Hello, modelers — we have an announcement to share. It’s time for SigOpt to wind down. After a good 9-year run, we are planning to shift our efforts internally.
Because of this, we will also be pausing our efforts on social media until there is more to share. Goodbye (for now) and thank you for all of your support over the years! 💙
Hello, modelers — we have an announcement to share. It’s time for SigOpt to wind down. After a good 9-year run, we are planning to shift our efforts internally.
While we will no longer offer support and updates after September 2023, modelers can continue to access the free and open source versions of SigOpt on our website until further notice: https://t.co/IFWWLrT66g
What is distillation? In this short video, Meghana Ravikumar explains how distillation transfers the knowledge from a large model to a much smaller one, using BERT as an example: https://t.co/yy3OcnxSEp
Modelers can use SigOpt for nearly anything: #DeepLearning, #MachineLearning, or even Airplane Design. Check out our sample use cases for more examples of how to use SigOpt for your business: https://t.co/uOC13BT3lz
Implement SigOpt with just a few lines of code. Instrument your model code to track runs and model artifacts—here's how to get started: https://t.co/EQ5z1cL5Er
“Integrating SigOpt into our modeling platform empowers our team to more efficiently experiment, optimize, and ultimately, model at scale.” – Peter Welinder, Research Scientist @OpenAI
Learn how SigOpt helps teams accelerate their model development: https://t.co/u2sYWpTO5w
What is the DLRM model? @IntelAI Principal Engineer Ke Ding provides an overview of what this model is and how to use it in this short video: https://t.co/NkEOB2FPJD
An All Constraints experiment can help modelers study which parameter regions consistently yield high-performing models. Learn how to use this advanced experimentation technique using SigOpt: https://t.co/IMaw1GcmDH
GNNs can powerfully model tasks to capture a dataset’s natural graph representation, but they are very memory- and compute-hungry. Learn how leaders from @PayPal, @intel, and @awscloud are optimizing and scaling GNNs: https://t.co/Ispl6Hw17D
“We’ve integrated SigOpt’s optimization service and are now able to get better results faster and cheaper than any solution we’ve seen before.” – Matt Adereth, Managing Director, @twosigma
Learn how SigOpt can help you amplify the impact of your models: https://t.co/bgrc34MFJR
Parameters are a crucial part of every experiment, defining the domain to be searched – which is why SigOpt supports double, integer, and categorical parameter types. Learn more about SigOpt's tools to construct a domain for your specific modeling problem: https://t.co/mKnX0HHZfI
See how SigOpt stacks up. In this short video, Associate Professor Paul Leu walks through his test comparing two popular optimization techniques using SigOpt's intelligent experimentation platform to empirically determine the best-performing algorithm: https://t.co/s4UDZrAeDz
Our brains only use about 30-40 watts of power, yet are more powerful than neural networks – which take extensive energy to run. In this interview, learn how @Numenta is building neural networks inspired by the sparsity of the human brain: https://t.co/zZ4zz45IoE
SigOpt offers two API modules: Core Module and AI Module. Not sure which one is right for your #ML project? Check out our guide here: https://t.co/I5wlfyrUt3
Constraint Active Search offers an alternative to working with the Pareto efficient frontier, making it an ideal approach for material sciences and production. In this video, Gustavo Malkomes shares some of SigOpt's latest research on CAS: https://t.co/3Z4yHfEiL9
Did you know that you can bring your own optimizer to SigOpt? Check out our quick-start guide to using your own optimizer and storing your progress in SigOpt: https://t.co/r7k2JnbayW
How are you using SigOpt open source? With our new open source offering, teams can run their own self-hosted servers—meaning your data doesn't leave your server. Learn more: https://t.co/Ov8NixVint
Some modeling problems are best solved through graph form—like identifying money laundering. In this video, @PayPal shares how they approach Graph Neural Networks for detecting fraud: https://t.co/2cNBDFm5TX