Synopsis
India’s manufacturing sector is at a critical turning point where the challenge is no longer generating data, but transforming that data into intelligent, actionable operations. At the Bosch Conversations roundtable held in Pune on April 16, 2026, industry leaders from across engineering, automotive, EV, and digital transformation domains discussed how Indian manufacturing can move beyond basic digitisation toward connected, secure, and sustainable factories.Listen to this article in summarized format
Against this backdrop, Bosch Conversations hosted a closed-door roundtable in Pune on April 16, 2026, titled “Engineering Leadership’s Blueprint: Navigating AI, Connectivity and Sustainability for Tomorrow’s Manufacturing.” The discussion brought together leaders from across manufacturing, engineering, automotive, and technology sectors to examine how Indian industry can move beyond fragmented digitisation toward connected, secure, and future-ready factories.
Smart manufacturing is more than just automation | Bosch Conversations
At the recently-concluded Bosch SDS roundtable in Pune, one insight stood out: a key challenge facing industry is converting abundant factory data into meaningful decisions and measurable outcomes.As part of the Bosch Conversations series in association with The Economic Times, the occasion brought together leaders across engineering, EV technology, manufacturing, and digital transformation for a deep dive into ‘Engineering Leadership’s Blueprint: Navigating AI, Connectivity and Sustainability for Tomorrow’s Manufacturing’.Business leaders discussed:What intelligent manufacturing truly looks like todayWhy implementationremains the biggest hurdleHow companies are approaching AI adoption, connected factories, cybersecurity, sustainability, and operational efficiency in real-world industrial environments.As manufacturing evolves, forums like Bosch Conversations are becoming essential to turning ideas into execution.The conversation explored five critical themes shaping the next phase of industrial transformation: product lifecycle engineering and connected data systems, cybersecurity across IT and operational technology (OT) environments, intelligent and autonomous operations, sustainability aligned with evolving policy frameworks, and the practical realities of AI adoption in manufacturing.Moderated by Rakesh Kumar Murugan, Global Head - Digital Transformation and Sustainability, Bosch SDS, the roundtable featured industry leaders including Vinod Bhat, CDO, Tata AutoComp Systems Ltd; Dr. Maruti Khaire, CTO, ADVIK Hi-Tech Private Limited (AHPL); Madhukar Madhukar, Head - EV Battery Technology, JSW Greentech; Sahil Sehgal, Product Lead, EMotorad; Ganesh Joshi, CIO, Nilons Enterprises Pvt. Ltd; Franz Kaltseis, Senior Partner Account Manager, Contact Software; and Pradeep Karnawat, DGM - Corporate Strategy, Endurance Technologies.
Connecting the lifecycle
One of the central themes of the roundtable was product lifecycle engineering specifically, the challenge of turning fragmented streams of data into a connected system that drives better decisions. In most Indian manufacturing environments, engineering, production, and service systems still operate in silos, generating vast amounts of data without a unified framework linking them across the product lifecycle.
The discussion highlighted the growing importance of the digital thread, a continuous flow of connected data across the product lifecycle, from design and manufacturing to deployment and service operations, along with the digital twin, a real-time virtual representation of a product in operation. Together, these technologies enable manufacturers to create systems with memory and continuity. Without them, critical insights are lost - field-service learning fail to influence future designs, repeated engineering problems resurface across teams, and decision-making remains disconnected from operational reality. Further, participants noted that newer manufacturing companies, especially those building digital infrastructure from the ground up, may have an advantage over legacy organisations burdened by decades of disconnected systems.
Another recurring concern was the industry’s tendency to mistake visibility for transformation. Participants stressed that dashboards alone do not create intelligent operations. Data becomes valuable only when it informs decisions, improves responsiveness, and creates measurable operational change. As several leaders observed, the true impact of digital transformation comes from turning insights into action.
Plugging cybersecurity gaps
As factories become more connected, cybersecurity is emerging as one of manufacturing’s most urgent operational challenges. Increased integration between engineering systems, shop-floor technologies, cloud platforms, and supply chain networks has significantly expanded the industry’s digital attack surface, making cybersecurity no longer just an IT concern, but a core business risk.
The roundtable highlighted how operational technology (OT) systems in manufacturing were historically designed to function in isolation. Today, however, these systems are increasingly interconnected with enterprise IT infrastructure and external supplier ecosystems. While connectivity has improved efficiency and visibility, security frameworks have struggled to evolve at the same pace. In many organisations, IT, OT, and engineering systems continue to be managed separately despite being deeply interdependent.
Participants pointed out that the risks vary across the environment. A cyberattack on OT systems can disrupt production lines, compromise worker safety, or halt plant operations entirely. At the same time, engineering systems house highly valuable intellectual property, including CAD files, simulation models, and product design repositories that are now frequently cloud-connected and shared across supply chains.
The discussion underscored the need for a unified cybersecurity strategy that spans enterprise networks, engineering environments, and manufacturing operations alike. Rather than treating security as an afterthought or retrofit, participants emphasized that cybersecurity architecture must be embedded into the design of connected factories from the outset. The broader consensus was clear: as manufacturing becomes increasingly digital, resilience will depend on building security into every layer of the industrial ecosystem.
What intelligent and autonomous operations truly mean
Much of the discussion around AI in manufacturing is dominated by ambitious promises, but the reality on the factory floor is often far more incremental. Participants at the roundtable emphasized that successful adoption rarely begins with technology alone. Instead, the most effective implementations start with a clearly defined operational problem and then identify the right digital tool to solve it.
The conversation contrasted this approach with a common industry tendency to adopt AI platforms first and search for applications later. In practice, many of the most successful use cases are relatively small in scale but deliver tangible results, from shop-floor teams using AI tools to improve specific operational workflows to departments automating repetitive documentation and reporting tasks. While these initiatives may not appear transformational individually, they create practical efficiencies and are more likely to gain long-term organisational acceptance.
A key insight from the discussion was that intelligent autonomy depends fundamentally on structured and reliable data. Advanced AI systems cannot function effectively in environments where operational data remains fragmented, inconsistent, or inaccessible. Without strong data foundations, ambitions around autonomous manufacturing remain difficult to scale.
The roundtable also addressed the limits of automation. Participants stressed that manufacturing expertise built through years of working with specific machines, materials, and production tolerances continues to play a critical role that AI cannot fully replicate. Human judgment often fills the gaps left by incomplete datasets and contextual limitations in machine learning systems. Rather than replacing expertise, the consensus was that AI currently works best when it augments experienced decision-making on the factory floor.
Sustainability and policy
Sustainability is rapidly moving from a peripheral corporate initiative to a core operational requirement in manufacturing. Increasing regulatory pressure, evolving global supply chain expectations, and stricter reporting frameworks are forcing companies to integrate sustainability directly into their production and business strategies rather than treating it as a standalone agenda.
The roundtable explored how the same digital infrastructure that supports operational efficiency can also enable sustainability goals. Systems used to monitor production, quality, and supply chains are equally critical for tracking energy consumption, capturing emissions data, and conducting lifecycle environmental analysis. Participants emphasized that sustainability works most effectively when embedded into existing operational data systems rather than managed through disconnected reporting frameworks.
Bosch’s approach of integrating sustainability metrics into the same semantic data layer used for production, quality, and supply chain management was highlighted as an example of how manufacturers can avoid creating parallel systems while improving both compliance and operational visibility. The discussion reinforced the idea that sustainability data is not merely a reporting requirement, but a strategic asset that can strengthen transparency and decision-making across the organisation.
Participants also noted that sustainability reporting is becoming increasingly unavoidable for Indian manufacturers connected to global supply chains, particularly those working with European markets under frameworks such as the EU’s Corporate Sustainability Reporting Directive (CSRD). Rather than viewing these requirements solely as compliance burdens, the consensus was that they should be approached as an opportunity to build stronger data discipline and long-term operational resilience.
For newer manufacturing companies, especially in emerging sectors such as electric vehicles, the equation is somewhat different. Building sustainability into operations from the outset, as a design principle rather than a later adjustment, offers a structural advantage that legacy manufacturers often struggle to replicate due to existing infrastructure and process constraints.
The real constraint
Across every theme discussed at the roundtable, one conclusion remained consistent: the biggest challenge facing manufacturing today is not the lack of technology, data, or digital tools it is the ability to translate them into meaningful operational decisions. Many digital transformation initiatives fail not because the systems are inadequate, but because organisations do not fundamentally change the way they operate around them.
Participants referenced findings from the World Economic Forum indicating that nearly 70% of Manufacturing Execution System (MES) implementations fail outright, highlighting a deeper structural issue in how digital systems are adopted across the industry. Even among successful deployments, many systems function primarily as traceability platforms rather than intelligent decision-making engines, while actual workforce adoption rates often remain limited.
The discussion also pointed to the realities of sectors such as FMCG, where demand forecasting continues to rely heavily on manual processes. In markets dominated by unorganised retail channels with limited digital visibility, the issue is not the absence of AI tools, but the absence of structured, reliable datasets required to train them effectively. Participants noted that meaningful progress will depend on building stronger data ecosystems through partnerships with organised retail networks and supply chain stakeholders.
Ultimately, the session reinforced that India’s manufacturing sector already understands the direction of travel. The priorities ahead are clearer execution, faster decision-making, stronger change management, shorter implementation cycles, and continuous workforce adaptation. The future of intelligent manufacturing will depend less on acquiring new technologies and more on making existing systems deliver measurable impact.
In Video: Smart manufacturing is more than just automation | Bosch Conversations (This article is generated and published by ET Spotlight team. You can get in touch with them on [email protected])