MMH    Topics     Blogs

A guide to your data and analytics journey

Here's how to future-ready your workforce through upskilling in the areas of digitalization, automation, artificial intelligence and analytics.


Ashok Viswanathan discusses the importance of digitally-upskilling the supply chain workforce.
Ashok Viswanathan discusses the importance of digitally-upskilling the supply chain workforce.

Having a digitally skilled workforce is at the forefront of every executive’s wishlist, especially in the backdrop of the current labor market. Today’s supply chain workforce actively interacts with technology, be it an enterprise platform, a hand-held or logging device or office productivity software. However, the leap from interacting with technology to a future-ready workforce involves upskilling in areas of digitalization, automation, artificial intelligence and analytics. It’s not as easy as it sounds.

Digital upskilling the workforce doesn’t mandate the need to learn coding or becoming data scientists; instead, it involves learning how to think, act and thrive in a digital world. One trait of digital upskilling is trust in analytics informed outcomes. It involves the adoption of analytics applications akin to technology applications and a healthy balance between gut and analytics insights in decision making.

With significant technological advancements, analytics, prediction and AI are unlocking an incredible array of business opportunities with a potential for transformational impact on organizations. The ability of the workforce to participate in the outcome as an accelerator is a key success factor in the transformation.

With that in mind, here is a 4 point roadmap to guide you as you embark on the journey with data and analytics.

1. Document operational processes and decisions at every step
The flow of product in a supply chain involves numerous events, hand-offs, decisions, systems, people and exceptions. These events tend to be recorded in disparate systems and occasionally in spreadsheets resulting in the absence of an end-to-end view. This augurs well for localized decision-making by a functional operator striving to complete their task without visibility to upstream events or a comprehensive understanding of the downstream impacts.

The first step to achieve a holistic analytics and technology driven optimization involves process mapping every step of operational activities. Special attention has to be paid to ensure that the exception management processes are also documented, not just the happy path. This has to be a cross-functional initiative orchestrated by the centralized business process effectiveness team following the principles of genchi gembutsu (“go and see”).

A comprehensive process map enables the visualization and analysis of a connected product journey to track and interpret the current state of flow, lead times, transit times and decision points.

2. Incentivize data governance at source
We’re all familiar with the adage: “Garbage in, garbage out.” The credibility of the data influences the credibility of the insights, the quality of decisions and the effectiveness of the resulting actions. However, if certain elements of an activity do not get captured (ex: exact time of departure of a truck) or underlying parameters not recorded correctly (exact dimensions of a warehouse rack / bin), the ability to optimize the supply chain will be severely jeopardized.

Operational processes are generally designed to obfuscate complexity and navigate product through a pre-configured network. An unintended consequence of this simplification is the possibility of certain data elements not being captured due to system settings or operator oversight. While this does not impair the operators’ ability to perform the task, it limits the ability to visualize, mine or model the data.

To realize an acceptable level of data maturity, a continuous review of data quality and completeness should be conducted at regular intervals. Completeness refers to capturing data relevant to business goals, not just to address near-term problems but also future strategic initiatives since the quality of analytics delivery generally improves with the volume of historical data available. Quality refers to the credibility of data being captured. Communication of the benefits of the enhanced data capture to the workforce is a critical step in getting all-round buy-in.

Motivating and mandating the capture of events along the supply chain to a deeper level of granularity will set the analytics team up to better provide insights and optimize the supply chain.

3. Identify metrics that matter and align with business goals
Let’s begin with another maxim: “You can’t improve what you don’t measure.” Typically, supply chain performance has been measured on standard metrics like spend versus budget, cost per mile, cost per unit, units shipped, units per hour and transit time.

While these metrics are important, they do not signify the competitive performance of the supply chain nor the alignment with enterprise goals. Also, a load planner or warehouse worker isn’t equipped with the tools to impact the aforementioned metrics, nor do they have the knowledge of the factors that affect them.

Identifying supply chain metrics that matter should follow a top-down approach, starting with the enterprise goals (level 1 metrics) and supply chain’s role in achieving them. High-level supply chain metrics that bolster enterprise goals form the level 2 metrics. The operational metrics that drive the high-level supply chain metrics comprise the level 3 metrics. Diagnostic analytics to perform root cause analysis on level 3 metrics and identify corrective action empowers the operator to understand the problems and positively influence them.

A hierarchical cascade of metrics that links operational metrics with enterprise goals through functional metrics is the key to measuring metrics that matter and ensuring the individual business units are striving towards the same outcomes.

4. Encourage the governance committees to embrace unbiased analytics informed decisions 
Decisions in a supply chain vary between operational, tactical and strategic. To address a business need through a tactical or strategic decision, a functional leader makes a largely experiential recommendation accompanied by a high-level cost-benefit summary for a sign off by a committee. While this is a functionally feasible approach, it projects a recommendation biased towards gut, short on analytical rigor, and devoid of a holistic review of alternate options.

Partnering with the data analytics team can alleviate these limitations. An analytics team with access to additional data sources can leverage its advanced modeling skills to impart an unbiased and comprehensive assessment of the solution options. The role of the business teams in guiding the analytics team through the constraints and rules is paramount to ensuring the quality of the recommendations.

This approach not only improves the decision quality but also encourages collaboration and knowledge sharing, all key tenets for thriving in today’s competitive environment.

About the author: Ashok Viswanathan is the director of supply chain analytics at Best Buy and an adjunct professor at Rutgers University where he teaches supply chain digital transformation. He can be reached at [email protected].


Article Topics

Blogs
Ashok Viswanathan
Digital Transformation
Digital Upskilling
Talent management
Workforce Management
   All topics

Digital Transformation News & Resources

Talking Materials Handling:  A Guide To Supply Chain Analytics
The reBound Podcast: Innovation in the 3PL supply chain
The Rebound: 3D Transformation at GE Appliances
Powering the Industrial Process With Digital Data
Colgate-Palmolive deploys decision intelligence as part of its digital transformation
What’s keeping the supply chain C-Suite up at night?
Kimberly-Clark turns to EARL to manage order bunching
More Digital Transformation

Latest in Materials Handling

Largest Automate on record opens in Chicago on Monday May 6th
April manufacturing output recedes after growing in March
Carolina Handling celebrates anniversary with 58 for 58 giveaway
Q1 sees a solid finish with strong U.S.-bound import growth, notes S&P Global Market Intelligence
AutoStore to launch U.S. headquarters in greater Boston region
Trew expanding manufacturing and development campus in southwest Ohio
IFR: Robot installations by U.S. manufacturing companies up 12 percent last year
More Materials Handling

Subscribe to Materials Handling Magazine

Subscribe today!
Not a subscriber? Sign up today!
Subscribe today. It's FREE.
Find out what the world's most innovative companies are doing to improve productivity in their plants and distribution centers.
Start your FREE subscription today.

Latest Resources

Materials Handling Robotics: The new world of heterogeneous robotic integration
In this Special Digital Edition, the editorial staff of Modern curates the best robotics coverage over the past year to help track the evolution of this piping hot market.
Case study: Optimizing warehouse space, performance and sustainability
Optimize Parcel Packing to Reduce Costs
More resources

Latest Resources

2023 Automation Study: Usage & Implementation of Warehouse/DC Automation Solutions
2023 Automation Study: Usage & Implementation of Warehouse/DC Automation Solutions
This research was conducted by Peerless Research Group on behalf of Modern Materials Handling to assess usage and purchase intentions forautomation systems...
How Your Storage Practices Can Affect Your Pest Control Program
How Your Storage Practices Can Affect Your Pest Control Program
Discover how your storage practices could be affecting your pest control program and how to prevent pest infestations in your business. Join...

Warehousing Outlook 2023
Warehousing Outlook 2023
2023 is here, and so are new warehousing trends.
Extend the Life of Brownfield Warehouses
Extend the Life of Brownfield Warehouses
Today’s robotic and data-driven automation systems can minimize disruptions and improve the life and productivity of warehouse operations.
Power Supply in Overhead Cranes: Energy Chains vs. Festoons
Power Supply in Overhead Cranes: Energy Chains vs. Festoons
Download this white paper to learn more about how both systems compare.