BMLL Wins ‘Most Innovative Cloud-Based Trading Analytics Initiative’ for BMLL Data Lab at the A-Team Innovation Awards 2025
London, 1st May 2025: We are delighted to announce that BMLL has won ‘Most Innovative Cloud-Based Trading Analytics Initiative’ at the A-Team Innovation Awards 2025. These awards recognise innovative projects and teams across the vendor and practitioner communities that make use of new and emerging technologies to deliver high-value solutions for financial institutions in capital markets.
BMLL was awarded “Most Innovative Cloud-Based Trading Analytics Initiative” for the BMLL Data Lab, a scalable Python research sandbox, a cloud-native environment where users can harness nanosecond, message-by-message data, with unlimited cloud computing power and a full suite of analytics libraries.
BMLL Data Lab clients have direct access to a harmonised data warehouse, benefitting from actionable insight and alpha for algo optimisation, execution analysis, market microstructure research and more. They have the ability to perform scalable research without the burden of data sourcing, curation or engineering. Data is delivered via a fully customisable JupyterLab Python environment. The scalable platform reduces clients’ time to insight by up to 95% (versus on-premise systems).
The BMLL Data Lab is frequently used alongside the BMLL Data Feed and BMLL Vantage, the market microstructure visualisation platform.
Paul Humphrey, Chief Executive Officer of BMLL, said: “We are delighted that the BMLL Data Lab has been recognised as the ‘Most Innovative Cloud-Based Trading Analytics Initiative’ at the A-Team Innovation Awards 2025. Over the past 14 months, we have expanded our data coverage to include 100% of the MSCI All Country World Index and added OPRA options data. All of this is now available within the BMLL Data Lab, enabling users to generate unique insights into trading behaviours, liquidity dynamics, and order flow - and ultimately make better-informed trading decisions.”
In the last 14 months, BMLL added 40+ data sets across Europe, the Americas and APAC. These include: CBOE, Tel Aviv, Athens, Istanbul, Warsaw; Shenzhen, Australia, New Zealand, Japan, Singapore, India, Korea, Taipei, Thailand and Taiwan; FINRA, Canada, Mexico and Brazil.
About BMLL
BMLL Technologies is the leading, independent provider of harmonised, Level 3, 2 and 1 historical data and analytics to the world’s most sophisticated capital market participants, covering global equities, ETFs, futures and US equity options.
BMLL offers banks, brokers, asset managers, hedge funds, global exchange groups, academic institutions and regulators immediate and flexible access to the most granular Level 3, 2 and 1 T+1 order book data and advanced pre and post-trade analytics. BMLL gives users the ability to understand market behaviour, accelerate research, optimise trading strategies and generate alpha more predictably.
Founded in 2014 in the machine learning laboratories of the University of Cambridge, the platform enables researchers and quants across global financial services firms to apply complex statistical techniques to BMLL’s unique big-data sets with applications such as market impact, pre and post trade analytics, order book simulation and compliance. Users no longer need to buy, curate and harmonise data. With BMLL, they gain cost-effective, instant access to a cloud-native Data Science environment via a single web portal, with a long history of the most granular, full order book data across global equities, US equity options, futures and ETFs for back-testing and simulation, delivered directly into their workflows.
BMLL secured $21 million strategic investment in October 2024, led by Optiver, with participation from CTC Venture Capital and existing investors. This follows BMLL's $26 million Series B investment from Nasdaq Ventures, FactSet, IQ Capital’s Growth Fund and Snowflake Ventures in 2022/2023. Prior to that, BMLL raised $36m through Series A and seed funding rounds.
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