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Hyperscale data warehouse vendor Ocient announced today that it has raised $42.1 million as the second extension of its series B funding to accelerate the development and delivery of energy-efficient solutions for costly and unwieldy operational data and AI workloads.
The funding infusion doesnβt just add to the Chicago startupβs already hefty war chest; it sharpens a mission to make hyperscale analytics radically cheaper and greener at the very moment enterprises fear ballooning dataβcenter power bills.Β
The new round increases the companyβs total funding to $159.4 million. The latest round was led by climate-savvy backers such as Blue Bear Capital and Allstate Strategic Ventures β a signal that investors now view data-platform efficiency as a climate issue as much as a performance one.Β
Ocient CEO Chris Gladwin told VentureBeat that Ocientβs architecture already delivers βtenβtoβone priceβperformance gainsβ on multiβpetabyte workloads, and plans are underway to carry that advantage into new verticals from automotive telemetry to climate modeling. The startup has doubled its revenues for three consecutive years and appointed Henry Marshall, formerly CFO at space-infrastructure firm Loft Orbital, to steer its financial operations, signaling that Ocient is entering a formal growth stage.
A funding round framed by climate economics
The $42.1 million topβup follows the $49.4 million raise in March 2024 that lifted Ocientβs invested capital to $119 million and marked 109 percent yearβoverβyear revenue growth. Alongside its new investors, the company retains support from Greycroft and OCA Ventures, with Buoyant Ventures backing the extension for its βdifferentiated approach to delivering energyβefficient analytics.β Gladwin linked the round to a broader mission: βEnterprises are grappling with complex data ecosystems, energy availability, and the pressure to control costs while proving business value,β he said.Β
Why hyperscale analytics hits a wall
Modern data warehouses thrive when datasets are measured in terabytes. Beyond that, network and storage I/O become the choke point, not raw CPU cycles. As Gladwin told VentureBeat, βWhen datasets get bigger, the flow of data from storage to processing units becomes the true limiting factor.βΒ
In telco, adβtech and government deployments, query engines must scan trillions of records while simultaneously ingesting streams that keep pouring in. Traditional cloud architectures that separate compute and object storage force huge volumes of data over the network, inflating latency and energy usage. Those costs escalate further as enterprises layer AI and geospatial workloads on top of each other.
Inside Ocientβs architecture
Ocient flipped the cloud pattern by placing NVMe SSDs right next to compute in what it calls ComputeβAdjacent Storage Architecture (CASA). Company Coβfounder Joe Jablonski explains that this design can βexecute trillions of operations per secondβ on commodity gear.
Complementing CASA is MegaLane, a highβbandwidth internal fabric that keeps βa million parallel tasks in flight,β as Gladwin likes to put it. The result: Ocient claims 10x price-performance gains on SQL and machine learning (ML) workloads, and between 3x and 300x gains on geospatial jobs, depending on query complexity β figures the CEO reiterated during our interview. Alwaysβon ingestion plus βzeroβcopyβ reliability means enterprises can run ETL, adβhoc SQL and ML on the same dataset without resorting to separate systems.
Cutting power, not just cost
Efficiency is the new competitive weapon. Ocientβs own case study shows a legacy telco stack shrinking from 170 nodes to 12 NVMeβrich nodes, slashing energy draw to 12 kW β a 90 percent reduction in power, cost and footprint. The company doubled down by certifying its software on fourth-generation AMD EPYC processors, which deliver 3.5 times more processing power and double the memory throughput per rack, further reducing kilowatt-hours per query.
Gladwin frames the stakes bluntly: βEnergy demand in data centers is accelerating; supply isnβt. Efficiency isnβt optional.β That message resonates with investors like Blue Bear, whose new $200 million climate fund targets machine intelligence solutions for energy-hungry infrastructure.
Market traction and new frontiers
Ocientβs customer base spans telecommunications operators, intelligence agencies, adβtech exchanges and fintech firms processing highβvolume trading data. This year the company shipped its first named solution, the Ocient Data Retention and Disclosure System, to help telecom providers meet lawfulβdisclosure requirements faster and with lower energy use.Β
Gladwin says the next growth wave will come from automotive sensor analytics and climateβintelligence modeling, where current workflows rely on supercomputers; Ocientβs architecture could cut those costs by at least 75%, enabling more frequent risk analyses for insurers and agribusinesses.
Competing in the hyperscale tier
Ocient does not pitch itself as a generativeβAI database. Gladwin argues that there are numerous other companies already serving that niche, and that Ocientβs sweet spot remains high-volume, structured analytics. Still, the warehouse stores vectors with builtβin linearβalgebra functions and has a similarity index on the roadmap. Against cloud leaders like Snowflake and Databricks, Ocientβs selling point is the point at which scale and concurrency make remoteβstorage architectures too slow or too pricey. Industry analysts say that the threshold typically appears north of a few hundred terabytes, but telco workloads often reach it far earlier due to incessant data ingestion.
Flexible deployments
One reason Ocient has won government and telco deals is deployment choice. The platform ships as software for onβpremises clusters, as a managed service on public clouds or via the companyβs own OcientCloud. That matters when dataβsovereignty rules forbid external SaaS or when customers want to keep compute close to radioβaccess networks.
Whatβs next
Ocient says the fresh capital will accelerate itβs efforts and will fund investments in engineering headcount and partner programs set to expand accordingly.Β
βFuture growth will come from ideas no oneβs thought of yet,β Gladwin told VentureBeat, pointing to climate models as one such nascent domain. If Ocient can keep turning petabyte headaches into subβsecond answers while trimming both bills and carbon, the decadeβlong bet behind CASA could redefine what βenterprise scaleβ means in the age of dataβhungry AI.

