You've found your unicorn! An applied math, statistics, computer science trifecta. I've spent the last twenty years working on all sorts of data and applied science problems, building frameworks that deliver cogent and actionable insights.
Before we dive in, a quick note on this website. It's designed to deliver an adaptive granularity experience; that is, you select the level of detail.
The Institute for Disease Modeling uses sophisticated statistical machinery to track polio outbreaks and forecast vaccine demand across Africa and the world.
Conviva is a B2B, privately held company in the streaming video analytics space. They provide a client-side, QoE reporting layer, and a corresponding, backend analytics service, for many of the streaming video platforms in use today. One of Conviva's core products is Stream ID which aggregates devices into households. At a high level, it addresses a community detection problem involving devices, IP addresses, and the inherently unstable labels used to identify these entities.
I hung out my own shingle. This was my consulting company.
In 2011, while preparing for an IPO, Zillow released a new and improved Zestimate algorithm for assessing single family homes. However, the algorithm proved to be unstable, and the blowback in the press was severe.
In 2010, Globys was in the mobile marketing space, providing software for up- and cross-sell opportunities.
In 2006, Numerix offered a product that allowed financial institutions to price exotic derivatives based on interest and foreign exchange rates. Underpinning these complex financial assets were arbitrage-free (martingale) measures and stochastic differential equations, and the raison d'être of their software was to expose an API to this numerical machienry in a familiar, Excel workbook.
MIT Lincoln Laboratory is a government lab that researches and develops RADAR technologies.
I was on a team of about a dozen PhDs, mostly statisticians and computer scientists. We evangelized experimentation, motivating partner teams to adopt experimentation as part of their normal release cycle. This involved collaborating with product managers to assess usage metrics and combine these KPIs into an overall evaluation criterion. We identified product features that might be good candidates for running first experiments, and we worked with the feature engineering team to ensure correct instrumentation was in place, that data was being collected, and that the quality of the data was of sufficiently high quality. Then we onboarded them into the Bing Experimentation engine: experimentation as a service.
I joined Microsoft as a Researcher during a major restructuring. They were phasing out Test Developer positions and introducing Data Science roles in their stead. Managers didn't necessarily know how to leverage these new skillsets, and I wound up in a data science / business analyst role.
My approach: I offer a hands-on, statistical best-practices approach to data science. This includes expertise in building and hardening data pipelines, designing statistical experiments, and delivering appropriate, interpretable data analyses. I have held senior data scientist roles at ServiceNow and Microsoft and, previously, was a senior software developer at Numerix. My general knowledge of statistical modeling and machine learning is broad and extensive. I have deeper expertise in