Data Science Central (@analyticbridge) 's Twitter Profile
Data Science Central

@analyticbridge

Part of the DSC community, our focus is on the evolving future of data and the technology that is driven by it. Community Editor is Kurt Cagle.

ID: 14174897

linkhttp://www.datasciencecentral.com/profiles/blogs/check-out-our-dsc-newsletter calendar_today19-03-2008 05:26:29

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231,231K Followers

3,3K Following

Data Science Central (@analyticbridge) 's Twitter Profile Photo

It’s not your #algorithm, it’s your #data, more data equals better #predictivemodels, learn why from @Mobilewalla, read the white paper, #sponsored bit.ly/3ljQuIk

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In the third-party #dataenrichment market, data quality is not equal across the board. Read to find out from @Mobilewalla why researching third-party data partners and ensuring they are providing high-quality, privacy-compliant data is a must. #sponsored hubs.ly/Q014mjr10

Data Science Central (@analyticbridge) 's Twitter Profile Photo

#Predictivemodeling combines features and #machinelearning to predict outcomes. In this @Mobilewalla Technology Brief, they explore how to streamline #featureengineering for better predictive modeling results. Read the brief. #sponsored bit.ly/3wBjYGv

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In each episode of Data Point of View, members of the @Mobilewalla team join data science leaders and experts to discuss topics like #predictivemodeling, #featureengineering, and #dataenrichment. #sponsored Check out all the episodes here: hubs.ly/Q017Hj5v0

Data Science Central (@analyticbridge) 's Twitter Profile Photo

#AI has different data requirements, #datacentricai changes the thinking and leads to better #precitivemodels, read why in this @Mobilewalla white paper, #sponsored bit.ly/3ljQuIk

Data Science Central (@analyticbridge) 's Twitter Profile Photo

#Predictivemodeling combines features and #machinelearning to predict outcomes. In this @Mobilewalla Technology Brief, they explore how to streamline #featureengineering for better predictive modeling results. Read the brief. #sponsored bit.ly/3wBjYGv

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In the third-party #dataenrichment market, data quality is not equal across the board. Read to find out from @Mobilewalla why researching third-party data partners and ensuring they are providing high-quality, privacy-compliant data is a must. #sponsored hubs.ly/Q014mjr10

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In each episode of Data Point of View, members of the @Mobilewalla team join data science leaders and experts to discuss topics like #predictivemodeling, #featureengineering, and #dataenrichment. #sponsored Check out all the episodes here: hubs.ly/Q017Hj5v0

Data Science Central (@analyticbridge) 's Twitter Profile Photo

It’s not your #algorithm, it’s your #data, more data equals better #predictivemodels, learn why from @Mobilewalla, read the white paper, #sponsored bit.ly/3ljQuIk

Data Science Central (@analyticbridge) 's Twitter Profile Photo

#Predictivemodeling combines features and #machinelearning to predict outcomes. In this @Mobilewalla Technology Brief, they explore how to streamline #featureengineering for better predictive modeling results. Read the brief. #sponsored bit.ly/3wBjYGv

Data Science Central (@analyticbridge) 's Twitter Profile Photo

#AI has different data requirements, #datacentricai changes the thinking and leads to better #precitivemodels, read why in this @Mobilewalla white paper, #sponsored bit.ly/3ljQuIk

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In the third-party #dataenrichment market, data quality is not equal across the board. Read to find out from @Mobilewalla why researching third-party data partners and ensuring they are providing high-quality, privacy-compliant data is a must. #sponsored hubs.ly/Q014mjr10

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In each episode of Data Point of View, members of the @Mobilewalla team join data science leaders and experts to discuss topics like #predictivemodeling, #featureengineering, and #dataenrichment. #sponsored Check out all the episodes here: hubs.ly/Q017Hj5v0

Data Science Central (@analyticbridge) 's Twitter Profile Photo

It’s not your #algorithm, it’s your #data, more data equals better #predictivemodels, learn why from @Mobilewalla, read the white paper, #sponsored bit.ly/3ljQuIk

Data Science Central (@analyticbridge) 's Twitter Profile Photo

#Predictivemodeling combines features and #machinelearning to predict outcomes. In this @Mobilewalla Technology Brief, they explore how to streamline #featureengineering for better predictive modeling results. Read the brief. #sponsored bit.ly/3wBjYGv

Data Science Central (@analyticbridge) 's Twitter Profile Photo

#AI has different data requirements, #datacentricai changes the thinking and leads to better #precitivemodels, read why in this @Mobilewalla white paper, #sponsored bit.ly/3ljQuIk

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In the third-party #dataenrichment market, data quality is not equal across the board. Read to find out from @Mobilewalla why researching third-party data partners and ensuring they are providing high-quality, privacy-compliant data is a must. #sponsored hubs.ly/Q014mjr10

Data Science Central (@analyticbridge) 's Twitter Profile Photo

In each episode of Data Point of View, members of the @Mobilewalla team join data science leaders and experts to discuss topics like #predictivemodeling, #featureengineering, and #dataenrichment. #sponsored Check out all the episodes here: hubs.ly/Q017Hj5v0

Data Science Central (@analyticbridge) 's Twitter Profile Photo

Reinventing or Reusing? Home-made vs Third-party Solutions. bit.ly/3y5HIVc The decision does not need to be a binary one. I discuss the pluses and minuses of both options. Combining them offers the best of both worlds. I explain with examples how to do it.

Reinventing or Reusing? Home-made vs Third-party Solutions. bit.ly/3y5HIVc
The decision does not need to be a binary one. I discuss the pluses and minuses of both options. Combining them offers the best of both worlds. I explain with examples how to do it.
Data Science Central (@analyticbridge) 's Twitter Profile Photo

The Riemann Hypothesis in One Picture: bit.ly/3ywoZT2 - I wrote this article for machine learning and analytic professionals in general. Actually, I describe a new visual, simple, intuitive method for supervised classification. It involves synthetic data and explainable

The Riemann Hypothesis in One Picture: bit.ly/3ywoZT2 - I wrote this article for machine learning and analytic professionals in general. Actually, I describe a new visual, simple, intuitive method for supervised classification. It involves synthetic data and explainable