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Champions Corner

Delve deeper into real market wins: success stories, case studies, and peer benchmarks to help you replicate what top performers do.

17 Topics 17 Posts

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  • Market Wins

    15 topics
    15 posts
    RohilR
    Rohil
    Executive Summary FMCG brands that advertised on JioStar during TATA IPL 2025 delivered a +5.7% average sales uplift across 4,400+ stores, 40+ brands, and 15 categories (Aintu Inc. study). Performance improved with cross-screen mixes (TV + digital), higher investment tiers, and richer formats (video + display). The findings position JioStar’s IPL inventory as a scalable sales-activation lever, not just a reach vehicle. Business Objective Convert seasonal IPL reach into measurable store-level sales for FMCG portfolios while identifying the optimal media mix (screen, spend tier, and format) to guide future playbooks. Context & Challenge IPL spikes attention but fragmentation (TV vs. digital, urban vs. rural, modern trade vs. GT) makes it hard to tie ads to scans. Marketers need proof of incrementality beyond vanity metrics and a mix model that scales across categories. Intervention Brands ran IPL-timed campaigns on JioStar with varied mixes: Screens: TV only vs. Digital only vs. Cross-screen Formats: Video only vs. Video + display Spend tiers: ₹10 cr+ vs. sub-₹10 cr Measurement Design (Abridged) Sample: 4,400+ stores; 40+ brands; 15 FMCG categories Windows: Pre-IPL baseline → IPL flight → short tail Method: Matched-store comparisons and pre/post analysis controlling for seasonality; category and region fixed effects to reduce noise Primary KPI: Value sales uplift (%) versus matched control Note: As with all field studies, residual confounders (pricing, trade push, distribution changes) are possible; see Limitations. Results Headline Impact +5.7% average value uplift across participating brands. Mix That Outperformed Cross-screen (TV + Digital): +6.3% vs Single screen: +5.3% Higher investment (₹10 cr+): +8.4% vs <₹10 cr: +4.9% Video + Display: +7.2% vs Video-only: +5.5% Category Notes (directional) Impulse and beverages saw faster week-1 response; home & personal care built steadier, cumulative gains over the flight. Stores with digital-led audiences (higher app usage) showed stronger video+display responsiveness. What Drove the Gains (Interpretation) Cross-screen coherence: TV builds mass salience while digital tightens recency and frequency near the point of purchase. Creative surface area: Adding display to video increases product reminders during consideration and replenishment cycles. Scale economics: Above the ₹10 cr threshold, brands reach sufficient weekly GRPs/Imps to sustain an always-on presence through the IPL calendar. Commercial Implications (Back-of-Envelope ROI) If a brand’s IPL-period baseline sales are ₹100 cr, a +5.7% uplift ≈ ₹5.7 cr incremental. With ₹8 cr media: ROI = 0.71x gross. With ₹10 cr+ (avg. +8.4% uplift): incremental ≈ ₹8.4 cr; ROI = 0.84x gross. After trade margins and gross margin (e.g., 40–55%), several portfolios clear positive contribution when creative and retail activation are coordinated (bundles, shelf, coupons). Recommendation: model contribution ROI using brand-specific margins and pass-through; the media mix is close to break-even on gross and typically positive on contribution with in-store support. Playbook for IPL 2026 Mix & Investment Anchor on cross-screen; resist TV-only or digital-only unless budget-constrained. Target ₹10–12 cr per core brand (or pooled by category) to hit effective weekly frequency. Use video + display; deploy display to sustain mid-flight reminders and last-mile nudges. Audience & Timing Front-load awareness in opening fortnight, then maintain steady weekly pressure; spike again in playoffs/finals. Layer retail media (Blinkit, Zepto, Amazon/Flipkart) to capture in-moment demand; synchronize price/promos. Creative & Merchandising Build two creative lines: (1) Mass salience (TV) and (2) Offer/variant reminders (digital/display). Mirror claims and packs on PDPs and store shelves; ensure consistent SKU/hero image and inventory in hot ZIPs. Measurement Set up geo-split or matched-store tests with MMM/MTA overlays. Track incrementality by screen, format, spend tier, and retailer cohorts. Define safety KPIs: out-of-stock rate, price parity, and cost-to-serve during spikes. Risks & Limitations Attribution bleed from concurrent promotions or competitor moves. Distribution gaps can cap uplift even with strong media. Creative wear-out if weekly rotation is thin; plan 3–4 cutdowns and display variants. Next Steps Pre-book cross-screen inventory and lock video + display bundles. Run a 2-cell experiment (cross-screen vs. single-screen) in matched regions. Integrate retail media and JioStar reporting into one incrementality dashboard. Align trade plans (fill rates, secondary visibility) to the media calendar to avoid stock-out drag. One-Slide Summary (for leadership) Impact: +5.7% avg uplift (peaks: +8.4% at ₹10 cr+, +7.2% with video+display). Winner Mix: Cross-screen > single screen; video+display > video-only. So What: Treat JioStar IPL as a sales activation channel; pair with retail media & shelf to convert reach to revenue. Do Next: Lock cross-screen, spend at scale, add display, run controlled tests, and tie to in-store execution. Visit MediaNews4U
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  • JAVIS Wins

    1 topics
    1 posts
    RohilR
    Rohil
    A configuration-driven rules engine that automated compliant splitting and routing for a 25,000-SKU FMCG network At A Glance: Industry: FMCG (India-wide distribution) Scale: 25,000+ SKUs across food, personal care, pest control, cigarettes, matches, and incense sticks Core constraint: One distributor PO often contained products governed by different licensing and storage regimes (FSSAI, COTPA, Insecticides Act, hazardous storage norms) Operational symptom: One distributor PO regularly required 3–6 internal sales orders, created through manual interpretation and splitting Business outcome: Full compliance routing, faster order clearance, and a scalable foundation for new categories, without relying on heroics. The Opportunity For large Indian FMCG enterprises, distribution excellence isn’t only about coverage, it’s about how reliably you can translate commercial demand into compliant execution. This client’s distributors placed consolidated purchase orders (POs). The problem: those POs routinely mixed products that cannot legally be stored or routed together. Food items governed by FSSAI cannot share storage with tobacco SKUs regulated under COTPA; pest-control products fall under the Insecticides Act and require distinct storage handling. What looked like a single PO on paper was, operationally, a set of different fulfillment and compliance pathways. At the same time, the client’s network design was not “one warehouse serves all.” Several categories were plant-linked and zone-constrained: oils produced in Digboi flowed into East depots; Kerala plant masala blends fed South depots; incense sticks and matches were centralised in the West due to vendor proximity. Tobacco products were restricted to high-compliance depots. The stakes were clear: each incorrect depot decision was not just an operational error, it carried regulatory exposure and reputational risk. Yet even with modern ERP and WMS, depot assignment still depended on human interpretation because the underlying rule complexity lived outside the system. The Challenge The client didn’t have a storage problem. They had a decision-logic problem, and it was scaling faster than people could manage. A typical distributor PO could include SKUs tied to different laws, plants, and zones. To route such a PO correctly, teams had to manually reconcile: Licensing and storage rules (what can or cannot co-exist) Depot eligibility (which depots are licensed to store which product groups) Plant-linked and zone constraints (which depots should serve which flows) The operating consequences showed up in five recurring pain points: No central system linking licensing rules to depot eligibility Customer/distributor SKU codes differed from internal codes; translation was manual and error-prone Plant-linked SKUs required zone-specific storage that ERP rules couldn’t model cleanly A single PO frequently required three to six internal sales orders, created through manual splitting Wrong routing could violate the Food Safety and Standards Act, COTPA, the Insecticides Act, or hazardous material storage guidelines. What made this especially hard was scale. With a catalogue of 25,000 SKUs, manual checks were unrealistic; visibility into how often splits were wrong was limited; every new category added risk and complexity. This is the kind of problem that doesn’t get solved by “more SOPs.” It gets solved when the rules move from people’s heads into a repeatable decision engine. [image: 1765256809736-screenshot-2025-12-09-at-10.36.38-am.png] The Response Turning depot allocation into a configurable rules engine, inside the O2C flow. JAVIS was deployed as the central intelligence layer that determines depot allocation and order splitting, one unified configuration that can handle all rule variations. The solution was built around a simple principle: encode the business logic once, then apply it consistently on every PO. [image: 1765256896168-screenshot-2025-12-09-at-10.37.59-am.png] The Solution JAVIS Configurable Depot Logic Engine JAVIS became the “brain” that evaluates each distributor PO line-by-line, applies compliance and plant rules, then generates the right internal sales orders automatically. 1) Model the business the way the business thinks: divisions → rule groups The engine starts by defining each product division and assigning it to a governing rule group. Examples included: Food under FSSAI Tobacco under COTPA Pest control under the Insecticides Act Matchboxes under fire safety / hazard class Incense sticks under general FMCG storage Plant-linked groups such as Digboi Oil and Kerala Masala This step matters because it transforms “25,000 SKUs” from a flat, unmanageable list into a structured, maintainable system of rules. 2) Translate compliance into execution: map rule groups to depot eligibility Next, each depot is classified by what it can store. The case uses illustrative depot definitions such as: Depot A : FSSAI compliant only Depot B : FSSAI plus Insecticides Act Depot C : COTPA compliant Depot D : zone-specific, plant-linked only This creates a living eligibility matrix. Instead of humans remembering which depot can handle what, the engine enforces it. 3) Remove a major source of errors: customer SKU mappings at PO receipt Distributors often use their own SKU codes. JAVIS translates these into manufacturer codes at the moment the PO arrives, allowing the rule engine to run accurately without manual matching. This is a subtle but critical improvement: if your inputs are inconsistent, even the best rule model breaks. Standardising at ingestion protects the entire flow. 4) Automate the actual decision moment: PO evaluation and depot split When a PO arrives, JAVIS: reads the Ship-To party translates SKU codes identifies each SKU’s division and rule group applies depot eligibility checks plant/zone constraints determines which depot supplies which line item This turns what used to be a judgment-heavy workflow into a deterministic, auditable decision process. 5) Convert decisions into execution: generate the correct number of sales orders Where the old process required manual splitting into multiple internal sales orders (often 3–6), the engine generates those sales orders automatically while keeping PO reference intact. The post gives a concrete example: if a PO has 140 SKUs across six rule groups, JAVIS creates six internal sales orders automatically, unifying compliance, plant logic, and customer mapping in a single workflow. [image: 1765257040190-screenshot-2025-12-09-at-10.40.28-am.png] The Impact The client moved from a model where depot decisions lived in human interpretation to one where depot allocation became an O2C intelligence capability. Outcomes reported in the case include: Full compliance routing (rules enforced consistently across categories) Faster order clearance (reduced time lost to manual routing and SO splitting) A scalable foundation that can absorb new categories without increasing operational risk linearly Reduced dependence on “tribal knowledge,” improving auditability and repeatability at catalogue scale [image: 1765257177667-screenshot-2025-12-09-at-10.42.48-am.png] What supply chain CXOs can take away: 1) If rules vary by law, plant, or storage constraint, ERP alone won’t be the “brain” The case makes a clear point: where product rules vary by regulation and network structure, the O2C layer must become the intelligence layer, not just a transaction recorder. 2) Treat depot allocation as a first-class decision system Depot allocation isn’t “ops hygiene.” In regulated, multi-category FMCG, it’s a compliance and service-level decision that deserves explicit modelling. 3) Solve inputs first: SKU translation is not a clerical task Automated customer-SKU → manufacturer-SKU mapping is foundational. Without it, decision logic becomes fragile and person-dependent. 4) Configuration beats custom code when the business will evolve New categories, new depots, or changed licensing shouldn’t create a new IT project. The engine works because the rules live in configuration. [image: 1765257263948-screenshot-2025-12-09-at-10.44.13-am.png]
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    • Posted by Rohil •

    Meet the JAVIS Champions

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    onboarding
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