The Complete Guide to Agile Marketing

Bildschirmfoto 2020 03 20 um 12.00.40

Charles Darwin and his theories surrounding evolution have been subjects of criticism and praise for over 150 years. But regardless of what anyone thinks of Darwin, the man got at least one thing indisputably right: nature will always favor the agile. In the past few years, the digital climate of marketing has given new meaning to Darwin’s notion of the “survival of the fittest.”
We live in an always-on, instant success, viral-or-bust era where mobile marketing, 15-second ads, and long form blog posts might be on fleek only long enough for most marketers to read that they’re actually a thing before the next thing comes along. Per Darwin’s theory, being agile has never been more imperative to a marketer’s survival. In an effort to be more agile and to ultimately survive, many marketers have adopted Agile Marketing, a work management methodology that emphasizes visibility, collaboration, adaptability, and continuous improvement.
The Agile methodology, despite its relative newness to marketing, has moved beyond the testing phase and has proven that it not only belongs in marketing, but can also transform the capabilities of marketing teams. A recent study of marketers who have adopted Agile Marketing showed that 93 percent said Agile helped them to improve speed to market (ideas, products, or campaigns).

View whitepaper
Date: 20 March 2020, 15:09 pm   |   Provider: Workfront   |   Size: 1.6 MB   |   Language: English
This may interest you too:
Thumb original rethinking your infrastructure for enterprise ai updated 25 jul 2020 85015685usen

Rethinking Your Infrastructure for Enterprise AI

IDC strongly believes that the days of homogeneous compute, in which a single architecture dominates all compute in the datacenter, are over. This truth has become increasingly evident as more and more businesses have started to launch artificial intelligence (AI) initiatives. Many of them are in an experimental stage with AI and a few have reached production readiness, but all of them are cycling unusually fast through infrastructure options to run their newly developed AI applications and services on.

The main reason for this constant ove ...

To the download
Thumb original 26017626usen 02 26017626usen

Shifting toward Enterprise-grade AI

Clients can realize the full potential of artificial intelligence (AI) and analytics with IBM’s deep industry expertise, technology solutions and capabilities and start to infuse intelligence into virtually every business decision and process.

IBM’s AI & Analytics Services organization is helping enterprises get their data ready for AI and ultimately achieve stronger data-driven decisions; access deeper insights to provide improved customer care; and develop trust and confidence with AI-powered technologies focused on security, risk and ...

To the download
Thumb original 26026326eses 01 lr 26026326eses

Lista de comprobación de limpieza de datos

Le damos la bienvenida a la era de la inteligencia artificial (IA), donde los negocios se ven supeditados a tecnologías de uso intensivo de datos, como el aprendizaje automático y el aprendizaje profundo. Para aprovechar las ventajas de estas nuevas herramientas de IA, debe asegurarse de que el “hogar” en el que almacena los datos de su organización está ordenado.

A continuación dispone de una lista de comprobación para comenzar a limpiar los datos almacenados, que se desglosa en dos fases clave del proceso de limpieza: formación e inferenc ...

To the download
Thumb original 26026326itit 01 hr 26026326itit

Lista di controllo per la gestione dei dati

Benvenuti nell’era dell’intelligenza artificiale (AI), in cui l’operatività dell’azienda dipende dalle tecnologie ad alta intensità di dati, quali machine learning e deep learning. Per utilizzare al meglio questi nuovi strumenti di intelligenza artificiale, è necessario assicurarsi che il luogo in cui risiedono i dati dell’organizzazione sia in ordine.

Ecco una lista di controllo per iniziare il percorso che consentirà di mettere ordine nei dati, suddiviso in due fasi fondamentali: preparazione e inferenza.

Seguire questi passaggi per di ...

To the download
Thumb original 26026326usen 01 26026326usen

Data Housekeeping Checklist

Welcome to the era of artificial intelligence (AI), where the way you do business is reliant on data-intensive technologies like machine learning and deep learning. To take advantage of these new AI tools, you need to make sure your organization’s data "house" is in order.

Here’s a checklist to get you started on your path towards a clean data house, broken down into the two key phases of housekeeping — training and inference.

Follow these steps to help you become an AI master. ...

To the download