Most lawyers encounter artificial intelligence through cloud services like Claude, Gemini or ChatGPT. They type a question, upload a document, and receive an answer produced on computers operated by someone else.
This arrangement is convenient. It also means that the lawyer is relying on an outside company to process the information, maintain appropriate security, follow its stated retention policies, and continue offering the service on acceptable terms. However, many lawyers would rather not share information with third-party vendors, even when the terms of service imply confidentiality.
There is now another practical option. Lawyers can run increasingly capable AI models directly on their own computers.
What “Running AI Locally” Means
A cloud AI service processes a request on the provider’s computers. A local AI application processes the request on the user’s computer.
The computer may still be connected to the internet. It can receive email, open websites, and download updates. What matters is where the AI model is operating and whether the lawyer’s prompt and documents must be sent to an outside company.
This distinction is easy to overlook. Installing an application on a computer does not necessarily mean the AI itself is running on that computer. Some desktop applications are merely gateways to cloud services. Others allow the user to choose between local and cloud models.
Lawyers should therefore ask a simple question before using any AI application for sensitive work:
Is this information being processed on my computer, or is it being sent somewhere else? If you are not completely comfortable with the answer, you should be considering running your AI apps locally.
Why Local Processing Can Matter
The strongest argument for local AI is not that cloud services are unsafe. Reputable providers may offer strong security, enterprise controls, favorable contractual terms, and useful privacy protections.
The advantage of local processing is greater control. When a model runs locally, the lawyer may be able to avoid sending the contents of a document or prompt to the model provider. That reduces the number of outside parties and systems involved in handling the information.
For lawyers, that can simplify the confidentiality analysis. It does not eliminate the duty to secure the computer, supervise staff, manage backups, and understand how the software works. But it may reduce one important category of risk: the risk of transmitting client information to a remote AI service.
Enterprise AI providers spend billions of dollars annually defending their infrastructure against sophisticated cyber threats. When a firm chooses to keep its most sensitive tasks in-house, it assumes the full defensive burden. Hoarding confidential summaries on an unencrypted, locally
synchronized hard drive is not a security strategy—it is simply a bespoke vulnerability. Local AI successfully eliminates the risk of third-party data transmission, but it demands an internal IT posture robust enough to compensate for the loss of enterprise-grade armor.
More Control Over Confidential Documents
Local AI may be useful for tasks involving material that a lawyer is unwilling or unauthorized to upload to a general-purpose chatbot. Possible uses include:
- summarizing a deposition;
- creating a chronology;
- extracting names, dates, and obligations;
- comparing two contract drafts;
- reorganizing notes;
- rewriting correspondence;
- classifying documents;
- turning rough material into an outline.
A local model can perform these tasks without necessarily sending the underlying documents to an outside AI provider. That does not make its answers reliable merely because they are private. Local models can misunderstand documents, omit important details, and invent facts just as cloud models can.
Privacy and accuracy are different questions. The lawyer must still review the result.
More Control Over Retention
Cloud providers differ in how they store prompts, documents, account information, and usage records. Their practices may also vary by subscription plan and product setting. A local application may give the user more direct control over:
● whether conversations are saved;
● where files and logs are stored;
● who can access them;
● whether they are included in backups;
● how long they are retained;
● when they are deleted.
That control is useful, but it is not automatic. A supposedly private conversation may remain on an unencrypted hard drive. It may be copied into a cloud backup. It may be placed in a folder synchronized through iCloud, OneDrive, Dropbox, or another service.
The lesson is not that local AI eliminates data-management problems. It is that the law firm has more power to make its own decisions about them.
The Hardware Reality Check
The cloud, as the adage goes, is merely someone else’s computer. The corollary is that bringing AI in-house requires relying heavily on your own. Modern large language models possess a healthy appetite for unified memory and dedicated graphics processing units (GPUs).
The standard-issue law office laptop—optimized primarily for word processing and endless email chains—may find itself gasping for air when asked to synthesize a 50-page deposition. Upgrading to machines capable of running capable models, such as desktops with robust Apple M-series chips or dedicated GPUs, is often necessary to prevent document review from feeling like a dial-up experience. Local AI may not require a monthly subscription fee, but it still requires a significant capital expense to run smoothly.
The Apple Silicon Advantage
I’m far from being an Apple fanboy. However, an article like this needs to address an important related issue: Windows vs. Mac:
When outfitting an office for local AI, the traditional computing divide between Windows and macOS takes on new dimensions. While standard desktop PCs have long been the workhorses of the legal profession, Apple’s recent hardware architecture offers a distinct, albeit premium, advantage for running large language models.
The secret lies in unified memory. In a conventional PC setup, the central processor and the graphics card maintain separate pools of memory. Running a formidable 70-billion-parameter model locally typically requires stringing together multiple specialized, power-hungry graphics cards—a setup that often generates the heat and ambient noise of a commercial jet engine and looks distinctly out of place next to a mahogany credenza.
Apple’s M-series chips, by contrast, share a single, massive pool of memory across the entire system. A Mac Studio equipped with 128GB or 192GB of unified memory can comfortably load models that would choke most conventional workstations, doing so with a quiet efficiency that borders on the unsettling. For a law firm, this translates to desktop hardware capable of serious AI workloads without requiring a dedicated server room or a specialized cooling apparatus.
There are concessions, of course. The financial toll at checkout is not for the faint of heart, and the architecture is notoriously inflexible; one cannot simply pry open a Mac to add more memory later when models inevitably grow larger. Furthermore, the ecosystem remains highly controlled, lacking the chaotic customizability of open-source PC builds.
Yet, for a profession that typically values reliability and quiet competence over tinkering, these drawbacks are often secondary. If the goal is deploying robust, local AI capability with minimal friction and maximum hardware efficiency, Apple’s silicon currently provides a uniquely elegant, if expensive, path of least resistance.
More Predictable Costs
Local AI is sometimes described as free. That is misleading. The models may be available without a monthly subscription, but the computer, electricity, setup, maintenance, and support all cost money.
Still, local use can make expenses more predictable. That can be appealing when:
● the firm already owns capable computers;
● AI use is frequent;
● smaller models are adequate for the work;
● confidential material cannot conveniently be sent to cloud services;
● the firm wants to reduce dependence on subscription limits and pricing changes.
The point is not that local AI is always cheaper. Cloud services may remain the better bargain for occasional users or for work requiring the most capable models. The main benefit is better control over your information.
Less Dependence on One Vendor
Cloud AI services can change rapidly. Providers may revise prices, usage limits, features, model behavior, and contract terms. Running a model locally gives a firm more choice. It may be possible to compare models, preserve access to a preferred version, and use the same model through different applications.
That doesn’t eliminate dependence on vendors. The firm still relies on software developers, model publishers, hardware manufacturers, and technical support. However, it can reduce dependence on any single cloud service. This matters to many firms.
Internet Access Can Make Local AI More Useful
A local model does not become less local merely because the computer is online. In fact, internet access makes local use more practical. The computer can receive security updates, download new models, use approved research services, and communicate with ordinary office software.
This makes possible a hybrid workflow. A lawyer might:
1. analyze a confidential document locally;
2. conduct legal research through an approved online service;
3. use a cloud model for a difficult nonconfidential task;
4. review and combine the results personally.
That approach recognizes that local and cloud AI have different strengths. Cloud models usually offer greater capability and convenience. Local models offer greater control. A law firm does not have to choose only one.
What Local Models Do Well
The best cloud systems remain more capable than the smaller models most people can run on ordinary computers. Even so, local models may be entirely adequate for many routine tasks, including:
● rewriting;
● summarizing;
● extracting information;
● changing format or tone;
● organizing notes;
● comparing passages;
● generating preliminary outlines.
The performance gap becomes more noticeable when the work requires difficult reasoning, very long documents, current information, sophisticated research, or advanced image and audio analysis.
That suggests another useful principle: Use the smallest and simplest system that performs the task adequately. Not every assignment requires the most powerful model available.
Taking the First Step
For the practitioner inclined to test these waters, the barrier to entry is no longer a degree in computer science. Several accessible applications now serve as user-friendly gateways for running open-weight models locally.
Software such as LM Studio, GPT4All, and Ollama allows a user to download capable models—such as Meta’s Llama 3 or Mistral—and interact with them through an interface virtually indistinguishable from familiar web chatbots. These tools are free to download and operate. More importantly, they provide a practical, low-friction environment for a firm to determine whether its existing hardware, and its workflow, are truly suited for local processing before making a larger commitment.
Local AI Is Not Nirvana
Local models may be slower. They may require more setup. They may lack automatic access to current information. They may be less capable than leading cloud models. The user may also receive less technical support.
Most important, local models remain generative AI systems. They can make mistakes, misunderstand instructions, and produce confident nonsense. Hallucinations are inherent in LLMs. They are not going away any time soon. Professiona judgment still matters. Don’t just verify the accuracy of the citation; make sure the case supports the proposition that you are citing it for.
The Apple Silicon Advantage
When outfitting an office for local AI, the traditional computing divide between Windows and macOS takes on new dimensions. While standard desktop PCs have long been the workhorses of the legal profession, Apple’s recent hardware architecture offers a distinct, albeit premium, advantage for running large language models.
The secret lies in unified memory. In a conventional PC setup, the central processor and the graphics card maintain separate pools of memory. Running a formidable 70-billion-parameter model locally typically requires stringing together multiple specialized, power-hungry graphics cards—a setup that often generates the heat and ambient noise of a commercial jet engine and looks distinctly out of place next to a mahogany credenza.
Apple’s M-series chips, by contrast, share a single, massive pool of memory across the entire system. A Mac Studio equipped with 128GB or 192GB of unified memory can comfortably load models that would choke most conventional workstations, doing so with a quiet efficiency that borders on the unsettling. For a law firm, this translates to desktop hardware capable of serious AI workloads without requiring a dedicated server room or a specialized cooling apparatus.
There are concessions, of course. The financial toll at checkout is not for the faint of heart, and the architecture is notoriously inflexible; one cannot simply pry open a Mac to add more memory later when models inevitably grow larger. Furthermore, the ecosystem remains highly controlled, lacking the chaotic customizability of open-source PC builds.
Yet, for a profession that typically values reliability and quiet competence over tinkering, these drawbacks are often secondary. If the goal is deploying robust, local AI capability with minimal friction and maximum hardware efficiency, Apple’s silicon currently provides a uniquely elegant, if expensive, path of least resistance.
The Likely Future Is Hybrid
Cloud AI will continue to offer some advantages. It provides access to enormous computing resources, sophisticated tools, and rapidly improving models. Local AI offers something different: greater control over selected information, retention practices, model choice, and cost. Some law firms will want the best of both worlds. Cloud models can be used when their superior capabilities and convenience justify their use. Local models can be used when privacy, control, or predictable use matters more.
The key point is to understand that you have options. Don’t assume that every task belongs in the cloud. Choose the right tool for the right task.
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Some Plain-English Supplemental Resources
A Beginner’s Guide to Running AI Models on Your PC. This guide explains what a “local AI” is using zero jargon.
Offline AI Made Easy: A Layman’s Explainer. This article demystifies how a computer can run a chatbot completely offline. It breaks down how data stays entirely on the hard drive, making it a highly reassuring read for professionals worried about confidentiality and data security.
For a visual walkthrough designed for non-technical users, the video “Local LLM Beginner Guide: You Can Actually Run AI For Free” provides a straightforward, step-by-step demonstration that explains how anyone can download and run an AI model entirely on their own machine, without a tech background.









