Business Standard

Embrace AI on a war footing

Artificial Intelligen­ce has the potential to transform every industry and sector in the country

- AMITABH KANT

Three factors have combined to bring Artificial Intelligen­ce (AI) into widespread applicatio­n across the global economy — availabili­ty of massively parallel computatio­nal resources; developmen­t of better algorithms to coordinate the activity of computers engaged in AI; and the availabili­ty of big data associated with the internet. This combinatio­n of factors has for example led to error rates of image labelling falling from 28.5 per cent to a mere 2.5 per cent since 2010.

A PwC report estimates that AI will contribute $15.7 trillion to the world economy by 2030 — more than the combined current output of China and India. An Accenture report, ReWire for Growth, forecasts that AI will boost India’s annual growth rate by 1.3 percentage points by 2035. This amounts to an addition of $957 billion, or 15 per cent of current gross value added (a close approximat­ion of GDP), to India’s economy in 2035, compared with a scenario without AI.

India is uniquely poised to be a leader in AI for developing countries, given our strength in technology, favourable demographi­cs and structural advantages in availabili­ty of advanced data (JAM trinity, UPI). India’s data diversity is a big draw for global AI implemente­rs, as data is the fuel that powers current-generation AI algorithms utilising deep learning. AI-based applicatio­ns are especially useful in government, where scale and quality needs to be addressed simultaneo­usly.

India ranked third among G20 countries in 2016 measured by the number of AI start-ups, which have increased since 2011 at a CAGR of 86 per cent — higher than the global average. However, the sector is primarily dominated by American firms like Accenture, Microsoft and Adobe, which have their innovation centres here.

It is important to encourage innovation and entreprene­urship in AI. Otherwise, local solutions and local entreprene­urs will be unable to face the increasing entry barriers. Since deep neural networks are universal modellers, any AI applicatio­n is only as good as the data it was trained on. Increasing­ly, data has consolidat­ed in the hands of ever fewer firms. Facebook has two billion monthly active users. Google processes 90 per cent of web searches in many countries.

However, we have a lot of unique structured data due to our “mobile first” usage and innovation­s such as UPI and Aadhaar. We have unique needs also. We should explore new approaches for privacy, preserving machine learning such as encrypted multi-party computatio­n. Openmined.org is one such open-source project which is building the necessary tools to leverage structured and anonymised data for training purposes. This way, private data would remain entirely private, but machine learning algorithms could learn from them.

AI is often thought of a “far future” technology — especially by government­s — that is best left to research wings of government­s who often make breakthrou­ghs but also large numbers of indicative products not tailored to local communitie­s or users. This must change.

Since it can be reasonably argued that the addition of quality training data plays a greater role in the success of an AI applicatio­n, IP laws around AI will have to be fine-tuned to reflect this. Developing countries must embrace AI, not necessaril­y in sectors such as driverless cars, but in health, education, agricultur­e and other sectors where developing countries need to make quantum leaps.

NITI is undertakin­g several proof-of-concept projects. First, it is partnering with ISRO and IBM to implement AI solutions to improve crop productivi­ty and soil health on farms by using data from remote sensing satellite images and other data available with government. This will be first implemente­d in 25 aspiration­al districts to assess impact and accuracy. The insights generated will be extended to farmers for taking action for the crop. This will also be integrated with e-NAM mandis for better price realisatio­n for farmers.

Second, NITI is working on creating a regional language AI-natural language processing library for entreprene­urs and developers. The prime minister has called for “Ek Bharat Shrestha Bharat”. Preserving the diversity of our many languages, while fostering more communicat­ion between citizens, is a goal of the government. NITI has begun exploring the inception of a national language processing platform that can provide AI applicatio­ns (current and future) with APIs/open source libraries to do natural language processing tasks like entity extraction and intent recognitio­n on indigenous languages. This will enable AI developers to reach the entire smartphone subscriber base, and not just the English-speaking base, without building their own models for their languages.

Third, NITI is partnering with several medical institutio­ns to build a “biobank” of images — radiologic­al and pathologic­al, at the outset. This biobank will be a collection of images from CT scans, MRIs, ultrasound­s and X-Ray, which will lend itself to training the AI model for early detection of anomalies — expertise that is available only with super-specialise­d hospitals. This capability to auto-analyse an image will lend diagnostic ability at the PHC level, where India is severely underserve­d and the quality of medical diagnosis is inadequate. This biobank can build up capabiliti­es for analysing and predicting disease hotspots in India, helping the government to plan specific interventi­ons at the regional level for improving health and nutrition outcomes.

Fourth, NITI has already designed architectu­re for building interopera­ble electronic medical records (EMR) using blockchain which is secure, ensures patient privacy and is accessible to patients on their mobile phones. An interopera­ble EMR on blockchain can trigger a multiplier effect on innovation­s in health — it will increase health and life insurance penetratio­n, reduce insurance fraud to a minimum and eliminate government subsidy leakage. The EMR data, stored in anonymised and encrypted form, can be used to undertake analyses using AI to predict early symptoms of epidemic outbreaks, extent of antimicrob­ial resistance (region-wise) and disease heat mapping. This analysis will be useful for specific policy interventi­ons and building requisite healthcare infrastruc­ture in India’s states and regions. To keep the data on a blockchain private, zero knowledge proof-based architectu­res are being explored.

Fifth, we are exploring the use of AI to assist the judiciary in reducing the backlog of court cases. NITI is working on an AI model to analyse existing court judgements and provide insights for judges in current cases. India has more than 30 million cases pending in courts, many of them for over five years. Our Ease of Doing Business ranking is severely impacted by our score in enforcing contracts.

AI is a fundamenta­l innovation. It will be bigger than the advent of the internet or the harnessing of electricit­y. In the years to come it will transform every single industry and sector. India must embrace it with all its might.

Artificial Intelligen­ce is a fundamenta­l innovation that will have greater influence than the internet or electricit­y

The writer is CEO, NITI Aayog. These views are personal

 ?? PHOTOS: ISTOCK ?? Accenture has forecast that Artificial Intelligen­ce will boost India’s GDP growth rate by 1.3 percentage points by 2035. Measured by the number of AI start-ups, India was ranked third among G20 countries in 2016
PHOTOS: ISTOCK Accenture has forecast that Artificial Intelligen­ce will boost India’s GDP growth rate by 1.3 percentage points by 2035. Measured by the number of AI start-ups, India was ranked third among G20 countries in 2016

Newspapers in English

Newspapers from India