The Off-the-Shelf Market
There is a growing range of AI tools marketed at professional services firms. Some are horizontal — general-purpose document AI or AI writing assistants that work across industries. Others are specifically built for legal (Harvey, Lexis+ AI, ContractPodAi, Luminance) or for consultancy and professional services more broadly.
These tools have real advantages: they are available immediately, they have been tested on large volumes of professional services documents, they handle data security and compliance infrastructure, and they come with support. For certain tasks — drafting assistance, legal research, general document Q&A — they are often the right choice.
But they have meaningful limitations when your use case is specific, your document types are unusual, your output format is fixed, or your workflow needs to integrate with systems that the off-the-shelf tool was not built for.
What Off-the-Shelf Tools Do Well
Off-the-shelf AI tools excel at tasks that are general in nature and where the output is flexible. If you want to ask questions of a large document, get a draft of a standard clause, or search across a case file for relevant precedents, a well-designed legal AI tool can handle these tasks well.
They are also the right choice when your needs are common enough that the vendor has already trained the system on similar documents to yours. The major legal AI vendors have processed millions of UK commercial contracts, court documents, and regulatory filings — that domain knowledge is a genuine asset.
Where Off-the-Shelf Tools Fall Short
The limitations become apparent in several situations:
Your output format is fixed
If the output needs to look a specific way — a report in your house style, an entry in a specific field in your case management system, a spreadsheet column that feeds a downstream process — most off-the-shelf tools cannot deliver that without significant manual work to reformat their output. A custom-built system produces its output in exactly the format required, every time.
Your document types are non-standard
General legal AI tools are trained on common commercial documents. If your practice involves unusual document types — highly negotiated bespoke agreements, industry-specific contracts, documents in non-standard formats — performance will typically be lower than on standard materials. A custom system trained and tested on your actual documents will consistently outperform a general-purpose tool on accuracy for those specific document types.
Your workflow involves non-document data sources
Much of the automation value in management consultancy comes not from document processing but from monitoring websites, pulling data from APIs, scraping public filings, or aggregating information from multiple structured and unstructured sources. Off-the-shelf tools are designed around documents and text; custom systems can be built to handle arbitrary data sources and combine them in whatever way serves the workflow.
Your data residency requirements are strict
Some firms — particularly those handling highly sensitive client matters — require that document data stays within specific geographic boundaries or is not transmitted to third-party AI infrastructure. Custom-built systems can be deployed on-premises or within your own cloud environment, giving you complete control over where data is processed and stored.
The Cost Comparison
Off-the-shelf tools typically charge per user per month — commonly £50 to £300 per user per month for professional-grade legal AI. For a 20-person team, that is £12,000 to £72,000 per year, every year, regardless of usage.
Custom automation has a higher upfront cost — typically £5,000 to £25,000 to build — but low ongoing costs (API usage, usually £100 to £500 per month). Over a three to five year horizon, a custom system built for a specific high-volume workflow is typically cheaper than a per-seat SaaS tool, even before accounting for the higher accuracy that comes from being purpose-built for your documents.
The crossover point depends on volume and usage. For occasional or exploratory use, off-the-shelf is usually cheaper. For a well-defined, high-volume workflow that runs continuously, custom is usually cheaper by year two.
The Practical Decision Framework
The question to ask is: do I have a specific, defined, high-volume workflow where the output format is fixed and the input types are consistent? If yes, custom is likely the right choice. If the answer is no — if you need general AI assistance across a range of tasks, or if the use case is exploratory — start with an off-the-shelf tool and revisit custom automation once the workflows are clearer.
Many firms use both: off-the-shelf tools for general AI assistance across the practice, and custom automation for two or three specific high-volume workflows where the precision and output control that comes with bespoke systems is worth the build cost.
A Note on DIY
There is a third option: building it yourself, using AI platforms and tools that make this accessible without deep technical expertise. For technically capable firms, this is worth considering for simple, low-stakes workflows. For anything involving client data, complex document types, or production-grade reliability requirements, the time investment in internal development typically exceeds the cost of commissioning a professional build — and the result is a system that needs ongoing technical maintenance rather than a delivered, tested solution with a warranty.