Dr. Mike Flaxman is presently the VP of Product at HEAVY.AI, having beforehand served as Product Supervisor and led the Spatial Knowledge Science apply in Skilled Providers. He has spent the final 20 years working in spatial environmental planning. Previous to HEAVY.AI, he based Geodesign Technolgoies, Inc and cofounded GeoAdaptive LLC, two startups making use of spatial evaluation applied sciences to planning. Earlier than startup life, he was a professor of planning at MIT and Trade Supervisor at ESRI.
HEAVY.AI is a hardware-accelerated platform for real-time, high-impact knowledge analytics. It leverages each GPU and CPU processing to question huge datasets shortly, with assist for SQL and geospatial knowledge. The platform consists of visible analytics instruments for interactive dashboards, cross-filtering, and scalable knowledge visualizations, enabling environment friendly large knowledge evaluation throughout varied industries.
Are you able to inform us about your skilled background and what led you to hitch HEAVY.AI?
Earlier than becoming a member of HEAVY.AI, I spent years in academia, in the end educating spatial analytics at MIT. I additionally ran a small consulting agency, with a wide range of public sector shoppers. I’ve been concerned in GIS tasks throughout 17 nations. My work has taken me from advising organizations just like the Inter American Growth Financial institution to managing GIS know-how for structure, engineering and development at ESRI, the world’s largest GIS developer
I bear in mind vividly my first encounter with what’s now HEAVY.AI, which was when as a advisor I used to be liable for state of affairs planning for the Florida Seashores Habitat Conservation Program. My colleagues and I had been struggling to mannequin sea turtle habitat utilizing 30m Landsat knowledge and a pal pointed me to some model new and really related knowledge – 5cm LiDAR. It was precisely what we wanted scientifically, however one thing like 3600 instances bigger than what we’d deliberate to make use of. For sure, nobody was going to extend my funds by even a fraction of that quantity. In order that day I put down the instruments I’d been utilizing and educating for a number of a long time and went searching for one thing new. HEAVY.AI sliced via and rendered that knowledge so easily and effortlessly that I used to be immediately hooked.
Quick ahead a couple of years, and I nonetheless assume what HEAVY.AI does is fairly distinctive and its early wager on GPU-analytics was precisely the place the business nonetheless must go. HEAVY.AI is firmly focussed on democratizing entry to large knowledge. This has the info quantity and processing velocity element in fact, basically giving everybody their very own supercomputer. However an more and more vital side with the appearance of huge language fashions is in making spatial modeling accessible to many extra folks. As of late, moderately than spending years studying a posh interface with hundreds of instruments, you possibly can simply begin a dialog with HEAVY.AI within the human language of your alternative. This system not solely generates the instructions required, but in addition presents related visualizations.
Behind the scenes, delivering ease of use is in fact very tough. At present, because the VP of Product Administration at HEAVY.AI, I am closely concerned in figuring out which options and capabilities we prioritize for our merchandise. My intensive background in GIS permits me to actually perceive the wants of our clients and information our growth roadmap accordingly.
How has your earlier expertise in spatial environmental planning and startups influenced your work at HEAVY.AI?
Environmental planning is a very difficult area in that it’s good to account for each completely different units of human wants and the pure world. The overall answer I realized early was to pair a technique often called participatory planning, with the applied sciences of distant sensing and GIS. Earlier than selecting a plan of motion, we’d make a number of situations and simulate their optimistic and damaging impacts within the laptop utilizing visualizations. Utilizing participatory processes allow us to mix varied types of experience and clear up very advanced issues.
Whereas we don’t usually do environmental planning at HEAVY.AI, this sample nonetheless works very effectively in enterprise settings. So we assist clients assemble digital twins of key components of their enterprise, and we allow them to create and consider enterprise situations shortly.
I suppose my educating expertise has given me deep empathy for software program customers, significantly of advanced software program techniques. The place one pupil stumbles in a single spot is random, however the place dozens or tons of of individuals make comparable errors, you realize you’ve obtained a design situation. Maybe my favourite a part of software program design is taking these learnings and making use of them in designing new generations of techniques.
Are you able to clarify how HeavyIQ leverages pure language processing to facilitate knowledge exploration and visualization?
As of late it appears everybody and their brother is touting a brand new genAI mannequin, most of them forgettable clones of one another. We’ve taken a really completely different path. We imagine that accuracy, reproducibility and privateness are important traits for any enterprise analytics instruments, together with these generated with massive language fashions (LLMs). So we’ve constructed these into our providing at a elementary stage. For instance, we constrain mannequin inputs strictly to enterprise databases and to supply paperwork inside an enterprise safety perimeter. We additionally constrain outputs to the most recent HeavySQL and Charts. That implies that no matter query you ask, we are going to attempt to reply together with your knowledge, and we are going to present you precisely how we derived that reply.
With these ensures in place, it issues much less to our clients precisely how we course of the queries. However behind the scenes, one other vital distinction relative to shopper genAI is that we wonderful tune fashions extensively towards the particular kinds of questions enterprise customers ask of enterprise knowledge, together with spatial knowledge. So for instance our mannequin is great at performing spatial and time sequence joins, which aren’t in classical SQL benchmarks however our customers use day by day.
We bundle these core capabilities right into a Pocket book interface we name HeavyIQ. IQ is about making knowledge exploration and visualization as intuitive as potential through the use of pure language processing (NLP). You ask a query in English—like, “What had been the climate patterns in California final week?”—and HeavyIQ interprets that into SQL queries that our GPU-accelerated database processes shortly. The outcomes are offered not simply as knowledge however as visualizations—maps, charts, no matter’s most related. It’s about enabling quick, interactive querying, particularly when coping with massive or fast-moving datasets. What’s key right here is that it’s typically not the primary query you ask, however maybe the third, that basically will get to the core perception, and HeavyIQ is designed to facilitate that deeper exploration.
What are the first advantages of utilizing HeavyIQ over conventional BI instruments for telcos, utilities, and authorities companies?
HeavyIQ excels in environments the place you are coping with large-scale, high-velocity knowledge—precisely the form of knowledge telcos, utilities, and authorities companies deal with. Conventional enterprise intelligence instruments typically wrestle with the quantity and velocity of this knowledge. For example, in telecommunications, you may need billions of name information, nevertheless it’s the tiny fraction of dropped calls that it’s good to concentrate on. HeavyIQ lets you sift via that knowledge 10 to 100 instances sooner because of our GPU infrastructure. This velocity, mixed with the flexibility to interactively question and visualize knowledge, makes it invaluable for threat analytics in utilities or real-time state of affairs planning for presidency companies.
The opposite benefit already alluded to above, is that spatial and temporal SQL queries are extraordinarily highly effective analytically – however could be gradual or tough to jot down by hand. When a system operates at what we name “the velocity of curiosity” customers can ask each extra questions and extra nuanced questions. So for instance a telco engineer would possibly discover a temporal spike in tools failures from a monitoring system, have the instinct that one thing goes incorrect at a selected facility, and verify this with a spatial question returning a map.
What measures are in place to stop metadata leakage when utilizing HeavyIQ?
As described above, we’ve constructed HeavyIQ with privateness and safety at its core. This consists of not solely knowledge but in addition a number of sorts of metadata. We use column and table-level metadata extensively in figuring out which tables and columns comprise the data wanted to reply a question. We additionally use inner firm paperwork the place offered to help in what is named retrieval-augmented era (RAG). Lastly, the language fashions themselves generate additional metadata. All of those, however particularly the latter two could be of excessive enterprise sensitivity.
In contrast to third-party fashions the place your knowledge is usually despatched off to exterior servers, HeavyIQ runs regionally on the identical GPU infrastructure as the remainder of our platform. This ensures that your knowledge and metadata stay below your management, with no threat of leakage. For organizations that require the very best ranges of safety, HeavyIQ may even be deployed in a totally air-gapped atmosphere, making certain that delicate data by no means leaves particular tools.
How does HEAVY.AI obtain excessive efficiency and scalability with huge datasets utilizing GPU infrastructure?
The key sauce is actually in avoiding the info motion prevalent in different techniques. At its core, this begins with a purpose-built database that is designed from the bottom as much as run on NVIDIA GPUs. We have been engaged on this for over 10 years now, and we really imagine we’ve the best-in-class answer in the case of GPU-accelerated analytics.
Even the perfect CPU-based techniques run out of steam effectively earlier than a middling GPU. The technique as soon as this occurs on CPU requires distributing knowledge throughout a number of cores after which a number of techniques (so-called ‘horizontal scaling’). This works effectively in some contexts the place issues are much less time-critical, however typically begins getting bottlenecked on community efficiency.
Along with avoiding all of this knowledge motion on queries, we additionally keep away from it on many different widespread duties. The primary is that we are able to render graphics with out transferring the info. Then if you need ML inference modeling, we once more do this with out knowledge motion. And should you interrogate the info with a big language mannequin, we but once more do that with out knowledge motion. Even if you’re a knowledge scientist and need to interrogate the info from Python, we once more present strategies to do that on GPU with out knowledge motion.
What meaning in apply is that we are able to carry out not solely queries but in addition rendering 10 to 100 instances sooner than conventional CPU-based databases and map servers. While you’re coping with the huge, high-velocity datasets that our clients work with – issues like climate fashions, telecom name information, or satellite tv for pc imagery – that form of efficiency enhance is completely important.
How does HEAVY.AI preserve its aggressive edge within the fast-evolving panorama of huge knowledge analytics and AI?
That is an excellent query, and it is one thing we take into consideration consistently. The panorama of huge knowledge analytics and AI is evolving at an extremely speedy tempo, with new breakthroughs and improvements taking place on a regular basis. It actually doesn’t harm that we’ve a ten yr headstart on GPU database know-how. .
I believe the important thing for us is to remain laser-focused on our core mission – democratizing entry to large, geospatial knowledge. Meaning regularly pushing the boundaries of what is potential with GPU-accelerated analytics, and making certain our merchandise ship unparalleled efficiency and capabilities on this area. A giant a part of that’s our ongoing funding in creating customized, fine-tuned language fashions that actually perceive the nuances of spatial SQL and geospatial evaluation.
We have constructed up an in depth library of coaching knowledge, going effectively past generic benchmarks, to make sure our conversational analytics instruments can have interaction with customers in a pure, intuitive means. However we additionally know that know-how alone is not sufficient. Now we have to remain deeply related to our clients and their evolving wants. On the finish of the day, our aggressive edge comes all the way down to our relentless concentrate on delivering transformative worth to our customers. We’re not simply maintaining tempo with the market – we’re pushing the boundaries of what is potential with large knowledge and AI. And we’ll proceed to take action, irrespective of how shortly the panorama evolves.
How does HEAVY.AI assist emergency response efforts via HeavyEco?
We constructed HeavyEco once we noticed a few of our largest utility clients having important challenges merely ingesting at this time’s climate mannequin outputs, in addition to visualizing them for joint comparisons. It was taking one buyer as much as 4 hours simply to load knowledge, and if you find yourself up towards fast-moving excessive climate situations like fires…that’s simply not ok.
HeavyEco is designed to supply real-time insights in high-consequence conditions, like throughout a wildfire or flood. In such situations, it’s good to make selections shortly and primarily based on the absolute best knowledge. So HeavyEco serves firstly as a professionally-managed knowledge pipeline for authoritative fashions corresponding to these from NOAA and USGS. On prime of these, HeavyEco lets you run situations, mannequin building-level impacts, and visualize knowledge in actual time. This provides first responders the important data they want when it issues most. It’s about turning advanced, large-scale datasets into actionable intelligence that may information rapid decision-making.
In the end, our purpose is to present our customers the flexibility to discover their knowledge on the velocity of thought. Whether or not they’re working advanced spatial fashions, evaluating climate forecasts, or attempting to determine patterns in geospatial time sequence, we would like them to have the ability to do it seamlessly, with none technical boundaries getting of their means.
What distinguishes HEAVY.AI’s proprietary LLM from different third-party LLMs by way of accuracy and efficiency?
Our proprietary LLM is particularly tuned for the kinds of analytics we concentrate on—like text-to-SQL and text-to-visualization. We initially tried conventional third-party fashions, however discovered they didn’t meet the excessive accuracy necessities of our customers, who are sometimes making important selections. So, we fine-tuned a spread of open-source fashions and examined them towards business benchmarks.
Our LLM is rather more correct for the superior SQL ideas our customers want, significantly in geospatial and temporal knowledge. Moreover, as a result of it runs on our GPU infrastructure, it’s additionally safer.
Along with the built-in mannequin capabilities, we additionally present a full interactive consumer interface for directors and customers so as to add area or business-relevant metadata. For instance, if the bottom mannequin doesn’t carry out as anticipated, you possibly can import or tweak column-level metadata, or add steerage data and instantly get suggestions.
How does HEAVY.AI envision the position of geospatial and temporal knowledge analytics in shaping the way forward for varied industries?
We imagine geospatial and temporal knowledge analytics are going to be important for the way forward for many industries. What we’re actually centered on helps our clients make higher selections, sooner. Whether or not you are in telecom, utilities, or authorities, or different – being able to investigate and visualize knowledge in real-time generally is a game-changer.
Our mission is to make this sort of highly effective analytics accessible to everybody, not simply the massive gamers with huge assets. We need to be sure that our clients can reap the benefits of the info they’ve, to remain forward and clear up issues as they come up. As knowledge continues to develop and change into extra advanced, we see our position as ensuring our instruments evolve proper alongside it, so our clients are at all times ready for what’s subsequent.
Thanks for the nice interview, readers who want to be taught extra ought to go to HEAVY.AI.