January Is a Great Time to Test AI at Work (A 30-Day Approach)

by | Jan 5, 2026 | Integrating AI, Making AI Work

AI Testing

January creates a window that does not exist later in the year.

The pace is calmer. Calendars are not yet crowded. Teams are looking back at what last year felt like and thinking about what they want to do differently.

That makes January a great time for a 30-day AI test. Not a strategy initiative. Not a platform commitment. Just one month of real use to see what actually helps.

 

Why a 30-day approach works

 

Long AI roadmaps often feel responsible, but they delay learning.

A 30-day window does the opposite. It creates focus without pressure. It is long enough to build something useful and short enough to stop if it does not add value.

Most importantly, it forces teams to work with reality instead of assumptions.

 

Start with real work, not ideas

 

The most effective AI efforts do not begin with “What should AI do?”

They begin with “What work is already happening every week?”

In a 30-day cycle, that starting point is usually:

 

  • A recurring report
  • A repeated set of questions
  • A manual intake or review process
  • A workflow everyone tolerates but no one enjoys

 

This keeps the effort grounded and prevents scope creep.

 

What a practical 30-day test looks like

 

Week 1: Identify and scope

Choose one workflow. Define what “better” means. Faster, clearer, more consistent, or less effort.

 

Week 2: Build a first version

Create something usable. It does not need to be perfect. It just needs to work well enough to try.

 

Week 3: Use it in real conditions

Let the team use it as part of their normal work. Pay attention to where it helps and where it adds friction.

 

Week 4: Decide what stays

Refine what worked. Remove what did not. Decide whether to keep it, expand it, or walk away.

 

At the end of 30 days, you have answers, not opinions.

 

What teams usually learn in a month

 

Most teams discover three things quickly:

  • Where AI actually saves time
  • Where human judgment still matters most
  • Which workflows are worth improving next

That learning is far more valuable than picking tools too early.

 

January is about momentum, not commitment

 

The goal of a 30-day approach is not to “adopt AI.” It is to build momentum through small wins that hold up in everyday work.

At Lorain, we build quickly on purpose. Not to rush, but to learn faster. January gives teams the space to do that before the year fills up.

One month. One workflow. Real results.

 

More from the workshop

Time to meet Lorain.ai

Time to meet Lorain.ai

Hello dreamers, doers, and builders, We’ve been quietly working on something new. Tools and ideas that make work feel simpler, smarter, and a little more human. Lorain Newsletter - Sent by...

Read More