Hire AI agent experts that build & ship autonomous workflows.

Peersol builds production-grade AI agents that handle real work — customer support, sales outreach, ops orchestration — using the latest models and frameworks, deployed and maintained by senior engineers.

  • Scoped discovery to identify where AI agents will have the highest ROI
  • Agents built on OpenAI, Claude, LangChain, CrewAI — right tool for the task
  • Full integration with your CRM, support desk, databases, and APIs
  • Human-in-the-loop controls so your team stays in charge of every outcome
  • Monitoring, alerting, and monthly performance reviews included
Currently accepting 2–3 new clients for July 2026
Call 020 3289 1664
30-min discovery call — no obligation, no sales pitch
★★★★★
"Peersol built us an AI support agent that handles 74% of tickets without human intervention. Setup was clean, the handover was thorough, and they stayed to tune it for 30 days post-launch. Outstanding work."
SL
Sarah L. VP of Customer Success
SaaS company, London UK

Book a free 30-min strategy call

Describe what you want to automate — we'll assess the right AI approach live.

Next available slot: 1 July 2026 · 2 spots remaining
Projects from £3,500  ·  Fixed-scope builds  ·  No lock-in
About Peersol

AI agent development experts who ship, own & maintain.

Peersol is a senior team of AI engineers and automation specialists with offices across the UK, UAE & Pakistan. We build production-grade AI agents for SaaS companies, ops-heavy businesses, and startups that want autonomous workflows — not toy demos.

We work across the full stack: LLM selection, prompt engineering, tool use, RAG pipelines, memory architecture, and human-in-the-loop controls. You work directly with the engineer building your agent — no account managers, no handoffs.

How we work

  • 30-min discovery call to map the workflow and define what "done" looks like
  • Model and framework selection based on your latency, cost, and accuracy needs
  • Iterative build with weekly demos — you approve before we move to the next layer
  • Full deployment, documentation, and team training at handover
  • 30-day post-launch tuning period and optional long-term monitoring retainer
Talk to the engineer, not a sales rep. We'll assess your use case and recommend the right AI stack on the call.
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Our Stack

The AI stack we work in

We pick the right tool for the job — not the one that's trending. Here's what we work with day-to-day.

Foundation Models

LLM Layer

We work across all major frontier models and select based on your latency, context window, cost, and accuracy requirements.

OpenAI GPT-4oAnthropic ClaudeGeminiLlama 3
Agent Frameworks

Orchestration

For multi-agent workflows and tool-use pipelines we use production-grade frameworks with tracing, memory, and error recovery built in.

LangChainLangGraphCrewAIAutoGenn8n
Memory & Retrieval

RAG & Vector DBs

Long-term memory, document retrieval, and semantic search via vector databases — giving your agents access to your full knowledge base.

PineconeWeaviateSupabase pgvectorChroma
Integrations

Tool Use & APIs

Agents that take action across your stack — not just answer questions. CRMs, ticketing, email, calendar, and custom APIs.

HubSpotSalesforceZendeskGmailSlack
Infrastructure

Deployment & Hosting

Production-ready deployments with proper secrets management, logging, and cost controls — not Colab notebooks.

AWS LambdaRailwayRenderDockerVercel
Observability

Monitoring & Evals

Full trace logging, cost tracking, LLM evaluation pipelines, and alerting so you know when an agent drifts off course.

LangSmithLangfuseHeliconeCustom evals
Portfolio

AI agents we've built for real teams

A selection of production deployments. Most live under NDA — ask for relevant examples on the call.

Customer Support 74% deflection rate

24/7 AI support agent with escalation logic

An agent that handles tier-1 support tickets autonomously — pulling from a live knowledge base, updating the CRM, and escalating to humans only when confidence falls below a defined threshold. Deployed across email and in-app chat.

Claude 3.5ZendeskPineconeLangChainSlack
Sales 3× more qualified meetings

AI SDR & lead-qualification agent

Inbound leads are scored against ICP criteria, personalised outreach sequences are drafted for human review, and qualified prospects are auto-booked into the sales calendar. The agent handles the manual work; the human closes the deal.

GPT-4oHubSpotApolloCalendlyLangGraph
Operations 60% less manual reporting

Internal ops copilot with tool-use

A Slack-native agent that answers operational queries by querying live databases, pulling Notion docs, and summarising project status in plain English. The ops team gets answers in seconds instead of waiting for a report to be pulled manually.

ClaudeSlackNotionPostgreSQLLangChain
Have a use case in mind? Share it on the call — we'll tell you whether AI agents are the right fit and what it would take.
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Client stories

What our clients say

Real feedback from founders and operators who've shipped AI agents with us.

★★★★★
"Most AI agencies we spoke to wanted to build on OpenAI wrappers. Peersol actually understood our stack, recommended Claude for the task because of the context window, and were right. The agent has been running for 6 months without a single hallucination incident."
TB
Thomas B. Head of RevOps
B2B SaaS startup, Berlin
★★★★★
"What set Peersol apart was the 30-day tuning period after launch. Most agencies hand over and disappear. The team monitored the agent's outputs, caught edge cases we hadn't anticipated, and tightened the prompts without us having to ask."
PR
Priya R. CTO
HealthTech startup, Singapore
★★★★★
"We needed a sales agent that felt natural, not robotic. Peersol spent two weeks on prompt engineering alone before touching the integration layer. The result is an agent our sales team actually trusts to draft outreach on their behalf."
MC
Marcus C. VP of Sales
EdTech company, London
FAQ

Common questions

Everything you'd want to know before booking a call.

What types of AI agents do you build?

We build task-specific agents (customer support, lead qualification, document processing, internal Q&A) and multi-agent workflows where several specialised agents collaborate on a complex task. We assess whether an agent is the right tool for your use case on the discovery call — sometimes a simpler n8n automation is a better fit, and we'll tell you that rather than oversell AI.

Which AI models and frameworks do you use?

We're model-agnostic. We work with OpenAI (GPT-4o, o1), Anthropic (Claude 3.5 Sonnet / Opus), Google Gemini, and open-source models like Llama 3 for cost-sensitive or on-premise deployments. For orchestration we use LangChain, LangGraph, CrewAI, and AutoGen depending on the architecture. We'll recommend the stack based on your latency, accuracy, and budget — not what we're most comfortable with.

How long does an AI agent project take?

A focused single-agent build (e.g. a support agent or a lead scorer) typically takes 3–5 weeks from kick-off to production. Multi-agent systems or agents requiring custom RAG pipelines with large document corpora take 6–10 weeks. We give you a fixed timeline and weekly demo cadence so you're never in the dark about progress.

What does an AI agent project typically cost?

Projects start from £3,500 for a focused single-agent build. Most client engagements fall in the £6,000–£18,000 range depending on complexity, number of tool integrations, RAG pipeline requirements, and the level of evaluation and monitoring infrastructure included. We quote fixed-price so you know the number before we start, with no hidden costs for model API usage during development.

How do you handle data privacy and security?

We design for data minimisation by default — agents only access the data they need for the specific task. We can deploy entirely within your infrastructure (AWS, GCP, Azure) with no data leaving your environment, or use enterprise API tiers of OpenAI and Anthropic that exclude training data usage. We sign NDAs before any scoping discussion and can provide DPA documentation for GDPR compliance.

Do you offer monitoring and ongoing support after delivery?

Yes. All projects include a 30-day post-launch period where we monitor agent outputs, catch edge cases, and tune prompts at no extra cost. After that, we offer a monthly retainer covering performance reviews, prompt updates, model upgrades, and incident response. Many clients run their agents self-managed after handover — we document everything thoroughly so your team can maintain it.

Let's talk

Ready to build your first AI agent?

Tell us the workflow you want to automate or the process costing your team time. We'll come back with a free scoping note — or scope it live on the call.

Send us a message

Fill in the form and we'll come back with a free scoping note.