As AI adoption grows, token consumption comes under close scrutiny
Businesses are facing hefty AI bills, prompting a shift from simply counting AI tokens to scrutinising their actual value. Companies are now tracking cost per outcome and implementing stricter controls like usage dashboards and approval mechanism...

As enterprises grapple with mounting AI bill shocks, they are increasingly tracking metrics such as cost per workflow, cost per transaction, cost per document reviewed, cost per customer query resolved, cost per software change delivered and productivity gains per process, said Ashvin Vellody, chief strategy and innovation officer, Consulting, at Deloitte South Asia.
“The stronger organisations are also putting in place usage dashboards, model-selection guidelines, consumption thresholds, approval mechanisms for high-cost models, and governance forums to assess whether AI usage is delivering measurable value,” he added.
Companies are drowning in token bills due to heavy spending on AI tools without clear returns, success metrics, or guardrails. Goldman Sachs has forecast global token usage could surge 24 times to 120 quadrillion tokens per month between 2026 and 2030. Cheaper tokens may not necessarily translate into lower AI bills, Gartner says.
A recent report by brokerage firm Jefferies noted that “AI for now is costing more money than it is saving”. At the same time, large IT services firms are under growing pressure to demonstrate measurable business outcomes rather than simply reporting productivity improvements. To save token costs, HCLTech said it is shifting workloads to sovereign models.
“We have AI offerings that leverage sovereign models and GPUs, as well as non-GPU inferencing, to reduce dependency on high-cost external compute,” said chief technology officer Vijay Guntur.
Tech Mahindra, meanwhile, is deploying smaller open-source models that can deliver comparable business outcomes for clients at a lower operating cost. Some clients are consolidating tools and platforms to improve governance and cost control, said Nikhil Malhotra, the company’s chief innovation officer. It has also invested in building its own AI models suited to enterprise needs.
“Auditability is emerging as a critical component of enterprise AI adoption,” said Chandrashekar Mantha, partner-Assurance at Deloitte India. “Large AI programmes are typically reviewed weekly or fortnightly, while smaller projects may be tracked daily to prevent budget overruns.”
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