In many organisations, tendering is still described as “getting the bid out”.

On paper, the process looks simple:

Receive RFP → Ask questions → Estimate → Write → Submit.

In reality, the tenders that actually work – both for winning and for execution, are run very differently.

The strongest teams do not follow one long linear process. They work in three tight, overlapping loops:

  1. Overview and risk – understand all essentials on day one, not day ten

  2. Tender development – get clarity on what this requires and build the story, not just the price

  3. Bid delivery and quality – answer the ask, and prove why you are the right partner to deliver

Done well, these loops help you:

  • Build a bid that scores well on quality

  • Avoid walking into an execution problem with your eyes closed

This is also where the right kind of AI and document intelligence can actually make a difference.

Loop 1: Overview and risk – understand all essentials on day one, not day ten

When an RFP lands, the default pattern is:

  • Everyone downloads their own copies

  • People skim “their” sections

  • Someone starts a spreadsheet or slide deck to summarise

A week later, you still do not have a shared, reliable overview of:

  • What the client is really asking for

  • Where the big risks and deal-breakers sit

  • What kind of project this will be to deliver if you win

In a high-performing bid process, day one looks different. You use the first days to build the map.

What good looks like

You map obligations and pass/fail items up front:

  • What do we need to provide to even qualify?

  • Which requirements are hard deal-breakers on experience, capacity or financials?

You surface LDs, guarantees and major risk points early:

  • Where do we carry delay or performance risk, and on what terms?

  • Are there contradictions between contract conditions and technical documents?

  • Where is the scope unclear, overlapping or under-specified?

You send clarifications early, based on real findings, not guesswork. Short, targeted questions with references to exact clauses, not a long unfocused list on the deadline.

This loop is about more than “bid/no-bid”. It is where you start to understand:

  • What it will take to score well

  • What kind of project you are saying yes to in execution

How AI can help

AI and document intelligence can:

  • Ingest all RFP documents, contracts, specs, annexes and Q&A in one place

  • Highlight key obligations, LDs, guarantees, standards and pass/fail criteria

  • Spot conflicts and overlaps across different parts of the tender set

So instead of manually hunting through hundreds of pages, the team starts from a connected overview and can answer:

  • Is this a tender we want to win?

  • If yes, on what risk position and strategy – and is that acceptable for delivery?

Loop 2: Tender development – get clarity on what this requires and build the story, not just the price

Once the essentials and main risks are clear, the real work begins: turning the tender into a delivery strategy and a story the client will trust.

This is where you quietly decide:

  • How you will actually deliver the project

  • Which assumptions you depend on – and who pays when they fail

  • Where you accept risk, and where you push back or qualify

Those decisions shape both your quality score and your execution reality.

What good looks like

You treat tender documents as the baseline for your thinking, not as an afterthought.

Method statements are built around:

  • Real site conditions and logistics

  • The constraints and obligations in the RFP, specs and standards

  • Interfaces to other parties and systems

Partners and subs are briefed from the same understanding of the tender text, not from different local interpretations.

Schedule, allowances and risk register are tied to the same sources:

  • Access, phasing and interface requirements in the documents

  • Clear, referenced assumptions for permits, utilities and third-party dependencies

You avoid “orphan assumptions”. If an assumption affects cost, time or risk, it is tied back to a clause, a clarification, or explicitly marked as a deviation. If it cannot be tied back to anything, it is challenged.

The result is a story that:

  • Makes sense for evaluators reading the bid

  • Gives the execution team a realistic, traceable starting point if you win

How AI can help

AI can:

  • Help teams draft from the actual tender text:

    • “Draft an initial method statement based on sections X, Y and Z.”

    • “Summarise all requirements related to traffic management / groundwater / noise.”

  • Run live checks during development:

    • “Show me every clause that could impact this method.”

    • “Where else are we using this assumption?”

    • “Are we taking risk here that we have not priced or flagged?”

This keeps tender development grounded in what this project actually requires – and reduces the gap between what you wrote to win and what you can deliver.

Loop 3: Bid delivery and quality – answer the ask, and prove why you are the right partner to deliver

By the final stage, most of the big decisions are already made.

Now the job is to:

  • Answer the client’s requirements clearly, one by one

  • Show why your approach, team and experience make you the right partner

  • Make sure your commitments can be delivered in practice

This is where many bids lose points – and where a lot of future disputes are quietly set up.

What good looks like

You close the loop between RFP → response → assumptions.

  • Every requirement is either answered, clarified or explicitly excluded

  • Internal assumptions match what is written in the RFP and clarifications

  • There is a clear link between what you promise the client and what you plan to execute

Compliance checks go beyond “do we have a section for this?”. You test whether the answer actually meets the wording and intent of the criterion.

Quality reviews look at both scoring and realism:

  • Are we telling the same story about method, risk and interfaces across the bid?

  • Are we over-promising compared to what the project team can realistically deliver?

  • Are there contradictions an evaluator will quickly spot – or that will come back in contract and claims?

You also prove why you are the right partner:

  • Clear, relevant reference projects

  • Concrete examples of how you have handled similar risks and constraints

  • Evidence that your organisation has done this before at the required scale

How AI can help

AI can support this loop by:

  • Checking coverage:

    • “Which requirements have we not clearly answered?”

    • “Which criteria are only covered weakly?”

  • Flagging inconsistencies:

    • Different descriptions of the same method or interface

    • Conflicting commitments on risk or ESG

It can also help bring the right evidence into the bid:

  • Surfacing relevant past projects and examples while you draft

  • Standardising how you present experience and outcomes

That gives you a bid that:

  • Is easier to score highly

  • Is more robust in negotiations and audits

  • Gives execution a clearer handover

Where Volve comes in

At Volve, this three-loop model is how we think about serious tenders.

We use AI on the full text of tenders and project documents to help teams:

  • Get early clarity on obligations, risks and interfaces (loop 1)

  • Develop methods, schedules and assumptions that stay connected to the source documents (loop 2)

  • Deliver bids that answer the ask, line by line, with traceable links back to the RFP and clarifications (loop 3)

The aim is simple: a bid process that works – for winning, and for delivery.

Read more about how AI can improve tender quality scores in construction here.

Herman B. Smith

CEO & Co-Founder

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