From Features to Outcomes: Do Less, Get More Done, with Agents
- Last Updated: Dec 16, 2025
- 15 min read
- Sirion
Your CLM has 47 features. You use 12 of them. And somehow, contract cycles still take six weeks.
Over the last decade, platforms expanded rapidly. More modules, more configuration options, more controls. But core performance indicators for most organizations haven’t shifted in proportion to that growth.
Template automation exists, but legal teams still make manual edits because the logic doesn’t reflect real negotiation patterns. Workflow tools are available, but approvals remain slow because stakeholders default to email. Reporting features have multiplied, but teams still extract data to build their own views. Collaboration modules exist, but counterparties rarely engage through the system.
This is the gap: platform capability has increased substantially; operational results have not. Enterprises are now questioning whether complexity itself has become the constraint.
Apps Make You Click. Agents Make Things Happen
On average, contract professionals spend up to six hours tracking obligations across the lifecycle of a contract. One in four spend more than a full workday in total. And that’s just one use case, working with one contract. Extrapolated to enterprise-scale, the impact is too big to ignore.
When platforms are built around features—clause libraries, workflow engines, obligation trackers—someone has to be the orchestrator. Someone has to decide which module to open, which process to trigger, which data to extract.
In a traditional app, you’re the one managing that logic. You’re clicking through screens, moving between modules, stitching together outputs. The system provides the pieces. You do the assembly.
Agents flip this. Instead of waiting for you to tell them what to do, they execute autonomously based on intent. You describe the outcome—”Review this MSA for deviations from our standard terms”—and specialized agents handle the rest. One extracts the clauses and embedded metadata. Another compares them against your contract playbook. A third surfaces risks and suggests revisions. They collaborate, reason across context, and return a synthesized result.
You’re not navigating. You’re not orchestrating. You’re stating what you need, and the system is delivering.
Take Away the System Fatigue, and What Do You Get?
When the platform shifts from requiring orchestration to executing autonomously, productivity changes at every level:
Hours return to your week. The time you spent searching for precedents, extracting data, and navigating between modules reduces. You focus on assessing risk and taking decisions.
Bottlenecks disappear. Contracts no longer sit in queues waiting for someone to route them correctly. Renewals don’t slip through because no one remembered to set a reminder. Agents monitor continuously, act proactively, and surface what needs attention before it becomes urgent.
Everyone gets the answers they need. A finance analyst can query spending patterns across contracts. A sales director can check payment terms in APAC agreements. The system answers directly, accurately, with source attribution.
Onboarding cycles shorten. New team members become productive in hours, not weeks. They don’t have to scale that steep learning curve or memorize your taxonomy. They describe what they need. The agents execute.
Exceptions surface before they’re problems. A contract auto-renews in 30 days with terms you’d want to renegotiate? You’re alerted now, while there’s still time to act.
Can Your CLM Deliver the Agentic Transformation?
For agents to deliver this kind of sustained productivity, the underlying CLM needs three things:
Memory. Agents must maintain context across interactions. If you’re negotiating a contract over multiple sessions, the system should remember what’s been discussed, what terms have changed, and what’s still unresolved. You don’t restart from scratch every time.
Tools. Agents need access to the same capabilities users do—searching repositories, drafting clauses, running risk analyses, routing approvals. But instead of requiring you to invoke each one manually, agents use them programmatically based on what the task requires.
Explainability. Autonomous doesn’t mean opaque. You need to see what agents are doing, why they made specific decisions, and where they’re getting their information. Trust comes from transparency—clear explanations, direct source links, and the ability to verify or override any action.
The Productivity Shift
The move from features to outcomes isn’t just a better interface. It’s a fundamental reallocation of time.
In a traditional CLM, you spend most of your week managing the system—navigating, extracting, routing, answering questions. The actual contract work happens in the gaps.
In an agent-based system, that inverts. The system manages itself. You spend your time on the decisions that require your expertise: assessing risk, negotiating terms, shaping strategy.
This is what the next evolution of CLM makes possible: not more features. Not more modules. More time for the work that actually matters.