Likes: | pandas apache-spark scikit-learn django mongodb rabbitmq machine-learning redis mysql docker dokku heroku cloudfoundry javascript cordova amazon-web-services hadoop scitkit-learn tensorflow python bigdata r pyspark google-cloud-platform hadoop2 |
Dislikes: | c# php java |
Improved backtesting performance from days to hours by implementing a scalable distributed cloud-microservice architecture
Established the state-of-the art micro-services architecture using key distributed technologies (Cloudfoundry, Redis, MongoDb, Django, REST) => earned us a EMC/Pivotal Case Study: „risk-intelligent startup architecture“, including the state-of-the-art REST API, workflow engine and several client-facing app templates.
Launched MVP to market within 2.5 months of initial development
Built & hands-on lead the tech team of 5 devs near/offshore (Skype, Github). The team developed GTFS interfaces, several multi-modal routing planner backends/integrations, the data pipeline and prediction backend.
I help clients take business ideas from concept to technical reality. I solve problems that matter - e.g. I created the smartphone app for a med tech diabetes wearable including the bluetooth comms stack, a device-2-device testing harness and a mock-device for unit testing.
My key tasks include evaluating technology and developing apps from MVP to scale, covering a wide technology expertise from smartphone to backend to IoT including scalable data and machine learning pipelines.
Large organization - I am glad to have worked on many different projects.
Lead the technical team to run and extend the operational analytical component for online securities transactions compliance. Substantially reduced deployment cycle time and post-deployment error rates by automation.
Lead the technical team to develop the new card application handling application, interfacing with the issuer.
Helped software engineers write better documentation by establishing a firm-wide sound design and architecture documentation standard, including tool-based automated generation of documentation.
& many more. I was also asked on several occasion to review systems and advice senior management on the best course of action.
For banking clients, I architected, designed and implemented SOA-services for BI statistical applications, including service monitoring & logging, integrated into a credit risk application, reducing operational cost
Also worked with client business to define requirements, then designed & developed a new analytical pricing application for payment services to commercial clients, enabled new revenue source for the bank
Working for the card issuer, took the architecture responsiblity and lead development team for analytical data warehouse interfaces. Delivered within time and budget.
Contributed to successful repositioning of bank services by leading a team of e-Banking experts to define the new CS online portal, initiating redesign and implementation on the IT side. Moderated and ensured senior management decision.
Trainer and coach on career assessment track, identified some young top talents that later became members of senior management.
Built up and lead the e-commerce consulting unit, established technical standards and innovated the project & delivery methodology. Contributed substantially to revenue base, facilitating the sale of the company to be become the Swiss subsidiary which served as the blue-print for the global rollout. My post-acquisition role was to establish the global eCRM/PI practice covering UK, DACH, SA and US counterparts.
Managed technical consulting projects and implemented several BI & data warehouse solutions.
Junior years. Contributed several on-the-job innovations to automate processes and reduce admin efforts in sales applications, improve knowledge sharing.
I was part of a delegation to a technical deep-dive 2-months residency (kernel & UI debugging) at IBM's OS/2 lab in Boca Raton, USA.
Received very positive feedback by reviewers. Particularly on writing a Pythonic MongoDB API that fits well with processing and analytics needs for out-of-core pre-precessing large-scale OSM Map Data. Let's face it, a large part of applied machine-learning is in scalable pre-processing, so that matters. Curriculum
Enhanced and lazy queries for Pandas DataFrames
Fully fledged rule engine for Python
Started the project, implemented the PoC, wrote the specs for implementation, coordinating development & QA. This is actively used by my startup, shrebo.com
Collaborating efficiently among data scientists and software engineers is hard. omega|ml makes it easy - data scientists publish models with a single line of code, developers access the models from a simple REST API. Share Jupyter Notebooks and run them on a schedule for model training, evaluation and reporting.
12factor apps need solid dependency management i.e. automated version tracking. It's a mess. trackbuild solves the problem once and for all - saving time and improving quality.
I created this and maintain it. It is actively used in several projects and saves a lot of time.
A first implementation for an ec2autoscaler using the EC2 API
Created according to specification in a job interview. The framework is generic and operable from the command line.
My machine learning / data science profile with project details
Ever wondered how Twitter manages 25'000 tweets per second or 6 billion API calls a day, with just 500 engineers? Or how Facebook each(!) day takes in 2.7 billion posts and processes 500TB of data? I wondered, too, and this is my summary on some of the amazing technologies these companies have built.
(...) In this paper we present the results of our study on specification patterns for service-based applications (SBAs). The study focuses on industrial SBAs in the banking domain. We started by performing an extensive analysis of the usage of specification patterns in published research case studies --- representing almost ten years of research in the area of specification, verification, and validation of SBAs. We then compared these patterns with a large body of specifications written by our industrial partner over a similar time period. (..., citing the abstract)
Summary report on a CIDR paper on Consistency in a Stream Warehouse, by Golab & Johnson. The report summarises the authors' paper, and includes my contribution of an improved, easier to write and grasp formal notation to describe the streaming consistency model. Contribution to a seminar at ETHZ.
Describes the problem and proposes a solution to people counting, using a distributed, wireless sensor network. The challenge was to count people with a dual-sided inexpensive infrared sensor (PIR), instead of more costly multi-node or camera solutions. Seemingly unrelated, this is actually baseline work for my startup shrebo.com
A summary of the software engineering challenges and emerging solutions in smart grids / distributed/renewable energy production and energy distribution - in particular, looking at demand prediction models and autonomous software agents that act intelligently to keep the energy grid functional. Contribution to a seminar at ETHZ on distributed systems.
Describes how to effectively use automated software documentation tools and architecture views in large financial corporations. The approach solves the problem many large software organisations have: too many hand-crafted documents, in too many versions, yet describing essentially the same thing from different perspectives.
the sharing economy enables smart cities and rebuilds the travel and transportation value chains - think Uber, AirBnB, next self driving cars and drones. At the core of these systems is always demand prediction and resource allocation. shrebo is the platform to run smart cities on.
Envisioned the project and developed the baseline architecture. This included the evaluation and decision on a solid application framework (Django) and choosing an application host (AppFog, a PaaS). I developed and deployed the initial architecture within 2 months of starting.
Enjoys...
Enganged in some sports...
Fundamental understanding of how to create distributed systems that work in a reliable, scalable manner.
Practical insight into building correct parallel and distributed systems.
Practical insight into building and scaling reliable web applications (e.g. using failover, caching, multi-site replication).
Tought me that knowing about the technical inner workings of multicore processors and the memory hierarchy is key to building high-performance applications at scale.
Basic micro economics. Tought me how to look at investement decisions, to gather and structure financial data, to estimate and argue benefits v.s. cost in short- and long-term perspective.
Great book to understand and get the details right.
R can be put to real use with ease, yet given a choice I prefer Python along with NumPy, SciPy, Matplotlib et.al. - much clearer syntax, easier to write maintainable code that is readily portable to web applications.
First Computer: | it ran PASCAL, BASIC and C - and it all fit in 256KB |
Favorite Editor: | Jupyter Notebook, PyCharm, nano, vim -- whatever it takes to be productive |