newsletter

Ricevi gli ultimi aggiornamenti da Hortonworks tramite e-mail

Una volta al mese, ricevi gli approfondimenti, le tendenze, le informazioni analitiche e la conoscenza approfondita dei big data.

AVAILABLE NEWSLETTERS:

Sign up for the Developers Newsletter

Una volta al mese, ricevi gli approfondimenti, le tendenze, le informazioni analitiche e la conoscenza approfondita dei big data.

invito all'azione

Per iniziare

cloud

Sei pronto per cominciare?

Scarica Sandbox

Come possiamo aiutarti?

* Ho compreso che posso disdire in qualsiasi momento. Sono inoltre a conoscenza delle informazioni aggiuntive presenti nella informativa sulla privacy di Hortonworks.
chiudiPulsante di chiusura

Sondaggio sulla scheda segnapunti dei big data Hortonworks

Sponsorizzazione

1. Vision & Strategy

La mia organizzazione ha una visione e una strategia molto limitate per quanto riguarda i big data.
I leader più importanti della mia organizzazione parlano di big data, ma si soffermano su problemi aziendali specifici anziché abbracciare una visione che riguardi l'intera impresa.
An enterprise-wide vision and strategy is taking shape in a formal big data roadmap.
Executive and management teams are aligned on an enterprise big data strategy.

2. Funding

Nella mia organizzazione non esistono fondi destinati ai programmi per i big data, o le risorse necessarie non vengono inserite nel budget.
La mia organizzazione sta avviando alcuni progetti relativi ai big data, ma in genere si tratta di singoli progetti e/o di progetti finanziati con budget IT.
Big data programs are a considered in cyclical budgeting processes at the executive or line-of-business levels.
Big data programs are budgeted and funded in executive and business unit levels.

3. Advocacy

Big data program advocacy is limited to IT or other isolated business groups in my organization.
Big data has at least one executive-level sponsor in my organization, most likely a CTO or CIO.
Big data programs are advocated by multiple senior-level executives.
Executive and business managment in my organizaiton are aligned on the value of data as currency, and actively advocate for its use in key business processes.

4. Business Case

The business case for big data in my organizaiton has not been formally established at the business level or enterprise level.
Pilot project(s) in at least one business group have resulted in local business cases for big data investment.
Multiple pilot projects in more than one business unit have resulted in business cases for big data investment.
My business has realized at least one new revenue stream or business model from big data analytics.

Dati e analitica

1. Data Collection

My organization works primarily with structured data, and must manually collect much of the data we store.
We are ingesting some unstructured data from new sources that didn't exist a few years ago.
La mia organizzazione raccoglie automaticamente dati sia strutturati che non strutturati.
My organization routinely seeks out new data sources of all types.

2. Data Storage

La mia organizzazione ha una capacità di archiviazione limitata, quindi siamo costretti a memorizzare i dati in diversi formati file, o addirittura a non memorizzarli.
Sta crescendo la consapevolezza dell'importanza di memorizzare tutti i dati aziendali, ma alcuni dati vengono ancora costantemente ignorati.
My organization has a unified information architecture and we rarely discard data.
My organization has created a "data lake" or shared data service that pools our enterprise data in a unified architecture.

3. Elaborazione dei dati

Our data processing typically involves structured data in manual processes.
We lack a common metadata/naming structure across the enterprise, but metadata standards are emerging at the business level.
Metatdata/naming conventions are aligned to a unified enterprise architecture, and consisently applied.
Our organization has a data processing engine that ingests and transforms data to align to our enterprise information architecture.

4. Analisi dei dati

My organization's data analysis activities are focused primarily on reporting key business metrics, usually measuring performance.
We dabble in advanced analytics, and those projects tend to have a long time to value.
My organization has a predictive analytics engine and/or the ability to perform real-time analysis.
La qualità, la puntualità e il valore dei dati vengono valutati e ottimizzati ufficialmente con cadenza regolare.

Technology & Infrastructure

1. Strategia di hosting

We primarily host our data storage and analytic applications on premise.
Stiamo valutando o implementando la migrazione degli archivi di dati e delle applicazioni sul cloud per integrare il nostro principale servizio di hosting in loco.
Cerchiamo (o abbiamo adottato) la migliore infrastruttura di hosting ibrida, in parte sul cloud e in parte in loco.
We have optimized our hybrid hosting solution to deliver unified access and consistent speed and dependability.

2. Functionality

We have a traditional data warehouse focused on storage of structured data.
We have at least one big data proof of concept project such as Hadoop.
We have adopted a Tier-2 production class Hadoop cluster and are capable of supporting multiple workloads.
We have a Tier-1 production class Hadoop cluster capable of handling multiple data types from multiple sources.

3. Analytic Tools

Our organization has basic analytic tooling to support canned reporting.
We have adopted analytic tooling to support project-specific objectives.
Centralized resources are made available to business groups seeking fit-for-purpose tools.
Centralized tooling is administered by a big data group supporting various business programs.

4. Integration

Our data infrastructure requires constant maintenance and tuning to support basic storage and access needs.
We see some integration between analytic tools deployed across the organization.
Many of the data tools and resources are integrated across the organization.
La nostra infrastruttura dati è centralizzata e perfettamente integrata.

Organization & Skills

1. Analytic & Development Skills

Our big data skills tend to be located among analysts and other technologists at the business level.
We have in-house talent to support data collection and storage.
Our organization is investing in big data skills that go beyond collection and storage to include data mining and other forms of advanced analytics.
My organization provides training and support for data-related programs across the company.

2. In-house or Outsourced

Stiamo esternalizzando la maggior parte della nostra attività legata alla pianificazione e alla disponibilità dei big data.
Uniamo competenze relative ai big data in loco e supporto esterno per garantire la perfetta riuscita dei progetti teorici.
We have core Hadoop and NoSQL skills in house, but rely on external resources for many advanced data capabilities.
We have built an in-house organization with most of the skills required by our big data roadmap.

3. Leadership Model

We currently do not have a centralized analytics group.
We are talking about the potential value of centralizing data and analytics in our organization.
Abbiamo creato un gruppo dati/analitica centralizzato che si occupa di servizi interfunzionali.
Disponiamo di un centro di elaborazione per i big data centralizzato di eccellenza che coordina e supporta le risorse decentralizzate.

4. Cross-functional practices

Most of our data work is done at the departmental level, with little conversation between functional groups.
Business groups routinely communicate about data programs, and share data resources.
Our Hadoop experts and data warehouse experts routinely collaborate in support of cross-functional programs.
We have created a big data steering committee to ensure organizationl alignment to our roadmap and resources.

Process Management

1. Planning & Budgeting

My company has no formal processes for planning big data programs and investments.
La pianificazione dei programmi e degli investimenti relativi ai big data avviene solo a livello aziendale.
Executive and management processes are aligned for annual review and planning around big data investments.
Data is deeply integrated into planning and investment for every business unit, with widely embraced standards for collaboration and workflows.

2. Operations, Security & Governance

My company has basic data security processes in place but undefined processes for data collection and/or access.
Data operations and governance are being discussed and improved with collaboration between IT and some business units.
An enterprise-wide policy and protocol for data collection and access is in place.
My company adheres to enterprise-grade standards for security, back-up, disaster recovery, and access across all public and private cloud data infrastructure.

3. Program Measurement

There is little or no evaluation of the quality or effectiveness my company's data-related programs.
My company is beginning to see decision support processes emerge from big data pilot projects.
We conduct routine cost/benefit analyses and monitor decision processes and outcomes using data.
Performance measurement standards are defined at a company level and applied routinely by centralized leadership.

4. Investment focus

Investment in big data programs are made on an ad hoc basis with little or no ROI analysis after the fact.
Big data investment is focused primarily on data warehouse optimization and justified primarily on the basis of storage and processing efficiency.
Investment is targeting analytic capabilities directed at discovering and developing new value streams.
Gli investimenti nel settore dei big data tengono conto del miglioramento dei nuovi modelli di business scaturiti dall'analitica avanzata.

Informazioni aggiuntive

SELECT YOUR INDUSTRY IN ORDER TO FINALIZE YOUR SCORECARD: