline.yaml
✓ deployment "feature-store" created
✓ service "model-serving" exposed
# Training new model version...
$ mlflow run . --experiment ml-prod
accuracy: 0.9847 | latency: 12ms
# Pushing to production...
$ terraform apply -target=aws_bedrock
✓ 203 agents deployed successfully
$
40+
Clients
200+
AI Agents Live
18+
Yrs Experience
35%
Avg Cost Saved
Powering engineering teams at world-class companies
AWS
·
Microsoft Azure
·
Google Cloud
·
Kubernetes
·
Databricks
·
Snowflake
·
Terraform
·
Apache Airflow
·
Apache Kafka
·
MLflow
·
AWS Bedrock
·
LangChain
·
SageMaker
·
Apache Spark
·
Grafana
·
AWS
·
Microsoft Azure
·
Google Cloud
·
Kubernetes
·
Databricks
·
Snowflake
·
Terraform
·
Apache Airflow
·
Apache Kafka
·
MLflow
·
AWS Bedrock
·
LangChain
·
SageMaker
·
Apache Spark
·
Grafana
·
Measurable outcomes delivered
40%
Avg. Infra Cost Reduction FinOps & right-sizing on every engagement
10x
Faster ML Deployment From 6-week cycles to same-day deploys
200+
AI Agents in Production Across pharma, fintech & life sciences
99.9%
Platform Uptime SLA Production-grade reliability built in
Our teams are live right nowGreen = business hours  ·  Hover for local time
Certified Partners
AWS Partner
Azure Partner
GCP Partner
ISO 27001
SOC 2 Type II
As Seen In / Speaking At
re:Invent 2024
KubeCon NA
DataEngConf
MLOps World
FinOps Summit
Clients in 12+ Countries
🇮🇳🇺🇸🇬🇧🇦🇪🇩🇪🇸🇬🇦🇺🇨🇦🇳🇱🇯🇵🇧🇷🇸🇦
What We Do

Our DigitalTransformation Services

End-to-end engineering across the full modern data and AI stack.

Our Process

How We Deliver Results

A battle-tested three-phase approach — from discovery to production — with zero hand-waving.

🔍
01

Assess & Architect

We start with a deep-dive into your stack, data flows, and pain points. No boilerplate proposals — every architecture is custom-designed for your scale and constraints.

⚙️
02

Build & Integrate

Embedded engineers work alongside your team. We ship iteratively — every sprint delivers running code in your environment, not slide decks. CI/CD and observability from day one.

🚀
03

Operate & Optimise

We don't disappear post-launch. Continuous FinOps, automated alerts, runbooks, and optional 24×7 SRE support ensure your platform runs lean and reliable in production.

200+
AI Agents Deployed
$4M+
Cloud Costs Saved
40+
Enterprise Clients
12
AWS Certifications
99.9%
Uptime SLA Delivered
codetoday.io platform
200+
AI Agents Deployed

Who We Are

Engineers Who Live at the Intersection of Data, Cloud & AI

codetoday.io is a specialized engineering firm focused on the hardest problems in modern technology stacks. We don't do generalist IT — we go deep on DevOps, MLOps, Data Engineering, Big Data, and AI systems.

Our teams have shipped production workloads across AWS, Azure, and GCP — from real-time streaming pipelines processing billions of events, to multi-agent AI systems serving enterprise customers at scale.

  • Deep expertise in cloud-native and AI-first architectures
  • Proven track record across pharma, life sciences, and fintech
  • Zero-to-production delivery with embedded engineering teams
  • Continuous cost optimization and FinOps built into every engagement
Start a Conversation
By the Numbers

Delivering Measurable Impact

65+

Happy Clientsacross pharma, fintech & enterprise

120+

Projects Deliveredend-to-end cloud & data solutions

200+

AI Agents Deployedin production across use cases

18+

Years Experiencebuilding technology that scales

Why codetoday.io

We're Not a Generalist Shop

We specialize in the technologies that matter most for modern data and AI engineering. Here's what that means for you.

01

Production-First Mindset

Every architecture decision is made with production scale in mind. We don't build prototypes — we build systems that run at midnight on New Year's Eve without paging anyone.

02

Deep Vertical Expertise

DevOps, MLOps, Data Eng, BigData, and AI are not side practices for us — they're all we do. Our engineers live in these stacks daily and stay ahead of the curve.

03

Cost Engineering Built In

We instrument FinOps from day one. Tagging strategies, idle resource detection, right-sizing — cost reduction is part of delivery, not an afterthought.

04

Speed Without Shortcuts

We move fast because we have deep experience, not because we cut corners. Security, observability, and disaster recovery are non-negotiables in every engagement.

Investment

Transparent Pricing

No surprise invoices. Fixed-scope or retainer — you choose.

Starter
$12K/engagement
Ideal for Series A–B startups and single-service audits
  • Cloud FinOps or DevOps audit
  • Architecture review + recommendations
  • 2-week sprint with final report
  • 30-day follow-up support
  • Hands-on implementation
  • Dedicated engineer
Get Started
Enterprise
Custom/retainer
Multi-stream programmes for Fortune 500 and scale-ups
  • Dedicated pod (4–8 engineers)
  • Multi-cloud, multi-region architectures
  • 200+ AI agent deployments
  • SLA-backed support (99.9%)
  • Quarterly executive reviews
  • Co-authoring on whitepapers
Talk to Us
Client Outcomes

Real Results from Real Engagements

Numbers speak louder than testimonials. Here's what we've delivered.

Pharma / Life Sciences
6wks → 1day
ML Deployment Cycle Reduced

Built a full MLOps platform on AWS SageMaker + MLflow for a global pharma MNC. Automated model retraining, versioning, and canary rollouts — eliminating 6-week manual deployment cycles entirely.

Pharma MNC, India MLOps · SageMaker · MLflow · KubeFlow
FinTech / Banking
$240K
Annual Cloud Cost Savings

Rebuilt cloud infrastructure on AWS with FinOps-first architecture — right-sizing EC2 fleets, eliminating zombie resources, implementing intelligent tiering on S3. Achieved 99.99% uptime since go-live with zero unplanned outages.

FinTech Platform, Southeast Asia AWS · Terraform · FinOps · Grafana
Healthcare SaaS
200+
AI Agents Deployed in Production

Designed and deployed 200+ AI agents on AWS Bedrock AgentCore — covering clinical data extraction, regulatory compliance summarisation, and patient journey analytics. Full enterprise governance and audit trail included.

Healthcare SaaS, US & India AWS Bedrock · AgentCore · LangChain · RAG
Retail / E-Commerce
<1sec
Real-Time Analytics Latency

Migrated a batch-daily reporting pipeline to a real-time streaming lakehouse on Kafka + Redshift + dbt. Sub-second dashboards replaced overnight batch jobs, unlocking live inventory and pricing decisions.

Retail Chain, India Kafka · Redshift · dbt · Databricks
IoT / Industrial
1B+
Events Processed Per Day

Built a high-throughput IoT telemetry pipeline on AWS Kinesis + Timestream for real-time sensor monitoring across manufacturing plants. ML anomaly detection reduced unplanned downtime by 38%.

Industrial IoT, India & EU Kinesis · Timestream · SageMaker · Spark
Life Sciences
38%
Reduction in Downtime

Deployed predictive maintenance ML models on edge compute — processing sensor data at the plant level and alerting engineers before failures occur. Integrated with existing MES systems with zero disruption to operations.

Life Sciences Manufacturer Edge ML · Spark · Airflow · Grafana
Expertise · Certifications · Recognition
AWS Advanced PartnerCertified Cloud Architects
Bedrock AgentCore200+ Agents in Production
Databricks PartnerLakehouse Architecture
SOC2 ReadyEnterprise Security Standards
FinOps CertifiedCloud Cost Optimization
18+ Years DeliveringGlobal Enterprise Clients
Client Stories

What Our Clients Say

Real outcomes from real engineering engagements.

RM

Rohan Mehta

VP Engineering, Pharma MNC

codetoday.io transformed our ML lifecycle. We went from 6-week model deployment cycles to same-day deploys. Their MLOps platform has become the backbone of our AI strategy.

PS

Priya Sharma

Chief Data Officer, FinTech

Their data engineering team built our real-time analytics platform on Kafka + Redshift in 8 weeks. We went from batch-daily reporting to sub-second dashboards. Incredible execution.

AN

Arjun Nair

CTO, Healthcare SaaS

The AWS cost optimization they delivered saved us $240K annually. But more importantly, their infrastructure is solid — we've had 99.99% uptime since they rebuilt our platform.

SK

Sneha Kulkarni

Head of AI/ML, Life Sciences

We deployed 200+ AI agents across our organization with codetoday.io's AgentCore platform. Their team understood both the technical depth and enterprise governance needs. Exceptional partners.

Proof of Work

Real Engagements, Real Results

Three case studies. Measurable outcomes. No stock photos, no made-up metrics.

// E-Commerce · DevOps
3 weeks → daily

E-Commerce DevOps Overhaul

Replaced a fragile Jenkins monolith with ArgoCD + GitHub Actions on EKS. 8 deploys a day, $175K/mo cloud savings, zero P1 incidents in 6 months.

8xDeploy Frequency
$175KMonthly Savings
0P1 Incidents
Read full case study
// Life Sciences · GenAI
200+ AI agents deployed

Pharma Clinical Data — 200+ AI Agents on Bedrock AgentCore

Multi-agent orchestration on AWS Bedrock AgentCore for clinical data extraction and regulatory document summarization. 87% analyst time saved.

200+Agents Deployed
87%Time Saved
3 moTime to Deploy
Read full case study
Deep Dive

Explore Our Services in Depth

Click a service to see tools, outcomes, and a real case study snapshot.

DevOps & Platform Engineering

We build internal developer platforms and CI/CD systems that reduce deployment friction to zero. Your teams ship code continuously with full observability, automated rollbacks, and GitOps workflows that scale from 5 engineers to 500.

10x
Deploy Frequency
80%
Less Toil
<5min
MTTR
KubernetesArgoCDTerraformGitHub ActionsGrafanaPrometheusVaultBackstage
Start a DevOps engagement →
Core Toolchain
Kubernetes
GitOps
Terraform
Grafana
Vault
Docker
Recent Outcome
6wk → 1day
Release cycle reduction for a 120-engineer fintech platform team using GitOps + feature flags.

MLOps & AI Platforms

We build the infrastructure that keeps ML models in production — not just the initial deploy. Feature stores, automated retraining pipelines, model registries, A/B testing frameworks, and the observability layer to catch data drift before it becomes a business problem.

200+
Agents Deployed
85%
Faster Retraining
99.9%
Model Uptime
AWS SageMakerMLflowKubeflowAWS BedrockLangChainFeastEvidently AIDVC
Build your ML platform →
MLOps Stack
SageMaker
MLflow
Bedrock
LangChain
Evidently
Kubeflow
Pharma Client
200+ Agents
Multi-agent AI platform on Bedrock AgentCore for clinical data extraction with enterprise guardrails.

Data Engineering

Reliable ELT/ETL pipelines, lakehouse architectures, and semantic data layers that your BI teams can trust. We replace fragile spaghetti pipelines with lineage-tracked, tested, observable data workflows that just work — even at 1B+ events per day.

<1s
Query Latency
1B+
Events/Day
99.8%
Pipeline SLA
Apache SparkApache AirflowdbtApache IcebergAWS GlueKafkaRedshiftDatabricks
Fix your data stack →
Data Stack
Spark
Airflow
dbt
Kafka
Redshift
Databricks
Retail Client
Batch → <1sec
Real-time streaming lakehouse on Kafka+Glue+Redshift replacing overnight batch jobs.

Big Data & Analytics

Petabyte-scale data warehouses, real-time OLAP engines, and BI platforms that transform raw event streams into business intelligence. We architect for the volume you have today and the 10x you'll have in 18 months.

10TB+
Daily Ingestion
60%
Query Speedup
$180K
Avg. Saved/yr
SnowflakeDatabricksRedshift ServerlessBigQueryApache FlinkPinotOpenSearchLooker
Scale your analytics →
Analytics Stack
Snowflake
Databricks
Redshift
OpenSearch
BigQuery
Looker
IoT Client
1B+ events/day
Industrial telemetry platform on Kinesis+Timestream with ML anomaly detection reducing downtime 38%.

Generative AI & LLM Agents

Custom AI agents, RAG systems, and multi-agent orchestration workflows built for enterprise production — not just demos. We add the guardrails, audit trails, cost controls, and governance layers that make AI deployable in regulated industries.

200+
Agents Live
40%
Task Automation
SOC2
Compliant
AWS BedrockAgentCoreLangChainLlamaIndexOpenAI APIAnthropic ClaudePineconeGuardrails AI
Deploy AI agents →
AI Agent Stack
Bedrock
AgentCore
LangChain
Pinecone
Guardrails
Claude
Healthcare SaaS
200+ agents
Clinical data extraction and regulatory summarization on Bedrock AgentCore with full audit trail.

Cloud Infrastructure & FinOps

Multi-cloud architecture, infrastructure-as-code, security hardening, and cloud cost optimization. We don't just reduce your bill — we instrument FinOps observability so your teams can see cost attribution in real time and catch waste before it accumulates.

35%
Cost Reduction
$240K
Avg. Savings
99.99%
Uptime
AWS Cost ExplorerTerraformAWS ConfigCloudTrailInfracostSpot.ioCheckovProwler
Reduce your cloud bill →
FinOps Toolchain
AWS
Terraform
Config
CloudTrail
Infracost
Prowler
FinTech Platform
$240K/yr
Cloud cost optimization on AWS — idle resource elimination, right-sizing, S3 intelligent tiering.
Our Toolbox

Built on the Tools That Actually Scale

We work with the platforms and frameworks that power the most demanding production environments.

// Cloud & Infra
AWS
Terraform
Kubernetes
Docker
ArgoCD
Vault
// Data & ML
Apache Kafka
Spark
Airflow
dbt
MLflow
SageMaker
// AI & GenAI
Bedrock
AgentCore
OpenSearch
LangChain
Guardrails
Prometheus
// CI/CD & Observability
GitHub Actions
Grafana
Prometheus
Backstage
Datadog
Checkov
Business Case

What Could We Save You?

Adjust the sliders to see a conservative estimate of ROI from a typical engagement.

Engineering team size 10
Monthly cloud spend $100K/mo
Current deploy cycle 14 days

Estimates based on industry benchmarks (McKinsey, Gartner, DORA Report 2024). Actual results vary — we'll give you a detailed estimate in a free consultation.

📊 Estimated Impact
Cloud Cost Savings
$35K/mo
avg. 35% reduction from FinOps + right-sizing
Productivity Uplift
$36K/mo
30% fewer toil hours × loaded engineer cost
Deploy Cycle After
2 days
85% faster time-to-production (DORA Elite)
Estimated Annual ROI
$852K/yr
combined cloud + productivity savings
Ready to validate this for your org?
Book a free 30-min architecture review →
Why codetoday.io

Us vs In-House vs Big 4 Consulting

An honest comparison. We win on speed, depth, and accountability. Not on slide decks.

Criterioncodetoday.ioIn-House TeamBig 4 / SI
Time to first output1–2 weeks3–6 months (hiring)4–8 weeks (scoping)
Seniority of engineersSenior only, no juniors on your workMixed, depends on marketSeniors sell, juniors deliver
Cost structureFixed scope or lean T&MHigh fixed cost + benefits + equity$300–600/hr blended rate
Domain depthMLOps · DevOps · Data · GenAI — specialistsNarrow, depends on hiresGeneralist with thin vertical layers
AccountabilityNamed engineers, direct Slack accessFull (internal)Account manager layer, slow escalation
Knowledge transferBuilt-in: runbooks, workshops, pair programmingNative — knowledge staysOften poor — creates dependency
Scale up/down1 week notice, elastic team sizeMonths to hire or PIPContractually rigid
Delivery track record3 public case studies, verifiable resultsDepends on teamReferences guarded by NDAs
Our Opinions

Technology Radar

Inspired by Thoughtworks. Where we stand on every tool in our stack — updated quarterly.

Adopt — battle-tested, we recommend
Trial — proven, selectively using
Assess — watching closely
Hold — de-risking away from
The People

Meet the Engineering Leads

Senior engineers who've shipped at scale — not consultants who write reports.

AK
Ajeet Kumar
Platform Engineering Lead
15+ years building cloud-native infrastructure. Led DevOps transformations at 3 Fortune 500 companies. AWS Solutions Architect Pro.
KubernetesTerraformFinOps
LinkedIn →
AR
Ananya Rao
MLOps & AI Lead
ML infrastructure specialist. Deployed 200+ production models across pharma and life sciences. Former SageMaker team contributor.
SageMakerMLflowBedrock
LinkedIn →
VJ
Vikram Joshi
Data Engineering Lead
Streaming and lakehouse architect. Built pipelines processing 1B+ events/day for retail and IoT clients. Databricks Certified Professional.
SparkKafkaDatabricks
LinkedIn →
PM
Priya Mehta
AI Platforms Architect
Specialist in LLM agent systems, RAG architectures, and enterprise AI governance. Designed multi-agent workflows across healthcare and fintech.
LangChainAgentCoreRAG
LinkedIn →
Insights

From the Engineering Blog

Technical deep-dives, architecture patterns, and lessons from production.

🤖
MLOps

Deploying 200+ AI Agents on AWS Bedrock AgentCore: Architecture & Lessons Learned

How we designed a multi-agent orchestration system with enterprise guardrails, cost controls, and audit trails for a pharma client.

Jun 2025 · 8 min readRead more →
💸
FinOps

The AWS Cost Spiral: How SageMaker Zombie Endpoints Quietly Burn $700K/yr

A practical guide to detecting, attributing, and eliminating idle ML endpoints before they crater your cloud budget.

May 2025 · 6 min readRead more →
Data Engineering

Real-Time Lakehouse on AWS: Kafka → Glue → Redshift Serverless in Under 4 Hours

Step-by-step walkthrough of standing up a production-grade streaming lakehouse with sub-second latency and zero-ops maintenance.

Apr 2025 · 10 min readRead more →
☸️
DevOps

Kubernetes Cost Optimisation Checklist 2025: 14 Levers We Pull on Every Cluster

From namespace resource quotas to Karpenter spot-instance pools — the exact playbook we apply to every client cluster.

Mar 2025 · 7 min readRead more →
🧠
Generative AI

AWS Bedrock vs Azure OpenAI for Enterprise: A Practitioner's Honest Comparison

After running both in production we have strong opinions. Here's where each wins, where each loses, and how to choose.

Feb 2025 · 9 min readRead more →
📊
MLOps

MLflow vs SageMaker: Which MLOps Platform for 2025?

We've used both at scale. The answer depends on your team's cloud maturity, not the marketing slides.

Jan 2025 · 5 min readRead more →
Join the Team

We're Hiring Senior Engineers

We work on the hardest infrastructure problems in data and AI. If you've shipped production ML platforms, real-time data pipelines, or multi-agent AI systems — we'd like to talk.

See all openings →

Why Engineers Love Working Here

Real production work

Zero toy projects. All engagements are production-scale challenges.

Remote-first globally

Work from anywhere. Clients across US, EU, India, Southeast Asia.

Learning budget

$2K/yr for certs, conferences, and courses. We invest in your growth.

Equity upside

Senior engineers get ESOP participation from day one.

DevOps
Senior Platform Engineer
Remote / Bangalore Full-time Competitive

5+ years with Kubernetes, Terraform, and CI/CD at scale. Experience with IDP (Backstage / Port) is a plus.

Apply →
MLOps
ML Platform Engineer
Remote Full-time Competitive

Production MLOps experience: SageMaker, MLflow, feature stores, model monitoring. Bedrock / LLM agent experience a strong plus.

Apply →
Data Eng
Senior Data Engineer
Remote / Bangalore Full-time Competitive

Deep Spark, Airflow, and dbt expertise. Experience with streaming (Kafka, Flink) and lakehouse formats (Iceberg, Delta) required.

Apply →

Frequently Asked Questions

Straight answers to what engineering leaders ask us most.

Engagement size varies by scope. Typical projects run $25K–$150K. We offer a free 2-hour discovery call to size the work accurately before quoting. Most clients see 3–5x ROI within 6 months through reduced incidents, faster deployments, and cloud cost savings.

MLOps is the discipline of running ML models reliably in production — versioning, monitoring, retraining, and CI/CD for models. If your data science team struggles to get models out of notebooks and into production, or models silently degrade over time, you need MLOps. We've shipped production ML pipelines for pharma, fintech, and retail clients.

Quick wins (CI/CD pipeline, K8s hardening, cost audit) ship in 4–6 weeks. Full platform builds (IDP, data lakehouse, multi-agent AI) take 3–6 months. We work in 2-week sprints so you see value every fortnight, not at the end of a long contract.

Both. We have a startup track (Series A–C) focused on building the right foundation fast, and an enterprise track for teams at scale dealing with complexity, compliance, and multi-cloud sprawl. Pricing and deliverables differ — book a call and we'll tell you honestly which track fits.

AWS is our primary speciality — 12 AWS certifications across the team, deep Bedrock/SageMaker/Glue/Redshift expertise. We also work on GCP (Vertex AI, BigQuery) and Azure (ADF, Synapse, Azure ML). Multi-cloud architectures are a core competency.

We're a senior-only team — no juniors billed at senior rates. The engineer who scopes your project ships it. We specialise in cloud-native + AI infrastructure exclusively, so we're deeper than a generalist firm. And we're 30–50% cheaper than Big 4 for equivalent outcomes.

Yes — embedded collaboration is our default model. We pair with your team, document everything, and leave you self-sufficient. Knowledge transfer is a deliverable, not an afterthought. We explicitly avoid dependency-building.

10% of the first engagement value with no cap and no expiry on your referral window (12 months from intro). A $100K project = $10K to you. Payments go out within 30 days of client invoice settlement. Full details on the Partner page.

Client Stories

What Our Clients Say About Us

Real results from real companies. No cherry-picked quotes — these are the outcomes we're most proud of.

★★★★★

"CodeToday migrated our entire ML pipeline to AWS Bedrock in 6 weeks. Our model deployment time dropped from 3 days to 2 hours. The team's depth in both ML and cloud is exceptional — they flagged cost issues before they became problems."

RS
Rahul Sharma
CTO, HealthTech SaaS — Bangalore
★★★★★

"We engaged CodeToday for a cloud cost audit and ended up saving $22K/month. What impressed us most was that they didn't just fix the immediate issue — they left us with dashboards and runbooks so our team can self-manage going forward."

PM
Priya Mehta
VP Engineering, FinTech Startup — Mumbai
★★★★★

"The DevOps transformation they led cut our release cycle from fortnightly to daily deploys. Zero production incidents in 4 months post-launch. The knowledge transfer was genuine — our team now owns and understands everything they built."

AK
Arjun Kapoor
Head of Platform, E-Commerce — Delhi NCR
The Team

Senior Engineers, Not Slide Decks

The people who scope your project are the people who build it. No account managers, no bait-and-switch.

AK
Ajeet Kumar
Founder & Lead Architect
18+ yrs in cloud-native infrastructure, AWS & GCP certified, ex-enterprise architect. Leads all client engagements personally.
LinkedIn
ML
ML Engineering Lead
MLOps & AI Platforms
Specialises in LLM deployment, Bedrock AgentCore, MLflow, SageMaker. Led 200+ agent rollouts across healthcare and fintech clients.
DE
Data Engineering Lead
Data Platforms & Analytics
Kafka, Spark, Redshift Serverless, dbt, Airflow specialist. Designed real-time lakehouse platforms processing 1B+ events/day.
DO
DevOps / Platform Lead
CI/CD & Cloud Infrastructure
Kubernetes, Terraform, GitOps, FinOps. Transformed legacy deployment pipelines for 15+ companies. DORA Elite performer.
Registered Company
CodeToday Technologies LLP
Active · India
12 AWS Certifications
Solutions Architect, DevOps Engineer,
ML Specialist & more
Headquarters
India · Serving clients globally
Remote-first delivery
Get In Touch

Ready to Build Something Great?

Tell us about your engineering challenge. We'll get back to you within 24 hours.

codetoday.io

DevOps · MLOps · Data Engineering · BigData · AI Platforms

Bangalore, Karnataka 560066
India

accounts@codetoday.io

Mon–Fri, 9AM–6PM IST
Response within 24h

0/1000
Sending...
Message sent! We'll be in touch within 24 hours.
Free Consultation

Book a 30-Minute Architecture Review

No sales pitch. Bring your hardest infrastructure problem — we'll discuss options, patterns, and whether we're a fit. Zero obligation.

AI