Look, I’m going to be honest here. I get pitched on finance technology constantly. Every vendor says their thing is revolutionary. Most of it isn’t. But agenticLook, I’m going to be honest here. I get pitched on finance technology constantly. Every vendor says their thing is revolutionary. Most of it isn’t. But agentic

Agentic AI in Finance and Accounting: The Stuff Actually Working Right Now

2025/12/12 21:39

Look, I’m going to be honest here. I get pitched on finance technology constantly. Every vendor says their thing is revolutionary. Most of it isn’t. But agentic AI in finance and accounting? This is actually different. This is the first time in years I’ve seen something that genuinely changes how accounting departments operate.

The problem is nobody’s really talking about what’s actually happening in real accounting departments. They’re talking about the theory. They’re talking about what’s possible. But the actual implementations? The real problems they’re solving? That’s where it gets interesting.

The Close Still Sucks, But It Doesn’t Have To

I have a friend who works as a controller at a supply chain company. We grab coffee maybe once a quarter. Last time we met, she was exhausted. Not tired-busy. Exhausted. She told me they’d just finished month-end close and it took seventeen days. Seventeen days to close the books.

“What the hell are you doing for that long?” I asked.

She walked me through it. They’ve got multiple legal entities. Different currencies. Intercompany transactions that don’t match because of timing. Invoice batches that came through at different times. Someone miscoded a cost center. A duplicate got posted somewhere. By the time they find everything, it’s already day ten, and that’s before the controller even reviews everything and the CFO signs off.

That’s a real close process at a real company. Not broken, not negligent, just normal. This is what closes actually look like in most places.

So when someone tells me that Finance AI Agents can compress that from three weeks to four or five days, I actually pay attention. Because that’s not incremental. That’s someone’s life getting better. That’s not staying at the office until 8pm three nights a week during the last week of the month.

How does it work? The agent runs through all the intercompany transactions, compares them between entities, flags the timing differences automatically, helps identify duplicates, marks transactions that are probably miscoded. All the grunt work that takes your controller sixteen hours just disappears. She reviews the flagged items and approves them. Done. Next day, not next week.

Forecasting That Doesn’t Go Stale Immediately

I was talking to a finance manager at a SaaS company recently. She was complaining about their forecast. They build it monthly. They spend Wednesday and Thursday building the model, getting inputs from product, sales, CS. Friday it’s locked. By Monday, three of the assumptions have already changed because the market moved. By mid-month, the forecast is basically fiction.

“So why don’t you update it?” I asked.

She laughed. “Who has time? We’ve already moved on to the next close.”

That’s the actual problem that agentic AI in finance and accounting solves for forecasting. The system doesn’t sleep. It’s not waiting for someone to have time to update the model. New data comes in, the forecast updates. When something changes that’s material—maybe you have a big customer win, or churn picks up—it flags it. You actually know in real-time when your assumptions are breaking down instead of discovering it three weeks later.

She said if they had that, they could actually react to things instead of constantly being behind the curve. I get it.

Compliance Doesn’t Have To Be Such A Nightmare

Here’s what happens at most companies when new regulations come down. Compliance team reads the regulations. They spend time interpreting what it means. They talk to audit. They figure out which transactions matter. They build controls. They document controls. They train people. Maybe they build a report. This takes months. Sometimes it takes a year.

I know a compliance officer at a financial services company. She said when SOX rules changed a few years back, it took her team three months to figure out what they actually needed to monitor and build the controls. Three months for something that, in hindsight, wasn’t even that complicated.

With agentic AI in finance and accounting on the compliance side, the system reads the regulation, understands what changed, maps it to actual transactions, sets up monitoring. The compliance officer reviews it, maybe adjusts a few things, signs off. It’s ready to go in days instead of months.

I’m not saying the AI gets it perfect. You still need human judgment. You still need people who understand your business. But the busywork of “okay, here’s a new rule, now let’s figure out which of our 500 accounts are affected” disappears.

The Real Reason This Is Happening Now

Every finance director I know is doing the same thing right now: trying to figure out how to handle more work with fewer people. You can’t hire accountants. You can’t find auditors. People are retiring. Nobody wants entry-level accounting jobs anymore.

So you either accept that everything moves slower, or you find a different way. Finance AI Agents is the different way.

One of my contacts manages a finance shared services center. She’s got teams in two different countries, outsourced to a third. The coordination is a nightmare. But she said if they could get autonomous agents handling the routine reconciliation and close work, she could consolidate two teams into one without actually losing capability. Not through firing people. Just by not replacing people who leave.

That’s the underlying economic reality that’s driving adoption right now. It’s not that companies want to be fancy. It’s that they have to figure out how to operate with structural cost pressure. Agentic AI lets them do that without service degradation.

The Stuff That Actually Matters

Here’s what I’ve learned talking to people who actually use this technology: it’s not about replacing people. It’s about eliminating the worst parts of finance work.

Nobody went into accounting because they love reconciling intercompany transactions. Nobody studied finance because they want to spend two weeks chasing down a variance. The good accountants want to do actual analysis. They want to understand what’s happening in the business. They want to be useful.

Finance AI Agents handle the stuff that’s not useful. The reconciliation. The exception investigation. The routine compliance checks. The variance analysis that’s just data crunching. That all goes to the AI.

What’s left is judgment. Strategy. Understanding. Working with business partners. Making recommendations. That’s the work people actually want to do.

I think this is actually why adoption is accelerating. It’s not because CFOs think AI is cool. It’s because the alternative—trying to do more work with fewer people doing dull work—is unsustainable.

Where This Is Heading

The thing that’s not fully understood yet is what happens when you have multiple agents working together. You’ve got your close automation. You’ve got your compliance monitoring. You’ve got your forecasting. Separately, they’re good. Together, they’re different.

Your treasury system knows your cash position in real-time because the close agent is posting transactions as they happen. Your risk system is monitoring for anomalies continuously. Your procurement system is flagging overbilling and supplier issues. These things talk to each other. You’ve actually got visibility into what’s happening instead of waiting for reports.

One company I heard about had their end-to-end cycle pretty well connected. Invoice comes in. The procurement agent validates it, matches it to the PO, checks for overbilling, flags anything weird. The finance agent schedules payment, posts the entry, updates the ledger. The compliance agent checks it against regulations. Nobody touched any of it. It just happened.

That’s the end state. Full end-to-end automation where Finance AI Agents handle the workflows and humans do the thinking.

Bottom Line

Look, agentic AI in finance and accounting isn’t vaporware anymore. It’s not coming. It’s happening now. Some companies are doing it well. Some are still thinking about it. But the gap between those two groups is getting bigger.

If your finance team is still manually reconciling accounts and closing the books the way it’s been done for the last twenty years, you’re going to find yourself at a competitive disadvantage. Not because you’re stupid or behind. Just because better ways of doing the work actually exist now.

The companies that figure this out in the next year or two will be operating so much more efficiently that their competitors won’t catch up fast. That’s not hype. That’s just how this stuff works when the improvement is this big.

Comments
Market Opportunity
Sleepless AI Logo
Sleepless AI Price(AI)
$0.03775
$0.03775$0.03775
+0.98%
USD
Sleepless AI (AI) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact [email protected] for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

XRP Price Prediction: Can Ripple Rally Past $2 Before the End of 2025?

XRP Price Prediction: Can Ripple Rally Past $2 Before the End of 2025?

The post XRP Price Prediction: Can Ripple Rally Past $2 Before the End of 2025? appeared first on Coinpedia Fintech News The XRP price has come under enormous pressure
Share
CoinPedia2025/12/16 19:22
DMCC and Crypto.com Partner to Explore Blockchain Infrastructure for Physical Commodities

DMCC and Crypto.com Partner to Explore Blockchain Infrastructure for Physical Commodities

The Dubai Multi Commodities Centre and Crypto.com have announced a partnership to explore on-chain infrastructure for physical commodities including gold, energy, and agricultural products. The collaboration brings together one of the world's leading free trade zones with a global cryptocurrency exchange, signaling serious institutional interest in commodity tokenization.
Share
MEXC NEWS2025/12/16 20:46
Why The Green Bay Packers Must Take The Cleveland Browns Seriously — As Hard As That Might Be

Why The Green Bay Packers Must Take The Cleveland Browns Seriously — As Hard As That Might Be

The post Why The Green Bay Packers Must Take The Cleveland Browns Seriously — As Hard As That Might Be appeared on BitcoinEthereumNews.com. Jordan Love and the Green Bay Packers are off to a 2-0 start. Getty Images The Green Bay Packers are, once again, one of the NFL’s better teams. The Cleveland Browns are, once again, one of the league’s doormats. It’s why unbeaten Green Bay (2-0) is a 8-point favorite at winless Cleveland (0-2) Sunday according to betmgm.com. The money line is also Green Bay -500. Most expect this to be a Packers’ rout, and it very well could be. But Green Bay knows taking anyone in this league for granted can prove costly. “I think if you look at their roster, the paper, who they have on that team, what they can do, they got a lot of talent and things can turn around quickly for them,” Packers safety Xavier McKinney said. “We just got to kind of keep that in mind and know we not just walking into something and they just going to lay down. That’s not what they going to do.” The Browns certainly haven’t laid down on defense. Far from. Cleveland is allowing an NFL-best 191.5 yards per game. The Browns gave up 141 yards to Cincinnati in Week 1, including just seven in the second half, but still lost, 17-16. Cleveland has given up an NFL-best 45.5 rushing yards per game and just 2.1 rushing yards per attempt. “The biggest thing is our defensive line is much, much improved over last year and I think we’ve got back to our personality,” defensive coordinator Jim Schwartz said recently. “When we play our best, our D-line leads us there as our engine.” The Browns rank third in the league in passing defense, allowing just 146.0 yards per game. Cleveland has also gone 30 straight games without allowing a 300-yard passer, the longest active streak in the NFL.…
Share
BitcoinEthereumNews2025/09/18 00:41