Posted on 1 Comment

How does the 2017 version of HPE support enterprise IT departments?

Meg Whitman at HPE Discover 2017
Meg Whitman at HPE Discover 2017

Recently, Amalgam Insights attended HPE Discover, HPE’s semi-annual show devoted to its enterprise offerings. Our firm was especially interested in seeing how HPE would position itself after having divested much of its software portfolio to Micro Focus and then spin-merging its Enterprise Services division with CSC to form DXC Technology on April 1st of this year.

In HPE’s General Session and subsequent presentations, several key themes emerged in HPE’s positioning. The most obvious is that, in consolidating HPE’s offerings to servers, storage, and networking, the company is now focused on being the arms dealer for hybrid IT support. This is based both on the core HPE portfolio of technology and services as well as removing the business services and complementary technologies that were previously seen as competitive to potential HPE competitors. This fundamental change should serve HPE well.

How HPE found its focus

Continue reading How does the 2017 version of HPE support enterprise IT departments?

Posted on 6 Comments

The Evolution of IBM’s Cloud, Watson, and Analytic Consulting at IBM Vision

In mid-May, Amalgam Insights (AI) attended IBM Vision, an event focused on business performance, both as an attendee and a presenter. This has been my favorite IBM tradeshow for several years, as it focuses directly on key concerns that I have looked at throughout my career: financial management, enterprise governance, and compliance. Because everyone at this show is focused on some form of BI, performance management, or risk, it is easy to speak with a business user, consultant, or IBM professional at this show and to quickly find common professional ground.

This year, I took three key findings away from IBM Vision that should be of ongoing value for financial departments within the enterprise.

• The Maturity of IBM’s Cloud Analytics Capabilities
• Promontory Digital’s Role for IBM and IBM Watson
• IBM’s DataFirst Method for Analytic Consulting
Continue reading The Evolution of IBM’s Cloud, Watson, and Analytic Consulting at IBM Vision

Posted on 1 Comment

Informatica Unleashes AI, Brand, Cloud, and Data-Driven Disruption at Informatica World 2017

New Informatica Brand for New Informatica Aspirations
New Informatica Brand for New Informatica Aspirations

Amalgam Insights (AI) recently attended Informatica World 2017, where executives, partners, and customers provided backing for Informatica’s ability to support “The Disruptive Power of Data,” (an Informatica-trademarked phrase) as well as its positioning as the Enterprise Cloud Data Management leader.
Continue reading Informatica Unleashes AI, Brand, Cloud, and Data-Driven Disruption at Informatica World 2017

Posted on 4 Comments

The Definitive Guide to the Asentinel-Tangoe Merger: Marlin Equity Partners Agrees to Acquire Tangoe

Asentinel-Tangoe Merger brings together much of TEM's history.
Asentinel-Tangoe Merger brings together much of TEM’s history.

[Updated May 3rd with links to additional coverage from AOTMP, Blue Hill Research, Oracle Dispatch, StraTEM Consulting, and the Wall Street Journal]

On April 28, Marlin Equity Partners, an investment firm with over $3 billion in capital under management and the current owner of Telecom Expense and Enterprise Mobility Management vendor Asentinel, announced entering an agreement to purchase Tangoe for $6.50 per share for a transaction estimated at $242.6 million in cash.

Continue reading The Definitive Guide to the Asentinel-Tangoe Merger: Marlin Equity Partners Agrees to Acquire Tangoe

Posted on 1 Comment

AI Analyzes Infor’s Intent to Acquire Birst, A Cloud BI Trailblazer

World Cloud Information Big Data Data Global

On April 25th, enterprise application company Infor announced that it planned to acquire Birst, one of the leaders in the standalone Cloud BI world. Birst is expected to remain as a standalone solution and Infor will become Birst’s largest ISV as Birst becomes the analytic back-end for Infor-based applications. Amalgam Insights (AI) finds this to be interesting based on our long history of analyzing Birst.
Continue reading AI Analyzes Infor’s Intent to Acquire Birst, A Cloud BI Trailblazer

Posted on 1 Comment

Michael Saylor Focuses on the Platform at MicroStrategy World 2017

Selective Focus
Selective Focus

tl;dr: in the world of 2017 where these practical BI issues still reign supreme, a practical Michael Saylor has shown up to preach on MicroStrategy’s capabilities. Both the stock market and MicroStrategy competitors should take notice.

On April 19th, MicroStrategy World 2017 had its executive keynote session in DC. I’ve attended MicroStrategy (NASDAQ:MSTR) World in the past as an industry analyst and was interested in seeing how the keynote would come across from afar as an Amalgam Insights (AI) Principal Investigator.

The keynote started with an introduction by CMO Mark Gambill and an interesting demonstration of MicroStrategy Usher being used to track attendee movement across the exhibition hall.
Continue reading Michael Saylor Focuses on the Platform at MicroStrategy World 2017

Posted on 1 Comment

Why Cost-Based Pricing Doesn’t Work: Amalgam Insights’ primer on value-based pricing

money-graph
money-graph

Price is the ultimate test of value. Amalgam cannot emphasis this enough. No matter how valuable you think your product or service is, the ultimate business test of that value is whether someone is willing to buy it at the listed price.

One of my favorite topics in enterprise software is pricing. Despite the work done in value-based pricing over the past 50 years, the vast majority of pricing exercises still start with either a very basic cost-plus or percentage-based ROI model. This assumption has a key issue: it assumes that your product is a commodity. To explain why and to explain how to take a more value-based approach, consider what a price is.

There are many ways to break down price and many roles that price plays from a marketing and sales perspective. But as a starting point, the model AI uses to translate value into price comes from 3 basic components: Reference Price, Differentiated Value, and Price Positioning
Continue reading Why Cost-Based Pricing Doesn’t Work: Amalgam Insights’ primer on value-based pricing

Posted on 1 Comment

Anaplan Hub17 Brings Connected Planning to the Enterprise

Vision Plan Action Success
From Pixabay

When I attended Hub17 in San Francisco, representing Amalgam Insights (AI), I was looking forward to seeing how Anaplan’s go-to-market approach had changed, kept an eye out for key announcements, and looked for clues from the executive team on where Anaplan was heading next. In the process, AI also got some unexpected highlights and guidance on the future of the company.

Anaplan caught AI’s attention a number of years ago when it officially launched the Hyperblock, originally built by Michael Gould, to provide a combination of cube, cell-based, and columnar database architectures. This approach provided a foundational technology that was well-suited to massive and enterprise-scaled models. Once this technology was combined with a go-to-market productization that allowed business users to access the planning and modeling aspects of Anaplan in 2013, Anaplan became a strong solution in the enterprise planning market.

Since that time, Anaplan has been growing quickly and currently goes to market with a “Connected Planning” focus that represents the multiple use cases that Anaplan often supports.
Continue reading Anaplan Hub17 Brings Connected Planning to the Enterprise

Posted on 3 Comments

Oracle Analytics Cloud: AI Investigates Pricing and Enterprise Ramifications

Iron Man Emerging From the Clouds
Iron Man Emerging From the Clouds

On April 4th, Oracle announced that Oracle Analytics Cloud was now generally available with a combination of capabilities designed to provide 4 key C’s for analytics: Collaborative, Connected, Complete, and Choice.

Oracle Analytics Cloud Goals
Oracle Analytics Cloud Goals

In light of this announcement, Amalgam Insights (AI) sought to understand how this offering lined up with what was announced last fall. Oracle initially announced this version of Oracle Analytics Cloud at Oracle Open World in September 2016, which included an end-to-end solution for supporting:
Continue reading Oracle Analytics Cloud: AI Investigates Pricing and Enterprise Ramifications

Posted on 1 Comment

At Domopalooza 17, Amalgam Insights Looks Behind the Hype

Josh James at Domopalooza
Josh James at Domopalooza

Recently, Amalgam Insights (AI) had the opportunity to attend Domopalooza in Salt Lake City. Without a doubt, it was one of the most star-studded and entertaining end user events AI has attended in recent memory. Between Kesha, Jason Derulo, Macklemore and Ryan Lewis, Miguel, Fivethirtyeight’s Nate Silver, Chicago Cubs President Theo Epstein, and Pixar President Ed Catmull, the celebrities were out in force. With the famous people and the hyperbolic claims made on stage that “WE ARE MAKING HISTORY HERE!” it is easy for a jaded industry pundit such as myself to discount the hype and wonder what makes Domo different.

But between the hype, the party, the music, the free-flowing drinks, and the bright lights, Domo also has an excited customer base that was hungry for product announcements and gave strong feedback to new Domo features.

And there were some significant announcements, such as:

Domo’s planned “Mr. Roboto,” to use predictive analytics and machine language to support both an Alert Center for anomaly detection as well as a data science capability that currently looks like a predictive analytics and algorithm toolkit to support business performance challenges.

Domo Business-in-a-Box, a set of pre-built dashboards created to support major business departments, functions, and use cases across the entire organization. AI believes these dashboards will provide a shortcut for enterprises to quickly translate enterprise data into relevant and contextualized departmental insights.

Domo Everywhere, which serves as Domo’s foray into embedded BI with White Label, Embed, and Publish options. AI believes that this capability is important in providing ubiquitous analytics and to allow end users to take advantage of business insights without having to always go back to any specific platform or software solution.

As well as feature improvements such as increased chart options, time-series and period based views, data slicing, and the industry pundits’ favorite: Domo Data Lineage, which got a fair amount of attention in its ability to track data sources, actions, quality, and timeliness. Although Domo is portraying Data Lineage as a feature enhancement for Domo Analyzer, AI believes that Domo will be pleasantly surprised at the enterprise need and interest for Data Lineage, as data governance and data trust have been increasingly trendy concerns for enterprise analytics.

Domo’s Playbook

In speaking with Domo executives, salespeople, and customers, AI also started to see a consistent playbook emerge around Domo that demonstrated how, beyond the hype, the platform started to work as a business insight platform compared to other cloud BI or traditional BI products. Behind the hype, here is what actually seems to be happening for Domo at a high level to gain enterprise adoption.

1) Domo speaks to an executive or key business manager who is stuck with some manual process that requires excessive spreadsheet or Microsoft Access usage. These use cases tend to be focused on marketing, sales, operations, or finance use cases that align with current trends in enterprise performance management

2) Domo is initially implemented through self-service capabilities by line of business decision makers who are able to integrate data with little to no IT support. Once Domo conducts deeper due diligence on the enterprise-wide need for analytics, an analytics or IT management takes the lead within the organization to connect Domo with data from the rest of the company.

3) Domo product deployment and implementation is generally accepted by customers to be simpler than traditional performance management systems such as Hyperion or Cognos as well as simpler than other traditional BI systems.

4) Once Domo is in place, the executive stakeholder and IT manager work together in bringing all relevant departmental data into Domo by hunting down the spreadsheets and local dark data that have traditionally driven the manual process.

5) After this initial implementation and win, Domo gets additional attention internally based on the ease of creating report, the efficacy that these departments see in supporting analytic insights, and the usage rates associated with Domo

This roadmap may not sound like rocket science, but the devil has always been in the details. By connecting the dots between executives, IT, implementation roadblocks, data ingestion, and employee utilization rates, Domo has quickly grown to a $120 million+ annual run rate over the past several years.

AI Observations on the State of Domo

AI notes that Domo has some very specific strengths as a business-oriented insight solution. Its DNA makes it very focused on user interaction, collaboration, and graphic design which results in a front-end product that can be extremely engaging compared to other perceived competitors in the cloud BI space such as Birst, GoodData, and Looker as well as data discovery competitors such as
Qlik and Tableau. One of the most clever things Domo has done is to create “Cards” to display specific data, where each card shows how often the data is being accessed and provides guidance on whether end users are using the data that they should be aware of. Domo’s App Design Studio also can publish with Adobe Illustrator, which provides massive graphic advantages over a variety of other analytic app studios. (And was highlighted on the keynote stage in showing an application built by GE Digital’s Kim Schuhman.)

GE Digitals Kim Schuhman presenting Domo app developed with Adobe Illustrator
GE Digitals Kim Schuhman presenting Domo app developed with Adobe Illustrator

However, Domo has also invested mightily in its own back end technologies as well, including a high performance massively parallel processing columnar database, data warehousing, and 450+ native integrations. AI wonders if Domo needs to continue investing in all of these areas on an ongoing basis or whether it would be more fruitful for Domo to create high-value named partnerships, such as Tableau has created with Informatica or GoodData has created with HP Vertica, to solve some of the back-end and integration challenges. At the end of the day, AI is impressed with Domo’s focus on data collection, process improvement, and user engagement areas where they are truly excellent.

That aside, Domo has built a full-fledged business intelligence platform with a strong focus on supporting usability and adoption. With a loyal customer base, a user experience that seems popular both with end users and with report builders, and an aggressive product roadmap to accelerate time-to-value and integrate machine learning into the platform, AI believes that Domo is well positioned to continue competing in the business intelligence and analytics markets by combining analytic consumption, business process alignment, data aggregation and data integration.